--- language: - en tags: - information retrieval - embedding model - visual information retrieval metrics: - recall pipeline_tag: feature-extraction license: apache-2.0 --- # Memex: OCR-free Visual Document Embedding Model as Your Personal Librarian The model only takes images as document-side inputs and produce vectors representing document pages. `minicpm-visual-embedding-v0` is trained with over 200k query-visual document pairs, including textual document, visual document, arxiv figures, plots, charts, industry documents, textbooks, ebooks, and openly-available PDFs, etc. The performance of `minicpm-visual-embedding-v0` is on a par with our ablation text embedding model on text-oriented documents, and an advantages on visually-intensive documents. ![Memex Archtechture](images/memex.png) # News - 2024-07-14: 🤗 We released **online huggingface demo**! Try our [online demo](https://huggingface.co/spaces/bokesyo/minicpm-visual-embeeding-v0-demo)! - 2024-07-14: 😋 We released a **locally deployable Gradio demo** of `miniCPM-visual-embedding-v0`, take a look at [pipeline_gradio.py](https://huggingface.co/RhapsodyAI/minicpm-visual-embedding-v0/blob/main/pipeline_gradio.py). You can run `pipeline_gradio.py` to build a demo on your PC. - 2024-07-13: 💻 We released a **locally deployable command-line based demo** of `miniCPM-visual-embedding-v0` for users to retireve most relavant pages from a given PDF file (could be very long), take a look at [pipeline.py](https://huggingface.co/RhapsodyAI/minicpm-visual-embedding-v0/blob/main/pipeline.py). - 2024-06-27: 🚀 We released our first visual embedding model checkpoint minicpm-visual-embedding-v0 on [huggingface](https://huggingface.co/RhapsodyAI/minicpm-visual-embedding-v0). - 2024-05-08: 🌍 We [open-sourced](https://github.com/RhapsodyAILab/minicpm-visual-embedding-v0) our training code (full-parameter tuning with GradCache and DeepSpeed, supports large batch size across multiple GPUs with zero-stage1) and eval code. # Deploy on your PC **Please make sure you have at least 32GB RAM or GPU with 16GB memory.** 1. Pip install all dependencies: ``` Pillow==10.1.0 timm==0.9.10 torch==2.1.2 torchvision==0.16.2 transformers==4.36.0 sentencepiece==0.1.99 numpy==1.26.0 ``` 2. Download the model weights and modeling file, choose one of the following: - Download with git clone. ```bash git lfs install git clone https://huggingface.co/RhapsodyAI/minicpm-visual-embedding-v0 ``` - Download with huggingface-hub. ```bash pip install huggingface-hub huggingface-cli download --resume-download RhapsodyAI/minicpm-visual-embedding-v0 --local-dir minicpm-visual-embedding-v0 --local-dir-use-symlinks False ``` 3. To deploy a local demo, first check `pipeline_gradio.py`, change `model_path` to your local path and change `device` to your device (for users with Nvidia card, use `cuda`, for users with apple silicon, use `mps`, for users with only x86 cpu, please use `cpu`). then launch the demo: ```bash pip install gradio python pipeline_gradio.py ``` # For research purpose To run the model for research purpose, please refer the following code: ```python from transformers import AutoModel from transformers import AutoTokenizer from PIL import Image import torch device = 'cuda:0' # Load model, be sure to substitute `model_path` by your model path model_path = '/local/path/to/model' tokenizer = AutoTokenizer.from_pretrained(model_path, trust_remote_code=True) model = AutoModel.from_pretrained(model_path, trust_remote_code=True) model.to(device) # Load image to PIL.Image object image_1 = Image.open('/local/path/to/images/memex.png').convert('RGB') image_2 = Image.open('/local/path/to/images/us2020.png').convert('RGB') image_3 = Image.open('/local/path/to/images/hard_negative.png').convert('RGB') # User query query_instruction = 'Represent this query for retrieving relavant document: ' query = 'Who was elected as president of United States in 2020?' query_full = query_instruction + query # Embed image documents with torch.no_grad(): p_reps = model(text=['', '', ''], image=[image_1, image_2, image_3], tokenizer=tokenizer).reps # Embed text queries with torch.no_grad(): q_reps = model(text=[query_full], image=[None], tokenizer=tokenizer).reps # [B, s, d] # Calculate similarities scores = torch.matmul(q_reps, p_reps.T) print(scores) # tensor([[-0.0112, 0.3316, 0.2376]], device='cuda:0') ``` # Todos [x] Release huggingface space demo. [] Release the evaluation results. [] Release technical report. # Limitations - This checkpoint is an alpha version, and may not be strong in your tasks, for bad case, please create an issue to let us know, many thanks! - The modeling script `modeling_minicpmv` on `huggingface` is not standard yet, the inference code could be further improved. - The inference speed is low, because vision encoder uses `timm`, which does not yet support `flash-attn`. # Citation If you find our work useful, please consider cite us: ```bibtex @misc{RhapsodyEmbedding2024, author = {RhapsodyAI}, title = {OCR-free Visual Document Embedding Model as Your Personal Librarian}, year = {2024}, howpublished = {\url{https://huggingface.co/RhapsodyAI/minicpm-visual-embedding-v0}}, note = {Accessed: 2024-06-28} } ```