Skip to content

This project aim to reproducing Sora (Open AI T2V model), but we only have limited resource. We deeply wish the all open source community can contribute to this project.

License

Notifications You must be signed in to change notification settings

Tzy010822/Open-Sora-Plan

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

26 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Open-Sora Plan

[Project Page] [中文主页]

Goal

This project aims to create a simple and scalable repo, to reproduce Sora (OpenAI, but we prefer to call it "CloseAI" ) and build knowledge about Video-VQVAE (VideoGPT) + DiT at scale. However, we have limited resources, we deeply wish all open-source community can contribute to this project. Pull request are welcome!!!

本项目希望通过开源社区的力量复现Sora,由北大-兔展AIGC联合实验室共同发起,当前我们资源有限仅搭建了基础架构,无法进行完整训练,希望通过开源社区逐步增加模块并筹集资源进行训练,当前版本离目标差距巨大,仍需持续完善和快速迭代,欢迎Pull request!!!

Project stages:

  • Primary
  1. Setup the codebase and train a un-conditional model on landscape dataset.
  2. Train models that boost resolution and duration.
  • Extensions
  1. Conduct text2video experiments on landscape dataset.
  2. Train the 1080p model on video2text dataset.
  3. Control model with more condition.

News

[2024.03.05] See our latest todo, welcome to pull request.

[2024.03.04] We re-organize and modulize our codes and make it easy to contribute to the project, please see the Repo structure.

[2024.03.03] We open some discussions and clarify several issues.

[2024.03.01] Training codes are available now! Learn more in our project page. Please feel free to watch 👀 this repository for the latest updates.

Todo

Setup the codebase and train a unconditional model on landscape dataset

  • Setup repo-structure.
  • Add Video-VQGAN model, which is borrowed from VideoGPT.
  • Support variable aspect ratios, resolutions, durations training on DiT.
  • Support Dynamic mask input inspired FiT.
  • Add class-conditioning on embeddings.
  • Incorporating Latte as main codebase.
  • Add VAE model, which is borrowed from Stable Diffusion.
  • Joint dynamic mask input with VAE.
  • Make the codebase ready for the cluster training. Add SLURM scripts.
  • Add sampling script.
  • Incorporating SiT.

Train models that boost resolution and duration

  • Add PI to support out-of-domain size.
  • Add frame interpolation model.

Conduct text2video experiments on landscape dataset.

  • Finish data loading, pre-processing utils.
  • Add CLIP and T5 support.
  • Add text2image training script.
  • Add prompt captioner.

Train the 1080p model on video2text dataset

  • Looking for a suitable dataset, welcome to discuss and recommend.
  • Finish data loading, pre-processing utils.
  • Support memory friendly training.
    • Add flash-attention2 from pytorch.
    • Add xformers.
    • Add accelerate to automatically manage training, e.g. mixed precision training.
    • Add gradient checkpoint.
    • Train using the deepspeed engine.

Control model with more condition

Repo structure

├── README.md
├── docs
│   ├── Data.md                    -> Datasets description.
│   ├── Contribution_Guidelines.md -> Contribution guidelines description.
├── scripts                        -> All training scripts.
│   └── train.sh
├── sora
│   ├── dataset                    -> Dataset code to read videos
│   ├── models 
│   │   ├── captioner               
│   │   ├── super_resolution        
│   ├── modules
│   │   ├── ae                     -> compress videos to latents
│   │   │   ├── vqvae
│   │   │   ├── vae
│   │   ├── diffusion              -> denoise latents
│   │   │   ├── dit
│   │   │   ├── unet
|   ├── utils.py                   
│   ├── train.py                   -> Training code

Requirements and Installation

The recommended requirements are as follows.

  • Python >= 3.8
  • Pytorch >= 1.13.1
  • CUDA Version >= 11.7
  • Install required packages:
git clone https://github.com/PKU-YuanGroup/Open-Sora-Plan
cd Open-Sora-Plan
conda create -n opensora python=3.8 -y
conda activate opensora
pip install torch==1.13.1+cu117 torchvision==0.14.1+cu117 torchaudio==0.13.1 --extra-index-url https://download.pytorch.org/whl/cu117
pip install -r requirements.txt
cd src/sora/modules/ae/vqvae/videogpt/
pip install -e .
cd ..

Usage

Datasets

Refer to Data.md

Video-VQVAE (VideoGPT)

Training

cd src/sora/modules/ae/vqvae/videogpt

Refer to origin repo. Use the scripts/train_vqvae.py script to train a Video-VQVAE. Execute python scripts/train_vqvae.py -h for information on all available training settings. A subset of more relevant settings are listed below, along with default values.

VQ-VAE Specific Settings
  • --embedding_dim: number of dimensions for codebooks embeddings
  • --n_codes 2048: number of codes in the codebook
  • --n_hiddens 240: number of hidden features in the residual blocks
  • --n_res_layers 4: number of residual blocks
  • --downsample 4 4 4: T H W downsampling stride of the encoder
Training Settings
  • --gpus 2: number of gpus for distributed training
  • --sync_batchnorm: uses SyncBatchNorm instead of BatchNorm3d when using > 1 gpu
  • --gradient_clip_val 1: gradient clipping threshold for training
  • --batch_size 16: batch size per gpu
  • --num_workers 8: number of workers for each DataLoader
Dataset Settings
  • --data_path <path>: path to an hdf5 file or a folder containing train and test folders with subdirectories of videos
  • --resolution 128: spatial resolution to train on
  • --sequence_length 16: temporal resolution, or video clip length

Reconstructing

python rec_video.py --video-path "assets/origin_video_0.mp4" --rec-path "rec_video_0.mp4" --num-frames 500 --sample-rate 1
python rec_video.py --video-path "assets/origin_video_1.mp4" --rec-path "rec_video_1.mp4" --resolution 196 --num-frames 600 --sample-rate 1

We present four reconstructed videos in this demonstration, arranged from left to right as follows:

3s 596x336 10s 256x256 18s 196x196 24s 168x96

VideoDiT (DiT)

Training

sh scripts/train.sh

Sampling

Coming soon.

How to Contribute to the Open-Sora Plan Community

We greatly appreciate your contributions to the Open-Sora Plan open-source community and helping us make it even better than it is now!

For more details, please refer to the Contribution Guidelines

Acknowledgement

  • DiT: Scalable Diffusion Models with Transformers.
  • VideoGPT: Video Generation using VQ-VAE and Transformers.
  • FiT: Flexible Vision Transformer for Diffusion Model.
  • Positional Interpolation: Extending Context Window of Large Language Models via Positional Interpolation.

License

  • The service is a research preview intended for non-commercial use only. See LICENSE.txt for details.

Contributors

About

This project aim to reproducing Sora (Open AI T2V model), but we only have limited resource. We deeply wish the all open source community can contribute to this project.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 51.7%
  • Jupyter Notebook 48.0%
  • Shell 0.3%