--- license: apache-2.0 --- # Divot: Diffusion Powers Video Tokenizer for Comprehension and Generation [![Static Badge](https://img.shields.io/badge/Github-black)](https://github.com/TencentARC/Divot) >We introduce Divot, a **Di**ffusion-Powered **V**ide**o** **T**okenizer, which leverages the diffusion process for self-supervised video representation learning. We posit that if a video diffusion model can effectively de-noise video clips by taking the features of a video tokenizer as the condition, then the tokenizer has successfully captured robust spatial and temporal information. Additionally, the video diffusion model inherently functions as a de-tokenizer, decoding videos from their representations. Building upon the Divot tokenizer, we present **Divot-LLM** through video-to-text autoregression and text-to-video generation by modeling the distributions of continuous-valued Divot features with a Gaussian Mixture Model. All models, training code and inference code are released! ## TODOs - [x] Release the pretrained tokenizer and de-tokenizer of Divot. - [x] Release the pretrained and instruction tuned model of Divot-LLM. - [x] Release inference code of Divot. - [x] Release training and inference code of Divot-LLM. - [ ] Release training code of Divot. - [ ] Release de-tokenizer adaptation training code. ## Introduction ![image](https://huggingface.co/TencentARC/Divot/resolve/main/method.jpg) We utilize the diffusion procedure to learn **a video tokenizer** in a self-supervised manner for unified comprehension and generation, where the spatiotemporal representations serve as the condition of a diffusion model to de-noise video clips. Additionally, the proxy diffusion model functions as a **de-tokenizer** to decode realistic video clips from the video representations. After training the the Divot tokenizer, video features from the Divot tokenizer are fed into the LLM to perform next-word prediction for video comprehension, while learnable queries are input into the LLM to model the distributions of Divot features using **a Gaussian Mixture Model (GMM)** for video generation. During inference, video features are sampled from the predicted GMM distribution to decode videos using the de-tokenizer. ## Usage ### Dependencies - Python >= 3.8 (Recommend to use [Anaconda](https://www.anaconda.com/download/#linux)) - [PyTorch >=2.1.0](https://pytorch.org/) - NVIDIA GPU + [CUDA](https://developer.nvidia.com/cuda-downloads) ### Installation Clone the repo and install dependent packages ```bash git clone https://github.com/TencentARC/Divot.git cd Divot pip install -r requirements.txt ``` ### Model Weights We release the pretrained tokenizer and de-tokenizer, pre-trained and instruction-tuned Divot-LLM in [Divot](https://huggingface.co/TencentARC/Divot/). Please download the checkpoints and save them under the folder `./pretrained`. For example, `./pretrained/Divot_tokenizer_detokenizer`. You also need to download [Mistral-7B-Instruct-v0.1](https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.1) and [CLIP-ViT-H-14-laion2B-s32B-b79K](https://huggingface.co/laion/CLIP-ViT-H-14-laion2B-s32B-b79K), and save them under the folder `./pretrained`. ### Inference #### Video Reconstruction with Divot ```bash python3 src/tools/eval_Divot_video_recon.py ``` #### Video Comprehension with Divot-LLM ```bash python3 src/tools/eval_Divot_video_comp.py ``` #### Video Generation with Divot-LLM ```bash python3 src/tools/eval_Divot_video_gen.py ``` ### Training #### Pre-training 1. Download the checkpoints of pre-trained [Mistral-7B-Instruct-v0.1](https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.1) and [CLIP-ViT-H-14-laion2B-s32B-b79K](https://huggingface.co/laion/CLIP-ViT-H-14-laion2B-s32B-b79K) , and save them under the folder `./pretrained`. 2. Prepare the training data in the format of webdataset. 3. Run the following script. ```bash sh scripts/train_Divot_pretrain_comp_gen.sh ``` #### Instruction-tuning 1. Download the checkpoints of pre-trained Divot tokenizer and Divot-LLM in [Divot](https://huggingface.co/TencentARC/Divot/), and save them under the folder `./pretrained`. 2. Prepare the instruction data in the format of webdataset (for generation) and jsonl (for comprehension, where each line stores a dictionary used to specify the video_path, question, and answer). 3. Run the following script. ```bash ### For video comprehension sh scripts/train_Divot_sft_comp.sh ### For video generation sh scripts/train_Divot_sft_gen.sh ``` #### Inference with your own model 1. Obtain "pytorch_model.bin" with the following script. ```bash cd train_output/sft_comp/checkpoint-xxxx python3 zero_to_fp32.py . pytorch_model.bin ``` 2. Merge your trained lora with the original LLM model using the following script. ```bash python3 src/tools/merge_agent_lora_weight.py ``` 3. Load your merged model in "mistral7b_merged_xxx" and and corresponding "agent" path, For example, ```bash llm_cfg_path = 'configs/clm_models/mistral7b_merged_sft_comp.yaml' agent_cfg_path = 'configs/clm_models/agent_7b_in64_out64_video_gmm_sft_comp.yaml' ``` ## License `Divot` is licensed under the Apache License Version 2.0 for academic purpose only except for the third-party components listed in [License](License.txt). ## Acknowledge Our code for Divot tokenizer and de-tokenizer is built upon [DynamiCrafter](https://github.com/Doubiiu/DynamiCrafter). Thanks for their excellent work!