deep-div/Multimodel-RAG
Multimodal RAG ingests PDFs and generates combined text and image outputs by retrieving and grounding relevant information from the documents.
This project helps you understand complex PDF documents by not only summarizing their text but also showing you the relevant images. You feed it a PDF document, and it provides answers or summaries that include both text and supporting images directly from the original document. It's ideal for researchers, analysts, or anyone who needs to quickly grasp the full context of information in detailed reports or papers.
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Use this if you need to extract and understand both textual and visual information from PDF documents simultaneously.
Not ideal if your documents are primarily plain text without significant visual content, or if you only need text-based summaries.
Stars
20
Forks
7
Language
Jupyter Notebook
License
Apache-2.0
Category
Last pushed
May 29, 2025
Commits (30d)
0
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