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onediff extensions for diffusers

Project description

OneDiffX (for HF diffusers)

OneDiffX is a OneDiff Extension for HF diffusers. It provides some acceleration utilities, such as DeepCache.

Install and setup

  1. Follow the steps here to install onediff.

  2. Install onediffx by following these steps

    git clone https://github.com/siliconflow/onediff.git
    cd onediff_diffusers_extensions && python3 -m pip install -e .
    

Compile, save and load pipeline

The complete example to test compile/save/load the pipeline: pipe_compile_save_load.py.

Compile diffusers pipeline with compile_pipe.

import torch
from diffusers import StableDiffusionXLPipeline

from onediffx import compile_pipe

pipe = StableDiffusionXLPipeline.from_pretrained(
    "stabilityai/stable-diffusion-xl-base-1.0",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

pipe = compile_pipe(pipe)

# run once to trigger compilation
image = pipe(
    prompt="street style, detailed, raw photo, woman, face, shot on CineStill 800T",
    height=512,
    width=512,
    num_inference_steps=30,
    output_type="pil",
).images

image[0].save(f"test_image.png")

Save compiled pipeline with save_pipe

from diffusers import StableDiffusionXLPipeline
from onediffx import compile_pipe, save_pipe
pipe = StableDiffusionXLPipeline.from_pretrained(
    "stabilityai/stable-diffusion-xl-base-1.0",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

pipe = compile_pipe(pipe)

# run once to trigger compilation
image = pipe(
    prompt="street style, detailed, raw photo, woman, face, shot on CineStill 800T",
    height=512,
    width=512,
    num_inference_steps=30,
    output_type="pil",
).images

image[0].save(f"test_image.png")

# save the compiled pipe
save_pipe(pipe, dir="cached_pipe")

Load compiled pipeline with load_pipe

from diffusers import StableDiffusionXLPipeline
from onediffx import compile_pipe, load_pipe
pipe = StableDiffusionXLPipeline.from_pretrained(
    "stabilityai/stable-diffusion-xl-base-1.0",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

pipe = compile_pipe(pipe)

# load the compiled pipe
load_pipe(pipe, dir="cached_pipe")

# no compilation now
image = pipe(
    prompt="street style, detailed, raw photo, woman, face, shot on CineStill 800T",
    height=512,
    width=512,
    num_inference_steps=30,
    output_type="pil",
).images

image[0].save(f"test_image.png")

DeepCache speedup

Run Stable Diffusion XL with OneDiffX

import torch

from onediffx import compile_pipe
from onediffx.deep_cache import StableDiffusionXLPipeline

pipe = StableDiffusionXLPipeline.from_pretrained(
    "stabilityai/stable-diffusion-xl-base-1.0",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

pipe = compile_pipe(pipe)

prompt = "A photo of a cat. Focus light and create sharp, defined edges."
# Warmup
for i in range(1):
    deepcache_output = pipe(
        prompt, 
        cache_interval=3, cache_layer_id=0, cache_block_id=0,
        output_type='pil'
    ).images[0]

deepcache_output = pipe(
    prompt, 
    cache_interval=3, cache_layer_id=0, cache_block_id=0,
    output_type='pil'
).images[0]

Run Stable Diffusion 1.5 with OneDiffX

import torch

from onediffx import compile_pipe
from onediffx.deep_cache import StableDiffusionPipeline

pipe = StableDiffusionPipeline.from_pretrained(
    "runwayml/stable-diffusion-v1-5",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

pipe = compile_pipe(pipe)

prompt = "a photo of an astronaut on a moon"
# Warmup
for i in range(1):
    deepcache_output = pipe(
        prompt, 
        cache_interval=3, cache_layer_id=0, cache_block_id=0,
        output_type='pil'
    ).images[0]

deepcache_output = pipe(
    prompt, 
    cache_interval=3, cache_layer_id=0, cache_block_id=0,
    output_type='pil'
).images[0]

Run Stable Video Diffusion with OneDiffX

import torch

from diffusers.utils import load_image, export_to_video
from onediffx import compile_pipe, compiler_config
from onediffx.deep_cache import StableVideoDiffusionPipeline

pipe = StableVideoDiffusionPipeline.from_pretrained(
    "stabilityai/stable-video-diffusion-img2vid-xt",
    torch_dtype=torch.float16,
    variant="fp16",
    use_safetensors=True
)
pipe.to("cuda")

compiler_config.attention_allow_half_precision_score_accumulation_max_m = 0
pipe = compile_pipe(pipe)

input_image = load_image("https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/svd/rocket.png?download=true")
input_image = input_image.resize((1024, 576))

# Warmup
for i in range(1):
    deepcache_output = pipe(
        input_image, 
        decode_chunk_size=5,
        cache_interval=3, cache_branch=0,
    ).frames[0]

deepcache_output = pipe(
    input_image, 
    decode_chunk_size=5,
    cache_interval=3, cache_branch=0,
).frames[0]

export_to_video(deepcache_output, "generated.mp4", fps=7)

Fast LoRA loading and switching

OneDiff provides a more efficient implementation of loading LoRA, by invoking load_and_fuse_lora you can load and fuse LoRA to pipeline, and by invoking unfuse_lora you can restore the weight of base model.

API

onediffx.lora.load_and_fuse_lora

onediffx.lora.load_and_fuse_lora(pipeline: LoraLoaderMixin, pretrained_model_name_or_path_or_dict: Union[str, Path, Dict[str, torch.Tensor]], adapter_name: Optional[str] = None, *, lora_scale: float = 1.0, offload_device="cpu", offload_weight="lora", use_cache=False, **kwargs):

  • pipeline (LoraLoaderMixin): The pipeline that will load and fuse LoRA weight.

  • pretrained_model_name_or_path_or_dict (str or os.PathLike or dict): Can be either:

    • A string, the model id (for example google/ddpm-celebahq-256) of a pretrained model hosted on the Hub.

    • A path to a directory containing the model weights saved with ModelMixin.save_pretrained().

    • torch state dict.

  • adapter_name(stroptional): Adapter name to be used for referencing the loaded adapter model. If not specified, it will use default_{i} where i is the total number of adapters being loaded. Not supported now.

  • lora_scale (float, defaults to 1.0): Controls how much to influence the outputs with the LoRA parameters.

  • offload_device (str, must be one of "cpu" and "cuda"): The device to offload the weight of LoRA or model

  • offload_weight (str, must be one of "lora" and "weight"): The weight type to offload. If set to "lora", the weight of LoRA will be offloaded to offload_device, and if set to "weight", the weight of Linear or Conv2d will be offloaded.

  • use_cache (bool, optional): Whether to save LoRA to cache. If set to True, loaded LoRA will be cached in memory.

  • kwargs(dictoptional) — See lora_state_dict()

onediffx.lora.unfuse_lora

onediffx.lora.unfuse_lora(pipeline: LoraLoaderMixin) -> None:

  • pipeline (LoraLoaderMixin): The pipeline that will unfuse LoRA weight.

onediffx.lora.set_and_fuse_adapters

onediffx.lora.set_and_fuse_adapters(pipeline: LoraLoaderMixin, adapter_names: Union[List[str], str], adapter_weights: Optional[List[float]] = None)

Set the LoRA layers of adapter_name for the unet and text-encoder(s) with related adapter_weights.

  • pipeline (LoraLoaderMixin): The pipeline that will set adapters.
  • adapter_names(str or List[str]): The adapter name(s) of LoRA(s) to be set for the pipeline, must appear in the adapter_name parameter of the load_and_fuse_lora function, otherwise it will be ignored.
  • adapter_weights(float or List[float], optional): The weight(s) of adapter(s), if is None, it will be set to 1.0.

`onediffx.lora.delete_adapters``

onediffx.lora.delete_adapters(pipeline: LoraLoaderMixin, adapter_names: Union[List[str], str])

Deletes the LoRA layers of adapter_name for the unet and text-encoder(s).

  • adapter_names (str or List[str]): The names of the adapter to delete. Can be a single string or a list of strings

Example

import torch
from diffusers import DiffusionPipeline
from onediffx import compile_pipe
from onediffx.lora import load_and_fuse_lora, set_and_fuse_adapters, delete_adapters

MODEL_ID = "stabilityai/stable-diffusion-xl-base-1.0"
pipe = DiffusionPipeline.from_pretrained(MODEL_ID, variant="fp16", torch_dtype=torch.float16).to("cuda")
pipe = compile_pipe(pipe)

# use onediff load_and_fuse_lora
LORA_MODEL_ID = "Norod78/SDXL-YarnArtStyle-LoRA"
LORA_FILENAME = "SDXL_Yarn_Art_Style.safetensors"
load_and_fuse_lora(pipe, LORA_MODEL_ID, weight_name=LORA_FILENAME, lora_scale=1.0, adapter_name="SDXL_Yarn_Art_Style")
images_fusion = pipe(
    "a cat",
    height=1024,
    width=1024,
    generator=torch.manual_seed(0),
    num_inference_steps=30,
).images[0]
images_fusion.save("test_sdxl_lora_SDXL_Yarn_Art_Style.png")

# load another LoRA, now the pipe has two LoRA models
LORA_MODEL_ID = "ostris/watercolor_style_lora_sdxl"
LORA_FILENAME = "watercolor_v1_sdxl.safetensors"
load_and_fuse_lora(pipe, LORA_MODEL_ID, weight_name=LORA_FILENAME, lora_scale=1.0, adapter_name="watercolor")
images_fusion = pipe(
    "a cat",
    height=1024,
    width=1024,
    generator=torch.manual_seed(0),
    num_inference_steps=30,
).images[0]
images_fusion.save("test_sdxl_lora_SDXL_Yarn_Art_Style_watercolor.png")

# set LoRA 'SDXL_Yarn_Art_Style' with strength = 0.5, now the pipe has only LoRA 'SDXL_Yarn_Art_Style' with strength = 0.5
set_and_fuse_adapters(pipe, adapter_names="SDXL_Yarn_Art_Style", adapter_weights=0.5)
images_fusion = pipe(
    "a cat",
    height=1024,
    width=1024,
    generator=torch.manual_seed(0),
    num_inference_steps=30,
).images[0]
images_fusion.save("test_sdxl_lora_SDXL_Yarn_Art_Style_05.png")

# set LoRA 'SDXL_Yarn_Art_Style' with strength = 0.8 and watercolor with strength = 0.2, now the pipe has 2 LoRAs
set_and_fuse_adapters(pipe, adapter_names=["SDXL_Yarn_Art_Style", "watercolor"], adapter_weights=[0.8, 0.2])
images_fusion = pipe(
    "a cat",
    height=1024,
    width=1024,
    generator=torch.manual_seed(0),
    num_inference_steps=30,
).images[0]
images_fusion.save("test_sdxl_lora_SDXL_Yarn_Art_Style_08_watercolor_02.png")

# delete lora 'SDXL_Yarn_Art_Style', now pipe has only 'watercolor' with strength = 0.8 left
delete_adapters(pipe, "SDXL_Yarn_Art_Style")
images_fusion = pipe(
    "a cat",
    height=1024,
    width=1024,
    generator=torch.manual_seed(0),
    num_inference_steps=30,
).images[0]
images_fusion.save("test_sdxl_lora_watercolor_02.png")

Benchmark

We choose 5 LoRAs to profile loading speed of 3 different APIs and switching speed of 2 different APIs, and test with and without using the PEFT backend separately. The results are shown below.

LoRA loading

  1. load_lora_weight, which has high loading performance but low inference performance

  2. load_lora_weight + fuse_lora, which has high inference performance but low loading performance

  3. onediffx.lora.load_and_fuse_lora, which has high loading performance and high inference performance

Without PEFT backend

LoRA name size HF load_lora_weight HF load_lora_weight + fuse_lora OneDiffX load_and_fuse_lora src link
SDXL-Emoji-Lora-r4 28M 1.69 s 2.34 s 0.78 s Link
sdxl_metal_lora 23M 0.97 s 1.73 s 0.19 s
simple_drawing_xl_b1-000012 55M 1.67 s 2.57 s 0.77 s Link
texta 270M 1.72 s 2.86 s 0.97 s Link
watercolor_v1_sdxl_lora 12M 1.54 s 2.01 s 0.35 s

With PEFT backend

LoRA name size HF load_lora_weights HF load_lora_weights + fuse_lora OneDiffX load_and_fuse_lora src link
SDXL-Emoji-Lora-r4 28M 5.25 s 6.21 s 0.78 s Link
sdxl_metal_lora 23M 2.44 s 3.80 s 0.24 s
simple_drawing_xl_b1-000012 55M 4.09 s 5.79 s 0.81 s Link
texta 270M 109.13 s 109.71 s 1.07 s Link
watercolor_v1_sdxl_lora 12M 3.08 s 4.04 s 0.40 s

LoRA switching

We tested the performance of set_adapters, still using the five LoRA models mentioned above. The numbers 1-5 represent the five models 'SDXL-Emoji-Lora-r4', 'sdxl_metal_lora', 'simple_drawing_xl_b1-000012', 'texta', 'watercolor_v1_sdxl_lora'.

  1. PEFT set_adapters + fuse_lora

  2. OneDiffX set_and_fuse_adapters, which has the same effect as PEFT set_adapters + fuse_lora

LoRA names PEFT set_adapters + fuse_lora OneDiffX set_and_fuse_adapters
[1] 0.47 s 0.28 s
[1, 2] 0.52 s 0.34 s
[1, 2, 3] 0.71 s 0.55 s
[1, 2, 3, 4] 2.02 s 0.73 s
[1, 2, 3, 4, 5] 1.00 s 0.80 s

Note

  1. OneDiff extensions for LoRA is currently only supported for limited PEFT APIs, and only supports diffusers of at least version 0.21.0.

  2. If your LoRA model only contains the weights of the Linear module, you can directly use OneDiffX without any modifications. But if your LoRA model includes the weights of the Conv module (such as LyCORIS), you need to disable constant folding optimization by above methods (which may cause a performance drop of around 4.4%), otherwise the weights of the Conv module may not be loaded into the model.

    • Set the env var ONEFLOW_MLIR_ENABLE_INFERENCE_OPTIMIZATION to 0
    • Set compiler_config.mlir_enable_inference_optimization to 0 before invoking oneflow_compile as the code below
      from onediffx import compiler_config
      compiler_config.mlir_enable_inference_optimization = 0
      ...
      pipe.unet = oneflow_compile(pipe.unet)
      ...
      

Optimization

  • When not using the PEFT backend, diffusers will replace the module corresponding to LoRA with the LoRACompatible module, incurring additional parameter initialization time overhead. In OneDiffX, the LoRA parameters are directly fused into the model, bypassing the step of replacing the module, thereby reducing the time overhead.

  • When using the PEFT backend, PEFT will also replace the module corresponding to LoRA with the corresponding BaseTunerLayer. Similar to diffusers, this increases the time overhead. OneDiffX also bypasses this step by directly operating on the original model.

  • While traversing the submodules of the model, we observed that the getattr time overhead of OneDiff's DeployableModule is high. Because the parameters of DeployableModule share the same address as the PyTorch module it wraps, we choose to traverse DeployableModule._torch_module, greatly improving traversal efficiency.

Compiled graph re-using

When switching models, if the new model has the same structure as the old model, you can re-use the previously compiled graph, which means you don't need to compile the new model again, which significantly reduces the time it takes you to switch models.

Here is a pseudo code, to get detailed usage, please refer to text_to_image_sdxl_reuse_pipe:

base = StableDiffusionPipeline(...)
compiled_unet = oneflow_compile(base.unet)
base.unet = compiled_unet
# This step needs some time to compile the UNet
base(prompt)

new_base = StableDiffusionPipeline(...)
# Re-use the compiled graph by loading the new state dict into the `_torch_module` member of the object returned by `oneflow_compile`
compiled_unet._torch_module.load_state_dict(new_base.unet.state_dict())
# After loading the new state dict into the `compiled_unet._torch_module`, the weights of the compiled_unet are updated too
new_base.unet = compiled_unet
# This step doesn't need additional time to compile the UNet again because
# new_base.unet is already compiled
new_base(prompt)

Note: Please make sure that your PyTorch version is at least 2.1.0, and set the environment variable ONEFLOW_MLIR_ENABLE_INFERENCE_OPTIMIZATION to 0. And the feature is not supported for quantized model.

Quantization

Note: Quantization feature is only supported by OneDiff Enterprise.

OneDiff Enterprise offers a quantization method that reduces memory usage, increases speed, and maintains quality without any loss.

If you possess a OneDiff Enterprise license key, you can access instructions on OneDiff quantization and related models by visiting Hugginface/siliconflow. Alternatively, you can contact us to inquire about purchasing the OneDiff Enterprise license.

Contact

For users of OneDiff Community, please visit GitHub Issues for bug reports and feature requests.

For users of OneDiff Enterprise, you can contact contact@siliconflow.com for commercial support.

Feel free to join our Discord community for discussions and to receive the latest updates.

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