匿名用户2024年07月31日
30阅读
所属分类aiPytorch
开源地址https://modelscope.cn/models/mapjack/big_model
授权协议Apache License 2.0

作品详情

Emu is a multimodal generalist that can seamlessly generate images and texts in multimodal context. Emu is trained with a unified autoregressive objective, i.e., predict-the-next-element, including both visual embeddings and textual tokens. Trained under this objective, Emu can serve as a generalist interface for both image-to-text and text-to-image tasks.

Generalist Interface

Emu serves as a generalist interface capable of diverse multimodal tasks, such as image captioning, image/video question answering, and text-to-image generation, together with new abilities like in-context text and image generation, and image blending:

Setup

Clone this repository and install required packages:

git clone https://github.com/baaivision/Emu
cd Emu

pip install -r requirements.txt

Model Weights

We release the pretrained and instruction-tuned weights of Emu. Our weights are subject to LLaMA's license.

Model name Weight
Emu ? HF link (27GB)
Emu-I ? HF link (27GB)

Inference

At present, we provide inference code that can process interleaved image-text and video as input, and output text.

For instruction-tuned model, we provide examples for image captioning, visual question answering, and interleaved multi-image understanding:

python inference.py --instruct --ckpt-path $Instruct_CKPT_PATH

For pretrained model, we provide an example for in-context learning:

python inference.py --ckpt-path $Pretrain_CKPT_PATH

Schedule

We are committed to open-sourcing all Emu related materials, including:

  • [x] The weights of Emu and Emu-I
  • [x] Inference example for interleaved image-text as input, text as output
  • [x] Video inference example
  • [ ] Weights of image decoder & image generation/blending example
  • [ ] YT-Storyboard-1B pretraining data
  • [ ] Pretraining code
  • [ ] Instruction tuning code
  • [ ] Evaluation code

We hope to foster the growth of our community through open-sourcing and promoting collaboration?. Let's step towards multimodal intelligence together?.

Acknowledgement

We thank the great work from LLaMA, BLIP-2, Stable Diffusion, and FastChat.

Citation

If you find Emu useful for your research and applications, please consider starring this repository and citing:

@article{Emu,
  title={Generative Pretraining in Multimodality},
  author={Sun, Quan and Yu, Qiying and Cui, Yufeng and Zhang, Fan and Zhang, Xiaosong and Wang, Yueze and Gao, Hongcheng and Liu, Jingjing and Huang, Tiejun and Wang, Xinlong},
  publisher={arXiv preprint arXiv:2307.05222},
  year={2023},
}
声明:本文仅代表作者观点,不代表本站立场。如果侵犯到您的合法权益,请联系我们删除侵权资源!如果遇到资源链接失效,请您通过评论或工单的方式通知管理员。未经允许,不得转载,本站所有资源文章禁止商业使用运营!
下载安装【程序员客栈】APP
实时对接需求、及时收发消息、丰富的开放项目需求、随时随地查看项目状态

评论