This RagDocs MCP server provides Retrieval-Augmented Generation capabilities using Qdrant vector database and Ollama/OpenAI embeddings. Built with TypeScript, it offers semantic search and management of documentation through vector similarity. The server implements automatic text chunking, embedding generation, and supports both local and cloud-based Qdrant setups. Key features include adding documents with metadata, semantic search, listing/organizing documents, and deletion. By abstracting vector storage and embedding complexities, it enables easy integration of RAG functionality into AI workflows. This implementation is particularly useful for applications requiring context-aware document retrieval, knowledge management systems, and AI-powered documentation tools.
Aucun avis encore. Soyez le premier à donner votre avis !
Connectez-vous pour rejoindre la conversation
Add a document to the RAG system. Parameters: url (required), content (required), metadata (optional)
Search through stored documents using semantic similarity. Parameters: query (required), options (optional)
List all stored documents with pagination and grouping options. Parameters: page (optional), pageSize (optional), groupByDomain (optional), sortBy (optional), sortOrder (optional)
Delete a document from the RAG system. Parameters: url (required)