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StreamDiffusion

English | 日本語

StreamDiffusion: A Pipeline-Level Solution for Real-Time Interactive Generation

Authors: Akio Kodaira, Chenfeng Xu, Toshiki Hazama, Takanori Yoshimoto, Kohei Ohno, Shogo Mitsuhori, Soichi Sugano, Hanying Cho, Zhijian Liu, Kurt Keutzer

StreamDiffusion is an innovative diffusion pipeline designed for real-time interactive generation. It introduces significant performance enhancements to current diffusion-based image generation techniques.

arXiv Hugging Face Papers

We sincerely thank Taku Fujimoto and Radamés Ajna and Hugging Face team for their invaluable feedback, courteous support, and insightful discussions.

Key Features

  1. Stream Batch

    • Streamlined data processing through efficient batch operations.
  2. Residual Classifier-Free Guidance - Learn More

    • Improved guidance mechanism that minimizes computational redundancy.
  3. Stochastic Similarity Filter - Learn More

    • Improves GPU utilization efficiency through advanced filtering techniques.
  4. IO Queues

    • Efficiently manages input and output operations for smoother execution.
  5. Pre-Computation for KV-Caches

    • Optimizes caching strategies for accelerated processing.
  6. Model Acceleration Tools

    • Utilizes various tools for model optimization and performance boost.

When images are produced using our proposed StreamDiffusion pipeline in an environment with GPU: RTX 4090, CPU: Core i9-13900K, and OS: Ubuntu 22.04.3 LTS.

model Denoising Step fps on Txt2Img fps on Img2Img
SD-turbo 1 106.16 93.897
LCM-LoRA
+
KohakuV2
4 38.023 37.133

Feel free to explore each feature by following the provided links to learn more about StreamDiffusion's capabilities. If you find it helpful, please consider citing our work:

@article{kodaira2023streamdiffusion,
      title={StreamDiffusion: A Pipeline-level Solution for Real-time Interactive Generation},
      author={Akio Kodaira and Chenfeng Xu and Toshiki Hazama and Takanori Yoshimoto and Kohei Ohno and Shogo Mitsuhori and Soichi Sugano and Hanying Cho and Zhijian Liu and Kurt Keutzer},
      year={2023},
      eprint={2312.12491},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}

Installation

Step0: clone this repository

git clone https://github.com/cumulo-autumn/StreamDiffusion.git

Step1: Make Environment

You can install StreamDiffusion via pip, conda, or Docker(explanation below).

conda create -n streamdiffusion python=3.10
conda activate streamdiffusion

OR

python -m venv .venv
# Windows
.\.venv\Scripts\activate
# Linux
source .venv/bin/activate

Step2: Install PyTorch

Select the appropriate version for your system.

CUDA 11.8

pip3 install torch==2.1.0 torchvision==0.16.0 xformers --index-url https://download.pytorch.org/whl/cu118

CUDA 12.1

pip3 install torch==2.1.0 torchvision==0.16.0 xformers --index-url https://download.pytorch.org/whl/cu121

details: https://pytorch.org/

Step3: Install StreamDiffusion

For User

Install StreamDiffusion

#for Latest Version (recommended)
pip install git+https://github.com/cumulo-autumn/StreamDiffusion.git@main#egg=streamdiffusion[tensorrt]


#or


#for Stable Version
pip install streamdiffusion[tensorrt]

Install TensorRT extension and pywin32 (※※pywin32 is required only for Windows.)

python -m streamdiffusion.tools.install-tensorrt
# If you use Windows, you need to install pywin32 
pip install pywin32

For Developer

python setup.py develop easy_install streamdiffusion[tensorrt]
python -m streamdiffusion.tools.install-tensorrt

Docker Installation (TensorRT Ready)

git clone https://github.com/cumulo-autumn/StreamDiffusion.git
cd StreamDiffusion
docker build -t stream-diffusion:latest -f Dockerfile .
docker run --gpus all -it -v $(pwd):/home/ubuntu/streamdiffusion stream-diffusion:latest

Quick Start

You can try StreamDiffusion in examples directory.

画像3 画像4
画像5 画像6

Real-Time Txt2Img Demo

There is an interactive txt2img demo in demo/realtime-txt2img directory!

Usage Example

We provide a simple example of how to use StreamDiffusion. For more detailed examples, please refer to examples directory.

Image-to-Image

import torch
from diffusers import AutoencoderTiny, StableDiffusionPipeline
from diffusers.utils import load_image

from streamdiffusion import StreamDiffusion
from streamdiffusion.image_utils import postprocess_image

# You can load any models using diffuser's StableDiffusionPipeline
pipe = StableDiffusionPipeline.from_pretrained("KBlueLeaf/kohaku-v2.1").to(
    device=torch.device("cuda"),
    dtype=torch.float16,
)

# Wrap the pipeline in StreamDiffusion
stream = StreamDiffusion(
    pipe,
    t_index_list=[32, 45],
    torch_dtype=torch.float16,
)

# If the loaded model is not LCM, merge LCM
stream.load_lcm_lora()
stream.fuse_lora()
# Use Tiny VAE for further acceleration
stream.vae = AutoencoderTiny.from_pretrained("madebyollin/taesd").to(device=pipe.device, dtype=pipe.dtype)
# Enable acceleration
pipe.enable_xformers_memory_efficient_attention()


prompt = "1girl with dog hair, thick frame glasses"
# Prepare the stream
stream.prepare(prompt)

# Prepare image
init_image = load_image("assets/img2img_example.png").resize((512, 512))

# Warmup >= len(t_index_list) x frame_buffer_size
for _ in range(2):
    stream(init_image)

# Run the stream infinitely
while True:
    x_output = stream(init_image)
    postprocess_image(x_output, output_type="pil")[0].show()
    input_response = input("Press Enter to continue or type 'stop' to exit: ")
    if input_response == "stop":
        break

Text-to-Image

import torch
from diffusers import AutoencoderTiny, StableDiffusionPipeline

from streamdiffusion import StreamDiffusion
from streamdiffusion.image_utils import postprocess_image

# You can load any models using diffuser's StableDiffusionPipeline
pipe = StableDiffusionPipeline.from_pretrained("KBlueLeaf/kohaku-v2.1").to(
    device=torch.device("cuda"),
    dtype=torch.float16,
)

# Wrap the pipeline in StreamDiffusion
# Requires more long steps (len(t_index_list)) in text2image
# You recommend to use cfg_type="none" when text2image
stream = StreamDiffusion(
    pipe,
    t_index_list=[0, 16, 32, 45],
    torch_dtype=torch.float16,
    cfg_type="none",
)

# If the loaded model is not LCM, merge LCM
stream.load_lcm_lora()
stream.fuse_lora()
# Use Tiny VAE for further acceleration
stream.vae = AutoencoderTiny.from_pretrained("madebyollin/taesd").to(device=pipe.device, dtype=pipe.dtype)
# Enable acceleration
pipe.enable_xformers_memory_efficient_attention()


prompt = "1girl with dog hair, thick frame glasses"
# Prepare the stream
stream.prepare(prompt)

# Warmup >= len(t_index_list) x frame_buffer_size
for _ in range(4):
    stream()

# Run the stream infinitely
while True:
    x_output = stream.txt2img()
    postprocess_image(x_output, output_type="pil")[0].show()
    input_response = input("Press Enter to continue or type 'stop' to exit: ")
    if input_response == "stop":
        break

You can make it faster by using SD-Turbo.

Faster generation

Replace the following code in the above example.

pipe.enable_xformers_memory_efficient_attention()

To

from streamdiffusion.acceleration.tensorrt import accelerate_with_tensorrt

stream = accelerate_with_tensorrt(
    stream, "engines", max_batch_size=2,
)

It requires TensorRT extension and time to build the engine, but it will be faster than the above example.

Optionals

Stochastic Similarity Filter

demo

Stochastic Similarity Filter reduces processing during video input by minimizing conversion operations when there is little change from the previous frame, thereby alleviating GPU processing load, as shown by the red frame in the above GIF. The usage is as follows:

stream = StreamDiffusion(
    pipe,
    [32, 45],
    torch_dtype=torch.float16,
)
stream.enable_similar_image_filter(
    similar_image_filter_threshold,
    similar_image_filter_max_skip_frame,
)

There are the following parameters that can be set as arguments in the function:

similar_image_filter_threshold

  • The threshold for similarity between the previous frame and the current frame before the processing is paused.

similar_image_filter_max_skip_frame

  • The maximum interval during the pause before resuming the conversion.

Residual CFG (RCFG)

rcfg

RCFG is a method for approximately realizing CFG with competitive computational complexity compared to cases where CFG is not used. It can be specified through the cfg_type argument in the StreamDiffusion. There are two types of RCFG: one with no specified items for negative prompts RCFG Self-Negative and one where negative prompts can be specified RCFG Onetime-Negative. In terms of computational complexity, denoting the complexity without CFG as N and the complexity with a regular CFG as 2N, RCFG Self-Negative can be computed in N steps, while RCFG Onetime-Negative can be computed in N+1 steps.

The usage is as follows:

# w/0 CFG
cfg_type = "none"
# CFG
cfg_type = "full"
# RCFG Self-Negative
cfg_type = "self"
# RCFG Onetime-Negative
cfg_type = "initialize"
stream = StreamDiffusion(
    pipe,
    [32, 45],
    torch_dtype=torch.float16,
    cfg_type=cfg_type,
)
stream.prepare(
    prompt="1girl, purple hair",
    guidance_scale=guidance_scale,
    delta=delta,
)

The delta has a moderating effect on the effectiveness of RCFG.

Development Team

Aki, Ararat, Chenfeng Xu, ddPn08, kizamimi, ramune, teftef, Tonimono, Verb,

(*alphabetical order)

Acknowledgements

The video and image demos in this GitHub repository were generated using LCM-LoRA + KohakuV2 and SD-Turbo.

Special thanks to LCM-LoRA authors for providing the LCM-LoRA and Kohaku BlueLeaf (@KBlueleaf) for providing the KohakuV2 model and ,to Stability AI for SD-Turbo.

KohakuV2 Models can be downloaded from Civitai and Hugging Face.

SD-Turbo is also available on Hugging Face Space.

Contributors