Pdf-Rag icon

Pdf-Rag

2

Enables semantic search capabilities for PDF documents through a web interface or via the Model Context Protocol (MCP) for AI tool integration.

关于

This system provides a powerful document knowledge base by leveraging PDF processing, vector storage, and the MCP protocol. It allows users to upload, process, and query PDF documents through a modern web interface or integrate with AI tools like Cursor via the MCP protocol, enabling efficient semantic search across processed documents.

主要功能

  • Include a React/Chakra UI frontend for document management and querying.
  • 2 GitHub stars
  • Offer MCP protocol support for integration with AI tools like Cursor.
  • Enable vector-based semantic search across all processed documents.
  • Upload and process PDF documents, extracting, chunking, and vectorizing content automatically.
  • Provide WebSocket-based real-time status updates during document processing.

使用案例

  • Providing a searchable archive of PDF documents for research and analysis.
  • Integrating a PDF knowledge base with Cursor for enhanced code generation and understanding.
  • Creating a document Q&A system that responds to queries based on PDF content.
Craft Better Prompts with AnyPrompt
Sponsored