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6
.github/workflows/python.yml
vendored
6
.github/workflows/python.yml
vendored
@ -18,9 +18,9 @@ jobs:
|
||||
strategy:
|
||||
matrix:
|
||||
os: [ubuntu-latest] # For now, only test on Linux
|
||||
steps:
|
||||
steps:
|
||||
- name: Checkout repository
|
||||
uses: actions/checkout@v2
|
||||
uses: actions/checkout@v4
|
||||
|
||||
- name: Install Rust
|
||||
uses: actions-rs/toolchain@v1
|
||||
@ -65,4 +65,4 @@ jobs:
|
||||
working-directory: ./candle-pyo3
|
||||
run: |
|
||||
source .env/bin/activate
|
||||
python -m pytest -s -v tests
|
||||
python -m pytest -s -v tests
|
||||
|
12
.github/workflows/rust-ci.yml
vendored
12
.github/workflows/rust-ci.yml
vendored
@ -1,6 +1,6 @@
|
||||
on:
|
||||
on:
|
||||
push:
|
||||
branches:
|
||||
branches:
|
||||
- main
|
||||
pull_request:
|
||||
|
||||
@ -15,7 +15,7 @@ jobs:
|
||||
os: [ubuntu-latest, windows-latest, macOS-latest]
|
||||
rust: [stable]
|
||||
steps:
|
||||
- uses: actions/checkout@v2
|
||||
- uses: actions/checkout@v4
|
||||
- uses: actions-rs/toolchain@v1
|
||||
with:
|
||||
profile: minimal
|
||||
@ -34,7 +34,7 @@ jobs:
|
||||
os: [ubuntu-latest, windows-latest, macOS-latest]
|
||||
rust: [stable]
|
||||
steps:
|
||||
- uses: actions/checkout@v2
|
||||
- uses: actions/checkout@v4
|
||||
- uses: actions-rs/toolchain@v1
|
||||
with:
|
||||
profile: minimal
|
||||
@ -49,7 +49,7 @@ jobs:
|
||||
name: Rustfmt
|
||||
runs-on: ubuntu-latest
|
||||
steps:
|
||||
- uses: actions/checkout@v2
|
||||
- uses: actions/checkout@v4
|
||||
- uses: actions-rs/toolchain@v1
|
||||
with:
|
||||
profile: minimal
|
||||
@ -65,7 +65,7 @@ jobs:
|
||||
name: Clippy
|
||||
runs-on: ubuntu-latest
|
||||
steps:
|
||||
- uses: actions/checkout@v2
|
||||
- uses: actions/checkout@v4
|
||||
- uses: actions-rs/toolchain@v1
|
||||
with:
|
||||
profile: minimal
|
||||
|
15
.github/workflows/trufflehog.yml
vendored
Normal file
15
.github/workflows/trufflehog.yml
vendored
Normal file
@ -0,0 +1,15 @@
|
||||
on:
|
||||
push:
|
||||
|
||||
name: Secret Leaks
|
||||
|
||||
jobs:
|
||||
trufflehog:
|
||||
runs-on: ubuntu-latest
|
||||
steps:
|
||||
- name: Checkout code
|
||||
uses: actions/checkout@v4
|
||||
with:
|
||||
fetch-depth: 0
|
||||
- name: Secret Scanning
|
||||
uses: trufflesecurity/trufflehog@main
|
10
.gitignore
vendored
10
.gitignore
vendored
@ -9,6 +9,10 @@ target/
|
||||
# More information here https://doc.rust-lang.org/cargo/guide/cargo-toml-vs-cargo-lock.html
|
||||
Cargo.lock
|
||||
|
||||
# editor config
|
||||
.helix
|
||||
.vscode
|
||||
|
||||
# These are backup files generated by rustfmt
|
||||
**/*.rs.bk
|
||||
|
||||
@ -36,3 +40,9 @@ candle-wasm-examples/*/package-lock.json
|
||||
candle-wasm-examples/**/config*.json
|
||||
.DS_Store
|
||||
.idea/*
|
||||
__pycache__
|
||||
out.safetensors
|
||||
out.wav
|
||||
bria.mp3
|
||||
bria.safetensors
|
||||
bria.wav
|
||||
|
35
Cargo.toml
35
Cargo.toml
@ -9,6 +9,7 @@ members = [
|
||||
"candle-transformers",
|
||||
"candle-wasm-examples/*",
|
||||
"candle-wasm-tests",
|
||||
"tensor-tools",
|
||||
]
|
||||
exclude = [
|
||||
"candle-flash-attn",
|
||||
@ -19,7 +20,7 @@ exclude = [
|
||||
resolver = "2"
|
||||
|
||||
[workspace.package]
|
||||
version = "0.4.2"
|
||||
version = "0.7.0"
|
||||
edition = "2021"
|
||||
description = "Minimalist ML framework."
|
||||
repository = "https://github.com/huggingface/candle"
|
||||
@ -28,49 +29,49 @@ categories = ["science"]
|
||||
license = "MIT OR Apache-2.0"
|
||||
|
||||
[workspace.dependencies]
|
||||
ab_glyph = "0.2.23"
|
||||
accelerate-src = { version = "0.3.2" }
|
||||
anyhow = { version = "1", features = ["backtrace"] }
|
||||
byteorder = "1.4.3"
|
||||
candle = { path = "./candle-core", package = "candle-core", version = "0.4.2" }
|
||||
candle-datasets = { path = "./candle-datasets", version = "0.4.2" }
|
||||
candle-flash-attn = { path = "./candle-flash-attn", version = "0.4.2" }
|
||||
candle-kernels = { path = "./candle-kernels", version = "0.4.2" }
|
||||
candle-metal-kernels = { path = "./candle-metal-kernels", version = "0.4.2" }
|
||||
candle-nn = { path = "./candle-nn", version = "0.4.2" }
|
||||
candle-onnx = { path = "./candle-onnx", version = "0.4.2" }
|
||||
candle-transformers = { path = "./candle-transformers", version = "0.4.2" }
|
||||
candle = { path = "./candle-core", package = "candle-core", version = "0.7.0" }
|
||||
candle-datasets = { path = "./candle-datasets", version = "0.7.0" }
|
||||
candle-flash-attn = { path = "./candle-flash-attn", version = "0.7.0" }
|
||||
candle-kernels = { path = "./candle-kernels", version = "0.7.0" }
|
||||
candle-metal-kernels = { path = "./candle-metal-kernels", version = "0.7.0" }
|
||||
candle-nn = { path = "./candle-nn", version = "0.7.0" }
|
||||
candle-onnx = { path = "./candle-onnx", version = "0.7.0" }
|
||||
candle-transformers = { path = "./candle-transformers", version = "0.7.0" }
|
||||
clap = { version = "4.2.4", features = ["derive"] }
|
||||
criterion = { version = "0.5.1", default-features=false }
|
||||
cudarc = { version = "0.10.0", features = ["f16"] }
|
||||
cudarc = { version = "0.12.0", features = ["std", "cublas", "cublaslt", "curand", "driver", "nvrtc", "f16", "cuda-version-from-build-system", "dynamic-linking"], default-features=false }
|
||||
fancy-regex = "0.13.0"
|
||||
gemm = { version = "0.17.0", features = ["wasm-simd128-enable"] }
|
||||
hf-hub = "0.3.0"
|
||||
half = { version = "2.3.1", features = ["num-traits", "use-intrinsics", "rand_distr"] }
|
||||
image = { version = "0.24.7", default-features = false, features = ["jpeg", "png"] }
|
||||
imageproc = { version = "0.23.0", default-features = false }
|
||||
hound = "3.5.1"
|
||||
image = { version = "0.25.2", default-features = false, features = ["jpeg", "png"] }
|
||||
imageproc = { version = "0.24.0", default-features = false }
|
||||
intel-mkl-src = { version = "0.8.1", features = ["mkl-static-lp64-iomp"] }
|
||||
libc = { version = "0.2.147" }
|
||||
log = "0.4"
|
||||
memmap2 = { version = "0.9.3", features = ["stable_deref_trait"] }
|
||||
num_cpus = "1.15.0"
|
||||
num-traits = "0.2.15"
|
||||
parquet = { version = "50.0.0" }
|
||||
parquet = { version = "51.0.0" }
|
||||
rand = "0.8.5"
|
||||
rand_distr = "0.4.3"
|
||||
rayon = "1.7.0"
|
||||
rusttype = { version = "0.9", default-features = false }
|
||||
safetensors = "0.4.1"
|
||||
serde = { version = "1.0.171", features = ["derive"] }
|
||||
serde_plain = "1.0.2"
|
||||
serde_json = "1.0.99"
|
||||
thiserror = "1"
|
||||
tokenizers = { version = "0.15.0", default-features = false }
|
||||
tokenizers = { version = "0.19.1", default-features = false }
|
||||
tracing = "0.1.37"
|
||||
tracing-chrome = "0.7.1"
|
||||
tracing-subscriber = "0.3.7"
|
||||
wav = "1.0.0"
|
||||
yoke = { version = "0.7.2", features = ["derive"] }
|
||||
zip = { version = "0.6.6", default-features = false }
|
||||
zip = { version = "1.1.1", default-features = false }
|
||||
metal = { version = "0.27.0", features = ["mps"]}
|
||||
|
||||
[profile.release-with-debug]
|
||||
|
43
README.md
43
README.md
@ -60,12 +60,16 @@ These online demos run entirely in your browser:
|
||||
|
||||
We also provide a some command line based examples using state of the art models:
|
||||
|
||||
- [LLaMA and LLaMA-v2](./candle-examples/examples/llama/): general LLM, includes
|
||||
- [LLaMA v1, v2, and v3](./candle-examples/examples/llama/): general LLM, includes
|
||||
the SOLAR-10.7B variant.
|
||||
- [Falcon](./candle-examples/examples/falcon/): general LLM.
|
||||
- [Gemma](./candle-examples/examples/gemma/): 2b and 7b general LLMs from Google
|
||||
Deepmind.
|
||||
- [Phi-1, Phi-1.5, and Phi-2](./candle-examples/examples/phi/): 1.3b and 2.7b general LLMs with performance on par with LLaMA-v2 7b.
|
||||
- [Codegeex4](./candle-examples/examples/codegeex4-9b/): Code completion,code interpreter,web search,fuction calling,repository-level
|
||||
- [GLM4](./candle-examples/examples/glm4/): Open Multilingual Multimodal Chat LMs by THUDM
|
||||
- [Gemma v1 and v2](./candle-examples/examples/gemma/): 2b and 7b+/9b general LLMs from Google Deepmind.
|
||||
- [RecurrentGemma](./candle-examples/examples/recurrent-gemma/): 2b and 7b
|
||||
Griffin based models from Google that mix attention with a RNN like state.
|
||||
- [Phi-1, Phi-1.5, Phi-2, and Phi-3](./candle-examples/examples/phi/): 1.3b,
|
||||
2.7b, and 3.8b general LLMs with performance on par with 7b models.
|
||||
- [StableLM-3B-4E1T](./candle-examples/examples/stable-lm/): a 3b general LLM
|
||||
pre-trained on 1T tokens of English and code datasets. Also supports
|
||||
StableLM-2, a 1.6b LLM trained on 2T tokens, as well as the code variants.
|
||||
@ -110,12 +114,14 @@ We also provide a some command line based examples using state of the art models
|
||||
|
||||
<img src="https://github.com/huggingface/candle/raw/main/candle-examples/examples/segment-anything/assets/sam_merged.jpg" width="200">
|
||||
|
||||
- [SegFormer](./candle-examples/examples/segformer/): transformer based semantic segmantation model.
|
||||
- [SegFormer](./candle-examples/examples/segformer/): transformer based semantic segmentation model.
|
||||
- [Whisper](./candle-examples/examples/whisper/): speech recognition model.
|
||||
- [EnCodec](./candle-examples/examples/encodec/): high-quality audio compression
|
||||
model using residual vector quantization.
|
||||
- [MetaVoice](./candle-examples/examples/metavoice/): foundational model for
|
||||
text-to-speech.
|
||||
- [Parler-TTS](./candle-examples/examples/parler-tts/): large text-to-speech
|
||||
model.
|
||||
- [T5](./candle-examples/examples/t5), [Bert](./candle-examples/examples/bert/),
|
||||
[JinaBert](./candle-examples/examples/jina-bert/) : useful for sentence embeddings.
|
||||
- [DINOv2](./candle-examples/examples/dinov2/): computer vision model trained
|
||||
@ -125,10 +131,14 @@ We also provide a some command line based examples using state of the art models
|
||||
[RepVGG](./candle-examples/examples/repvgg): computer vision models.
|
||||
- [BLIP](./candle-examples/examples/blip/): image to text model, can be used to
|
||||
generate captions for an image.
|
||||
- [CLIP](./candle-examples/examples/clip/): multi-model vision and language
|
||||
model.
|
||||
- [TrOCR](./candle-examples/examples/trocr/): a transformer OCR model, with
|
||||
dedicated submodels for hand-writing and printed recognition.
|
||||
- [Marian-MT](./candle-examples/examples/marian-mt/): neural machine translation
|
||||
model, generates the translated text from the input text.
|
||||
- [Moondream](./candle-examples/examples/moondream/): tiny computer-vision model
|
||||
that can answer real-world questions about images.
|
||||
|
||||
Run them using commands like:
|
||||
```
|
||||
@ -172,6 +182,7 @@ And then head over to
|
||||
- [`candle-vllm`](https://github.com/EricLBuehler/candle-vllm): Efficient platform for inference and
|
||||
serving local LLMs including an OpenAI compatible API server.
|
||||
- [`candle-ext`](https://github.com/mokeyish/candle-ext): An extension library to Candle that provides PyTorch functions not currently available in Candle.
|
||||
- [`candle-coursera-ml`](https://github.com/vishpat/candle-coursera-ml): Implementation of ML algorithms from Coursera's [Machine Learning Specialization](https://www.coursera.org/specializations/machine-learning-introduction) course.
|
||||
- [`kalosm`](https://github.com/floneum/floneum/tree/master/interfaces/kalosm): A multi-modal meta-framework in Rust for interfacing with local pre-trained models with support for controlled generation, custom samplers, in-memory vector databases, audio transcription, and more.
|
||||
- [`candle-sampling`](https://github.com/EricLBuehler/candle-sampling): Sampling techniques for Candle.
|
||||
- [`gpt-from-scratch-rs`](https://github.com/jeroenvlek/gpt-from-scratch-rs): A port of Andrej Karpathy's _Let's build GPT_ tutorial on YouTube showcasing the Candle API on a toy problem.
|
||||
@ -194,19 +205,19 @@ If you have an addition to this list, please submit a pull request.
|
||||
- WASM support, run your models in a browser.
|
||||
- Included models.
|
||||
- Language Models.
|
||||
- LLaMA v1 and v2 with variants such as SOLAR-10.7B.
|
||||
- LLaMA v1, v2, and v3 with variants such as SOLAR-10.7B.
|
||||
- Falcon.
|
||||
- StarCoder, StarCoder2.
|
||||
- Phi 1, 1.5, and 2.
|
||||
- Phi 1, 1.5, 2, and 3.
|
||||
- Mamba, Minimal Mamba
|
||||
- Gemma 2b and 7b.
|
||||
- Gemma v1 2b and 7b+, v2 2b and 9b.
|
||||
- Mistral 7b v0.1.
|
||||
- Mixtral 8x7b v0.1.
|
||||
- StableLM-3B-4E1T, StableLM-2-1.6B, Stable-Code-3B.
|
||||
- Replit-code-v1.5-3B.
|
||||
- Bert.
|
||||
- Yi-6B and Yi-34B.
|
||||
- Qwen1.5.
|
||||
- Qwen1.5, Qwen1.5 MoE.
|
||||
- RWKV v5 and v6.
|
||||
- Quantized LLMs.
|
||||
- Llama 7b, 13b, 70b, as well as the chat and code variants.
|
||||
@ -227,9 +238,10 @@ If you have an addition to this list, please submit a pull request.
|
||||
- Whisper, multi-lingual speech-to-text.
|
||||
- EnCodec, audio compression model.
|
||||
- MetaVoice-1B, text-to-speech model.
|
||||
- Parler-TTS, text-to-speech model.
|
||||
- Computer Vision Models.
|
||||
- DINOv2, ConvMixer, EfficientNet, ResNet, ViT, VGG, RepVGG, ConvNeXT,
|
||||
ConvNeXTv2, MobileOne, EfficientVit (MSRA).
|
||||
ConvNeXTv2, MobileOne, EfficientVit (MSRA), MobileNetv4, Hiera, FastViT.
|
||||
- yolo-v3, yolo-v8.
|
||||
- Segment-Anything Model (SAM).
|
||||
- SegFormer.
|
||||
@ -369,9 +381,9 @@ git submodule update --init
|
||||
/usr/include/c++/11/bits/std_function.h:530:146: error: parameter packs not expanded with ‘...’:
|
||||
```
|
||||
|
||||
This is a bug in gcc-11 triggered by the Cuda compiler. To fix this, install a different, supported gcc version - for example gcc-10, and specify the path to the compiler in the CANDLE_NVCC_CCBIN environment variable.
|
||||
This is a bug in gcc-11 triggered by the Cuda compiler. To fix this, install a different, supported gcc version - for example gcc-10, and specify the path to the compiler in the NVCC_CCBIN environment variable.
|
||||
```
|
||||
env CANDLE_NVCC_CCBIN=/usr/lib/gcc/x86_64-linux-gnu/10 cargo ...
|
||||
env NVCC_CCBIN=/usr/lib/gcc/x86_64-linux-gnu/10 cargo ...
|
||||
```
|
||||
|
||||
#### Linking error on windows when running rustdoc or mdbook tests
|
||||
@ -401,3 +413,10 @@ This may be caused by the models being loaded from `/mnt/c`, more details on
|
||||
|
||||
You can set `RUST_BACKTRACE=1` to be provided with backtraces when a candle
|
||||
error is generated.
|
||||
|
||||
#### CudaRC error
|
||||
|
||||
If you encounter an error like this one `called `Result::unwrap()` on an `Err` value: LoadLibraryExW { source: Os { code: 126, kind: Uncategorized, message: "The specified module could not be found." } }` on windows. To fix copy and rename these 3 files (make sure they are in path). The paths depend on your cuda version.
|
||||
`c:\Windows\System32\nvcuda.dll` -> `cuda.dll`
|
||||
`c:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v12.4\bin\cublas64_12.dll` -> `cublas.dll`
|
||||
`c:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v12.4\bin\curand64_10.dll` -> `curand.dll`
|
||||
|
@ -37,7 +37,6 @@ tokenizers = { workspace = true, features = ["onig"] }
|
||||
tracing = { workspace = true }
|
||||
tracing-chrome = { workspace = true }
|
||||
tracing-subscriber = { workspace = true }
|
||||
wav = { workspace = true }
|
||||
# Necessary to disambiguate with tokio in wasm examples which are 1.28.1
|
||||
parquet = { workspace = true }
|
||||
image = { workspace = true }
|
||||
|
@ -81,7 +81,7 @@ let mut tp_shape = view.shape().to_vec();
|
||||
let size = tp_shape[0];
|
||||
|
||||
if size % world_size != 0 {
|
||||
panic!("The dimension is not divisble by `world_size`");
|
||||
panic!("The dimension is not divisible by `world_size`");
|
||||
}
|
||||
let block_size = size / world_size;
|
||||
let start = rank * block_size;
|
||||
@ -106,8 +106,8 @@ let tp_tensor = Tensor::from_raw_buffer(&raw, dtype, &tp_shape, &Device::Cpu).un
|
||||
}
|
||||
}
|
||||
|
||||
#[allow(unused)]
|
||||
#[rustfmt::skip]
|
||||
#[test]
|
||||
fn book_training_1() -> Result<()>{
|
||||
// ANCHOR: book_training_1
|
||||
use hf_hub::{api::sync::Api, Repo, RepoType};
|
||||
|
@ -48,3 +48,7 @@ metal = ["dep:metal", "dep:candle-metal-kernels"]
|
||||
[[bench]]
|
||||
name = "bench_main"
|
||||
harness = false
|
||||
|
||||
[[example]]
|
||||
name = "metal_basics"
|
||||
required-features = ["metal"]
|
||||
|
@ -5,5 +5,8 @@ criterion_main!(
|
||||
benchmarks::affine::benches,
|
||||
benchmarks::matmul::benches,
|
||||
benchmarks::random::benches,
|
||||
benchmarks::where_cond::benches
|
||||
benchmarks::where_cond::benches,
|
||||
benchmarks::conv_transpose2d::benches,
|
||||
benchmarks::qmatmul::benches,
|
||||
benchmarks::unary::benches
|
||||
);
|
||||
|
@ -12,7 +12,7 @@ fn run_affine_benchmark(c: &mut Criterion, device: &Device, dtype: DType, name:
|
||||
let m = 1024;
|
||||
let k = 1024;
|
||||
|
||||
let tensor = Tensor::zeros((b, m, k), dtype, &device).unwrap();
|
||||
let tensor = Tensor::zeros((b, m, k), dtype, device).unwrap();
|
||||
|
||||
let flops = b * m * k * dtype.size_in_bytes();
|
||||
|
||||
|
59
candle-core/benches/benchmarks/conv_transpose2d.rs
Normal file
59
candle-core/benches/benchmarks/conv_transpose2d.rs
Normal file
@ -0,0 +1,59 @@
|
||||
use crate::benchmarks::{BenchDevice, BenchDeviceHandler};
|
||||
use candle_core::{DType, Device, Tensor};
|
||||
use criterion::{black_box, criterion_group, Criterion, Throughput};
|
||||
use std::time::Instant;
|
||||
|
||||
fn run(
|
||||
x: &Tensor,
|
||||
k: &Tensor,
|
||||
padding: usize,
|
||||
output_padding: usize,
|
||||
stride: usize,
|
||||
dilation: usize,
|
||||
) {
|
||||
x.conv_transpose2d(k, padding, output_padding, stride, dilation)
|
||||
.unwrap();
|
||||
}
|
||||
|
||||
fn run_benchmark(c: &mut Criterion, device: &Device, dtype: DType, name: &str) {
|
||||
let t = Tensor::arange(0.0f32, 10000.0, device)
|
||||
.unwrap()
|
||||
.reshape((1, 4, 50, 50))
|
||||
.unwrap()
|
||||
.to_dtype(dtype)
|
||||
.unwrap();
|
||||
|
||||
let kernel = Tensor::arange(0.0f32, 100.0, device)
|
||||
.unwrap()
|
||||
.reshape((4, 1, 5, 5))
|
||||
.unwrap()
|
||||
.to_dtype(dtype)
|
||||
.unwrap();
|
||||
|
||||
let flops = t.dims().iter().product::<usize>() * dtype.size_in_bytes();
|
||||
|
||||
let mut group = c.benchmark_group(device.bench_name(name));
|
||||
group.throughput(Throughput::Bytes(flops as u64));
|
||||
group.bench_function("iter", move |b| {
|
||||
b.iter_custom(|iters| {
|
||||
let start = Instant::now();
|
||||
for _i in 0..iters {
|
||||
run(black_box(&t), black_box(&kernel), 1, 0, 1, 2);
|
||||
}
|
||||
device.sync().unwrap();
|
||||
start.elapsed()
|
||||
})
|
||||
});
|
||||
group.finish();
|
||||
}
|
||||
|
||||
fn criterion_benchmark(c: &mut Criterion) {
|
||||
let handler = BenchDeviceHandler::new().unwrap();
|
||||
for device in handler.devices {
|
||||
run_benchmark(c, &device, DType::F32, "conv_transpose2d_f32");
|
||||
run_benchmark(c, &device, DType::F16, "conv_transpose2d_f16");
|
||||
run_benchmark(c, &device, DType::BF16, "conv_transpose2d_bf16");
|
||||
}
|
||||
}
|
||||
|
||||
criterion_group!(benches, criterion_benchmark);
|
@ -1,6 +1,9 @@
|
||||
pub(crate) mod affine;
|
||||
pub(crate) mod conv_transpose2d;
|
||||
pub(crate) mod matmul;
|
||||
pub(crate) mod qmatmul;
|
||||
pub(crate) mod random;
|
||||
pub(crate) mod unary;
|
||||
pub(crate) mod where_cond;
|
||||
|
||||
use candle_core::{Device, Result};
|
||||
|
72
candle-core/benches/benchmarks/qmatmul.rs
Normal file
72
candle-core/benches/benchmarks/qmatmul.rs
Normal file
@ -0,0 +1,72 @@
|
||||
use crate::benchmarks::{BenchDevice, BenchDeviceHandler};
|
||||
use candle_core::{
|
||||
quantized::{self, GgmlDType, QMatMul},
|
||||
Device, Module, Tensor,
|
||||
};
|
||||
use criterion::{black_box, criterion_group, Criterion, Throughput};
|
||||
use std::time::Instant;
|
||||
|
||||
fn run(matmul: &QMatMul, x: &Tensor) {
|
||||
matmul.forward(x).unwrap();
|
||||
}
|
||||
|
||||
fn run_bench(c: &mut Criterion, device: &Device, dtype: GgmlDType) {
|
||||
let b = 1;
|
||||
let m = 1;
|
||||
let n = 1024;
|
||||
let k = 1024;
|
||||
|
||||
let lhs = (0..(m * k))
|
||||
.map(|v| v as f32 / (m * k) as f32)
|
||||
.collect::<Vec<_>>();
|
||||
let rhs = (0..(k * n))
|
||||
.map(|v| v as f32 / (n * k) as f32)
|
||||
.collect::<Vec<_>>();
|
||||
|
||||
let lhs = Tensor::from_slice(&lhs, (m, k), device).unwrap();
|
||||
let rhs = Tensor::from_slice(&rhs, (k, n), device).unwrap();
|
||||
|
||||
let qtensor = quantized::QTensor::quantize(&rhs.t().unwrap(), dtype).unwrap();
|
||||
let matmul = quantized::QMatMul::from_qtensor(qtensor).unwrap();
|
||||
|
||||
let flops = b * m * n * k;
|
||||
|
||||
let mut group = c.benchmark_group(device.bench_name(format!("qmatmul_{:?}", dtype)));
|
||||
group.sample_size(200);
|
||||
group.throughput(Throughput::Bytes(flops as u64));
|
||||
group.bench_function("iter", move |b| {
|
||||
b.iter_custom(|iters| {
|
||||
let start = Instant::now();
|
||||
for _i in 0..iters {
|
||||
run(black_box(&matmul), black_box(&lhs));
|
||||
}
|
||||
device.sync().unwrap();
|
||||
start.elapsed()
|
||||
})
|
||||
});
|
||||
group.finish();
|
||||
}
|
||||
|
||||
fn criterion_benchmark(c: &mut Criterion) {
|
||||
let handler = BenchDeviceHandler::new().unwrap();
|
||||
for device in handler.devices {
|
||||
for dtype in [
|
||||
GgmlDType::F32,
|
||||
GgmlDType::F16,
|
||||
GgmlDType::Q4_0,
|
||||
GgmlDType::Q4_1,
|
||||
GgmlDType::Q5_0,
|
||||
GgmlDType::Q5_1,
|
||||
GgmlDType::Q8_0,
|
||||
GgmlDType::Q2K,
|
||||
GgmlDType::Q3K,
|
||||
GgmlDType::Q4K,
|
||||
GgmlDType::Q5K,
|
||||
GgmlDType::Q6K,
|
||||
] {
|
||||
run_bench(c, &device, dtype);
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
criterion_group!(benches, criterion_benchmark);
|
49
candle-core/benches/benchmarks/unary.rs
Normal file
49
candle-core/benches/benchmarks/unary.rs
Normal file
@ -0,0 +1,49 @@
|
||||
use crate::benchmarks::{BenchDevice, BenchDeviceHandler};
|
||||
use candle_core::{DType, Device, Tensor};
|
||||
use criterion::{black_box, criterion_group, Criterion, Throughput};
|
||||
use std::time::Instant;
|
||||
|
||||
fn run(a: &Tensor) {
|
||||
a.sqrt().unwrap();
|
||||
}
|
||||
|
||||
fn run_unary_benchmark(c: &mut Criterion, device: &Device, dtype: DType, name: &str) {
|
||||
let b = 1;
|
||||
let m = 1024;
|
||||
let k = 1024;
|
||||
|
||||
let tensor = Tensor::arange(0.0f32, (b * m * k) as f32, device)
|
||||
.unwrap()
|
||||
.to_dtype(dtype)
|
||||
.unwrap()
|
||||
.reshape((b, m, k))
|
||||
.unwrap();
|
||||
|
||||
let flops = b * m * k * dtype.size_in_bytes();
|
||||
|
||||
let mut group = c.benchmark_group(device.bench_name(name));
|
||||
group.throughput(Throughput::Bytes(flops as u64));
|
||||
group.bench_function("iter", move |b| {
|
||||
b.iter_custom(|iters| {
|
||||
let start = Instant::now();
|
||||
for _i in 0..iters {
|
||||
run(black_box(&tensor));
|
||||
}
|
||||
device.sync().unwrap();
|
||||
start.elapsed()
|
||||
})
|
||||
});
|
||||
group.finish();
|
||||
}
|
||||
|
||||
fn criterion_benchmark(c: &mut Criterion) {
|
||||
let handler = BenchDeviceHandler::new().unwrap();
|
||||
for device in handler.devices {
|
||||
for dtype in [DType::F32, DType::BF16, DType::F16] {
|
||||
let name = format!("sqrt_{:?}", dtype);
|
||||
run_unary_benchmark(c, &device, dtype, &name);
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
criterion_group!(benches, criterion_benchmark);
|
@ -25,9 +25,9 @@ const SIZE: usize = B * M * K;
|
||||
const DATA: [u8; SIZE] = create_cond_arr::<SIZE>();
|
||||
|
||||
fn run_where_cond_benchmark(c: &mut Criterion, device: &Device, dtype: DType, name: &str) {
|
||||
let tensor = Tensor::from_slice(DATA.as_slice(), (B, M, K), &device).unwrap();
|
||||
let on_true = Tensor::ones((B, M, K), dtype, &device).unwrap();
|
||||
let on_false = Tensor::zeros((B, M, K), dtype, &device).unwrap();
|
||||
let tensor = Tensor::from_slice(DATA.as_slice(), (B, M, K), device).unwrap();
|
||||
let on_true = Tensor::ones((B, M, K), dtype, device).unwrap();
|
||||
let on_false = Tensor::zeros((B, M, K), dtype, device).unwrap();
|
||||
|
||||
let elements = B * M * K;
|
||||
// E.g. 2 f32 tensors + 1 u8 tensor
|
||||
|
@ -5,32 +5,29 @@ extern crate accelerate_src;
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
use anyhow::Result;
|
||||
use candle_core::{Device, Module, Tensor};
|
||||
|
||||
use candle_core::quantized::{QMatMul, QTensor};
|
||||
use candle_core::{Device, Tensor};
|
||||
|
||||
fn main() -> Result<()> {
|
||||
let device = Device::new_cuda(0)?;
|
||||
let q = Tensor::randn(0f32, 1.0, (72, 256), &device)?;
|
||||
let q_cpu = q.to_device(&Device::Cpu)?;
|
||||
let q = QTensor::quantize(&q, candle_core::quantized::GgmlDType::Q8K)?;
|
||||
let q = QMatMul::from_qtensor(q)?;
|
||||
let x = Tensor::randn(0f32, 1.0, (5, 256), &device)?;
|
||||
let res_q_cuda = q.forward(&x)?;
|
||||
println!("{res_q_cuda}");
|
||||
|
||||
let q_cpu = QTensor::quantize(&q_cpu, candle_core::quantized::GgmlDType::Q8K)?;
|
||||
let q_cpu_tensor = q_cpu.dequantize(&Device::Cpu)?;
|
||||
let q_cpu = QMatMul::from_qtensor(q_cpu)?;
|
||||
let x_cpu = x.to_device(&Device::Cpu)?;
|
||||
let res_q_cpu = q_cpu.forward(&x_cpu)?;
|
||||
println!("{res_q_cpu}");
|
||||
|
||||
let res_mm = x_cpu.matmul(&q_cpu_tensor.t()?)?;
|
||||
let diff = (res_mm - res_q_cuda.to_device(&Device::Cpu))?
|
||||
.abs()?
|
||||
.flatten_all()?
|
||||
.max(0)?;
|
||||
println!("{diff}");
|
||||
let x = Tensor::randn(0f32, 1.0, (8 * 4096, 8 * 4096), &device)?
|
||||
.to_dtype(candle_core::DType::BF16)?;
|
||||
candle_core::cuda::set_gemm_reduced_precision_f32(false);
|
||||
candle_core::cuda::set_gemm_reduced_precision_bf16(false);
|
||||
let _x1 = x.matmul(&x)?;
|
||||
drop(_x1);
|
||||
let start_time = std::time::Instant::now();
|
||||
let _x1 = x.matmul(&x)?;
|
||||
device.synchronize()?;
|
||||
println!("fp32: {:?}", start_time.elapsed());
|
||||
drop(_x1);
|
||||
candle_core::cuda::set_gemm_reduced_precision_f32(true);
|
||||
candle_core::cuda::set_gemm_reduced_precision_bf16(true);
|
||||
let _x1 = x.matmul(&x)?;
|
||||
drop(_x1);
|
||||
let start_time = std::time::Instant::now();
|
||||
let _x1 = x.matmul(&x)?;
|
||||
device.synchronize()?;
|
||||
println!("tf32: {:?}", start_time.elapsed());
|
||||
drop(_x1);
|
||||
Ok(())
|
||||
}
|
||||
|
28
candle-core/examples/metal_basics.rs
Normal file
28
candle-core/examples/metal_basics.rs
Normal file
@ -0,0 +1,28 @@
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
use anyhow::Result;
|
||||
use candle_core::{Device, Tensor};
|
||||
|
||||
fn main() -> Result<()> {
|
||||
// This requires the code to be run with MTL_CAPTURE_ENABLED=1
|
||||
let device = Device::new_metal(0)?;
|
||||
let metal_device = match &device {
|
||||
Device::Metal(m) => m,
|
||||
_ => anyhow::bail!("unexpected device"),
|
||||
};
|
||||
metal_device.capture("/tmp/candle.gputrace")?;
|
||||
// This first synchronize ensures that a new command buffer gets created after setting up the
|
||||
// capture scope.
|
||||
device.synchronize()?;
|
||||
let x = Tensor::randn(0f32, 1.0, (128, 128), &device)?;
|
||||
let x1 = x.add(&x)?;
|
||||
println!("{x1:?}");
|
||||
// This second synchronize ensures that the command buffer gets commited before the end of the
|
||||
// capture scope.
|
||||
device.synchronize()?;
|
||||
Ok(())
|
||||
}
|
@ -127,11 +127,24 @@ pub trait BackendDevice: Sized + std::fmt::Debug + Clone {
|
||||
|
||||
fn ones_impl(&self, _shape: &Shape, _dtype: DType) -> Result<Self::Storage>;
|
||||
|
||||
/// # Safety
|
||||
/// This function is unsafe as it doesn't initialize the underlying data store.
|
||||
/// The caller should ensure that the data is properly initialized as early as possible
|
||||
/// after this call.
|
||||
unsafe fn alloc_uninit(&self, _shape: &Shape, _dtype: DType) -> Result<Self::Storage>;
|
||||
|
||||
fn storage_from_slice<T: crate::WithDType>(&self, _: &[T]) -> Result<Self::Storage>;
|
||||
|
||||
fn storage_from_cpu_storage(&self, _: &CpuStorage) -> Result<Self::Storage>;
|
||||
|
||||
fn storage_from_cpu_storage_owned(&self, _: CpuStorage) -> Result<Self::Storage>;
|
||||
|
||||
fn rand_uniform(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage>;
|
||||
|
||||
fn rand_normal(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage>;
|
||||
|
||||
fn set_seed(&self, _: u64) -> Result<()>;
|
||||
|
||||
/// Synchronize should block until all the operations on the device are completed.
|
||||
fn synchronize(&self) -> Result<()>;
|
||||
}
|
||||
|
@ -1,3 +1,4 @@
|
||||
/// Methods for backpropagation of gradients.
|
||||
use crate::op::{BinaryOp, Op, ReduceOp, UnaryOp};
|
||||
use crate::{Error, Result, Tensor, TensorId};
|
||||
use std::collections::HashMap;
|
||||
@ -111,7 +112,8 @@ impl Tensor {
|
||||
}
|
||||
Op::Unary(_node, UnaryOp::Ceil)
|
||||
| Op::Unary(_node, UnaryOp::Floor)
|
||||
| Op::Unary(_node, UnaryOp::Round) => nodes,
|
||||
| Op::Unary(_node, UnaryOp::Round)
|
||||
| Op::Unary(_node, UnaryOp::Sign) => nodes,
|
||||
Op::Reshape(node)
|
||||
| Op::UpsampleNearest1D { arg: node, .. }
|
||||
| Op::UpsampleNearest2D { arg: node, .. }
|
||||
@ -310,9 +312,32 @@ impl Tensor {
|
||||
Op::ConvTranspose1D { .. } => Err(Error::BackwardNotSupported {
|
||||
op: "conv-transpose1d",
|
||||
})?,
|
||||
Op::ConvTranspose2D { .. } => Err(Error::BackwardNotSupported {
|
||||
op: "conv-transpose2d",
|
||||
})?,
|
||||
Op::ConvTranspose2D {
|
||||
arg,
|
||||
kernel,
|
||||
padding,
|
||||
stride,
|
||||
dilation,
|
||||
output_padding: _output_padding,
|
||||
} => {
|
||||
let grad_arg = grad.conv2d(kernel, *padding, *stride, *dilation, 1)?;
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
*sum_grad = sum_grad.add(&grad_arg)?;
|
||||
|
||||
let grad_kernel = grad
|
||||
.transpose(0, 1)?
|
||||
.conv2d(&arg.transpose(0, 1)?, *padding, *dilation, *stride, 1)?
|
||||
.transpose(0, 1)?;
|
||||
let sum_grad = grads.or_insert(kernel)?;
|
||||
let (_, _, k0, k1) = kernel.dims4()?;
|
||||
let (_, _, g_k0, g_k1) = grad_kernel.dims4()?;
|
||||
let grad_kernel = if g_k0 != k0 || g_k1 != k1 {
|
||||
grad_kernel.narrow(2, 0, k0)?.narrow(3, 0, k1)?
|
||||
} else {
|
||||
grad_kernel
|
||||
};
|
||||
*sum_grad = sum_grad.add(&grad_kernel)?;
|
||||
}
|
||||
Op::AvgPool2D {
|
||||
arg,
|
||||
kernel_size,
|
||||
@ -464,7 +489,6 @@ impl Tensor {
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
*sum_grad = sum_grad.add(&grad)?;
|
||||
}
|
||||
Op::Cmp(_args, _) => {}
|
||||
Op::Reduce(arg, ReduceOp::Max, reduced_dims) => {
|
||||
let node = broadcast_back(arg, node, reduced_dims)?;
|
||||
let grad = broadcast_back(arg, &grad, reduced_dims)?;
|
||||
@ -554,20 +578,18 @@ impl Tensor {
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
*sum_grad = sum_grad.add(&arg_grad)?
|
||||
}
|
||||
Op::Reduce(_, ReduceOp::ArgMin, _) => {}
|
||||
Op::Reduce(_, ReduceOp::ArgMax, _) => {}
|
||||
Op::Unary(_, UnaryOp::Floor)
|
||||
| Op::Unary(_, UnaryOp::Round)
|
||||
| Op::Reduce(_, ReduceOp::ArgMin, _)
|
||||
| Op::Reduce(_, ReduceOp::ArgMax, _)
|
||||
| Op::Unary(_, UnaryOp::Sign)
|
||||
| Op::Cmp(_, _) => {}
|
||||
Op::Reshape(arg) => {
|
||||
let arg_grad = grad.reshape(arg.dims())?;
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
*sum_grad = sum_grad.add(&arg_grad)?
|
||||
}
|
||||
Op::Unary(_, UnaryOp::Ceil) => Err(Error::BackwardNotSupported { op: "ceil" })?,
|
||||
Op::Unary(_, UnaryOp::Floor) => {
|
||||
Err(Error::BackwardNotSupported { op: "floor" })?
|
||||
}
|
||||
Op::Unary(_, UnaryOp::Round) => {
|
||||
Err(Error::BackwardNotSupported { op: "round" })?
|
||||
}
|
||||
Op::Unary(arg, UnaryOp::Gelu) => {
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
let cube = arg.powf(3.)?;
|
||||
@ -601,9 +623,9 @@ impl Tensor {
|
||||
}
|
||||
Op::Unary(arg, UnaryOp::Silu) => {
|
||||
let sum_grad = grads.or_insert(arg)?;
|
||||
// d/dx silu = sigmoid(x) * (1 + x * (1 - sigmoid(x)))
|
||||
let sigmoid_arg = (*node / arg)?;
|
||||
let silu_grad = (&sigmoid_arg * (1. + (arg * (1. - &sigmoid_arg)?)?)?)?;
|
||||
// d/dx silu = sigmoid(x) * (1 + x * (1 - sigmoid(x))) = sigmoid(x) * (1 - node) + node
|
||||
let sigmoid_arg = (arg.neg()?.exp()? + 1.)?.recip()?;
|
||||
let silu_grad = &sigmoid_arg * (1. - *node) + *node;
|
||||
*sum_grad = sum_grad.add(&(&grad * silu_grad)?)?
|
||||
}
|
||||
Op::Elu(arg, alpha) => {
|
||||
@ -612,7 +634,8 @@ impl Tensor {
|
||||
let zeros = arg.zeros_like()?;
|
||||
let positive_mask = arg.gt(&zeros)?.to_dtype(arg.dtype())?;
|
||||
let negative_mask = arg.le(&zeros)?.to_dtype(arg.dtype())?;
|
||||
let negative_exp_mask = ((negative_mask * arg.exp())? * *alpha)?;
|
||||
// node == alpha * (e^x - 1) for x <= 0, reuse it
|
||||
let negative_exp_mask = (negative_mask * (*node + *alpha))?;
|
||||
let combined_mask = (positive_mask + negative_exp_mask)?;
|
||||
*sum_grad = sum_grad.add(&(grad * combined_mask)?)?
|
||||
}
|
||||
@ -690,30 +713,38 @@ impl Tensor {
|
||||
}
|
||||
}
|
||||
|
||||
/// A store for gradients, associating a tensor id to the corresponding gradient tensor, used for back propagation.
|
||||
#[derive(Debug)]
|
||||
pub struct GradStore(HashMap<TensorId, Tensor>);
|
||||
|
||||
impl GradStore {
|
||||
/// Create a new gradient store
|
||||
fn new() -> Self {
|
||||
GradStore(HashMap::new())
|
||||
}
|
||||
|
||||
/// Get the gradient tensor corresponding to the given tensor id
|
||||
pub fn get_id(&self, id: TensorId) -> Option<&Tensor> {
|
||||
self.0.get(&id)
|
||||
}
|
||||
|
||||
/// Get the gradient tensor associated with the given tensor
|
||||
pub fn get(&self, tensor: &Tensor) -> Option<&Tensor> {
|
||||
self.0.get(&tensor.id())
|
||||
}
|
||||
|
||||
/// Remove the gradient tensor associated with the given tensor, returning it if it exists
|
||||
pub fn remove(&mut self, tensor: &Tensor) -> Option<Tensor> {
|
||||
self.0.remove(&tensor.id())
|
||||
}
|
||||
|
||||
/// Insert a gradient tensor associated with the given tensor, returning the previous gradient tensor if it existed
|
||||
pub fn insert(&mut self, tensor: &Tensor, grad: Tensor) -> Option<Tensor> {
|
||||
self.0.insert(tensor.id(), grad)
|
||||
}
|
||||
|
||||
/// Get the gradient tensor associated with the given tensor, or, if it does not exist,
|
||||
/// insert a tensor of zeroes, with the same shape and type as the given tensors and return it
|
||||
fn or_insert(&mut self, tensor: &Tensor) -> Result<&mut Tensor> {
|
||||
use std::collections::hash_map::Entry;
|
||||
let grad = match self.0.entry(tensor.id()) {
|
||||
@ -725,4 +756,9 @@ impl GradStore {
|
||||
};
|
||||
Ok(grad)
|
||||
}
|
||||
|
||||
/// Get the tensor ids of the stored gradient tensors
|
||||
pub fn get_ids(&self) -> impl Iterator<Item = &TensorId> {
|
||||
self.0.keys()
|
||||
}
|
||||
}
|
||||
|
@ -1,6 +1,7 @@
|
||||
pub mod erf;
|
||||
pub mod kernels;
|
||||
|
||||
#[allow(unused)]
|
||||
trait Cpu<const ARR: usize> {
|
||||
type Unit;
|
||||
type Array;
|
||||
@ -18,6 +19,7 @@ trait Cpu<const ARR: usize> {
|
||||
unsafe fn vec_store(mem_addr: *mut f32, a: Self::Unit);
|
||||
}
|
||||
|
||||
#[allow(unused)]
|
||||
trait CpuF16<const ARR: usize> {
|
||||
type Unit;
|
||||
type Array;
|
||||
|
@ -4,8 +4,13 @@ use crate::{DType, Error, IntDType, Layout, Result, Shape, WithDType};
|
||||
use half::{bf16, f16};
|
||||
use rayon::prelude::*;
|
||||
|
||||
mod utils;
|
||||
pub use utils::{
|
||||
binary_map, binary_map_vec, unary_map, unary_map_vec, Map1, Map1Any, Map2, Map2U8,
|
||||
};
|
||||
|
||||
const USE_IM2COL_CONV1D: bool = true;
|
||||
const USE_IM2COL_CONV1D_TR: bool = true;
|
||||
const USE_COL2IM_CONV1D_TR: bool = true;
|
||||
const USE_IM2COL_CONV2D: bool = true;
|
||||
|
||||
// TODO: Maybe we should not implement [Clone] here and instead have an explicit allocator +
|
||||
@ -21,105 +26,20 @@ pub enum CpuStorage {
|
||||
F64(Vec<f64>),
|
||||
}
|
||||
|
||||
#[derive(Debug, Clone)]
|
||||
pub enum CpuStorageRef<'a> {
|
||||
U8(&'a [u8]),
|
||||
U32(&'a [u32]),
|
||||
I64(&'a [i64]),
|
||||
BF16(&'a [bf16]),
|
||||
F16(&'a [f16]),
|
||||
F32(&'a [f32]),
|
||||
F64(&'a [f64]),
|
||||
}
|
||||
|
||||
#[derive(Debug, Clone)]
|
||||
pub struct CpuDevice;
|
||||
|
||||
pub trait Map1 {
|
||||
fn f<T: WithDType>(&self, vs: &[T], layout: &Layout) -> Result<Vec<T>>;
|
||||
|
||||
fn map(&self, vs: &CpuStorage, layout: &Layout) -> Result<CpuStorage> {
|
||||
match vs {
|
||||
CpuStorage::U8(vs) => Ok(CpuStorage::U8(self.f(vs, layout)?)),
|
||||
CpuStorage::U32(vs) => Ok(CpuStorage::U32(self.f(vs, layout)?)),
|
||||
CpuStorage::I64(vs) => Ok(CpuStorage::I64(self.f(vs, layout)?)),
|
||||
CpuStorage::BF16(vs) => Ok(CpuStorage::BF16(self.f(vs, layout)?)),
|
||||
CpuStorage::F16(vs) => Ok(CpuStorage::F16(self.f(vs, layout)?)),
|
||||
CpuStorage::F32(vs) => Ok(CpuStorage::F32(self.f(vs, layout)?)),
|
||||
CpuStorage::F64(vs) => Ok(CpuStorage::F64(self.f(vs, layout)?)),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map1Any {
|
||||
fn f<T: WithDType, W: Fn(Vec<T>) -> CpuStorage>(
|
||||
&self,
|
||||
vs: &[T],
|
||||
layout: &Layout,
|
||||
wrap: W,
|
||||
) -> Result<CpuStorage>;
|
||||
|
||||
fn map(&self, vs: &CpuStorage, layout: &Layout) -> Result<CpuStorage> {
|
||||
match vs {
|
||||
CpuStorage::U8(vs) => Ok(self.f(vs, layout, CpuStorage::U8)?),
|
||||
CpuStorage::U32(vs) => Ok(self.f(vs, layout, CpuStorage::U32)?),
|
||||
CpuStorage::I64(vs) => Ok(self.f(vs, layout, CpuStorage::I64)?),
|
||||
CpuStorage::BF16(vs) => Ok(self.f(vs, layout, CpuStorage::BF16)?),
|
||||
CpuStorage::F16(vs) => Ok(self.f(vs, layout, CpuStorage::F16)?),
|
||||
CpuStorage::F32(vs) => Ok(self.f(vs, layout, CpuStorage::F32)?),
|
||||
CpuStorage::F64(vs) => Ok(self.f(vs, layout, CpuStorage::F64)?),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
type C = CpuStorage;
|
||||
pub trait Map2 {
|
||||
const OP: &'static str;
|
||||
fn f<T: WithDType>(&self, v1: &[T], l1: &Layout, v2: &[T], l2: &Layout) -> Result<Vec<T>>;
|
||||
|
||||
fn map(
|
||||
&self,
|
||||
v1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
v2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
) -> Result<CpuStorage> {
|
||||
match (v1, v2) {
|
||||
(C::U8(v1), C::U8(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::U32(v1), C::U32(v2)) => Ok(C::U32(self.f(v1, l1, v2, l2)?)),
|
||||
(C::I64(v1), C::I64(v2)) => Ok(C::I64(self.f(v1, l1, v2, l2)?)),
|
||||
(C::BF16(v1), C::BF16(v2)) => Ok(C::BF16(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F16(v1), C::F16(v2)) => Ok(C::F16(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F32(v1), C::F32(v2)) => Ok(C::F32(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F64(v1), C::F64(v2)) => Ok(C::F64(self.f(v1, l1, v2, l2)?)),
|
||||
_ => Err(Error::DTypeMismatchBinaryOp {
|
||||
lhs: v1.dtype(),
|
||||
rhs: v2.dtype(),
|
||||
op: Self::OP,
|
||||
}
|
||||
.bt()),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2U8 {
|
||||
const OP: &'static str;
|
||||
fn f<T: WithDType>(&self, v1: &[T], l1: &Layout, v2: &[T], l2: &Layout) -> Result<Vec<u8>>;
|
||||
|
||||
fn map(
|
||||
&self,
|
||||
v1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
v2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
) -> Result<CpuStorage> {
|
||||
match (v1, v2) {
|
||||
(C::U8(v1), C::U8(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::U32(v1), C::U32(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::I64(v1), C::I64(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::BF16(v1), C::BF16(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F16(v1), C::F16(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F32(v1), C::F32(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F64(v1), C::F64(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
_ => Err(Error::DTypeMismatchBinaryOp {
|
||||
lhs: v1.dtype(),
|
||||
rhs: v2.dtype(),
|
||||
op: Self::OP,
|
||||
}
|
||||
.bt()),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
struct Cmp(CmpOp);
|
||||
impl Map2U8 for Cmp {
|
||||
const OP: &'static str = "cmp";
|
||||
@ -201,7 +121,8 @@ impl ReduceIndex {
|
||||
let dst_len = src_l.shape().elem_count() / reduce_dim_size;
|
||||
let mut dst: Vec<U> = Vec::with_capacity(dst_len);
|
||||
let dst_to_set = dst.spare_capacity_mut();
|
||||
let dst_to_set = unsafe { std::mem::transmute::<_, &mut [U]>(dst_to_set) };
|
||||
let dst_to_set =
|
||||
unsafe { std::mem::transmute::<&mut [std::mem::MaybeUninit<U>], &mut [U]>(dst_to_set) };
|
||||
match src_l.contiguous_offsets() {
|
||||
Some((o1, o2)) => {
|
||||
let src = &src[o1..o2];
|
||||
@ -366,275 +287,6 @@ impl<'a> Map1 for ReduceSum<'a> {
|
||||
}
|
||||
}
|
||||
|
||||
pub fn unary_map<T: Copy, U: Copy, F: FnMut(T) -> U>(
|
||||
vs: &[T],
|
||||
layout: &Layout,
|
||||
mut f: F,
|
||||
) -> Vec<U> {
|
||||
match layout.strided_blocks() {
|
||||
crate::StridedBlocks::SingleBlock { start_offset, len } => vs
|
||||
[start_offset..start_offset + len]
|
||||
.iter()
|
||||
.map(|&v| f(v))
|
||||
.collect(),
|
||||
crate::StridedBlocks::MultipleBlocks {
|
||||
block_start_index,
|
||||
block_len,
|
||||
} => {
|
||||
let mut result = Vec::with_capacity(layout.shape().elem_count());
|
||||
// Specialize the case where block_len is one to avoid the second loop.
|
||||
if block_len == 1 {
|
||||
for index in block_start_index {
|
||||
let v = unsafe { vs.get_unchecked(index) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
} else {
|
||||
for index in block_start_index {
|
||||
for offset in 0..block_len {
|
||||
let v = unsafe { vs.get_unchecked(index + offset) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
}
|
||||
}
|
||||
result
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn unary_map_vec<T: Copy, U: Copy, F: FnMut(T) -> U, FV: FnMut(&[T], &mut [U])>(
|
||||
vs: &[T],
|
||||
layout: &Layout,
|
||||
mut f: F,
|
||||
mut f_vec: FV,
|
||||
) -> Vec<U> {
|
||||
match layout.strided_blocks() {
|
||||
crate::StridedBlocks::SingleBlock { start_offset, len } => {
|
||||
let mut ys: Vec<U> = Vec::with_capacity(len);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe { std::mem::transmute::<_, &mut [U]>(ys_to_set) };
|
||||
f_vec(&vs[start_offset..start_offset + len], ys_to_set);
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(len) };
|
||||
ys
|
||||
}
|
||||
crate::StridedBlocks::MultipleBlocks {
|
||||
block_start_index,
|
||||
block_len,
|
||||
} => {
|
||||
let el_count = layout.shape().elem_count();
|
||||
// Specialize the case where block_len is one to avoid the second loop.
|
||||
if block_len == 1 {
|
||||
let mut result = Vec::with_capacity(el_count);
|
||||
for index in block_start_index {
|
||||
let v = unsafe { vs.get_unchecked(index) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
result
|
||||
} else {
|
||||
let mut ys: Vec<U> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe { std::mem::transmute::<_, &mut [U]>(ys_to_set) };
|
||||
let mut dst_index = 0;
|
||||
for src_index in block_start_index {
|
||||
let vs = &vs[src_index..src_index + block_len];
|
||||
let ys = &mut ys_to_set[dst_index..dst_index + block_len];
|
||||
f_vec(vs, ys);
|
||||
dst_index += block_len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
// This function maps over two strided index sequences.
|
||||
pub fn binary_map<T: Copy, U: Copy, F: FnMut(T, T) -> U>(
|
||||
lhs_l: &Layout,
|
||||
rhs_l: &Layout,
|
||||
lhs: &[T],
|
||||
rhs: &[T],
|
||||
mut f: F,
|
||||
) -> Vec<U> {
|
||||
match (lhs_l.contiguous_offsets(), rhs_l.contiguous_offsets()) {
|
||||
(Some((o_l1, o_l2)), Some((o_r1, o_r2))) => lhs[o_l1..o_l2]
|
||||
.iter()
|
||||
.zip(rhs[o_r1..o_r2].iter())
|
||||
.map(|(&l, &r)| f(l, r))
|
||||
.collect(),
|
||||
(Some((o_l1, o_l2)), None) => {
|
||||
// TODO: Maybe we want to avoid going through the layout twice.
|
||||
match rhs_l.offsets_b() {
|
||||
Some(ob) => {
|
||||
let mut i_in_block = 0;
|
||||
let mut i_right_broadcast = 0;
|
||||
lhs[o_l1..o_l2]
|
||||
.iter()
|
||||
.map(|&l| {
|
||||
let r = unsafe { rhs.get_unchecked(i_in_block + ob.start) };
|
||||
i_right_broadcast += 1;
|
||||
if i_right_broadcast >= ob.right_broadcast {
|
||||
i_in_block += 1;
|
||||
i_right_broadcast = 0;
|
||||
}
|
||||
if i_in_block >= ob.len {
|
||||
i_in_block = 0
|
||||
}
|
||||
f(l, *r)
|
||||
})
|
||||
.collect()
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
(None, Some((o_r1, o_r2))) => {
|
||||
// TODO: Maybe we want to avoid going through the layout twice.
|
||||
match lhs_l.offsets_b() {
|
||||
Some(ob) => {
|
||||
let mut i_in_block = 0;
|
||||
let mut i_right_broadcast = 0;
|
||||
rhs[o_r1..o_r2]
|
||||
.iter()
|
||||
.map(|&r| {
|
||||
let l = unsafe { lhs.get_unchecked(i_in_block + ob.start) };
|
||||
i_right_broadcast += 1;
|
||||
if i_right_broadcast >= ob.right_broadcast {
|
||||
i_in_block += 1;
|
||||
i_right_broadcast = 0;
|
||||
}
|
||||
if i_in_block >= ob.len {
|
||||
i_in_block = 0
|
||||
}
|
||||
f(*l, r)
|
||||
})
|
||||
.collect()
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
_ => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
|
||||
// Similar to binary_map but with vectorized variants.
|
||||
pub fn binary_map_vec<T: Copy, F: FnMut(T, T) -> T, FV: FnMut(&[T], &[T], &mut [T])>(
|
||||
lhs_l: &Layout,
|
||||
rhs_l: &Layout,
|
||||
lhs: &[T],
|
||||
rhs: &[T],
|
||||
mut f: F,
|
||||
mut f_vec: FV,
|
||||
) -> Vec<T> {
|
||||
let el_count = lhs_l.shape().elem_count();
|
||||
match (lhs_l.contiguous_offsets(), rhs_l.contiguous_offsets()) {
|
||||
(Some((o_l1, o_l2)), Some((o_r1, o_r2))) => {
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe { std::mem::transmute::<_, &mut [T]>(ys_to_set) };
|
||||
f_vec(&lhs[o_l1..o_l2], &rhs[o_r1..o_r2], ys_to_set);
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
(Some((o_l1, o_l2)), None) => match rhs_l.offsets_b() {
|
||||
Some(ob) if ob.right_broadcast == 1 => {
|
||||
let rhs = &rhs[ob.start..ob.start + ob.len];
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe { std::mem::transmute::<_, &mut [T]>(ys_to_set) };
|
||||
let mut dst_i = 0;
|
||||
for src_i in (o_l1..o_l2).step_by(ob.len) {
|
||||
f_vec(
|
||||
&lhs[src_i..src_i + ob.len],
|
||||
rhs,
|
||||
&mut ys_to_set[dst_i..dst_i + ob.len],
|
||||
);
|
||||
dst_i += ob.len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
Some(ob) => {
|
||||
let rhs = &rhs[ob.start..ob.start + ob.len];
|
||||
let mut ys = lhs[o_l1..o_l2].to_vec();
|
||||
for idx_l in 0..ob.left_broadcast {
|
||||
let start = idx_l * ob.len * ob.right_broadcast;
|
||||
for (i, &r) in rhs.iter().enumerate() {
|
||||
let start = start + i * ob.right_broadcast;
|
||||
for v in ys[start..start + ob.right_broadcast].iter_mut() {
|
||||
*v = f(*v, r)
|
||||
}
|
||||
}
|
||||
}
|
||||
ys
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
},
|
||||
(None, Some((o_r1, o_r2))) => match lhs_l.offsets_b() {
|
||||
Some(ob) if ob.right_broadcast == 1 => {
|
||||
let lhs = &lhs[ob.start..ob.start + ob.len];
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe { std::mem::transmute::<_, &mut [T]>(ys_to_set) };
|
||||
let mut dst_i = 0;
|
||||
for src_i in (o_r1..o_r2).step_by(ob.len) {
|
||||
f_vec(
|
||||
lhs,
|
||||
&rhs[src_i..src_i + ob.len],
|
||||
&mut ys_to_set[dst_i..dst_i + ob.len],
|
||||
);
|
||||
dst_i += ob.len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
Some(ob) => {
|
||||
let lhs = &lhs[ob.start..ob.start + ob.len];
|
||||
let mut ys = rhs[o_r1..o_r2].to_vec();
|
||||
for idx_l in 0..ob.left_broadcast {
|
||||
let start = idx_l * ob.len * ob.right_broadcast;
|
||||
for (i, &l) in lhs.iter().enumerate() {
|
||||
let start = start + i * ob.right_broadcast;
|
||||
for v in ys[start..start + ob.right_broadcast].iter_mut() {
|
||||
*v = f(l, *v)
|
||||
}
|
||||
}
|
||||
}
|
||||
ys
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
},
|
||||
_ => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
|
||||
struct Affine(f64, f64);
|
||||
|
||||
impl Map1 for Affine {
|
||||
@ -1564,6 +1216,30 @@ impl MatMul {
|
||||
}))
|
||||
.bt()
|
||||
}
|
||||
|
||||
fn ab_skip(&self, lhs_l: &Layout, rhs_l: &Layout) -> Result<(usize, usize)> {
|
||||
let lhs_stride = lhs_l.stride();
|
||||
let rhs_stride = rhs_l.stride();
|
||||
let rank = lhs_stride.len();
|
||||
let (_b, m, n, k) = self.0;
|
||||
let a_skip: usize = match lhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * lhs_l.dims()[1] => stride,
|
||||
[_, stride] if lhs_l.dims()[0] == 1 => stride,
|
||||
[stride, _] if lhs_l.dims()[1] == 1 => stride,
|
||||
[stride] => stride,
|
||||
[] => m * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous lhs"))?,
|
||||
};
|
||||
let b_skip: usize = match rhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * rhs_l.dims()[1] => stride,
|
||||
[_, stride] if rhs_l.dims()[0] == 1 => stride,
|
||||
[stride, _] if rhs_l.dims()[1] == 1 => stride,
|
||||
[stride] => stride,
|
||||
[] => n * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?,
|
||||
};
|
||||
Ok((a_skip, b_skip))
|
||||
}
|
||||
}
|
||||
|
||||
impl Map2 for MatMul {
|
||||
@ -1597,18 +1273,7 @@ impl Map2 for MatMul {
|
||||
let rhs_cs = rhs_stride[rank - 1];
|
||||
let rhs_rs = rhs_stride[rank - 2];
|
||||
|
||||
let a_skip: usize = match lhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * lhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => m * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous lhs"))?,
|
||||
};
|
||||
let b_skip: usize = match rhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * rhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => n * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?,
|
||||
};
|
||||
let (a_skip, b_skip) = self.ab_skip(lhs_l, rhs_l)?;
|
||||
let c_skip: usize = m * n;
|
||||
|
||||
let dst_shape: Shape = (m, n).into();
|
||||
@ -1668,20 +1333,8 @@ impl Map2 for MatMul {
|
||||
|
||||
let lhs_stride = lhs_l.stride();
|
||||
let rhs_stride = rhs_l.stride();
|
||||
let rank = lhs_stride.len();
|
||||
|
||||
let a_skip: usize = match lhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * lhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => m * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous lhs"))?,
|
||||
};
|
||||
let b_skip: usize = match rhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * rhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => n * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?,
|
||||
};
|
||||
let (a_skip, b_skip) = self.ab_skip(lhs_l, rhs_l)?;
|
||||
let c_skip: usize = m * n;
|
||||
|
||||
let rhs_m1 = rhs_stride[rhs_stride.len() - 1];
|
||||
@ -1689,7 +1342,7 @@ impl Map2 for MatMul {
|
||||
let lhs_m1 = lhs_stride[lhs_stride.len() - 1];
|
||||
let lhs_m2 = lhs_stride[lhs_stride.len() - 2];
|
||||
|
||||
let (lda, transa) = if rhs_m1 == 1 && rhs_m2 == n {
|
||||
let (lda, transa) = if (rhs_m1 == 1 || n == 1) && (rhs_m2 == n || k == 1) {
|
||||
(n as i32, b'N')
|
||||
} else if rhs_m1 == k && rhs_m2 == 1 {
|
||||
(k as i32, b'T')
|
||||
@ -1697,7 +1350,7 @@ impl Map2 for MatMul {
|
||||
Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?
|
||||
};
|
||||
// The b tensor has dims batching, m, k (lhs)
|
||||
let (ldb, transb) = if lhs_m1 == 1 && lhs_m2 == k {
|
||||
let (ldb, transb) = if (lhs_m1 == 1 || k == 1) && (lhs_m2 == k || m == 1) {
|
||||
(k as i32, b'N')
|
||||
} else if lhs_m1 == m && lhs_m2 == 1 {
|
||||
(m as i32, b'T')
|
||||
@ -1771,20 +1424,8 @@ impl Map2 for MatMul {
|
||||
|
||||
let lhs_stride = lhs_l.stride();
|
||||
let rhs_stride = rhs_l.stride();
|
||||
let rank = lhs_stride.len();
|
||||
|
||||
let a_skip: usize = match lhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * lhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => m * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous lhs"))?,
|
||||
};
|
||||
let b_skip: usize = match rhs_stride[..rank - 2] {
|
||||
[s1, stride] if s1 == stride * rhs_l.dims()[1] => stride,
|
||||
[stride] => stride,
|
||||
[] => n * k,
|
||||
_ => Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?,
|
||||
};
|
||||
let (a_skip, b_skip) = self.ab_skip(lhs_l, rhs_l)?;
|
||||
let c_skip: usize = m * n;
|
||||
|
||||
let rhs_m1 = rhs_stride[rhs_stride.len() - 1];
|
||||
@ -1792,7 +1433,7 @@ impl Map2 for MatMul {
|
||||
let lhs_m1 = lhs_stride[lhs_stride.len() - 1];
|
||||
let lhs_m2 = lhs_stride[lhs_stride.len() - 2];
|
||||
|
||||
let (lda, transa) = if rhs_m1 == 1 && rhs_m2 == n {
|
||||
let (lda, transa) = if (rhs_m1 == 1 || n == 1) && (rhs_m2 == n || k == 1) {
|
||||
(n as i32, b'N')
|
||||
} else if rhs_m1 == k && rhs_m2 == 1 {
|
||||
(k as i32, b'T')
|
||||
@ -1800,7 +1441,7 @@ impl Map2 for MatMul {
|
||||
Err(self.striding_error(lhs_l, rhs_l, "non-contiguous rhs"))?
|
||||
};
|
||||
// The b tensor has dims batching, m, k (lhs)
|
||||
let (ldb, transb) = if lhs_m1 == 1 && lhs_m2 == k {
|
||||
let (ldb, transb) = if (lhs_m1 == 1 || k == 1) && (lhs_m2 == k || m == 1) {
|
||||
(k as i32, b'N')
|
||||
} else if lhs_m1 == m && lhs_m2 == 1 {
|
||||
(m as i32, b'T')
|
||||
@ -2582,7 +2223,10 @@ impl BackendStorage for CpuStorage {
|
||||
col.matmul(kernel, (b, m, n, k), &col_l, &kernel_l)?
|
||||
} else {
|
||||
// Make the kernel contiguous if not already the case.
|
||||
let mut kernel_c = self.device().zeros_impl(kernel_l.shape(), kernel.dtype())?;
|
||||
let mut kernel_c = unsafe {
|
||||
self.device()
|
||||
.alloc_uninit(kernel_l.shape(), kernel.dtype())?
|
||||
};
|
||||
kernel.copy_strided_src(&mut kernel_c, 0, kernel_l)?;
|
||||
let kernel_l = Layout::contiguous_with_offset((1, n, k), kernel_l.start_offset())
|
||||
.transpose(1, 2)?
|
||||
@ -2590,7 +2234,7 @@ impl BackendStorage for CpuStorage {
|
||||
col.matmul(kernel, (b, m, n, k), &col_l, &kernel_l)?
|
||||
};
|
||||
let res_l = Layout::contiguous((b, l_out, params.c_out)).transpose(1, 2)?;
|
||||
let mut res_t = self.device().zeros_impl(res_l.shape(), res.dtype())?;
|
||||
let mut res_t = unsafe { self.device().alloc_uninit(res_l.shape(), res.dtype())? };
|
||||
res.copy_strided_src(&mut res_t, 0, &res_l)?;
|
||||
Ok(res_t)
|
||||
}
|
||||
@ -2606,7 +2250,7 @@ impl BackendStorage for CpuStorage {
|
||||
&& params.dilation == 1
|
||||
&& params.padding == 0
|
||||
&& params.output_padding == 0;
|
||||
if USE_IM2COL_CONV1D_TR && can_use_col2im {
|
||||
if USE_COL2IM_CONV1D_TR && can_use_col2im {
|
||||
let (b_size, c_in, l_in) = l.shape().dims3()?;
|
||||
let (c_in2, c_out, k_size) = kernel_l.shape().dims3()?;
|
||||
if !kernel_l.is_contiguous() {
|
||||
@ -2681,7 +2325,10 @@ impl BackendStorage for CpuStorage {
|
||||
col.matmul(kernel, (b, m, n, k), &col_l, &kernel_l)?
|
||||
} else {
|
||||
// Make the kernel contiguous if not already the case.
|
||||
let mut kernel_c = self.device().zeros_impl(kernel_l.shape(), kernel.dtype())?;
|
||||
let mut kernel_c = unsafe {
|
||||
self.device()
|
||||
.alloc_uninit(kernel_l.shape(), kernel.dtype())?
|
||||
};
|
||||
kernel.copy_strided_src(&mut kernel_c, 0, kernel_l)?;
|
||||
let kernel_l = Layout::contiguous_with_offset((1, n, k), kernel_l.start_offset())
|
||||
.transpose(1, 2)?
|
||||
@ -2691,7 +2338,7 @@ impl BackendStorage for CpuStorage {
|
||||
let res_l = Layout::contiguous((b, h_out, w_out, params.c_out))
|
||||
.transpose(1, 2)?
|
||||
.transpose(1, 3)?;
|
||||
let mut res_t = self.device().zeros_impl(res_l.shape(), res.dtype())?;
|
||||
let mut res_t = unsafe { self.device().alloc_uninit(res_l.shape(), res.dtype())? };
|
||||
res.copy_strided_src(&mut res_t, 0, &res_l)?;
|
||||
Ok(res_t)
|
||||
}
|
||||
@ -2810,10 +2457,18 @@ impl BackendDevice for CpuDevice {
|
||||
true
|
||||
}
|
||||
|
||||
fn storage_from_slice<T: crate::WithDType>(&self, s: &[T]) -> Result<Self::Storage> {
|
||||
Ok(T::to_cpu_storage(s))
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage(&self, s: &CpuStorage) -> Result<Self::Storage> {
|
||||
Ok(s.clone())
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage_owned(&self, s: CpuStorage) -> Result<Self::Storage> {
|
||||
Ok(s)
|
||||
}
|
||||
|
||||
fn new(_: usize) -> Result<Self> {
|
||||
Ok(Self)
|
||||
}
|
||||
@ -2915,6 +2570,53 @@ impl BackendDevice for CpuDevice {
|
||||
}
|
||||
}
|
||||
|
||||
#[allow(clippy::uninit_vec)]
|
||||
unsafe fn alloc_uninit(&self, shape: &Shape, dtype: DType) -> Result<CpuStorage> {
|
||||
let elem_count = shape.elem_count();
|
||||
// The code below is highly unsafe but hopefully not directly unsound as we only consider
|
||||
// types that are Copy, not Drop, and for which all bit patterns are proper values.
|
||||
// It's still pretty risky, see the following for more details:
|
||||
// https://github.com/rust-lang/rust-clippy/issues/4483
|
||||
let storage = match dtype {
|
||||
DType::U8 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::U8(v)
|
||||
}
|
||||
DType::U32 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::U32(v)
|
||||
}
|
||||
DType::I64 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::I64(v)
|
||||
}
|
||||
DType::BF16 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::BF16(v)
|
||||
}
|
||||
DType::F16 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::F16(v)
|
||||
}
|
||||
DType::F32 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::F32(v)
|
||||
}
|
||||
DType::F64 => {
|
||||
let mut v = Vec::with_capacity(elem_count);
|
||||
v.set_len(elem_count);
|
||||
CpuStorage::F64(v)
|
||||
}
|
||||
};
|
||||
Ok(storage)
|
||||
}
|
||||
|
||||
fn ones_impl(&self, shape: &Shape, dtype: DType) -> Result<CpuStorage> {
|
||||
let elem_count = shape.elem_count();
|
||||
let storage = match dtype {
|
||||
@ -2942,6 +2644,10 @@ impl BackendDevice for CpuDevice {
|
||||
};
|
||||
Ok(storage)
|
||||
}
|
||||
|
||||
fn synchronize(&self) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
#[macro_export]
|
360
candle-core/src/cpu_backend/utils.rs
Normal file
360
candle-core/src/cpu_backend/utils.rs
Normal file
@ -0,0 +1,360 @@
|
||||
/// Helper functions to write CPU kernels.
|
||||
use crate::backend::BackendStorage;
|
||||
use crate::{Error, Layout, Result, WithDType};
|
||||
|
||||
type C = super::CpuStorage;
|
||||
pub trait Map1 {
|
||||
fn f<T: WithDType>(&self, vs: &[T], layout: &Layout) -> Result<Vec<T>>;
|
||||
|
||||
fn map(&self, vs: &C, layout: &Layout) -> Result<C> {
|
||||
match vs {
|
||||
C::U8(vs) => Ok(C::U8(self.f(vs, layout)?)),
|
||||
C::U32(vs) => Ok(C::U32(self.f(vs, layout)?)),
|
||||
C::I64(vs) => Ok(C::I64(self.f(vs, layout)?)),
|
||||
C::BF16(vs) => Ok(C::BF16(self.f(vs, layout)?)),
|
||||
C::F16(vs) => Ok(C::F16(self.f(vs, layout)?)),
|
||||
C::F32(vs) => Ok(C::F32(self.f(vs, layout)?)),
|
||||
C::F64(vs) => Ok(C::F64(self.f(vs, layout)?)),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map1Any {
|
||||
fn f<T: WithDType, W: Fn(Vec<T>) -> C>(&self, vs: &[T], layout: &Layout, wrap: W) -> Result<C>;
|
||||
|
||||
fn map(&self, vs: &C, layout: &Layout) -> Result<C> {
|
||||
match vs {
|
||||
C::U8(vs) => Ok(self.f(vs, layout, C::U8)?),
|
||||
C::U32(vs) => Ok(self.f(vs, layout, C::U32)?),
|
||||
C::I64(vs) => Ok(self.f(vs, layout, C::I64)?),
|
||||
C::BF16(vs) => Ok(self.f(vs, layout, C::BF16)?),
|
||||
C::F16(vs) => Ok(self.f(vs, layout, C::F16)?),
|
||||
C::F32(vs) => Ok(self.f(vs, layout, C::F32)?),
|
||||
C::F64(vs) => Ok(self.f(vs, layout, C::F64)?),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2 {
|
||||
const OP: &'static str;
|
||||
fn f<T: WithDType>(&self, v1: &[T], l1: &Layout, v2: &[T], l2: &Layout) -> Result<Vec<T>>;
|
||||
|
||||
fn map(&self, v1: &C, l1: &Layout, v2: &C, l2: &Layout) -> Result<C> {
|
||||
match (v1, v2) {
|
||||
(C::U8(v1), C::U8(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::U32(v1), C::U32(v2)) => Ok(C::U32(self.f(v1, l1, v2, l2)?)),
|
||||
(C::I64(v1), C::I64(v2)) => Ok(C::I64(self.f(v1, l1, v2, l2)?)),
|
||||
(C::BF16(v1), C::BF16(v2)) => Ok(C::BF16(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F16(v1), C::F16(v2)) => Ok(C::F16(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F32(v1), C::F32(v2)) => Ok(C::F32(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F64(v1), C::F64(v2)) => Ok(C::F64(self.f(v1, l1, v2, l2)?)),
|
||||
_ => Err(Error::DTypeMismatchBinaryOp {
|
||||
lhs: v1.dtype(),
|
||||
rhs: v2.dtype(),
|
||||
op: Self::OP,
|
||||
}
|
||||
.bt()),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2U8 {
|
||||
const OP: &'static str;
|
||||
fn f<T: WithDType>(&self, v1: &[T], l1: &Layout, v2: &[T], l2: &Layout) -> Result<Vec<u8>>;
|
||||
|
||||
fn map(&self, v1: &C, l1: &Layout, v2: &C, l2: &Layout) -> Result<C> {
|
||||
match (v1, v2) {
|
||||
(C::U8(v1), C::U8(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::U32(v1), C::U32(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::I64(v1), C::I64(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::BF16(v1), C::BF16(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F16(v1), C::F16(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F32(v1), C::F32(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
(C::F64(v1), C::F64(v2)) => Ok(C::U8(self.f(v1, l1, v2, l2)?)),
|
||||
_ => Err(Error::DTypeMismatchBinaryOp {
|
||||
lhs: v1.dtype(),
|
||||
rhs: v2.dtype(),
|
||||
op: Self::OP,
|
||||
}
|
||||
.bt()),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn binary_map<T: Copy, U: Copy, F: FnMut(T, T) -> U>(
|
||||
lhs_l: &Layout,
|
||||
rhs_l: &Layout,
|
||||
lhs: &[T],
|
||||
rhs: &[T],
|
||||
mut f: F,
|
||||
) -> Vec<U> {
|
||||
match (lhs_l.contiguous_offsets(), rhs_l.contiguous_offsets()) {
|
||||
(Some((o_l1, o_l2)), Some((o_r1, o_r2))) => lhs[o_l1..o_l2]
|
||||
.iter()
|
||||
.zip(rhs[o_r1..o_r2].iter())
|
||||
.map(|(&l, &r)| f(l, r))
|
||||
.collect(),
|
||||
(Some((o_l1, o_l2)), None) => {
|
||||
// TODO: Maybe we want to avoid going through the layout twice.
|
||||
match rhs_l.offsets_b() {
|
||||
Some(ob) => {
|
||||
let mut i_in_block = 0;
|
||||
let mut i_right_broadcast = 0;
|
||||
lhs[o_l1..o_l2]
|
||||
.iter()
|
||||
.map(|&l| {
|
||||
let r = unsafe { rhs.get_unchecked(i_in_block + ob.start) };
|
||||
i_right_broadcast += 1;
|
||||
if i_right_broadcast >= ob.right_broadcast {
|
||||
i_in_block += 1;
|
||||
i_right_broadcast = 0;
|
||||
}
|
||||
if i_in_block >= ob.len {
|
||||
i_in_block = 0
|
||||
}
|
||||
f(l, *r)
|
||||
})
|
||||
.collect()
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
(None, Some((o_r1, o_r2))) => {
|
||||
// TODO: Maybe we want to avoid going through the layout twice.
|
||||
match lhs_l.offsets_b() {
|
||||
Some(ob) => {
|
||||
let mut i_in_block = 0;
|
||||
let mut i_right_broadcast = 0;
|
||||
rhs[o_r1..o_r2]
|
||||
.iter()
|
||||
.map(|&r| {
|
||||
let l = unsafe { lhs.get_unchecked(i_in_block + ob.start) };
|
||||
i_right_broadcast += 1;
|
||||
if i_right_broadcast >= ob.right_broadcast {
|
||||
i_in_block += 1;
|
||||
i_right_broadcast = 0;
|
||||
}
|
||||
if i_in_block >= ob.len {
|
||||
i_in_block = 0
|
||||
}
|
||||
f(*l, r)
|
||||
})
|
||||
.collect()
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
_ => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
|
||||
// Similar to binary_map but with vectorized variants.
|
||||
pub fn binary_map_vec<T: Copy, F: FnMut(T, T) -> T, FV: FnMut(&[T], &[T], &mut [T])>(
|
||||
lhs_l: &Layout,
|
||||
rhs_l: &Layout,
|
||||
lhs: &[T],
|
||||
rhs: &[T],
|
||||
mut f: F,
|
||||
mut f_vec: FV,
|
||||
) -> Vec<T> {
|
||||
let el_count = lhs_l.shape().elem_count();
|
||||
match (lhs_l.contiguous_offsets(), rhs_l.contiguous_offsets()) {
|
||||
(Some((o_l1, o_l2)), Some((o_r1, o_r2))) => {
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe {
|
||||
std::mem::transmute::<&mut [std::mem::MaybeUninit<T>], &mut [T]>(ys_to_set)
|
||||
};
|
||||
f_vec(&lhs[o_l1..o_l2], &rhs[o_r1..o_r2], ys_to_set);
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
(Some((o_l1, o_l2)), None) => match rhs_l.offsets_b() {
|
||||
Some(ob) if ob.right_broadcast == 1 => {
|
||||
let rhs = &rhs[ob.start..ob.start + ob.len];
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe {
|
||||
std::mem::transmute::<&mut [std::mem::MaybeUninit<T>], &mut [T]>(ys_to_set)
|
||||
};
|
||||
let mut dst_i = 0;
|
||||
for src_i in (o_l1..o_l2).step_by(ob.len) {
|
||||
f_vec(
|
||||
&lhs[src_i..src_i + ob.len],
|
||||
rhs,
|
||||
&mut ys_to_set[dst_i..dst_i + ob.len],
|
||||
);
|
||||
dst_i += ob.len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
Some(ob) => {
|
||||
let rhs = &rhs[ob.start..ob.start + ob.len];
|
||||
let mut ys = lhs[o_l1..o_l2].to_vec();
|
||||
for idx_l in 0..ob.left_broadcast {
|
||||
let start = idx_l * ob.len * ob.right_broadcast;
|
||||
for (i, &r) in rhs.iter().enumerate() {
|
||||
let start = start + i * ob.right_broadcast;
|
||||
for v in ys[start..start + ob.right_broadcast].iter_mut() {
|
||||
*v = f(*v, r)
|
||||
}
|
||||
}
|
||||
}
|
||||
ys
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
},
|
||||
(None, Some((o_r1, o_r2))) => match lhs_l.offsets_b() {
|
||||
Some(ob) if ob.right_broadcast == 1 => {
|
||||
let lhs = &lhs[ob.start..ob.start + ob.len];
|
||||
let mut ys: Vec<T> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe {
|
||||
std::mem::transmute::<&mut [std::mem::MaybeUninit<T>], &mut [T]>(ys_to_set)
|
||||
};
|
||||
let mut dst_i = 0;
|
||||
for src_i in (o_r1..o_r2).step_by(ob.len) {
|
||||
f_vec(
|
||||
lhs,
|
||||
&rhs[src_i..src_i + ob.len],
|
||||
&mut ys_to_set[dst_i..dst_i + ob.len],
|
||||
);
|
||||
dst_i += ob.len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
Some(ob) => {
|
||||
let lhs = &lhs[ob.start..ob.start + ob.len];
|
||||
let mut ys = rhs[o_r1..o_r2].to_vec();
|
||||
for idx_l in 0..ob.left_broadcast {
|
||||
let start = idx_l * ob.len * ob.right_broadcast;
|
||||
for (i, &l) in lhs.iter().enumerate() {
|
||||
let start = start + i * ob.right_broadcast;
|
||||
for v in ys[start..start + ob.right_broadcast].iter_mut() {
|
||||
*v = f(l, *v)
|
||||
}
|
||||
}
|
||||
}
|
||||
ys
|
||||
}
|
||||
None => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
},
|
||||
_ => lhs_l
|
||||
.strided_index()
|
||||
.zip(rhs_l.strided_index())
|
||||
.map(|(lhs_i, rhs_i)| f(lhs[lhs_i], rhs[rhs_i]))
|
||||
.collect(),
|
||||
}
|
||||
}
|
||||
|
||||
pub fn unary_map<T: Copy, U: Copy, F: FnMut(T) -> U>(
|
||||
vs: &[T],
|
||||
layout: &Layout,
|
||||
mut f: F,
|
||||
) -> Vec<U> {
|
||||
match layout.strided_blocks() {
|
||||
crate::StridedBlocks::SingleBlock { start_offset, len } => vs
|
||||
[start_offset..start_offset + len]
|
||||
.iter()
|
||||
.map(|&v| f(v))
|
||||
.collect(),
|
||||
crate::StridedBlocks::MultipleBlocks {
|
||||
block_start_index,
|
||||
block_len,
|
||||
} => {
|
||||
let mut result = Vec::with_capacity(layout.shape().elem_count());
|
||||
// Specialize the case where block_len is one to avoid the second loop.
|
||||
if block_len == 1 {
|
||||
for index in block_start_index {
|
||||
let v = unsafe { vs.get_unchecked(index) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
} else {
|
||||
for index in block_start_index {
|
||||
for offset in 0..block_len {
|
||||
let v = unsafe { vs.get_unchecked(index + offset) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
}
|
||||
}
|
||||
result
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn unary_map_vec<T: Copy, U: Copy, F: FnMut(T) -> U, FV: FnMut(&[T], &mut [U])>(
|
||||
vs: &[T],
|
||||
layout: &Layout,
|
||||
mut f: F,
|
||||
mut f_vec: FV,
|
||||
) -> Vec<U> {
|
||||
match layout.strided_blocks() {
|
||||
crate::StridedBlocks::SingleBlock { start_offset, len } => {
|
||||
let mut ys: Vec<U> = Vec::with_capacity(len);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe {
|
||||
std::mem::transmute::<&mut [std::mem::MaybeUninit<U>], &mut [U]>(ys_to_set)
|
||||
};
|
||||
f_vec(&vs[start_offset..start_offset + len], ys_to_set);
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(len) };
|
||||
ys
|
||||
}
|
||||
crate::StridedBlocks::MultipleBlocks {
|
||||
block_start_index,
|
||||
block_len,
|
||||
} => {
|
||||
let el_count = layout.shape().elem_count();
|
||||
// Specialize the case where block_len is one to avoid the second loop.
|
||||
if block_len == 1 {
|
||||
let mut result = Vec::with_capacity(el_count);
|
||||
for index in block_start_index {
|
||||
let v = unsafe { vs.get_unchecked(index) };
|
||||
result.push(f(*v))
|
||||
}
|
||||
result
|
||||
} else {
|
||||
let mut ys: Vec<U> = Vec::with_capacity(el_count);
|
||||
let ys_to_set = ys.spare_capacity_mut();
|
||||
let ys_to_set = unsafe {
|
||||
std::mem::transmute::<&mut [std::mem::MaybeUninit<U>], &mut [U]>(ys_to_set)
|
||||
};
|
||||
let mut dst_index = 0;
|
||||
for src_index in block_start_index {
|
||||
let vs = &vs[src_index..src_index + block_len];
|
||||
let ys = &mut ys_to_set[dst_index..dst_index + block_len];
|
||||
f_vec(vs, ys);
|
||||
dst_index += block_len;
|
||||
}
|
||||
// SAFETY: values are all set by f_vec.
|
||||
unsafe { ys.set_len(el_count) };
|
||||
ys
|
||||
}
|
||||
}
|
||||
}
|
||||
}
|
@ -1,6 +1,6 @@
|
||||
use crate::WithDType;
|
||||
use cudarc;
|
||||
use cudarc::cudnn::safe::{Conv2dForward, Cudnn};
|
||||
use cudarc::cudnn::safe::{ConvForward, Cudnn};
|
||||
use cudarc::driver::{CudaSlice, CudaView, DeviceRepr, ValidAsZeroBits};
|
||||
use std::cell::RefCell;
|
||||
use std::collections::HashMap;
|
||||
@ -87,7 +87,7 @@ pub(crate) fn launch_conv2d<
|
||||
cudarc::cudnn::sys::cudnnTensorFormat_t::CUDNN_TENSOR_NCHW,
|
||||
[params.b_size as i32, params.c_out as i32, h_out, w_out],
|
||||
)?;
|
||||
let conv2d = Conv2dForward {
|
||||
let conv2d = ConvForward {
|
||||
conv: &conv,
|
||||
x: &x,
|
||||
w: &w,
|
452
candle-core/src/cuda_backend/device.rs
Normal file
452
candle-core/src/cuda_backend/device.rs
Normal file
@ -0,0 +1,452 @@
|
||||
use crate::backend::BackendDevice;
|
||||
use crate::{CpuStorage, CpuStorageRef, DType, Layout, Result, Shape};
|
||||
pub use candle_kernels as kernels;
|
||||
pub use cudarc;
|
||||
use cudarc::driver::{CudaFunction, LaunchAsync, LaunchConfig};
|
||||
use half::{bf16, f16};
|
||||
use std::sync::{Arc, Mutex};
|
||||
|
||||
use super::{CudaError, CudaStorage, CudaStorageSlice, WrapErr};
|
||||
|
||||
/// Unique identifier for cuda devices.
|
||||
#[derive(Clone, Copy, Debug, PartialEq, Eq, Hash)]
|
||||
pub struct DeviceId(usize);
|
||||
|
||||
impl DeviceId {
|
||||
fn new() -> Self {
|
||||
// https://users.rust-lang.org/t/idiomatic-rust-way-to-generate-unique-id/33805
|
||||
use std::sync::atomic;
|
||||
static COUNTER: atomic::AtomicUsize = atomic::AtomicUsize::new(1);
|
||||
Self(COUNTER.fetch_add(1, atomic::Ordering::Relaxed))
|
||||
}
|
||||
}
|
||||
|
||||
struct CudaRng(cudarc::curand::CudaRng);
|
||||
unsafe impl Send for CudaRng {}
|
||||
|
||||
#[derive(Clone)]
|
||||
pub struct CudaDevice {
|
||||
id: DeviceId,
|
||||
device: Arc<cudarc::driver::CudaDevice>,
|
||||
pub(crate) blas: Arc<cudarc::cublas::CudaBlas>,
|
||||
curand: Arc<Mutex<CudaRng>>,
|
||||
}
|
||||
|
||||
impl std::fmt::Debug for CudaDevice {
|
||||
fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result {
|
||||
write!(f, "CudaDevice({:?})", self.id)
|
||||
}
|
||||
}
|
||||
|
||||
impl std::ops::Deref for CudaDevice {
|
||||
type Target = Arc<cudarc::driver::CudaDevice>;
|
||||
|
||||
fn deref(&self) -> &Self::Target {
|
||||
&self.device
|
||||
}
|
||||
}
|
||||
|
||||
impl CudaDevice {
|
||||
pub fn cuda_device(&self) -> Arc<cudarc::driver::CudaDevice> {
|
||||
self.device.clone()
|
||||
}
|
||||
|
||||
pub fn id(&self) -> DeviceId {
|
||||
self.id
|
||||
}
|
||||
|
||||
fn const_impl(&self, v: f64, shape: &Shape, dtype: DType) -> Result<CudaStorage> {
|
||||
let elem_count = shape.elem_count();
|
||||
let cfg = LaunchConfig::for_num_elems(elem_count as u32);
|
||||
let slice = match dtype {
|
||||
DType::U8 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<u8>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_u8", kernels::FILL)?;
|
||||
let params = (&data, v as u8, elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
DType::U32 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<u32>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_u32", kernels::FILL)?;
|
||||
let params = (&data, v as u32, elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
DType::I64 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<i64>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_i64", kernels::FILL)?;
|
||||
let params = (&data, v as i64, elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
DType::BF16 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<bf16>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_bf16", kernels::FILL)?;
|
||||
let params = (&data, bf16::from_f64(v), elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
DType::F16 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<f16>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_f16", kernels::FILL)?;
|
||||
let params = (&data, f16::from_f64(v), elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
DType::F32 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<f32>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_f32", kernels::FILL)?;
|
||||
let params = (&data, v as f32, elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
DType::F64 => {
|
||||
// SAFETY: Set later by running the fill kernel.
|
||||
let data = unsafe { self.alloc::<f64>(elem_count) }.w()?;
|
||||
let func = self.get_or_load_func("fill_f64", kernels::FILL)?;
|
||||
let params = (&data, v, elem_count);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
pub fn get_or_load_func(&self, module_name: &str, ptx: &'static str) -> Result<CudaFunction> {
|
||||
if !self.has_func(module_name, module_name) {
|
||||
// Leaking the string here is a bit sad but we need a &'static str and this is only
|
||||
// done once per kernel name.
|
||||
let static_module_name = Box::leak(module_name.to_string().into_boxed_str());
|
||||
self.load_ptx(ptx.into(), module_name, &[static_module_name])
|
||||
.map_err(|cuda| CudaError::Load {
|
||||
cuda,
|
||||
module_name: module_name.to_string(),
|
||||
})
|
||||
.w()?;
|
||||
}
|
||||
self.get_func(module_name, module_name)
|
||||
// Clippy recommends this `ok_or` rather than `ok_or_else` so hopefully the compiler is
|
||||
// able to only build the error value if needed.
|
||||
.ok_or(CudaError::MissingKernel {
|
||||
module_name: module_name.to_string(),
|
||||
})
|
||||
.w()
|
||||
}
|
||||
}
|
||||
|
||||
impl BackendDevice for CudaDevice {
|
||||
type Storage = CudaStorage;
|
||||
|
||||
fn new(ordinal: usize) -> Result<Self> {
|
||||
let device = cudarc::driver::CudaDevice::new(ordinal).w()?;
|
||||
let blas = cudarc::cublas::CudaBlas::new(device.clone()).w()?;
|
||||
let curand = cudarc::curand::CudaRng::new(299792458, device.clone()).w()?;
|
||||
Ok(Self {
|
||||
id: DeviceId::new(),
|
||||
device,
|
||||
blas: Arc::new(blas),
|
||||
curand: Arc::new(Mutex::new(CudaRng(curand))),
|
||||
})
|
||||
}
|
||||
|
||||
fn set_seed(&self, seed: u64) -> Result<()> {
|
||||
// We do not call set_seed but instead create a new curand object. This ensures that the
|
||||
// state will be identical and the same random numbers will be generated.
|
||||
let mut curand = self.curand.lock().unwrap();
|
||||
curand.0 = cudarc::curand::CudaRng::new(seed, self.device.clone()).w()?;
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn location(&self) -> crate::DeviceLocation {
|
||||
crate::DeviceLocation::Cuda {
|
||||
gpu_id: self.device.ordinal(),
|
||||
}
|
||||
}
|
||||
|
||||
fn same_device(&self, rhs: &Self) -> bool {
|
||||
self.id == rhs.id
|
||||
}
|
||||
|
||||
fn zeros_impl(&self, shape: &Shape, dtype: DType) -> Result<CudaStorage> {
|
||||
let elem_count = shape.elem_count();
|
||||
let slice = match dtype {
|
||||
DType::U8 => {
|
||||
let data = self.alloc_zeros::<u8>(elem_count).w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
DType::U32 => {
|
||||
let data = self.alloc_zeros::<u32>(elem_count).w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
DType::I64 => {
|
||||
let data = self.alloc_zeros::<i64>(elem_count).w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
DType::BF16 => {
|
||||
let data = self.alloc_zeros::<bf16>(elem_count).w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
DType::F16 => {
|
||||
let data = self.alloc_zeros::<f16>(elem_count).w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
DType::F32 => {
|
||||
let data = self.alloc_zeros::<f32>(elem_count).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
DType::F64 => {
|
||||
let data = self.alloc_zeros::<f64>(elem_count).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn rand_uniform(&self, shape: &Shape, dtype: DType, lo: f64, up: f64) -> Result<CudaStorage> {
|
||||
let elem_count = shape.elem_count();
|
||||
let curand = self.curand.lock().unwrap();
|
||||
let slice = match dtype {
|
||||
// TODO: Add support for F16 and BF16 though this is likely to require some upstream
|
||||
// cudarc changes.
|
||||
DType::U8 | DType::U32 | DType::I64 | DType::F16 | DType::BF16 => {
|
||||
Err(CudaError::UnsupportedDtype {
|
||||
dtype,
|
||||
op: "rand_uniform",
|
||||
})
|
||||
.w()?
|
||||
}
|
||||
DType::F32 => {
|
||||
let mut data = unsafe { self.alloc::<f32>(elem_count) }.w()?;
|
||||
curand.0.fill_with_uniform(&mut data).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
DType::F64 => {
|
||||
let mut data = unsafe { self.alloc::<f64>(elem_count) }.w()?;
|
||||
curand.0.fill_with_uniform(&mut data).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
let slice = if lo == 0. && up == 1.0 {
|
||||
slice
|
||||
} else {
|
||||
use super::utils::Map1;
|
||||
let layout = Layout::contiguous(shape);
|
||||
super::Affine(up - lo, lo).map(&slice, self, &layout)?
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn rand_normal(&self, shape: &Shape, dtype: DType, mean: f64, std: f64) -> Result<CudaStorage> {
|
||||
// TODO: Add support for F16 and BF16 though this is likely to require some upstream
|
||||
// cudarc changes.
|
||||
let elem_count = shape.elem_count();
|
||||
let curand = self.curand.lock().unwrap();
|
||||
// curand can only generate an odd number of values.
|
||||
// https://github.com/huggingface/candle/issues/734
|
||||
let elem_count_round = if elem_count % 2 == 1 {
|
||||
elem_count + 1
|
||||
} else {
|
||||
elem_count
|
||||
};
|
||||
let slice = match dtype {
|
||||
DType::U8 | DType::U32 | DType::I64 | DType::F16 | DType::BF16 => {
|
||||
Err(CudaError::UnsupportedDtype {
|
||||
dtype,
|
||||
op: "rand_normal",
|
||||
})
|
||||
.w()?
|
||||
}
|
||||
DType::F32 => {
|
||||
let mut data = unsafe { self.alloc::<f32>(elem_count_round) }.w()?;
|
||||
curand
|
||||
.0
|
||||
.fill_with_normal(&mut data, mean as f32, std as f32)
|
||||
.w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
DType::F64 => {
|
||||
let mut data = unsafe { self.alloc::<f64>(elem_count_round) }.w()?;
|
||||
curand.0.fill_with_normal(&mut data, mean, std).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn ones_impl(&self, shape: &Shape, dtype: DType) -> Result<CudaStorage> {
|
||||
self.const_impl(1., shape, dtype)
|
||||
}
|
||||
|
||||
unsafe fn alloc_uninit(&self, shape: &Shape, dtype: DType) -> Result<Self::Storage> {
|
||||
let elem_count = shape.elem_count();
|
||||
let slice = match dtype {
|
||||
DType::U8 => {
|
||||
let data = self.alloc::<u8>(elem_count).w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
DType::U32 => {
|
||||
let data = self.alloc::<u32>(elem_count).w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
DType::I64 => {
|
||||
let data = self.alloc::<i64>(elem_count).w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
DType::BF16 => {
|
||||
let data = self.alloc::<bf16>(elem_count).w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
DType::F16 => {
|
||||
let data = self.alloc::<f16>(elem_count).w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
DType::F32 => {
|
||||
let data = self.alloc::<f32>(elem_count).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
DType::F64 => {
|
||||
let data = self.alloc::<f64>(elem_count).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn storage_from_slice<T: crate::WithDType>(&self, s: &[T]) -> Result<Self::Storage> {
|
||||
let slice = match T::cpu_storage_ref(s) {
|
||||
CpuStorageRef::U8(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
CpuStorageRef::U32(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
CpuStorageRef::I64(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
CpuStorageRef::BF16(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
CpuStorageRef::F16(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
CpuStorageRef::F32(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
CpuStorageRef::F64(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage(&self, storage: &CpuStorage) -> Result<CudaStorage> {
|
||||
let slice = match storage {
|
||||
CpuStorage::U8(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
CpuStorage::U32(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
CpuStorage::I64(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
CpuStorage::BF16(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
CpuStorage::F16(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
CpuStorage::F32(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
CpuStorage::F64(storage) => {
|
||||
let data = self.htod_sync_copy(storage).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage_owned(&self, storage: CpuStorage) -> Result<CudaStorage> {
|
||||
let slice = match storage {
|
||||
CpuStorage::U8(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::U8(data)
|
||||
}
|
||||
CpuStorage::U32(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::U32(data)
|
||||
}
|
||||
CpuStorage::I64(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::I64(data)
|
||||
}
|
||||
CpuStorage::BF16(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::BF16(data)
|
||||
}
|
||||
CpuStorage::F16(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::F16(data)
|
||||
}
|
||||
CpuStorage::F32(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::F32(data)
|
||||
}
|
||||
CpuStorage::F64(storage) => {
|
||||
let data = self.htod_copy(storage).w()?;
|
||||
CudaStorageSlice::F64(data)
|
||||
}
|
||||
};
|
||||
Ok(CudaStorage {
|
||||
slice,
|
||||
device: self.clone(),
|
||||
})
|
||||
}
|
||||
|
||||
fn synchronize(&self) -> Result<()> {
|
||||
self.device.synchronize().map_err(crate::Error::wrap)?;
|
||||
Ok(())
|
||||
}
|
||||
}
|
62
candle-core/src/cuda_backend/error.rs
Normal file
62
candle-core/src/cuda_backend/error.rs
Normal file
@ -0,0 +1,62 @@
|
||||
use crate::{DType, Layout};
|
||||
|
||||
/// cudarc related errors
|
||||
#[derive(thiserror::Error, Debug)]
|
||||
pub enum CudaError {
|
||||
#[error(transparent)]
|
||||
Cuda(#[from] cudarc::driver::DriverError),
|
||||
|
||||
#[error(transparent)]
|
||||
Compiler(#[from] cudarc::nvrtc::CompileError),
|
||||
|
||||
#[error(transparent)]
|
||||
Cublas(#[from] cudarc::cublas::result::CublasError),
|
||||
|
||||
#[error(transparent)]
|
||||
Curand(#[from] cudarc::curand::result::CurandError),
|
||||
|
||||
#[error("missing kernel '{module_name}'")]
|
||||
MissingKernel { module_name: String },
|
||||
|
||||
#[error("unsupported dtype {dtype:?} for {op}")]
|
||||
UnsupportedDtype { dtype: DType, op: &'static str },
|
||||
|
||||
#[error("internal error '{0}'")]
|
||||
InternalError(&'static str),
|
||||
|
||||
#[error("matmul is only supported for contiguous tensors lstride: {lhs_stride:?} rstride: {rhs_stride:?} mnk: {mnk:?}")]
|
||||
MatMulNonContiguous {
|
||||
lhs_stride: Layout,
|
||||
rhs_stride: Layout,
|
||||
mnk: (usize, usize, usize),
|
||||
},
|
||||
|
||||
#[error("{msg}, expected: {expected:?}, got: {got:?}")]
|
||||
UnexpectedDType {
|
||||
msg: &'static str,
|
||||
expected: DType,
|
||||
got: DType,
|
||||
},
|
||||
|
||||
#[error("{cuda} when loading {module_name}")]
|
||||
Load {
|
||||
cuda: cudarc::driver::DriverError,
|
||||
module_name: String,
|
||||
},
|
||||
}
|
||||
|
||||
impl From<CudaError> for crate::Error {
|
||||
fn from(val: CudaError) -> Self {
|
||||
crate::Error::Cuda(Box::new(val)).bt()
|
||||
}
|
||||
}
|
||||
|
||||
pub trait WrapErr<O> {
|
||||
fn w(self) -> std::result::Result<O, crate::Error>;
|
||||
}
|
||||
|
||||
impl<O, E: Into<CudaError>> WrapErr<O> for std::result::Result<O, E> {
|
||||
fn w(self) -> std::result::Result<O, crate::Error> {
|
||||
self.map_err(|e| crate::Error::Cuda(Box::new(e.into())).bt())
|
||||
}
|
||||
}
|
File diff suppressed because it is too large
Load Diff
172
candle-core/src/cuda_backend/utils.rs
Normal file
172
candle-core/src/cuda_backend/utils.rs
Normal file
@ -0,0 +1,172 @@
|
||||
/// Helper functions to plug cuda kernels in candle.
|
||||
use crate::{Layout, Result, Shape, WithDType};
|
||||
pub use cudarc;
|
||||
use cudarc::driver::{CudaSlice, DeviceRepr, ValidAsZeroBits};
|
||||
|
||||
use super::{CudaDevice, CudaError, WrapErr};
|
||||
|
||||
pub type S = super::CudaStorageSlice;
|
||||
|
||||
pub trait Map1 {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits>(
|
||||
&self,
|
||||
src: &CudaSlice<T>,
|
||||
dev: &CudaDevice,
|
||||
layout: &Layout,
|
||||
) -> Result<CudaSlice<T>>;
|
||||
|
||||
fn map(&self, s: &S, d: &CudaDevice, l: &Layout) -> Result<S> {
|
||||
let out = match s {
|
||||
S::U8(s) => S::U8(self.f(s, d, l)?),
|
||||
S::U32(s) => S::U32(self.f(s, d, l)?),
|
||||
S::I64(s) => S::I64(self.f(s, d, l)?),
|
||||
S::BF16(s) => S::BF16(self.f(s, d, l)?),
|
||||
S::F16(s) => S::F16(self.f(s, d, l)?),
|
||||
S::F32(s) => S::F32(self.f(s, d, l)?),
|
||||
S::F64(s) => S::F64(self.f(s, d, l)?),
|
||||
};
|
||||
Ok(out)
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2 {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits>(
|
||||
&self,
|
||||
src1: &CudaSlice<T>,
|
||||
layout1: &Layout,
|
||||
src2: &CudaSlice<T>,
|
||||
layout2: &Layout,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<CudaSlice<T>>;
|
||||
|
||||
fn map(&self, s1: &S, l1: &Layout, s2: &S, l2: &Layout, d: &CudaDevice) -> Result<S> {
|
||||
let out = match (s1, s2) {
|
||||
(S::U8(s1), S::U8(s2)) => S::U8(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::U32(s1), S::U32(s2)) => S::U32(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::I64(s1), S::I64(s2)) => S::I64(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::BF16(s1), S::BF16(s2)) => S::BF16(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::F16(s1), S::F16(s2)) => S::F16(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::F32(s1), S::F32(s2)) => S::F32(self.f(s1, l1, s2, l2, d)?),
|
||||
(S::F64(s1), S::F64(s2)) => S::F64(self.f(s1, l1, s2, l2, d)?),
|
||||
_ => Err(CudaError::InternalError("dtype mismatch in binary op"))?,
|
||||
};
|
||||
Ok(out)
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map3 {
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits>(
|
||||
&self,
|
||||
src1: &CudaSlice<T>,
|
||||
layout1: &Layout,
|
||||
src2: &CudaSlice<T>,
|
||||
layout2: &Layout,
|
||||
src3: &CudaSlice<T>,
|
||||
layout3: &Layout,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<CudaSlice<T>>;
|
||||
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn map(
|
||||
&self,
|
||||
s1: &S,
|
||||
l1: &Layout,
|
||||
s2: &S,
|
||||
l2: &Layout,
|
||||
s3: &S,
|
||||
l3: &Layout,
|
||||
d: &CudaDevice,
|
||||
) -> Result<S> {
|
||||
let out = match (s1, s2, s3) {
|
||||
(S::U8(s1), S::U8(s2), S::U8(s3)) => S::U8(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::U32(s1), S::U32(s2), S::U32(s3)) => S::U32(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::I64(s1), S::I64(s2), S::I64(s3)) => S::I64(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::BF16(s1), S::BF16(s2), S::BF16(s3)) => S::BF16(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::F16(s1), S::F16(s2), S::F16(s3)) => S::F16(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::F32(s1), S::F32(s2), S::F32(s3)) => S::F32(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
(S::F64(s1), S::F64(s2), S::F64(s3)) => S::F64(self.f(s1, l1, s2, l2, s3, l3, d)?),
|
||||
_ => Err(CudaError::InternalError("dtype mismatch in ternary op"))?,
|
||||
};
|
||||
Ok(out)
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2InPlace {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits>(
|
||||
&self,
|
||||
dst: &mut CudaSlice<T>,
|
||||
dst_shape: &Shape,
|
||||
src: &CudaSlice<T>,
|
||||
src_l: &Layout,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<()>;
|
||||
|
||||
fn map(
|
||||
&self,
|
||||
dst: &mut S,
|
||||
dst_s: &Shape,
|
||||
src: &S,
|
||||
src_l: &Layout,
|
||||
d: &CudaDevice,
|
||||
) -> Result<()> {
|
||||
match (dst, src) {
|
||||
(S::U8(dst), S::U8(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::U32(dst), S::U32(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::I64(dst), S::I64(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::BF16(dst), S::BF16(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::F16(dst), S::F16(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::F32(dst), S::F32(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
(S::F64(dst), S::F64(src)) => self.f(dst, dst_s, src, src_l, d),
|
||||
_ => Err(CudaError::InternalError("dtype mismatch in binary op"))?,
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map1Any {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits, W: Fn(CudaSlice<T>) -> S>(
|
||||
&self,
|
||||
src: &CudaSlice<T>,
|
||||
dev: &CudaDevice,
|
||||
layout: &Layout,
|
||||
wrap: W,
|
||||
) -> Result<S>;
|
||||
|
||||
fn map(&self, s: &S, d: &CudaDevice, l: &Layout) -> Result<S> {
|
||||
let out = match s {
|
||||
S::U8(s) => self.f(s, d, l, S::U8)?,
|
||||
S::U32(s) => self.f(s, d, l, S::U32)?,
|
||||
S::I64(s) => self.f(s, d, l, S::I64)?,
|
||||
S::BF16(s) => self.f(s, d, l, S::BF16)?,
|
||||
S::F16(s) => self.f(s, d, l, S::F16)?,
|
||||
S::F32(s) => self.f(s, d, l, S::F32)?,
|
||||
S::F64(s) => self.f(s, d, l, S::F64)?,
|
||||
};
|
||||
Ok(out)
|
||||
}
|
||||
}
|
||||
|
||||
pub trait Map2Any {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits>(
|
||||
&self,
|
||||
src1: &CudaSlice<T>,
|
||||
layout1: &Layout,
|
||||
src2: &CudaSlice<T>,
|
||||
layout2: &Layout,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<S>;
|
||||
|
||||
fn map(&self, s1: &S, l1: &Layout, s2: &S, l2: &Layout, d: &CudaDevice) -> Result<S> {
|
||||
let out = match (s1, s2) {
|
||||
(S::U8(s1), S::U8(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::U32(s1), S::U32(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::I64(s1), S::I64(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::BF16(s1), S::BF16(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::F16(s1), S::F16(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::F32(s1), S::F32(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
(S::F64(s1), S::F64(s2)) => self.f(s1, l1, s2, l2, d)?,
|
||||
_ => Err(CudaError::InternalError("dtype mismatch in binary op")).w()?,
|
||||
};
|
||||
Ok(out)
|
||||
}
|
||||
}
|
377
candle-core/src/custom_op.rs
Normal file
377
candle-core/src/custom_op.rs
Normal file
@ -0,0 +1,377 @@
|
||||
use crate::op::{BackpropOp, Op};
|
||||
use crate::tensor::from_storage;
|
||||
use crate::{CpuStorage, CudaStorage, Layout, MetalStorage, Result, Shape, Tensor};
|
||||
use std::sync::Arc;
|
||||
|
||||
/// Unary ops that can be defined in user-land.
|
||||
pub trait CustomOp1 {
|
||||
// Box<dyn> does not support const yet, so use a function to get the name.
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(&self, storage: &CpuStorage, layout: &Layout) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(&self, _storage: &CudaStorage, _layout: &Layout) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_storage: &MetalStorage,
|
||||
_layout: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// This function takes as argument the argument `arg` used in the forward pass, the result
|
||||
/// produced by the forward operation `res` and the gradient of the result `grad_res`.
|
||||
/// The function should return the gradient of the argument.
|
||||
fn bwd(&self, _arg: &Tensor, _res: &Tensor, _grad_res: &Tensor) -> Result<Option<Tensor>> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
pub trait CustomOp2 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
s1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
s2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
fn bwd(
|
||||
&self,
|
||||
_arg1: &Tensor,
|
||||
_arg2: &Tensor,
|
||||
_res: &Tensor,
|
||||
_grad_res: &Tensor,
|
||||
) -> Result<(Option<Tensor>, Option<Tensor>)> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
pub trait CustomOp3 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
s1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
s2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
s3: &CpuStorage,
|
||||
l3: &Layout,
|
||||
) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
fn bwd(
|
||||
&self,
|
||||
_arg1: &Tensor,
|
||||
_arg2: &Tensor,
|
||||
_arg3: &Tensor,
|
||||
_res: &Tensor,
|
||||
_grad_res: &Tensor,
|
||||
) -> Result<(Option<Tensor>, Option<Tensor>, Option<Tensor>)> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
impl Tensor {
|
||||
/// Applies a unary custom op without backward support
|
||||
pub fn apply_op1_no_bwd<C: CustomOp1>(&self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op1(self.layout(), c)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a binary custom op without backward support
|
||||
pub fn apply_op2_no_bwd<C: CustomOp2>(&self, rhs: &Self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) =
|
||||
self.storage()
|
||||
.apply_op2(self.layout(), &rhs.storage(), rhs.layout(), c)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a ternary custom op without backward support
|
||||
pub fn apply_op3_no_bwd<C: CustomOp3>(&self, t2: &Self, t3: &Self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op3(
|
||||
self.layout(),
|
||||
&t2.storage(),
|
||||
t2.layout(),
|
||||
&t3.storage(),
|
||||
t3.layout(),
|
||||
c,
|
||||
)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a unary custom op.
|
||||
pub fn apply_op1_arc(&self, c: Arc<Box<dyn CustomOp1 + Send + Sync>>) -> Result<Self> {
|
||||
let (storage, shape) = self
|
||||
.storage()
|
||||
.apply_op1(self.layout(), c.as_ref().as_ref())?;
|
||||
let op = BackpropOp::new1(self, |s| Op::CustomOp1(s, c.clone()));
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op1<C: 'static + CustomOp1 + Send + Sync>(&self, c: C) -> Result<Self> {
|
||||
self.apply_op1_arc(Arc::new(Box::new(c)))
|
||||
}
|
||||
|
||||
/// Applies a binary custom op.
|
||||
pub fn apply_op2_arc(
|
||||
&self,
|
||||
rhs: &Self,
|
||||
c: Arc<Box<dyn CustomOp2 + Send + Sync>>,
|
||||
) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op2(
|
||||
self.layout(),
|
||||
&rhs.storage(),
|
||||
rhs.layout(),
|
||||
c.as_ref().as_ref(),
|
||||
)?;
|
||||
let op = BackpropOp::new2(self, rhs, |t1, t2| Op::CustomOp2(t1, t2, c.clone()));
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op2<C: 'static + CustomOp2 + Send + Sync>(&self, r: &Self, c: C) -> Result<Self> {
|
||||
self.apply_op2_arc(r, Arc::new(Box::new(c)))
|
||||
}
|
||||
|
||||
/// Applies a ternary custom op.
|
||||
pub fn apply_op3_arc(
|
||||
&self,
|
||||
t2: &Self,
|
||||
t3: &Self,
|
||||
c: Arc<Box<dyn CustomOp3 + Send + Sync>>,
|
||||
) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op3(
|
||||
self.layout(),
|
||||
&t2.storage(),
|
||||
t2.layout(),
|
||||
&t3.storage(),
|
||||
t3.layout(),
|
||||
c.as_ref().as_ref(),
|
||||
)?;
|
||||
let op = BackpropOp::new3(self, t2, t3, |t1, t2, t3| {
|
||||
Op::CustomOp3(t1, t2, t3, c.clone())
|
||||
});
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op3<C: 'static + CustomOp3 + Send + Sync>(
|
||||
&self,
|
||||
t2: &Self,
|
||||
t3: &Self,
|
||||
c: C,
|
||||
) -> Result<Self> {
|
||||
self.apply_op3_arc(t2, t3, Arc::new(Box::new(c)))
|
||||
}
|
||||
}
|
||||
|
||||
// In place ops.
|
||||
|
||||
/// Unary ops that can be defined in user-land.
|
||||
/// These ops work in place and as such back-prop is unsupported.
|
||||
pub trait InplaceOp1 {
|
||||
// Box<dyn> does not support const yet, so use a function to get the name.
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(&self, storage: &mut CpuStorage, layout: &Layout) -> Result<()>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(&self, _storage: &mut CudaStorage, _layout: &Layout) -> Result<()> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(&self, _storage: &mut MetalStorage, _layout: &Layout) -> Result<()> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
}
|
||||
|
||||
pub trait InplaceOp2 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(&self, s1: &mut CpuStorage, l1: &Layout, s2: &CpuStorage, l2: &Layout)
|
||||
-> Result<()>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(&self, _: &mut CudaStorage, _: &Layout, _: &CudaStorage, _: &Layout) -> Result<()> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &mut MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<()> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
}
|
||||
|
||||
pub trait InplaceOp3 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
s1: &mut CpuStorage,
|
||||
l1: &Layout,
|
||||
s2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
s3: &CpuStorage,
|
||||
l3: &Layout,
|
||||
) -> Result<()>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
_: &mut CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
) -> Result<()> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &mut MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<()> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
}
|
||||
|
||||
impl Tensor {
|
||||
/// Applies a unary custom op in place.
|
||||
pub fn inplace_op1<C: InplaceOp1>(&self, c: &C) -> Result<()> {
|
||||
self.storage_mut().inplace_op1(self.layout(), c)
|
||||
}
|
||||
|
||||
/// Applies a unary custom op in place (for the first tensor).
|
||||
pub fn inplace_op2<C: InplaceOp2>(&self, rhs: &Self, c: &C) -> Result<()> {
|
||||
self.storage_mut()
|
||||
.inplace_op2(self.layout(), &rhs.storage(), rhs.layout(), c)
|
||||
}
|
||||
|
||||
/// Applies a ternary custom op in place (for the first tensor).
|
||||
pub fn inplace_op3<C: InplaceOp3>(&self, t2: &Self, t3: &Self, c: &C) -> Result<()> {
|
||||
self.storage_mut().inplace_op3(
|
||||
self.layout(),
|
||||
&t2.storage(),
|
||||
t2.layout(),
|
||||
&t3.storage(),
|
||||
t3.layout(),
|
||||
c,
|
||||
)
|
||||
}
|
||||
}
|
@ -171,6 +171,22 @@ impl Device {
|
||||
matches!(self, Self::Metal(_))
|
||||
}
|
||||
|
||||
pub fn supports_bf16(&self) -> bool {
|
||||
match self {
|
||||
Self::Cuda(_) | Self::Metal(_) => true,
|
||||
Self::Cpu => false,
|
||||
}
|
||||
}
|
||||
|
||||
/// Return `BF16` for devices that support it, otherwise default to `F32`.
|
||||
pub fn bf16_default_to_f32(&self) -> DType {
|
||||
if self.supports_bf16() {
|
||||
DType::BF16
|
||||
} else {
|
||||
DType::F32
|
||||
}
|
||||
}
|
||||
|
||||
pub fn cuda_if_available(ordinal: usize) -> Result<Self> {
|
||||
if crate::utils::cuda_is_available() {
|
||||
Self::new_cuda(ordinal)
|
||||
@ -289,17 +305,48 @@ impl Device {
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) unsafe fn alloc_uninit(&self, shape: &Shape, dtype: DType) -> Result<Storage> {
|
||||
match self {
|
||||
Device::Cpu => {
|
||||
let storage = CpuDevice.alloc_uninit(shape, dtype)?;
|
||||
Ok(Storage::Cpu(storage))
|
||||
}
|
||||
Device::Cuda(device) => {
|
||||
let storage = device.alloc_uninit(shape, dtype)?;
|
||||
Ok(Storage::Cuda(storage))
|
||||
}
|
||||
Device::Metal(device) => {
|
||||
let storage = device.alloc_uninit(shape, dtype)?;
|
||||
Ok(Storage::Metal(storage))
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn storage_from_slice<D: WithDType>(&self, data: &[D]) -> Result<Storage> {
|
||||
match self {
|
||||
Device::Cpu => Ok(Storage::Cpu(data.to_cpu_storage())),
|
||||
Device::Cuda(device) => {
|
||||
let storage = device.storage_from_slice(data)?;
|
||||
Ok(Storage::Cuda(storage))
|
||||
}
|
||||
Device::Metal(device) => {
|
||||
let storage = device.storage_from_slice(data)?;
|
||||
Ok(Storage::Metal(storage))
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn storage<A: NdArray>(&self, array: A) -> Result<Storage> {
|
||||
match self {
|
||||
Device::Cpu => Ok(Storage::Cpu(array.to_cpu_storage())),
|
||||
Device::Cuda(device) => {
|
||||
let storage = array.to_cpu_storage();
|
||||
let storage = device.storage_from_cpu_storage(&storage)?;
|
||||
let storage = device.storage_from_cpu_storage_owned(storage)?;
|
||||
Ok(Storage::Cuda(storage))
|
||||
}
|
||||
Device::Metal(device) => {
|
||||
let storage = array.to_cpu_storage();
|
||||
let storage = device.storage_from_cpu_storage(&storage)?;
|
||||
let storage = device.storage_from_cpu_storage_owned(storage)?;
|
||||
Ok(Storage::Metal(storage))
|
||||
}
|
||||
}
|
||||
@ -310,14 +357,22 @@ impl Device {
|
||||
Device::Cpu => Ok(Storage::Cpu(S::to_cpu_storage_owned(data))),
|
||||
Device::Cuda(device) => {
|
||||
let storage = S::to_cpu_storage_owned(data);
|
||||
let storage = device.storage_from_cpu_storage(&storage)?;
|
||||
let storage = device.storage_from_cpu_storage_owned(storage)?;
|
||||
Ok(Storage::Cuda(storage))
|
||||
}
|
||||
Device::Metal(device) => {
|
||||
let storage = S::to_cpu_storage_owned(data);
|
||||
let storage = device.storage_from_cpu_storage(&storage)?;
|
||||
let storage = device.storage_from_cpu_storage_owned(storage)?;
|
||||
Ok(Storage::Metal(storage))
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn synchronize(&self) -> Result<()> {
|
||||
match self {
|
||||
Self::Cpu => Ok(()),
|
||||
Self::Cuda(d) => d.synchronize(),
|
||||
Self::Metal(d) => d.synchronize(),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
@ -1,7 +1,7 @@
|
||||
//! Types for elements that can be stored and manipulated using tensors.
|
||||
#![allow(clippy::redundant_closure_call)]
|
||||
use crate::backend::BackendStorage;
|
||||
use crate::{CpuStorage, Error, Result};
|
||||
use crate::{CpuStorage, CpuStorageRef, Error, Result};
|
||||
|
||||
/// The different types of elements allowed in tensors.
|
||||
#[derive(Debug, Copy, Clone, PartialEq, Eq, Hash)]
|
||||
@ -100,12 +100,14 @@ pub trait WithDType:
|
||||
+ 'static
|
||||
+ Send
|
||||
+ Sync
|
||||
+ std::any::Any
|
||||
+ crate::cpu::kernels::VecOps
|
||||
{
|
||||
const DTYPE: DType;
|
||||
|
||||
fn from_f64(v: f64) -> Self;
|
||||
fn to_f64(self) -> f64;
|
||||
fn cpu_storage_ref(data: &[Self]) -> CpuStorageRef<'_>;
|
||||
fn to_cpu_storage_owned(data: Vec<Self>) -> CpuStorage;
|
||||
|
||||
fn to_cpu_storage(data: &[Self]) -> CpuStorage {
|
||||
@ -129,6 +131,10 @@ macro_rules! with_dtype {
|
||||
$to_f64(self)
|
||||
}
|
||||
|
||||
fn cpu_storage_ref(data: &[Self]) -> CpuStorageRef<'_> {
|
||||
CpuStorageRef::$dtype(data)
|
||||
}
|
||||
|
||||
fn to_cpu_storage_owned(data: Vec<Self>) -> CpuStorage {
|
||||
CpuStorage::$dtype(data)
|
||||
}
|
||||
|
@ -210,10 +210,22 @@ impl crate::backend::BackendDevice for CudaDevice {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
unsafe fn alloc_uninit(&self, _shape: &Shape, _dtype: DType) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
fn storage_from_slice<T: crate::WithDType>(&self, _: &[T]) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage(&self, _: &CpuStorage) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage_owned(&self, _: CpuStorage) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
fn rand_uniform(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
@ -221,4 +233,38 @@ impl crate::backend::BackendDevice for CudaDevice {
|
||||
fn rand_normal(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
fn synchronize(&self) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with fp16 accumulation type) are
|
||||
/// allowed with f16 GEMMs.
|
||||
pub fn gemm_reduced_precision_f16() -> bool {
|
||||
true
|
||||
}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with fp16 accumulation type) are
|
||||
/// allowed with f16 GEMMs.
|
||||
pub fn set_gemm_reduced_precision_f16(_: bool) {}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with fp16 accumulation type) are
|
||||
/// allowed with bf16 GEMMs.
|
||||
pub fn gemm_reduced_precision_bf16() -> bool {
|
||||
true
|
||||
}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with fp16 accumulation type) are
|
||||
/// allowed with bf16 GEMMs.
|
||||
pub fn set_gemm_reduced_precision_bf16(_: bool) {}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with tf32 accumulation type) are
|
||||
/// allowed with f32 GEMMs.
|
||||
pub fn gemm_reduced_precision_f32() -> bool {
|
||||
true
|
||||
}
|
||||
|
||||
/// This bool controls whether reduced precision reductions (e.g., with tf32 accumulation type) are
|
||||
/// allowed with f32 GEMMs.
|
||||
pub fn set_gemm_reduced_precision_f32(_b: bool) {}
|
||||
|
@ -222,10 +222,22 @@ impl crate::backend::BackendDevice for MetalDevice {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
unsafe fn alloc_uninit(&self, _shape: &Shape, _dtype: DType) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
fn storage_from_slice<T: crate::WithDType>(&self, _: &[T]) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage(&self, _: &CpuStorage) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
fn storage_from_cpu_storage_owned(&self, _: CpuStorage) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
fn rand_uniform(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
@ -233,4 +245,8 @@ impl crate::backend::BackendDevice for MetalDevice {
|
||||
fn rand_normal(&self, _: &Shape, _: DType, _: f64, _: f64) -> Result<Self::Storage> {
|
||||
Err(Error::NotCompiledWithMetalSupport)
|
||||
}
|
||||
|
||||
fn synchronize(&self) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
@ -219,10 +219,14 @@ impl Error {
|
||||
Self::Wrapped(Box::new(err)).bt()
|
||||
}
|
||||
|
||||
pub fn msg(err: impl std::error::Error + Send + Sync + 'static) -> Self {
|
||||
pub fn msg(err: impl std::error::Error) -> Self {
|
||||
Self::Msg(err.to_string()).bt()
|
||||
}
|
||||
|
||||
pub fn debug(err: impl std::fmt::Debug) -> Self {
|
||||
Self::Msg(format!("{err:?}")).bt()
|
||||
}
|
||||
|
||||
pub fn bt(self) -> Self {
|
||||
let backtrace = std::backtrace::Backtrace::capture();
|
||||
match backtrace.status() {
|
||||
|
@ -141,28 +141,117 @@ impl<T> IndexOp<T> for Tensor
|
||||
where
|
||||
T: Into<TensorIndexer>,
|
||||
{
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, DType, Device, IndexOp};
|
||||
/// let a = Tensor::new(&[
|
||||
/// [0., 1.],
|
||||
/// [2., 3.],
|
||||
/// [4., 5.]
|
||||
/// ], &Device::Cpu)?;
|
||||
///
|
||||
/// let b = a.i(0)?;
|
||||
/// assert_eq!(b.shape().dims(), &[2]);
|
||||
/// assert_eq!(b.to_vec1::<f64>()?, &[0., 1.]);
|
||||
///
|
||||
/// let c = a.i(..2)?;
|
||||
/// assert_eq!(c.shape().dims(), &[2, 2]);
|
||||
/// assert_eq!(c.to_vec2::<f64>()?, &[
|
||||
/// [0., 1.],
|
||||
/// [2., 3.]
|
||||
/// ]);
|
||||
///
|
||||
/// let d = a.i(1..)?;
|
||||
/// assert_eq!(d.shape().dims(), &[2, 2]);
|
||||
/// assert_eq!(d.to_vec2::<f64>()?, &[
|
||||
/// [2., 3.],
|
||||
/// [4., 5.]
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
fn i(&self, index: T) -> Result<Tensor, Error> {
|
||||
self.index(&[index.into()])
|
||||
}
|
||||
}
|
||||
|
||||
impl<A> IndexOp<(A,)> for Tensor
|
||||
where
|
||||
A: Into<TensorIndexer>,
|
||||
{
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, DType, Device, IndexOp};
|
||||
/// let a = Tensor::new(&[
|
||||
/// [0f32, 1.],
|
||||
/// [2. , 3.],
|
||||
/// [4. , 5.]
|
||||
/// ], &Device::Cpu)?;
|
||||
///
|
||||
/// let b = a.i((0,))?;
|
||||
/// assert_eq!(b.shape().dims(), &[2]);
|
||||
/// assert_eq!(b.to_vec1::<f32>()?, &[0., 1.]);
|
||||
///
|
||||
/// let c = a.i((..2,))?;
|
||||
/// assert_eq!(c.shape().dims(), &[2, 2]);
|
||||
/// assert_eq!(c.to_vec2::<f32>()?, &[
|
||||
/// [0., 1.],
|
||||
/// [2., 3.]
|
||||
/// ]);
|
||||
///
|
||||
/// let d = a.i((1..,))?;
|
||||
/// assert_eq!(d.shape().dims(), &[2, 2]);
|
||||
/// assert_eq!(d.to_vec2::<f32>()?, &[
|
||||
/// [2., 3.],
|
||||
/// [4., 5.]
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
fn i(&self, (a,): (A,)) -> Result<Tensor, Error> {
|
||||
self.index(&[a.into()])
|
||||
}
|
||||
}
|
||||
#[allow(non_snake_case)]
|
||||
impl<A, B> IndexOp<(A, B)> for Tensor
|
||||
where
|
||||
A: Into<TensorIndexer>,
|
||||
B: Into<TensorIndexer>,
|
||||
{
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, DType, Device, IndexOp};
|
||||
/// let a = Tensor::new(&[[0f32, 1., 2.], [3., 4., 5.], [6., 7., 8.]], &Device::Cpu)?;
|
||||
///
|
||||
/// let b = a.i((1, 0))?;
|
||||
/// assert_eq!(b.to_vec0::<f32>()?, 3.);
|
||||
///
|
||||
/// let c = a.i((..2, 1))?;
|
||||
/// assert_eq!(c.shape().dims(), &[2]);
|
||||
/// assert_eq!(c.to_vec1::<f32>()?, &[1., 4.]);
|
||||
///
|
||||
/// let d = a.i((2.., ..))?;
|
||||
/// assert_eq!(c.shape().dims(), &[2]);
|
||||
/// assert_eq!(c.to_vec1::<f32>()?, &[1., 4.]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
fn i(&self, (a, b): (A, B)) -> Result<Tensor, Error> {
|
||||
self.index(&[a.into(), b.into()])
|
||||
}
|
||||
}
|
||||
|
||||
macro_rules! index_op_tuple {
|
||||
($($t:ident),+) => {
|
||||
($doc:tt, $($t:ident),+) => {
|
||||
#[allow(non_snake_case)]
|
||||
impl<$($t),*> IndexOp<($($t,)*)> for Tensor
|
||||
where
|
||||
$($t: Into<TensorIndexer>,)*
|
||||
{
|
||||
#[doc=$doc]
|
||||
fn i(&self, ($($t,)*): ($($t,)*)) -> Result<Tensor, Error> {
|
||||
self.index(&[$($t.into(),)*])
|
||||
}
|
||||
}
|
||||
};
|
||||
}
|
||||
index_op_tuple!(A);
|
||||
index_op_tuple!(A, B);
|
||||
index_op_tuple!(A, B, C);
|
||||
index_op_tuple!(A, B, C, D);
|
||||
index_op_tuple!(A, B, C, D, E);
|
||||
index_op_tuple!(A, B, C, D, E, F);
|
||||
index_op_tuple!(A, B, C, D, E, F, G);
|
||||
|
||||
index_op_tuple!("see [TensorIndex#method.i]", A, B, C);
|
||||
index_op_tuple!("see [TensorIndex#method.i]", A, B, C, D);
|
||||
index_op_tuple!("see [TensorIndex#method.i]", A, B, C, D, E);
|
||||
index_op_tuple!("see [TensorIndex#method.i]", A, B, C, D, E, F);
|
||||
index_op_tuple!("see [TensorIndex#method.i]", A, B, C, D, E, F, G);
|
||||
|
@ -14,7 +14,7 @@
|
||||
//!
|
||||
//! ## Features
|
||||
//!
|
||||
//! - Simple syntax (looks and like PyTorch)
|
||||
//! - Simple syntax (looks and feels like PyTorch)
|
||||
//! - CPU and Cuda backends (and M1 support)
|
||||
//! - Enable serverless (CPU) small and fast deployments
|
||||
//! - Model training
|
||||
@ -37,18 +37,17 @@
|
||||
mod accelerate;
|
||||
pub mod backend;
|
||||
pub mod backprop;
|
||||
mod conv;
|
||||
pub mod conv;
|
||||
mod convert;
|
||||
pub mod cpu;
|
||||
pub mod cpu_backend;
|
||||
#[cfg(feature = "cuda")]
|
||||
pub mod cuda_backend;
|
||||
#[cfg(feature = "cudnn")]
|
||||
pub mod cudnn;
|
||||
mod custom_op;
|
||||
mod device;
|
||||
pub mod display;
|
||||
mod dtype;
|
||||
mod dummy_cuda_backend;
|
||||
pub mod dummy_cuda_backend;
|
||||
mod dummy_metal_backend;
|
||||
pub mod error;
|
||||
mod indexer;
|
||||
@ -58,13 +57,15 @@ pub mod metal_backend;
|
||||
#[cfg(feature = "mkl")]
|
||||
mod mkl;
|
||||
pub mod npy;
|
||||
mod op;
|
||||
pub mod op;
|
||||
pub mod pickle;
|
||||
pub mod quantized;
|
||||
pub mod safetensors;
|
||||
pub mod scalar;
|
||||
pub mod shape;
|
||||
mod sort;
|
||||
mod storage;
|
||||
pub mod streaming;
|
||||
mod strided_index;
|
||||
mod tensor;
|
||||
mod tensor_cat;
|
||||
@ -72,24 +73,30 @@ pub mod test_utils;
|
||||
pub mod utils;
|
||||
mod variable;
|
||||
|
||||
pub use cpu_backend::CpuStorage;
|
||||
#[cfg(feature = "cudnn")]
|
||||
pub use cuda_backend::cudnn;
|
||||
|
||||
pub use cpu_backend::{CpuStorage, CpuStorageRef};
|
||||
pub use custom_op::{CustomOp1, CustomOp2, CustomOp3, InplaceOp1, InplaceOp2, InplaceOp3};
|
||||
pub use device::{Device, DeviceLocation, NdArray};
|
||||
pub use dtype::{DType, FloatDType, IntDType, WithDType};
|
||||
pub use dtype::{DType, DTypeParseError, FloatDType, IntDType, WithDType};
|
||||
pub use error::{Error, Result};
|
||||
pub use indexer::IndexOp;
|
||||
pub use indexer::{IndexOp, TensorIndexer};
|
||||
pub use layout::Layout;
|
||||
pub use op::{CustomOp1, CustomOp2, CustomOp3};
|
||||
pub use shape::{Shape, D};
|
||||
pub use storage::Storage;
|
||||
pub use streaming::{StreamTensor, StreamingBinOp, StreamingModule};
|
||||
pub use strided_index::{StridedBlocks, StridedIndex};
|
||||
pub use tensor::{Tensor, TensorId};
|
||||
pub use variable::Var;
|
||||
|
||||
#[cfg(feature = "cuda")]
|
||||
pub use cuda_backend::{CudaDevice, CudaStorage};
|
||||
pub use cuda_backend as cuda;
|
||||
|
||||
#[cfg(not(feature = "cuda"))]
|
||||
pub use dummy_cuda_backend::{CudaDevice, CudaStorage};
|
||||
pub use dummy_cuda_backend as cuda;
|
||||
|
||||
pub use cuda::{CudaDevice, CudaStorage};
|
||||
|
||||
#[cfg(feature = "metal")]
|
||||
pub use metal_backend::{MetalDevice, MetalError, MetalStorage};
|
||||
|
324
candle-core/src/metal_backend/device.rs
Normal file
324
candle-core/src/metal_backend/device.rs
Normal file
@ -0,0 +1,324 @@
|
||||
use crate::{DType, Result};
|
||||
use candle_metal_kernels::Kernels;
|
||||
use metal::{Buffer, CommandBuffer, CommandQueue, MTLResourceOptions, NSUInteger};
|
||||
use std::collections::HashMap;
|
||||
use std::ffi::c_void;
|
||||
use std::path::Path;
|
||||
use std::sync::{Arc, Mutex, RwLock};
|
||||
|
||||
use super::MetalError;
|
||||
|
||||
/// Unique identifier for cuda devices.
|
||||
#[derive(Clone, Copy, Debug, PartialEq, Eq, Hash)]
|
||||
pub struct DeviceId(usize);
|
||||
|
||||
impl DeviceId {
|
||||
pub(crate) fn new() -> Self {
|
||||
// https://users.rust-lang.org/t/idiomatic-rust-way-to-generate-unique-id/33805
|
||||
use std::sync::atomic;
|
||||
static COUNTER: atomic::AtomicUsize = atomic::AtomicUsize::new(1);
|
||||
Self(COUNTER.fetch_add(1, atomic::Ordering::Relaxed))
|
||||
}
|
||||
}
|
||||
|
||||
type BufferMap = HashMap<(NSUInteger, MTLResourceOptions), Vec<Arc<Buffer>>>;
|
||||
pub(crate) struct Commands {
|
||||
/// Single command queue for the entire device.
|
||||
command_queue: CommandQueue,
|
||||
/// One command buffer at a time.
|
||||
/// The scheduler works by allowing multiple
|
||||
/// [ComputeCommandEncoder](https://developer.apple.com/documentation/metal/mtlcomputecommandencoder?language=objc)
|
||||
/// on a single command buffer. Using a single command buffer would be fastest on the GPU but
|
||||
/// prevents overlapping of CPU and GPU commands (because command buffer needs to be committed
|
||||
/// to start to work).
|
||||
/// Despite what the documentation says, command buffers are NOT ordered. They are ordered
|
||||
/// for their START time, but there's no guarantee that command buffer1 will finish before
|
||||
/// command buffer2 starts (or there are metal bugs there)
|
||||
command_buffer: CommandBuffer,
|
||||
/// Keeps track of the current amount of compute command encoders on the current
|
||||
/// command buffer
|
||||
/// Arc, RwLock because of the interior mutability.
|
||||
command_buffer_index: usize,
|
||||
/// The maximum amount of [compute command encoder](https://developer.apple.com/documentation/metal/mtlcomputecommandencoder?language=objc) per [command buffer](https://developer.apple.com/documentation/metal/mtlcommandbuffer?language=objc)
|
||||
compute_per_buffer: usize,
|
||||
}
|
||||
|
||||
impl Commands {
|
||||
pub(crate) fn new(command_queue: CommandQueue) -> Result<Self> {
|
||||
let command_buffer = command_queue.new_command_buffer().to_owned();
|
||||
command_buffer.enqueue();
|
||||
let compute_per_buffer = match std::env::var("CANDLE_METAL_COMPUTE_PER_BUFFER") {
|
||||
Ok(val) => val.parse()?,
|
||||
_ => 50,
|
||||
};
|
||||
Ok(Self {
|
||||
command_queue,
|
||||
command_buffer,
|
||||
command_buffer_index: 0,
|
||||
compute_per_buffer,
|
||||
})
|
||||
}
|
||||
|
||||
pub fn command_buffer(&mut self) -> Result<(bool, CommandBuffer)> {
|
||||
let mut command_buffer = self.command_buffer.to_owned();
|
||||
let mut flushed = false;
|
||||
if self.command_buffer_index > self.compute_per_buffer {
|
||||
self.command_buffer.commit();
|
||||
command_buffer = self.command_queue.new_command_buffer().to_owned();
|
||||
self.command_buffer = command_buffer.clone();
|
||||
self.command_buffer_index = 0;
|
||||
flushed = true;
|
||||
}
|
||||
self.command_buffer_index += 1;
|
||||
Ok((flushed, command_buffer))
|
||||
}
|
||||
|
||||
pub fn wait_until_completed(&mut self) -> Result<()> {
|
||||
match self.command_buffer.status() {
|
||||
metal::MTLCommandBufferStatus::Committed
|
||||
| metal::MTLCommandBufferStatus::Scheduled
|
||||
| metal::MTLCommandBufferStatus::Completed => {
|
||||
panic!("Already committed");
|
||||
}
|
||||
_ => {}
|
||||
}
|
||||
self.command_buffer.commit();
|
||||
self.command_buffer.wait_until_completed();
|
||||
self.command_buffer = self.command_queue.new_command_buffer().to_owned();
|
||||
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
#[derive(Clone)]
|
||||
pub struct MetalDevice {
|
||||
/// Unique identifier, the registryID is not sufficient as it identifies the GPU rather than
|
||||
/// the device itself.
|
||||
pub(crate) id: DeviceId,
|
||||
|
||||
/// Raw metal device: <https://developer.apple.com/documentation/metal/mtldevice?language=objc>
|
||||
pub(crate) device: metal::Device,
|
||||
|
||||
pub(crate) commands: Arc<RwLock<Commands>>,
|
||||
|
||||
/// Simple allocator struct.
|
||||
/// The buffers are stored in size buckets since ML tends to use similar shapes over and over.
|
||||
/// We store the buffers in [`Arc`] because it's much faster than Obj-c internal ref counting
|
||||
/// (could be linked to FFI communication overhead).
|
||||
///
|
||||
/// Whenever a buffer has a strong_count==1, we can reuse it, it means it was dropped in the
|
||||
/// graph calculation, and only we the allocator kept a reference to it, therefore it's free
|
||||
/// to be reused. However, in order for this to work, we need to guarantee the order of
|
||||
/// operation, so that this buffer is not being used by another kernel at the same time.
|
||||
/// Arc is the CPU reference count, it doesn't mean anything on the GPU side of things.
|
||||
///
|
||||
/// Whenever we actually allocate a new buffer, we make a full sweep to clean up unused buffers
|
||||
/// (strong_count = 1).
|
||||
pub(crate) buffers: Arc<RwLock<BufferMap>>,
|
||||
|
||||
/// Simple keeper struct to keep track of the already compiled kernels so we can reuse them.
|
||||
/// Heavily used by [`candle_metal_kernels`]
|
||||
pub(crate) kernels: Arc<Kernels>,
|
||||
/// Seed for random number generation.
|
||||
pub(crate) seed: Arc<Mutex<Buffer>>,
|
||||
/// Whether to use the MLX matmul kernels instead of the MFA ones.
|
||||
pub(crate) use_mlx_mm: bool,
|
||||
}
|
||||
|
||||
impl std::fmt::Debug for MetalDevice {
|
||||
fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result {
|
||||
write!(f, "MetalDevice({:?})", self.id)
|
||||
}
|
||||
}
|
||||
|
||||
impl std::ops::Deref for MetalDevice {
|
||||
type Target = metal::DeviceRef;
|
||||
|
||||
fn deref(&self) -> &Self::Target {
|
||||
&self.device
|
||||
}
|
||||
}
|
||||
|
||||
impl MetalDevice {
|
||||
pub fn set_use_mlx_mm(&mut self, use_mlx_mm: bool) {
|
||||
self.use_mlx_mm = use_mlx_mm
|
||||
}
|
||||
|
||||
pub fn id(&self) -> DeviceId {
|
||||
self.id
|
||||
}
|
||||
|
||||
pub fn metal_device(&self) -> &metal::Device {
|
||||
&self.device
|
||||
}
|
||||
|
||||
fn drop_unused_buffers(&self) -> Result<()> {
|
||||
let mut buffers = self.buffers.write().map_err(MetalError::from)?;
|
||||
for subbuffers in buffers.values_mut() {
|
||||
let newbuffers = subbuffers
|
||||
.iter()
|
||||
.filter(|s| Arc::strong_count(*s) > 1)
|
||||
.map(Arc::clone)
|
||||
.collect();
|
||||
*subbuffers = newbuffers;
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
|
||||
pub fn command_buffer(&self) -> Result<CommandBuffer> {
|
||||
let mut commands = self.commands.write().map_err(MetalError::from)?;
|
||||
let (flushed, command_buffer) = commands.command_buffer()?;
|
||||
if flushed {
|
||||
self.drop_unused_buffers()?
|
||||
}
|
||||
Ok(command_buffer)
|
||||
}
|
||||
|
||||
pub fn wait_until_completed(&self) -> Result<()> {
|
||||
let mut commands = self.commands.write().map_err(MetalError::from)?;
|
||||
commands.wait_until_completed()
|
||||
}
|
||||
|
||||
pub fn kernels(&self) -> &Kernels {
|
||||
&self.kernels
|
||||
}
|
||||
|
||||
pub fn device(&self) -> &metal::Device {
|
||||
&self.device
|
||||
}
|
||||
|
||||
/// Creates a new buffer (not necessarily zeroed).
|
||||
/// The buffer is [MTLPrivate](https://developer.apple.com/documentation/metal/mtlstoragemode)
|
||||
/// This means the buffer data cannot be read on the CPU directly.
|
||||
///
|
||||
/// [`name`] is only used to keep track of the resource origin in case of bugs
|
||||
pub fn new_buffer(
|
||||
&self,
|
||||
element_count: usize,
|
||||
dtype: DType,
|
||||
name: &str,
|
||||
) -> Result<Arc<Buffer>> {
|
||||
let size = (element_count * dtype.size_in_bytes()) as NSUInteger;
|
||||
self.allocate_buffer(size, MTLResourceOptions::StorageModePrivate, name)
|
||||
}
|
||||
|
||||
/// Creates a new buffer (not necessarily zeroed).
|
||||
/// The buffer is [MTLManaged](https://developer.apple.com/documentation/metal/mtlstoragemode)
|
||||
/// This means the buffer can be read on the CPU but will require manual
|
||||
/// synchronization when the CPU memory is modified
|
||||
/// Used as a bridge to gather data back from the GPU
|
||||
pub fn new_buffer_managed(&self, size: NSUInteger) -> Result<Arc<Buffer>> {
|
||||
self.allocate_buffer(size, MTLResourceOptions::StorageModeManaged, "managed")
|
||||
}
|
||||
|
||||
/// Creates a new buffer from data.
|
||||
/// The buffer is [MTLManaged](https://developer.apple.com/documentation/metal/mtlstoragemode)
|
||||
///
|
||||
/// Does not require synchronization, as [newBufferWithBytes](https://developer.apple.com/documentation/metal/mtldevice/1433429-newbufferwithbytes)
|
||||
/// allocates the buffer and copies over the existing data before returning the MTLBuffer.
|
||||
pub fn new_buffer_with_data<T>(&self, data: &[T]) -> Result<Arc<Buffer>> {
|
||||
let size = core::mem::size_of_val(data) as NSUInteger;
|
||||
let new_buffer = self.device.new_buffer_with_data(
|
||||
data.as_ptr() as *const c_void,
|
||||
size,
|
||||
MTLResourceOptions::StorageModeManaged,
|
||||
);
|
||||
let mut buffers = self.buffers.write().map_err(MetalError::from)?;
|
||||
|
||||
let subbuffers = buffers
|
||||
.entry((size, MTLResourceOptions::StorageModeManaged))
|
||||
.or_insert(vec![]);
|
||||
|
||||
let new_buffer = Arc::new(new_buffer);
|
||||
subbuffers.push(new_buffer.clone());
|
||||
Ok(new_buffer)
|
||||
}
|
||||
|
||||
pub fn allocate_zeros(&self, size_in_bytes: usize) -> Result<Arc<Buffer>> {
|
||||
let buffer = self.allocate_buffer(
|
||||
size_in_bytes as NSUInteger,
|
||||
MTLResourceOptions::StorageModePrivate,
|
||||
"allocate_zeros",
|
||||
)?;
|
||||
let command_buffer = self.command_buffer()?;
|
||||
command_buffer.set_label("zeros");
|
||||
let blit = command_buffer.new_blit_command_encoder();
|
||||
blit.fill_buffer(
|
||||
&buffer,
|
||||
metal::NSRange {
|
||||
location: 0,
|
||||
length: buffer.length(),
|
||||
},
|
||||
0,
|
||||
);
|
||||
blit.end_encoding();
|
||||
Ok(buffer)
|
||||
}
|
||||
|
||||
/// The critical allocator algorithm
|
||||
fn allocate_buffer(
|
||||
&self,
|
||||
size: NSUInteger,
|
||||
option: MTLResourceOptions,
|
||||
_name: &str,
|
||||
) -> Result<Arc<Buffer>> {
|
||||
let mut buffers = self.buffers.write().map_err(MetalError::from)?;
|
||||
if let Some(b) = find_available_buffer(size, option, &buffers) {
|
||||
// Cloning also ensures we increment the strong count
|
||||
return Ok(b.clone());
|
||||
}
|
||||
|
||||
let size = buf_size(size);
|
||||
let subbuffers = buffers.entry((size, option)).or_insert(vec![]);
|
||||
|
||||
let new_buffer = self.device.new_buffer(size as NSUInteger, option);
|
||||
let new_buffer = Arc::new(new_buffer);
|
||||
subbuffers.push(new_buffer.clone());
|
||||
|
||||
Ok(new_buffer)
|
||||
}
|
||||
|
||||
/// Create a metal GPU capture trace on [`path`].
|
||||
pub fn capture<P: AsRef<Path>>(&self, path: P) -> Result<()> {
|
||||
let capture = metal::CaptureManager::shared();
|
||||
let descriptor = metal::CaptureDescriptor::new();
|
||||
descriptor.set_destination(metal::MTLCaptureDestination::GpuTraceDocument);
|
||||
descriptor.set_capture_device(self);
|
||||
// The [set_output_url] call requires an absolute path so we convert it if needed.
|
||||
if path.as_ref().is_absolute() {
|
||||
descriptor.set_output_url(path);
|
||||
} else {
|
||||
let path = std::env::current_dir()?.join(path);
|
||||
descriptor.set_output_url(path);
|
||||
}
|
||||
|
||||
capture
|
||||
.start_capture(&descriptor)
|
||||
.map_err(MetalError::from)?;
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
fn buf_size(size: NSUInteger) -> NSUInteger {
|
||||
size.saturating_sub(1).next_power_of_two() as NSUInteger
|
||||
}
|
||||
|
||||
fn find_available_buffer(
|
||||
size: NSUInteger,
|
||||
option: MTLResourceOptions,
|
||||
buffers: &BufferMap,
|
||||
) -> Option<Arc<Buffer>> {
|
||||
let mut best_buffer: Option<&Arc<Buffer>> = None;
|
||||
let mut best_buffer_size: NSUInteger = NSUInteger::MAX;
|
||||
for ((buffer_size, buffer_option), subbuffers) in buffers.iter() {
|
||||
if buffer_size >= &size && buffer_size < &best_buffer_size && buffer_option == &option {
|
||||
for sub in subbuffers {
|
||||
if Arc::strong_count(sub) == 1 {
|
||||
best_buffer = Some(sub);
|
||||
best_buffer_size = *buffer_size;
|
||||
}
|
||||
}
|
||||
}
|
||||
}
|
||||
best_buffer.cloned()
|
||||
}
|
File diff suppressed because it is too large
Load Diff
@ -330,7 +330,7 @@ impl Tensor {
|
||||
path: P,
|
||||
) -> Result<()> {
|
||||
let mut zip = zip::ZipWriter::new(File::create(path.as_ref())?);
|
||||
let options =
|
||||
let options: zip::write::FileOptions<()> =
|
||||
zip::write::FileOptions::default().compression_method(zip::CompressionMethod::Stored);
|
||||
|
||||
for (name, tensor) in ts.iter() {
|
||||
|
@ -1,5 +1,5 @@
|
||||
#![allow(clippy::redundant_closure_call)]
|
||||
use crate::{CpuStorage, CudaStorage, Layout, MetalStorage, Result, Shape, Tensor};
|
||||
use crate::Tensor;
|
||||
use half::{bf16, f16};
|
||||
use num_traits::float::Float;
|
||||
|
||||
@ -66,6 +66,7 @@ pub enum UnaryOp {
|
||||
Floor,
|
||||
Ceil,
|
||||
Round,
|
||||
Sign,
|
||||
}
|
||||
|
||||
#[derive(Clone)]
|
||||
@ -161,168 +162,23 @@ pub enum Op {
|
||||
Permute(Tensor, Vec<usize>),
|
||||
Elu(Tensor, f64),
|
||||
Powf(Tensor, f64),
|
||||
CustomOp1(Tensor, std::sync::Arc<Box<dyn CustomOp1 + Send + Sync>>),
|
||||
CustomOp1(
|
||||
Tensor,
|
||||
std::sync::Arc<Box<dyn crate::CustomOp1 + Send + Sync>>,
|
||||
),
|
||||
CustomOp2(
|
||||
Tensor,
|
||||
Tensor,
|
||||
std::sync::Arc<Box<dyn CustomOp2 + Send + Sync>>,
|
||||
std::sync::Arc<Box<dyn crate::CustomOp2 + Send + Sync>>,
|
||||
),
|
||||
CustomOp3(
|
||||
Tensor,
|
||||
Tensor,
|
||||
Tensor,
|
||||
std::sync::Arc<Box<dyn CustomOp3 + Send + Sync>>,
|
||||
std::sync::Arc<Box<dyn crate::CustomOp3 + Send + Sync>>,
|
||||
),
|
||||
}
|
||||
|
||||
/// Unary ops that can be defined in user-land.
|
||||
pub trait CustomOp1 {
|
||||
// Box<dyn> does not support const yet, so use a function to get the name.
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(&self, storage: &CpuStorage, layout: &Layout) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(&self, _storage: &CudaStorage, _layout: &Layout) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_storage: &MetalStorage,
|
||||
_layout: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// This function takes as argument the argument `arg` used in the forward pass, the result
|
||||
/// produced by the forward operation `res` and the gradient of the result `grad_res`.
|
||||
/// The function should return the gradient of the argument.
|
||||
fn bwd(&self, _arg: &Tensor, _res: &Tensor, _grad_res: &Tensor) -> Result<Option<Tensor>> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
pub trait CustomOp2 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
s1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
s2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
fn bwd(
|
||||
&self,
|
||||
_arg1: &Tensor,
|
||||
_arg2: &Tensor,
|
||||
_res: &Tensor,
|
||||
_grad_res: &Tensor,
|
||||
) -> Result<(Option<Tensor>, Option<Tensor>)> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
pub trait CustomOp3 {
|
||||
fn name(&self) -> &'static str;
|
||||
|
||||
/// The forward pass, as run on a cpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
s1: &CpuStorage,
|
||||
l1: &Layout,
|
||||
s2: &CpuStorage,
|
||||
l2: &Layout,
|
||||
s3: &CpuStorage,
|
||||
l3: &Layout,
|
||||
) -> Result<(CpuStorage, Shape)>;
|
||||
|
||||
/// The forward pass, as run on a gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
_: &CudaStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(CudaStorage, Shape)> {
|
||||
Err(crate::Error::Cuda(
|
||||
format!("no cuda implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
/// The forward pass, as run on a metal gpu device. Note that the storage can use arbitrary strides,
|
||||
/// offsets etc so the associated layout should be used to access it.
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
_: &MetalStorage,
|
||||
_: &Layout,
|
||||
) -> Result<(MetalStorage, Shape)> {
|
||||
Err(crate::Error::Metal(
|
||||
format!("no metal implementation for {}", self.name()).into(),
|
||||
))
|
||||
}
|
||||
|
||||
fn bwd(
|
||||
&self,
|
||||
_arg1: &Tensor,
|
||||
_arg2: &Tensor,
|
||||
_arg3: &Tensor,
|
||||
_res: &Tensor,
|
||||
_grad_res: &Tensor,
|
||||
) -> Result<(Option<Tensor>, Option<Tensor>, Option<Tensor>)> {
|
||||
Err(crate::Error::BackwardNotSupported { op: self.name() })
|
||||
}
|
||||
}
|
||||
|
||||
pub trait UnaryOpT {
|
||||
const NAME: &'static str;
|
||||
const KERNEL: &'static str;
|
||||
@ -399,6 +255,7 @@ pub(crate) struct Tanh;
|
||||
pub(crate) struct Floor;
|
||||
pub(crate) struct Ceil;
|
||||
pub(crate) struct Round;
|
||||
pub(crate) struct Sign;
|
||||
|
||||
macro_rules! bin_op {
|
||||
($op:ident, $name: literal, $e: expr, $f32_vec: ident, $f64_vec: ident) => {
|
||||
@ -602,6 +459,13 @@ unary_op!(Recip, "recip", v, v.recip());
|
||||
unary_op!(Sqr, "sqr", v, v * v, vs_sqr, vd_sqr);
|
||||
unary_op!(Sqrt, "sqrt", v, v.sqrt(), vs_sqrt, vd_sqrt);
|
||||
|
||||
// Hardcode the value for sqrt(2/pi)
|
||||
// https://github.com/huggingface/candle/issues/1982
|
||||
#[allow(clippy::excessive_precision)]
|
||||
const SQRT_TWO_OVER_PI_F32: f32 = 0.79788456080286535587989211986876373;
|
||||
#[allow(clippy::excessive_precision)]
|
||||
const SQRT_TWO_OVER_PI_F64: f64 = 0.79788456080286535587989211986876373;
|
||||
|
||||
/// Tanh based approximation of the `gelu` operation
|
||||
/// GeluErf is the more precise one.
|
||||
/// <https://en.wikipedia.org/wiki/Activation_function#Comparison_of_activation_functions>
|
||||
@ -614,7 +478,7 @@ impl UnaryOpT for Gelu {
|
||||
* v
|
||||
* (bf16::ONE
|
||||
+ bf16::tanh(
|
||||
(bf16::from_f32_const(2.0) / bf16::PI).sqrt()
|
||||
bf16::from_f32_const(SQRT_TWO_OVER_PI_F32)
|
||||
* v
|
||||
* (bf16::ONE + bf16::from_f32_const(0.044715) * v * v),
|
||||
))
|
||||
@ -625,22 +489,18 @@ impl UnaryOpT for Gelu {
|
||||
* v
|
||||
* (f16::ONE
|
||||
+ f16::tanh(
|
||||
(f16::from_f32_const(2.0) / f16::PI).sqrt()
|
||||
f16::from_f32_const(SQRT_TWO_OVER_PI_F32)
|
||||
* v
|
||||
* (f16::ONE + f16::from_f32_const(0.044715) * v * v),
|
||||
))
|
||||
}
|
||||
#[inline(always)]
|
||||
fn f32(v: f32) -> f32 {
|
||||
0.5 * v
|
||||
* (1.0
|
||||
+ f32::tanh((2.0f32 / std::f32::consts::PI).sqrt() * v * (1.0 + 0.044715 * v * v)))
|
||||
0.5 * v * (1.0 + f32::tanh(SQRT_TWO_OVER_PI_F32 * v * (1.0 + 0.044715 * v * v)))
|
||||
}
|
||||
#[inline(always)]
|
||||
fn f64(v: f64) -> f64 {
|
||||
0.5 * v
|
||||
* (1.0
|
||||
+ f64::tanh((2.0f64 / std::f64::consts::PI).sqrt() * v * (1.0 + 0.044715 * v * v)))
|
||||
0.5 * v * (1.0 + f64::tanh(SQRT_TWO_OVER_PI_F64 * v * (1.0 + 0.044715 * v * v)))
|
||||
}
|
||||
#[inline(always)]
|
||||
fn u8(_: u8) -> u8 {
|
||||
@ -1067,3 +927,37 @@ impl std::ops::Deref for BackpropOp {
|
||||
&self.0
|
||||
}
|
||||
}
|
||||
|
||||
impl UnaryOpT for Sign {
|
||||
const NAME: &'static str = "sign";
|
||||
const KERNEL: &'static str = "usign";
|
||||
const V: Self = Sign;
|
||||
#[inline(always)]
|
||||
fn bf16(v: bf16) -> bf16 {
|
||||
bf16::from((v > bf16::ZERO) as i8) - bf16::from((v < bf16::ZERO) as i8)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn f16(v: f16) -> f16 {
|
||||
f16::from((v > f16::ZERO) as i8) - f16::from((v < f16::ZERO) as i8)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn f32(v: f32) -> f32 {
|
||||
f32::from(v > 0.) - f32::from(v < 0.)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn f64(v: f64) -> f64 {
|
||||
f64::from(v > 0.) - f64::from(v < 0.)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn u8(v: u8) -> u8 {
|
||||
u8::min(1, v)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn u32(v: u32) -> u32 {
|
||||
u32::min(1, v)
|
||||
}
|
||||
#[inline(always)]
|
||||
fn i64(v: i64) -> i64 {
|
||||
(v > 0) as i64 - (v < 0) as i64
|
||||
}
|
||||
}
|
||||
|
@ -1,24 +1,66 @@
|
||||
use super::{GgmlDType, QStorage};
|
||||
use crate::quantized::k_quants::GgmlType;
|
||||
use crate::{backend::BackendDevice, cuda_backend::WrapErr};
|
||||
use crate::{CudaDevice, CudaStorage, Result};
|
||||
use half::f16;
|
||||
|
||||
use cudarc::driver::{CudaSlice, DeviceSlice};
|
||||
use cudarc::driver::{CudaSlice, CudaView, DeviceSlice};
|
||||
|
||||
#[derive(Clone, Debug)]
|
||||
pub struct QCudaStorage {
|
||||
data: CudaSlice<u8>,
|
||||
dtype: GgmlDType,
|
||||
device: CudaDevice,
|
||||
}
|
||||
|
||||
static FORCE_DMMV: std::sync::atomic::AtomicBool = std::sync::atomic::AtomicBool::new(false);
|
||||
|
||||
pub fn set_force_dmmv(f: bool) {
|
||||
FORCE_DMMV.store(f, std::sync::atomic::Ordering::Relaxed)
|
||||
}
|
||||
|
||||
pub const WARP_SIZE: usize = 32;
|
||||
pub const MMQ_X_Q4_0_AMPERE: usize = 4;
|
||||
pub const MMQ_Y_Q4_0_AMPERE: usize = 32;
|
||||
pub const NWARPS_Q4_0_AMPERE: usize = 4;
|
||||
pub const GGML_CUDA_MMV_X: usize = 32;
|
||||
pub const GGML_CUDA_MMV_Y: usize = 1;
|
||||
pub const CUDA_QUANTIZE_BLOCK_SIZE: usize = 256;
|
||||
pub const CUDA_DEQUANTIZE_BLOCK_SIZE: usize = 256;
|
||||
pub const MATRIX_ROW_PADDING: usize = 512;
|
||||
|
||||
fn dequantize(
|
||||
fn ceil_div(p: usize, q: usize) -> usize {
|
||||
(p + q - 1) / q
|
||||
}
|
||||
|
||||
fn pad(p: usize, q: usize) -> usize {
|
||||
ceil_div(p, q) * q
|
||||
}
|
||||
|
||||
fn quantize_q8_1(
|
||||
src: &CudaView<f32>,
|
||||
dst: &mut CudaSlice<u8>,
|
||||
elem_count: usize,
|
||||
ky: usize,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<()> {
|
||||
use cudarc::driver::LaunchAsync;
|
||||
|
||||
let kx = elem_count;
|
||||
let kx_padded = pad(kx, MATRIX_ROW_PADDING);
|
||||
let num_blocks = ceil_div(kx_padded, CUDA_QUANTIZE_BLOCK_SIZE);
|
||||
let func = dev.get_or_load_func("quantize_q8_1", candle_kernels::QUANTIZED)?;
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
grid_dim: (num_blocks as u32, ky as u32, 1),
|
||||
block_dim: (CUDA_QUANTIZE_BLOCK_SIZE as u32, 1, 1),
|
||||
shared_mem_bytes: 0,
|
||||
};
|
||||
let params = (src, dst, kx as i32, kx_padded as i32);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn dequantize_f32(
|
||||
data: &CudaSlice<u8>,
|
||||
dtype: GgmlDType,
|
||||
elem_count: usize,
|
||||
@ -28,39 +70,31 @@ fn dequantize(
|
||||
|
||||
let nb = (elem_count + 255) / 256;
|
||||
let (kernel_name, is_k, block_dim, num_blocks) = match dtype {
|
||||
GgmlDType::Q4_0 => ("dequantize_block_q4_0", false, 32, nb),
|
||||
GgmlDType::Q4_1 => ("dequantize_block_q4_1", false, 32, nb),
|
||||
GgmlDType::Q5_0 => {
|
||||
let nb = (elem_count + 2 * CUDA_DEQUANTIZE_BLOCK_SIZE - 1)
|
||||
/ (2 * CUDA_DEQUANTIZE_BLOCK_SIZE);
|
||||
(
|
||||
"dequantize_block_q5_0",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
nb,
|
||||
)
|
||||
}
|
||||
GgmlDType::Q5_1 => {
|
||||
let nb = (elem_count + 2 * CUDA_DEQUANTIZE_BLOCK_SIZE - 1)
|
||||
/ (2 * CUDA_DEQUANTIZE_BLOCK_SIZE);
|
||||
(
|
||||
"dequantize_block_q5_1",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
nb,
|
||||
)
|
||||
}
|
||||
GgmlDType::Q8_0 => ("dequantize_block_q8_0", false, 32, nb),
|
||||
GgmlDType::Q2K => ("dequantize_block_q2_K", true, 64, nb),
|
||||
GgmlDType::Q3K => ("dequantize_block_q3_K", true, 64, nb),
|
||||
GgmlDType::Q4K => ("dequantize_block_q4_K", true, 32, nb),
|
||||
GgmlDType::Q5K => ("dequantize_block_q5_K", true, 64, nb),
|
||||
GgmlDType::Q6K => ("dequantize_block_q6_K", true, 64, nb),
|
||||
GgmlDType::Q8K => ("dequantize_block_q8_K", true, 32, nb),
|
||||
GgmlDType::Q4_0 => ("dequantize_block_q4_0_f32", false, 32, nb),
|
||||
GgmlDType::Q4_1 => ("dequantize_block_q4_1_f32", false, 32, nb),
|
||||
GgmlDType::Q5_0 => (
|
||||
"dequantize_block_q5_0_f32",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
ceil_div(elem_count, 2 * CUDA_DEQUANTIZE_BLOCK_SIZE),
|
||||
),
|
||||
GgmlDType::Q5_1 => (
|
||||
"dequantize_block_q5_1_f32",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
ceil_div(elem_count, 2 * CUDA_DEQUANTIZE_BLOCK_SIZE),
|
||||
),
|
||||
GgmlDType::Q8_0 => ("dequantize_block_q8_0_f32", false, 32, nb),
|
||||
GgmlDType::Q2K => ("dequantize_block_q2_K_f32", true, 64, nb),
|
||||
GgmlDType::Q3K => ("dequantize_block_q3_K_f32", true, 64, nb),
|
||||
GgmlDType::Q4K => ("dequantize_block_q4_K_f32", true, 32, nb),
|
||||
GgmlDType::Q5K => ("dequantize_block_q5_K_f32", true, 64, nb),
|
||||
GgmlDType::Q6K => ("dequantize_block_q6_K_f32", true, 64, nb),
|
||||
GgmlDType::Q8K => ("dequantize_block_q8_K_f32", true, 32, nb),
|
||||
_ => crate::bail!("unsupported dtype for dequantize {dtype:?}"),
|
||||
};
|
||||
let func = dev.get_or_load_func(kernel_name, candle_kernels::QUANTIZED)?;
|
||||
let dst = dev.alloc_zeros::<f32>(elem_count).w()?;
|
||||
let dst = unsafe { dev.alloc::<f32>(elem_count).w()? };
|
||||
// See e.g.
|
||||
// https://github.com/ggerganov/llama.cpp/blob/cbbd1efa06f8c09f9dff58ff9d9af509cc4c152b/ggml-cuda.cu#L7270
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
@ -83,9 +117,66 @@ fn dequantize(
|
||||
Ok(CudaStorage::wrap_cuda_slice(dst, dev.clone()))
|
||||
}
|
||||
|
||||
fn dequantize_mut_mal_vec(
|
||||
fn dequantize_f16(
|
||||
data: &CudaSlice<u8>,
|
||||
y: &cudarc::driver::CudaView<f32>,
|
||||
dtype: GgmlDType,
|
||||
elem_count: usize,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<CudaStorage> {
|
||||
use cudarc::driver::LaunchAsync;
|
||||
|
||||
let nb = (elem_count + 255) / 256;
|
||||
let (kernel_name, is_k, block_dim, num_blocks) = match dtype {
|
||||
GgmlDType::Q4_0 => ("dequantize_block_q4_0_f16", false, 32, nb),
|
||||
GgmlDType::Q4_1 => ("dequantize_block_q4_1_f16", false, 32, nb),
|
||||
GgmlDType::Q5_0 => (
|
||||
"dequantize_block_q5_0_f16",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
ceil_div(elem_count, 2 * CUDA_DEQUANTIZE_BLOCK_SIZE),
|
||||
),
|
||||
GgmlDType::Q5_1 => (
|
||||
"dequantize_block_q5_1_f16",
|
||||
false,
|
||||
CUDA_DEQUANTIZE_BLOCK_SIZE,
|
||||
ceil_div(elem_count, 2 * CUDA_DEQUANTIZE_BLOCK_SIZE),
|
||||
),
|
||||
GgmlDType::Q8_0 => ("dequantize_block_q8_0_f16", false, 32, nb),
|
||||
GgmlDType::Q2K => ("dequantize_block_q2_K_f16", true, 64, nb),
|
||||
GgmlDType::Q3K => ("dequantize_block_q3_K_f16", true, 64, nb),
|
||||
GgmlDType::Q4K => ("dequantize_block_q4_K_f16", true, 32, nb),
|
||||
GgmlDType::Q5K => ("dequantize_block_q5_K_f16", true, 64, nb),
|
||||
GgmlDType::Q6K => ("dequantize_block_q6_K_f16", true, 64, nb),
|
||||
GgmlDType::Q8K => ("dequantize_block_q8_K_f16", true, 32, nb),
|
||||
_ => crate::bail!("unsupported dtype for dequantize {dtype:?}"),
|
||||
};
|
||||
let func = dev.get_or_load_func(kernel_name, candle_kernels::QUANTIZED)?;
|
||||
let dst = unsafe { dev.alloc::<f16>(elem_count).w()? };
|
||||
// See e.g.
|
||||
// https://github.com/ggerganov/llama.cpp/blob/cbbd1efa06f8c09f9dff58ff9d9af509cc4c152b/ggml-cuda.cu#L7270
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
grid_dim: (num_blocks as u32, 1, 1),
|
||||
block_dim: (block_dim as u32, 1, 1),
|
||||
shared_mem_bytes: 0,
|
||||
};
|
||||
|
||||
if is_k {
|
||||
let params = (data, &dst);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
} else {
|
||||
let nb32 = match dtype {
|
||||
GgmlDType::Q5_0 | GgmlDType::Q5_1 => elem_count,
|
||||
_ => elem_count / 32,
|
||||
};
|
||||
let params = (data, &dst, nb32 as i32);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
}
|
||||
Ok(CudaStorage::wrap_cuda_slice(dst, dev.clone()))
|
||||
}
|
||||
|
||||
fn dequantize_mul_mat_vec(
|
||||
data: &CudaSlice<u8>,
|
||||
y: &CudaView<f32>,
|
||||
dtype: GgmlDType,
|
||||
ncols: usize,
|
||||
nrows: usize,
|
||||
@ -93,6 +184,13 @@ fn dequantize_mut_mal_vec(
|
||||
) -> Result<CudaStorage> {
|
||||
use cudarc::driver::LaunchAsync;
|
||||
|
||||
let data_elems = data.len() / dtype.type_size() * dtype.block_size();
|
||||
if data_elems < ncols * nrows {
|
||||
crate::bail!("unexpected data size {}, ncols {ncols} {nrows}", data_elems)
|
||||
}
|
||||
if y.len() != ncols {
|
||||
crate::bail!("unexpected y size {}, ncols {ncols} {nrows}", y.len())
|
||||
}
|
||||
let kernel_name = match dtype {
|
||||
GgmlDType::Q4_0 => "dequantize_mul_mat_vec_q4_0_cuda",
|
||||
GgmlDType::Q4_1 => "dequantize_mul_mat_vec_q4_1_cuda",
|
||||
@ -107,8 +205,8 @@ fn dequantize_mut_mal_vec(
|
||||
_ => crate::bail!("unsupported dtype for quantized matmul {dtype:?}"),
|
||||
};
|
||||
let func = dev.get_or_load_func(kernel_name, candle_kernels::QUANTIZED)?;
|
||||
let dst = dev.alloc_zeros::<f32>(nrows).w()?;
|
||||
let block_num_y = (nrows + GGML_CUDA_MMV_Y - 1) / GGML_CUDA_MMV_Y;
|
||||
let dst = unsafe { dev.alloc::<f32>(nrows).w()? };
|
||||
let block_num_y = ceil_div(nrows, GGML_CUDA_MMV_Y);
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
grid_dim: (block_num_y as u32, 1, 1),
|
||||
block_dim: (WARP_SIZE as u32, GGML_CUDA_MMV_Y as u32, 1),
|
||||
@ -120,9 +218,149 @@ fn dequantize_mut_mal_vec(
|
||||
Ok(CudaStorage::wrap_cuda_slice(dst, dev.clone()))
|
||||
}
|
||||
|
||||
fn mul_mat_vec_via_q8_1(
|
||||
data: &CudaSlice<u8>,
|
||||
y: &CudaView<f32>,
|
||||
dtype: GgmlDType,
|
||||
ncols: usize,
|
||||
nrows: usize,
|
||||
b_size: usize,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<CudaStorage> {
|
||||
use cudarc::driver::LaunchAsync;
|
||||
|
||||
let data_elems = data.len() / dtype.type_size() * dtype.block_size();
|
||||
if data_elems < ncols * nrows {
|
||||
crate::bail!("unexpected data size {}, ncols {ncols} {nrows}", data_elems)
|
||||
}
|
||||
if y.len() != ncols * b_size {
|
||||
crate::bail!("unexpected y size {}, ncols {ncols} {nrows}", y.len())
|
||||
}
|
||||
if b_size == 0 || b_size > 8 {
|
||||
crate::bail!("only bsize between 1 and 8 are supported, got {b_size}")
|
||||
}
|
||||
// Start by quantizing y
|
||||
let ncols_padded = pad(ncols, MATRIX_ROW_PADDING);
|
||||
let y_size_in_bytes =
|
||||
b_size * ncols_padded * GgmlDType::Q8_1.type_size() / GgmlDType::Q8_1.block_size();
|
||||
let mut y_q8_1 = unsafe { dev.alloc::<u8>(y_size_in_bytes).w()? };
|
||||
quantize_q8_1(y, &mut y_q8_1, ncols, b_size, dev)?;
|
||||
|
||||
let kernel_name = match dtype {
|
||||
GgmlDType::Q4_0 => "mul_mat_vec_q4_0_q8_1_cuda",
|
||||
GgmlDType::Q4_1 => "mul_mat_vec_q4_1_q8_1_cuda",
|
||||
GgmlDType::Q5_0 => "mul_mat_vec_q5_0_q8_1_cuda",
|
||||
GgmlDType::Q5_1 => "mul_mat_vec_q5_1_q8_1_cuda",
|
||||
GgmlDType::Q8_0 => "mul_mat_vec_q8_0_q8_1_cuda",
|
||||
GgmlDType::Q2K => "mul_mat_vec_q2_K_q8_1_cuda",
|
||||
GgmlDType::Q3K => "mul_mat_vec_q3_K_q8_1_cuda",
|
||||
GgmlDType::Q4K => "mul_mat_vec_q4_K_q8_1_cuda",
|
||||
GgmlDType::Q5K => "mul_mat_vec_q5_K_q8_1_cuda",
|
||||
GgmlDType::Q6K => "mul_mat_vec_q6_K_q8_1_cuda",
|
||||
_ => crate::bail!("unsupported dtype for quantized matmul {dtype:?}"),
|
||||
};
|
||||
let kernel_name = format!("{kernel_name}{b_size}");
|
||||
let func = dev.get_or_load_func(&kernel_name, candle_kernels::QUANTIZED)?;
|
||||
let dst = unsafe { dev.alloc::<f32>(nrows * b_size).w()? };
|
||||
// https://github.com/ggerganov/llama.cpp/blob/facb8b56f8fd3bb10a693bf0943ae9d69d0828ef/ggml-cuda/mmvq.cu#L98
|
||||
let (nblocks, nwarps) = match b_size {
|
||||
1 => (nrows as u32, 4),
|
||||
2..=4 => ((nrows as u32 + 1) / 2, 4),
|
||||
5..=8 => ((nrows as u32 + 1) / 2, 2),
|
||||
_ => crate::bail!("unexpected bsize {b_size}"),
|
||||
};
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
grid_dim: (nblocks, 1, 1),
|
||||
block_dim: (WARP_SIZE as u32, nwarps, 1),
|
||||
shared_mem_bytes: 0,
|
||||
};
|
||||
|
||||
let params = (
|
||||
data,
|
||||
&y_q8_1,
|
||||
&dst,
|
||||
/* ncols_x */ ncols as i32,
|
||||
/* nrows_x */ nrows as i32,
|
||||
/* nrows_y */ ncols_padded as i32,
|
||||
/* nrows_dst */ nrows as i32,
|
||||
);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
Ok(CudaStorage::wrap_cuda_slice(dst, dev.clone()))
|
||||
}
|
||||
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn mul_mat_via_q8_1(
|
||||
data: &CudaSlice<u8>,
|
||||
y: &CudaView<f32>,
|
||||
dtype: GgmlDType,
|
||||
x_rows: usize,
|
||||
x_cols: usize,
|
||||
y_rows: usize,
|
||||
y_cols: usize,
|
||||
dev: &CudaDevice,
|
||||
) -> Result<CudaStorage> {
|
||||
use cudarc::driver::LaunchAsync;
|
||||
|
||||
let data_elems = data.len() / dtype.type_size() * dtype.block_size();
|
||||
if data_elems < x_rows * x_cols {
|
||||
crate::bail!("unexpected lhs size {}, {x_rows} {x_cols}", data_elems)
|
||||
}
|
||||
if y.len() != y_rows * y_cols {
|
||||
crate::bail!("unexpected y size {}, {y_rows} {y_cols}", y.len())
|
||||
}
|
||||
if x_cols != y_rows {
|
||||
crate::bail!("unexpected x/y size {x_rows} {x_cols} {y_rows} {y_cols}")
|
||||
}
|
||||
let k = x_cols;
|
||||
// Start by quantizing y
|
||||
let k_padded = pad(k, MATRIX_ROW_PADDING);
|
||||
let y_size_in_bytes =
|
||||
k_padded * y_rows * GgmlDType::Q8_1.type_size() / GgmlDType::Q8_1.block_size();
|
||||
let mut y_q8_1 = unsafe { dev.alloc::<u8>(y_size_in_bytes).w()? };
|
||||
quantize_q8_1(y, &mut y_q8_1, k, y_cols, dev)?;
|
||||
|
||||
let (kernel_name, mmq_x, mmq_y) = match dtype {
|
||||
GgmlDType::Q4_0 => ("mul_mat_q4_0", 64, 128),
|
||||
GgmlDType::Q4_1 => ("mul_mat_q4_1", 64, 128),
|
||||
GgmlDType::Q5_0 => ("mul_mat_q5_0", 128, 64),
|
||||
GgmlDType::Q5_1 => ("mul_mat_q5_1", 128, 64),
|
||||
GgmlDType::Q8_0 => ("mul_mat_q8_0", 128, 64),
|
||||
GgmlDType::Q2K => ("mul_mat_q2_K", 64, 128),
|
||||
GgmlDType::Q3K => ("mul_mat_q3_K", 128, 128),
|
||||
GgmlDType::Q4K => ("mul_mat_q4_K", 64, 128),
|
||||
GgmlDType::Q5K => ("mul_mat_q5_K", 64, 128),
|
||||
GgmlDType::Q6K => ("mul_mat_q6_K", 64, 64),
|
||||
_ => crate::bail!("unsupported dtype for quantized matmul {dtype:?}"),
|
||||
};
|
||||
let func = dev.get_or_load_func(kernel_name, candle_kernels::QUANTIZED)?;
|
||||
let dst = unsafe { dev.alloc::<f32>(x_rows * y_cols).w()? };
|
||||
let cfg = cudarc::driver::LaunchConfig {
|
||||
grid_dim: (
|
||||
ceil_div(x_rows, mmq_y) as u32,
|
||||
ceil_div(y_cols, mmq_x) as u32,
|
||||
1,
|
||||
),
|
||||
block_dim: (WARP_SIZE as u32, 4, 1),
|
||||
shared_mem_bytes: 0,
|
||||
};
|
||||
|
||||
let params = (
|
||||
/* vx */ data,
|
||||
/* vy */ &y_q8_1,
|
||||
/* dst */ &dst,
|
||||
/* ncols_x */ x_cols as i32,
|
||||
/* nrows_x */ x_rows as i32,
|
||||
/* ncols_y */ y_cols as i32,
|
||||
/* nrows_y */ k_padded as i32,
|
||||
/* nrows_dst */ x_rows as i32,
|
||||
);
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
Ok(CudaStorage::wrap_cuda_slice(dst, dev.clone()))
|
||||
}
|
||||
|
||||
impl QCudaStorage {
|
||||
pub fn zeros(device: &CudaDevice, el_count: usize, dtype: GgmlDType) -> Result<Self> {
|
||||
let size_in_bytes = el_count * dtype.type_size() / dtype.block_size();
|
||||
let size_in_bytes = ceil_div(el_count, dtype.block_size()) * dtype.type_size();
|
||||
let data = device.alloc_zeros::<u8>(size_in_bytes).w()?;
|
||||
Ok(QCudaStorage {
|
||||
data,
|
||||
@ -140,6 +378,12 @@ impl QCudaStorage {
|
||||
}
|
||||
|
||||
pub fn dequantize(&self, elem_count: usize) -> Result<CudaStorage> {
|
||||
fn deq<T: GgmlType>(buffer: &[u8], n: usize, dst: &mut [f32]) -> Result<()> {
|
||||
let slice = unsafe { std::slice::from_raw_parts(buffer.as_ptr() as *const T, n) };
|
||||
let vec = slice.to_vec();
|
||||
T::to_float(&vec, dst)
|
||||
}
|
||||
|
||||
let fast_kernel = matches!(
|
||||
self.dtype,
|
||||
GgmlDType::Q4_0
|
||||
@ -155,78 +399,38 @@ impl QCudaStorage {
|
||||
| GgmlDType::Q8K
|
||||
);
|
||||
if fast_kernel {
|
||||
return dequantize(&self.data, self.dtype, elem_count, self.device());
|
||||
return dequantize_f32(&self.data, self.dtype, elem_count, self.device());
|
||||
}
|
||||
// Run the dequantization on cpu.
|
||||
use crate::quantized::k_quants::GgmlType;
|
||||
|
||||
let buffer = self.device.dtoh_sync_copy(&self.data).w()?;
|
||||
let mut out = vec![0.0; elem_count];
|
||||
let block_len = elem_count / self.dtype.block_size();
|
||||
match self.dtype {
|
||||
GgmlDType::F32 => {
|
||||
let slice =
|
||||
unsafe { std::slice::from_raw_parts(buffer.as_ptr() as *const f32, block_len) };
|
||||
out.copy_from_slice(slice)
|
||||
}
|
||||
GgmlDType::F16 => {
|
||||
let vec: Vec<half::f16> = read_to_vec(&buffer, block_len);
|
||||
half::f16::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q4_0 => {
|
||||
let vec: Vec<crate::quantized::BlockQ4_0> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ4_0::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q4_1 => {
|
||||
let vec: Vec<crate::quantized::BlockQ4_1> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ4_1::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q5_0 => {
|
||||
let vec: Vec<crate::quantized::BlockQ5_0> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ5_0::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q5_1 => {
|
||||
let vec: Vec<crate::quantized::BlockQ5_1> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ5_1::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q8_0 => {
|
||||
let vec: Vec<crate::quantized::BlockQ8_0> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ8_0::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q8_1 => {
|
||||
let vec: Vec<crate::quantized::BlockQ8_1> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ8_1::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q2K => {
|
||||
let vec: Vec<crate::quantized::BlockQ2K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ2K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q3K => {
|
||||
let vec: Vec<crate::quantized::BlockQ3K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ3K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q4K => {
|
||||
let vec: Vec<crate::quantized::BlockQ4K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ4K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q5K => {
|
||||
let vec: Vec<crate::quantized::BlockQ5K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ5K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q6K => {
|
||||
let vec: Vec<crate::quantized::BlockQ6K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ6K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::Q8K => {
|
||||
let vec: Vec<crate::quantized::BlockQ8K> = read_to_vec(&buffer, block_len);
|
||||
crate::quantized::BlockQ8K::to_float(&vec, &mut out)?;
|
||||
}
|
||||
GgmlDType::F32 => deq::<f32>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::F16 => deq::<half::f16>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q4_0 => deq::<crate::quantized::BlockQ4_0>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q4_1 => deq::<crate::quantized::BlockQ4_1>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q5_0 => deq::<crate::quantized::BlockQ5_0>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q5_1 => deq::<crate::quantized::BlockQ5_1>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q8_0 => deq::<crate::quantized::BlockQ8_0>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q8_1 => deq::<crate::quantized::BlockQ8_1>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q2K => deq::<crate::quantized::BlockQ2K>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q3K => deq::<crate::quantized::BlockQ3K>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q4K => deq::<crate::quantized::BlockQ4K>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q5K => deq::<crate::quantized::BlockQ5K>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q6K => deq::<crate::quantized::BlockQ6K>(&buffer, block_len, &mut out)?,
|
||||
GgmlDType::Q8K => deq::<crate::quantized::BlockQ8K>(&buffer, block_len, &mut out)?,
|
||||
}
|
||||
|
||||
self.device
|
||||
.storage_from_cpu_storage(&crate::CpuStorage::F32(out))
|
||||
}
|
||||
|
||||
pub fn dequantize_f16(&self, elem_count: usize) -> Result<CudaStorage> {
|
||||
dequantize_f16(&self.data, self.dtype, elem_count, self.device())
|
||||
}
|
||||
|
||||
pub fn quantize(&mut self, src: &CudaStorage) -> Result<()> {
|
||||
// Run the quantization on cpu.
|
||||
let src = match &src.slice {
|
||||
@ -255,7 +459,17 @@ impl QCudaStorage {
|
||||
storage: &CudaStorage,
|
||||
layout: &crate::Layout,
|
||||
) -> Result<(CudaStorage, crate::Shape)> {
|
||||
if matches!(layout.shape().dims(), [1, 1, _] | [1, _]) {
|
||||
let max_bm = if FORCE_DMMV.load(std::sync::atomic::Ordering::Relaxed) {
|
||||
1
|
||||
} else {
|
||||
8
|
||||
};
|
||||
let use_vec_kernel = match layout.shape().dims() {
|
||||
[b, m, _k] => b * m <= max_bm,
|
||||
[b, _k] => *b <= max_bm,
|
||||
_ => false,
|
||||
};
|
||||
if use_vec_kernel {
|
||||
self.dequantize_matmul_vec(self_shape, storage, layout)
|
||||
} else {
|
||||
self.dequantize_matmul(self_shape, storage, layout)
|
||||
@ -276,22 +490,31 @@ impl QCudaStorage {
|
||||
Some((o1, o2)) => rhs.slice(o1..o2),
|
||||
None => Err(crate::Error::RequiresContiguous { op: "dmmv" }.bt())?,
|
||||
};
|
||||
let (with_batch, k) = match rhs_l.shape().dims() {
|
||||
[1, 1, k] => (true, k),
|
||||
[1, k] => (false, k),
|
||||
let (b_size, k) = match rhs_l.shape().dims() {
|
||||
[b, m, k] => (b * m, *k),
|
||||
[b, k] => (*b, *k),
|
||||
_ => crate::bail!("unexpected rhs shape in dmmv {:?}", rhs_l.shape()),
|
||||
};
|
||||
if ncols != *k {
|
||||
if ncols != k {
|
||||
crate::bail!("mismatch on matmul dim {self_shape:?} {:?}", rhs_l.shape())
|
||||
}
|
||||
|
||||
let out =
|
||||
dequantize_mut_mal_vec(&self.data, &rhs, self.dtype, ncols, nrows, self.device())?;
|
||||
let out_shape = if with_batch {
|
||||
vec![1, 1, nrows]
|
||||
let out = if FORCE_DMMV.load(std::sync::atomic::Ordering::Relaxed) {
|
||||
dequantize_mul_mat_vec(&self.data, &rhs, self.dtype, ncols, nrows, self.device())?
|
||||
} else {
|
||||
vec![1, nrows]
|
||||
mul_mat_vec_via_q8_1(
|
||||
&self.data,
|
||||
&rhs,
|
||||
self.dtype,
|
||||
ncols,
|
||||
nrows,
|
||||
b_size,
|
||||
self.device(),
|
||||
)?
|
||||
};
|
||||
let mut out_shape = rhs_l.shape().dims().to_vec();
|
||||
out_shape.pop();
|
||||
out_shape.push(nrows);
|
||||
Ok((out, out_shape.into()))
|
||||
}
|
||||
|
||||
@ -312,9 +535,30 @@ impl QCudaStorage {
|
||||
crate::bail!("mismatch on matmul dim {self_shape:?} {:?}", layout.shape())
|
||||
}
|
||||
|
||||
let data_f32 = self.dequantize(n * k)?;
|
||||
let rhs_l = crate::Layout::new((k, n).into(), vec![1, k], 0).broadcast_as((b, k, n))?;
|
||||
let out = storage.matmul(&data_f32, (b, m, n, k), layout, &rhs_l)?;
|
||||
let out = if FORCE_DMMV.load(std::sync::atomic::Ordering::Relaxed) {
|
||||
let data_f32 = self.dequantize(n * k)?;
|
||||
let rhs_l = crate::Layout::new((k, n).into(), vec![1, k], 0).broadcast_as((b, k, n))?;
|
||||
storage.matmul(&data_f32, (b, m, n, k), layout, &rhs_l)?
|
||||
} else {
|
||||
let storage = storage.as_cuda_slice::<f32>()?;
|
||||
let storage = match layout.contiguous_offsets() {
|
||||
Some((o1, o2)) => storage.slice(o1..o2),
|
||||
None => Err(crate::Error::RequiresContiguous {
|
||||
op: "quantized-matmul",
|
||||
}
|
||||
.bt())?,
|
||||
};
|
||||
mul_mat_via_q8_1(
|
||||
&self.data,
|
||||
&storage,
|
||||
self.dtype,
|
||||
/* x_rows */ n,
|
||||
/* x_cols */ k,
|
||||
/* y_rows */ k,
|
||||
/* y_cols */ b * m,
|
||||
self.device(),
|
||||
)?
|
||||
};
|
||||
let mut out_shape = layout.shape().dims().to_vec();
|
||||
out_shape.pop();
|
||||
out_shape.push(n);
|
||||
@ -322,11 +566,6 @@ impl QCudaStorage {
|
||||
}
|
||||
}
|
||||
|
||||
fn read_to_vec<T: Clone>(buffer: &[u8], n: usize) -> Vec<T> {
|
||||
let slice = unsafe { std::slice::from_raw_parts(buffer.as_ptr() as *const T, n) };
|
||||
slice.to_vec()
|
||||
}
|
||||
|
||||
pub fn load_quantized<T: super::GgmlType + Send + Sync + 'static>(
|
||||
device: &CudaDevice,
|
||||
data: &[T],
|
||||
@ -341,3 +580,101 @@ pub fn load_quantized<T: super::GgmlType + Send + Sync + 'static>(
|
||||
dtype: T::DTYPE,
|
||||
}))
|
||||
}
|
||||
|
||||
#[cfg(test)]
|
||||
mod test {
|
||||
use super::*;
|
||||
|
||||
#[test]
|
||||
fn cuda_quantize_q8_1() -> Result<()> {
|
||||
let dev = CudaDevice::new(0)?;
|
||||
let el = 256;
|
||||
let el_padded = pad(el, MATRIX_ROW_PADDING);
|
||||
let y_size_in_bytes =
|
||||
el_padded * GgmlDType::Q8_1.type_size() / GgmlDType::Q8_1.block_size();
|
||||
let mut y_q8_1 = unsafe { dev.alloc::<u8>(y_size_in_bytes).w()? };
|
||||
let vs: Vec<f32> = (0..el).map(|v| v as f32).collect();
|
||||
let y = dev.htod_sync_copy(&vs).w()?;
|
||||
quantize_q8_1(&y.slice(..), &mut y_q8_1, el, 1, &dev)?;
|
||||
Ok(())
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn cuda_mmv_q8_1() -> Result<()> {
|
||||
let dev = CudaDevice::new(0)?;
|
||||
let ncols = 256;
|
||||
let vs: Vec<f32> = (0..ncols).map(|v| v as f32).collect();
|
||||
let y = dev.htod_sync_copy(&vs).w()?;
|
||||
let mut xs = QCudaStorage::zeros(&dev, ncols, GgmlDType::Q4_0)?;
|
||||
xs.quantize(&CudaStorage::wrap_cuda_slice(y.clone(), dev.clone()))?;
|
||||
let cuda_storage = mul_mat_vec_via_q8_1(
|
||||
&xs.data,
|
||||
&y.slice(..),
|
||||
/* dtype */ GgmlDType::Q4_0,
|
||||
/* ncols */ ncols,
|
||||
/* nrows */ 1,
|
||||
/* b_size */ 1,
|
||||
&dev,
|
||||
)?;
|
||||
let vs = cuda_storage.as_cuda_slice::<f32>()?;
|
||||
let vs = dev.dtoh_sync_copy(&vs.slice(..)).unwrap();
|
||||
assert_eq!(vs.len(), 1);
|
||||
// for n = 255, n.(n+1).(2n+1) / 6 = 5559680
|
||||
// Q8 means 1/256 precision.
|
||||
assert_eq!(vs[0], 5561664.5);
|
||||
|
||||
let cuda_storage = dequantize_mul_mat_vec(
|
||||
&xs.data,
|
||||
&y.slice(..),
|
||||
/* dtype */ GgmlDType::Q4_0,
|
||||
/* ncols */ ncols,
|
||||
/* nrows */ 1,
|
||||
&dev,
|
||||
)?;
|
||||
let vs = cuda_storage.as_cuda_slice::<f32>()?;
|
||||
let vs = dev.dtoh_sync_copy(&vs.slice(..)).unwrap();
|
||||
assert_eq!(vs.len(), 1);
|
||||
assert_eq!(vs[0], 5561851.0);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn cuda_mm_q8_1() -> Result<()> {
|
||||
let dev = CudaDevice::new(0)?;
|
||||
let ncols = 256;
|
||||
let vs: Vec<f32> = (0..ncols * 4).map(|v| v as f32 / 4.).collect();
|
||||
let y = dev.htod_sync_copy(&vs).w()?;
|
||||
let mut xs = QCudaStorage::zeros(&dev, ncols * 4, GgmlDType::Q4_0)?;
|
||||
xs.quantize(&CudaStorage::wrap_cuda_slice(y.clone(), dev.clone()))?;
|
||||
let cuda_storage = mul_mat_via_q8_1(
|
||||
&xs.data,
|
||||
&y.slice(..),
|
||||
/* dtype */ GgmlDType::Q4_0,
|
||||
/* x_rows */ 4,
|
||||
/* x_cols */ ncols,
|
||||
/* y_rows */ ncols,
|
||||
/* y_cols */ 4,
|
||||
&dev,
|
||||
)?;
|
||||
let vs = cuda_storage.as_cuda_slice::<f32>()?;
|
||||
let vs = dev.dtoh_sync_copy(&vs.slice(..)).unwrap();
|
||||
|
||||
/*
|
||||
x = torch.tensor([float(v) for v in range(1024)]).reshape(4, 256)
|
||||
x @ x.t() / 16
|
||||
tensor([[ 347480.0000, 869720.0000, 1391960.0000, 1914200.0000],
|
||||
[ 869720.0000, 2440536.0000, 4011352.0000, 5582166.5000],
|
||||
[ 1391960.0000, 4011352.0000, 6630742.0000, 9250132.0000],
|
||||
[ 1914200.0000, 5582166.5000, 9250132.0000, 12918099.0000]])
|
||||
*/
|
||||
assert_eq!(vs.len(), 16);
|
||||
assert_eq!(vs[0], 347604.0);
|
||||
assert_eq!(vs[1], 888153.06);
|
||||
assert_eq!(vs[4], 869780.7);
|
||||
assert_eq!(vs[5], 2483145.0);
|
||||
assert_eq!(vs[11], 9407368.0);
|
||||
assert_eq!(vs[14], 9470856.0);
|
||||
assert_eq!(vs[15], 13138824.0);
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
@ -24,6 +24,10 @@ impl QCudaStorage {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
pub fn dequantize_f16(&self, _elem_count: usize) -> Result<CudaStorage> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
||||
pub fn quantize(&mut self, _src: &CudaStorage) -> Result<()> {
|
||||
Err(Error::NotCompiledWithCudaSupport)
|
||||
}
|
||||
|
@ -135,7 +135,6 @@ pub enum ValueType {
|
||||
// The value is a UTF-8 non-null-terminated string, with length prepended.
|
||||
String,
|
||||
// The value is an array of other values, with the length and type prepended.
|
||||
///
|
||||
// Arrays can be nested, and the length of the array is the number of elements in the array, not the number of bytes.
|
||||
Array,
|
||||
}
|
||||
@ -218,10 +217,16 @@ impl Value {
|
||||
}
|
||||
}
|
||||
|
||||
/// This will also automatically upcast any integral types which will not truncate.
|
||||
pub fn to_u64(&self) -> Result<u64> {
|
||||
match self {
|
||||
Self::U64(v) => Ok(*v),
|
||||
v => crate::bail!("not a u64 {v:?}"),
|
||||
// Autoupcast cases here
|
||||
Self::U8(v) => Ok(*v as u64),
|
||||
Self::U16(v) => Ok(*v as u64),
|
||||
Self::U32(v) => Ok(*v as u64),
|
||||
Self::Bool(v) => Ok(*v as u64),
|
||||
v => crate::bail!("not a u64 or upcastable to u64 {v:?}"),
|
||||
}
|
||||
}
|
||||
|
||||
|
@ -149,9 +149,12 @@ impl QMetalStorage {
|
||||
let (n, k) = self_shape.dims2()?;
|
||||
let mut dst_shape = src_shape.dims().to_vec();
|
||||
|
||||
let (b, m) = match dst_shape.len() {
|
||||
3 => (dst_shape[0], dst_shape[1]),
|
||||
2 => (1, dst_shape[0]),
|
||||
// We always use a single batch dimension and stack all the tensors in the batch on the
|
||||
// second dimension as the implementation in candle-metal-kernels doesn't handle batch
|
||||
// properly.
|
||||
let m = match dst_shape.len() {
|
||||
3 => dst_shape[0] * dst_shape[1],
|
||||
2 => dst_shape[0],
|
||||
n => crate::bail!("Invalid rank {n} for quantized matmul metal"),
|
||||
};
|
||||
let last_k = dst_shape.pop().unwrap();
|
||||
@ -163,18 +166,23 @@ impl QMetalStorage {
|
||||
let device = storage.device().clone();
|
||||
let dst = device.new_buffer(dst_shape.elem_count(), DType::F32, "qmatmul")?;
|
||||
let command_buffer = device.command_buffer()?;
|
||||
candle_metal_kernels::call_quantized_matmul_t(
|
||||
device.device(),
|
||||
&command_buffer,
|
||||
device.kernels(),
|
||||
self.dtype.into(),
|
||||
(b, m, n, k),
|
||||
storage.buffer(),
|
||||
layout.start_offset() * storage.dtype().size_in_bytes(),
|
||||
&self.buffer,
|
||||
&dst,
|
||||
)
|
||||
.map_err(MetalError::from)?;
|
||||
// In some cases it would be better to use the mm variant, though it has its drawbacks
|
||||
// around memory alignemnt.
|
||||
for batch_id in 0..m {
|
||||
candle_metal_kernels::call_quantized_matmul_mv_t(
|
||||
device.device(),
|
||||
&command_buffer,
|
||||
device.kernels(),
|
||||
self.dtype.into(),
|
||||
(1, 1, n, k),
|
||||
storage.buffer(),
|
||||
(layout.start_offset() + batch_id * k) * storage.dtype().size_in_bytes(),
|
||||
&self.buffer,
|
||||
batch_id * n * DType::F32.size_in_bytes(),
|
||||
&dst,
|
||||
)
|
||||
.map_err(MetalError::from)?;
|
||||
}
|
||||
let dst_storage = crate::MetalStorage::new(dst, device, dst_shape.elem_count(), DType::F32);
|
||||
Ok((dst_storage, dst_shape))
|
||||
}
|
||||
|
@ -1,4 +1,4 @@
|
||||
use crate::{CpuStorage, Device, Result, Shape, Storage, Tensor};
|
||||
use crate::{CpuStorage, DType, Device, Result, Shape, Storage, Tensor};
|
||||
use k_quants::*;
|
||||
use std::borrow::Cow;
|
||||
|
||||
@ -360,9 +360,24 @@ impl QTensor {
|
||||
pub fn dequantize(&self, device: &Device) -> Result<Tensor> {
|
||||
let storage = self.storage.dequantize(self.shape.elem_count())?;
|
||||
let none = crate::op::BackpropOp::none();
|
||||
let is_variable = false;
|
||||
crate::tensor::from_storage(storage, self.shape.clone(), none, is_variable)
|
||||
.to_device(device)
|
||||
crate::tensor::from_storage(storage, self.shape.clone(), none, false).to_device(device)
|
||||
}
|
||||
|
||||
pub fn dequantize_f16(&self, device: &Device) -> Result<Tensor> {
|
||||
// In the CUDA case, we have a specialized kernel as this can be useful for volta
|
||||
// architectures. https://github.com/huggingface/candle/issues/2136
|
||||
match &self.storage {
|
||||
QStorage::Cuda(s) => {
|
||||
let s = s.dequantize_f16(self.shape.elem_count())?;
|
||||
let none = crate::op::BackpropOp::none();
|
||||
crate::tensor::from_storage(Storage::Cuda(s), self.shape.clone(), none, false)
|
||||
.to_device(device)
|
||||
}
|
||||
_ => {
|
||||
let s = self.dequantize(device)?.to_dtype(crate::DType::F16)?;
|
||||
Ok(s)
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn storage_size_in_bytes(&self) -> usize {
|
||||
@ -378,6 +393,7 @@ impl QTensor {
|
||||
pub enum QMatMul {
|
||||
QTensor(std::sync::Arc<QTensor>),
|
||||
Tensor(Tensor),
|
||||
TensorF16(Tensor),
|
||||
}
|
||||
|
||||
thread_local! {
|
||||
@ -391,6 +407,17 @@ thread_local! {
|
||||
}
|
||||
}
|
||||
|
||||
thread_local! {
|
||||
static DEQUANTIZE_ALL_F16: bool = {
|
||||
match std::env::var("CANDLE_DEQUANTIZE_ALL_F16") {
|
||||
Ok(s) => {
|
||||
!s.is_empty() && s != "0"
|
||||
},
|
||||
Err(_) => false,
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
impl QMatMul {
|
||||
pub fn from_arc(qtensor: std::sync::Arc<QTensor>) -> Result<Self> {
|
||||
let dequantize = match qtensor.dtype() {
|
||||
@ -400,6 +427,9 @@ impl QMatMul {
|
||||
let t = if dequantize {
|
||||
let tensor = qtensor.dequantize(&qtensor.device())?;
|
||||
Self::Tensor(tensor)
|
||||
} else if DEQUANTIZE_ALL_F16.with(|b| *b) {
|
||||
let tensor = qtensor.dequantize_f16(&qtensor.device())?;
|
||||
Self::TensorF16(tensor)
|
||||
} else {
|
||||
Self::QTensor(qtensor)
|
||||
};
|
||||
@ -409,6 +439,25 @@ impl QMatMul {
|
||||
pub fn from_qtensor(qtensor: QTensor) -> Result<Self> {
|
||||
Self::from_arc(std::sync::Arc::new(qtensor))
|
||||
}
|
||||
|
||||
pub fn dequantize_f16(&self) -> Result<Tensor> {
|
||||
match self {
|
||||
Self::QTensor(t) => t.dequantize_f16(&t.device()),
|
||||
Self::Tensor(t) => t.to_dtype(DType::F16),
|
||||
Self::TensorF16(t) => Ok(t.clone()),
|
||||
}
|
||||
}
|
||||
|
||||
pub fn forward_via_f16(&self, xs: &Tensor) -> Result<Tensor> {
|
||||
let w = self.dequantize_f16()?;
|
||||
let in_dtype = xs.dtype();
|
||||
let w = match *xs.dims() {
|
||||
[b1, b2, _, _] => w.broadcast_left((b1, b2))?.t()?,
|
||||
[bsize, _, _] => w.broadcast_left(bsize)?.t()?,
|
||||
_ => w.t()?,
|
||||
};
|
||||
xs.to_dtype(DType::F16)?.matmul(&w)?.to_dtype(in_dtype)
|
||||
}
|
||||
}
|
||||
|
||||
impl crate::CustomOp1 for QTensor {
|
||||
@ -486,6 +535,15 @@ impl crate::Module for QMatMul {
|
||||
};
|
||||
xs.matmul(&w)
|
||||
}
|
||||
Self::TensorF16(w) => {
|
||||
let in_dtype = xs.dtype();
|
||||
let w = match *xs.dims() {
|
||||
[b1, b2, _, _] => w.broadcast_left((b1, b2))?.t()?,
|
||||
[bsize, _, _] => w.broadcast_left(bsize)?.t()?,
|
||||
_ => w.t()?,
|
||||
};
|
||||
xs.to_dtype(DType::F16)?.matmul(&w)?.to_dtype(in_dtype)
|
||||
}
|
||||
}
|
||||
}
|
||||
}
|
||||
|
@ -349,6 +349,30 @@ impl MmapedSafetensors {
|
||||
}
|
||||
}
|
||||
|
||||
pub struct SliceSafetensors<'a> {
|
||||
safetensors: SafeTensors<'a>,
|
||||
}
|
||||
|
||||
impl<'a> SliceSafetensors<'a> {
|
||||
/// Creates a wrapper around a binary buffer and deserialize the safetensors header.
|
||||
pub fn new(buffer: &'a [u8]) -> Result<Self> {
|
||||
let safetensors = safetensors::SafeTensors::deserialize(buffer)?;
|
||||
Ok(Self { safetensors })
|
||||
}
|
||||
|
||||
pub fn load(&self, name: &str, dev: &Device) -> Result<Tensor> {
|
||||
self.safetensors.tensor(name)?.load(dev)
|
||||
}
|
||||
|
||||
pub fn tensors(&self) -> Vec<(String, st::TensorView<'_>)> {
|
||||
self.safetensors.tensors()
|
||||
}
|
||||
|
||||
pub fn get(&self, name: &str) -> Result<st::TensorView<'_>> {
|
||||
Ok(self.safetensors.tensor(name)?)
|
||||
}
|
||||
}
|
||||
|
||||
pub struct BufferedSafetensors {
|
||||
safetensors: yoke::Yoke<SafeTensors_<'static>, Vec<u8>>,
|
||||
}
|
||||
|
@ -171,7 +171,7 @@ impl Shape {
|
||||
}
|
||||
let mut acc = 1;
|
||||
for (&stride, &dim) in stride.iter().zip(self.0.iter()).rev() {
|
||||
if stride != acc {
|
||||
if dim > 1 && stride != acc {
|
||||
return false;
|
||||
}
|
||||
acc *= dim;
|
||||
@ -186,7 +186,7 @@ impl Shape {
|
||||
}
|
||||
let mut acc = 1;
|
||||
for (&stride, &dim) in stride.iter().zip(self.0.iter()) {
|
||||
if stride != acc {
|
||||
if dim > 1 && stride != acc {
|
||||
return false;
|
||||
}
|
||||
acc *= dim;
|
||||
@ -304,6 +304,7 @@ impl Dim for usize {
|
||||
pub enum D {
|
||||
Minus1,
|
||||
Minus2,
|
||||
Minus(usize),
|
||||
}
|
||||
|
||||
impl D {
|
||||
@ -311,6 +312,7 @@ impl D {
|
||||
let dim = match self {
|
||||
Self::Minus1 => -1,
|
||||
Self::Minus2 => -2,
|
||||
Self::Minus(u) => -(*u as i32),
|
||||
};
|
||||
Error::DimOutOfRange {
|
||||
shape: shape.clone(),
|
||||
@ -327,6 +329,7 @@ impl Dim for D {
|
||||
match self {
|
||||
Self::Minus1 if rank >= 1 => Ok(rank - 1),
|
||||
Self::Minus2 if rank >= 2 => Ok(rank - 2),
|
||||
Self::Minus(u) if *u > 0 && rank >= *u => Ok(rank - *u),
|
||||
_ => Err(self.out_of_range(shape, op)),
|
||||
}
|
||||
}
|
||||
@ -336,6 +339,7 @@ impl Dim for D {
|
||||
match self {
|
||||
Self::Minus1 => Ok(rank),
|
||||
Self::Minus2 if rank >= 1 => Ok(rank - 1),
|
||||
Self::Minus(u) if *u > 0 && rank + 1 >= *u => Ok(rank + 1 - *u),
|
||||
_ => Err(self.out_of_range(shape, op)),
|
||||
}
|
||||
}
|
||||
|
239
candle-core/src/sort.rs
Normal file
239
candle-core/src/sort.rs
Normal file
@ -0,0 +1,239 @@
|
||||
use crate::{Result, Tensor};
|
||||
use rayon::prelude::*;
|
||||
|
||||
#[derive(Debug, Clone, Copy)]
|
||||
struct ArgSort {
|
||||
asc: bool,
|
||||
last_dim: usize,
|
||||
}
|
||||
|
||||
impl ArgSort {
|
||||
fn asort<T: crate::WithDType>(&self, vs: &[T], layout: &crate::Layout) -> Vec<u32> {
|
||||
#[allow(clippy::uninit_vec)]
|
||||
// Safety: indexes are set later in the parallelized section.
|
||||
let mut sort_indexes = unsafe {
|
||||
let el_count = layout.shape().elem_count();
|
||||
let mut v = Vec::with_capacity(el_count);
|
||||
v.set_len(el_count);
|
||||
v
|
||||
};
|
||||
if self.asc {
|
||||
sort_indexes
|
||||
.par_chunks_exact_mut(self.last_dim)
|
||||
.zip(vs.par_chunks_exact(self.last_dim))
|
||||
.for_each(|(indexes, vs)| {
|
||||
indexes
|
||||
.iter_mut()
|
||||
.enumerate()
|
||||
.for_each(|(i, v)| *v = i as u32);
|
||||
indexes.sort_by(|&i, &j| {
|
||||
vs[i as usize]
|
||||
.partial_cmp(&vs[j as usize])
|
||||
.unwrap_or(std::cmp::Ordering::Greater)
|
||||
})
|
||||
});
|
||||
} else {
|
||||
sort_indexes
|
||||
.par_chunks_exact_mut(self.last_dim)
|
||||
.zip(vs.par_chunks_exact(self.last_dim))
|
||||
.for_each(|(indexes, vs)| {
|
||||
indexes
|
||||
.iter_mut()
|
||||
.enumerate()
|
||||
.for_each(|(i, v)| *v = i as u32);
|
||||
indexes.sort_by(|&j, &i| {
|
||||
vs[i as usize]
|
||||
.partial_cmp(&vs[j as usize])
|
||||
.unwrap_or(std::cmp::Ordering::Greater)
|
||||
})
|
||||
});
|
||||
}
|
||||
sort_indexes
|
||||
}
|
||||
}
|
||||
|
||||
impl crate::CustomOp1 for ArgSort {
|
||||
fn name(&self) -> &'static str {
|
||||
"argsort"
|
||||
}
|
||||
|
||||
fn cpu_fwd(
|
||||
&self,
|
||||
storage: &crate::CpuStorage,
|
||||
layout: &crate::Layout,
|
||||
) -> Result<(crate::CpuStorage, crate::Shape)> {
|
||||
let sort_indexes = match storage {
|
||||
crate::CpuStorage::U8(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::U32(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::I64(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::BF16(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::F16(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::F32(vs) => self.asort(vs, layout),
|
||||
crate::CpuStorage::F64(vs) => self.asort(vs, layout),
|
||||
};
|
||||
let sort_indexes = crate::CpuStorage::U32(sort_indexes);
|
||||
Ok((sort_indexes, layout.shape().into()))
|
||||
}
|
||||
|
||||
#[cfg(feature = "cuda")]
|
||||
fn cuda_fwd(
|
||||
&self,
|
||||
storage: &crate::CudaStorage,
|
||||
layout: &crate::Layout,
|
||||
) -> Result<(crate::CudaStorage, crate::Shape)> {
|
||||
use crate::cuda_backend::cudarc::driver::{
|
||||
CudaSlice, DeviceRepr, LaunchAsync, LaunchConfig, ValidAsZeroBits,
|
||||
};
|
||||
use crate::cuda_backend::{kernel_name, kernels, CudaStorageSlice as S, Map1Any, WrapErr};
|
||||
use crate::{CudaDevice, WithDType};
|
||||
|
||||
impl Map1Any for ArgSort {
|
||||
fn f<T: DeviceRepr + WithDType + ValidAsZeroBits, W: Fn(CudaSlice<T>) -> S>(
|
||||
&self,
|
||||
src: &CudaSlice<T>,
|
||||
dev: &CudaDevice,
|
||||
layout: &crate::Layout,
|
||||
_wrap: W,
|
||||
) -> Result<S> {
|
||||
let slice = match layout.contiguous_offsets() {
|
||||
None => crate::bail!("input has to be contiguous"),
|
||||
Some((o1, o2)) => src.slice(o1..o2),
|
||||
};
|
||||
let elem_count = layout.shape().elem_count();
|
||||
let dst = unsafe { dev.alloc::<u32>(elem_count) }.w()?;
|
||||
let func = if self.asc {
|
||||
dev.get_or_load_func(&kernel_name::<T>("asort_asc"), kernels::SORT)?
|
||||
} else {
|
||||
dev.get_or_load_func(&kernel_name::<T>("asort_desc"), kernels::SORT)?
|
||||
};
|
||||
let ncols = self.last_dim;
|
||||
let nrows = elem_count / ncols;
|
||||
let ncols_pad = next_power_of_2(ncols);
|
||||
let params = (&slice, &dst, ncols as i32, ncols_pad as i32);
|
||||
let cfg = LaunchConfig {
|
||||
grid_dim: (1, nrows as u32, 1),
|
||||
block_dim: (ncols_pad as u32, 1, 1),
|
||||
shared_mem_bytes: (ncols_pad * std::mem::size_of::<u32>()) as u32,
|
||||
};
|
||||
unsafe { func.launch(cfg, params) }.w()?;
|
||||
Ok(S::U32(dst))
|
||||
}
|
||||
}
|
||||
|
||||
use crate::backend::BackendStorage;
|
||||
let dev = storage.device();
|
||||
let slice = self.map(&storage.slice, dev, layout)?;
|
||||
let dst = crate::cuda_backend::CudaStorage {
|
||||
slice,
|
||||
device: dev.clone(),
|
||||
};
|
||||
Ok((dst, layout.shape().clone()))
|
||||
}
|
||||
|
||||
#[cfg(feature = "metal")]
|
||||
fn metal_fwd(
|
||||
&self,
|
||||
storage: &crate::MetalStorage,
|
||||
layout: &crate::Layout,
|
||||
) -> Result<(crate::MetalStorage, crate::Shape)> {
|
||||
use crate::backend::BackendStorage;
|
||||
use crate::DType;
|
||||
|
||||
let name = {
|
||||
if self.asc {
|
||||
match storage.dtype() {
|
||||
DType::BF16 => "asort_asc_bf16",
|
||||
DType::F16 => "asort_asc_f16",
|
||||
DType::F32 => "asort_asc_f32",
|
||||
DType::F64 => "asort_asc_f64",
|
||||
DType::U8 => "asort_asc_u8",
|
||||
DType::U32 => "asort_asc_u32",
|
||||
DType::I64 => "asort_asc_i64",
|
||||
}
|
||||
} else {
|
||||
match storage.dtype() {
|
||||
DType::BF16 => "asort_desc_bf16",
|
||||
DType::F16 => "asort_desc_f16",
|
||||
DType::F32 => "asort_desc_f32",
|
||||
DType::F64 => "asort_desc_f64",
|
||||
DType::U8 => "asort_desc_u8",
|
||||
DType::U32 => "asort_desc_u32",
|
||||
DType::I64 => "asort_desc_i64",
|
||||
}
|
||||
}
|
||||
};
|
||||
let device = storage.device();
|
||||
let kernels = device.kernels();
|
||||
let command_buffer = device.command_buffer()?;
|
||||
let el = layout.shape().elem_count();
|
||||
let ncols = self.last_dim;
|
||||
let nrows = el / ncols;
|
||||
let src = crate::metal_backend::buffer_o(storage.buffer(), layout, storage.dtype());
|
||||
let dst = device.new_buffer(el, DType::U32, "asort")?;
|
||||
let mut ncols_pad = 1;
|
||||
while ncols_pad < ncols {
|
||||
ncols_pad *= 2;
|
||||
}
|
||||
candle_metal_kernels::call_arg_sort(
|
||||
device.metal_device(),
|
||||
&command_buffer,
|
||||
kernels,
|
||||
name,
|
||||
nrows,
|
||||
ncols,
|
||||
ncols_pad,
|
||||
src,
|
||||
&dst,
|
||||
)
|
||||
.map_err(crate::Error::wrap)?;
|
||||
let dst = crate::MetalStorage::new(dst, device.clone(), el, DType::U32);
|
||||
Ok((dst, layout.shape().clone()))
|
||||
}
|
||||
}
|
||||
|
||||
#[allow(unused)]
|
||||
fn next_power_of_2(x: usize) -> usize {
|
||||
let mut n = 1;
|
||||
while n < x {
|
||||
n *= 2
|
||||
}
|
||||
n
|
||||
}
|
||||
|
||||
impl Tensor {
|
||||
/// Returns the indices that sort the tensor along the last dimension.
|
||||
///
|
||||
/// If `asc` is `true`, sorting is in ascending order. Otherwise sorting is performed in
|
||||
/// descending order. The sort is unstable so there is no guarantees on the final order when it
|
||||
/// comes to ties.
|
||||
pub fn arg_sort_last_dim(&self, asc: bool) -> Result<Tensor> {
|
||||
if !self.is_contiguous() {
|
||||
return Err(crate::Error::RequiresContiguous {
|
||||
op: "arg_sort_last_dim",
|
||||
});
|
||||
}
|
||||
let last_dim = match self.dims().last() {
|
||||
None => crate::bail!("empty last-dim in arg-sort"),
|
||||
Some(last_dim) => *last_dim,
|
||||
};
|
||||
// No need for a backward pass for arg sort.
|
||||
self.apply_op1_no_bwd(&ArgSort { asc, last_dim })
|
||||
}
|
||||
|
||||
/// Sorts the tensor along the last dimension, returns the sorted tensor together with the
|
||||
/// sorted indexes.
|
||||
///
|
||||
/// If `asc` is `true`, sorting is in ascending order. Otherwise sorting is performed in
|
||||
/// descending order. The sort is unstable so there is no guarantees on the final order when it
|
||||
/// comes to ties.
|
||||
pub fn sort_last_dim(&self, asc: bool) -> Result<(Tensor, Tensor)> {
|
||||
if !self.is_contiguous() {
|
||||
return Err(crate::Error::RequiresContiguous {
|
||||
op: "sort_last_dim",
|
||||
});
|
||||
}
|
||||
let asort = self.arg_sort_last_dim(asc)?;
|
||||
let sorted = self.gather(&asort, crate::D::Minus1)?;
|
||||
Ok((sorted, asort))
|
||||
}
|
||||
}
|
@ -1,6 +1,7 @@
|
||||
use crate::backend::BackendStorage;
|
||||
use crate::op::{self, CmpOp, CustomOp1, CustomOp2, CustomOp3, ReduceOp};
|
||||
use crate::op::{self, CmpOp, ReduceOp};
|
||||
use crate::{CpuStorage, CudaStorage, DType, Device, Error, Layout, MetalStorage, Result, Shape};
|
||||
use crate::{CustomOp1, CustomOp2, CustomOp3, InplaceOp1, InplaceOp2, InplaceOp3};
|
||||
|
||||
// We do not want to implement Clone on Storage as cloning may fail because of
|
||||
// out of memory. Instead try_clone should be used.
|
||||
@ -43,9 +44,19 @@ impl Storage {
|
||||
}
|
||||
|
||||
pub(crate) fn same_device(&self, rhs: &Self, op: &'static str) -> Result<()> {
|
||||
let lhs = self.device().location();
|
||||
let rhs = rhs.device().location();
|
||||
if lhs != rhs {
|
||||
let lhs_device = self.device();
|
||||
let rhs_device = rhs.device();
|
||||
let lhs = lhs_device.location();
|
||||
let rhs = rhs_device.location();
|
||||
let same_device = if self.device().is_metal() {
|
||||
// On metal, we require the device to be exactly the same rather than
|
||||
// having the same location. In cuda this is not necessary as all CudaDevice on the
|
||||
// same GPU will use the same cuda stream.
|
||||
lhs_device.same_device(&rhs_device)
|
||||
} else {
|
||||
lhs == rhs
|
||||
};
|
||||
if !same_device {
|
||||
Err(Error::DeviceMismatchBinaryOp { lhs, rhs, op }.bt())
|
||||
} else {
|
||||
Ok(())
|
||||
@ -252,6 +263,51 @@ impl Storage {
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn inplace_op1(&mut self, l: &Layout, c: &dyn InplaceOp1) -> Result<()> {
|
||||
match self {
|
||||
Self::Cpu(storage) => c.cpu_fwd(storage, l),
|
||||
Self::Cuda(storage) => c.cuda_fwd(storage, l),
|
||||
Self::Metal(storage) => c.metal_fwd(storage, l),
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn inplace_op2(
|
||||
&mut self,
|
||||
l1: &Layout,
|
||||
t2: &Self,
|
||||
l2: &Layout,
|
||||
c: &dyn InplaceOp2,
|
||||
) -> Result<()> {
|
||||
self.same_device(t2, c.name())?;
|
||||
match (self, t2) {
|
||||
(Self::Cpu(s1), Self::Cpu(s2)) => c.cpu_fwd(s1, l1, s2, l2),
|
||||
(Self::Cuda(s1), Self::Cuda(s2)) => c.cuda_fwd(s1, l1, s2, l2),
|
||||
(Self::Metal(s1), Self::Metal(s2)) => c.metal_fwd(s1, l1, s2, l2),
|
||||
_ => unreachable!(),
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn inplace_op3(
|
||||
&mut self,
|
||||
l1: &Layout,
|
||||
t2: &Self,
|
||||
l2: &Layout,
|
||||
t3: &Self,
|
||||
l3: &Layout,
|
||||
c: &dyn InplaceOp3,
|
||||
) -> Result<()> {
|
||||
self.same_device(t2, c.name())?;
|
||||
self.same_device(t3, c.name())?;
|
||||
match (self, t2, t3) {
|
||||
(Self::Cpu(s1), Self::Cpu(s2), Self::Cpu(s3)) => c.cpu_fwd(s1, l1, s2, l2, s3, l3),
|
||||
(Self::Cuda(s1), Self::Cuda(s2), Self::Cuda(s3)) => c.cuda_fwd(s1, l1, s2, l2, s3, l3),
|
||||
(Self::Metal(s1), Self::Metal(s2), Self::Metal(s3)) => {
|
||||
c.metal_fwd(s1, l1, s2, l2, s3, l3)
|
||||
}
|
||||
_ => unreachable!(),
|
||||
}
|
||||
}
|
||||
|
||||
pub(crate) fn unary_impl<B: op::UnaryOpT>(&self, layout: &Layout) -> Result<Self> {
|
||||
match self {
|
||||
Storage::Cpu(storage) => {
|
||||
|
206
candle-core/src/streaming.rs
Normal file
206
candle-core/src/streaming.rs
Normal file
@ -0,0 +1,206 @@
|
||||
use crate::{Result, Shape, Tensor};
|
||||
|
||||
pub trait Dim: crate::shape::Dim + Copy {}
|
||||
impl<T: crate::shape::Dim + Copy> Dim for T {}
|
||||
|
||||
/// A stream tensor is used in streaming module. It can either contain an actual tensor or be
|
||||
/// empty.
|
||||
#[derive(Clone)]
|
||||
pub struct StreamTensor(Option<Tensor>);
|
||||
|
||||
impl std::fmt::Debug for StreamTensor {
|
||||
fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result {
|
||||
match &self.0 {
|
||||
Some(t) => write!(f, "{:?}", t.shape()),
|
||||
None => write!(f, "Empty"),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
impl std::convert::From<Option<Tensor>> for StreamTensor {
|
||||
fn from(value: Option<Tensor>) -> Self {
|
||||
Self(value)
|
||||
}
|
||||
}
|
||||
|
||||
impl std::convert::From<Tensor> for StreamTensor {
|
||||
fn from(value: Tensor) -> Self {
|
||||
Self(Some(value))
|
||||
}
|
||||
}
|
||||
|
||||
impl std::convert::From<()> for StreamTensor {
|
||||
fn from(_value: ()) -> Self {
|
||||
Self(None)
|
||||
}
|
||||
}
|
||||
|
||||
impl StreamTensor {
|
||||
pub fn empty() -> Self {
|
||||
Self(None)
|
||||
}
|
||||
|
||||
pub fn from_tensor(tensor: Tensor) -> Self {
|
||||
Self(Some(tensor))
|
||||
}
|
||||
|
||||
pub fn shape(&self) -> Option<&Shape> {
|
||||
self.0.as_ref().map(|t| t.shape())
|
||||
}
|
||||
|
||||
pub fn cat2<D: Dim>(&self, rhs: &Self, dim: D) -> Result<Self> {
|
||||
let xs = match (&self.0, &rhs.0) {
|
||||
(Some(lhs), Some(rhs)) => {
|
||||
let xs = Tensor::cat(&[lhs, rhs], dim)?;
|
||||
Some(xs)
|
||||
}
|
||||
(Some(xs), None) | (None, Some(xs)) => Some(xs.clone()),
|
||||
(None, None) => None,
|
||||
};
|
||||
Ok(Self(xs))
|
||||
}
|
||||
|
||||
pub fn seq_len<D: Dim>(&self, dim: D) -> Result<usize> {
|
||||
match &self.0 {
|
||||
None => Ok(0),
|
||||
Some(v) => v.dim(dim),
|
||||
}
|
||||
}
|
||||
|
||||
pub fn reset(&mut self) {
|
||||
self.0 = None
|
||||
}
|
||||
|
||||
pub fn narrow<D: Dim>(&self, dim: D, offset: usize, len: usize) -> Result<StreamTensor> {
|
||||
let t = match &self.0 {
|
||||
None => None,
|
||||
Some(t) => {
|
||||
let seq_len = t.dim(dim)?;
|
||||
if seq_len <= offset {
|
||||
None
|
||||
} else {
|
||||
let t = t.narrow(dim, offset, usize::min(len, seq_len - offset))?;
|
||||
Some(t)
|
||||
}
|
||||
}
|
||||
};
|
||||
Ok(Self(t))
|
||||
}
|
||||
|
||||
/// Splits the Streaming Tensor on the time axis `dim` with the first `lhs_len` elements
|
||||
/// returned in the first output and the remaining in the second output.
|
||||
pub fn split<D: Dim>(&self, dim: D, lhs_len: usize) -> Result<(Self, Self)> {
|
||||
match &self.0 {
|
||||
None => Ok((Self::empty(), Self::empty())),
|
||||
Some(t) => {
|
||||
let seq_len = t.dim(dim)?;
|
||||
let lhs_len = usize::min(seq_len, lhs_len);
|
||||
if lhs_len == 0 {
|
||||
Ok((Self::empty(), t.clone().into()))
|
||||
} else {
|
||||
let lhs = Self::from_tensor(t.narrow(dim, 0, lhs_len)?);
|
||||
let rhs_len = seq_len - lhs_len;
|
||||
let rhs = if rhs_len == 0 {
|
||||
Self::empty()
|
||||
} else {
|
||||
Self::from_tensor(t.narrow(dim, lhs_len, rhs_len)?)
|
||||
};
|
||||
Ok((lhs, rhs))
|
||||
}
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
pub fn as_option(&self) -> Option<&Tensor> {
|
||||
self.0.as_ref()
|
||||
}
|
||||
|
||||
pub fn apply<M: crate::Module>(&self, m: &M) -> Result<Self> {
|
||||
match &self.0 {
|
||||
None => Ok(Self::empty()),
|
||||
Some(t) => Ok(Self::from_tensor(t.apply(m)?)),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
/// Streaming modules take as input a stream tensor and return a stream tensor. They may perform
|
||||
/// some internal buffering so that enough data has been received for the module to be able to
|
||||
/// perform some operations.
|
||||
pub trait StreamingModule {
|
||||
// TODO: Should we also have a flush method?
|
||||
fn step(&mut self, xs: &StreamTensor) -> Result<StreamTensor>;
|
||||
fn reset_state(&mut self);
|
||||
}
|
||||
|
||||
#[derive(Debug, Clone, Copy, PartialEq, Eq, Hash)]
|
||||
pub enum BinOp {
|
||||
Add,
|
||||
Mul,
|
||||
Sub,
|
||||
Div,
|
||||
}
|
||||
|
||||
#[derive(Debug, Clone)]
|
||||
pub struct StreamingBinOp {
|
||||
prev_lhs: StreamTensor,
|
||||
prev_rhs: StreamTensor,
|
||||
pub op: BinOp,
|
||||
pub dim: crate::D,
|
||||
}
|
||||
|
||||
impl StreamingBinOp {
|
||||
pub fn new(op: BinOp, dim: crate::D) -> Self {
|
||||
Self {
|
||||
prev_lhs: StreamTensor::empty(),
|
||||
prev_rhs: StreamTensor::empty(),
|
||||
op,
|
||||
dim,
|
||||
}
|
||||
}
|
||||
|
||||
pub fn reset_state(&mut self) {
|
||||
self.prev_lhs.reset();
|
||||
self.prev_rhs.reset();
|
||||
}
|
||||
|
||||
pub fn forward(&self, lhs: &Tensor, rhs: &Tensor) -> Result<Tensor> {
|
||||
match self.op {
|
||||
BinOp::Add => Tensor::add(lhs, rhs),
|
||||
BinOp::Mul => Tensor::mul(lhs, rhs),
|
||||
BinOp::Sub => Tensor::sub(lhs, rhs),
|
||||
BinOp::Div => Tensor::div(lhs, rhs),
|
||||
}
|
||||
}
|
||||
|
||||
pub fn step(&mut self, lhs: &StreamTensor, rhs: &StreamTensor) -> Result<StreamTensor> {
|
||||
let lhs = StreamTensor::cat2(&self.prev_lhs, lhs, self.dim)?;
|
||||
let rhs = StreamTensor::cat2(&self.prev_rhs, rhs, self.dim)?;
|
||||
let lhs_len = lhs.seq_len(self.dim)?;
|
||||
let rhs_len = rhs.seq_len(self.dim)?;
|
||||
let common_len = usize::min(lhs_len, rhs_len);
|
||||
let (lhs, prev_lhs) = lhs.split(self.dim, common_len)?;
|
||||
let (rhs, prev_rhs) = rhs.split(self.dim, common_len)?;
|
||||
let ys = match (lhs.0, rhs.0) {
|
||||
(Some(lhs), Some(rhs)) => {
|
||||
let ys = self.forward(&lhs, &rhs)?;
|
||||
StreamTensor::from_tensor(ys)
|
||||
}
|
||||
(None, None) => StreamTensor::empty(),
|
||||
(lhs, rhs) => crate::bail!("INTERNAL ERROR inconsistent lhs and rhs {lhs:?} {rhs:?}"),
|
||||
};
|
||||
self.prev_lhs = prev_lhs;
|
||||
self.prev_rhs = prev_rhs;
|
||||
Ok(ys)
|
||||
}
|
||||
}
|
||||
|
||||
/// Simple wrapper that doesn't do any buffering.
|
||||
pub struct Map<T: crate::Module>(T);
|
||||
|
||||
impl<T: crate::Module> StreamingModule for Map<T> {
|
||||
fn reset_state(&mut self) {}
|
||||
|
||||
fn step(&mut self, xs: &StreamTensor) -> Result<StreamTensor> {
|
||||
xs.apply(&self.0)
|
||||
}
|
||||
}
|
@ -1,9 +1,7 @@
|
||||
//! Tensors are N-dimensional matrixes of elements using a single data type.
|
||||
#![allow(clippy::redundant_closure_call)]
|
||||
use crate::backend::{BackendDevice, BackendStorage};
|
||||
use crate::op::{
|
||||
BackpropOp, BinaryOp, CmpOp, CustomOp1, CustomOp2, CustomOp3, Op, ReduceOp, UnaryOp,
|
||||
};
|
||||
use crate::op::{BackpropOp, BinaryOp, CmpOp, Op, ReduceOp, UnaryOp};
|
||||
use crate::scalar::TensorOrScalar;
|
||||
use crate::shape::{Dim, Dims};
|
||||
use crate::{bail, storage::Storage, DType, Device, Error, Layout, Result, Shape};
|
||||
@ -81,6 +79,9 @@ macro_rules! unary_op {
|
||||
($fn_name:ident, $op_name:ident) => {
|
||||
pub fn $fn_name(&self) -> Result<Self> {
|
||||
let shape = self.shape();
|
||||
if shape.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self
|
||||
.storage()
|
||||
.unary_impl::<crate::op::$op_name>(self.layout())?;
|
||||
@ -94,6 +95,9 @@ macro_rules! binary_op {
|
||||
($fn_name:ident, $op_name:ident) => {
|
||||
pub fn $fn_name(&self, rhs: &Self) -> Result<Self> {
|
||||
let shape = self.same_shape_binary_op(rhs, stringify!($fn_name))?;
|
||||
if shape.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self.storage().binary_impl::<crate::op::$op_name>(
|
||||
&*rhs.storage(),
|
||||
self.layout(),
|
||||
@ -116,6 +120,9 @@ macro_rules! binary_op_scalar {
|
||||
.broadcast_as(self.shape())?,
|
||||
};
|
||||
let shape = self.same_shape_binary_op(&rhs, stringify!($fn_name))?;
|
||||
if self.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self.storage().binary_impl::<crate::op::$op_name>(
|
||||
&*rhs.storage(),
|
||||
self.layout(),
|
||||
@ -363,6 +370,15 @@ impl Tensor {
|
||||
|
||||
/// Returns a new tensor with all the elements having the same specified value. Note that
|
||||
/// the tensor is not contiguous so you would have to call `.contiguous()` on it if needed.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::full(3.5, (2, 4), &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec2::<f64>()?, &[
|
||||
/// [3.5, 3.5, 3.5, 3.5],
|
||||
/// [3.5, 3.5, 3.5, 3.5],
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
pub fn full<D: crate::WithDType, S: Into<Shape>>(
|
||||
value: D,
|
||||
shape: S,
|
||||
@ -372,6 +388,13 @@ impl Tensor {
|
||||
}
|
||||
|
||||
/// Creates a new 1D tensor from an iterator.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::from_iter( [1.0, 2.0, 3.0, 4.0].into_iter(), &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec1::<f64>()?, &[1.0, 2.0, 3.0, 4.0]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn from_iter<D: crate::WithDType>(
|
||||
iter: impl IntoIterator<Item = D>,
|
||||
device: &Device,
|
||||
@ -383,12 +406,26 @@ impl Tensor {
|
||||
|
||||
/// Creates a new 1D tensor with values from the interval `[start, end)` taken with a common
|
||||
/// difference `1` from `start`.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::arange(2., 5., &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec1::<f64>()?, &[2., 3., 4.]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn arange<D: crate::WithDType>(start: D, end: D, device: &Device) -> Result<Self> {
|
||||
Self::arange_step(start, end, D::one(), device)
|
||||
}
|
||||
|
||||
/// Creates a new 1D tensor with values from the interval `[start, end)` taken with a common
|
||||
/// difference `step` from `start`.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::arange_step(2.0, 4.0, 0.5, &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec1::<f64>()?, &[2.0, 2.5, 3.0, 3.5]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn arange_step<D: crate::WithDType>(
|
||||
start: D,
|
||||
end: D,
|
||||
@ -434,6 +471,16 @@ impl Tensor {
|
||||
/// Creates a new tensor initialized with values from the input vector. The number of elements
|
||||
/// in this vector must be the same as the number of elements defined by the shape.
|
||||
/// If the device is cpu, no data copy is made.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::from_vec(vec!{1., 2., 3., 4., 5., 6.}, (2, 3), &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec2::<f64>()?, &[
|
||||
/// [1., 2., 3.],
|
||||
/// [4., 5., 6.]
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn from_vec<S: Into<Shape>, D: crate::WithDType>(
|
||||
data: Vec<D>,
|
||||
shape: S,
|
||||
@ -444,12 +491,31 @@ impl Tensor {
|
||||
|
||||
/// Creates a new tensor initialized with values from the input slice. The number of elements
|
||||
/// in this vector must be the same as the number of elements defined by the shape.
|
||||
///```rust
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let values = vec![1., 2., 3., 4., 5., 6., 7., 8.];
|
||||
/// let a = Tensor::from_slice(&values[1..7], (2, 3), &Device::Cpu)?;
|
||||
///
|
||||
/// assert_eq!(a.to_vec2::<f64>()?, &[
|
||||
/// [2., 3., 4.],
|
||||
/// [5., 6., 7.]
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn from_slice<S: Into<Shape>, D: crate::WithDType>(
|
||||
array: &[D],
|
||||
shape: S,
|
||||
device: &Device,
|
||||
) -> Result<Self> {
|
||||
Self::new_impl(array, shape.into(), device, false)
|
||||
let shape = shape.into();
|
||||
let n: usize = shape.elem_count();
|
||||
let buffer_size: usize = array.len();
|
||||
if buffer_size != n {
|
||||
return Err(Error::ShapeMismatch { buffer_size, shape }.bt());
|
||||
}
|
||||
let storage = device.storage_from_slice(array)?;
|
||||
let none = BackpropOp::none();
|
||||
Ok(from_storage(storage, shape, none, false))
|
||||
}
|
||||
|
||||
pub(crate) fn same_shape_binary_op(&self, rhs: &Self, op: &'static str) -> Result<&Shape> {
|
||||
@ -512,6 +578,7 @@ impl Tensor {
|
||||
unary_op!(ceil, Ceil);
|
||||
unary_op!(floor, Floor);
|
||||
unary_op!(round, Round);
|
||||
unary_op!(sign, Sign);
|
||||
|
||||
/// Round element of the input tensor to the nearest integer.
|
||||
///
|
||||
@ -574,9 +641,9 @@ impl Tensor {
|
||||
///
|
||||
/// * `args` - A slice of 1D tensors.
|
||||
/// * `xy_indexing` - Whether to use xy indexing or ij indexing. If xy is selected, the
|
||||
/// first dimension corresponds to the cardinality of the second input and the second
|
||||
/// dimension corresponds to the cardinality of the first input. If ij is selected, the
|
||||
/// dimensions are in the same order as the cardinality of the inputs.
|
||||
/// first dimension corresponds to the cardinality of the second input and the second
|
||||
/// dimension corresponds to the cardinality of the first input. If ij is selected, the
|
||||
/// dimensions are in the same order as the cardinality of the inputs.
|
||||
///
|
||||
/// # Examples
|
||||
///
|
||||
@ -647,6 +714,9 @@ impl Tensor {
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn affine(&self, mul: f64, add: f64) -> Result<Self> {
|
||||
if self.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self.storage().affine(self.layout(), mul, add)?;
|
||||
let op = BackpropOp::new1(self, |arg| Op::Affine { arg, mul, add });
|
||||
Ok(from_storage(storage, self.shape(), op, false))
|
||||
@ -654,6 +724,9 @@ impl Tensor {
|
||||
|
||||
/// Applies the Exponential Linear Unit (ELU) function on each element of the input tensor.
|
||||
pub fn elu(&self, alpha: f64) -> Result<Self> {
|
||||
if self.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self.storage().elu(self.layout(), alpha)?;
|
||||
let op = BackpropOp::new1(self, |t| Op::Elu(t, alpha));
|
||||
Ok(from_storage(storage, self.shape(), op, false))
|
||||
@ -661,6 +734,9 @@ impl Tensor {
|
||||
|
||||
/// Raise the tensor to some float exponent `e`.
|
||||
pub fn powf(&self, e: f64) -> Result<Self> {
|
||||
if self.elem_count() == 0 {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let storage = self.storage().powf(self.layout(), e)?;
|
||||
let op = BackpropOp::new1(self, |t| Op::Powf(t, e));
|
||||
Ok(from_storage(storage, self.shape(), op, false))
|
||||
@ -707,6 +783,30 @@ impl Tensor {
|
||||
|
||||
/// Returns a new tensor that is a narrowed version of the input, the dimension `dim`
|
||||
/// ranges from `start` to `start + len`.
|
||||
/// ```
|
||||
/// use candle_core::{Tensor, Device};
|
||||
/// let a = Tensor::new(&[
|
||||
/// [0f32, 1., 2.],
|
||||
/// [3. , 4., 5.],
|
||||
/// [6. , 7., 8.]
|
||||
/// ], &Device::Cpu)?;
|
||||
///
|
||||
/// let b = a.narrow(0, 1, 2)?;
|
||||
/// assert_eq!(b.shape().dims(), &[2, 3]);
|
||||
/// assert_eq!(b.to_vec2::<f32>()?, &[
|
||||
/// [3., 4., 5.],
|
||||
/// [6., 7., 8.]
|
||||
/// ]);
|
||||
///
|
||||
/// let c = a.narrow(1, 1, 1)?;
|
||||
/// assert_eq!(c.shape().dims(), &[3, 1]);
|
||||
/// assert_eq!(c.to_vec2::<f32>()?, &[
|
||||
/// [1.],
|
||||
/// [4.],
|
||||
/// [7.]
|
||||
/// ]);
|
||||
/// # Ok::<(), candle_core::Error>(())
|
||||
/// ```
|
||||
pub fn narrow<D: Dim>(&self, dim: D, start: usize, len: usize) -> Result<Self> {
|
||||
let dims = self.dims();
|
||||
let dim = dim.to_index(self.shape(), "narrow")?;
|
||||
@ -1155,6 +1255,9 @@ impl Tensor {
|
||||
let n = b_dims[dim - 1];
|
||||
|
||||
let c_shape = Shape::from(&a_dims[..dim - 2]).extend(&[m, n]);
|
||||
if c_shape.elem_count() == 0 || k == 0 {
|
||||
return Tensor::zeros(c_shape, self.dtype(), self.device());
|
||||
}
|
||||
let batching: usize = a_dims[..dim - 2].iter().product();
|
||||
let batching_b: usize = b_dims[..dim - 2].iter().product();
|
||||
if k != k2 || batching != batching_b {
|
||||
@ -1351,7 +1454,7 @@ impl Tensor {
|
||||
}
|
||||
.bt())?
|
||||
}
|
||||
let mut storage = self.device().zeros(self.shape(), self.dtype())?;
|
||||
let mut storage = unsafe { self.device().alloc_uninit(self.shape(), self.dtype())? };
|
||||
self.storage()
|
||||
.copy_strided_src(&mut storage, 0, self.layout())?;
|
||||
let offset = start * src.dims()[1..].iter().product::<usize>();
|
||||
@ -1922,7 +2025,11 @@ impl Tensor {
|
||||
}
|
||||
(Storage::Cpu(storage), Device::Cpu) => Storage::Cpu(storage.clone()),
|
||||
_ => {
|
||||
bail!("not implemented yet")
|
||||
bail!(
|
||||
"not implemented yet, self.device: {:?}, device: {:?}",
|
||||
self.device(),
|
||||
device
|
||||
)
|
||||
}
|
||||
};
|
||||
let op = BackpropOp::new1(self, Op::ToDevice);
|
||||
@ -2001,7 +2108,7 @@ impl Tensor {
|
||||
Ok(self.clone())
|
||||
} else {
|
||||
let shape = self.shape();
|
||||
let mut storage = self.device().zeros(shape, self.dtype())?;
|
||||
let mut storage = unsafe { self.device().alloc_uninit(shape, self.dtype())? };
|
||||
self.storage()
|
||||
.copy_strided_src(&mut storage, 0, self.layout())?;
|
||||
let op = BackpropOp::new1(self, Op::Copy);
|
||||
@ -2009,11 +2116,21 @@ impl Tensor {
|
||||
}
|
||||
}
|
||||
|
||||
/// Returns a tensor that is in row major order. This always makes a copy.
|
||||
pub fn force_contiguous(&self) -> Result<Tensor> {
|
||||
let shape = self.shape();
|
||||
let mut storage = unsafe { self.device().alloc_uninit(shape, self.dtype())? };
|
||||
self.storage()
|
||||
.copy_strided_src(&mut storage, 0, self.layout())?;
|
||||
let op = BackpropOp::new1(self, Op::Copy);
|
||||
Ok(from_storage(storage, shape.clone(), op, false))
|
||||
}
|
||||
|
||||
/// Create a variable based on the values currently stored in a tensor. The storage is always
|
||||
/// copied.
|
||||
pub(crate) fn make_var(&self) -> Result<Tensor> {
|
||||
let shape = self.shape().clone();
|
||||
let mut storage = self.device().zeros(&shape, self.dtype())?;
|
||||
let mut storage = unsafe { self.device().alloc_uninit(&shape, self.dtype())? };
|
||||
self.storage()
|
||||
.copy_strided_src(&mut storage, 0, self.layout())?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), true))
|
||||
@ -2066,7 +2183,7 @@ impl Tensor {
|
||||
};
|
||||
Ok(Tensor(Arc::new(tensor_)))
|
||||
} else {
|
||||
let mut storage = self.device().zeros(&shape, self.dtype())?;
|
||||
let mut storage = unsafe { self.device().alloc_uninit(&shape, self.dtype())? };
|
||||
self.storage()
|
||||
.copy_strided_src(&mut storage, 0, self.layout())?;
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
@ -2093,8 +2210,19 @@ impl Tensor {
|
||||
let dim = dim.to_index(self.shape(), "squeeze")?;
|
||||
if dims[dim] == 1 {
|
||||
let mut dims = dims.to_vec();
|
||||
let mut strides = self.stride().to_vec();
|
||||
dims.remove(dim);
|
||||
self.reshape(dims)
|
||||
strides.remove(dim);
|
||||
let tensor_ = Tensor_ {
|
||||
id: TensorId::new(),
|
||||
storage: self.storage.clone(),
|
||||
layout: Layout::new(dims.into(), strides, self.layout.start_offset()),
|
||||
op: BackpropOp::new1(self, Op::Reshape),
|
||||
is_variable: false,
|
||||
dtype: self.dtype,
|
||||
device: self.device.clone(),
|
||||
};
|
||||
Ok(Tensor(Arc::new(tensor_)))
|
||||
} else {
|
||||
Ok(self.clone())
|
||||
}
|
||||
@ -2115,10 +2243,24 @@ impl Tensor {
|
||||
/// ```
|
||||
pub fn unsqueeze<D: Dim>(&self, dim: D) -> Result<Self> {
|
||||
let mut dims = self.dims().to_vec();
|
||||
let mut strides = self.stride().to_vec();
|
||||
let dim = dim.to_index_plus_one(self.shape(), "unsqueeze")?;
|
||||
// Cannot panic because to_index_plus_one already checks dimensions
|
||||
dims.insert(dim, 1);
|
||||
self.reshape(dims)
|
||||
// Any stride would work here, but we pick one so as to maximize the probability to remain
|
||||
// C contiguous.
|
||||
let stride = if dim < strides.len() { strides[dim] } else { 1 };
|
||||
strides.insert(dim, stride);
|
||||
let tensor_ = Tensor_ {
|
||||
id: TensorId::new(),
|
||||
storage: self.storage.clone(),
|
||||
layout: Layout::new(dims.into(), strides, self.layout.start_offset()),
|
||||
op: BackpropOp::new1(self, Op::Reshape),
|
||||
is_variable: false,
|
||||
dtype: self.dtype,
|
||||
device: self.device.clone(),
|
||||
};
|
||||
Ok(Tensor(Arc::new(tensor_)))
|
||||
}
|
||||
|
||||
/// Stacks two or more tensors along a particular dimension.
|
||||
@ -2231,6 +2373,10 @@ impl Tensor {
|
||||
self.storage.read().unwrap()
|
||||
}
|
||||
|
||||
pub(crate) fn storage_mut(&self) -> std::sync::RwLockWriteGuard<'_, Storage> {
|
||||
self.storage.write().unwrap()
|
||||
}
|
||||
|
||||
// If we extend the visibility of this function to be usable outside of this crate, we should
|
||||
// make it unsafe.
|
||||
pub(crate) fn storage_mut_and_layout(
|
||||
@ -2252,96 +2398,6 @@ impl Tensor {
|
||||
std::ptr::eq(lhs, rhs)
|
||||
}
|
||||
|
||||
/// Applies a unary custom op without backward support
|
||||
pub fn apply_op1_no_bwd<C: CustomOp1>(&self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op1(self.layout(), c)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a binary custom op without backward support
|
||||
pub fn apply_op2_no_bwd<C: CustomOp2>(&self, rhs: &Self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) =
|
||||
self.storage()
|
||||
.apply_op2(self.layout(), &rhs.storage(), rhs.layout(), c)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a ternary custom op without backward support
|
||||
pub fn apply_op3_no_bwd<C: CustomOp3>(&self, t2: &Self, t3: &Self, c: &C) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op3(
|
||||
self.layout(),
|
||||
&t2.storage(),
|
||||
t2.layout(),
|
||||
&t3.storage(),
|
||||
t3.layout(),
|
||||
c,
|
||||
)?;
|
||||
Ok(from_storage(storage, shape, BackpropOp::none(), false))
|
||||
}
|
||||
|
||||
/// Applies a unary custom op.
|
||||
pub fn apply_op1_arc(&self, c: Arc<Box<dyn CustomOp1 + Send + Sync>>) -> Result<Self> {
|
||||
let (storage, shape) = self
|
||||
.storage()
|
||||
.apply_op1(self.layout(), c.as_ref().as_ref())?;
|
||||
let op = BackpropOp::new1(self, |s| Op::CustomOp1(s, c.clone()));
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op1<C: 'static + CustomOp1 + Send + Sync>(&self, c: C) -> Result<Self> {
|
||||
self.apply_op1_arc(Arc::new(Box::new(c)))
|
||||
}
|
||||
|
||||
/// Applies a binary custom op.
|
||||
pub fn apply_op2_arc(
|
||||
&self,
|
||||
rhs: &Self,
|
||||
c: Arc<Box<dyn CustomOp2 + Send + Sync>>,
|
||||
) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op2(
|
||||
self.layout(),
|
||||
&rhs.storage(),
|
||||
rhs.layout(),
|
||||
c.as_ref().as_ref(),
|
||||
)?;
|
||||
let op = BackpropOp::new2(self, rhs, |t1, t2| Op::CustomOp2(t1, t2, c.clone()));
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op2<C: 'static + CustomOp2 + Send + Sync>(&self, r: &Self, c: C) -> Result<Self> {
|
||||
self.apply_op2_arc(r, Arc::new(Box::new(c)))
|
||||
}
|
||||
|
||||
/// Applies a ternary custom op.
|
||||
pub fn apply_op3_arc(
|
||||
&self,
|
||||
t2: &Self,
|
||||
t3: &Self,
|
||||
c: Arc<Box<dyn CustomOp3 + Send + Sync>>,
|
||||
) -> Result<Self> {
|
||||
let (storage, shape) = self.storage().apply_op3(
|
||||
self.layout(),
|
||||
&t2.storage(),
|
||||
t2.layout(),
|
||||
&t3.storage(),
|
||||
t3.layout(),
|
||||
c.as_ref().as_ref(),
|
||||
)?;
|
||||
let op = BackpropOp::new3(self, t2, t3, |t1, t2, t3| {
|
||||
Op::CustomOp3(t1, t2, t3, c.clone())
|
||||
});
|
||||
Ok(from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
pub fn apply_op3<C: 'static + CustomOp3 + Send + Sync>(
|
||||
&self,
|
||||
t2: &Self,
|
||||
t3: &Self,
|
||||
c: C,
|
||||
) -> Result<Self> {
|
||||
self.apply_op3_arc(t2, t3, Arc::new(Box::new(c)))
|
||||
}
|
||||
|
||||
/// Normalize a 'relative' axis value: positive values are kept, negative
|
||||
/// values means counting the dimensions from the back.
|
||||
pub fn normalize_axis(&self, axis: i64) -> Result<usize> {
|
||||
@ -2463,9 +2519,19 @@ impl Tensor {
|
||||
|
||||
/// Returns log(sum(exp(tensor), dim)).
|
||||
pub fn log_sum_exp<D: Dims>(&self, sum_dims: D) -> Result<Self> {
|
||||
let exp = self.exp()?;
|
||||
let sum = exp.sum(sum_dims)?;
|
||||
sum.log()
|
||||
let sum_dims = sum_dims.to_indexes(self.shape(), "log-sum-exp")?;
|
||||
if sum_dims.is_empty() {
|
||||
return Ok(self.clone());
|
||||
}
|
||||
let max = sum_dims[1..]
|
||||
.iter()
|
||||
.try_fold(self.max_keepdim(sum_dims[0])?, |max, &dim| {
|
||||
max.max_keepdim(dim)
|
||||
})?;
|
||||
let exp = self.broadcast_sub(&max)?.exp()?;
|
||||
let sum = exp.sum(sum_dims.clone())?;
|
||||
|
||||
sum.log()? + max.squeeze_dims(&sum_dims)
|
||||
}
|
||||
|
||||
/// Pointwise pow operation.
|
||||
|
@ -58,20 +58,18 @@ impl Tensor {
|
||||
}
|
||||
}
|
||||
}
|
||||
if dim == 0 {
|
||||
let all_contiguous = args.iter().all(|v| v.as_ref().is_contiguous());
|
||||
if all_contiguous {
|
||||
Self::cat_contiguous(args, dim)
|
||||
} else if dim == 0 {
|
||||
Self::cat0(args)
|
||||
} else {
|
||||
let all_contiguous = args.iter().all(|v| v.as_ref().is_contiguous());
|
||||
if all_contiguous {
|
||||
Self::cat_contiguous(args, dim)
|
||||
} else {
|
||||
let args: Vec<Tensor> = args
|
||||
.iter()
|
||||
.map(|a| a.as_ref().transpose(0, dim))
|
||||
.collect::<Result<Vec<_>>>()?;
|
||||
let cat = Self::cat0(&args)?;
|
||||
cat.transpose(0, dim)
|
||||
}
|
||||
let args: Vec<Tensor> = args
|
||||
.iter()
|
||||
.map(|a| a.as_ref().transpose(0, dim))
|
||||
.collect::<Result<Vec<_>>>()?;
|
||||
let cat = Self::cat0(&args)?;
|
||||
cat.transpose(0, dim)
|
||||
}
|
||||
}
|
||||
|
||||
@ -141,7 +139,7 @@ impl Tensor {
|
||||
}
|
||||
let shape = Shape::from(cat_dims);
|
||||
let op = crate::op::BackpropOp::new(args, |args| crate::op::Op::Cat(args, 0));
|
||||
let mut storage = device.zeros(&shape, dtype)?;
|
||||
let mut storage = unsafe { device.alloc_uninit(&shape, dtype)? };
|
||||
for (arg, &offset) in args.iter().zip(offsets.iter()) {
|
||||
let arg = arg.as_ref();
|
||||
arg.storage()
|
||||
@ -215,7 +213,7 @@ impl Tensor {
|
||||
let block_size: usize = cat_dims.iter().skip(1 + dim).product();
|
||||
let shape = Shape::from(cat_dims);
|
||||
let op = crate::op::BackpropOp::new(args, |args| crate::op::Op::Cat(args, dim));
|
||||
let mut storage = device.zeros(&shape, dtype)?;
|
||||
let mut storage = unsafe { device.alloc_uninit(&shape, dtype)? };
|
||||
let mut dst_o = 0;
|
||||
for arg in args.iter() {
|
||||
let arg = arg.as_ref();
|
||||
@ -237,4 +235,66 @@ impl Tensor {
|
||||
}
|
||||
Ok(crate::tensor::from_storage(storage, shape, op, false))
|
||||
}
|
||||
|
||||
/// Set the values on `self` using values from `src`. The copy starts at the specified
|
||||
/// `offset` for the target dimension `dim` on `self`.
|
||||
/// `self` and `src` must have the same shape except on dimension `dim` where the `self` size
|
||||
/// has to be greater than or equal to `offset` plus the `src` size.
|
||||
///
|
||||
/// Note that this modifies `self` in place and as such is not compatibel with
|
||||
/// back-propagation.
|
||||
pub fn slice_set<D: Dim>(&self, src: &Self, dim: D, offset: usize) -> Result<()> {
|
||||
let dim = dim.to_index(self.shape(), "slice-set")?;
|
||||
if !self.is_contiguous() || !src.is_contiguous() {
|
||||
Err(Error::RequiresContiguous { op: "slice-set" }.bt())?
|
||||
}
|
||||
if self.dtype() != src.dtype() {
|
||||
Err(Error::DTypeMismatchBinaryOp {
|
||||
lhs: self.dtype(),
|
||||
rhs: src.dtype(),
|
||||
op: "slice-set",
|
||||
}
|
||||
.bt())?
|
||||
}
|
||||
if self.device().location() != src.device().location() {
|
||||
Err(Error::DeviceMismatchBinaryOp {
|
||||
lhs: self.device().location(),
|
||||
rhs: src.device().location(),
|
||||
op: "slice-set",
|
||||
}
|
||||
.bt())?
|
||||
}
|
||||
if self.rank() != src.rank() {
|
||||
Err(Error::UnexpectedNumberOfDims {
|
||||
expected: self.rank(),
|
||||
got: src.rank(),
|
||||
shape: self.shape().clone(),
|
||||
}
|
||||
.bt())?
|
||||
}
|
||||
for (dim_idx, (v1, v2)) in self.dims().iter().zip(src.dims().iter()).enumerate() {
|
||||
if dim_idx == dim && *v2 + offset > *v1 {
|
||||
crate::bail!("shape mismatch on target dim, dst: {v1}, src: {v2} + {offset}")
|
||||
}
|
||||
if dim_idx != dim && v1 != v2 {
|
||||
crate::bail!("shape mismatch on dim {dim_idx}, {v1} <> {v2}")
|
||||
}
|
||||
}
|
||||
let block_size: usize = src.dims().iter().skip(1 + dim).product();
|
||||
let d1: usize = src.dims().iter().take(dim).product();
|
||||
let d2 = block_size * src.dims()[dim];
|
||||
let dst_o = self.layout().start_offset() + offset * block_size;
|
||||
let src_o = src.layout().start_offset();
|
||||
src.storage().copy2d(
|
||||
&mut self.storage_mut(),
|
||||
d1,
|
||||
d2,
|
||||
/* src_s */ d2,
|
||||
/* dst_s */ block_size * self.dims()[dim],
|
||||
src_o,
|
||||
dst_o,
|
||||
)?;
|
||||
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
@ -34,9 +34,14 @@ impl Var {
|
||||
Ok(Self(inner))
|
||||
}
|
||||
|
||||
// Convert a tensor to a variable, if the tensor is already a variable then it is returned as is.
|
||||
pub fn from_tensor(t: &Tensor) -> Result<Self> {
|
||||
let inner = t.make_var()?;
|
||||
Ok(Self(inner))
|
||||
if t.is_variable() {
|
||||
Ok(Self(t.clone()))
|
||||
} else {
|
||||
let inner = t.make_var()?;
|
||||
Ok(Self(inner))
|
||||
}
|
||||
}
|
||||
|
||||
pub fn rand_f64<S: Into<Shape>>(
|
||||
|
@ -54,11 +54,6 @@ fn conv1d(dev: &Device) -> Result<()> {
|
||||
[2.4509, 2.6357, -1.3336, 4.1393, 0.5657, 1.8091, -1.1784, 3.5675, 0.5069, 3.3352]
|
||||
);
|
||||
|
||||
// conv-transposes are not implemented for metal.
|
||||
if dev.is_metal() {
|
||||
return Ok(());
|
||||
}
|
||||
|
||||
let w = w.transpose(0, 1)?;
|
||||
// The CPU kernels applied in the contiguous and non contiguous cases are different.
|
||||
for w in [w.clone(), w.contiguous()?] {
|
||||
@ -140,7 +135,7 @@ fn conv2d(dev: &Device) -> Result<()> {
|
||||
0.6466, -0.5042, -0.0603, -1.6538, -1.2429, 1.8357, 1.6052, -1.3844, 0.3323, -1.3712,
|
||||
0.9634, -0.4799, -0.6451, -0.0840, -1.4247, 0.5512, -0.1747, -0.5509, -0.3742, 0.3790,
|
||||
-0.4431, -0.4720, -0.7890, 0.2620, 0.7875, 0.5377, -0.6779, -0.8088, 1.9098, 1.2006,
|
||||
-0.8000, -0.4983, 1.5480, 0.8265, -0.1025, 0.5138, 0.5748, 0.3821, -0.4607, 0.0085,
|
||||
-0.8, -0.4983, 1.5480, 0.8265, -0.1025, 0.5138, 0.5748, 0.3821, -0.4607, 0.0085,
|
||||
],
|
||||
dev,
|
||||
)?;
|
||||
@ -168,33 +163,34 @@ fn conv2d(dev: &Device) -> Result<()> {
|
||||
10.389, 3.6023, -4.2808, 0.2672, 5.3646, -5.2023, -2.1955, -9.4075
|
||||
]
|
||||
);
|
||||
if !dev.is_metal() {
|
||||
let res = t.conv_transpose2d(&w.transpose(0, 1)?, 0, 0, 1, 1)?;
|
||||
assert_eq!(res.dims(), [1, 2, 7, 7]);
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&res.i(0)?, 4)?,
|
||||
|
||||
let res = t.conv_transpose2d(&w.transpose(0, 1)?, 0, 0, 1, 1)?;
|
||||
|
||||
assert_eq!(res.dims(), [1, 2, 7, 7]);
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&res.i(0)?, 4)?,
|
||||
[
|
||||
[
|
||||
[
|
||||
[-1.9918, 2.6797, -0.4599, -1.6037, 1.4131, -2.4012, 2.9277],
|
||||
[1.8016, -3.5361, 1.0757, 3.5395, -8.2168, -3.2023, 0.5375],
|
||||
[0.8243, 1.8675, 7.8929, -4.0746, -6.4415, 5.1139, 1.6889],
|
||||
[0.2722, 8.9679, 3.3477, 1.8514, -4.2896, -3.8228, -7.5632],
|
||||
[-8.5412, -5.8142, -7.1587, -1.6095, 0.4651, 0.2748, -2.0985],
|
||||
[2.0833, -0.6482, -12.1692, -4.1284, -2.9765, -0.0656, -4.5114],
|
||||
[5.307, 2.6957, 2.3087, 1.0478, 0.7808, -1.1519, -0.9579]
|
||||
],
|
||||
[
|
||||
[1.089, 0.1872, -0.6408, -0.9897, 0.8503, 1.1019, -0.9211],
|
||||
[-0.1741, -0.2915, 4.2472, 1.9417, 1.65, 0.6303, -4.7131],
|
||||
[1.6555, 2.4026, -2.9293, 2.9953, 0.5328, 3.5873, -0.9621],
|
||||
[-1.4289, -3.2787, 4.1747, -6.0341, -4.6341, -5.7945, 4.142],
|
||||
[7.5973, 6.4431, 5.9872, 2.1639, -8.6566, 3.3143, -3.4059],
|
||||
[-0.8775, -3.048, 11.6543, 0.6442, 2.3218, -0.4765, 1.1516],
|
||||
[-5.5423, -2.5188, 1.0754, -0.0563, -2.9386, -1.1504, 1.0171]
|
||||
]
|
||||
[-1.9918, 2.6797, -0.4599, -1.6037, 1.4131, -2.4012, 2.9277],
|
||||
[1.8016, -3.5361, 1.0757, 3.5395, -8.2168, -3.2023, 0.5375],
|
||||
[0.8243, 1.8675, 7.8929, -4.0746, -6.4415, 5.1139, 1.6889],
|
||||
[0.2722, 8.9679, 3.3477, 1.8514, -4.2896, -3.8228, -7.5632],
|
||||
[-8.5412, -5.8142, -7.1587, -1.6095, 0.4651, 0.2748, -2.0985],
|
||||
[2.0833, -0.6482, -12.1692, -4.1284, -2.9765, -0.0656, -4.5114],
|
||||
[5.307, 2.6957, 2.3087, 1.0478, 0.7808, -1.1519, -0.9579]
|
||||
],
|
||||
[
|
||||
[1.089, 0.1872, -0.6408, -0.9897, 0.8503, 1.1019, -0.9211],
|
||||
[-0.1741, -0.2915, 4.2472, 1.9417, 1.65, 0.6303, -4.7131],
|
||||
[1.6555, 2.4026, -2.9293, 2.9953, 0.5328, 3.5873, -0.9621],
|
||||
[-1.4289, -3.2787, 4.1747, -6.0341, -4.6341, -5.7945, 4.142],
|
||||
[7.5973, 6.4431, 5.9872, 2.1639, -8.6566, 3.3143, -3.4059],
|
||||
[-0.8775, -3.048, 11.6543, 0.6442, 2.3218, -0.4765, 1.1516],
|
||||
[-5.5423, -2.5188, 1.0754, -0.0563, -2.9386, -1.1504, 1.0171]
|
||||
]
|
||||
);
|
||||
}
|
||||
]
|
||||
);
|
||||
|
||||
// Dilations.
|
||||
let res = t.conv2d(&w, 0, 1, 2, 1)?;
|
||||
assert_eq!(res.dims(), [1, 2, 1, 1]);
|
||||
@ -203,44 +199,37 @@ fn conv2d(dev: &Device) -> Result<()> {
|
||||
[2.45, -2.3504],
|
||||
);
|
||||
|
||||
if !dev.is_metal() {
|
||||
// Transpose and dilations.
|
||||
let res = t.conv_transpose2d(&w.transpose(0, 1)?, 0, 0, 1, 2)?;
|
||||
assert_eq!(res.dims(), [1, 2, 9, 9]);
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&res.i(0)?, 4)?,
|
||||
// Transpose and dilations.
|
||||
let res = t.conv_transpose2d(&w.transpose(0, 1)?, 0, 0, 1, 2)?;
|
||||
assert_eq!(res.dims(), [1, 2, 9, 9]);
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&res.i(0)?, 4)?,
|
||||
[
|
||||
[
|
||||
[
|
||||
[-1.9918, 3.1652, -0.6778, -4.3442, 4.4351, 0.6652, -3.0124, -0.6031, 2.9277],
|
||||
[2.7036, -1.7156, -0.3969, 1.0516, 1.6381, -2.8886, -0.205, 2.4682, -1.0499],
|
||||
[-0.9459, 3.1631, 3.707, -4.8369, -8.5166, -1.4496, -2.7559, -3.2698, 1.4376],
|
||||
[-0.2157, 3.7786, -2.0252, -4.2633, 3.6731, -1.5142, 5.9391, -0.2622, -0.141],
|
||||
[-6.8121, -3.1744, 1.5945, 3.0637, -9.6088, 1.4446, 2.9489, -3.0082, -7.3822],
|
||||
[0.2371, 3.3303, 0.3861, 2.2646, -4.6784, 4.1235, -0.0109, 0.3176, -0.03],
|
||||
[
|
||||
-2.5339, -2.9564, -3.4518, -4.4594, -9.1873, -1.9709, -0.4676, 0.51,
|
||||
-3.5024
|
||||
],
|
||||
[4.007, 0.3067, -2.2954, 1.1105, -0.1992, 1.6372, -2.9268, 0.2807, -1.2787],
|
||||
[5.307, 1.1317, 1.3518, 0.9049, 3.8116, -0.4075, -0.8874, -0.2241, -0.9579]
|
||||
],
|
||||
[
|
||||
[1.089, -0.6483, 0.0726, -0.4752, -1.3283, 1.7103, 1.0703, 0.1076, -0.9211],
|
||||
[-0.8629, 0.1376, 0.3202, 2.0955, 0.9696, 2.8988, -1.0012, 1.5049, -0.1278],
|
||||
[1.9286, -1.5255, -2.9563, 2.4589, 3.3611, -0.6951, 0.3525, -1.7724, -5.9861],
|
||||
[1.1226, 2.1561, 3.6417, 4.7546, -0.692, 4.4126, -5.1902, 6.0805, 2.3185],
|
||||
[1.0111, 0.3604, 0.6432, -3.6605, 7.9517, -9.2955, -5.2988, -3.7803, -2.0642],
|
||||
[3.3172, -1.7967, -3.6576, -2.0942, 1.3158, 0.112, -1.7405, 2.9167, 0.7957],
|
||||
[5.1001, 1.8995, -1.8639, 1.1262, 9.9629, 2.683, -3.6319, -1.1607, 0.5856],
|
||||
[-4.8445, -0.5642, 4.2317, 0.0856, 1.2267, -0.5712, 1.736, 1.0997, 0.6908],
|
||||
[
|
||||
-5.5423, -1.1831, -1.2176, 0.0843, 0.0446, -0.7545, -2.4798, -0.0827,
|
||||
1.0171
|
||||
]
|
||||
]
|
||||
[-1.9918, 3.1652, -0.6778, -4.3442, 4.4351, 0.6652, -3.0124, -0.6031, 2.9277],
|
||||
[2.7036, -1.7156, -0.3969, 1.0516, 1.6381, -2.8886, -0.205, 2.4682, -1.0499],
|
||||
[-0.9459, 3.1631, 3.707, -4.8369, -8.5166, -1.4496, -2.7559, -3.2698, 1.4376],
|
||||
[-0.2157, 3.7786, -2.0252, -4.2633, 3.6731, -1.5142, 5.9391, -0.2622, -0.141],
|
||||
[-6.8121, -3.1744, 1.5945, 3.0637, -9.6088, 1.4446, 2.9489, -3.0082, -7.3822],
|
||||
[0.2371, 3.3303, 0.3861, 2.2646, -4.6784, 4.1235, -0.0109, 0.3176, -0.03],
|
||||
[-2.5339, -2.9564, -3.4518, -4.4594, -9.1873, -1.9709, -0.4676, 0.51, -3.5024],
|
||||
[4.007, 0.3067, -2.2954, 1.1105, -0.1992, 1.6372, -2.9268, 0.2807, -1.2787],
|
||||
[5.307, 1.1317, 1.3518, 0.9049, 3.8116, -0.4075, -0.8874, -0.2241, -0.9579]
|
||||
],
|
||||
[
|
||||
[1.089, -0.6483, 0.0726, -0.4752, -1.3283, 1.7103, 1.0703, 0.1076, -0.9211],
|
||||
[-0.8629, 0.1376, 0.3202, 2.0955, 0.9696, 2.8988, -1.0012, 1.5049, -0.1278],
|
||||
[1.9286, -1.5255, -2.9563, 2.4589, 3.3611, -0.6951, 0.3525, -1.7724, -5.9861],
|
||||
[1.1226, 2.1561, 3.6417, 4.7546, -0.692, 4.4126, -5.1902, 6.0805, 2.3185],
|
||||
[1.0111, 0.3604, 0.6432, -3.6605, 7.9517, -9.2955, -5.2988, -3.7803, -2.0642],
|
||||
[3.3172, -1.7967, -3.6576, -2.0942, 1.3158, 0.112, -1.7405, 2.9167, 0.7957],
|
||||
[5.1001, 1.8995, -1.8639, 1.1262, 9.9629, 2.683, -3.6319, -1.1607, 0.5856],
|
||||
[-4.8445, -0.5642, 4.2317, 0.0856, 1.2267, -0.5712, 1.736, 1.0997, 0.6908],
|
||||
[-5.5423, -1.1831, -1.2176, 0.0843, 0.0446, -0.7545, -2.4798, -0.0827, 1.0171]
|
||||
]
|
||||
);
|
||||
}
|
||||
]
|
||||
);
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
@ -287,19 +276,13 @@ fn conv2d_small(dev: &Device) -> Result<()> {
|
||||
assert_eq!(
|
||||
test_utils::to_vec1_round(&res.flatten_all()?, 4)?,
|
||||
[
|
||||
0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000,
|
||||
0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.1640, -0.0111, -0.1742, 0.0000, 0.0000,
|
||||
0.0000, 0.0000, 2.6437, -2.0268, 1.1823, 0.0000, 0.0000, 0.0000, 0.0000, 3.2855,
|
||||
-1.0324, 0.2539, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000,
|
||||
0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000, 0.0000
|
||||
0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.1640,
|
||||
-0.0111, -0.1742, 0.0, 0.0, 0.0, 0.0, 2.6437, -2.0268, 1.1823, 0.0, 0.0, 0.0, 0.0,
|
||||
3.2855, -1.0324, 0.2539, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0,
|
||||
0.0, 0.0, 0.0, 0.0
|
||||
]
|
||||
);
|
||||
|
||||
// conv-transposes are not implemented for metal
|
||||
if dev.is_metal() {
|
||||
return Ok(());
|
||||
}
|
||||
|
||||
let res = t.conv_transpose2d(&w.transpose(0, 1)?, 0, 0, 1, 1)?;
|
||||
assert_eq!(res.dims(), [1, 1, 3, 3]);
|
||||
assert_eq!(
|
||||
@ -402,9 +385,6 @@ print(w.grad[0])
|
||||
*/
|
||||
fn conv2d_grad(dev: &Device) -> Result<()> {
|
||||
// conv-transposes are not implemented for metal
|
||||
if dev.is_metal() {
|
||||
return Ok(());
|
||||
}
|
||||
use candle_core::Var;
|
||||
let t = Var::from_slice(
|
||||
&[
|
||||
@ -417,7 +397,7 @@ fn conv2d_grad(dev: &Device) -> Result<()> {
|
||||
0.6466, -0.5042, -0.0603, -1.6538, -1.2429, 1.8357, 1.6052, -1.3844, 0.3323, -1.3712,
|
||||
0.9634, -0.4799, -0.6451, -0.0840, -1.4247, 0.5512, -0.1747, -0.5509, -0.3742, 0.3790,
|
||||
-0.4431, -0.4720, -0.7890, 0.2620, 0.7875, 0.5377, -0.6779, -0.8088, 1.9098, 1.2006,
|
||||
-0.8000, -0.4983, 1.5480, 0.8265, -0.1025, 0.5138, 0.5748, 0.3821, -0.4607, 0.0085,
|
||||
-0.8, -0.4983, 1.5480, 0.8265, -0.1025, 0.5138, 0.5748, 0.3821, -0.4607, 0.0085,
|
||||
],
|
||||
(1, 4, 5, 5),
|
||||
dev,
|
||||
@ -602,6 +582,251 @@ fn conv2d_grad(dev: &Device) -> Result<()> {
|
||||
]
|
||||
);
|
||||
|
||||
// Conv Transpose 2d Test
|
||||
//tested against following python
|
||||
|
||||
// import torch
|
||||
// torch.manual_seed(4242)
|
||||
// padding = 4
|
||||
// outpadding = 2
|
||||
// dilation = 3
|
||||
// stride = 3
|
||||
// input = torch.randn((1, 4, 7, 5), requires_grad=True)
|
||||
// kernel = torch.randn((4, 2, 3, 5), requires_grad=True)
|
||||
// print("input", input.flatten())
|
||||
// print("kernel", kernel.flatten())
|
||||
// res = torch.nn.functional.conv_transpose2d(
|
||||
// input,
|
||||
// kernel,
|
||||
// stride=stride,
|
||||
// padding=padding,
|
||||
// dilation=dilation,
|
||||
// output_padding=outpadding,
|
||||
// )
|
||||
// res.retain_grad()
|
||||
// print(res.shape)
|
||||
// loss = (res**2).sum()
|
||||
// print(loss)
|
||||
// loss.backward()
|
||||
// print(input.grad.shape)
|
||||
// print("input grad", torch.round(input.grad, decimals=1))
|
||||
// print(kernel.grad.shape)
|
||||
// print("kernel grad", torch.round(kernel.grad.flatten(), decimals=1))
|
||||
|
||||
let padding = 4;
|
||||
let outpadding = 2;
|
||||
let dilation = 3;
|
||||
let stride = 3;
|
||||
|
||||
let t = Var::from_slice(
|
||||
&[
|
||||
0.4056_f32, -0.8689, -0.0773, -1.5630, -2.8012, -1.5059, 0.3972, 1.0852, 0.4997,
|
||||
3.0616, 1.6541, 0.0964, -0.8338, -1.6523, -0.8323, -0.1699, 0.0823, 0.3526, 0.6843,
|
||||
0.2395, 1.2279, -0.9287, -1.7030, 0.1370, 0.6047, 0.3770, -0.6266, 0.3529, 2.2013,
|
||||
-0.6836, 0.2477, 1.3127, -0.2260, 0.2622, -1.2974, -0.8140, -0.8404, -0.3490, 0.0130,
|
||||
1.3123, 1.7569, -0.3956, -1.8255, 0.1727, -0.3538, 2.6941, 1.0529, 0.4219, -0.2071,
|
||||
1.1586, 0.4717, 0.3865, -0.5690, -0.5010, -0.1310, 0.7796, 0.6630, -0.2021, 2.6090,
|
||||
0.2049, 0.6466, -0.5042, -0.0603, -1.6538, -1.2429, 1.8357, 1.6052, -1.3844, 0.3323,
|
||||
-1.3712, 0.9634, -0.4799, -0.6451, -0.0840, -1.4247, 0.5512, -0.1747, -0.5509, -0.3742,
|
||||
0.3790, -0.4431, -0.4720, -0.7890, 0.2620, 0.5411, -1.1715, -2.4997, 2.3249, -0.8912,
|
||||
-0.4733, -0.5701, -2.8888, -1.4112, -0.5471, -0.9234, -1.1660, 0.4189, -0.7465,
|
||||
-0.6473, 0.1402, 0.7875, 0.5377, -0.6779, -0.8088, -0.4864, -0.2312, 0.9279, 0.1264,
|
||||
1.5480, 0.8265, -0.1025, 0.5138, -0.2512, 0.1576, 1.2705, 0.3641, -0.9325, 0.6451,
|
||||
-0.8537, 0.2378, 0.1794, 0.2752, -0.3687, -1.1149, -0.1410, -0.5829, -0.0892, 1.4258,
|
||||
-2.2789, 0.5270, 0.1825, 1.7007, -0.5263, -0.2954, 0.4440, 0.5537, 0.3492, 0.6186,
|
||||
1.6475, 0.2219,
|
||||
],
|
||||
(1, 4, 7, 5),
|
||||
dev,
|
||||
)?;
|
||||
|
||||
#[rustfmt::skip]
|
||||
let w = Var::from_slice(
|
||||
&[
|
||||
-1.1744_f32, 0.3266, 2.5893, 1.0142, 0.1763, 0.7752, 0.6604, 0.2029, -0.2145, 0.7234,
|
||||
-0.3441, -1.5400, -0.6333, 0.6613, 0.2083, 0.6230, -1.7002, 0.3393, 0.4049, 1.0762,
|
||||
0.2723, 1.4181, 0.0029, -0.2122, 1.7668, 1.4168, 0.3320, -0.2719, 0.7932, -0.7204,
|
||||
0.4447, 0.1211, 0.5908, 1.0089, -0.1646, 1.8033, -0.6286, 0.2016, -0.3370, 1.2555,
|
||||
0.8009, -0.6488, -0.4652, -1.5685, 1.5860, 0.5583, 0.4623, 0.6026, 0.8828, 2.4990,
|
||||
0.6811, -0.3369, 1.3320, 1.7669, -1.1067, 1.2958, -0.9415, -0.9655, -0.4462, 0.7181,
|
||||
0.5181, -1.1658, -1.8467, -0.7763, 1.2769, 0.8651, 0.9890, 1.5092, 0.7207, -0.8481,
|
||||
0.7417, 0.3375, -1.2685, 1.4572, 1.0915, 0.1093, -0.8550, -0.5831, -0.6309, -0.2509,
|
||||
0.5220, -0.0914, 0.7900, 0.1096, 0.3258, 0.2723, -1.0942, -0.3393, -0.1653, 0.5732,
|
||||
-0.8014, 1.8194, -1.9023, 0.2127, 1.8636, -0.8979, 0.1927, -0.2778, 0.3105, 0.0071,
|
||||
-1.1823, 0.2476, -0.7178, -1.3821, 1.0769, -0.4376, -0.9967, -0.1227, 1.6197, -1.0604,
|
||||
0.1372, 0.8141, -0.6163, 0.7304, -0.8285, 2.0636, -0.7176, 0.2495, -0.2581, -0.4478,
|
||||
],
|
||||
(4, 2, 3, 5),
|
||||
dev,
|
||||
)?;
|
||||
let res = t.conv_transpose2d(&w, padding, outpadding, stride, dilation)?;
|
||||
let loss = res.sqr()?.sum_all()?;
|
||||
assert_eq!(test_utils::to_vec0_round(&loss, 0)?, 2904.0);
|
||||
let grads = loss.backward()?;
|
||||
|
||||
let grad_t = grads.get(&t).unwrap();
|
||||
let grad_w = grads.get(&w).unwrap();
|
||||
assert_eq!(grad_t.dims(), [1, 4, 7, 5]);
|
||||
assert_eq!(grad_w.dims(), [4, 2, 3, 5]);
|
||||
|
||||
assert_eq!(
|
||||
test_utils::to_vec1_round(&grad_w.flatten_all()?, 1)?,
|
||||
[
|
||||
// torch gets 89.1
|
||||
-89.0, -135.3, 136.7, 102.0, -53.4, 117.9, 118.6, -43.9, -218.0, -58.5, -114.3, -150.0,
|
||||
-15.6, 172.1, 66.3, -64.3, -27.9, -19.8, 31.7, 62.1, 5.5, 92.6, 28.2, -29.6, 55.9,
|
||||
52.7, -72.7, -119.8, 53.8, -25.5, 128.8, 19.3, 68.0, 190.9, -64.1, -86.2, -111.2,
|
||||
106.6, -67.7, 37.8, 115.9, 50.4, -77.7, -54.9, 22.3, -4.6, 89.8, 61.7, 122.4, 192.6,
|
||||
-27.8, -104.6, 57.0, 166.4, 27.1, 6.1, 18.7, -93.2, 31.5, 168.2, -3.7, -99.5, -55.5,
|
||||
-10.8, 17.5, 20.8, 16.9, 43.8, 42.0, -89.2, 18.8, -9.6, -84.1, 212.6, 19.7, -50.0,
|
||||
-52.0, -40.0, -166.6, -73.2, -10.8, -73.3, 31.5, -23.4, -79.3, -27.0, -84.4, -42.9,
|
||||
-20.3, 51.8, -16.7, 76.3, -120.5, -65.8, 96.5, -10.7, -45.9, -88.1, 65.4, -7.0, -1.5,
|
||||
92.8, -25.1, -114.2, -5.8, -14.8, -51.2, -20.7, 54.2, -79.8, 47.7, -29.2, -8.8, 53.5,
|
||||
-28.4, 85.0, -18.3, 107.0, 28.3, -71.8
|
||||
]
|
||||
);
|
||||
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&grad_t.i(0)?, 1)?,
|
||||
[
|
||||
[
|
||||
[32.3, -41.6, -24.0, 14.1, 17.6],
|
||||
[-11.8, 72.5, 87.6, 46.4, 61.5],
|
||||
[115.0, 108.5, -48.6, -63.4, -50.0],
|
||||
[51.3, 5.4, 31.3, 91.1, -30.9],
|
||||
[52.7, 92.8, -68.0, -47.0, 83.0],
|
||||
// pytorch gets -107.1
|
||||
[-10.2, -107.0, -5.4, 213.1, -31.4],
|
||||
[-2.4, 65.1, 9.2, -146.2, -24.2]
|
||||
],
|
||||
[
|
||||
[-72.6, -63.9, -61.9, 45.3, 33.0],
|
||||
[79.3, -0.5, -26.2, 78.2, 42.7],
|
||||
[90.9, 141.6, 40.1, -62.7, 37.0],
|
||||
[32.8, 198.2, -0.8, -31.1, 27.3],
|
||||
// torch gets 48.0
|
||||
[34.5, 34.9, -47.9, 127.6, -12.3],
|
||||
[-61.4, -3.2, -2.9, -10.9, -16.6],
|
||||
[74.6, 60.1, -68.9, 34.5, -50.4]
|
||||
],
|
||||
[
|
||||
[37.5, -56.9, -43.6, -13.5, -9.9],
|
||||
[40.0, 97.3, 28.6, 14.2, -30.1],
|
||||
[-22.3, -126.3, -68.8, -8.2, 26.1],
|
||||
[-32.9, 37.3, 108.5, -54.8, 29.6],
|
||||
[34.9, -176.9, -125.0, -28.3, -13.9],
|
||||
[-54.9, 142.6, 62.1, -80.4, -65.6],
|
||||
[7.4, -91.1, -67.6, 35.0, 39.7]
|
||||
],
|
||||
[
|
||||
[-57.2, -40.9, -10.1, 32.6, 29.4],
|
||||
[18.7, -18.0, 29.5, -1.2, 59.2],
|
||||
[-14.0, -74.4, 19.8, -117.0, 58.2],
|
||||
[-21.8, 163.5, -71.1, -99.0, 80.9],
|
||||
[-58.9, -10.9, 93.8, -139.6, 98.0],
|
||||
// torch gets 54.5
|
||||
[-54.4, 135.3, 6.0, -79.1, 134.6],
|
||||
[27.5, -76.0, 43.4, -2.8, -7.8]
|
||||
]
|
||||
]
|
||||
);
|
||||
|
||||
// Test the same, but then with the following properties, t & w are unmodified.
|
||||
let padding = 1;
|
||||
let outpadding = 1;
|
||||
let dilation = 1;
|
||||
let stride = 2;
|
||||
|
||||
let res = t.conv_transpose2d(&w, padding, outpadding, stride, dilation)?;
|
||||
let loss = res.sqr()?.sum_all()?;
|
||||
assert_eq!(test_utils::to_vec0_round(&loss, 0)?, 3627.0); // torch gives 3626.8560
|
||||
|
||||
let grads = loss.backward()?;
|
||||
|
||||
let grad_t = grads.get(&t).unwrap();
|
||||
let grad_w = grads.get(&w).unwrap();
|
||||
assert_eq!(grad_t.dims(), [1, 4, 7, 5]);
|
||||
assert_eq!(grad_w.dims(), [4, 2, 3, 5]);
|
||||
|
||||
#[rustfmt::skip]
|
||||
assert_eq!(
|
||||
test_utils::to_vec3_round(&grad_t.i(0)?, 1)?,
|
||||
[
|
||||
[
|
||||
[ 13.2, -40.7, -9.7, -47.3, -82.7],
|
||||
[ -98.2, 9.7, 57.7, -6.2, 180.7],
|
||||
[ 100.2, 24.1, 3.7, -100.5, -48.1],
|
||||
[ -0.3, 13.5, -2.9, 80.0, -49.8],
|
||||
[ 47.2, -25.6, -74.4, 61.2, -18.4],
|
||||
[ 4.6, -69.5, 27.9, 66.5, -88.1],
|
||||
// 4th column on next row; torch is 4.2
|
||||
[ -12.0, 79.2, -40.0, 4.1, -97.1],
|
||||
],
|
||||
[
|
||||
[ -42.2, -36.5, -51.1, 7.5, 32.3],
|
||||
[ 74.1, -44.6, -68.8, 19.5, 7.7],
|
||||
[ 137.1, 54.2, 153.8, -58.0, 45.5],
|
||||
[ 24.4, -56.8, 9.7, -41.0, -14.5],
|
||||
[ -3.7, 72.6, 8.3, 134.8, 40.5],
|
||||
[ 43.2, -56.9, -47.5, -89.4, -95.4],
|
||||
[ 68.2, 108.1, -80.0, 57.0, -121.1]
|
||||
],
|
||||
[
|
||||
[ 31.1, -11.4, -34.8, 33.1, -44.2],
|
||||
[ 29.4, -31.6, -40.2, 13.7, 13.1],
|
||||
[ -0.8, -83.8, -7.8, -17.3, 78.2],
|
||||
[ 12.0, -118.7, 137.5, -76.7, 50.8],
|
||||
[ -28.7, -114.2, -3.7, -96.3, -13.8],
|
||||
[ -31.8, 28.5, -14.3, 4.6, 13.4],
|
||||
[ 28.0, -0.2, -38.9, -29.7, -59.0]
|
||||
],
|
||||
[
|
||||
[ -16.8, 38.5, 15.5, 26.6, 48.9],
|
||||
[ 14.5, 49.6, -24.8, 65.6, 61.7],
|
||||
[ 22.1, -64.7, -4.3, -51.0, 36.3],
|
||||
[ 31.0, -88.9, 47.1, -123.5, -3.8],
|
||||
[ -14.8, -39.8, 128.2, -110.3, 42.6],
|
||||
// 1st column on next row; torch is -7.2
|
||||
[ -7.1, 95.3, -21.3, -58.7, -13.9],
|
||||
[ 26.9, 21.3, 16.1, 70.3, 32.1]
|
||||
]
|
||||
]
|
||||
);
|
||||
|
||||
#[rustfmt::skip]
|
||||
assert_eq!(
|
||||
test_utils::to_vec1_round(&grad_w.flatten_all()?, 1)?,
|
||||
[
|
||||
// 2nd value; torch gets -3.2, 3rd value; torch gets 221.8
|
||||
-2.460e+01, -3.100e+00, 2.219e+02, 7.400e+00, 5.620e+01,
|
||||
7.420e+01, 7.830e+01, 8.900e+00, 1.050e+01, 2.810e+01,
|
||||
5.100e+00, -1.046e+02, -1.572e+02, 8.710e+01, -9.840e+01,
|
||||
-4.230e+01, -1.898e+02, 1.860e+01, -3.570e+01, 9.810e+01,
|
||||
4.680e+01, 1.182e+02, 4.020e+01, -1.900e+00, 1.508e+02,
|
||||
1.094e+02, 1.018e+02, -4.620e+01, 1.591e+02, -2.320e+01,
|
||||
// 5th value; torch gets 7.1
|
||||
-8.450e+01, -4.600e+00, 6.330e+01, 1.123e+02, -7.000e+00,
|
||||
1.101e+02, -6.620e+01, 2.090e+01, -5.120e+01, 8.990e+01,
|
||||
9.050e+01, -6.990e+01, 6.800e+01, -9.250e+01, 1.380e+02,
|
||||
4.720e+01, 4.710e+01, 6.210e+01, 8.870e+01, 2.098e+02,
|
||||
3.870e+01, -1.390e+01, 6.270e+01, 1.484e+02, -9.920e+01,
|
||||
-4.200e+01, -1.505e+02, -1.480e+01, -2.620e+01, 8.220e+01,
|
||||
-3.350e+01, -2.260e+01, -1.198e+02, -5.080e+01, 1.259e+02,
|
||||
5.600e+01, 9.270e+01, 1.209e+02, 6.590e+01, -8.330e+01,
|
||||
7.000e+00, -2.600e+01, -1.133e+02, 3.870e+01, 4.020e+01,
|
||||
-6.300e+00, -8.710e+01, -5.150e+01, -8.510e+01, 2.000e-01,
|
||||
3.640e+01, -6.100e+00, 6.590e+01, -2.700e+00, 6.550e+01,
|
||||
// 4th value; torch gets 3.8
|
||||
5.300e+00, -6.760e+01, -4.270e+01, -3.900e+00, 2.880e+01,
|
||||
5.260e+01, 6.170e+01, -1.203e+02, -1.610e+01, 7.740e+01,
|
||||
-1.008e+02, -1.070e+01, -9.900e+00, 3.300e+00, -2.620e+01,
|
||||
-4.440e+01, 2.580e+01, -6.920e+01, -4.220e+01, 1.108e+02,
|
||||
1.240e+01, -3.440e+01, -2.800e+00, 7.880e+01, -6.690e+01,
|
||||
1.480e+01, 2.310e+01, -4.260e+01, -1.500e+00, -4.760e+01,
|
||||
5.350e+01, -2.260e+01, 8.000e-01, -3.840e+01, -2.500e+00
|
||||
]
|
||||
);
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
|
@ -112,3 +112,34 @@ fn custom_op1_with_backward() -> Result<()> {
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
impl candle_core::InplaceOp1 for Elu {
|
||||
fn name(&self) -> &'static str {
|
||||
"elu"
|
||||
}
|
||||
|
||||
fn cpu_fwd(&self, s: &mut CpuStorage, _l: &Layout) -> Result<()> {
|
||||
let alpha = self.alpha;
|
||||
match s {
|
||||
CpuStorage::BF16(s) => s.iter_mut().for_each(|v| *v = fwd(*v, alpha)),
|
||||
CpuStorage::F16(s) => s.iter_mut().for_each(|v| *v = fwd(*v, alpha)),
|
||||
CpuStorage::F32(s) => s.iter_mut().for_each(|v| *v = fwd(*v, alpha)),
|
||||
CpuStorage::F64(s) => s.iter_mut().for_each(|v| *v = fwd(*v, alpha)),
|
||||
_ => candle_core::bail!("unsupported dtype for inplace elu"),
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn inplace_op1() -> Result<()> {
|
||||
let cpu = &Device::Cpu;
|
||||
let t = Tensor::arange(0u32, 12u32, cpu)?.to_dtype(DType::F32)?;
|
||||
let t = (t - 5.)?;
|
||||
t.inplace_op1(&Elu { alpha: 1. })?;
|
||||
assert_eq!(
|
||||
to_vec1_round(&t, 4)?,
|
||||
&[-0.9933, -0.9817, -0.9502, -0.8647, -0.6321, 0.0, 1.0, 2.0, 3.0, 4.0, 5.0, 6.0]
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
|
@ -88,7 +88,7 @@ fn strided_blocks() -> Result<()> {
|
||||
}
|
||||
};
|
||||
let tensor = Tensor::arange(0u32, 24u32, &Cpu)?.reshape((2, 3, 4))?;
|
||||
let tensor = tensor.i((.., 1))?;
|
||||
let tensor = tensor.i((.., 1))?.contiguous()?;
|
||||
match tensor.strided_blocks() {
|
||||
candle::StridedBlocks::SingleBlock { start_offset, len } => {
|
||||
assert_eq!(start_offset, 0);
|
||||
@ -100,6 +100,20 @@ fn strided_blocks() -> Result<()> {
|
||||
}
|
||||
};
|
||||
let tensor = Tensor::arange(0u32, 24u32, &Cpu)?.reshape((2, 3, 4))?;
|
||||
let tensor = tensor.i((.., 1))?;
|
||||
match tensor.strided_blocks() {
|
||||
candle::StridedBlocks::SingleBlock { .. } => {
|
||||
panic!("unexpected block structure")
|
||||
}
|
||||
candle::StridedBlocks::MultipleBlocks {
|
||||
block_len,
|
||||
block_start_index,
|
||||
} => {
|
||||
assert_eq!(block_len, 4);
|
||||
assert_eq!(block_start_index.collect::<Vec<_>>(), &[4, 16])
|
||||
}
|
||||
};
|
||||
let tensor = Tensor::arange(0u32, 24u32, &Cpu)?.reshape((2, 3, 4))?;
|
||||
match tensor.t()?.strided_blocks() {
|
||||
candle::StridedBlocks::SingleBlock { .. } => {
|
||||
panic!("unexpected block structure")
|
||||
|
126
candle-core/tests/matmul_tests.rs
Normal file
126
candle-core/tests/matmul_tests.rs
Normal file
@ -0,0 +1,126 @@
|
||||
use candle_core::{test_device, DType, Device, IndexOp, Result, Tensor};
|
||||
|
||||
fn matmul(device: &Device) -> Result<()> {
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let a = Tensor::from_slice(&data, (2, 2), device)?;
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let b = Tensor::from_slice(&data, (2, 2), device)?;
|
||||
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[[7.0f32, 10.0], [15.0, 22.0]]);
|
||||
|
||||
let data = vec![1.0f32, 2.0];
|
||||
let a = Tensor::from_slice(&data, (2, 1), device)?;
|
||||
let data = vec![3.0f32, 4.0];
|
||||
let b = Tensor::from_slice(&data, (1, 2), device)?;
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[&[3.0, 4.0], &[6.0, 8.0]]);
|
||||
|
||||
let data: Vec<_> = (0..6).map(|i| i as f32).collect();
|
||||
let a = Tensor::from_slice(&data, (2, 3), device)?;
|
||||
let data: Vec<_> = (0..6).map(|i| (i + 2) as f32).collect();
|
||||
let b = Tensor::from_slice(&data, (3, 2), device)?;
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[&[16., 19.], &[52., 64.]]);
|
||||
|
||||
let data: Vec<_> = (0..12).map(|i| i as f32).collect();
|
||||
let a = Tensor::from_slice(&data, (2, 2, 3), device)?;
|
||||
let data: Vec<_> = (0..12).map(|i| (i + 2) as f32).collect();
|
||||
let b = Tensor::from_slice(&data, (2, 3, 2), device)?;
|
||||
let expected = [[[16., 19.], [52., 64.]], [[214., 235.], [304., 334.]]];
|
||||
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec3::<f32>()?, &expected);
|
||||
|
||||
// Also perform the matmul on contiguous transposed versions.
|
||||
let a_tt = a.t()?.contiguous()?.t()?;
|
||||
assert!(!a_tt.is_contiguous());
|
||||
assert_eq!(a.dims(), a_tt.dims());
|
||||
assert_eq!(a_tt.stride(), &[6, 1, 2]);
|
||||
|
||||
let b_tt = b.t()?.contiguous()?.t()?;
|
||||
assert!(!b_tt.is_contiguous());
|
||||
assert_eq!(b.dims(), b_tt.dims());
|
||||
assert_eq!(b_tt.stride(), &[6, 1, 3]);
|
||||
|
||||
assert_eq!(a_tt.matmul(&b)?.to_vec3::<f32>()?, &expected);
|
||||
assert_eq!(a.matmul(&b_tt)?.to_vec3::<f32>()?, &expected);
|
||||
assert_eq!(a_tt.matmul(&b_tt)?.to_vec3::<f32>()?, &expected);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn matmul_bf16(device: &Device) -> Result<()> {
|
||||
if !device.supports_bf16() {
|
||||
return Ok(());
|
||||
}
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let a = Tensor::from_slice(&data, (2, 2), device)?.to_dtype(DType::BF16)?;
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let b = Tensor::from_slice(&data, (2, 2), device)?.to_dtype(DType::BF16)?;
|
||||
|
||||
let c = a.matmul(&b)?.to_dtype(DType::F32)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[[7.0f32, 10.0], [15.0, 22.0]]);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn broadcast_matmul(device: &Device) -> Result<()> {
|
||||
let lhs = Tensor::randn(0f32, 1f32, (3, 1, 4, 5), device)?;
|
||||
let rhs = Tensor::randn(0f32, 1f32, (6, 5, 2), device)?;
|
||||
let out = lhs.broadcast_matmul(&rhs)?;
|
||||
assert_eq!(out.dims(), &[3, 6, 4, 2]);
|
||||
for idx1 in 0..3 {
|
||||
for idx2 in 0..6 {
|
||||
let out = out.i((idx1, idx2))?;
|
||||
let lhs = lhs.i((idx1, 0))?;
|
||||
let rhs = rhs.i(idx2)?;
|
||||
let out2 = lhs.matmul(&rhs);
|
||||
let sum_diff2 = (out - out2)?.sqr()?.sum_all()?;
|
||||
// With cuda, we see errors of up to ~1e-12.
|
||||
assert!(sum_diff2.to_vec0::<f32>()? < 1e-6)
|
||||
}
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
|
||||
// https://github.com/huggingface/candle/issues/1948
|
||||
fn squeeze_mm(device: &Device) -> Result<()> {
|
||||
let seq_len = 8_usize;
|
||||
let a = Tensor::zeros((1, seq_len, 16), DType::F32, device)?;
|
||||
let x = a.i((.., seq_len - 1, ..))?;
|
||||
let w = Tensor::zeros((32, 16), DType::F32, device)?.t()?;
|
||||
let x = x.matmul(&w)?;
|
||||
assert_eq!(x.dims(), &[1, 32]);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
// https://github.com/huggingface/candle/issues/1992
|
||||
fn mm_layout(device: &Device) -> Result<()> {
|
||||
let a = Tensor::arange(0f32, 16f32, device)?.reshape((1, 1, 4, 4))?;
|
||||
let b = Tensor::arange(0f32, 8f32, device)?.reshape((1, 1, 4, 2))?;
|
||||
let mm1 = a.matmul(&b)?;
|
||||
// Forces the layout to be:
|
||||
// shape: [1, 1, 4, 2], stride: [8, 2, 2, 1], start_offset: 0
|
||||
// This is still a contiguous matrix but matmul checks are only the two last dimensions have
|
||||
// non 1 sizes but matmul check may be reluctant to handle it.
|
||||
let b = b.transpose(1, 2)?.force_contiguous()?.transpose(1, 2)?;
|
||||
let mm2 = a.matmul(&b)?;
|
||||
let diff = (mm1 - mm2)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
test_device!(matmul, matmul_cpu, matmul_gpu, matmul_metal);
|
||||
test_device!(
|
||||
matmul_bf16,
|
||||
matmul_bf16_cpu,
|
||||
matmul_bf16_gpu,
|
||||
matmul_bf16_metal
|
||||
);
|
||||
test_device!(
|
||||
broadcast_matmul,
|
||||
broadcast_matmul_cpu,
|
||||
broadcast_matmul_gpu,
|
||||
broadcast_matmul_metal
|
||||
);
|
||||
test_device!(squeeze_mm, squeeze_mm_cpu, squeeze_mm_gpu, squeeze_mm_metal);
|
||||
test_device!(mm_layout, mm_layout_cpu, mm_layout_gpu, mm_layout_metal);
|
@ -2,9 +2,6 @@ use candle_core::{test_device, test_utils, Device, IndexOp, Result, Tensor};
|
||||
|
||||
// https://github.com/huggingface/candle/issues/364
|
||||
fn avg_pool2d(dev: &Device) -> Result<()> {
|
||||
if dev.is_metal() {
|
||||
return Ok(());
|
||||
}
|
||||
let data: Vec<f32> = vec![
|
||||
1., 1., 1., 1., 0., 0., 1., 1., 1., 1., 1., 1., 1., 1., 1., 1.,
|
||||
];
|
||||
@ -22,9 +19,6 @@ fn avg_pool2d(dev: &Device) -> Result<()> {
|
||||
}
|
||||
|
||||
fn max_pool2d(dev: &Device) -> Result<()> {
|
||||
if dev.is_metal() {
|
||||
return Ok(());
|
||||
}
|
||||
let data: Vec<f32> = vec![
|
||||
1., 2., 1., 3., 0., 0., 1., 1., 1., 1., 1., 1., 5., 1., 1., 1.,
|
||||
];
|
||||
|
@ -3,7 +3,7 @@ use candle_core::{
|
||||
quantized::{self, GgmlDType},
|
||||
test_device,
|
||||
test_utils::to_vec2_round,
|
||||
Device, Module, Result, Tensor,
|
||||
DType, Device, IndexOp, Module, Result, Tensor,
|
||||
};
|
||||
use quantized::{k_quants, GgmlType};
|
||||
use rand::prelude::*;
|
||||
@ -47,18 +47,14 @@ fn test_matmul(
|
||||
}
|
||||
|
||||
fn quantized_matmul(device: &Device) -> Result<()> {
|
||||
// TODO Enable this later when we enable cuda.
|
||||
if device.is_cuda() {
|
||||
return Ok(());
|
||||
}
|
||||
let (m, k, n) = (3, 64, 4);
|
||||
let lhs = (0..(m * k)).map(|v| v as f32).collect::<Vec<_>>();
|
||||
let tensor_lhs = Tensor::from_slice(&lhs, (m, k), device)?;
|
||||
let lhs_s = (0..(m * k)).map(|v| v as f32).collect::<Vec<_>>();
|
||||
let lhs = Tensor::from_slice(&lhs_s, (m, k), device)?;
|
||||
let mut dst = vec![42.; 3 * 4];
|
||||
let mut rhs_t = vec![k_quants::BlockQ4_0::zeros(); 8];
|
||||
let rhs = (0..(k * n)).map(|v| v as f32).collect::<Vec<_>>();
|
||||
k_quants::BlockQ4_0::from_float(&rhs, &mut rhs_t)?;
|
||||
k_quants::matmul((m, k, n), &lhs, &rhs_t, &mut dst)?;
|
||||
k_quants::matmul((m, k, n), &lhs_s, &rhs_t, &mut dst)?;
|
||||
assert_eq!(
|
||||
dst.iter().map(|x| x.round()).collect::<Vec<_>>(),
|
||||
&[
|
||||
@ -67,7 +63,7 @@ fn quantized_matmul(device: &Device) -> Result<()> {
|
||||
]
|
||||
);
|
||||
let tensor_rhs = Tensor::from_slice(&rhs, (n, k), device)?.t()?;
|
||||
let mm = tensor_lhs.matmul(&tensor_rhs)?;
|
||||
let mm = lhs.matmul(&tensor_rhs)?;
|
||||
assert_eq!(
|
||||
mm.to_vec2::<f32>()?,
|
||||
&[
|
||||
@ -79,7 +75,7 @@ fn quantized_matmul(device: &Device) -> Result<()> {
|
||||
|
||||
let qtensor = quantized::QTensor::quantize(&tensor_rhs.t()?, GgmlDType::Q4_0)?;
|
||||
let matmul = quantized::QMatMul::from_qtensor(qtensor)?;
|
||||
let res = matmul.forward(&tensor_lhs)?;
|
||||
let res = matmul.forward(&lhs)?;
|
||||
match device {
|
||||
Device::Metal(_) => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
@ -89,7 +85,15 @@ fn quantized_matmul(device: &Device) -> Result<()> {
|
||||
[341970.0, 994574.0, 1656181.0, 2302182.0]
|
||||
]
|
||||
),
|
||||
_ => assert_eq!(
|
||||
Device::Cuda(_) => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
&[
|
||||
[84866.0, 214045.0, 344676.0, 473707.0],
|
||||
[213425.0, 604313.0, 1000431.0, 1387960.0],
|
||||
[342030.0, 994630.0, 1656248.0, 2302250.0]
|
||||
]
|
||||
),
|
||||
Device::Cpu => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
&[
|
||||
[85120.0, 214562.0, 345455.0, 474748.0],
|
||||
@ -98,22 +102,16 @@ fn quantized_matmul(device: &Device) -> Result<()> {
|
||||
]
|
||||
),
|
||||
}
|
||||
|
||||
test_matmul(device, (1, 3, 4, 256), GgmlDType::Q4_0)?;
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
// TODO Enable this later when we enable cuda.
|
||||
if device.is_cuda() {
|
||||
return Ok(());
|
||||
}
|
||||
let (m, k, n) = (3, 64, 4);
|
||||
let lhs = (0..(m * k))
|
||||
let lhs_s = (0..(m * k))
|
||||
.map(|v| v as f32 - (m * k) as f32 / 2.0)
|
||||
.collect::<Vec<_>>();
|
||||
let tensor_lhs = Tensor::from_slice(&lhs, (m, k), device)?;
|
||||
let lhs = Tensor::from_slice(&lhs_s, (m, k), device)?;
|
||||
let mut dst = vec![42.; 3 * 4];
|
||||
let mut rhs_t = vec![k_quants::BlockQ4_0::zeros(); 8];
|
||||
let rhs = (0..k * n)
|
||||
@ -121,7 +119,7 @@ fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
.collect::<Vec<_>>();
|
||||
let tensor_rhs = Tensor::from_slice(&rhs, (n, k), device)?.t()?;
|
||||
k_quants::BlockQ4_0::from_float(&rhs, &mut rhs_t)?;
|
||||
k_quants::matmul((m, k, n), &lhs, &rhs_t, &mut dst)?;
|
||||
k_quants::matmul((m, k, n), &lhs_s, &rhs_t, &mut dst)?;
|
||||
assert_eq!(
|
||||
dst.iter().map(|x| x.round()).collect::<Vec<_>>(),
|
||||
&[
|
||||
@ -129,7 +127,7 @@ fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
-196472.0, 63012.0, 324585.0, 587902.0
|
||||
]
|
||||
);
|
||||
let mm = tensor_lhs.matmul(&tensor_rhs)?;
|
||||
let mm = lhs.matmul(&tensor_rhs)?;
|
||||
assert_eq!(
|
||||
to_vec2_round(&mm, 0)?,
|
||||
&[
|
||||
@ -141,7 +139,7 @@ fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
|
||||
let qtensor = quantized::QTensor::quantize(&tensor_rhs.t()?, GgmlDType::Q4_0)?;
|
||||
let matmul = quantized::QMatMul::from_qtensor(qtensor)?;
|
||||
let res = matmul.forward(&tensor_lhs)?;
|
||||
let res = matmul.forward(&lhs)?;
|
||||
match device {
|
||||
Device::Metal(_) => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
@ -151,7 +149,15 @@ fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
[-196102.0, 63022.0, 324233.0, 587191.0]
|
||||
]
|
||||
),
|
||||
_ => assert_eq!(
|
||||
Device::Cuda(_) => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
&[
|
||||
[243740.0, -19762.0, -285476.0, -550498.0],
|
||||
[23774.0, 21645.0, 19395.0, 18364.0],
|
||||
[-196045.0, 63030.0, 324120.0, 587079.0]
|
||||
]
|
||||
),
|
||||
Device::Cpu => assert_eq!(
|
||||
to_vec2_round(&res, 0)?,
|
||||
&[
|
||||
[243524.0, -19596.0, -285051.0, -549815.0],
|
||||
@ -160,22 +166,58 @@ fn quantized_matmul_neg(device: &Device) -> Result<()> {
|
||||
]
|
||||
),
|
||||
}
|
||||
|
||||
let lhs2 = Tensor::stack(&[&lhs, &lhs], 0)?;
|
||||
let res2 = matmul.forward(&lhs2)?;
|
||||
let res2 = res2.i(1)?;
|
||||
let diff = (res - res2)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
if device.is_cuda() {
|
||||
assert!(diff < 0.1);
|
||||
} else {
|
||||
assert_eq!(diff, 0.);
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
|
||||
test_device!(
|
||||
quantized_matmul,
|
||||
quantized_matmul_cpu,
|
||||
quantized_matmul_cuda,
|
||||
quantized_matmul_metal
|
||||
);
|
||||
test_device!(
|
||||
quantized_matmul_neg,
|
||||
quantized_matmul_neg_cpu,
|
||||
quantized_matmul_neg_cuda,
|
||||
quantized_matmul_neg_metal
|
||||
);
|
||||
fn qmm_batch(dev: &Device) -> Result<()> {
|
||||
let (lhs, rhs, _mm) = get_random_tensors(2, 256, 6, dev)?;
|
||||
let rhs = quantized::QTensor::quantize(&rhs, GgmlDType::Q2K)?;
|
||||
let rhs = quantized::QMatMul::from_qtensor(rhs)?;
|
||||
let mm = rhs.forward(&lhs)?;
|
||||
assert_eq!(mm.shape().dims(), [2, 6]);
|
||||
let lhs2 = Tensor::cat(&[&lhs, &lhs], 0)?;
|
||||
let mm2 = rhs.forward(&lhs2)?;
|
||||
assert_eq!(mm2.shape().dims(), [4, 6]);
|
||||
let diff2 = (mm2.i(2..)? - &mm)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff2, 0.0);
|
||||
let lhs3 = Tensor::cat(&[&lhs2, &lhs], 0)?;
|
||||
let mm3 = rhs.forward(&lhs3)?;
|
||||
assert_eq!(mm3.shape().dims(), [6, 6]);
|
||||
let diff3 = (mm3.i(2..4)? - &mm)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff3, 0.0);
|
||||
let diff3 = (mm3.i(4..)? - &mm)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff3, 0.0);
|
||||
let lhs4 = Tensor::cat(&[&lhs3, &lhs3], 0)?;
|
||||
let mm4 = rhs.forward(&lhs4)?;
|
||||
assert_eq!(mm4.shape().dims(), [12, 6]);
|
||||
let diff4 = (mm4.i(..6)? - &mm3)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
if dev.is_cuda() {
|
||||
// We use a different kernel for sizes from 1 to 8 on cuda which explains
|
||||
// the difference here.
|
||||
assert!(0. < diff4 && diff4 < 1e-4)
|
||||
} else {
|
||||
assert_eq!(diff4, 0.0)
|
||||
};
|
||||
let diff4 = (mm4.i(6..)? - &mm4.i(..6)?)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff4, 0.0);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
test_device!(quantized_matmul, qmm_cpu, qmm_cuda, qmm_metal);
|
||||
test_device!(quantized_matmul_neg, qmm_n_cpu, qmm_n_cuda, qmm_n_metal);
|
||||
test_device!(qmm_batch, qmm_b_cpu, qmm_b_cuda, qmm_b_metal);
|
||||
|
||||
fn quantize_q4_0(device: &Device) -> Result<()> {
|
||||
let src = (0..32 * 4).map(|v| v as f32).collect::<Vec<_>>();
|
||||
@ -183,6 +225,13 @@ fn quantize_q4_0(device: &Device) -> Result<()> {
|
||||
let src = Tensor::from_slice(&src, (32 * 4,), device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, GgmlDType::Q4_0)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
assert_eq!(
|
||||
dst.to_vec1::<f32>()?,
|
||||
&[
|
||||
@ -209,6 +258,13 @@ fn quantize_q4_1(device: &Device) -> Result<()> {
|
||||
let src = Tensor::from_slice(&src, (32 * 4,), device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, GgmlDType::Q4_1)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
assert_eq!(
|
||||
round_vector(&dst.to_vec1::<f32>()?),
|
||||
&[
|
||||
@ -235,6 +291,13 @@ fn quantize_q5_0(device: &Device) -> Result<()> {
|
||||
let src = Tensor::from_slice(&src, (32 * 4,), device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, GgmlDType::Q5_0)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
assert_eq!(
|
||||
round_vector(&dst.to_vec1::<f32>()?),
|
||||
&[
|
||||
@ -261,6 +324,13 @@ fn quantize_q5_1(device: &Device) -> Result<()> {
|
||||
let src = Tensor::from_slice(&src, (32 * 4,), device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, GgmlDType::Q5_1)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
assert_eq!(
|
||||
round_vector(&dst.to_vec1::<f32>()?),
|
||||
&[
|
||||
@ -345,6 +415,13 @@ fn ggml_quantization_error_test(dtype: GgmlDType, device: &Device, max_error: f3
|
||||
let src = Tensor::from_slice(&src, (GGML_TEST_SIZE,), device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
let error = calculate_rmse(&src.to_vec1::<f32>()?, &dst.to_vec1::<f32>()?);
|
||||
if error > max_error {
|
||||
bail!(
|
||||
@ -362,6 +439,13 @@ fn quantize_q2k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -381,6 +465,13 @@ fn quantize_q2k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
@ -395,6 +486,13 @@ fn quantize_q3k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -414,6 +512,13 @@ fn quantize_q3k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
@ -428,6 +533,13 @@ fn quantize_q4k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -447,6 +559,13 @@ fn quantize_q4k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
@ -461,6 +580,13 @@ fn quantize_q5k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -480,6 +606,13 @@ fn quantize_q5k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
@ -494,6 +627,13 @@ fn quantize_q6k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -513,6 +653,13 @@ fn quantize_q6k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
@ -527,6 +674,13 @@ fn quantize_q8k(device: &Device) -> Result<()> {
|
||||
let src = get_test_vector2(0.5, 1024, device)?;
|
||||
let quant = quantized::QTensor::quantize(&src, dtype)?;
|
||||
let dst = quant.dequantize(device)?;
|
||||
let dst_f16 = quant.dequantize_f16(device)?;
|
||||
let diff = (dst.to_dtype(DType::F16)? - dst_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src = src.to_vec1::<f32>()?;
|
||||
let dst = dst.to_vec1::<f32>()?;
|
||||
@ -546,6 +700,13 @@ fn quantize_q8k(device: &Device) -> Result<()> {
|
||||
let src_big = get_test_vector2(128.0, 1024, device)?;
|
||||
let quant_big = quantized::QTensor::quantize(&src_big, dtype)?;
|
||||
let dst_big = quant_big.dequantize(device)?;
|
||||
let dst_big_f16 = quant_big.dequantize_f16(device)?;
|
||||
let diff = (dst_big.to_dtype(DType::F16)? - dst_big_f16)?
|
||||
.to_dtype(DType::F32)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
|
||||
let src_big = src_big.to_vec1::<f32>()?;
|
||||
let dst_big = dst_big.to_vec1::<f32>()?;
|
||||
|
@ -1,5 +1,31 @@
|
||||
use candle_core::{DType, Result, Tensor};
|
||||
|
||||
struct TmpFile(std::path::PathBuf);
|
||||
|
||||
impl TmpFile {
|
||||
fn create(base: &str) -> TmpFile {
|
||||
let filename = std::env::temp_dir().join(format!(
|
||||
"candle-{}-{}-{:?}",
|
||||
base,
|
||||
std::process::id(),
|
||||
std::thread::current().id(),
|
||||
));
|
||||
TmpFile(filename)
|
||||
}
|
||||
}
|
||||
|
||||
impl std::convert::AsRef<std::path::Path> for TmpFile {
|
||||
fn as_ref(&self) -> &std::path::Path {
|
||||
self.0.as_path()
|
||||
}
|
||||
}
|
||||
|
||||
impl Drop for TmpFile {
|
||||
fn drop(&mut self) {
|
||||
std::fs::remove_file(&self.0).unwrap()
|
||||
}
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn npy() -> Result<()> {
|
||||
let npy = Tensor::read_npy("tests/test.npy")?;
|
||||
@ -22,3 +48,24 @@ fn npz() -> Result<()> {
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn safetensors() -> Result<()> {
|
||||
use candle_core::safetensors::Load;
|
||||
|
||||
let tmp_file = TmpFile::create("st");
|
||||
let t = Tensor::arange(0f32, 24f32, &candle_core::Device::Cpu)?;
|
||||
t.save_safetensors("t", &tmp_file)?;
|
||||
// Load from file.
|
||||
let st = candle_core::safetensors::load(&tmp_file, &candle_core::Device::Cpu)?;
|
||||
let t2 = st.get("t").unwrap();
|
||||
let diff = (&t - t2)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0f32);
|
||||
// Load from bytes.
|
||||
let bytes = std::fs::read(tmp_file)?;
|
||||
let st = candle_core::safetensors::SliceSafetensors::new(&bytes)?;
|
||||
let t2 = st.get("t").unwrap().load(&candle_core::Device::Cpu);
|
||||
let diff = (&t - t2)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0f32);
|
||||
Ok(())
|
||||
}
|
||||
|
@ -96,6 +96,40 @@ fn clamp(device: &Device) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn asort(device: &Device) -> Result<()> {
|
||||
let data = &[[3f32, 1., 4., 1.1, 5.], [2.1, 1., 7., 8., 2.]];
|
||||
let tensor = Tensor::new(data, device)?;
|
||||
let indexes = tensor.arg_sort_last_dim(true)?;
|
||||
assert_eq!(
|
||||
indexes.to_vec2::<u32>()?,
|
||||
[[1, 3, 0, 2, 4], [1, 4, 0, 2, 3]],
|
||||
);
|
||||
let indexes = tensor.arg_sort_last_dim(false)?;
|
||||
assert_eq!(
|
||||
indexes.to_vec2::<u32>()?,
|
||||
[[4, 2, 0, 3, 1], [3, 2, 0, 4, 1]],
|
||||
);
|
||||
let (sorted, indexes) = tensor.sort_last_dim(true)?;
|
||||
assert_eq!(
|
||||
indexes.to_vec2::<u32>()?,
|
||||
[[1, 3, 0, 2, 4], [1, 4, 0, 2, 3]],
|
||||
);
|
||||
assert_eq!(
|
||||
sorted.to_vec2::<f32>()?,
|
||||
[[1.0, 1.1, 3.0, 4.0, 5.0], [1.0, 2.0, 2.1, 7.0, 8.0]]
|
||||
);
|
||||
let (sorted, indexes) = tensor.sort_last_dim(false)?;
|
||||
assert_eq!(
|
||||
indexes.to_vec2::<u32>()?,
|
||||
[[4, 2, 0, 3, 1], [3, 2, 0, 4, 1]],
|
||||
);
|
||||
assert_eq!(
|
||||
sorted.to_vec2::<f32>()?,
|
||||
[[5.0, 4.0, 3.0, 1.1, 1.0], [8.0, 7.0, 2.1, 2.0, 1.0]]
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn unary_op(device: &Device) -> Result<()> {
|
||||
let data = &[[-3f32, 1., 4., -0.1, 0.5], [2.7, -1.8, -0.28, 1.8, 2.8]];
|
||||
let tensor = Tensor::new(data, device)?;
|
||||
@ -106,6 +140,9 @@ fn unary_op(device: &Device) -> Result<()> {
|
||||
[2.6911, -0.0647, -0.1091, 1.7353, 2.7933]
|
||||
]
|
||||
);
|
||||
let t_f16 = tensor.to_dtype(DType::F16)?.gelu()?.to_dtype(DType::F32)?;
|
||||
let max_diff = (tensor.gelu()? - t_f16)?.flatten_all()?.max(0)?;
|
||||
assert!(max_diff.to_vec0::<f32>()? < 5e-3);
|
||||
assert_eq!(
|
||||
test_utils::to_vec2_round(&tensor.gelu_erf()?, 4)?,
|
||||
[
|
||||
@ -148,6 +185,27 @@ fn unary_op(device: &Device) -> Result<()> {
|
||||
test_utils::to_vec1_round(&tensor.round_to(-2)?, 4)?,
|
||||
[3000.0, 300.]
|
||||
);
|
||||
let tensor = Tensor::new(
|
||||
&[-1.01f32, -0.9, -0.1, 0.0, -0.0, 0.1, 0.9, 1.0, 1.1],
|
||||
device,
|
||||
)?;
|
||||
assert_eq!(
|
||||
tensor.sign()?.to_vec1::<f32>()?,
|
||||
[-1., -1., -1., 0., 0., 1., 1., 1., 1.]
|
||||
);
|
||||
let tensor = Tensor::new(&[-1.0f32, 0., -2., 3.], device)?;
|
||||
let y = tensor.elu(2.)?;
|
||||
assert_eq!(
|
||||
test_utils::to_vec1_round(&y, 4)?,
|
||||
[-1.2642, 0.0000, -1.7293, 3.0000]
|
||||
);
|
||||
// This test failed on metal prior to the following PR:
|
||||
// https://github.com/huggingface/candle/pull/2490
|
||||
let y = tensor.reshape((2, 2))?.t()?.elu(2.)?.flatten_all()?;
|
||||
assert_eq!(
|
||||
test_utils::to_vec1_round(&y, 4)?,
|
||||
[-1.2642, -1.7293, 0.0000, 3.0000]
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
@ -620,6 +678,30 @@ fn broadcast(device: &Device) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn slice_set(device: &Device) -> Result<()> {
|
||||
let (b, h, max_t, d) = (2, 4, 7, 3);
|
||||
let cache = Tensor::zeros((b, h, max_t, d), DType::F32, device)?;
|
||||
let tensor = Tensor::randn(0f32, 1f32, (b, h, 4, d), device)?;
|
||||
cache.slice_set(&tensor, 2, 0)?;
|
||||
let cache_t = cache.narrow(2, 0, 4)?;
|
||||
let diff = (cache_t - &tensor)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
cache.slice_set(&tensor, 2, 1)?;
|
||||
let cache_t = cache.narrow(2, 1, 4)?;
|
||||
let diff = (cache_t - &tensor)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
let ones = Tensor::ones((b, h, 1, d), DType::F32, device)?;
|
||||
cache.slice_set(&ones, 2, 6)?;
|
||||
let diff = cache.narrow(2, 5, 1)?.abs()?.sum_all()?.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
let diff = (cache.narrow(2, 6, 1)? - 1.)?
|
||||
.abs()?
|
||||
.sum_all()?
|
||||
.to_vec0::<f32>()?;
|
||||
assert_eq!(diff, 0.);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn cat(device: &Device) -> Result<()> {
|
||||
// 1D
|
||||
let t1 = Tensor::new(&[3f32, 1., 4.], device)?;
|
||||
@ -707,6 +789,8 @@ fn embeddings(device: &Device) -> Result<()> {
|
||||
assert_eq!(hs.to_vec2::<f32>()?, &[[0.0, 1.0], [4.0, 5.0], [2.0, 3.0]]);
|
||||
let hs = t.index_select(&ids, 0)?;
|
||||
assert_eq!(hs.to_vec2::<f32>()?, &[[0.0, 1.0], [4.0, 5.0], [2.0, 3.0]]);
|
||||
let hs = t.index_select(&ids.to_dtype(DType::I64)?, 0)?;
|
||||
assert_eq!(hs.to_vec2::<f32>()?, &[[0.0, 1.0], [4.0, 5.0], [2.0, 3.0]]);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
@ -734,44 +818,47 @@ fn index_select(device: &Device) -> Result<()> {
|
||||
[9.0, 10.0, 11.0]
|
||||
]
|
||||
);
|
||||
let hs = t.index_select(&ids, 1)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[
|
||||
[0.0, 2.0, 1.0],
|
||||
[3.0, 5.0, 4.0],
|
||||
[6.0, 8.0, 7.0],
|
||||
[9.0, 11.0, 10.0]
|
||||
]
|
||||
);
|
||||
let hs = t.index_select(&ids, 0)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[[0.0, 1.0, 2.0], [6.0, 7.0, 8.0], [3.0, 4.0, 5.0]]
|
||||
);
|
||||
// Prior to https://github.com/huggingface/candle/pull/1022
|
||||
// There would be a bug where the last values in the result tensor would be set to 0.
|
||||
let ids = Tensor::new(&[0u32, 2u32, 1u32, 0u32, 2u32, 1u32], device)?;
|
||||
let hs = t.index_select(&ids, 0)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[
|
||||
[0.0, 1.0, 2.0],
|
||||
[6.0, 7.0, 8.0],
|
||||
[3.0, 4.0, 5.0],
|
||||
[0.0, 1.0, 2.0],
|
||||
[6.0, 7.0, 8.0],
|
||||
[3.0, 4.0, 5.0],
|
||||
]
|
||||
);
|
||||
for dtype in [DType::U8, DType::U32, DType::I64] {
|
||||
let ids = ids.to_dtype(dtype)?;
|
||||
let hs = t.index_select(&ids, 1)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[
|
||||
[0.0, 2.0, 1.0],
|
||||
[3.0, 5.0, 4.0],
|
||||
[6.0, 8.0, 7.0],
|
||||
[9.0, 11.0, 10.0]
|
||||
]
|
||||
);
|
||||
let hs = t.index_select(&ids, 0)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[[0.0, 1.0, 2.0], [6.0, 7.0, 8.0], [3.0, 4.0, 5.0]]
|
||||
);
|
||||
// Prior to https://github.com/huggingface/candle/pull/1022
|
||||
// There would be a bug where the last values in the result tensor would be set to 0.
|
||||
let ids = Tensor::new(&[0u32, 2u32, 1u32, 0u32, 2u32, 1u32], device)?;
|
||||
let hs = t.index_select(&ids, 0)?;
|
||||
assert_eq!(
|
||||
hs.to_vec2::<f32>()?,
|
||||
&[
|
||||
[0.0, 1.0, 2.0],
|
||||
[6.0, 7.0, 8.0],
|
||||
[3.0, 4.0, 5.0],
|
||||
[0.0, 1.0, 2.0],
|
||||
[6.0, 7.0, 8.0],
|
||||
[3.0, 4.0, 5.0],
|
||||
]
|
||||
);
|
||||
|
||||
// Test when selecting dim > 0 with ids size different from elem count of
|
||||
// target dim in source/input.
|
||||
let ids = Tensor::new(&[1u32, 0u32, 1u32], device)?;
|
||||
let t = Tensor::arange(1f32, 5f32, device)?.reshape((2, 2))?;
|
||||
assert_eq!(t.to_vec2::<f32>()?, &[[1.0, 2.0], [3.0, 4.0]]);
|
||||
let hs = t.index_select(&ids, 1)?;
|
||||
assert_eq!(hs.to_vec2::<f32>()?, &[[2.0, 1.0, 2.0], [4.0, 3.0, 4.0]]);
|
||||
// Test when selecting dim > 0 with ids size different from elem count of
|
||||
// target dim in source/input.
|
||||
let ids = Tensor::new(&[1u32, 0u32, 1u32], device)?;
|
||||
let t = Tensor::arange(1f32, 5f32, device)?.reshape((2, 2))?;
|
||||
assert_eq!(t.to_vec2::<f32>()?, &[[1.0, 2.0], [3.0, 4.0]]);
|
||||
let hs = t.index_select(&ids, 1)?;
|
||||
assert_eq!(hs.to_vec2::<f32>()?, &[[2.0, 1.0, 2.0], [4.0, 3.0, 4.0]]);
|
||||
}
|
||||
|
||||
Ok(())
|
||||
}
|
||||
@ -933,74 +1020,6 @@ fn gather(device: &Device) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn matmul(device: &Device) -> Result<()> {
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let a = Tensor::from_slice(&data, (2, 2), device)?;
|
||||
let data = vec![1.0f32, 2.0, 3.0, 4.0];
|
||||
let b = Tensor::from_slice(&data, (2, 2), device)?;
|
||||
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[[7.0f32, 10.0], [15.0, 22.0]]);
|
||||
|
||||
let data = vec![1.0f32, 2.0];
|
||||
let a = Tensor::from_slice(&data, (2, 1), device)?;
|
||||
let data = vec![3.0f32, 4.0];
|
||||
let b = Tensor::from_slice(&data, (1, 2), device)?;
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[&[3.0, 4.0], &[6.0, 8.0]]);
|
||||
|
||||
let data: Vec<_> = (0..6).map(|i| i as f32).collect();
|
||||
let a = Tensor::from_slice(&data, (2, 3), device)?;
|
||||
let data: Vec<_> = (0..6).map(|i| (i + 2) as f32).collect();
|
||||
let b = Tensor::from_slice(&data, (3, 2), device)?;
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec2::<f32>()?, &[&[16., 19.], &[52., 64.]]);
|
||||
|
||||
let data: Vec<_> = (0..12).map(|i| i as f32).collect();
|
||||
let a = Tensor::from_slice(&data, (2, 2, 3), device)?;
|
||||
let data: Vec<_> = (0..12).map(|i| (i + 2) as f32).collect();
|
||||
let b = Tensor::from_slice(&data, (2, 3, 2), device)?;
|
||||
let expected = [[[16., 19.], [52., 64.]], [[214., 235.], [304., 334.]]];
|
||||
|
||||
let c = a.matmul(&b)?;
|
||||
assert_eq!(c.to_vec3::<f32>()?, &expected);
|
||||
|
||||
// Also perform the matmul on contiguous transposed versions.
|
||||
let a_tt = a.t()?.contiguous()?.t()?;
|
||||
assert!(!a_tt.is_contiguous());
|
||||
assert_eq!(a.dims(), a_tt.dims());
|
||||
assert_eq!(a_tt.stride(), &[6, 1, 2]);
|
||||
|
||||
let b_tt = b.t()?.contiguous()?.t()?;
|
||||
assert!(!b_tt.is_contiguous());
|
||||
assert_eq!(b.dims(), b_tt.dims());
|
||||
assert_eq!(b_tt.stride(), &[6, 1, 3]);
|
||||
|
||||
assert_eq!(a_tt.matmul(&b)?.to_vec3::<f32>()?, &expected);
|
||||
assert_eq!(a.matmul(&b_tt)?.to_vec3::<f32>()?, &expected);
|
||||
assert_eq!(a_tt.matmul(&b_tt)?.to_vec3::<f32>()?, &expected);
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn broadcast_matmul(device: &Device) -> Result<()> {
|
||||
let lhs = Tensor::randn(0f32, 1f32, (3, 1, 4, 5), device)?;
|
||||
let rhs = Tensor::randn(0f32, 1f32, (6, 5, 2), device)?;
|
||||
let out = lhs.broadcast_matmul(&rhs)?;
|
||||
assert_eq!(out.dims(), &[3, 6, 4, 2]);
|
||||
for idx1 in 0..3 {
|
||||
for idx2 in 0..6 {
|
||||
let out = out.i((idx1, idx2))?;
|
||||
let lhs = lhs.i((idx1, 0))?;
|
||||
let rhs = rhs.i(idx2)?;
|
||||
let out2 = lhs.matmul(&rhs);
|
||||
let sum_diff2 = (out - out2)?.sqr()?.sum_all()?;
|
||||
// With cuda, we see errors of up to ~1e-12.
|
||||
assert!(sum_diff2.to_vec0::<f32>()? < 1e-6)
|
||||
}
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn broadcasting(device: &Device) -> Result<()> {
|
||||
let t1 = Tensor::arange(0f32, 24f32, device)?.reshape((4, 2, 3))?;
|
||||
let t2 = Tensor::new(&[100f32, 200f32], device)?;
|
||||
@ -1135,6 +1154,27 @@ fn randn(device: &Device) -> Result<()> {
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn zero_dim(device: &Device) -> Result<()> {
|
||||
let t = Tensor::zeros((4, 0, 1), DType::F32, device)?;
|
||||
assert_eq!(t.dims3()?, (4, 0, 1));
|
||||
let t2 = Tensor::zeros((4, 3, 1), DType::F32, device)?;
|
||||
let t_cat = Tensor::cat(&[&t, &t2], 1)?;
|
||||
assert_eq!(t_cat.dims3()?, (4, 3, 1));
|
||||
let t_cat = Tensor::cat(&[&t, &t], 1)?;
|
||||
assert_eq!(t_cat.dims3()?, (4, 0, 1));
|
||||
let t_unary = t.sqrt()?;
|
||||
assert_eq!(t_unary.dims3()?, (4, 0, 1));
|
||||
let t_plus = (&t + 1.)?;
|
||||
assert_eq!(t_plus.dims3()?, (4, 0, 1));
|
||||
let t_mm = t2.matmul(&t.t()?)?;
|
||||
assert_eq!(t_mm.dims3()?, (4, 3, 0));
|
||||
let t_mm = t.matmul(&t2.t()?)?;
|
||||
assert_eq!(t_mm.dims3()?, (4, 0, 3));
|
||||
let t_mm = t.t()?.matmul(&t)?;
|
||||
assert_eq!(t_mm.dims3()?, (4, 1, 1));
|
||||
Ok(())
|
||||
}
|
||||
|
||||
test_device!(zeros, zeros_cpu, zeros_gpu, zeros_metal);
|
||||
test_device!(ones, ones_cpu, ones_gpu, ones_metal);
|
||||
test_device!(full, full_cpu, full_gpu, full_metal);
|
||||
@ -1143,6 +1183,7 @@ test_device!(add_mul, add_mul_cpu, add_mul_gpu, add_mul_metal);
|
||||
test_device!(tensor_2d, tensor_2d_cpu, tensor_2d_gpu, tensor_2d_metal);
|
||||
test_device!(narrow, narrow_cpu, narrow_gpu, narrow_metal);
|
||||
test_device!(broadcast, broadcast_cpu, broadcast_gpu, broadcast_metal);
|
||||
test_device!(slice_set, ss_cpu, ss_gpu, ss_metal);
|
||||
test_device!(cat, cat_cpu, cat_gpu, cat_metal);
|
||||
test_device!(sum, sum_cpu, sum_gpu, sum_metal);
|
||||
test_device!(min, min_cpu, min_gpu, min_metal);
|
||||
@ -1154,13 +1195,6 @@ test_device!(unary_op, unary_op_cpu, unary_op_gpu, unary_op_metal);
|
||||
test_device!(binary_op, binary_op_cpu, binary_op_gpu, binary_op_metal);
|
||||
test_device!(embeddings, embeddings_cpu, embeddings_gpu, embeddings_metal);
|
||||
test_device!(cmp, cmp_cpu, cmp_gpu, cmp_metal);
|
||||
test_device!(matmul, matmul_cpu, matmul_gpu, matmul_metal);
|
||||
test_device!(
|
||||
broadcast_matmul,
|
||||
broadcast_matmul_cpu,
|
||||
broadcast_matmul_gpu,
|
||||
broadcast_matmul_metal
|
||||
);
|
||||
test_device!(
|
||||
broadcasting,
|
||||
broadcasting_cpu,
|
||||
@ -1189,7 +1223,9 @@ test_device!(
|
||||
);
|
||||
test_device!(randn, randn_cpu, randn_gpu, randn_metal);
|
||||
test_device!(clamp, clamp_cpu, clamp_gpu, clamp_metal);
|
||||
test_device!(asort, asort_cpu, asort_gpu, asort_metal);
|
||||
test_device!(var, var_cpu, var_gpu, var_metal);
|
||||
test_device!(zero_dim, zero_dim_cpu, zero_dim_gpu, zero_dim_metal);
|
||||
|
||||
// There was originally a bug on the CPU implementation for randn
|
||||
// https://github.com/huggingface/candle/issues/381
|
||||
@ -1303,11 +1339,29 @@ fn assert_close(a: &Tensor, b: &Tensor, epsilon: f64) -> Result<()> {
|
||||
|
||||
#[test]
|
||||
fn log_sum_exp() -> Result<()> {
|
||||
let input = Tensor::new(&[[1f64, 2., 3.], [4., 5., 6.]], &Device::Cpu)?;
|
||||
let input = Tensor::new(
|
||||
&[
|
||||
[[1f64, 2., 3.], [4., 5., 6.]],
|
||||
[[-1000.0, -999.0, -1001.0], [1000.0, 999.0, 1001.0]],
|
||||
],
|
||||
&Device::Cpu,
|
||||
)?;
|
||||
|
||||
let output = input.log_sum_exp(D::Minus1)?;
|
||||
// The expectations obtained from pytorch.
|
||||
let expected = Tensor::new(&[3.4076, 6.4076], &Device::Cpu)?;
|
||||
assert_close(&output, &expected, 0.00001)?;
|
||||
let expected = Tensor::new(&[[3.4076, 6.4076], [-998.5924, 1001.4076]], &Device::Cpu)?;
|
||||
assert_eq!(output.dims(), expected.dims());
|
||||
assert_close(&output.flatten_all()?, &expected.flatten_all()?, 0.00001)?;
|
||||
|
||||
assert_eq!(
|
||||
input.log_sum_exp((0, 1))?.to_vec1::<f64>()?,
|
||||
[1000.0, 999.0, 1001.0]
|
||||
);
|
||||
assert_eq!(
|
||||
input.log_sum_exp(())?.to_vec3::<f64>()?,
|
||||
input.to_vec3::<f64>()?
|
||||
);
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
@ -1317,8 +1371,8 @@ fn pow() -> Result<()> {
|
||||
let rhs = (&lhs - 2.)?;
|
||||
let res = lhs.pow(&rhs)?;
|
||||
assert_eq!(
|
||||
test_utils::to_vec2_round(&res, 4)?,
|
||||
[[1.0, 1.0, 3.0], [16.0, 125.0, 1296.0001]]
|
||||
test_utils::to_vec2_round(&res, 3)?,
|
||||
[[1.0, 1.0, 3.0], [16.0, 125.0, 1296.0]]
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
|
@ -89,7 +89,7 @@ fn load_parquet(parquet: SerializedFileReader<std::fs::File>) -> Result<(Tensor,
|
||||
|
||||
pub fn load() -> Result<crate::vision::Dataset> {
|
||||
let api = Api::new().map_err(|e| Error::Msg(format!("Api error: {e}")))?;
|
||||
let dataset_id = "mnist".to_string();
|
||||
let dataset_id = "ylecun/mnist".to_string();
|
||||
let repo = Repo::with_revision(
|
||||
dataset_id,
|
||||
RepoType::Dataset,
|
||||
|
@ -25,14 +25,17 @@ hf-hub = { workspace = true, features = ["tokio"] }
|
||||
image = { workspace = true }
|
||||
intel-mkl-src = { workspace = true, optional = true }
|
||||
num-traits = { workspace = true }
|
||||
pyo3 = { version = "0.20.0", features = ["auto-initialize"], optional = true }
|
||||
palette = { version = "0.7.6", optional = true }
|
||||
enterpolation = { version = "0.2.1", optional = true}
|
||||
pyo3 = { version = "0.21.0", features = ["auto-initialize"], optional = true }
|
||||
rayon = { workspace = true }
|
||||
rubato = { version = "0.15.0", optional = true }
|
||||
safetensors = { workspace = true }
|
||||
serde = { workspace = true }
|
||||
serde_json = { workspace = true }
|
||||
symphonia = { version = "0.5.3", features = ["all"], optional = true }
|
||||
tokenizers = { workspace = true, features = ["onig"] }
|
||||
cpal= { version = "0.15.2", optional = true }
|
||||
cpal = { version = "0.15.2", optional = true }
|
||||
|
||||
[dev-dependencies]
|
||||
anyhow = { workspace = true }
|
||||
@ -41,7 +44,7 @@ clap = { workspace = true }
|
||||
imageproc = { workspace = true }
|
||||
memmap2 = { workspace = true }
|
||||
rand = { workspace = true }
|
||||
rusttype = { workspace = true }
|
||||
ab_glyph = { workspace = true }
|
||||
tracing = { workspace = true }
|
||||
tracing-chrome = { workspace = true }
|
||||
tracing-subscriber = { workspace = true }
|
||||
@ -63,6 +66,9 @@ nccl = ["cuda", "cudarc/nccl", "dep:half"]
|
||||
onnx = ["candle-onnx"]
|
||||
metal = ["candle/metal", "candle-nn/metal"]
|
||||
microphone = ["cpal"]
|
||||
encodec = ["cpal", "symphonia", "rubato"]
|
||||
mimi = ["cpal", "symphonia", "rubato"]
|
||||
depth_anything_v2 = ["palette", "enterpolation"]
|
||||
|
||||
[[example]]
|
||||
name = "llama_multiprocess"
|
||||
@ -96,8 +102,18 @@ required-features = ["candle-datasets"]
|
||||
name = "llama2-c"
|
||||
required-features = ["candle-datasets"]
|
||||
|
||||
[[example]]
|
||||
name = "mimi"
|
||||
required-features = ["mimi"]
|
||||
|
||||
[[example]]
|
||||
name = "encodec"
|
||||
required-features = ["symphonia"]
|
||||
required-features = ["encodec"]
|
||||
|
||||
[[example]]
|
||||
name = "depth_anything_v2"
|
||||
required-features = ["depth_anything_v2"]
|
||||
|
||||
[[example]]
|
||||
name = "silero-vad"
|
||||
required-features = ["onnx"]
|
||||
|
20
candle-examples/examples/based/README.md
Normal file
20
candle-examples/examples/based/README.md
Normal file
@ -0,0 +1,20 @@
|
||||
# candle-based
|
||||
|
||||
Experimental, not instruction-tuned small LLM from the Hazy Research group, combining local and linear attention layers.
|
||||
|
||||
[Blogpost](https://hazyresearch.stanford.edu/blog/2024-03-03-based)
|
||||
|
||||
[Simple linear attention language models balance the recall-throughput tradeoff](https://arxiv.org/abs/2402.18668)
|
||||
|
||||
## Running an example
|
||||
|
||||
```bash
|
||||
$ cargo run --example based --release -- --prompt "Flying monkeys are" --which 1b-50b --sample-len 100
|
||||
|
||||
Flying monkeys are a common sight in the wild, but they are also a threat to humans.
|
||||
|
||||
The new study, published today (July 31) in the journal Science Advances, shows that the monkeys are using their brains to solve the problem of how to get around the problem.
|
||||
|
||||
"We found that the monkeys were using a strategy called 'cognitive mapping' - they would use their brains to map out the route ahead," says lead author Dr. David J. Smith from the University of California
|
||||
|
||||
```
|
275
candle-examples/examples/based/main.rs
Normal file
275
candle-examples/examples/based/main.rs
Normal file
@ -0,0 +1,275 @@
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use anyhow::{Error as E, Result};
|
||||
use clap::{Parser, ValueEnum};
|
||||
|
||||
use candle_transformers::models::based::Model;
|
||||
|
||||
use candle::{DType, Device, Tensor};
|
||||
use candle_examples::token_output_stream::TokenOutputStream;
|
||||
use candle_nn::VarBuilder;
|
||||
use candle_transformers::generation::LogitsProcessor;
|
||||
use hf_hub::{api::sync::Api, Repo, RepoType};
|
||||
use tokenizers::Tokenizer;
|
||||
|
||||
struct TextGeneration {
|
||||
model: Model,
|
||||
device: Device,
|
||||
tokenizer: TokenOutputStream,
|
||||
logits_processor: LogitsProcessor,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
}
|
||||
|
||||
impl TextGeneration {
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn new(
|
||||
model: Model,
|
||||
tokenizer: Tokenizer,
|
||||
seed: u64,
|
||||
temp: Option<f64>,
|
||||
top_p: Option<f64>,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
device: &Device,
|
||||
) -> Self {
|
||||
let logits_processor = LogitsProcessor::new(seed, temp, top_p);
|
||||
Self {
|
||||
model,
|
||||
tokenizer: TokenOutputStream::new(tokenizer),
|
||||
logits_processor,
|
||||
repeat_penalty,
|
||||
repeat_last_n,
|
||||
device: device.clone(),
|
||||
}
|
||||
}
|
||||
|
||||
fn run(&mut self, prompt: &str, sample_len: usize) -> Result<()> {
|
||||
use std::io::Write;
|
||||
self.tokenizer.clear();
|
||||
let mut tokens = self
|
||||
.tokenizer
|
||||
.tokenizer()
|
||||
.encode(prompt, true)
|
||||
.map_err(E::msg)?
|
||||
.get_ids()
|
||||
.to_vec();
|
||||
for &t in tokens.iter() {
|
||||
if let Some(t) = self.tokenizer.next_token(t)? {
|
||||
print!("{t}")
|
||||
}
|
||||
}
|
||||
std::io::stdout().flush()?;
|
||||
|
||||
let mut generated_tokens = 0usize;
|
||||
let eos_token = match self.tokenizer.get_token("<|endoftext|>") {
|
||||
Some(token) => token,
|
||||
None => anyhow::bail!("cannot find the <|endoftext|> token"),
|
||||
};
|
||||
let start_gen = std::time::Instant::now();
|
||||
for index in 0..sample_len {
|
||||
let context_size = if index > 0 { 1 } else { tokens.len() };
|
||||
let start_pos = tokens.len().saturating_sub(context_size);
|
||||
let ctxt = &tokens[start_pos..];
|
||||
let input = Tensor::new(ctxt, &self.device)?.unsqueeze(0)?;
|
||||
let logits = self.model.forward(&input, start_pos)?;
|
||||
let logits = logits.squeeze(0)?.squeeze(0)?.to_dtype(DType::F32)?;
|
||||
let logits = if self.repeat_penalty == 1. {
|
||||
logits
|
||||
} else {
|
||||
let start_at = tokens.len().saturating_sub(self.repeat_last_n);
|
||||
candle_transformers::utils::apply_repeat_penalty(
|
||||
&logits,
|
||||
self.repeat_penalty,
|
||||
&tokens[start_at..],
|
||||
)?
|
||||
};
|
||||
|
||||
let next_token = self.logits_processor.sample(&logits)?;
|
||||
tokens.push(next_token);
|
||||
generated_tokens += 1;
|
||||
if next_token == eos_token {
|
||||
break;
|
||||
}
|
||||
if let Some(t) = self.tokenizer.next_token(next_token)? {
|
||||
print!("{t}");
|
||||
std::io::stdout().flush()?;
|
||||
}
|
||||
}
|
||||
let dt = start_gen.elapsed();
|
||||
if let Some(rest) = self.tokenizer.decode_rest().map_err(E::msg)? {
|
||||
print!("{rest}");
|
||||
}
|
||||
std::io::stdout().flush()?;
|
||||
println!(
|
||||
"\n{generated_tokens} tokens generated ({:.2} token/s)",
|
||||
generated_tokens as f64 / dt.as_secs_f64(),
|
||||
);
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
#[derive(Clone, Debug, Copy, PartialEq, Eq, ValueEnum)]
|
||||
enum Which {
|
||||
#[value(name = "360m")]
|
||||
W360m,
|
||||
#[value(name = "1b")]
|
||||
W1b,
|
||||
#[value(name = "1b-50b")]
|
||||
W1b50b,
|
||||
}
|
||||
|
||||
#[derive(Parser, Debug)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// Enable tracing (generates a trace-timestamp.json file).
|
||||
#[arg(long)]
|
||||
tracing: bool,
|
||||
|
||||
#[arg(long)]
|
||||
prompt: String,
|
||||
|
||||
/// The temperature used to generate samples.
|
||||
#[arg(long)]
|
||||
temperature: Option<f64>,
|
||||
|
||||
/// Nucleus sampling probability cutoff.
|
||||
#[arg(long)]
|
||||
top_p: Option<f64>,
|
||||
|
||||
/// The seed to use when generating random samples.
|
||||
#[arg(long, default_value_t = 299792458)]
|
||||
seed: u64,
|
||||
|
||||
/// The length of the sample to generate (in tokens).
|
||||
#[arg(long, short = 'n', default_value_t = 10000)]
|
||||
sample_len: usize,
|
||||
|
||||
#[arg(long)]
|
||||
model_id: Option<String>,
|
||||
|
||||
#[arg(long, default_value = "refs/pr/1")]
|
||||
revision: String,
|
||||
|
||||
#[arg(long)]
|
||||
config_file: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
tokenizer_file: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
weight_files: Option<String>,
|
||||
|
||||
/// Penalty to be applied for repeating tokens, 1. means no penalty.
|
||||
#[arg(long, default_value_t = 1.1)]
|
||||
repeat_penalty: f32,
|
||||
|
||||
/// The context size to consider for the repeat penalty.
|
||||
#[arg(long, default_value_t = 64)]
|
||||
repeat_last_n: usize,
|
||||
|
||||
#[arg(long, default_value = "360m")]
|
||||
which: Which,
|
||||
}
|
||||
|
||||
fn main() -> Result<()> {
|
||||
use tracing_chrome::ChromeLayerBuilder;
|
||||
use tracing_subscriber::prelude::*;
|
||||
|
||||
let args = Args::parse();
|
||||
let _guard = if args.tracing {
|
||||
let (chrome_layer, guard) = ChromeLayerBuilder::new().build();
|
||||
tracing_subscriber::registry().with(chrome_layer).init();
|
||||
Some(guard)
|
||||
} else {
|
||||
None
|
||||
};
|
||||
println!(
|
||||
"avx: {}, neon: {}, simd128: {}, f16c: {}",
|
||||
candle::utils::with_avx(),
|
||||
candle::utils::with_neon(),
|
||||
candle::utils::with_simd128(),
|
||||
candle::utils::with_f16c()
|
||||
);
|
||||
println!(
|
||||
"temp: {:.2} repeat-penalty: {:.2} repeat-last-n: {}",
|
||||
args.temperature.unwrap_or(0.),
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n
|
||||
);
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
let api = Api::new()?;
|
||||
let model_id = match args.model_id {
|
||||
Some(model_id) => model_id,
|
||||
None => match args.which {
|
||||
Which::W360m => "hazyresearch/based-360m".to_string(),
|
||||
Which::W1b => "hazyresearch/based-1b".to_string(),
|
||||
Which::W1b50b => "hazyresearch/based-1b-50b".to_string(),
|
||||
},
|
||||
};
|
||||
let repo = api.repo(Repo::with_revision(
|
||||
model_id,
|
||||
RepoType::Model,
|
||||
args.revision,
|
||||
));
|
||||
let config_file = match args.config_file {
|
||||
Some(file) => std::path::PathBuf::from(file),
|
||||
None => repo.get("config.json")?,
|
||||
};
|
||||
let filenames = match args.weight_files {
|
||||
Some(files) => files
|
||||
.split(',')
|
||||
.map(std::path::PathBuf::from)
|
||||
.collect::<Vec<_>>(),
|
||||
None => vec![repo.get("model.safetensors")?],
|
||||
};
|
||||
|
||||
let repo = api.model("openai-community/gpt2".to_string());
|
||||
let tokenizer_file = match args.tokenizer_file {
|
||||
Some(file) => std::path::PathBuf::from(file),
|
||||
None => repo.get("tokenizer.json")?,
|
||||
};
|
||||
|
||||
println!("retrieved the files in {:?}", start.elapsed());
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_file).map_err(E::msg)?;
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
let config = serde_json::from_reader(std::fs::File::open(config_file)?)?;
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
let dtype = if device.is_cuda() {
|
||||
DType::BF16
|
||||
} else {
|
||||
DType::F32
|
||||
};
|
||||
|
||||
let mut vb = unsafe { VarBuilder::from_mmaped_safetensors(&filenames, dtype, &device)? };
|
||||
if args.which == Which::W1b50b {
|
||||
vb = vb.pp("model");
|
||||
};
|
||||
|
||||
let model = Model::new(&config, vb)?;
|
||||
|
||||
println!("loaded the model in {:?}", start.elapsed());
|
||||
|
||||
let mut pipeline = TextGeneration::new(
|
||||
model,
|
||||
tokenizer,
|
||||
args.seed,
|
||||
args.temperature,
|
||||
args.top_p,
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n,
|
||||
&device,
|
||||
);
|
||||
pipeline.run(&args.prompt, args.sample_len)?;
|
||||
Ok(())
|
||||
}
|
20
candle-examples/examples/beit/README.md
Normal file
20
candle-examples/examples/beit/README.md
Normal file
@ -0,0 +1,20 @@
|
||||
# candle-beit
|
||||
|
||||
[Beit](https://arxiv.org/abs/2106.08254) is a computer vision model.
|
||||
In this example, it is used as an ImageNet classifier: the model returns the
|
||||
probability for the image to belong to each of the 1000 ImageNet categories.
|
||||
|
||||
## Running some example
|
||||
|
||||
```bash
|
||||
cargo run --example beit --release -- --image candle-examples/examples/yolo-v8/assets/bike.jpg
|
||||
|
||||
> mountain bike, all-terrain bike, off-roader: 56.16%
|
||||
> bicycle-built-for-two, tandem bicycle, tandem: 3.08%
|
||||
> maillot : 2.23%
|
||||
> alp : 0.88%
|
||||
> crash helmet : 0.85%
|
||||
|
||||
```
|
||||
|
||||

|
79
candle-examples/examples/beit/main.rs
Normal file
79
candle-examples/examples/beit/main.rs
Normal file
@ -0,0 +1,79 @@
|
||||
//! BEiT: BERT Pre-Training of Image Transformers
|
||||
//! https://github.com/microsoft/unilm/tree/master/beit
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, Device, IndexOp, Result, Tensor, D};
|
||||
use candle_nn::{Module, VarBuilder};
|
||||
use candle_transformers::models::beit;
|
||||
|
||||
/// Loads an image from disk using the image crate, this returns a tensor with shape
|
||||
/// (3, 384, 384). Beit special normalization is applied.
|
||||
pub fn load_image384_beit_norm<P: AsRef<std::path::Path>>(p: P) -> Result<Tensor> {
|
||||
let img = image::ImageReader::open(p)?
|
||||
.decode()
|
||||
.map_err(candle::Error::wrap)?
|
||||
.resize_to_fill(384, 384, image::imageops::FilterType::Triangle);
|
||||
let img = img.to_rgb8();
|
||||
let data = img.into_raw();
|
||||
let data = Tensor::from_vec(data, (384, 384, 3), &Device::Cpu)?.permute((2, 0, 1))?;
|
||||
let mean = Tensor::new(&[0.5f32, 0.5, 0.5], &Device::Cpu)?.reshape((3, 1, 1))?;
|
||||
let std = Tensor::new(&[0.5f32, 0.5, 0.5], &Device::Cpu)?.reshape((3, 1, 1))?;
|
||||
(data.to_dtype(candle::DType::F32)? / 255.)?
|
||||
.broadcast_sub(&mean)?
|
||||
.broadcast_div(&std)
|
||||
}
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
image: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let image = load_image384_beit_norm(args.image)?.to_device(&device)?;
|
||||
println!("loaded image {image:?}");
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model("vincent-espitalier/candle-beit".into());
|
||||
api.get("beit_base_patch16_384.in22k_ft_in22k_in1k.safetensors")?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], DType::F32, &device)? };
|
||||
let model = beit::vit_base(vb)?;
|
||||
println!("model built");
|
||||
let logits = model.forward(&image.unsqueeze(0)?)?;
|
||||
let prs = candle_nn::ops::softmax(&logits, D::Minus1)?
|
||||
.i(0)?
|
||||
.to_vec1::<f32>()?;
|
||||
let mut prs = prs.iter().enumerate().collect::<Vec<_>>();
|
||||
prs.sort_by(|(_, p1), (_, p2)| p2.total_cmp(p1));
|
||||
for &(category_idx, pr) in prs.iter().take(5) {
|
||||
println!(
|
||||
"{:24}: {:.2}%",
|
||||
candle_examples::imagenet::CLASSES[category_idx],
|
||||
100. * pr
|
||||
);
|
||||
}
|
||||
Ok(())
|
||||
}
|
@ -126,7 +126,7 @@ fn main() -> Result<()> {
|
||||
println!("Loaded and encoded {:?}", start.elapsed());
|
||||
for idx in 0..args.n {
|
||||
let start = std::time::Instant::now();
|
||||
let ys = model.forward(&token_ids, &token_type_ids)?;
|
||||
let ys = model.forward(&token_ids, &token_type_ids, None)?;
|
||||
if idx == 0 {
|
||||
println!("{ys}");
|
||||
}
|
||||
@ -163,11 +163,19 @@ fn main() -> Result<()> {
|
||||
Ok(Tensor::new(tokens.as_slice(), device)?)
|
||||
})
|
||||
.collect::<Result<Vec<_>>>()?;
|
||||
let attention_mask = tokens
|
||||
.iter()
|
||||
.map(|tokens| {
|
||||
let tokens = tokens.get_attention_mask().to_vec();
|
||||
Ok(Tensor::new(tokens.as_slice(), device)?)
|
||||
})
|
||||
.collect::<Result<Vec<_>>>()?;
|
||||
|
||||
let token_ids = Tensor::stack(&token_ids, 0)?;
|
||||
let attention_mask = Tensor::stack(&attention_mask, 0)?;
|
||||
let token_type_ids = token_ids.zeros_like()?;
|
||||
println!("running inference on batch {:?}", token_ids.shape());
|
||||
let embeddings = model.forward(&token_ids, &token_type_ids)?;
|
||||
let embeddings = model.forward(&token_ids, &token_type_ids, Some(&attention_mask))?;
|
||||
println!("generated embeddings {:?}", embeddings.shape());
|
||||
// Apply some avg-pooling by taking the mean embedding value for all tokens (including padding)
|
||||
let (_n_sentence, n_tokens, _hidden_size) = embeddings.dims3()?;
|
||||
|
@ -55,7 +55,7 @@ const SEP_TOKEN_ID: u32 = 102;
|
||||
/// Loads an image from disk using the image crate, this returns a tensor with shape
|
||||
/// (3, 384, 384). OpenAI normalization is applied.
|
||||
pub fn load_image<P: AsRef<std::path::Path>>(p: P) -> Result<Tensor> {
|
||||
let img = image::io::Reader::open(p)?
|
||||
let img = image::ImageReader::open(p)?
|
||||
.decode()
|
||||
.map_err(candle::Error::wrap)?
|
||||
.resize_to_fill(384, 384, image::imageops::FilterType::Triangle);
|
||||
|
46
candle-examples/examples/clip/README.md
Normal file
46
candle-examples/examples/clip/README.md
Normal file
@ -0,0 +1,46 @@
|
||||
# candle-clip
|
||||
|
||||
Contrastive Language-Image Pre-Training (CLIP) is an architecture trained on
|
||||
pairs of images with related texts.
|
||||
|
||||
https://github.com/openai/CLIP
|
||||
|
||||
https://github.com/huggingface/transformers/tree/f6fa0f0bf0796ac66f201f23bdb8585de1609add/src/transformers/models/clip
|
||||
|
||||
## Running on an example on cpu
|
||||
|
||||
```
|
||||
$ cargo run --example clip --release -- --images "candle-examples/examples/stable-diffusion/assets/stable-diffusion-xl.jpg","candle-examples/examples/yolo-v8/assets/bike.jpg" --cpu --sequences "a cycling race","a photo of two cats","a robot holding a candle"
|
||||
|
||||
|
||||
Results for image: candle-examples/examples/stable-diffusion/assets/stable-diffusion-xl.jpg
|
||||
|
||||
INFO clip: Probability: 0.0000% Text: a cycling race
|
||||
INFO clip: Probability: 0.0000% Text: a photo of two cats
|
||||
INFO clip: Probability: 100.0000% Text: a robot holding a candle
|
||||
|
||||
Results for image: candle-examples/examples/yolo-v8/assets/bike.jpg
|
||||
|
||||
INFO clip: Probability: 99.9999% Text: a cycling race
|
||||
INFO clip: Probability: 0.0001% Text: a photo of two cats
|
||||
INFO clip: Probability: 0.0000% Text: a robot holding a candle
|
||||
```
|
||||
|
||||
## Running on an example with metal feature (mac)
|
||||
|
||||
```
|
||||
$ cargo run --features metal --example clip --release -- --images "candle-examples/examples/stable-diffusion/assets/stable-diffusion-xl.jpg","candle-examples/examples/yolo-v8/assets/bike.jpg" --cpu --sequences "a cycling race","a photo of two cats","a robot holding a candle"
|
||||
|
||||
|
||||
Results for image: candle-examples/examples/stable-diffusion/assets/stable-diffusion-xl.jpg
|
||||
|
||||
INFO clip: Probability: 0.0000% Text: a cycling race
|
||||
INFO clip: Probability: 0.0000% Text: a photo of two cats
|
||||
INFO clip: Probability: 100.0000% Text: a robot holding a candle
|
||||
|
||||
Results for image: candle-examples/examples/yolo-v8/assets/bike.jpg
|
||||
|
||||
INFO clip: Probability: 99.9999% Text: a cycling race
|
||||
INFO clip: Probability: 0.0001% Text: a photo of two cats
|
||||
INFO clip: Probability: 0.0000% Text: a robot holding a candle
|
||||
```
|
202
candle-examples/examples/clip/main.rs
Normal file
202
candle-examples/examples/clip/main.rs
Normal file
@ -0,0 +1,202 @@
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use anyhow::Error as E;
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, Device, Tensor};
|
||||
use candle_nn::{ops::softmax, VarBuilder};
|
||||
use candle_transformers::models::clip;
|
||||
|
||||
use tokenizers::Tokenizer;
|
||||
use tracing::info;
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
tokenizer: Option<String>,
|
||||
|
||||
#[arg(long, use_value_delimiter = true)]
|
||||
images: Option<Vec<String>>,
|
||||
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
#[arg(long, use_value_delimiter = true)]
|
||||
sequences: Option<Vec<String>>,
|
||||
}
|
||||
|
||||
fn load_image<T: AsRef<std::path::Path>>(path: T, image_size: usize) -> anyhow::Result<Tensor> {
|
||||
let img = image::ImageReader::open(path)?.decode()?;
|
||||
let (height, width) = (image_size, image_size);
|
||||
let img = img.resize_to_fill(
|
||||
width as u32,
|
||||
height as u32,
|
||||
image::imageops::FilterType::Triangle,
|
||||
);
|
||||
|
||||
let img = img.to_rgb8();
|
||||
|
||||
let img = img.into_raw();
|
||||
let img = Tensor::from_vec(img, (height, width, 3), &Device::Cpu)?
|
||||
.permute((2, 0, 1))?
|
||||
.to_dtype(DType::F32)?
|
||||
.affine(2. / 255., -1.)?;
|
||||
// .unsqueeze(0)?;
|
||||
Ok(img)
|
||||
}
|
||||
|
||||
fn load_images<T: AsRef<std::path::Path>>(
|
||||
paths: &Vec<T>,
|
||||
image_size: usize,
|
||||
) -> anyhow::Result<Tensor> {
|
||||
let mut images = vec![];
|
||||
|
||||
for path in paths {
|
||||
let tensor = load_image(path, image_size)?;
|
||||
images.push(tensor);
|
||||
}
|
||||
|
||||
let images = Tensor::stack(&images, 0)?;
|
||||
|
||||
Ok(images)
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
// std::env::set_var("RUST_BACKTRACE", "full");
|
||||
|
||||
let args = Args::parse();
|
||||
|
||||
tracing_subscriber::fmt::init();
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
|
||||
let api = api.repo(hf_hub::Repo::with_revision(
|
||||
"openai/clip-vit-base-patch32".to_string(),
|
||||
hf_hub::RepoType::Model,
|
||||
"refs/pr/15".to_string(),
|
||||
));
|
||||
|
||||
api.get("model.safetensors")?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
|
||||
let tokenizer = get_tokenizer(args.tokenizer)?;
|
||||
|
||||
let config = clip::ClipConfig::vit_base_patch32();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let vec_imgs = match args.images {
|
||||
Some(imgs) => imgs,
|
||||
None => vec![
|
||||
"candle-examples/examples/stable-diffusion/assets/stable-diffusion-xl.jpg".to_string(),
|
||||
"candle-examples/examples/yolo-v8/assets/bike.jpg".to_string(),
|
||||
],
|
||||
};
|
||||
|
||||
// let image = load_image(args.image, config.image_size)?.to_device(&device)?;
|
||||
let images = load_images(&vec_imgs, config.image_size)?.to_device(&device)?;
|
||||
|
||||
let vb =
|
||||
unsafe { VarBuilder::from_mmaped_safetensors(&[model_file.clone()], DType::F32, &device)? };
|
||||
|
||||
let model = clip::ClipModel::new(vb, &config)?;
|
||||
|
||||
let (input_ids, vec_seq) = tokenize_sequences(args.sequences, &tokenizer, &device)?;
|
||||
|
||||
let (_logits_per_text, logits_per_image) = model.forward(&images, &input_ids)?;
|
||||
|
||||
let softmax_image = softmax(&logits_per_image, 1)?;
|
||||
|
||||
let softmax_image_vec = softmax_image.flatten_all()?.to_vec1::<f32>()?;
|
||||
|
||||
info!("softmax_image_vec: {:?}", softmax_image_vec);
|
||||
|
||||
let probability_vec = softmax_image_vec
|
||||
.iter()
|
||||
.map(|v| v * 100.0)
|
||||
.collect::<Vec<f32>>();
|
||||
|
||||
let probability_per_image = probability_vec.len() / vec_imgs.len();
|
||||
|
||||
for (i, img) in vec_imgs.iter().enumerate() {
|
||||
let start = i * probability_per_image;
|
||||
let end = start + probability_per_image;
|
||||
let prob = &probability_vec[start..end];
|
||||
info!("\n\nResults for image: {}\n", img);
|
||||
|
||||
for (i, p) in prob.iter().enumerate() {
|
||||
info!("Probability: {:.4}% Text: {} ", p, vec_seq[i]);
|
||||
}
|
||||
}
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
pub fn get_tokenizer(tokenizer: Option<String>) -> anyhow::Result<Tokenizer> {
|
||||
let tokenizer = match tokenizer {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.repo(hf_hub::Repo::with_revision(
|
||||
"openai/clip-vit-base-patch32".to_string(),
|
||||
hf_hub::RepoType::Model,
|
||||
"refs/pr/15".to_string(),
|
||||
));
|
||||
api.get("tokenizer.json")?
|
||||
}
|
||||
Some(file) => file.into(),
|
||||
};
|
||||
|
||||
Tokenizer::from_file(tokenizer).map_err(E::msg)
|
||||
}
|
||||
|
||||
pub fn tokenize_sequences(
|
||||
sequences: Option<Vec<String>>,
|
||||
tokenizer: &Tokenizer,
|
||||
device: &Device,
|
||||
) -> anyhow::Result<(Tensor, Vec<String>)> {
|
||||
let pad_id = *tokenizer
|
||||
.get_vocab(true)
|
||||
.get("<|endoftext|>")
|
||||
.ok_or(E::msg("No pad token"))?;
|
||||
|
||||
let vec_seq = match sequences {
|
||||
Some(seq) => seq,
|
||||
None => vec![
|
||||
"a cycling race".to_string(),
|
||||
"a photo of two cats".to_string(),
|
||||
"a robot holding a candle".to_string(),
|
||||
],
|
||||
};
|
||||
|
||||
let mut tokens = vec![];
|
||||
|
||||
for seq in vec_seq.clone() {
|
||||
let encoding = tokenizer.encode(seq, true).map_err(E::msg)?;
|
||||
tokens.push(encoding.get_ids().to_vec());
|
||||
}
|
||||
|
||||
let max_len = tokens.iter().map(|v| v.len()).max().unwrap_or(0);
|
||||
|
||||
// Pad the sequences to have the same length
|
||||
for token_vec in tokens.iter_mut() {
|
||||
let len_diff = max_len - token_vec.len();
|
||||
if len_diff > 0 {
|
||||
token_vec.extend(vec![pad_id; len_diff]);
|
||||
}
|
||||
}
|
||||
|
||||
let input_ids = Tensor::new(tokens, device)?;
|
||||
|
||||
Ok((input_ids, vec_seq))
|
||||
}
|
96
candle-examples/examples/codegeex4-9b/README.org
Normal file
96
candle-examples/examples/codegeex4-9b/README.org
Normal file
@ -0,0 +1,96 @@
|
||||
* candle-codegeex4_9b
|
||||
THUDM/CodeGeeX4 is a versatile model for all AI software development scenarios, including code completion, code interpreter, web search, function calling, repository-level Q&A and much more.
|
||||
|
||||
- [[https://github.com/THUDM/CodeGeeX4][Github]]
|
||||
- [[https://codegeex.cn/][HomePage]]
|
||||
- [[https://huggingface.co/THUDM/codegeex4-all-9b][huggingface]]
|
||||
|
||||
** Running with ~cuda~
|
||||
|
||||
#+begin_src shell
|
||||
cargo run --example codegeex4-9b --release --features cuda -- --prompt "please write a insertion sort in rust" --sample-len 300
|
||||
#+end_src
|
||||
|
||||
** Running with ~cpu~
|
||||
#+begin_src shell
|
||||
cargo run --example codegeex4-9b --release --cpu -- --prompt "please write a insertion sort in rust" --sample-len 300
|
||||
#+end_src
|
||||
|
||||
** Output_Example
|
||||
*** Input
|
||||
#+begin_src shell
|
||||
cargo run --release --features cuda -- --prompt 'please write a FFT in rust' --sample-len 500 --cache /root/autodl-tmp
|
||||
#+end_src
|
||||
|
||||
*** Output
|
||||
#+begin_src shell
|
||||
avx: false, neon: false, simd128: false, f16c: false
|
||||
temp: 0.95 repeat-penalty: 1.10 repeat-last-n: 64
|
||||
cache path /root/autodl-tmp
|
||||
Prompt: [please write a FFT in rust]
|
||||
Using Seed 11511762269791786684
|
||||
DType is BF16
|
||||
transofrmer layers create
|
||||
模型加载完毕 4
|
||||
starting the inference loop
|
||||
|
||||
开始生成
|
||||
samplelen 500
|
||||
|
||||
500 tokens generated (34.60 token/s)
|
||||
Result:
|
||||
|
||||
Sure, I can help you with that. Here's an example of a Fast Fourier Transform (FFT) implementation in Rust:
|
||||
|
||||
```rust
|
||||
use num_complex::Complex;
|
||||
|
||||
fn fft(input: &[Complex<f64> > ] ) -> Vec<Complex<f64> > > {
|
||||
let n = input.len();
|
||||
|
||||
if n == 1 {
|
||||
return vec![input[0]]];
|
||||
}
|
||||
|
||||
let mut even = vec![];
|
||||
let mut odd = vec![];
|
||||
|
||||
for i in 0..n {
|
||||
|
||||
if i % 2 == 0 {
|
||||
even.push(input[i]);
|
||||
} else {
|
||||
odd.push(input[i]);
|
||||
}
|
||||
}
|
||||
|
||||
let even_fft = fft(&even);
|
||||
let odd_fft = fft(&odd);
|
||||
|
||||
let mut output = vec![];
|
||||
|
||||
for k in 0..n/2 {
|
||||
let t = Complex::new(0.0, -2.0 * std::f64::consts::PI * (k as f64) / (n as f64))) ).exp();
|
||||
|
||||
output.push(even_fft[k] + odd_fft[k] * t]);
|
||||
output.push(even_fft[k] - odd_fft[k] * t]);
|
||||
}
|
||||
|
||||
return output;
|
||||
}
|
||||
```
|
||||
|
||||
This implementation uses the Cooley-Tukey algorithm to perform the FFT. The function takes an array of complex numbers and returns an array of complex numbers which is the result of the FFT.
|
||||
#+end_src
|
||||
|
||||
|
||||
* Citation
|
||||
#+begin_src
|
||||
@inproceedings{zheng2023codegeex,
|
||||
title={CodeGeeX: A Pre-Trained Model for Code Generation with Multilingual Benchmarking on HumanEval-X},
|
||||
author={Qinkai Zheng and Xiao Xia and Xu Zou and Yuxiao Dong and Shan Wang and Yufei Xue and Zihan Wang and Lei Shen and Andi Wang and Yang Li and Teng Su and Zhilin Yang and Jie Tang},
|
||||
booktitle={Proceedings of the 29th ACM SIGKDD Conference on Knowledge Discovery and Data Mining},
|
||||
pages={5673--5684},
|
||||
year={2023}
|
||||
}
|
||||
#+end_src
|
252
candle-examples/examples/codegeex4-9b/main.rs
Normal file
252
candle-examples/examples/codegeex4-9b/main.rs
Normal file
@ -0,0 +1,252 @@
|
||||
use candle_transformers::models::codegeex4_9b::*;
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, Device, Tensor};
|
||||
use candle_nn::VarBuilder;
|
||||
use candle_transformers::generation::LogitsProcessor;
|
||||
use hf_hub::{Repo, RepoType};
|
||||
use tokenizers::Tokenizer;
|
||||
|
||||
struct TextGeneration {
|
||||
model: Model,
|
||||
device: Device,
|
||||
tokenizer: Tokenizer,
|
||||
logits_processor: LogitsProcessor,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
verbose_prompt: bool,
|
||||
dtype: DType,
|
||||
}
|
||||
|
||||
impl TextGeneration {
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn new(
|
||||
model: Model,
|
||||
tokenizer: Tokenizer,
|
||||
seed: u64,
|
||||
temp: Option<f64>,
|
||||
top_p: Option<f64>,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
verbose_prompt: bool,
|
||||
device: &Device,
|
||||
dtype: DType,
|
||||
) -> Self {
|
||||
let logits_processor = LogitsProcessor::new(seed, temp, top_p);
|
||||
Self {
|
||||
model,
|
||||
tokenizer,
|
||||
logits_processor,
|
||||
repeat_penalty,
|
||||
repeat_last_n,
|
||||
verbose_prompt,
|
||||
device: device.clone(),
|
||||
dtype,
|
||||
}
|
||||
}
|
||||
|
||||
fn run(&mut self, prompt: &str, sample_len: usize) -> anyhow::Result<()> {
|
||||
use std::io::Write;
|
||||
println!("starting the inference loop");
|
||||
let tokens = self.tokenizer.encode(prompt, true).expect("tokens error");
|
||||
if tokens.is_empty() {
|
||||
panic!("Empty prompts are not supported in the chatglm model.")
|
||||
}
|
||||
if self.verbose_prompt {
|
||||
for (token, id) in tokens.get_tokens().iter().zip(tokens.get_ids().iter()) {
|
||||
let token = token.replace('▁', " ").replace("<0x0A>", "\n");
|
||||
println!("{id:7} -> '{token}'");
|
||||
}
|
||||
}
|
||||
let eos_token = match self.tokenizer.get_vocab(true).get("<|endoftext|>") {
|
||||
Some(token) => *token,
|
||||
None => panic!("cannot find the endoftext token"),
|
||||
};
|
||||
let mut tokens = tokens.get_ids().to_vec();
|
||||
let mut generated_tokens = 0usize;
|
||||
|
||||
print!("{prompt}");
|
||||
std::io::stdout().flush().expect("output flush error");
|
||||
let start_gen = std::time::Instant::now();
|
||||
|
||||
println!("\n start_gen");
|
||||
println!("samplelen {}", sample_len);
|
||||
let mut count = 0;
|
||||
let mut result = vec![];
|
||||
for index in 0..sample_len {
|
||||
count += 1;
|
||||
let context_size = if index > 0 { 1 } else { tokens.len() };
|
||||
let ctxt = &tokens[tokens.len().saturating_sub(context_size)..];
|
||||
let input = Tensor::new(ctxt, &self.device)?.unsqueeze(0)?;
|
||||
let logits = self.model.forward(&input)?;
|
||||
let logits = logits.squeeze(0)?.to_dtype(self.dtype)?;
|
||||
let logits = if self.repeat_penalty == 1. {
|
||||
logits
|
||||
} else {
|
||||
let start_at = tokens.len().saturating_sub(self.repeat_last_n);
|
||||
candle_transformers::utils::apply_repeat_penalty(
|
||||
&logits,
|
||||
self.repeat_penalty,
|
||||
&tokens[start_at..],
|
||||
)?
|
||||
};
|
||||
|
||||
let next_token = self.logits_processor.sample(&logits)?;
|
||||
tokens.push(next_token);
|
||||
generated_tokens += 1;
|
||||
if next_token == eos_token {
|
||||
break;
|
||||
}
|
||||
let token = self
|
||||
.tokenizer
|
||||
.decode(&[next_token], true)
|
||||
.expect("Token error");
|
||||
if self.verbose_prompt {
|
||||
println!(
|
||||
"[Count: {}] [Raw Token: {}] [Decode Token: {}]",
|
||||
count, next_token, token
|
||||
);
|
||||
}
|
||||
result.push(token);
|
||||
std::io::stdout().flush()?;
|
||||
}
|
||||
let dt = start_gen.elapsed();
|
||||
println!(
|
||||
"\n{generated_tokens} tokens generated ({:.2} token/s)",
|
||||
generated_tokens as f64 / dt.as_secs_f64(),
|
||||
);
|
||||
println!("Result:");
|
||||
for tokens in result {
|
||||
print!("{tokens}");
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
#[derive(Parser, Debug)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(name = "cache", short, long, default_value = ".")]
|
||||
cache_path: String,
|
||||
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// Display the token for the specified prompt.
|
||||
#[arg(long)]
|
||||
verbose_prompt: bool,
|
||||
|
||||
#[arg(long)]
|
||||
prompt: String,
|
||||
|
||||
/// The temperature used to generate samples.
|
||||
#[arg(long)]
|
||||
temperature: Option<f64>,
|
||||
|
||||
/// Nucleus sampling probability cutoff.
|
||||
#[arg(long)]
|
||||
top_p: Option<f64>,
|
||||
|
||||
/// The seed to use when generating random samples.
|
||||
#[arg(long, default_value_t = 299792458)]
|
||||
seed: u64,
|
||||
|
||||
/// The length of the sample to generate (in tokens).
|
||||
#[arg(long, short = 'n', default_value_t = 5000)]
|
||||
sample_len: usize,
|
||||
|
||||
#[arg(long)]
|
||||
model_id: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
revision: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
weight_file: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
tokenizer: Option<String>,
|
||||
|
||||
/// Penalty to be applied for repeating tokens, 1. means no penalty.
|
||||
#[arg(long, default_value_t = 1.1)]
|
||||
repeat_penalty: f32,
|
||||
|
||||
/// The context size to consider for the repeat penalty.
|
||||
#[arg(long, default_value_t = 64)]
|
||||
repeat_last_n: usize,
|
||||
}
|
||||
|
||||
fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
println!(
|
||||
"avx: {}, neon: {}, simd128: {}, f16c: {}",
|
||||
candle::utils::with_avx(),
|
||||
candle::utils::with_neon(),
|
||||
candle::utils::with_simd128(),
|
||||
candle::utils::with_f16c()
|
||||
);
|
||||
println!(
|
||||
"temp: {:.2} repeat-penalty: {:.2} repeat-last-n: {}",
|
||||
args.temperature.unwrap_or(0.95),
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n
|
||||
);
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
println!("cache path {}", args.cache_path);
|
||||
let api = hf_hub::api::sync::ApiBuilder::from_cache(hf_hub::Cache::new(args.cache_path.into()))
|
||||
.build()
|
||||
.map_err(anyhow::Error::msg)?;
|
||||
|
||||
let model_id = match args.model_id {
|
||||
Some(model_id) => model_id.to_string(),
|
||||
None => "THUDM/codegeex4-all-9b".to_string(),
|
||||
};
|
||||
let revision = match args.revision {
|
||||
Some(rev) => rev.to_string(),
|
||||
None => "main".to_string(),
|
||||
};
|
||||
let repo = api.repo(Repo::with_revision(model_id, RepoType::Model, revision));
|
||||
let tokenizer_filename = match args.tokenizer {
|
||||
Some(file) => std::path::PathBuf::from(file),
|
||||
None => api
|
||||
.model("THUDM/codegeex4-all-9b".to_string())
|
||||
.get("tokenizer.json")
|
||||
.map_err(anyhow::Error::msg)?,
|
||||
};
|
||||
let filenames = match args.weight_file {
|
||||
Some(weight_file) => vec![std::path::PathBuf::from(weight_file)],
|
||||
None => candle_examples::hub_load_safetensors(&repo, "model.safetensors.index.json")?,
|
||||
};
|
||||
println!("retrieved the files in {:?}", start.elapsed());
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).expect("Tokenizer Error");
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
let config = Config::codegeex4();
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
let dtype = if device.is_cuda() {
|
||||
DType::BF16
|
||||
} else {
|
||||
DType::F32
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&filenames, dtype, &device)? };
|
||||
let model = Model::new(&config, vb)?;
|
||||
|
||||
println!("loaded the model in {:?}", start.elapsed());
|
||||
|
||||
let mut pipeline = TextGeneration::new(
|
||||
model,
|
||||
tokenizer,
|
||||
args.seed,
|
||||
args.temperature,
|
||||
args.top_p,
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n,
|
||||
args.verbose_prompt,
|
||||
&device,
|
||||
dtype,
|
||||
);
|
||||
pipeline.run(&args.prompt, args.sample_len)?;
|
||||
Ok(())
|
||||
}
|
13
candle-examples/examples/depth_anything_v2/README.md
Normal file
13
candle-examples/examples/depth_anything_v2/README.md
Normal file
@ -0,0 +1,13 @@
|
||||
# candle-dinov2
|
||||
|
||||
[Depth Anything V2] is a model for Monocular Depth Estimation (MDE, i.e. just using a single image) which
|
||||
builds on the [DINOv2](https://github.com/facebookresearch/dinov2) vision transformer.
|
||||
|
||||
This example first instantiates the DINOv2 model and then proceeds to create DepthAnythingV2 and run it.
|
||||
|
||||
## Running an example with color map and CUDA
|
||||
|
||||
```bash
|
||||
cargo run --features cuda,depth_anything_v2 --package candle-examples --example depth_anything_v2 -- --color-map --image candle-examples/examples/yolo-v8/assets/bike.jpg
|
||||
```
|
||||
|
50
candle-examples/examples/depth_anything_v2/color_map.rs
Normal file
50
candle-examples/examples/depth_anything_v2/color_map.rs
Normal file
@ -0,0 +1,50 @@
|
||||
use enterpolation::linear::ConstEquidistantLinear;
|
||||
use enterpolation::Generator;
|
||||
use palette::LinSrgb;
|
||||
|
||||
use candle::Tensor;
|
||||
|
||||
pub struct SpectralRColormap {
|
||||
gradient: ConstEquidistantLinear<f32, LinSrgb, 9>,
|
||||
}
|
||||
|
||||
impl SpectralRColormap {
|
||||
pub(crate) fn new() -> Self {
|
||||
// Define a colormap similar to 'Spectral_r' by specifying key colors.
|
||||
// got the colors from ChatGPT-4o
|
||||
let gradient = ConstEquidistantLinear::<f32, _, 9>::equidistant_unchecked([
|
||||
LinSrgb::new(0.3686, 0.3098, 0.6353), // Dark blue
|
||||
LinSrgb::new(0.1961, 0.5333, 0.7412), // Blue
|
||||
LinSrgb::new(0.4000, 0.7608, 0.6471), // Cyan
|
||||
LinSrgb::new(0.6706, 0.8667, 0.6431), // Green
|
||||
LinSrgb::new(0.9020, 0.9608, 0.5961), // Yellow
|
||||
LinSrgb::new(0.9961, 0.8784, 0.5451), // Orange
|
||||
LinSrgb::new(0.9922, 0.6824, 0.3804), // Red
|
||||
LinSrgb::new(0.9569, 0.4275, 0.2627), // Dark red
|
||||
LinSrgb::new(0.8353, 0.2431, 0.3098), // Dark purple
|
||||
]);
|
||||
Self { gradient }
|
||||
}
|
||||
|
||||
fn get_color(&self, value: f32) -> LinSrgb {
|
||||
self.gradient.gen(value)
|
||||
}
|
||||
|
||||
pub fn gray2color(&self, gray: &Tensor) -> candle::Result<Tensor> {
|
||||
println!("Gray: {:?}", gray.dims());
|
||||
let gray_values: Vec<f32> = gray.flatten_all()?.to_vec1()?;
|
||||
let rgb_values: Vec<f32> = gray_values
|
||||
.iter()
|
||||
.map(|g| self.get_color(*g))
|
||||
.flat_map(|rgb| [rgb.red, rgb.green, rgb.blue])
|
||||
.collect();
|
||||
|
||||
let [.., height, width] = gray.dims() else {
|
||||
candle::bail!("Not enough dims!")
|
||||
};
|
||||
|
||||
let color = Tensor::from_vec(rgb_values, (*height, *width, 3), gray.device())?;
|
||||
|
||||
color.permute((2, 0, 1))
|
||||
}
|
||||
}
|
187
candle-examples/examples/depth_anything_v2/main.rs
Normal file
187
candle-examples/examples/depth_anything_v2/main.rs
Normal file
@ -0,0 +1,187 @@
|
||||
//! Depth Anything V2
|
||||
//! https://huggingface.co/spaces/depth-anything/Depth-Anything-V2
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
use std::ffi::OsString;
|
||||
use std::path::PathBuf;
|
||||
|
||||
use clap::Parser;
|
||||
|
||||
use candle::DType::{F32, U8};
|
||||
use candle::{DType, Device, Module, Result, Tensor};
|
||||
use candle_examples::{load_image, load_image_and_resize, save_image};
|
||||
use candle_nn::VarBuilder;
|
||||
use candle_transformers::models::depth_anything_v2::{DepthAnythingV2, DepthAnythingV2Config};
|
||||
use candle_transformers::models::dinov2;
|
||||
|
||||
use crate::color_map::SpectralRColormap;
|
||||
|
||||
mod color_map;
|
||||
|
||||
// taken these from: https://huggingface.co/spaces/depth-anything/Depth-Anything-V2/blob/main/depth_anything_v2/dpt.py#L207
|
||||
const MAGIC_MEAN: [f32; 3] = [0.485, 0.456, 0.406];
|
||||
const MAGIC_STD: [f32; 3] = [0.229, 0.224, 0.225];
|
||||
|
||||
const DINO_IMG_SIZE: usize = 518;
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
dinov2_model: Option<PathBuf>,
|
||||
|
||||
#[arg(long)]
|
||||
depth_anything_v2_model: Option<PathBuf>,
|
||||
|
||||
#[arg(long)]
|
||||
image: PathBuf,
|
||||
|
||||
#[arg(long)]
|
||||
output_dir: Option<PathBuf>,
|
||||
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
#[arg(long)]
|
||||
color_map: bool,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let dinov2_model_file = match args.dinov2_model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model("lmz/candle-dino-v2".into());
|
||||
api.get("dinov2_vits14.safetensors")?
|
||||
}
|
||||
Some(dinov2_model) => dinov2_model,
|
||||
};
|
||||
println!("Using file {:?}", dinov2_model_file);
|
||||
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[dinov2_model_file], F32, &device)? };
|
||||
let dinov2 = dinov2::vit_small(vb)?;
|
||||
println!("DinoV2 model built");
|
||||
|
||||
let depth_anything_model_file = match args.depth_anything_v2_model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model("jeroenvlek/depth-anything-v2-safetensors".into());
|
||||
api.get("depth_anything_v2_vits.safetensors")?
|
||||
}
|
||||
Some(depth_anything_model) => depth_anything_model,
|
||||
};
|
||||
println!("Using file {:?}", depth_anything_model_file);
|
||||
|
||||
let vb = unsafe {
|
||||
VarBuilder::from_mmaped_safetensors(&[depth_anything_model_file], DType::F32, &device)?
|
||||
};
|
||||
|
||||
let config = DepthAnythingV2Config::vit_small();
|
||||
let depth_anything = DepthAnythingV2::new(&dinov2, &config, vb)?;
|
||||
|
||||
let (original_height, original_width, image) = load_and_prep_image(&args.image, &device)?;
|
||||
|
||||
println!("Loaded image {image:?}");
|
||||
|
||||
let depth = depth_anything.forward(&image)?;
|
||||
|
||||
println!("Got predictions {:?}", depth.shape());
|
||||
|
||||
let output_image = post_process_image(&depth, original_height, original_width, args.color_map)?;
|
||||
|
||||
let output_path = full_output_path(&args.image, &args.output_dir);
|
||||
println!("Saving image to {}", output_path.to_string_lossy());
|
||||
save_image(&output_image, output_path)?;
|
||||
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn full_output_path(image_path: &PathBuf, output_dir: &Option<PathBuf>) -> PathBuf {
|
||||
let input_file_name = image_path.file_name().unwrap();
|
||||
let mut output_file_name = OsString::from("depth_");
|
||||
output_file_name.push(input_file_name);
|
||||
let mut output_path = match output_dir {
|
||||
None => image_path.parent().unwrap().to_path_buf(),
|
||||
Some(output_path) => output_path.clone(),
|
||||
};
|
||||
output_path.push(output_file_name);
|
||||
|
||||
output_path
|
||||
}
|
||||
|
||||
fn load_and_prep_image(
|
||||
image_path: &PathBuf,
|
||||
device: &Device,
|
||||
) -> anyhow::Result<(usize, usize, Tensor)> {
|
||||
let (_original_image, original_height, original_width) = load_image(&image_path, None)?;
|
||||
|
||||
let image = load_image_and_resize(&image_path, DINO_IMG_SIZE, DINO_IMG_SIZE)?
|
||||
.unsqueeze(0)?
|
||||
.to_dtype(F32)?
|
||||
.to_device(&device)?;
|
||||
|
||||
let max_pixel_val = Tensor::try_from(255.0f32)?
|
||||
.to_device(&device)?
|
||||
.broadcast_as(image.shape())?;
|
||||
let image = (image / max_pixel_val)?;
|
||||
let image = normalize_image(&image, &MAGIC_MEAN, &MAGIC_STD)?;
|
||||
|
||||
Ok((original_height, original_width, image))
|
||||
}
|
||||
|
||||
fn normalize_image(image: &Tensor, mean: &[f32; 3], std: &[f32; 3]) -> Result<Tensor> {
|
||||
let mean_tensor =
|
||||
Tensor::from_vec(mean.to_vec(), (3, 1, 1), &image.device())?.broadcast_as(image.shape())?;
|
||||
let std_tensor =
|
||||
Tensor::from_vec(std.to_vec(), (3, 1, 1), &image.device())?.broadcast_as(image.shape())?;
|
||||
image.sub(&mean_tensor)?.div(&std_tensor)
|
||||
}
|
||||
|
||||
fn post_process_image(
|
||||
image: &Tensor,
|
||||
original_height: usize,
|
||||
original_width: usize,
|
||||
color_map: bool,
|
||||
) -> Result<Tensor> {
|
||||
let out = image.interpolate2d(original_height, original_width)?;
|
||||
let out = scale_image(&out)?;
|
||||
|
||||
let out = if color_map {
|
||||
let spectral_r = SpectralRColormap::new();
|
||||
spectral_r.gray2color(&out)?
|
||||
} else {
|
||||
let rgb_slice = [&out, &out, &out];
|
||||
Tensor::cat(&rgb_slice, 0)?.squeeze(1)?
|
||||
};
|
||||
|
||||
let max_pixel_val = Tensor::try_from(255.0f32)?
|
||||
.to_device(out.device())?
|
||||
.broadcast_as(out.shape())?;
|
||||
let out = (out * max_pixel_val)?;
|
||||
|
||||
out.to_dtype(U8)
|
||||
}
|
||||
|
||||
fn scale_image(depth: &Tensor) -> Result<Tensor> {
|
||||
let flat_values: Vec<f32> = depth.flatten_all()?.to_vec1()?;
|
||||
|
||||
let min_val = flat_values.iter().min_by(|a, b| a.total_cmp(b)).unwrap();
|
||||
let max_val = flat_values.iter().max_by(|a, b| a.total_cmp(b)).unwrap();
|
||||
|
||||
let min_val_tensor = Tensor::try_from(*min_val)?
|
||||
.to_device(depth.device())?
|
||||
.broadcast_as(depth.shape())?;
|
||||
let depth = (depth - min_val_tensor)?;
|
||||
|
||||
let range = max_val - min_val;
|
||||
let range_tensor = Tensor::try_from(range)?
|
||||
.to_device(depth.device())?
|
||||
.broadcast_as(depth.shape())?;
|
||||
|
||||
depth / range_tensor
|
||||
}
|
25
candle-examples/examples/dinov2reg4/README.md
Normal file
25
candle-examples/examples/dinov2reg4/README.md
Normal file
@ -0,0 +1,25 @@
|
||||
# candle-dinov2-reg4
|
||||
|
||||
[DINOv2-reg4](https://arxiv.org/abs/2309.16588) is the lastest version of DINOv2 with registers.
|
||||
In this example, it is used as an plant species classifier: the model returns the
|
||||
probability for the image to belong to each of the 7806 PlantCLEF2024 categories.
|
||||
|
||||
## Running some example
|
||||
|
||||
```bash
|
||||
# Download classes names and a plant picture to identify
|
||||
curl https://huggingface.co/vincent-espitalier/dino-v2-reg4-with-plantclef2024-weights/raw/main/species_id_mapping.txt --output candle-examples/examples/dinov2reg4/species_id_mapping.txt
|
||||
curl https://bs.plantnet.org/image/o/bd2d3830ac3270218ba82fd24e2290becd01317c --output candle-examples/examples/dinov2reg4/bd2d3830ac3270218ba82fd24e2290becd01317c.jpg
|
||||
|
||||
# Perform inference
|
||||
cargo run --example dinov2reg4 --release -- --image candle-examples/examples/dinov2reg4/bd2d3830ac3270218ba82fd24e2290becd01317c.jpg
|
||||
|
||||
> Orchis simia Lam. : 45.55%
|
||||
> Orchis × bergonii Nanteuil: 9.80%
|
||||
> Orchis italica Poir. : 9.66%
|
||||
> Orchis × angusticruris Franch.: 2.76%
|
||||
> Orchis × bivonae Tod. : 2.54%
|
||||
|
||||
```
|
||||
|
||||

|
70
candle-examples/examples/dinov2reg4/main.rs
Normal file
70
candle-examples/examples/dinov2reg4/main.rs
Normal file
@ -0,0 +1,70 @@
|
||||
//! DINOv2 reg4 finetuned on PlantCLEF 2024
|
||||
//! https://arxiv.org/abs/2309.16588
|
||||
//! https://huggingface.co/spaces/BVRA/PlantCLEF2024
|
||||
//! https://zenodo.org/records/10848263
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, IndexOp, D};
|
||||
use candle_nn::{Module, VarBuilder};
|
||||
use candle_transformers::models::dinov2reg4;
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
image: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let image = candle_examples::imagenet::load_image518(args.image)?.to_device(&device)?;
|
||||
println!("loaded image {image:?}");
|
||||
|
||||
let f_species_id_mapping = "candle-examples/examples/dinov2reg4/species_id_mapping.txt";
|
||||
let classes: Vec<String> = std::fs::read_to_string(f_species_id_mapping)
|
||||
.expect("missing classes file")
|
||||
.split('\n')
|
||||
.map(|s| s.to_string())
|
||||
.collect();
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api =
|
||||
api.model("vincent-espitalier/dino-v2-reg4-with-plantclef2024-weights".into());
|
||||
api.get(
|
||||
"vit_base_patch14_reg4_dinov2_lvd142m_pc24_onlyclassifier_then_all.safetensors",
|
||||
)?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], DType::F32, &device)? };
|
||||
let model = dinov2reg4::vit_base(vb)?;
|
||||
println!("model built");
|
||||
let logits = model.forward(&image.unsqueeze(0)?)?;
|
||||
let prs = candle_nn::ops::softmax(&logits, D::Minus1)?
|
||||
.i(0)?
|
||||
.to_vec1::<f32>()?;
|
||||
let mut prs = prs.iter().enumerate().collect::<Vec<_>>();
|
||||
prs.sort_by(|(_, p1), (_, p2)| p2.total_cmp(p1));
|
||||
for &(category_idx, pr) in prs.iter().take(5) {
|
||||
println!("{:24}: {:.2}%", classes[category_idx], 100. * pr);
|
||||
}
|
||||
Ok(())
|
||||
}
|
@ -7,14 +7,19 @@ quantization.
|
||||
## Running one example
|
||||
|
||||
```bash
|
||||
cargo run --example encodec --features symphonia --release -- code-to-audio \
|
||||
cargo run --example encodec --features encodec --release -- code-to-audio \
|
||||
candle-examples/examples/encodec/jfk-codes.safetensors \
|
||||
jfk.wav
|
||||
```
|
||||
|
||||
This decodes the EnCodec tokens stored in `jfk-codes.safetensors` and generates
|
||||
an output wav file containing the audio data. Instead of `code-to-audio` one
|
||||
can use:
|
||||
an output wav file containing the audio data.
|
||||
|
||||
Instead of `code-to-audio` one can use:
|
||||
- `audio-to-audio in.mp3 out.wav`: encodes the input audio file then decodes it to a wav file.
|
||||
- `audio-to-code in.mp3 out.safetensors`: generates a safetensors file
|
||||
containing EnCodec tokens for the input audio file.
|
||||
|
||||
If the audio output file name is set to `-`, the audio content directly gets
|
||||
played on default audio output device. If the audio input file is set to `-`, the audio
|
||||
gets recorded from the default audio input.
|
||||
|
275
candle-examples/examples/encodec/audio_io.rs
Normal file
275
candle-examples/examples/encodec/audio_io.rs
Normal file
@ -0,0 +1,275 @@
|
||||
#![allow(unused)]
|
||||
use anyhow::{Context, Result};
|
||||
use std::sync::{Arc, Mutex};
|
||||
|
||||
pub const SAMPLE_RATE: usize = 24_000;
|
||||
|
||||
pub(crate) struct AudioOutputData_ {
|
||||
resampled_data: std::collections::VecDeque<f32>,
|
||||
resampler: rubato::FastFixedIn<f32>,
|
||||
output_buffer: Vec<f32>,
|
||||
input_buffer: Vec<f32>,
|
||||
input_len: usize,
|
||||
}
|
||||
|
||||
impl AudioOutputData_ {
|
||||
pub(crate) fn new(input_sample_rate: usize, output_sample_rate: usize) -> Result<Self> {
|
||||
use rubato::Resampler;
|
||||
|
||||
let resampled_data = std::collections::VecDeque::with_capacity(output_sample_rate * 10);
|
||||
let resample_ratio = output_sample_rate as f64 / input_sample_rate as f64;
|
||||
let resampler = rubato::FastFixedIn::new(
|
||||
resample_ratio,
|
||||
f64::max(resample_ratio, 1.0),
|
||||
rubato::PolynomialDegree::Septic,
|
||||
1024,
|
||||
1,
|
||||
)?;
|
||||
let input_buffer = resampler.input_buffer_allocate(true).remove(0);
|
||||
let output_buffer = resampler.output_buffer_allocate(true).remove(0);
|
||||
Ok(Self {
|
||||
resampled_data,
|
||||
resampler,
|
||||
input_buffer,
|
||||
output_buffer,
|
||||
input_len: 0,
|
||||
})
|
||||
}
|
||||
|
||||
pub fn reset(&mut self) {
|
||||
use rubato::Resampler;
|
||||
self.output_buffer.fill(0.);
|
||||
self.input_buffer.fill(0.);
|
||||
self.resampler.reset();
|
||||
self.resampled_data.clear();
|
||||
}
|
||||
|
||||
pub(crate) fn take_all(&mut self) -> Vec<f32> {
|
||||
let mut data = Vec::with_capacity(self.resampled_data.len());
|
||||
while let Some(elem) = self.resampled_data.pop_back() {
|
||||
data.push(elem);
|
||||
}
|
||||
data
|
||||
}
|
||||
|
||||
pub(crate) fn is_empty(&self) -> bool {
|
||||
self.resampled_data.is_empty()
|
||||
}
|
||||
|
||||
// Assumes that the input buffer is large enough.
|
||||
fn push_input_buffer(&mut self, samples: &[f32]) {
|
||||
self.input_buffer[self.input_len..self.input_len + samples.len()].copy_from_slice(samples);
|
||||
self.input_len += samples.len()
|
||||
}
|
||||
|
||||
pub(crate) fn push_samples(&mut self, samples: &[f32]) -> Result<()> {
|
||||
use rubato::Resampler;
|
||||
|
||||
let mut pos_in = 0;
|
||||
loop {
|
||||
let rem = self.input_buffer.len() - self.input_len;
|
||||
let pos_end = usize::min(pos_in + rem, samples.len());
|
||||
self.push_input_buffer(&samples[pos_in..pos_end]);
|
||||
pos_in = pos_end;
|
||||
if self.input_len < self.input_buffer.len() {
|
||||
break;
|
||||
}
|
||||
let (_, out_len) = self.resampler.process_into_buffer(
|
||||
&[&self.input_buffer],
|
||||
&mut [&mut self.output_buffer],
|
||||
None,
|
||||
)?;
|
||||
for &elem in self.output_buffer[..out_len].iter() {
|
||||
self.resampled_data.push_front(elem)
|
||||
}
|
||||
self.input_len = 0;
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
|
||||
type AudioOutputData = Arc<Mutex<AudioOutputData_>>;
|
||||
|
||||
pub(crate) fn setup_output_stream() -> Result<(cpal::Stream, AudioOutputData)> {
|
||||
use cpal::traits::{DeviceTrait, HostTrait, StreamTrait};
|
||||
|
||||
println!("Setup audio output stream!");
|
||||
let host = cpal::default_host();
|
||||
let device = host
|
||||
.default_output_device()
|
||||
.context("no output device available")?;
|
||||
let mut supported_configs_range = device.supported_output_configs()?;
|
||||
let config_range = match supported_configs_range.find(|c| c.channels() == 1) {
|
||||
// On macOS, it's commonly the case that there are only stereo outputs.
|
||||
None => device
|
||||
.supported_output_configs()?
|
||||
.next()
|
||||
.context("no audio output available")?,
|
||||
Some(config_range) => config_range,
|
||||
};
|
||||
let sample_rate = cpal::SampleRate(SAMPLE_RATE as u32).clamp(
|
||||
config_range.min_sample_rate(),
|
||||
config_range.max_sample_rate(),
|
||||
);
|
||||
let config: cpal::StreamConfig = config_range.with_sample_rate(sample_rate).into();
|
||||
let channels = config.channels as usize;
|
||||
println!(
|
||||
"cpal device: {} {} {config:?}",
|
||||
device.name().unwrap_or_else(|_| "unk".to_string()),
|
||||
config.sample_rate.0
|
||||
);
|
||||
let audio_data = Arc::new(Mutex::new(AudioOutputData_::new(
|
||||
SAMPLE_RATE,
|
||||
config.sample_rate.0 as usize,
|
||||
)?));
|
||||
let ad = audio_data.clone();
|
||||
let stream = device.build_output_stream(
|
||||
&config,
|
||||
move |data: &mut [f32], _: &cpal::OutputCallbackInfo| {
|
||||
data.fill(0.);
|
||||
let mut ad = ad.lock().unwrap();
|
||||
let mut last_elem = 0f32;
|
||||
for (idx, elem) in data.iter_mut().enumerate() {
|
||||
if idx % channels == 0 {
|
||||
match ad.resampled_data.pop_back() {
|
||||
None => break,
|
||||
Some(v) => {
|
||||
last_elem = v;
|
||||
*elem = v
|
||||
}
|
||||
}
|
||||
} else {
|
||||
*elem = last_elem
|
||||
}
|
||||
}
|
||||
},
|
||||
move |err| eprintln!("cpal error: {err}"),
|
||||
None, // None=blocking, Some(Duration)=timeout
|
||||
)?;
|
||||
stream.play()?;
|
||||
Ok((stream, audio_data))
|
||||
}
|
||||
|
||||
pub(crate) fn setup_input_stream() -> Result<(cpal::Stream, AudioOutputData)> {
|
||||
use cpal::traits::{DeviceTrait, HostTrait, StreamTrait};
|
||||
|
||||
println!("Setup audio input stream!");
|
||||
let host = cpal::default_host();
|
||||
let device = host
|
||||
.default_input_device()
|
||||
.context("no input device available")?;
|
||||
let mut supported_configs_range = device.supported_input_configs()?;
|
||||
let config_range = supported_configs_range
|
||||
.find(|c| c.channels() == 1)
|
||||
.context("no audio input available")?;
|
||||
let sample_rate = cpal::SampleRate(SAMPLE_RATE as u32).clamp(
|
||||
config_range.min_sample_rate(),
|
||||
config_range.max_sample_rate(),
|
||||
);
|
||||
let config: cpal::StreamConfig = config_range.with_sample_rate(sample_rate).into();
|
||||
println!(
|
||||
"cpal device: {} {} {config:?}",
|
||||
device.name().unwrap_or_else(|_| "unk".to_string()),
|
||||
config.sample_rate.0
|
||||
);
|
||||
let audio_data = Arc::new(Mutex::new(AudioOutputData_::new(
|
||||
config.sample_rate.0 as usize,
|
||||
SAMPLE_RATE,
|
||||
)?));
|
||||
let ad = audio_data.clone();
|
||||
let stream = device.build_input_stream(
|
||||
&config,
|
||||
move |data: &[f32], _: &cpal::InputCallbackInfo| {
|
||||
let mut ad = ad.lock().unwrap();
|
||||
if let Err(err) = ad.push_samples(data) {
|
||||
eprintln!("error processing audio input {err:?}")
|
||||
}
|
||||
},
|
||||
move |err| eprintln!("cpal error: {err}"),
|
||||
None, // None=blocking, Some(Duration)=timeout
|
||||
)?;
|
||||
stream.play()?;
|
||||
Ok((stream, audio_data))
|
||||
}
|
||||
|
||||
fn conv<T>(samples: &mut Vec<f32>, data: std::borrow::Cow<symphonia::core::audio::AudioBuffer<T>>)
|
||||
where
|
||||
T: symphonia::core::sample::Sample,
|
||||
f32: symphonia::core::conv::FromSample<T>,
|
||||
{
|
||||
use symphonia::core::audio::Signal;
|
||||
use symphonia::core::conv::FromSample;
|
||||
samples.extend(data.chan(0).iter().map(|v| f32::from_sample(*v)))
|
||||
}
|
||||
|
||||
pub(crate) fn pcm_decode<P: AsRef<std::path::Path>>(path: P) -> Result<(Vec<f32>, u32)> {
|
||||
use symphonia::core::audio::{AudioBufferRef, Signal};
|
||||
|
||||
let src = std::fs::File::open(path)?;
|
||||
let mss = symphonia::core::io::MediaSourceStream::new(Box::new(src), Default::default());
|
||||
let hint = symphonia::core::probe::Hint::new();
|
||||
let meta_opts: symphonia::core::meta::MetadataOptions = Default::default();
|
||||
let fmt_opts: symphonia::core::formats::FormatOptions = Default::default();
|
||||
let probed = symphonia::default::get_probe().format(&hint, mss, &fmt_opts, &meta_opts)?;
|
||||
let mut format = probed.format;
|
||||
let track = format
|
||||
.tracks()
|
||||
.iter()
|
||||
.find(|t| t.codec_params.codec != symphonia::core::codecs::CODEC_TYPE_NULL)
|
||||
.expect("no supported audio tracks");
|
||||
let mut decoder = symphonia::default::get_codecs()
|
||||
.make(&track.codec_params, &Default::default())
|
||||
.expect("unsupported codec");
|
||||
let track_id = track.id;
|
||||
let sample_rate = track.codec_params.sample_rate.unwrap_or(0);
|
||||
let mut pcm_data = Vec::new();
|
||||
while let Ok(packet) = format.next_packet() {
|
||||
while !format.metadata().is_latest() {
|
||||
format.metadata().pop();
|
||||
}
|
||||
if packet.track_id() != track_id {
|
||||
continue;
|
||||
}
|
||||
match decoder.decode(&packet)? {
|
||||
AudioBufferRef::F32(buf) => pcm_data.extend(buf.chan(0)),
|
||||
AudioBufferRef::U8(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U16(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U24(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U32(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S8(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S16(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S24(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S32(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::F64(data) => conv(&mut pcm_data, data),
|
||||
}
|
||||
}
|
||||
Ok((pcm_data, sample_rate))
|
||||
}
|
||||
|
||||
pub(crate) fn resample(pcm_in: &[f32], sr_in: usize, sr_out: usize) -> Result<Vec<f32>> {
|
||||
use rubato::Resampler;
|
||||
|
||||
let mut pcm_out =
|
||||
Vec::with_capacity((pcm_in.len() as f64 * sr_out as f64 / sr_in as f64) as usize + 1024);
|
||||
|
||||
let mut resampler = rubato::FftFixedInOut::<f32>::new(sr_in, sr_out, 1024, 1)?;
|
||||
let mut output_buffer = resampler.output_buffer_allocate(true);
|
||||
let mut pos_in = 0;
|
||||
while pos_in + resampler.input_frames_next() < pcm_in.len() {
|
||||
let (in_len, out_len) =
|
||||
resampler.process_into_buffer(&[&pcm_in[pos_in..]], &mut output_buffer, None)?;
|
||||
pos_in += in_len;
|
||||
pcm_out.extend_from_slice(&output_buffer[0][..out_len]);
|
||||
}
|
||||
|
||||
if pos_in < pcm_in.len() {
|
||||
let (_in_len, out_len) = resampler.process_partial_into_buffer(
|
||||
Some(&[&pcm_in[pos_in..]]),
|
||||
&mut output_buffer,
|
||||
None,
|
||||
)?;
|
||||
pcm_out.extend_from_slice(&output_buffer[0][..out_len]);
|
||||
}
|
||||
|
||||
Ok(pcm_out)
|
||||
}
|
Binary file not shown.
@ -11,59 +11,7 @@ use candle_transformers::models::encodec::{Config, Model};
|
||||
use clap::{Parser, ValueEnum};
|
||||
use hf_hub::api::sync::Api;
|
||||
|
||||
fn conv<T>(samples: &mut Vec<f32>, data: std::borrow::Cow<symphonia::core::audio::AudioBuffer<T>>)
|
||||
where
|
||||
T: symphonia::core::sample::Sample,
|
||||
f32: symphonia::core::conv::FromSample<T>,
|
||||
{
|
||||
use symphonia::core::audio::Signal;
|
||||
use symphonia::core::conv::FromSample;
|
||||
samples.extend(data.chan(0).iter().map(|v| f32::from_sample(*v)))
|
||||
}
|
||||
|
||||
fn pcm_decode<P: AsRef<std::path::Path>>(path: P) -> anyhow::Result<(Vec<f32>, u32)> {
|
||||
use symphonia::core::audio::{AudioBufferRef, Signal};
|
||||
|
||||
let src = std::fs::File::open(path)?;
|
||||
let mss = symphonia::core::io::MediaSourceStream::new(Box::new(src), Default::default());
|
||||
let hint = symphonia::core::probe::Hint::new();
|
||||
let meta_opts: symphonia::core::meta::MetadataOptions = Default::default();
|
||||
let fmt_opts: symphonia::core::formats::FormatOptions = Default::default();
|
||||
let probed = symphonia::default::get_probe().format(&hint, mss, &fmt_opts, &meta_opts)?;
|
||||
let mut format = probed.format;
|
||||
let track = format
|
||||
.tracks()
|
||||
.iter()
|
||||
.find(|t| t.codec_params.codec != symphonia::core::codecs::CODEC_TYPE_NULL)
|
||||
.expect("no supported audio tracks");
|
||||
let mut decoder = symphonia::default::get_codecs()
|
||||
.make(&track.codec_params, &Default::default())
|
||||
.expect("unsupported codec");
|
||||
let track_id = track.id;
|
||||
let sample_rate = track.codec_params.sample_rate.unwrap_or(0);
|
||||
let mut pcm_data = Vec::new();
|
||||
while let Ok(packet) = format.next_packet() {
|
||||
while !format.metadata().is_latest() {
|
||||
format.metadata().pop();
|
||||
}
|
||||
if packet.track_id() != track_id {
|
||||
continue;
|
||||
}
|
||||
match decoder.decode(&packet)? {
|
||||
AudioBufferRef::F32(buf) => pcm_data.extend(buf.chan(0)),
|
||||
AudioBufferRef::U8(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U16(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U24(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::U32(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S8(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S16(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S24(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::S32(data) => conv(&mut pcm_data, data),
|
||||
AudioBufferRef::F64(data) => conv(&mut pcm_data, data),
|
||||
}
|
||||
}
|
||||
Ok((pcm_data, sample_rate))
|
||||
}
|
||||
mod audio_io;
|
||||
|
||||
#[derive(Clone, Debug, Copy, PartialEq, Eq, ValueEnum)]
|
||||
enum Action {
|
||||
@ -109,14 +57,36 @@ fn main() -> Result<()> {
|
||||
let codes = match args.action {
|
||||
Action::CodeToAudio => {
|
||||
let codes = candle::safetensors::load(args.in_file, &device)?;
|
||||
let codes = codes.get("codes").expect("no codes in input file").i(0)?;
|
||||
codes
|
||||
codes.get("codes").expect("no codes in input file").clone()
|
||||
}
|
||||
Action::AudioToCode | Action::AudioToAudio => {
|
||||
let (pcm, sample_rate) = pcm_decode(args.in_file)?;
|
||||
if sample_rate != 24_000 {
|
||||
println!("WARNING: encodec uses a 24khz sample rate, input uses {sample_rate}")
|
||||
}
|
||||
let pcm = if args.in_file == "-" {
|
||||
println!(">>>> RECORDING AUDIO, PRESS ENTER ONCE DONE <<<<");
|
||||
let (stream, input_audio) = audio_io::setup_input_stream()?;
|
||||
let mut pcms = vec![];
|
||||
let stdin = std::thread::spawn(|| {
|
||||
let mut s = String::new();
|
||||
std::io::stdin().read_line(&mut s)
|
||||
});
|
||||
while !stdin.is_finished() {
|
||||
let input = input_audio.lock().unwrap().take_all();
|
||||
if input.is_empty() {
|
||||
std::thread::sleep(std::time::Duration::from_millis(100));
|
||||
continue;
|
||||
}
|
||||
pcms.push(input)
|
||||
}
|
||||
drop(stream);
|
||||
pcms.concat()
|
||||
} else {
|
||||
let (pcm, sample_rate) = audio_io::pcm_decode(args.in_file)?;
|
||||
if sample_rate != 24_000 {
|
||||
println!("WARNING: encodec uses a 24khz sample rate, input uses {sample_rate}, resampling...");
|
||||
audio_io::resample(&pcm, sample_rate as usize, 24_000)?
|
||||
} else {
|
||||
pcm
|
||||
}
|
||||
};
|
||||
let pcm_len = pcm.len();
|
||||
let pcm = Tensor::from_vec(pcm, (1, 1, pcm_len), &device)?;
|
||||
println!("input pcm shape: {:?}", pcm.shape());
|
||||
@ -135,8 +105,26 @@ fn main() -> Result<()> {
|
||||
let pcm = pcm.i(0)?.i(0)?;
|
||||
let pcm = candle_examples::audio::normalize_loudness(&pcm, 24_000, true)?;
|
||||
let pcm = pcm.to_vec1::<f32>()?;
|
||||
let mut output = std::fs::File::create(&args.out_file)?;
|
||||
candle_examples::wav::write_pcm_as_wav(&mut output, &pcm, 24_000)?;
|
||||
if args.out_file == "-" {
|
||||
let (stream, ad) = audio_io::setup_output_stream()?;
|
||||
{
|
||||
let mut ad = ad.lock().unwrap();
|
||||
ad.push_samples(&pcm)?;
|
||||
}
|
||||
loop {
|
||||
let ad = ad.lock().unwrap();
|
||||
if ad.is_empty() {
|
||||
break;
|
||||
}
|
||||
// That's very weird, calling thread::sleep here triggers the stream to stop
|
||||
// playing (the callback doesn't seem to be called anymore).
|
||||
// std::thread::sleep(std::time::Duration::from_millis(100));
|
||||
}
|
||||
drop(stream)
|
||||
} else {
|
||||
let mut output = std::fs::File::create(&args.out_file)?;
|
||||
candle_examples::wav::write_pcm_as_wav(&mut output, &pcm, 24_000)?;
|
||||
}
|
||||
}
|
||||
}
|
||||
Ok(())
|
||||
|
21
candle-examples/examples/eva2/README.md
Normal file
21
candle-examples/examples/eva2/README.md
Normal file
@ -0,0 +1,21 @@
|
||||
# candle-eva2
|
||||
|
||||
[EVA-02](https://arxiv.org/abs/2303.11331) is a computer vision model.
|
||||
In this example, it is used as an ImageNet classifier: the model returns the
|
||||
probability for the image to belong to each of the 1000 ImageNet categories.
|
||||
|
||||
## Running some example
|
||||
|
||||
```bash
|
||||
cargo run --example eva2 --release -- --image candle-examples/examples/yolo-v8/assets/bike.jpg
|
||||
|
||||
> mountain bike, all-terrain bike, off-roader: 37.09%
|
||||
> maillot : 8.30%
|
||||
> alp : 2.13%
|
||||
> bicycle-built-for-two, tandem bicycle, tandem: 0.84%
|
||||
> crash helmet : 0.73%
|
||||
|
||||
|
||||
```
|
||||
|
||||

|
82
candle-examples/examples/eva2/main.rs
Normal file
82
candle-examples/examples/eva2/main.rs
Normal file
@ -0,0 +1,82 @@
|
||||
//! EVA-02: Explore the limits of Visual representation at scAle
|
||||
//! https://github.com/baaivision/EVA
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, Device, IndexOp, Result, Tensor, D};
|
||||
use candle_nn::{Module, VarBuilder};
|
||||
use candle_transformers::models::eva2;
|
||||
|
||||
/// Loads an image from disk using the image crate, this returns a tensor with shape
|
||||
/// (3, 448, 448). OpenAI normalization is applied.
|
||||
pub fn load_image448_openai_norm<P: AsRef<std::path::Path>>(p: P) -> Result<Tensor> {
|
||||
let img = image::ImageReader::open(p)?
|
||||
.decode()
|
||||
.map_err(candle::Error::wrap)?
|
||||
.resize_to_fill(448, 448, image::imageops::FilterType::Triangle);
|
||||
let img = img.to_rgb8();
|
||||
let data = img.into_raw();
|
||||
let data = Tensor::from_vec(data, (448, 448, 3), &Device::Cpu)?.permute((2, 0, 1))?;
|
||||
let mean =
|
||||
Tensor::new(&[0.48145466f32, 0.4578275, 0.40821073], &Device::Cpu)?.reshape((3, 1, 1))?;
|
||||
let std = Tensor::new(&[0.26862954f32, 0.261_302_6, 0.275_777_1], &Device::Cpu)?
|
||||
.reshape((3, 1, 1))?;
|
||||
(data.to_dtype(candle::DType::F32)? / 255.)?
|
||||
.broadcast_sub(&mean)?
|
||||
.broadcast_div(&std)
|
||||
}
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
image: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let image = load_image448_openai_norm(args.image)?.to_device(&device)?;
|
||||
println!("loaded image {image:?}");
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model("vincent-espitalier/candle-eva2".into());
|
||||
api.get("eva02_base_patch14_448.mim_in22k_ft_in22k_in1k_adapted.safetensors")?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], DType::F32, &device)? };
|
||||
|
||||
let model = eva2::vit_base(vb)?;
|
||||
println!("model built");
|
||||
let logits = model.forward(&image.unsqueeze(0)?)?;
|
||||
let prs = candle_nn::ops::softmax(&logits, D::Minus1)?
|
||||
.i(0)?
|
||||
.to_vec1::<f32>()?;
|
||||
let mut prs = prs.iter().enumerate().collect::<Vec<_>>();
|
||||
prs.sort_by(|(_, p1), (_, p2)| p2.total_cmp(p1));
|
||||
for &(category_idx, pr) in prs.iter().take(5) {
|
||||
println!(
|
||||
"{:24}: {:.2}%",
|
||||
candle_examples::imagenet::CLASSES[category_idx],
|
||||
100. * pr
|
||||
);
|
||||
}
|
||||
Ok(())
|
||||
}
|
20
candle-examples/examples/fastvit/README.md
Normal file
20
candle-examples/examples/fastvit/README.md
Normal file
@ -0,0 +1,20 @@
|
||||
# candle-fastvit
|
||||
|
||||
[FastViT: A Fast Hybrid Vision Transformer using Structural Reparameterization](https://arxiv.org/abs/2303.14189).
|
||||
This candle implementation uses a pre-trained FastViT network for inference. The
|
||||
classification head has been trained on the ImageNet dataset and returns the
|
||||
probabilities for the top-5 classes.
|
||||
|
||||
## Running an example
|
||||
|
||||
```
|
||||
$ cargo run --example fastvit --release -- --image candle-examples/examples/yolo-v8/assets/bike.jpg --which sa12
|
||||
|
||||
loaded image Tensor[dims 3, 256, 256; f32]
|
||||
model built
|
||||
mountain bike, all-terrain bike, off-roader: 52.67%
|
||||
bicycle-built-for-two, tandem bicycle, tandem: 7.93%
|
||||
unicycle, monocycle : 3.46%
|
||||
maillot : 1.32%
|
||||
crash helmet : 1.28%
|
||||
```
|
102
candle-examples/examples/fastvit/main.rs
Normal file
102
candle-examples/examples/fastvit/main.rs
Normal file
@ -0,0 +1,102 @@
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use clap::{Parser, ValueEnum};
|
||||
|
||||
use candle::{DType, IndexOp, D};
|
||||
use candle_nn::{Module, VarBuilder};
|
||||
use candle_transformers::models::fastvit;
|
||||
|
||||
#[derive(Clone, Copy, Debug, ValueEnum)]
|
||||
enum Which {
|
||||
T8,
|
||||
T12,
|
||||
S12,
|
||||
SA12,
|
||||
SA24,
|
||||
SA36,
|
||||
MA36,
|
||||
}
|
||||
|
||||
impl Which {
|
||||
fn model_filename(&self) -> String {
|
||||
let name = match self {
|
||||
Self::T8 => "t8",
|
||||
Self::T12 => "t12",
|
||||
Self::S12 => "s12",
|
||||
Self::SA12 => "sa12",
|
||||
Self::SA24 => "sa24",
|
||||
Self::SA36 => "sa36",
|
||||
Self::MA36 => "ma36",
|
||||
};
|
||||
format!("timm/fastvit_{}.apple_in1k", name)
|
||||
}
|
||||
|
||||
fn config(&self) -> fastvit::Config {
|
||||
match self {
|
||||
Self::T8 => fastvit::Config::t8(),
|
||||
Self::T12 => fastvit::Config::t12(),
|
||||
Self::S12 => fastvit::Config::s12(),
|
||||
Self::SA12 => fastvit::Config::sa12(),
|
||||
Self::SA24 => fastvit::Config::sa24(),
|
||||
Self::SA36 => fastvit::Config::sa36(),
|
||||
Self::MA36 => fastvit::Config::ma36(),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
image: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
#[arg(value_enum, long, default_value_t=Which::S12)]
|
||||
which: Which,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let image = candle_examples::imagenet::load_image(args.image, 256)?.to_device(&device)?;
|
||||
println!("loaded image {image:?}");
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let model_name = args.which.model_filename();
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model(model_name);
|
||||
api.get("model.safetensors")?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], DType::F32, &device)? };
|
||||
let model = fastvit::fastvit(&args.which.config(), 1000, vb)?;
|
||||
println!("model built");
|
||||
let logits = model.forward(&image.unsqueeze(0)?)?;
|
||||
let prs = candle_nn::ops::softmax(&logits, D::Minus1)?
|
||||
.i(0)?
|
||||
.to_vec1::<f32>()?;
|
||||
let mut prs = prs.iter().enumerate().collect::<Vec<_>>();
|
||||
prs.sort_by(|(_, p1), (_, p2)| p2.total_cmp(p1));
|
||||
for &(category_idx, pr) in prs.iter().take(5) {
|
||||
println!(
|
||||
"{:24}: {:.2}%",
|
||||
candle_examples::imagenet::CLASSES[category_idx],
|
||||
100. * pr
|
||||
);
|
||||
}
|
||||
Ok(())
|
||||
}
|
19
candle-examples/examples/flux/README.md
Normal file
19
candle-examples/examples/flux/README.md
Normal file
@ -0,0 +1,19 @@
|
||||
# candle-flux: image generation with latent rectified flow transformers
|
||||
|
||||

|
||||
|
||||
Flux is a 12B rectified flow transformer capable of generating images from text
|
||||
descriptions,
|
||||
[huggingface](https://huggingface.co/black-forest-labs/FLUX.1-schnell),
|
||||
[github](https://github.com/black-forest-labs/flux),
|
||||
[blog post](https://blackforestlabs.ai/announcing-black-forest-labs/).
|
||||
|
||||
|
||||
## Running the model
|
||||
|
||||
```bash
|
||||
cargo run --features cuda --example flux -r -- \
|
||||
--height 1024 --width 1024
|
||||
--prompt "a rusty robot walking on a beach holding a small torch, the robot has the word "rust" written on it, high quality, 4k"
|
||||
```
|
||||
|
BIN
candle-examples/examples/flux/assets/flux-robot.jpg
Normal file
BIN
candle-examples/examples/flux/assets/flux-robot.jpg
Normal file
Binary file not shown.
After Width: | Height: | Size: 90 KiB |
210
candle-examples/examples/flux/main.rs
Normal file
210
candle-examples/examples/flux/main.rs
Normal file
@ -0,0 +1,210 @@
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
use candle_transformers::models::{clip, flux, t5};
|
||||
|
||||
use anyhow::{Error as E, Result};
|
||||
use candle::{IndexOp, Module, Tensor};
|
||||
use candle_nn::VarBuilder;
|
||||
use clap::Parser;
|
||||
use tokenizers::Tokenizer;
|
||||
|
||||
#[derive(Parser)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// The prompt to be used for image generation.
|
||||
#[arg(long, default_value = "A rusty robot walking on a beach")]
|
||||
prompt: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// Enable tracing (generates a trace-timestamp.json file).
|
||||
#[arg(long)]
|
||||
tracing: bool,
|
||||
|
||||
/// The height in pixels of the generated image.
|
||||
#[arg(long)]
|
||||
height: Option<usize>,
|
||||
|
||||
/// The width in pixels of the generated image.
|
||||
#[arg(long)]
|
||||
width: Option<usize>,
|
||||
|
||||
#[arg(long)]
|
||||
decode_only: Option<String>,
|
||||
|
||||
#[arg(long, value_enum, default_value = "schnell")]
|
||||
model: Model,
|
||||
}
|
||||
|
||||
#[derive(Debug, Clone, Copy, clap::ValueEnum, PartialEq, Eq)]
|
||||
enum Model {
|
||||
Schnell,
|
||||
Dev,
|
||||
}
|
||||
|
||||
fn run(args: Args) -> Result<()> {
|
||||
use tracing_chrome::ChromeLayerBuilder;
|
||||
use tracing_subscriber::prelude::*;
|
||||
|
||||
let Args {
|
||||
prompt,
|
||||
cpu,
|
||||
height,
|
||||
width,
|
||||
tracing,
|
||||
decode_only,
|
||||
model,
|
||||
} = args;
|
||||
let width = width.unwrap_or(1360);
|
||||
let height = height.unwrap_or(768);
|
||||
|
||||
let _guard = if tracing {
|
||||
let (chrome_layer, guard) = ChromeLayerBuilder::new().build();
|
||||
tracing_subscriber::registry().with(chrome_layer).init();
|
||||
Some(guard)
|
||||
} else {
|
||||
None
|
||||
};
|
||||
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let bf_repo = {
|
||||
let name = match model {
|
||||
Model::Dev => "black-forest-labs/FLUX.1-dev",
|
||||
Model::Schnell => "black-forest-labs/FLUX.1-schnell",
|
||||
};
|
||||
api.repo(hf_hub::Repo::model(name.to_string()))
|
||||
};
|
||||
let device = candle_examples::device(cpu)?;
|
||||
let dtype = device.bf16_default_to_f32();
|
||||
let img = match decode_only {
|
||||
None => {
|
||||
let t5_emb = {
|
||||
let repo = api.repo(hf_hub::Repo::with_revision(
|
||||
"google/t5-v1_1-xxl".to_string(),
|
||||
hf_hub::RepoType::Model,
|
||||
"refs/pr/2".to_string(),
|
||||
));
|
||||
let model_file = repo.get("model.safetensors")?;
|
||||
let vb =
|
||||
unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], dtype, &device)? };
|
||||
let config_filename = repo.get("config.json")?;
|
||||
let config = std::fs::read_to_string(config_filename)?;
|
||||
let config: t5::Config = serde_json::from_str(&config)?;
|
||||
let mut model = t5::T5EncoderModel::load(vb, &config)?;
|
||||
let tokenizer_filename = api
|
||||
.model("lmz/mt5-tokenizers".to_string())
|
||||
.get("t5-v1_1-xxl.tokenizer.json")?;
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).map_err(E::msg)?;
|
||||
let mut tokens = tokenizer
|
||||
.encode(prompt.as_str(), true)
|
||||
.map_err(E::msg)?
|
||||
.get_ids()
|
||||
.to_vec();
|
||||
tokens.resize(256, 0);
|
||||
let input_token_ids = Tensor::new(&tokens[..], &device)?.unsqueeze(0)?;
|
||||
println!("{input_token_ids}");
|
||||
model.forward(&input_token_ids)?
|
||||
};
|
||||
println!("T5\n{t5_emb}");
|
||||
let clip_emb = {
|
||||
let repo = api.repo(hf_hub::Repo::model(
|
||||
"openai/clip-vit-large-patch14".to_string(),
|
||||
));
|
||||
let model_file = repo.get("model.safetensors")?;
|
||||
let vb =
|
||||
unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], dtype, &device)? };
|
||||
// https://huggingface.co/openai/clip-vit-large-patch14/blob/main/config.json
|
||||
let config = clip::text_model::ClipTextConfig {
|
||||
vocab_size: 49408,
|
||||
projection_dim: 768,
|
||||
activation: clip::text_model::Activation::QuickGelu,
|
||||
intermediate_size: 3072,
|
||||
embed_dim: 768,
|
||||
max_position_embeddings: 77,
|
||||
pad_with: None,
|
||||
num_hidden_layers: 12,
|
||||
num_attention_heads: 12,
|
||||
};
|
||||
let model =
|
||||
clip::text_model::ClipTextTransformer::new(vb.pp("text_model"), &config)?;
|
||||
let tokenizer_filename = repo.get("tokenizer.json")?;
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).map_err(E::msg)?;
|
||||
let tokens = tokenizer
|
||||
.encode(prompt.as_str(), true)
|
||||
.map_err(E::msg)?
|
||||
.get_ids()
|
||||
.to_vec();
|
||||
let input_token_ids = Tensor::new(&tokens[..], &device)?.unsqueeze(0)?;
|
||||
println!("{input_token_ids}");
|
||||
model.forward(&input_token_ids)?
|
||||
};
|
||||
println!("CLIP\n{clip_emb}");
|
||||
let img = {
|
||||
let model_file = match model {
|
||||
Model::Schnell => bf_repo.get("flux1-schnell.safetensors")?,
|
||||
Model::Dev => bf_repo.get("flux1-dev.safetensors")?,
|
||||
};
|
||||
let vb =
|
||||
unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], dtype, &device)? };
|
||||
let cfg = match model {
|
||||
Model::Dev => flux::model::Config::dev(),
|
||||
Model::Schnell => flux::model::Config::schnell(),
|
||||
};
|
||||
let img = flux::sampling::get_noise(1, height, width, &device)?.to_dtype(dtype)?;
|
||||
let state = flux::sampling::State::new(&t5_emb, &clip_emb, &img)?;
|
||||
let timesteps = match model {
|
||||
Model::Dev => {
|
||||
flux::sampling::get_schedule(50, Some((state.img.dim(1)?, 0.5, 1.15)))
|
||||
}
|
||||
Model::Schnell => flux::sampling::get_schedule(4, None),
|
||||
};
|
||||
let model = flux::model::Flux::new(&cfg, vb)?;
|
||||
|
||||
println!("{state:?}");
|
||||
println!("{timesteps:?}");
|
||||
flux::sampling::denoise(
|
||||
&model,
|
||||
&state.img,
|
||||
&state.img_ids,
|
||||
&state.txt,
|
||||
&state.txt_ids,
|
||||
&state.vec,
|
||||
×teps,
|
||||
4.,
|
||||
)?
|
||||
};
|
||||
flux::sampling::unpack(&img, height, width)?
|
||||
}
|
||||
Some(file) => {
|
||||
let mut st = candle::safetensors::load(file, &device)?;
|
||||
st.remove("img").unwrap().to_dtype(dtype)?
|
||||
}
|
||||
};
|
||||
println!("latent img\n{img}");
|
||||
|
||||
let img = {
|
||||
let model_file = bf_repo.get("ae.safetensors")?;
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], dtype, &device)? };
|
||||
let cfg = match model {
|
||||
Model::Dev => flux::autoencoder::Config::dev(),
|
||||
Model::Schnell => flux::autoencoder::Config::schnell(),
|
||||
};
|
||||
let model = flux::autoencoder::AutoEncoder::new(&cfg, vb)?;
|
||||
model.decode(&img)?
|
||||
};
|
||||
println!("img\n{img}");
|
||||
let img = ((img.clamp(-1f32, 1f32)? + 1.0)? * 127.5)?.to_dtype(candle::DType::U8)?;
|
||||
candle_examples::save_image(&img.i(0)?, "out.jpg")?;
|
||||
Ok(())
|
||||
}
|
||||
|
||||
fn main() -> Result<()> {
|
||||
let args = Args::parse();
|
||||
run(args)
|
||||
}
|
6
candle-examples/examples/flux/t5_tokenizer.py
Normal file
6
candle-examples/examples/flux/t5_tokenizer.py
Normal file
@ -0,0 +1,6 @@
|
||||
from transformers import AutoModelForCausalLM, AutoTokenizer
|
||||
|
||||
BASE_MODEL = "google/t5-v1_1-xxl"
|
||||
tokenizer = AutoTokenizer.from_pretrained(BASE_MODEL)
|
||||
# The tokenizer will be saved in /tmp/tokenizer/tokenizer.json
|
||||
tokenizer.save_pretrained("/tmp/tokenizer/")
|
@ -1,27 +1,27 @@
|
||||
# candle-gemma: 2b and 7b LLMs from Google DeepMind
|
||||
|
||||
[Gemma](https://ai.google.dev/gemma/docs) is a collection of lightweight open
|
||||
models published by Google Deepmind with a 2b and a 7b variant.
|
||||
|
||||
In order to use the example below, you have to accept the license on the
|
||||
[HuggingFace Hub Gemma repo](https://huggingface.co/google/gemma-7b) and set up
|
||||
your access token via the [HuggingFace cli login
|
||||
command](https://huggingface.co/docs/huggingface_hub/guides/cli#huggingface-cli-login).
|
||||
models published by Google Deepmind with a 2b and a 7b variant for the first
|
||||
version, and a 2b and a 9b variant for v2.
|
||||
|
||||
## Running the example
|
||||
|
||||
```bash
|
||||
$ cargo run --example gemma --release -- --prompt "fn count_primes(max_n: usize)"
|
||||
fn count_primes(max_n: usize) -> usize {
|
||||
let mut primes = vec![true; max_n];
|
||||
for i in 2..=max_n {
|
||||
if primes[i] {
|
||||
for j in i * i..max_n {
|
||||
primes[j] = false;
|
||||
}
|
||||
}
|
||||
}
|
||||
primes.len()
|
||||
}
|
||||
$ cargo run --example gemma --features cuda -r -- \
|
||||
--prompt "Here is a proof that square root of 2 is not rational: "
|
||||
|
||||
Here is a proof that square root of 2 is not rational:
|
||||
|
||||
Let us assume it to be rational. Then, we can write √2 = p/q where q ≠ 0 and p and q are integers with no common factors other than 1. Squaring both sides gives us (p/q)^2 = 2 or p^2/q^2 = 2. This implies that p^2 is divisible by 2, which means that p must be even. Let us write p = 2m where m is an integer. Substituting this in the above equation we get:
|
||||
|
||||
(p^2)/q^2 = 2 or (4m^2)/q^2 = 2 or q^2/2m^2 = 1 which implies that q^2 must be divisible by 2, and hence q is even. This contradicts our assumption that p and q have no common factors other than 1. Hence we conclude that √2 cannot be rational.
|
||||
```
|
||||
|
||||
## Access restrictions
|
||||
|
||||
In order to use the v1 examples, you have to accept the license on the
|
||||
[HuggingFace Hub Gemma repo](https://huggingface.co/google/gemma-7b) and set up
|
||||
your access token via the [HuggingFace cli login
|
||||
command](https://huggingface.co/docs/huggingface_hub/guides/cli#huggingface-cli-login).
|
||||
|
||||
|
||||
|
@ -7,7 +7,8 @@ extern crate accelerate_src;
|
||||
use anyhow::{Error as E, Result};
|
||||
use clap::Parser;
|
||||
|
||||
use candle_transformers::models::gemma::{Config, Model};
|
||||
use candle_transformers::models::gemma::{Config as Config1, Model as Model1};
|
||||
use candle_transformers::models::gemma2::{Config as Config2, Model as Model2};
|
||||
|
||||
use candle::{DType, Device, Tensor};
|
||||
use candle_examples::token_output_stream::TokenOutputStream;
|
||||
@ -16,6 +17,70 @@ use candle_transformers::generation::LogitsProcessor;
|
||||
use hf_hub::{api::sync::Api, Repo, RepoType};
|
||||
use tokenizers::Tokenizer;
|
||||
|
||||
#[derive(Clone, Debug, Copy, PartialEq, Eq, clap::ValueEnum)]
|
||||
enum Which {
|
||||
#[value(name = "2b")]
|
||||
Base2B,
|
||||
#[value(name = "7b")]
|
||||
Base7B,
|
||||
#[value(name = "2b-it")]
|
||||
Instruct2B,
|
||||
#[value(name = "7b-it")]
|
||||
Instruct7B,
|
||||
#[value(name = "1.1-2b-it")]
|
||||
InstructV1_1_2B,
|
||||
#[value(name = "1.1-7b-it")]
|
||||
InstructV1_1_7B,
|
||||
#[value(name = "code-2b")]
|
||||
CodeBase2B,
|
||||
#[value(name = "code-7b")]
|
||||
CodeBase7B,
|
||||
#[value(name = "code-2b-it")]
|
||||
CodeInstruct2B,
|
||||
#[value(name = "code-7b-it")]
|
||||
CodeInstruct7B,
|
||||
#[value(name = "2-2b")]
|
||||
BaseV2_2B,
|
||||
#[value(name = "2-2b-it")]
|
||||
InstructV2_2B,
|
||||
#[value(name = "2-9b")]
|
||||
BaseV2_9B,
|
||||
#[value(name = "2-9b-it")]
|
||||
InstructV2_9B,
|
||||
}
|
||||
|
||||
impl Which {
|
||||
fn is_v1(&self) -> bool {
|
||||
match self {
|
||||
Self::Base2B
|
||||
| Self::Base7B
|
||||
| Self::Instruct2B
|
||||
| Self::Instruct7B
|
||||
| Self::InstructV1_1_2B
|
||||
| Self::InstructV1_1_7B
|
||||
| Self::CodeBase2B
|
||||
| Self::CodeBase7B
|
||||
| Self::CodeInstruct2B
|
||||
| Self::CodeInstruct7B => true,
|
||||
Self::BaseV2_2B | Self::InstructV2_2B | Self::BaseV2_9B | Self::InstructV2_9B => false,
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
enum Model {
|
||||
V1(Model1),
|
||||
V2(Model2),
|
||||
}
|
||||
|
||||
impl Model {
|
||||
fn forward(&mut self, input_ids: &Tensor, pos: usize) -> candle::Result<Tensor> {
|
||||
match self {
|
||||
Self::V1(m) => m.forward(input_ids, pos),
|
||||
Self::V2(m) => m.forward(input_ids, pos),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
struct TextGeneration {
|
||||
model: Model,
|
||||
device: Device,
|
||||
@ -165,6 +230,13 @@ struct Args {
|
||||
/// The context size to consider for the repeat penalty.
|
||||
#[arg(long, default_value_t = 64)]
|
||||
repeat_last_n: usize,
|
||||
|
||||
/// The model to use.
|
||||
#[arg(long, default_value = "2-2b")]
|
||||
which: Which,
|
||||
|
||||
#[arg(long)]
|
||||
use_flash_attn: bool,
|
||||
}
|
||||
|
||||
fn main() -> Result<()> {
|
||||
@ -196,14 +268,23 @@ fn main() -> Result<()> {
|
||||
let start = std::time::Instant::now();
|
||||
let api = Api::new()?;
|
||||
let model_id = match &args.model_id {
|
||||
Some(model_id) => match model_id.as_str() {
|
||||
"7b-it" => "google/gemma-7b-it".to_string(),
|
||||
"7b" => "google/gemma-7b".to_string(),
|
||||
"2b-it" => "google/gemma-2b-it".to_string(),
|
||||
"2b" => "google/gemma-2b".to_string(),
|
||||
_ => model_id.to_string(),
|
||||
Some(model_id) => model_id.to_string(),
|
||||
None => match args.which {
|
||||
Which::InstructV1_1_2B => "google/gemma-1.1-2b-it".to_string(),
|
||||
Which::InstructV1_1_7B => "google/gemma-1.1-7b-it".to_string(),
|
||||
Which::Base2B => "google/gemma-2b".to_string(),
|
||||
Which::Base7B => "google/gemma-7b".to_string(),
|
||||
Which::Instruct2B => "google/gemma-2b-it".to_string(),
|
||||
Which::Instruct7B => "google/gemma-7b-it".to_string(),
|
||||
Which::CodeBase2B => "google/codegemma-2b".to_string(),
|
||||
Which::CodeBase7B => "google/codegemma-7b".to_string(),
|
||||
Which::CodeInstruct2B => "google/codegemma-2b-it".to_string(),
|
||||
Which::CodeInstruct7B => "google/codegemma-7b-it".to_string(),
|
||||
Which::BaseV2_2B => "google/gemma-2-2b".to_string(),
|
||||
Which::InstructV2_2B => "google/gemma-2-2b-it".to_string(),
|
||||
Which::BaseV2_9B => "google/gemma-2-9b".to_string(),
|
||||
Which::InstructV2_9B => "google/gemma-2-9b-it".to_string(),
|
||||
},
|
||||
None => "google/gemma-2b".to_string(),
|
||||
};
|
||||
let repo = api.repo(Repo::with_revision(
|
||||
model_id,
|
||||
@ -227,7 +308,6 @@ fn main() -> Result<()> {
|
||||
};
|
||||
println!("retrieved the files in {:?}", start.elapsed());
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).map_err(E::msg)?;
|
||||
let config: Config = serde_json::from_reader(std::fs::File::open(config_filename)?)?;
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
@ -237,7 +317,15 @@ fn main() -> Result<()> {
|
||||
DType::F32
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&filenames, dtype, &device)? };
|
||||
let model = Model::new(&config, vb)?;
|
||||
let model = if args.which.is_v1() {
|
||||
let config: Config1 = serde_json::from_reader(std::fs::File::open(config_filename)?)?;
|
||||
let model = Model1::new(args.use_flash_attn, &config, vb)?;
|
||||
Model::V1(model)
|
||||
} else {
|
||||
let config: Config2 = serde_json::from_reader(std::fs::File::open(config_filename)?)?;
|
||||
let model = Model2::new(args.use_flash_attn, &config, vb)?;
|
||||
Model::V2(model)
|
||||
};
|
||||
|
||||
println!("loaded the model in {:?}", start.elapsed());
|
||||
|
||||
|
77
candle-examples/examples/glm4/README.org
Normal file
77
candle-examples/examples/glm4/README.org
Normal file
@ -0,0 +1,77 @@
|
||||
* GLM4
|
||||
GLM-4-9B is the open-source version of the latest generation of pre-trained models in the GLM-4 series launched by Zhipu AI.
|
||||
|
||||
- [[https://github.com/THUDM/GLM4][Github]]
|
||||
- [[https://huggingface.co/THUDM/glm-4-9b][huggingface]]
|
||||
|
||||
** Running with ~cuda~
|
||||
|
||||
#+begin_src shell
|
||||
cargo run --example glm4 --release --features cuda
|
||||
#+end_src
|
||||
|
||||
** Running with ~cpu~
|
||||
#+begin_src shell
|
||||
cargo run --example glm4 --release -- --cpu
|
||||
#+end_src
|
||||
|
||||
** Output Example
|
||||
#+begin_src shell
|
||||
cargo run --example glm4 --release --features cuda -- --sample-len 500 --cache .
|
||||
Finished release [optimized] target(s) in 0.24s
|
||||
Running `/root/candle/target/release/examples/glm4 --sample-len 500 --cache .`
|
||||
avx: true, neon: false, simd128: false, f16c: true
|
||||
temp: 0.60 repeat-penalty: 1.20 repeat-last-n: 64
|
||||
cache path .
|
||||
retrieved the files in 6.88963ms
|
||||
loaded the model in 6.113752297s
|
||||
starting the inference loop
|
||||
[欢迎使用GLM-4,请输入prompt]
|
||||
请你告诉我什么是FFT
|
||||
266 tokens generated (34.50 token/s)
|
||||
Result:
|
||||
。Fast Fourier Transform (FFT) 是一种快速计算离散傅里叶变换(DFT)的方法,它广泛应用于信号处理、图像处理和数据分析等领域。
|
||||
|
||||
具体来说,FFT是一种将时域数据转换为频域数据的算法。在数字信号处理中,我们通常需要知道信号的频率成分,这就需要进行傅立叶变换。传统的傅立叶变换的计算复杂度较高,而 FFT 则大大提高了计算效率,使得大规模的 DFT 换成为可能。
|
||||
|
||||
以下是使用 Python 中的 numpy 进行 FFT 的简单示例:
|
||||
|
||||
```python
|
||||
import numpy as np
|
||||
|
||||
# 创建一个时域信号
|
||||
t = np.linspace(0, 1, num=100)
|
||||
f = np.sin(2*np.pi*5*t) + 3*np.cos(2*np.pi*10*t)
|
||||
|
||||
# 对该信号做FFT变换,并计算其幅值谱
|
||||
fft_result = np.fft.fftshift(np.abs(np.fft.fft(f)))
|
||||
|
||||
```
|
||||
|
||||
在这个例子中,我们首先创建了一个时域信号 f。然后我们对这个信号进行了 FFT 换,得到了一个频域结果 fft_result。
|
||||
#+end_src
|
||||
|
||||
This example will read prompt from stdin
|
||||
|
||||
* Citation
|
||||
#+begin_src
|
||||
@misc{glm2024chatglm,
|
||||
title={ChatGLM: A Family of Large Language Models from GLM-130B to GLM-4 All Tools},
|
||||
author={Team GLM and Aohan Zeng and Bin Xu and Bowen Wang and Chenhui Zhang and Da Yin and Diego Rojas and Guanyu Feng and Hanlin Zhao and Hanyu Lai and Hao Yu and Hongning Wang and Jiadai Sun and Jiajie Zhang and Jiale Cheng and Jiayi Gui and Jie Tang and Jing Zhang and Juanzi Li and Lei Zhao and Lindong Wu and Lucen Zhong and Mingdao Liu and Minlie Huang and Peng Zhang and Qinkai Zheng and Rui Lu and Shuaiqi Duan and Shudan Zhang and Shulin Cao and Shuxun Yang and Weng Lam Tam and Wenyi Zhao and Xiao Liu and Xiao Xia and Xiaohan Zhang and Xiaotao Gu and Xin Lv and Xinghan Liu and Xinyi Liu and Xinyue Yang and Xixuan Song and Xunkai Zhang and Yifan An and Yifan Xu and Yilin Niu and Yuantao Yang and Yueyan Li and Yushi Bai and Yuxiao Dong and Zehan Qi and Zhaoyu Wang and Zhen Yang and Zhengxiao Du and Zhenyu Hou and Zihan Wang},
|
||||
year={2024},
|
||||
eprint={2406.12793},
|
||||
archivePrefix={arXiv},
|
||||
primaryClass={id='cs.CL' full_name='Computation and Language' is_active=True alt_name='cmp-lg' in_archive='cs' is_general=False description='Covers natural language processing. Roughly includes material in ACM Subject Class I.2.7. Note that work on artificial languages (programming languages, logics, formal systems) that does not explicitly address natural-language issues broadly construed (natural-language processing, computational linguistics, speech, text retrieval, etc.) is not appropriate for this area.'}
|
||||
}
|
||||
#+end_src
|
||||
|
||||
#+begin_src
|
||||
@misc{wang2023cogvlm,
|
||||
title={CogVLM: Visual Expert for Pretrained Language Models},
|
||||
author={Weihan Wang and Qingsong Lv and Wenmeng Yu and Wenyi Hong and Ji Qi and Yan Wang and Junhui Ji and Zhuoyi Yang and Lei Zhao and Xixuan Song and Jiazheng Xu and Bin Xu and Juanzi Li and Yuxiao Dong and Ming Ding and Jie Tang},
|
||||
year={2023},
|
||||
eprint={2311.03079},
|
||||
archivePrefix={arXiv},
|
||||
primaryClass={cs.CV}
|
||||
}
|
||||
#+end_src
|
255
candle-examples/examples/glm4/main.rs
Normal file
255
candle-examples/examples/glm4/main.rs
Normal file
@ -0,0 +1,255 @@
|
||||
use candle_transformers::models::glm4::*;
|
||||
use clap::Parser;
|
||||
|
||||
use candle::{DType, Device, Tensor};
|
||||
use candle_nn::VarBuilder;
|
||||
use candle_transformers::generation::LogitsProcessor;
|
||||
use hf_hub::{Repo, RepoType};
|
||||
use tokenizers::Tokenizer;
|
||||
|
||||
struct TextGeneration {
|
||||
model: Model,
|
||||
device: Device,
|
||||
tokenizer: Tokenizer,
|
||||
logits_processor: LogitsProcessor,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
verbose_prompt: bool,
|
||||
dtype: DType,
|
||||
}
|
||||
|
||||
impl TextGeneration {
|
||||
#[allow(clippy::too_many_arguments)]
|
||||
fn new(
|
||||
model: Model,
|
||||
tokenizer: Tokenizer,
|
||||
seed: u64,
|
||||
temp: Option<f64>,
|
||||
top_p: Option<f64>,
|
||||
repeat_penalty: f32,
|
||||
repeat_last_n: usize,
|
||||
verbose_prompt: bool,
|
||||
device: &Device,
|
||||
dtype: DType,
|
||||
) -> Self {
|
||||
let logits_processor = LogitsProcessor::new(seed, temp, top_p);
|
||||
Self {
|
||||
model,
|
||||
tokenizer,
|
||||
logits_processor,
|
||||
repeat_penalty,
|
||||
repeat_last_n,
|
||||
verbose_prompt,
|
||||
device: device.clone(),
|
||||
dtype,
|
||||
}
|
||||
}
|
||||
|
||||
fn run(&mut self, sample_len: usize) -> anyhow::Result<()> {
|
||||
use std::io::BufRead;
|
||||
use std::io::BufReader;
|
||||
use std::io::Write;
|
||||
println!("starting the inference loop");
|
||||
println!("[欢迎使用GLM-4,请输入prompt]");
|
||||
let stdin = std::io::stdin();
|
||||
let reader = BufReader::new(stdin);
|
||||
for line in reader.lines() {
|
||||
let line = line.expect("Failed to read line");
|
||||
|
||||
let tokens = self.tokenizer.encode(line, true).expect("tokens error");
|
||||
if tokens.is_empty() {
|
||||
panic!("Empty prompts are not supported in the chatglm model.")
|
||||
}
|
||||
if self.verbose_prompt {
|
||||
for (token, id) in tokens.get_tokens().iter().zip(tokens.get_ids().iter()) {
|
||||
let token = token.replace('▁', " ").replace("<0x0A>", "\n");
|
||||
println!("{id:7} -> '{token}'");
|
||||
}
|
||||
}
|
||||
let eos_token = match self.tokenizer.get_vocab(true).get("<|endoftext|>") {
|
||||
Some(token) => *token,
|
||||
None => panic!("cannot find the endoftext token"),
|
||||
};
|
||||
let mut tokens = tokens.get_ids().to_vec();
|
||||
let mut generated_tokens = 0usize;
|
||||
|
||||
std::io::stdout().flush().expect("output flush error");
|
||||
let start_gen = std::time::Instant::now();
|
||||
|
||||
let mut count = 0;
|
||||
let mut result = vec![];
|
||||
for index in 0..sample_len {
|
||||
count += 1;
|
||||
let context_size = if index > 0 { 1 } else { tokens.len() };
|
||||
let ctxt = &tokens[tokens.len().saturating_sub(context_size)..];
|
||||
let input = Tensor::new(ctxt, &self.device)?.unsqueeze(0)?;
|
||||
let logits = self.model.forward(&input)?;
|
||||
let logits = logits.squeeze(0)?.to_dtype(self.dtype)?;
|
||||
let logits = if self.repeat_penalty == 1. {
|
||||
logits
|
||||
} else {
|
||||
let start_at = tokens.len().saturating_sub(self.repeat_last_n);
|
||||
candle_transformers::utils::apply_repeat_penalty(
|
||||
&logits,
|
||||
self.repeat_penalty,
|
||||
&tokens[start_at..],
|
||||
)?
|
||||
};
|
||||
|
||||
let next_token = self.logits_processor.sample(&logits)?;
|
||||
tokens.push(next_token);
|
||||
generated_tokens += 1;
|
||||
if next_token == eos_token {
|
||||
break;
|
||||
}
|
||||
let token = self
|
||||
.tokenizer
|
||||
.decode(&[next_token], true)
|
||||
.expect("Token error");
|
||||
if self.verbose_prompt {
|
||||
println!(
|
||||
"[Count: {}] [Raw Token: {}] [Decode Token: {}]",
|
||||
count, next_token, token
|
||||
);
|
||||
}
|
||||
result.push(token);
|
||||
std::io::stdout().flush()?;
|
||||
}
|
||||
let dt = start_gen.elapsed();
|
||||
println!(
|
||||
"\n{generated_tokens} tokens generated ({:.2} token/s)",
|
||||
generated_tokens as f64 / dt.as_secs_f64(),
|
||||
);
|
||||
println!("Result:");
|
||||
for tokens in result {
|
||||
print!("{tokens}");
|
||||
}
|
||||
self.model.reset_kv_cache(); // clean the cache
|
||||
}
|
||||
Ok(())
|
||||
}
|
||||
}
|
||||
#[derive(Parser, Debug)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(name = "cache", short, long, default_value = ".")]
|
||||
cache_path: String,
|
||||
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// Display the token for the specified prompt.
|
||||
#[arg(long)]
|
||||
verbose_prompt: bool,
|
||||
|
||||
/// The temperature used to generate samples.
|
||||
#[arg(long)]
|
||||
temperature: Option<f64>,
|
||||
|
||||
/// Nucleus sampling probability cutoff.
|
||||
#[arg(long)]
|
||||
top_p: Option<f64>,
|
||||
|
||||
/// The seed to use when generating random samples.
|
||||
#[arg(long, default_value_t = 299792458)]
|
||||
seed: u64,
|
||||
|
||||
/// The length of the sample to generate (in tokens).
|
||||
#[arg(long, short = 'n', default_value_t = 8192)]
|
||||
sample_len: usize,
|
||||
|
||||
#[arg(long)]
|
||||
model_id: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
revision: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
weight_file: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
tokenizer: Option<String>,
|
||||
|
||||
/// Penalty to be applied for repeating tokens, 1. means no penalty.
|
||||
#[arg(long, default_value_t = 1.2)]
|
||||
repeat_penalty: f32,
|
||||
|
||||
/// The context size to consider for the repeat penalty.
|
||||
#[arg(long, default_value_t = 64)]
|
||||
repeat_last_n: usize,
|
||||
}
|
||||
|
||||
fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
println!(
|
||||
"avx: {}, neon: {}, simd128: {}, f16c: {}",
|
||||
candle::utils::with_avx(),
|
||||
candle::utils::with_neon(),
|
||||
candle::utils::with_simd128(),
|
||||
candle::utils::with_f16c()
|
||||
);
|
||||
println!(
|
||||
"temp: {:.2} repeat-penalty: {:.2} repeat-last-n: {}",
|
||||
args.temperature.unwrap_or(0.6),
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n
|
||||
);
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
println!("cache path {}", args.cache_path);
|
||||
let api = hf_hub::api::sync::ApiBuilder::from_cache(hf_hub::Cache::new(args.cache_path.into()))
|
||||
.build()
|
||||
.map_err(anyhow::Error::msg)?;
|
||||
|
||||
let model_id = match args.model_id {
|
||||
Some(model_id) => model_id.to_string(),
|
||||
None => "THUDM/glm-4-9b".to_string(),
|
||||
};
|
||||
let revision = match args.revision {
|
||||
Some(rev) => rev.to_string(),
|
||||
None => "main".to_string(),
|
||||
};
|
||||
let repo = api.repo(Repo::with_revision(model_id, RepoType::Model, revision));
|
||||
let tokenizer_filename = match args.tokenizer {
|
||||
Some(file) => std::path::PathBuf::from(file),
|
||||
None => api
|
||||
.model("THUDM/codegeex4-all-9b".to_string())
|
||||
.get("tokenizer.json")
|
||||
.map_err(anyhow::Error::msg)?,
|
||||
};
|
||||
let filenames = match args.weight_file {
|
||||
Some(weight_file) => vec![std::path::PathBuf::from(weight_file)],
|
||||
None => candle_examples::hub_load_safetensors(&repo, "model.safetensors.index.json")?,
|
||||
};
|
||||
println!("retrieved the files in {:?}", start.elapsed());
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).expect("Tokenizer Error");
|
||||
|
||||
let start = std::time::Instant::now();
|
||||
let config = Config::glm4();
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
let dtype = if device.is_cuda() {
|
||||
DType::BF16
|
||||
} else {
|
||||
DType::F32
|
||||
};
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&filenames, dtype, &device)? };
|
||||
let model = Model::new(&config, vb)?;
|
||||
|
||||
println!("loaded the model in {:?}", start.elapsed());
|
||||
|
||||
let mut pipeline = TextGeneration::new(
|
||||
model,
|
||||
tokenizer,
|
||||
args.seed,
|
||||
args.temperature,
|
||||
args.top_p,
|
||||
args.repeat_penalty,
|
||||
args.repeat_last_n,
|
||||
args.verbose_prompt,
|
||||
&device,
|
||||
dtype,
|
||||
);
|
||||
pipeline.run(args.sample_len)?;
|
||||
Ok(())
|
||||
}
|
20
candle-examples/examples/granite/README.md
Normal file
20
candle-examples/examples/granite/README.md
Normal file
@ -0,0 +1,20 @@
|
||||
# candle-granite LLMs from IBM Research
|
||||
|
||||
[Granite](https://www.ibm.com/granite) is a family of Large Language Models built for business, to help drive trust and scalability in AI-driven applications.
|
||||
|
||||
## Running the example
|
||||
|
||||
```bash
|
||||
$ cargo run --example granite --features metal -r -- --model-type "granite7b-instruct" \
|
||||
--prompt "Explain how quantum computing differs from classical computing, focusing on key concepts like qubits, superposition, and entanglement. Describe two potential breakthroughs in the fields of drug discovery and cryptography. Offer a convincing argument for why businesses and governments should invest in quantum computing research now, emphasizing its future benefits and the risks of falling behind"
|
||||
|
||||
Explain how quantum computing differs from classical computing, focusing on key concepts like qubits, superposition, and entanglement. Describe two potential breakthroughs in the fields of drug discovery and cryptography. Offer a convincing argument for why businesses and governments should invest in quantum computing research now, emphasizing its future benefits and the risks of falling behind competitors.
|
||||
|
||||
In recent years, there has been significant interest in quantum computing due to its potential to revolutionize various fields, including drug discovery, cryptography, and optimization problems. Quantum computers, which leverage the principles of quantum mechanics, differ fundamentally from classical computers. Here are some of the key differences:
|
||||
```
|
||||
|
||||
## Supported Models
|
||||
There are two different modalities for the Granite family models: Language and Code.
|
||||
|
||||
### Granite for language
|
||||
1. [Granite 7b Instruct](https://huggingface.co/ibm-granite/granite-7b-instruct)
|
251
candle-examples/examples/granite/main.rs
Normal file
251
candle-examples/examples/granite/main.rs
Normal file
@ -0,0 +1,251 @@
|
||||
// An implementation of different Granite models https://www.ibm.com/granite
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
use anyhow::{bail, Error as E, Result};
|
||||
use clap::{Parser, ValueEnum};
|
||||
|
||||
use candle::{DType, Tensor};
|
||||
use candle_nn::VarBuilder;
|
||||
use candle_transformers::generation::{LogitsProcessor, Sampling};
|
||||
use hf_hub::{api::sync::Api, Repo, RepoType};
|
||||
use std::io::Write;
|
||||
|
||||
use candle_transformers::models::granite as model;
|
||||
use model::{Granite, GraniteConfig};
|
||||
|
||||
use std::time::Instant;
|
||||
|
||||
const EOS_TOKEN: &str = "</s>";
|
||||
const DEFAULT_PROMPT: &str = "How Fault Tolerant Quantum Computers will help humanity?";
|
||||
|
||||
#[derive(Clone, Debug, Copy, PartialEq, Eq, ValueEnum)]
|
||||
enum GraniteModel {
|
||||
Granite7bInstruct,
|
||||
}
|
||||
|
||||
#[derive(Parser, Debug)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// The temperature used to generate samples.
|
||||
#[arg(long, default_value_t = 0.8)]
|
||||
temperature: f64,
|
||||
|
||||
/// Nucleus sampling probability cutoff.
|
||||
#[arg(long)]
|
||||
top_p: Option<f64>,
|
||||
|
||||
/// Only sample among the top K samples.
|
||||
#[arg(long)]
|
||||
top_k: Option<usize>,
|
||||
|
||||
/// The seed to use when generating random samples.
|
||||
#[arg(long, default_value_t = 299792458)]
|
||||
seed: u64,
|
||||
|
||||
/// The length of the sample to generate (in tokens).
|
||||
#[arg(short = 'n', long, default_value_t = 10000)]
|
||||
sample_len: usize,
|
||||
|
||||
/// Disable the key-value cache.
|
||||
#[arg(long)]
|
||||
no_kv_cache: bool,
|
||||
|
||||
/// The initial prompt.
|
||||
#[arg(long)]
|
||||
prompt: Option<String>,
|
||||
|
||||
/// Use different dtype than f16
|
||||
#[arg(long)]
|
||||
dtype: Option<String>,
|
||||
|
||||
/// Enable tracing (generates a trace-timestamp.json file).
|
||||
#[arg(long)]
|
||||
tracing: bool,
|
||||
|
||||
#[arg(long)]
|
||||
model_id: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
revision: Option<String>,
|
||||
|
||||
#[arg(long, default_value = "granite7b-instruct")]
|
||||
model_type: GraniteModel,
|
||||
|
||||
#[arg(long)]
|
||||
use_flash_attn: bool,
|
||||
|
||||
/// Penalty to be applied for repeating tokens, 1. means no penalty.
|
||||
#[arg(long, default_value_t = 1.1)]
|
||||
repeat_penalty: f32,
|
||||
|
||||
/// The context size to consider for the repeat penalty.
|
||||
#[arg(long, default_value_t = 128)]
|
||||
repeat_last_n: usize,
|
||||
}
|
||||
|
||||
fn main() -> Result<()> {
|
||||
use tokenizers::Tokenizer;
|
||||
use tracing_chrome::ChromeLayerBuilder;
|
||||
use tracing_subscriber::prelude::*;
|
||||
|
||||
let args = Args::parse();
|
||||
let _guard = if args.tracing {
|
||||
let (chrome_layer, guard) = ChromeLayerBuilder::new().build();
|
||||
tracing_subscriber::registry().with(chrome_layer).init();
|
||||
Some(guard)
|
||||
} else {
|
||||
None
|
||||
};
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
let dtype = match args.dtype.as_deref() {
|
||||
Some("f16") => DType::F16,
|
||||
Some("bf16") => DType::BF16,
|
||||
Some("f32") => DType::F32,
|
||||
Some(dtype) => bail!("Unsupported dtype {dtype}"),
|
||||
None => DType::F16,
|
||||
};
|
||||
let (granite, tokenizer_filename, mut cache, config) = {
|
||||
let api = Api::new()?;
|
||||
let model_id = args.model_id.unwrap_or_else(|| match args.model_type {
|
||||
GraniteModel::Granite7bInstruct => "ibm-granite/granite-7b-instruct".to_string(),
|
||||
});
|
||||
println!("loading the model weights from {model_id}");
|
||||
let revision = args.revision.unwrap_or("main".to_string());
|
||||
let api = api.repo(Repo::with_revision(model_id, RepoType::Model, revision));
|
||||
|
||||
let tokenizer_filename = api.get("tokenizer.json")?;
|
||||
let config_filename = api.get("config.json")?;
|
||||
let config: GraniteConfig = serde_json::from_slice(&std::fs::read(config_filename)?)?;
|
||||
let config = config.into_config(args.use_flash_attn);
|
||||
|
||||
let filenames = match args.model_type {
|
||||
GraniteModel::Granite7bInstruct => {
|
||||
candle_examples::hub_load_safetensors(&api, "model.safetensors.index.json")?
|
||||
}
|
||||
};
|
||||
let cache = model::Cache::new(!args.no_kv_cache, dtype, &config, &device)?;
|
||||
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&filenames, dtype, &device)? };
|
||||
(
|
||||
Granite::load(vb, &config)?,
|
||||
tokenizer_filename,
|
||||
cache,
|
||||
config,
|
||||
)
|
||||
};
|
||||
let tokenizer = Tokenizer::from_file(tokenizer_filename).map_err(E::msg)?;
|
||||
let eos_token_id = config.eos_token_id.or_else(|| {
|
||||
tokenizer
|
||||
.token_to_id(EOS_TOKEN)
|
||||
.map(model::GraniteEosToks::Single)
|
||||
});
|
||||
|
||||
let default_prompt = match args.model_type {
|
||||
GraniteModel::Granite7bInstruct => DEFAULT_PROMPT,
|
||||
};
|
||||
|
||||
let prompt = args.prompt.as_ref().map_or(default_prompt, |p| p.as_str());
|
||||
let mut tokens = tokenizer
|
||||
.encode(prompt, true)
|
||||
.map_err(E::msg)?
|
||||
.get_ids()
|
||||
.to_vec();
|
||||
let mut tokenizer = candle_examples::token_output_stream::TokenOutputStream::new(tokenizer);
|
||||
|
||||
println!("Starting the inference loop:");
|
||||
print!("{prompt}");
|
||||
let mut logits_processor = {
|
||||
let temperature = args.temperature;
|
||||
let sampling = if temperature <= 0. {
|
||||
Sampling::ArgMax
|
||||
} else {
|
||||
match (args.top_k, args.top_p) {
|
||||
(None, None) => Sampling::All { temperature },
|
||||
(Some(k), None) => Sampling::TopK { k, temperature },
|
||||
(None, Some(p)) => Sampling::TopP { p, temperature },
|
||||
(Some(k), Some(p)) => Sampling::TopKThenTopP { k, p, temperature },
|
||||
}
|
||||
};
|
||||
LogitsProcessor::from_sampling(args.seed, sampling)
|
||||
};
|
||||
|
||||
let mut start_gen = std::time::Instant::now();
|
||||
let mut index_pos = 0;
|
||||
let mut token_generated = 0;
|
||||
let use_cache_kv = cache.use_kv_cache;
|
||||
|
||||
(0..args.sample_len)
|
||||
.inspect(|index| {
|
||||
if *index == 1 {
|
||||
start_gen = Instant::now();
|
||||
}
|
||||
})
|
||||
.try_for_each(|index| -> Result<()> {
|
||||
let (context_size, context_index) = if use_cache_kv && index > 0 {
|
||||
(1, index_pos)
|
||||
} else {
|
||||
(tokens.len(), 0)
|
||||
};
|
||||
let ctxt = &tokens[tokens.len().saturating_sub(context_size)..];
|
||||
let input = Tensor::new(ctxt, &device)?.unsqueeze(0)?;
|
||||
let logits = granite
|
||||
.forward(&input, context_index, &mut cache)?
|
||||
.squeeze(0)?;
|
||||
|
||||
let logits = if args.repeat_penalty == 1. {
|
||||
logits
|
||||
} else {
|
||||
let start_at = tokens.len().saturating_sub(args.repeat_last_n);
|
||||
candle_transformers::utils::apply_repeat_penalty(
|
||||
&logits,
|
||||
args.repeat_penalty,
|
||||
&tokens[start_at..],
|
||||
)?
|
||||
};
|
||||
|
||||
index_pos += ctxt.len();
|
||||
|
||||
let next_token = logits_processor.sample(&logits)?;
|
||||
token_generated += 1;
|
||||
tokens.push(next_token);
|
||||
|
||||
if let Some(model::GraniteEosToks::Single(eos_tok_id)) = eos_token_id {
|
||||
if next_token == eos_tok_id {
|
||||
return Err(E::msg("EOS token found"));
|
||||
}
|
||||
} else if let Some(model::GraniteEosToks::Multiple(ref eos_ids)) = eos_token_id {
|
||||
if eos_ids.contains(&next_token) {
|
||||
return Err(E::msg("EOS token found"));
|
||||
}
|
||||
}
|
||||
|
||||
if let Some(t) = tokenizer.next_token(next_token)? {
|
||||
print!("{t}");
|
||||
std::io::stdout().flush()?;
|
||||
}
|
||||
Ok(())
|
||||
})
|
||||
.unwrap_or(());
|
||||
|
||||
if let Some(rest) = tokenizer.decode_rest().map_err(E::msg)? {
|
||||
print!("{rest}");
|
||||
}
|
||||
|
||||
let dt = start_gen.elapsed();
|
||||
println!(
|
||||
"\n\n{} tokens generated ({} token/s)\n",
|
||||
token_generated,
|
||||
(token_generated - 1) as f64 / dt.as_secs_f64(),
|
||||
);
|
||||
Ok(())
|
||||
}
|
19
candle-examples/examples/gte-qwen/README.md
Normal file
19
candle-examples/examples/gte-qwen/README.md
Normal file
@ -0,0 +1,19 @@
|
||||
# gte-Qwen1.5-7B-instruct
|
||||
|
||||
gte-Qwen1.5-7B-instruct is a variant of the GTE embedding model family.
|
||||
|
||||
- [Model card](https://huggingface.co/Alibaba-NLP/gte-Qwen1.5-7B-instruct) on the HuggingFace Hub.
|
||||
- [Technical report](https://arxiv.org/abs/2308.03281) *Towards General Text Embeddings with Multi-stage Contrastive Learning*
|
||||
|
||||
|
||||
## Running the example
|
||||
|
||||
Automatically download the model from the HuggingFace hub:
|
||||
```bash
|
||||
$ cargo run --example gte-qwen --release
|
||||
```
|
||||
|
||||
or, load the model from a local directory:
|
||||
```bash
|
||||
cargo run --example gte-qwen --release --features cuda -- --local-repo /path/to/gte_Qwen1.5-7B-instruct/
|
||||
```
|
178
candle-examples/examples/gte-qwen/main.rs
Normal file
178
candle-examples/examples/gte-qwen/main.rs
Normal file
@ -0,0 +1,178 @@
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use anyhow::{Error as E, Result};
|
||||
use clap::Parser;
|
||||
|
||||
use candle_transformers::models::qwen2::{Config, Model};
|
||||
|
||||
use candle::{DType, Tensor};
|
||||
use candle_nn::VarBuilder;
|
||||
use hf_hub::{api::sync::Api, Repo, RepoType};
|
||||
use tokenizers::{
|
||||
utils::padding::{PaddingDirection, PaddingParams, PaddingStrategy},
|
||||
Tokenizer,
|
||||
};
|
||||
|
||||
// gte-Qwen1.5-7B-instruct use EOS token as padding token
|
||||
const EOS_TOKEN: &str = "<|endoftext|>";
|
||||
const EOS_TOKEN_ID: u32 = 151643;
|
||||
|
||||
#[derive(Parser, Debug)]
|
||||
#[command(author, version, about, long_about = None)]
|
||||
struct Args {
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
/// Enable tracing (generates a trace-timestamp.json file).
|
||||
#[arg(long)]
|
||||
tracing: bool,
|
||||
|
||||
#[arg(long, default_value = "Alibaba-NLP/gte-Qwen1.5-7B-instruct")]
|
||||
model_id: String,
|
||||
|
||||
#[arg(long, default_value = "main")]
|
||||
revision: String,
|
||||
|
||||
#[arg(long)]
|
||||
local_repo: Option<String>,
|
||||
}
|
||||
|
||||
#[derive(Debug)]
|
||||
struct ConfigFiles {
|
||||
pub config: std::path::PathBuf,
|
||||
pub tokenizer: std::path::PathBuf,
|
||||
pub weights: Vec<std::path::PathBuf>,
|
||||
}
|
||||
|
||||
// Loading the model from the HuggingFace Hub. Network access is required.
|
||||
fn load_from_hub(model_id: &str, revision: &str) -> Result<ConfigFiles> {
|
||||
let api = Api::new()?;
|
||||
let repo = api.repo(Repo::with_revision(
|
||||
model_id.to_string(),
|
||||
RepoType::Model,
|
||||
revision.to_string(),
|
||||
));
|
||||
Ok(ConfigFiles {
|
||||
config: repo.get("config.json")?,
|
||||
tokenizer: repo.get("tokenizer.json")?,
|
||||
weights: candle_examples::hub_load_safetensors(&repo, "model.safetensors.index.json")?,
|
||||
})
|
||||
}
|
||||
|
||||
// Loading the model from a local directory.
|
||||
fn load_from_local(local_path: &str) -> Result<ConfigFiles> {
|
||||
let local_path = std::path::PathBuf::from(local_path);
|
||||
let weight_path = local_path.join("model.safetensors.index.json");
|
||||
let json: serde_json::Value = serde_json::from_str(&std::fs::read_to_string(weight_path)?)?;
|
||||
let weight_map = match json.get("weight_map") {
|
||||
Some(serde_json::Value::Object(map)) => map,
|
||||
Some(_) => panic!("`weight map` is not a map"),
|
||||
None => panic!("`weight map` not found"),
|
||||
};
|
||||
let mut safetensors_files = std::collections::HashSet::new();
|
||||
for value in weight_map.values() {
|
||||
safetensors_files.insert(
|
||||
value
|
||||
.as_str()
|
||||
.expect("Weight files should be parsed as strings"),
|
||||
);
|
||||
}
|
||||
let safetensors_paths = safetensors_files
|
||||
.iter()
|
||||
.map(|v| local_path.join(v))
|
||||
.collect::<Vec<_>>();
|
||||
Ok(ConfigFiles {
|
||||
config: local_path.join("config.json"),
|
||||
tokenizer: local_path.join("tokenizer.json"),
|
||||
weights: safetensors_paths,
|
||||
})
|
||||
}
|
||||
|
||||
fn main() -> Result<()> {
|
||||
use tracing_chrome::ChromeLayerBuilder;
|
||||
use tracing_subscriber::prelude::*;
|
||||
|
||||
let args = Args::parse();
|
||||
let _guard = if args.tracing {
|
||||
let (chrome_layer, guard) = ChromeLayerBuilder::new().build();
|
||||
tracing_subscriber::registry().with(chrome_layer).init();
|
||||
Some(guard)
|
||||
} else {
|
||||
None
|
||||
};
|
||||
|
||||
// Fetch the model. Do this offline if local path provided.
|
||||
println!("Fetching model files...");
|
||||
let start = std::time::Instant::now();
|
||||
let config_files = match args.local_repo {
|
||||
Some(local_path) => load_from_local(&local_path)?,
|
||||
None => load_from_hub(&args.model_id, &args.revision)?,
|
||||
};
|
||||
println!("Model file retrieved in {:?}", start.elapsed());
|
||||
|
||||
// Inputs will be padded to the longest sequence in the batch.
|
||||
let padding = PaddingParams {
|
||||
strategy: PaddingStrategy::BatchLongest,
|
||||
direction: PaddingDirection::Left,
|
||||
pad_to_multiple_of: None,
|
||||
pad_id: EOS_TOKEN_ID,
|
||||
pad_type_id: 0,
|
||||
pad_token: String::from(EOS_TOKEN),
|
||||
};
|
||||
|
||||
// Tokenizer setup
|
||||
let mut tokenizer = Tokenizer::from_file(config_files.tokenizer).map_err(E::msg)?;
|
||||
tokenizer.with_padding(Some(padding));
|
||||
|
||||
// Model initialization
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
let dtype = if device.is_cuda() {
|
||||
DType::BF16
|
||||
} else {
|
||||
DType::F32
|
||||
};
|
||||
let config: Config = serde_json::from_slice(&std::fs::read(config_files.config)?)?;
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&config_files.weights, dtype, &device)? };
|
||||
let mut model = Model::new(&config, vb)?;
|
||||
println!("Model loaded in {:?}", start.elapsed());
|
||||
|
||||
// Encode the queries and the targets
|
||||
let instruct = "Instruct: Given a web search query, retrieve relevant passages that answer the query\nQuery: ";
|
||||
let documents = vec![
|
||||
format!("{instruct}how much protein should a female eat{EOS_TOKEN}"),
|
||||
format!("{instruct}summit define{EOS_TOKEN}"),
|
||||
format!("As a general guideline, the CDC's average requirement of protein for women ages 19 to 70 is 46 grams per day. But, as you can see from this chart, you'll need to increase that if you're expecting or training for a marathon. Check out the chart below to see how much protein you should be eating each day.{EOS_TOKEN}"),
|
||||
format!("Definition of summit for English Language Learners. : 1 the highest point of a mountain : the top of a mountain. : 2 the highest level. : 3 a meeting or series of meetings between the leaders of two or more governments.{EOS_TOKEN}"),
|
||||
];
|
||||
let encoded = tokenizer.encode_batch(documents, true).map_err(E::msg)?;
|
||||
let tokens: Vec<&[u32]> = encoded.iter().map(|x| x.get_ids()).collect();
|
||||
let tokens = Tensor::new(tokens, &device)?;
|
||||
let mask: Vec<&[u32]> = encoded.iter().map(|x| x.get_attention_mask()).collect();
|
||||
let mask = Tensor::new(mask, &device)?;
|
||||
|
||||
// Inference
|
||||
let start_gen = std::time::Instant::now();
|
||||
let logits = model.forward(&tokens, 0, Some(&mask))?;
|
||||
|
||||
// Extract the last hidden states as embeddings since inputs are padded left.
|
||||
let (_, seq_len, _) = logits.dims3()?;
|
||||
let embd = logits
|
||||
.narrow(1, seq_len - 1, 1)?
|
||||
.squeeze(1)?
|
||||
.to_dtype(DType::F32)?;
|
||||
|
||||
// Calculate the relativity scores. Note the embeddings should be normalized.
|
||||
let norm = embd.broadcast_div(&embd.sqr()?.sum_keepdim(1)?.sqrt()?)?;
|
||||
let scores = norm.narrow(0, 0, 2)?.matmul(&norm.narrow(0, 2, 2)?.t()?)?;
|
||||
|
||||
// Print the results
|
||||
println!("Embedding done in {:?}", start_gen.elapsed());
|
||||
println!("Scores: {:?}", scores.to_vec2::<f32>()?);
|
||||
|
||||
Ok(())
|
||||
}
|
18
candle-examples/examples/hiera/README.md
Normal file
18
candle-examples/examples/hiera/README.md
Normal file
@ -0,0 +1,18 @@
|
||||
# hiera
|
||||
|
||||
[Hiera: A Hierarchical Vision Transformer without the Bells-and-Whistles](https://arxiv.org/abs/2306.00989)
|
||||
This candle implementation uses pre-trained Hiera models from timm for inference.
|
||||
The classification head has been trained on the ImageNet dataset and returns the probabilities for the top-5 classes.
|
||||
|
||||
## Running an example
|
||||
|
||||
```
|
||||
$ cargo run --example hiera --release -- --image candle-examples/examples/yolo-v8/assets/bike.jpg --which tiny
|
||||
loaded image Tensor[dims 3, 224, 224; f32]
|
||||
model built
|
||||
mountain bike, all-terrain bike, off-roader: 71.15%
|
||||
unicycle, monocycle : 7.11%
|
||||
knee pad : 4.26%
|
||||
crash helmet : 1.48%
|
||||
moped : 1.07%
|
||||
```
|
99
candle-examples/examples/hiera/main.rs
Normal file
99
candle-examples/examples/hiera/main.rs
Normal file
@ -0,0 +1,99 @@
|
||||
#[cfg(feature = "mkl")]
|
||||
extern crate intel_mkl_src;
|
||||
|
||||
#[cfg(feature = "accelerate")]
|
||||
extern crate accelerate_src;
|
||||
|
||||
use clap::{Parser, ValueEnum};
|
||||
|
||||
use candle::{DType, IndexOp, D};
|
||||
use candle_nn::{Module, VarBuilder};
|
||||
use candle_transformers::models::hiera;
|
||||
|
||||
#[derive(Clone, Copy, Debug, ValueEnum)]
|
||||
enum Which {
|
||||
Tiny,
|
||||
Small,
|
||||
Base,
|
||||
BasePlus,
|
||||
Large,
|
||||
Huge,
|
||||
}
|
||||
|
||||
impl Which {
|
||||
fn model_filename(&self) -> String {
|
||||
let name = match self {
|
||||
Self::Tiny => "tiny",
|
||||
Self::Small => "small",
|
||||
Self::Base => "base",
|
||||
Self::BasePlus => "base_plus",
|
||||
Self::Large => "large",
|
||||
Self::Huge => "huge",
|
||||
};
|
||||
format!("timm/hiera_{}_224.mae_in1k_ft_in1k", name)
|
||||
}
|
||||
|
||||
fn config(&self) -> hiera::Config {
|
||||
match self {
|
||||
Self::Tiny => hiera::Config::tiny(),
|
||||
Self::Small => hiera::Config::small(),
|
||||
Self::Base => hiera::Config::base(),
|
||||
Self::BasePlus => hiera::Config::base_plus(),
|
||||
Self::Large => hiera::Config::large(),
|
||||
Self::Huge => hiera::Config::huge(),
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
#[derive(Parser)]
|
||||
struct Args {
|
||||
#[arg(long)]
|
||||
model: Option<String>,
|
||||
|
||||
#[arg(long)]
|
||||
image: String,
|
||||
|
||||
/// Run on CPU rather than on GPU.
|
||||
#[arg(long)]
|
||||
cpu: bool,
|
||||
|
||||
#[arg(value_enum, long, default_value_t=Which::Tiny)]
|
||||
which: Which,
|
||||
}
|
||||
|
||||
pub fn main() -> anyhow::Result<()> {
|
||||
let args = Args::parse();
|
||||
|
||||
let device = candle_examples::device(args.cpu)?;
|
||||
|
||||
let image = candle_examples::imagenet::load_image224(args.image)?.to_device(&device)?;
|
||||
println!("loaded image {image:?}");
|
||||
|
||||
let model_file = match args.model {
|
||||
None => {
|
||||
let model_name = args.which.model_filename();
|
||||
let api = hf_hub::api::sync::Api::new()?;
|
||||
let api = api.model(model_name);
|
||||
api.get("model.safetensors")?
|
||||
}
|
||||
Some(model) => model.into(),
|
||||
};
|
||||
|
||||
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&[model_file], DType::F32, &device)? };
|
||||
let model = hiera::hiera(&args.which.config(), 1000, vb)?;
|
||||
println!("model built");
|
||||
let logits = model.forward(&image.unsqueeze(0)?)?;
|
||||
let prs = candle_nn::ops::softmax(&logits, D::Minus1)?
|
||||
.i(0)?
|
||||
.to_vec1::<f32>()?;
|
||||
let mut prs = prs.iter().enumerate().collect::<Vec<_>>();
|
||||
prs.sort_by(|(_, p1), (_, p2)| p2.total_cmp(p1));
|
||||
for &(category_idx, pr) in prs.iter().take(5) {
|
||||
println!(
|
||||
"{:24}: {:.2}%",
|
||||
candle_examples::imagenet::CLASSES[category_idx],
|
||||
100. * pr
|
||||
);
|
||||
}
|
||||
Ok(())
|
||||
}
|
Some files were not shown because too many files have changed in this diff Show More
Reference in New Issue
Block a user