HunyuanVideo-I2V πŸŒ…

Following the great successful open-sourcing of our HunyuanVideo, we proudly present the HunyuanVideo-I2V, a new image-to-video generation framework to accelerate open-source community exploration!

This repo contains offical PyTorch model definitions, pre-trained weights and inference/sampling code. You can find more visualizations on our project page. Meanwhile, we have released the LoRA training code for customizable special effects, which can be used to create more interesting video effects.

HunyuanVideo: A Systematic Framework For Large Video Generation Model

πŸ”₯πŸ”₯πŸ”₯ News!!

  • Mar 06, 2025: πŸ‘‹ We release the inference code and model weights of HunyuanVideo-I2V. Download.

πŸ“‘ Open-source Plan

  • HunyuanVideo-I2V (Image-to-Video Model)
    • Lora training scripts
    • Inference
    • Checkpoints
    • ComfyUI
    • Multi-gpus Sequence Parallel inference (Faster inference speed on more gpus)
    • Diffusers
    • FP8 Quantified weight

Contents


HunyuanVideo-I2V Overall Architecture

Leveraging the advanced video generation capabilities of HunyuanVideo, we have extended its application to image-to-video generation tasks. To achieve this, we employ an image latent concatenation technique to effectively reconstruct and incorporate reference image information into the video generation process.

Since we utilizes a pre-trained Multimodal Large Language Model (MLLM) with a Decoder-Only architecture as the text encoder, we can significantly enhance the model's ability to comprehend the semantic content of the input image and to seamlessly integrate information from both the image and its associated caption. Specifically, the input image is processed by the MLLM to generate semantic image tokens. These tokens are then concatenated with the video latent tokens, enabling comprehensive full-attention computation across the combined data.

The overall architecture of our system is designed to maximize the synergy between image and text modalities, ensuring a robust and coherent generation of video content from static images. This integration not only improves the fidelity of the generated videos but also enhances the model's ability to interpret and utilize complex multimodal inputs. The overall architecture is as follows.

πŸ“œ Requirements

The following table shows the requirements for running HunyuanVideo-I2V model (batch size = 1) to generate videos:

Model Resolution GPU Peak Memory
HunyuanVideo-I2V 720p 60GB
  • An NVIDIA GPU with CUDA support is required.
    • The model is tested on a single 80G GPU.
    • Minimum: The minimum GPU memory required is 60GB for 720p.
    • Recommended: We recommend using a GPU with 80GB of memory for better generation quality.
  • Tested operating system: Linux

πŸ› οΈ Dependencies and Installation

Begin by cloning the repository:

git clone https://github.com/tencent/HunyuanVideo-I2V
cd HunyuanVideo-I2V

Installation Guide for Linux

We recommend CUDA versions 12.4 or 11.8 for the manual installation.

Conda's installation instructions are available here.

# 1. Create conda environment
conda create -n HunyuanVideo-I2V python==3.11.9

# 2. Activate the environment
conda activate HunyuanVideo-I2V

# 3. Install PyTorch and other dependencies using conda
# For CUDA 12.4
conda install pytorch==2.4.0 torchvision==0.19.0 torchaudio==2.4.0 pytorch-cuda=12.4 -c pytorch -c nvidia

# 4. Install pip dependencies
python -m pip install -r requirements.txt

# 5. Install flash attention v2 for acceleration (requires CUDA 11.8 or above)
python -m pip install ninja
python -m pip install git+https://github.com/Dao-AILab/[email protected]

In case of running into float point exception(core dump) on the specific GPU type, you may try the following solutions:

# Making sure you have installed CUDA 12.4, CUBLAS>=12.4.5.8, and CUDNN>=9.00 (or simply using our CUDA 12 docker image).
pip install nvidia-cublas-cu12==12.4.5.8
export LD_LIBRARY_PATH=/opt/conda/lib/python3.8/site-packages/nvidia/cublas/lib/

Additionally, HunyuanVideo-I2V also provides a pre-built Docker image. Use the following command to pull and run the docker image.

# For CUDA 12.4 (updated to avoid float point exception)
docker pull hunyuanvideo/hunyuanvideo-i2v:cuda_12
docker run -itd --gpus all --init --net=host --uts=host --ipc=host --name hunyuanvideo-i2v --security-opt=seccomp=unconfined --ulimit=stack=67108864 --ulimit=memlock=-1 --privileged hunyuanvideo/hunyuanvideo-i2v:cuda_12

🧱 Download Pretrained Models

The details of download pretrained models are shown here.

πŸ”‘ Single-gpu Inference

Similar to HunyuanVideo, HunyuanVideo-I2V supports high-resolution video generation, with resolution up to 720P and video length up to 129 frames (5 seconds).

Using Command Line

cd HunyuanVideo-I2V

python3 sample_image2video.py \
    --model HYVideo-T/2 \
    --prompt "A man with short gray hair plays a red electric guitar." \
    --i2v-mode \
    --i2v-image-path ./assets/demo/i2v/imgs/0.png \
    --i2v-resolution 720p \
    --video-length 129 \
    --infer-steps 50 \
    --flow-reverse \
    --flow-shift 17.0 \
    --seed 0 \
    --use-cpu-offload \
    --save-path ./results 

More Configurations

We list some more useful configurations for easy usage:

Argument Default Description
--prompt None The text prompt for video generation.
--model HYVideo-T/2-cfgdistill Here we use HYVideo-T/2 for I2V, HYVideo-T/2-cfgdistill is used for T2V mode.
--i2v-mode False Whether to open i2v mode.
--i2v-image-path ./assets/demo/i2v/imgs/0.png The reference image for video generation.
--i2v-resolution 720p The resolution for the generated video.
--video-length 129 The length of the generated video.
--infer-steps 50 The number of steps for sampling.
--flow-shift 7.0 Shift factor for flow matching schedulers .
--flow-reverse False If reverse, learning/sampling from t=1 -> t=0.
--seed None The random seed for generating video, if None, we init a random seed.
--use-cpu-offload False Use CPU offload for the model load to save more memory, necessary for high-res video generation.
--save-path ./results Path to save the generated video.

πŸŽ‰ Customizable I2V LoRA effects training

Requirements

The following table shows the requirements for training HunyuanVideo-I2V lora model (batch size = 1) to generate videos:

Model Resolution GPU Peak Memory
HunyuanVideo-I2V 360p 79GB
  • An NVIDIA GPU with CUDA support is required.
    • The model is tested on a single 80G GPU.
    • Minimum: The minimum GPU memory required is 79GB for 360p.
    • Recommended: We recommend using a GPU with 80GB of memory for better generation quality.
  • Tested operating system: Linux
  • Note: You can train with 360p data and directly infer 720p videos

Environment

pip install -r requirements.txt

Training data construction

Prompt description: The trigger word is written directly in the video caption. It is recommended to use a phrase or short sentence.

For example, AI hair growth effect (trigger): rapid_hair_growth, The hair of the characters in the video is growing rapidly. + original prompt

After having the training video and prompt pair, refer to here for training data construction.

Training

sh scripts/run_train_image2video_lora.sh

We list some training specific configurations for easy usage:

Argument Default Description
SAVE_BASE . Root path for saving experimental results.
EXP_NAME i2v_lora Path suffix for saving experimental results.
DATA_JSONS_DIR ./assets/demo/i2v_lora/train_dataset/processed_data/json_path Data jsons dir generated by hyvideo/hyvae_extract/start.sh.
CHIEF_IP 127.0.0.1 Master node IP of the machine.

After training, you can find pytorch_lora_kohaya_weights.safetensors in {SAVE_BASE}/log_EXP/*_{EXP_NAME}/checkpoints/global_step{*}/pytorch_lora_kohaya_weights.safetensors and set it in --lora-path to perform inference.

Inference

python3 sample_image2video.py \
    --model HYVideo-T/2 \
    --prompt "Two people hugged tightly, In the video, two people are standing apart from each other. They then move closer to each other and begin to hug tightly. The hug is very affectionate, with the two people holding each other tightly and looking into each other's eyes. The interaction is very emotional and heartwarming, with the two people expressing their love and affection for each other." \
    --i2v-mode \
    --i2v-image-path ./assets/demo/i2v_lora/imgs/embrace.png \
    --i2v-resolution 720p \
    --infer-steps 50 \
    --video-length 129 \
    --flow-reverse \
    --flow-shift 5.0 \
    --seed 0 \
    --use-cpu-offload \
    --save-path ./results \
    --use-lora \
    --lora-scale 1.0 \
    --lora-path ./ckpts/hunyuan-video-i2v-720p/lora/embrace_kohaya_weights.safetensors

We list some lora specific configurations for easy usage:

Argument Default Description
--use-lora False Whether to open lora mode.
--lora-scale 1.0 Fusion scale for lora model.
--lora-path "" Weight path for lora model.

πŸ”— BibTeX

If you find HunyuanVideo useful for your research and applications, please cite using this BibTeX:

@misc{kong2024hunyuanvideo,
      title={HunyuanVideo: A Systematic Framework For Large Video Generative Models}, 
      author={Weijie Kong, Qi Tian, Zijian Zhang, Rox Min, Zuozhuo Dai, Jin Zhou, Jiangfeng Xiong, Xin Li, Bo Wu, Jianwei Zhang, Kathrina Wu, Qin Lin, Aladdin Wang, Andong Wang, Changlin Li, Duojun Huang, Fang Yang, Hao Tan, Hongmei Wang, Jacob Song, Jiawang Bai, Jianbing Wu, Jinbao Xue, Joey Wang, Junkun Yuan, Kai Wang, Mengyang Liu, Pengyu Li, Shuai Li, Weiyan Wang, Wenqing Yu, Xinchi Deng, Yang Li, Yanxin Long, Yi Chen, Yutao Cui, Yuanbo Peng, Zhentao Yu, Zhiyu He, Zhiyong Xu, Zixiang Zhou, Zunnan Xu, Yangyu Tao, Qinglin Lu, Songtao Liu, Dax Zhou, Hongfa Wang, Yong Yang, Di Wang, Yuhong Liu, and Jie Jiang, along with Caesar Zhong},
      year={2024},
      archivePrefix={arXiv preprint arXiv:2412.03603},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2412.03603}, 
}

Acknowledgements

We would like to thank the contributors to the SD3, FLUX, Llama, LLaVA, Xtuner, diffusers and HuggingFace repositories, for their open research and exploration. Additionally, we also thank the Tencent Hunyuan Multimodal team for their help with the text encoder.

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