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CogVLM2 & CogVLM2-Video

中文版README

👋 Join our Wechat · 💡Try CogVLM2 Online 💡Try CogVLM2-Video Online

📍Experience the larger-scale CogVLM model on the ZhipuAI Open Platform.

Recent updates

  • 🔥 News: 2024/7/12: We have released CogVLM2-Video online web demo, welcome to experience it.
  • 🔥 News: 2024/7/8: We released the video understanding version of the CogVLM2 model, the CogVLM2-Video model. By extracting keyframes, it can interpret continuous images. The model can support videos of up to 1 minute. See more in our blog.
  • 🔥 News: 2024/6/8:We release CogVLM2 TGI Weight, which is a model can be inferred in TGI. See Inference Code in here
  • 🔥 News: 2024/6/5:We release GLM-4V-9B, which use the same data and training recipes as CogVLM2 but with GLM-9B as the language backbone. We removed visual experts to reduce the model size to 13B. More details at GLM-4 repo.
  • 🔥 News: 2024/5/24: We have released the Int4 version model, which requires only 16GB of video memory for inference. You can also run on-the-fly int4 version by passing --quant 4.
  • 🔥 News: 2024/5/20: We released the next generation model CogVLM2, which is based on llama3-8b and is equivalent (or better) to GPT-4V in most cases ! Welcome to download!

Model introduction

We launch a new generation of CogVLM2 series of models and open source two models based on Meta-Llama-3-8B-Instruct. Compared with the previous generation of CogVLM open source models, the CogVLM2 series of open source models have the following improvements:

  1. Significant improvements in many benchmarks such as TextVQA, DocVQA.
  2. Support 8K content length.
  3. Support image resolution up to 1344 * 1344.
  4. Provide an open source model version that supports both Chinese and English.

You can see the details of the CogVLM2 family of open source models in the table below:

Model Name cogvlm2-llama3-chat-19B cogvlm2-llama3-chinese-chat-19B cogvlm2-video-llama3-chat cogvlm2-video-llama3-base
Base Model Meta-Llama-3-8B-Instruct Meta-Llama-3-8B-Instruct Meta-Llama-3-8B-Instruct Meta-Llama-3-8B-Instruct
Language English Chinese, English English English
Task Image Understanding, Multi-turn Dialogue Model Image Understanding, Multi-turn Dialogue Model Video Understanding, Single-turn Dialogue Model Video Understanding, Base Model, No Dialogue
Model Link 🤗 Huggingface 🤖 ModelScope 💫 Wise Model 🤗 Huggingface 🤖 ModelScope 💫 Wise Model 🤗 Huggingface 🤖 ModelScope 🤗 Huggingface 🤖 ModelScope
Experience Link 📙 Official Page 📙 Official Page 🤖 ModelScope 📙 Official Page 🤖 ModelScope /
Int4 Model 🤗 Huggingface 🤖 ModelScope 💫 Wise Model 🤗 Huggingface 🤖 ModelScope 💫 Wise Model / /
Text Length 8K 8K 2K 2K
Image Resolution 1344 * 1344 1344 * 1344 224 * 224 (Video, take the first 24 frames) 224 * 224 (Video, take the average 24 frames)

Benchmark

Image Understand

Our open source models have achieved good results in many lists compared to the previous generation of CogVLM open source models. Its excellent performance can compete with some non-open source models, as shown in the table below:

Model Open Source LLM Size TextVQA DocVQA ChartQA OCRbench MMMU MMVet MMBench
CogVLM1.1 7B 69.7 - 68.3 590 37.3 52.0 65.8
LLaVA-1.5 13B 61.3 - - 337 37.0 35.4 67.7
Mini-Gemini 34B 74.1 - - - 48.0 59.3 80.6
LLaVA-NeXT-LLaMA3 8B - 78.2 69.5 - 41.7 - 72.1
LLaVA-NeXT-110B 110B - 85.7 79.7 - 49.1 - 80.5
InternVL-1.5 20B 80.6 90.9 83.8 720 46.8 55.4 82.3
QwenVL-Plus - 78.9 91.4 78.1 726 51.4 55.7 67.0
Claude3-Opus - - 89.3 80.8 694 59.4 51.7 63.3
Gemini Pro 1.5 - 73.5 86.5 81.3 - 58.5 - -
GPT-4V - 78.0 88.4 78.5 656 56.8 67.7 75.0
CogVLM2-LLaMA3 8B 84.2 92.3 81.0 756 44.3 60.4 80.5
CogVLM2-LLaMA3-Chinese 8B 85.0 88.4 74.7 780 42.8 60.5 78.9

All reviews were obtained without using any external OCR tools ("pixel only").

Video Understand

CogVLM2-Video achieves state-of-the-art performance on multiple video question answering tasks. The following diagram shows the performance of CogVLM2-Video on the MVBench, VideoChatGPT-Bench and Zero-shot VideoQA datasets (MSVD-QA, MSRVTT-QA, ActivityNet-QA). Where VCG-* refers to the VideoChatGPTBench, ZS-* refers to Zero-Shot VideoQA datasets and MV-* refers to main categories in the MVBench.

Quantitative Evaluation

Detailed performance

Performance on VideoChatGPT-Bench and Zero-shot VideoQA dataset:

Models VCG-AVG VCG-CI VCG-DO VCG-CU VCG-TU VCG-CO ZS-AVG
IG-VLM GPT4V 3.17 3.40 2.80 3.61 2.89 3.13 65.70
ST-LLM 3.15 3.23 3.05 3.74 2.93 2.81 62.90
ShareGPT4Video N/A N/A N/A N/A N/A N/A 46.50
VideoGPT+ 3.28 3.27 3.18 3.74 2.83 3.39 61.20
VideoChat2_HD_mistral 3.10 3.40 2.91 3.72 2.65 2.84 57.70
PLLaVA-34B 3.32 3.60 3.20 3.90 2.67 3.25 68.10
CogVLM2-Video 3.41 3.49 3.46 3.87 2.98 3.23 66.60

Performance on MVBench dataset:

Models AVG AA AC AL AP AS CO CI EN ER FA FP MA MC MD OE OI OS ST SC UA
IG-VLM GPT4V 43.7 72.0 39.0 40.5 63.5 55.5 52.0 11.0 31.0 59.0 46.5 47.5 22.5 12.0 12.0 18.5 59.0 29.5 83.5 45.0 73.5
ST-LLM 54.9 84.0 36.5 31.0 53.5 66.0 46.5 58.5 34.5 41.5 44.0 44.5 78.5 56.5 42.5 80.5 73.5 38.5 86.5 43.0 58.5
ShareGPT4Video 51.2 79.5 35.5 41.5 39.5 49.5 46.5 51.5 28.5 39.0 40.0 25.5 75.0 62.5 50.5 82.5 54.5 32.5 84.5 51.0 54.5
VideoGPT+ 58.7 83.0 39.5 34.0 60.0 69.0 50.0 60.0 29.5 44.0 48.5 53.0 90.5 71.0 44.0 85.5 75.5 36.0 89.5 45.0 66.5
VideoChat2_HD_mistral 62.3 79.5 60.0 87.5 50.0 68.5 93.5 71.5 36.5 45.0 49.5 87.0 40.0 76.0 92.0 53.0 62.0 45.5 36.0 44.0 69.5
PLLaVA-34B 58.1 82.0 40.5 49.5 53.0 67.5 66.5 59.0 39.5 63.5 47.0 50.0 70.0 43.0 37.5 68.5 67.5 36.5 91.0 51.5 79.0
CogVLM2-Video 62.3 85.5 41.5 31.5 65.5 79.5 58.5 77.0 28.5 42.5 54.0 57.0 91.5 73.0 48.0 91.0 78.0 36.0 91.5 47.0 68.5

Project structure

This open source repos will help developers to quickly get started with the basic calling methods of the CogVLM2 open source model, fine-tuning examples, OpenAI API format calling examples, etc. The specific project structure is as follows, you can click to enter the corresponding tutorial link:

basic_demo folder includes:

  • CLI demo, inference CogVLM2 model.
  • CLI demo, inference CogVLM2 model using multiple GPUs.
  • Web demo, provided by chainlit.
  • API server, in OpenAI format.
  • Int4 can be easily enabled with --quant 4, memory usage is 16GB.

finetune_demo folder includes:

  • peft framework's efficient fine-tuning example.

video_demo folder includes:

  • CLI demo, inference CogVLM2-Video model.
  • Int4 can be easily enabled with --quant 4, with 16GB memory usage.
  • Restful API server.
  • Gradio demo.

Useful Links

In addition to the official inference code, you can also refer to the following community-provided inference solutions:

License

This model is released under the CogVLM2 CogVLM2 LICENSE. For models built with Meta Llama 3, please also adhere to the LLAMA3_LICENSE.

Citation

If you find our work helpful, please consider citing the following papers

@misc{wang2023cogvlm,
      title={CogVLM: Visual Expert for Pretrained Language Models}, 
      author={Weihan Wang and Qingsong Lv and Wenmeng Yu and Wenyi Hong and Ji Qi and Yan Wang and Junhui Ji and Zhuoyi Yang and Lei Zhao and Xixuan Song and Jiazheng Xu and Bin Xu and Juanzi Li and Yuxiao Dong and Ming Ding and Jie Tang},
      year={2023},
      eprint={2311.03079},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}