Files
candle/candle-examples/examples/stable-diffusion/stable_diffusion.rs
Laurent Mazare 33c23c19b6 Preliminary support for SDXL. (#647)
* Preliminary support for SDXL.

* More SDXL support.

* More SDXL.

* Use the proper clip config.

* Querying for existing tensors.

* More robust test.
2023-08-29 09:00:04 +01:00

290 lines
9.0 KiB
Rust

use crate::schedulers::PredictionType;
use crate::{clip, ddim, unet_2d, vae};
use candle::{DType, Device, Result};
use candle_nn as nn;
#[derive(Clone, Debug)]
pub struct StableDiffusionConfig {
pub width: usize,
pub height: usize,
pub clip: clip::Config,
pub clip2: Option<clip::Config>,
autoencoder: vae::AutoEncoderKLConfig,
unet: unet_2d::UNet2DConditionModelConfig,
scheduler: ddim::DDIMSchedulerConfig,
}
impl StableDiffusionConfig {
pub fn v1_5(
sliced_attention_size: Option<usize>,
height: Option<usize>,
width: Option<usize>,
) -> Self {
let bc = |out_channels, use_cross_attn, attention_head_dim| unet_2d::BlockConfig {
out_channels,
use_cross_attn,
attention_head_dim,
};
// https://huggingface.co/runwayml/stable-diffusion-v1-5/blob/main/unet/config.json
let unet = unet_2d::UNet2DConditionModelConfig {
blocks: vec![
bc(320, true, 8),
bc(640, true, 8),
bc(1280, true, 8),
bc(1280, false, 8),
],
center_input_sample: false,
cross_attention_dim: 768,
downsample_padding: 1,
flip_sin_to_cos: true,
freq_shift: 0.,
layers_per_block: 2,
mid_block_scale_factor: 1.,
norm_eps: 1e-5,
norm_num_groups: 32,
sliced_attention_size,
use_linear_projection: false,
};
let autoencoder = vae::AutoEncoderKLConfig {
block_out_channels: vec![128, 256, 512, 512],
layers_per_block: 2,
latent_channels: 4,
norm_num_groups: 32,
};
let height = if let Some(height) = height {
assert_eq!(height % 8, 0, "height has to be divisible by 8");
height
} else {
512
};
let width = if let Some(width) = width {
assert_eq!(width % 8, 0, "width has to be divisible by 8");
width
} else {
512
};
Self {
width,
height,
clip: clip::Config::v1_5(),
clip2: None,
autoencoder,
scheduler: Default::default(),
unet,
}
}
fn v2_1_(
sliced_attention_size: Option<usize>,
height: Option<usize>,
width: Option<usize>,
prediction_type: PredictionType,
) -> Self {
let bc = |out_channels, use_cross_attn, attention_head_dim| unet_2d::BlockConfig {
out_channels,
use_cross_attn,
attention_head_dim,
};
// https://huggingface.co/stabilityai/stable-diffusion-2-1/blob/main/unet/config.json
let unet = unet_2d::UNet2DConditionModelConfig {
blocks: vec![
bc(320, true, 5),
bc(640, true, 10),
bc(1280, true, 20),
bc(1280, false, 20),
],
center_input_sample: false,
cross_attention_dim: 1024,
downsample_padding: 1,
flip_sin_to_cos: true,
freq_shift: 0.,
layers_per_block: 2,
mid_block_scale_factor: 1.,
norm_eps: 1e-5,
norm_num_groups: 32,
sliced_attention_size,
use_linear_projection: true,
};
// https://huggingface.co/stabilityai/stable-diffusion-2-1/blob/main/vae/config.json
let autoencoder = vae::AutoEncoderKLConfig {
block_out_channels: vec![128, 256, 512, 512],
layers_per_block: 2,
latent_channels: 4,
norm_num_groups: 32,
};
let scheduler = ddim::DDIMSchedulerConfig {
prediction_type,
..Default::default()
};
let height = if let Some(height) = height {
assert_eq!(height % 8, 0, "height has to be divisible by 8");
height
} else {
768
};
let width = if let Some(width) = width {
assert_eq!(width % 8, 0, "width has to be divisible by 8");
width
} else {
768
};
Self {
width,
height,
clip: clip::Config::v2_1(),
clip2: None,
autoencoder,
scheduler,
unet,
}
}
pub fn v2_1(
sliced_attention_size: Option<usize>,
height: Option<usize>,
width: Option<usize>,
) -> Self {
// https://huggingface.co/stabilityai/stable-diffusion-2-1/blob/main/scheduler/scheduler_config.json
Self::v2_1_(
sliced_attention_size,
height,
width,
PredictionType::VPrediction,
)
}
fn sdxl_(
sliced_attention_size: Option<usize>,
height: Option<usize>,
width: Option<usize>,
prediction_type: PredictionType,
) -> Self {
let bc = |out_channels, use_cross_attn, attention_head_dim| unet_2d::BlockConfig {
out_channels,
use_cross_attn,
attention_head_dim,
};
// https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0/blob/main/unet/config.json
let unet = unet_2d::UNet2DConditionModelConfig {
blocks: vec![bc(320, false, 5), bc(640, false, 10), bc(1280, true, 20)],
center_input_sample: false,
cross_attention_dim: 2048,
downsample_padding: 1,
flip_sin_to_cos: true,
freq_shift: 0.,
layers_per_block: 2,
mid_block_scale_factor: 1.,
norm_eps: 1e-5,
norm_num_groups: 32,
sliced_attention_size,
use_linear_projection: true,
};
// https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0/blob/main/vae/config.json
let autoencoder = vae::AutoEncoderKLConfig {
block_out_channels: vec![128, 256, 512, 512],
layers_per_block: 2,
latent_channels: 4,
norm_num_groups: 32,
};
let scheduler = ddim::DDIMSchedulerConfig {
prediction_type,
..Default::default()
};
let height = if let Some(height) = height {
assert_eq!(height % 8, 0, "height has to be divisible by 8");
height
} else {
1024
};
let width = if let Some(width) = width {
assert_eq!(width % 8, 0, "width has to be divisible by 8");
width
} else {
1024
};
Self {
width,
height,
clip: clip::Config::sdxl(),
clip2: Some(clip::Config::sdxl2()),
autoencoder,
scheduler,
unet,
}
}
pub fn sdxl(
sliced_attention_size: Option<usize>,
height: Option<usize>,
width: Option<usize>,
) -> Self {
Self::sdxl_(
sliced_attention_size,
height,
width,
// https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0/blob/main/scheduler/scheduler_config.json
PredictionType::Epsilon,
)
}
pub fn build_vae<P: AsRef<std::path::Path>>(
&self,
vae_weights: P,
device: &Device,
dtype: DType,
) -> Result<vae::AutoEncoderKL> {
let weights = unsafe { candle::safetensors::MmapedFile::new(vae_weights)? };
let weights = weights.deserialize()?;
let vs_ae = nn::VarBuilder::from_safetensors(vec![weights], dtype, device);
// https://huggingface.co/runwayml/stable-diffusion-v1-5/blob/main/vae/config.json
let autoencoder = vae::AutoEncoderKL::new(vs_ae, 3, 3, self.autoencoder.clone())?;
Ok(autoencoder)
}
pub fn build_unet<P: AsRef<std::path::Path>>(
&self,
unet_weights: P,
device: &Device,
in_channels: usize,
use_flash_attn: bool,
dtype: DType,
) -> Result<unet_2d::UNet2DConditionModel> {
let weights = unsafe { candle::safetensors::MmapedFile::new(unet_weights)? };
let weights = weights.deserialize()?;
let vs_unet = nn::VarBuilder::from_safetensors(vec![weights], dtype, device);
let unet = unet_2d::UNet2DConditionModel::new(
vs_unet,
in_channels,
4,
use_flash_attn,
self.unet.clone(),
)?;
Ok(unet)
}
pub fn build_scheduler(&self, n_steps: usize) -> Result<ddim::DDIMScheduler> {
ddim::DDIMScheduler::new(n_steps, self.scheduler)
}
}
pub fn build_clip_transformer<P: AsRef<std::path::Path>>(
clip: &clip::Config,
clip_weights: P,
device: &Device,
dtype: DType,
) -> Result<clip::ClipTextTransformer> {
let weights = unsafe { candle::safetensors::MmapedFile::new(clip_weights)? };
let weights = weights.deserialize()?;
let vs = nn::VarBuilder::from_safetensors(vec![weights], dtype, device);
let text_model = clip::ClipTextTransformer::new(vs, clip)?;
Ok(text_model)
}