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DiffSynth Studio

Introduction

DiffSynth Studio is a Diffusion engine. We have restructured architectures including Text Encoder, UNet, VAE, among others, maintaining compatibility with models from the open-source community while enhancing computational performance. We provide many interesting features. Enjoy the magic of Diffusion models!

Until now, DiffSynth Studio has supported the following models:

News

  • June 21, 2024. 🔥🔥🔥 We propose ExVideo, a post-tuning technique aimed at enhancing the capability of video generation models. We have extended Stable Video Diffusion to achieve the generation of long videos up to 128 frames.

  • June 13, 2024. DiffSynth Studio is transferred to ModelScope. The developers have transitioned from "I" to "we". Of course, I will still participate in development and maintenance.

  • Jan 29, 2024. We propose Diffutoon, a fantastic solution for toon shading.

    • Project Page
    • The source codes are released in this project.
    • The technical report (IJCAI 2024) is released on arXiv.
  • Dec 8, 2023. We decide to develop a new Project, aiming to release the potential of diffusion models, especially in video synthesis. The development of this project is started.

  • Nov 15, 2023. We propose FastBlend, a powerful video deflickering algorithm.

  • Oct 1, 2023. We release an early version of this project, namely FastSDXL. A try for building a diffusion engine.

    • The source codes are released on GitHub.
    • FastSDXL includes a trainable OLSS scheduler for efficiency improvement.
      • The original repo of OLSS is here.
      • The technical report (CIKM 2023) is released on arXiv.
      • A demo video is shown on Bilibili.
      • Since OLSS requires additional training, we don't implement it in this project.
  • Aug 29, 2023. We propose DiffSynth, a video synthesis framework.

Installation

git clone https://github.com/modelscope/DiffSynth-Studio.git
cd DiffSynth-Studio
pip install -e .

Usage (in Python code)

The Python examples are in examples. We provide an overview here.

Long Video Synthesis

We trained an extended video synthesis model, which can generate 128 frames. examples/ExVideo

github_title.mp4

Image Synthesis

Generate high-resolution images, by breaking the limitation of diffusion models! examples/image_synthesis

512*512 1024*1024 2048*2048 4096*4096
512 1024 2048 4096
1024*1024 2048*2048
1024 2048

Toon Shading

Render realistic videos in a flatten style and enable video editing features. examples/Diffutoon

Diffutoon.mp4
Diffutoon_edit.mp4

Video Stylization

Video stylization without video models. examples/diffsynth

winter_stone.mp4

Chinese Models

Use Hunyuan-DiT to generate images with Chinese prompts. We also support LoRA fine-tuning of this model. examples/hunyuan_dit

Prompt: 少女手捧鲜花,坐在公园的长椅上,夕阳的余晖洒在少女的脸庞,整个画面充满诗意的美感

1024x1024 2048x2048 (highres-fix)
image_1024 image_2048

Prompt: 一只小狗蹦蹦跳跳,周围是姹紫嫣红的鲜花,远处是山脉

Without LoRA With LoRA
image_without_lora image_with_lora

Usage (in WebUI)

python -m streamlit run DiffSynth_Studio.py
sdxl_turbo_ui.mp4

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