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title: Latte
app_file: demo.py
sdk: gradio
sdk_version: 4.37.2

Latte: Latent Diffusion Transformer for Video Generation
Official PyTorch Implementation

Arxiv Project Page HF Demo

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This repo contains PyTorch model definitions, pre-trained weights, training/sampling code and evaluation code for our paper exploring latent diffusion models with transformers (Latte). You can find more visualizations on our project page.

Latte: Latent Diffusion Transformer for Video Generation
Xin Ma, Yaohui Wang*, Xinyuan Chen, Gengyun Jia, Ziwei Liu, Yuan-Fang Li, Cunjian Chen, Yu Qiao (*Corresponding Author & Project Lead)

News

  • (🔥 New) Jul 11, 2024 💥 Latte-1 is now integrated into diffusers. Thanks to @yiyixuxu, @sayakpaul, @a-r-r-o-w and @DN6. You can easily run Latte using the following code. We also support inference with 4/8-bit quantization, which can reduce GPU memory from 17 GB to 9 GB. Please refer to this tutorial for more information.
from diffusers import LattePipeline
from diffusers.models import AutoencoderKLTemporalDecoder
from torchvision.utils import save_image
import torch
import imageio

torch.manual_seed(0)

device = "cuda" if torch.cuda.is_available() else "cpu"
video_length = 16 # 1 (text-to-image) or 16 (text-to-video)
pipe = LattePipeline.from_pretrained("maxin-cn/Latte-1", torch_dtype=torch.float16).to(device)

# Using temporal decoder of VAE
vae = AutoencoderKLTemporalDecoder.from_pretrained("maxin-cn/Latte-1", subfolder="vae_temporal_decoder", torch_dtype=torch.float16).to(device)
pipe.vae = vae

prompt = "a cat wearing sunglasses and working as a lifeguard at pool."
videos = pipe(prompt, video_length=video_length, output_type='pt').frames.cpu()
  • (🔥 New) May 23, 2024 💥 Latte-1 is released! Pre-trained model can be downloaded here. We support both T2V and T2I. Please run bash sample/t2v.sh and bash sample/t2i.sh respectively.
  • (🔥 New) Feb 24, 2024 💥 We are very grateful that researchers and developers like our work. We will continue to update our LatteT2V model, hoping that our efforts can help the community develop. Our Latte discord channel is created for discussions. Coders are welcome to contribute.

  • (🔥 New) Jan 9, 2024 💥 An updated LatteT2V model initialized with the PixArt-α is released, the checkpoint can be found here.

  • (🔥 New) Oct 31, 2023 💥 The training and inference code is released. All checkpoints (including FaceForensics, SkyTimelapse, UCF101, and Taichi-HD) can be found here. In addition, the LatteT2V inference code is provided.

Setup

First, download and set up the repo:

git clone https://github.com/Vchitect/Latte
cd Latte

We provide an environment.yml file that can be used to create a Conda environment. If you only want to run pre-trained models locally on CPU, you can remove the cudatoolkit and pytorch-cuda requirements from the file.

conda env create -f environment.yml
conda activate latte

Sampling

You can sample from our pre-trained Latte models with sample.py. Weights for our pre-trained Latte model can be found here. The script has various arguments to adjust sampling steps, change the classifier-free guidance scale, etc. For example, to sample from our model on FaceForensics, you can use:

bash sample/ffs.sh

or if you want to sample hundreds of videos, you can use the following script with Pytorch DDP:

bash sample/ffs_ddp.sh

If you want to try generating videos from text, just run bash sample/t2v.sh. All related checkpoints will download automatically.

If you would like to measure the quantitative metrics of your generated results, please refer to here.

Training

We provide a training script for Latte in train.py. The structure of the datasets can be found here. This script can be used to train class-conditional and unconditional Latte models. To launch Latte (256x256) training with N GPUs on the FaceForensics dataset :

torchrun --nnodes=1 --nproc_per_node=N train.py --config ./configs/ffs/ffs_train.yaml

or If you have a cluster that uses slurm, you can also train Latte's model using the following scripts:

sbatch slurm_scripts/ffs.slurm

We also provide the video-image joint training scripts train_with_img.py. Similar to train.py scripts, these scripts can be also used to train class-conditional and unconditional Latte models. For example, if you want to train the Latte model on the FaceForensics dataset, you can use:

torchrun --nnodes=1 --nproc_per_node=N train_with_img.py --config ./configs/ffs/ffs_img_train.yaml

Contact Us

Yaohui Wang: wangyaohui@pjlab.org.cn Xin Ma: xin.ma1@monash.edu

Citation

If you find this work useful for your research, please consider citing it.

@article{ma2024latte,
  title={Latte: Latent Diffusion Transformer for Video Generation},
  author={Ma, Xin and Wang, Yaohui and Jia, Gengyun and Chen, Xinyuan and Liu, Ziwei and Li, Yuan-Fang and Chen, Cunjian and Qiao, Yu},
  journal={arXiv preprint arXiv:2401.03048},
  year={2024}
}

Acknowledgments

Latte has been greatly inspired by the following amazing works and teams: DiT and PixArt-α, we thank all the contributors for open-sourcing.

License

The code and model weights are licensed under LICENSE.