YAML Metadata
Warning:
empty or missing yaml metadata in repo card
(https://huggingface.co/docs/hub/model-cards#model-card-metadata)
Joseon_Taizong (from ๅคง็ไธๅฎ ๋์์ธ์ข ) HunyuanVideo LoRA
This repository contains the necessary setup and scripts to generate videos using the HunyuanVideo model with a LoRA (Low-Rank Adaptation) fine-tuned for Joseon_Taizong. Below are the instructions to install dependencies, download models, and run the demo.
Installation
Step 1: Install System Dependencies
Run the following command to install required system packages:
sudo apt-get update && sudo apt-get install git-lfs ffmpeg cbm
Step 2: Clone the Repository
Clone the repository and navigate to the project directory:
git clone https://huggingface.co/svjack/Joseon_Taizong_HunyuanVideo_lora
cd Joseon_Taizong_HunyuanVideo_lora
Step 3: Install Python Dependencies
Install the required Python packages:
conda create -n py310 python=3.10
conda activate py310
pip install ipykernel
python -m ipykernel install --user --name py310 --display-name "py310"
pip install -r requirements.txt
pip install ascii-magic matplotlib tensorboard huggingface_hub
pip install moviepy==1.0.3
pip install sageattention==1.0.6
pip install torch==2.5.0 torchvision
Download Models
Step 1: Download HunyuanVideo Model
Download the HunyuanVideo model and place it in the ckpts directory:
huggingface-cli download tencent/HunyuanVideo --local-dir ./ckpts
Step 2: Download LLaVA Model
Download the LLaVA model and preprocess it:
cd ckpts
huggingface-cli download xtuner/llava-llama-3-8b-v1_1-transformers --local-dir ./llava-llama-3-8b-v1_1-transformers
wget https://raw.githubusercontent.com/Tencent/HunyuanVideo/refs/heads/main/hyvideo/utils/preprocess_text_encoder_tokenizer_utils.py
python preprocess_text_encoder_tokenizer_utils.py --input_dir llava-llama-3-8b-v1_1-transformers --output_dir text_encoder
Step 3: Download CLIP Model
Download the CLIP model for the text encoder:
huggingface-cli download openai/clip-vit-large-patch14 --local-dir ./text_encoder_2
Demo
Generate Video 1: Joseon_Taizong bow
Run the following command to generate a video of Joseon_Taizong:
python hv_generate_video.py \
--fp8 \
--video_size 544 960 \
--video_length 60 \
--infer_steps 30 \
--prompt "Joseon Taizong is captured mid-action, drawing a bow with intense focus. He wears a traditional red Korean hanbok adorned with intricate dragon designs, and a black hat with a white circular emblem. The background features a colorful tent with green and red patterns, and the sunlight filters through, casting a warm glow. Two other figures, one partially visible, are dressed in similar traditional attire." \
--save_path . \
--output_type both \
--dit ckpts/hunyuan-video-t2v-720p/transformers/mp_rank_00_model_states.pt \
--attn_mode sdpa \
--vae ckpts/hunyuan-video-t2v-720p/vae/pytorch_model.pt \
--vae_chunk_size 32 \
--vae_spatial_tile_sample_min_size 128 \
--text_encoder1 ckpts/text_encoder \
--text_encoder2 ckpts/text_encoder_2 \
--seed 1234 \
--lora_multiplier 1.0 \
--lora_weight Taizong_im_lora_dir/Taizong_im_lora-000012.safetensors
Generate Video 2: Joseon_Taizong talk
Run the following command to generate a video of Joseon_Taizong:
python hv_generate_video.py \
--fp8 \
--video_size 544 960 \
--video_length 60 \
--infer_steps 30 \
--prompt "Joseon Taizong stands with commanding presence. He wears a resplendent golden dragon robe, a symbol of imperial authority, paired with a black hat featuring a white circular emblem. The background showcases a colorful tent with green and red patterns, as sunlight filters through, casting a warm glow." \
--save_path . \
--output_type both \
--dit ckpts/hunyuan-video-t2v-720p/transformers/mp_rank_00_model_states.pt \
--attn_mode sdpa \
--vae ckpts/hunyuan-video-t2v-720p/vae/pytorch_model.pt \
--vae_chunk_size 32 \
--vae_spatial_tile_sample_min_size 128 \
--text_encoder1 ckpts/text_encoder \
--text_encoder2 ckpts/text_encoder_2 \
--seed 1234 \
--lora_multiplier 1.0 \
--lora_weight Taizong_im_lora_dir/Taizong_im_lora-000016.safetensors
Notes
- Ensure you have sufficient GPU resources for video generation.
- Adjust the
--video_size,--video_length, and--infer_stepsparameters as needed for different output qualities and lengths. - The
--promptparameter can be modified to generate videos with different scenes or actions.
Inference Providers
NEW
This model isn't deployed by any Inference Provider.
๐
Ask for provider support