RAGDocs (Vector Documentation Search)

GitHub Repo
N/A
Provider
Jumasheff
Classification
COMMUNITY
Downloads
N/A(+N/A this week)
Released On
Mar 16, 2025

About

Unlock the ability to search and retrieve semantic documentation effortlessly through vector databases. Get URL extraction, source oversight, and index queuing, paired with diverse embedding providers such as Ollama and OpenAI.


Explore Similar MCP Servers

Community

Crawl4AI RAG

Enhance your knowledge access by leveraging a cutting-edge Model Context Protocol (MCP) that combines web crawling and RAG capabilities. This innovative approach allows for seamless retrieval and storage of website content in vector databases, paving the way for advanced semantic search functionalities across crawled data.

Official

Ragie

Enhances connectivity with Ragie's knowledge repository system for streamlined retrieval and extraction of data from extensive datasets, optimizing search and information access.

Official

Cloudflare Documentation

Enhance the linkage between AI platforms and Cloudflare's resources via Vectorize technology, facilitating advanced semantic search capabilities for accessing pertinent information on Cloudflare's offerings.

Official

Milvus Vector Database

Enhance your search capabilities by linking with the Milvus vector database, facilitating vector search, full-text search, and versatile queries. Ideal for boosting semantic search and streamlining knowledge retrieval processes.

Community

GraphRAG

Enhance your document search experience with a potent combination of Neo4j graph database and Qdrant vector database. Uncover semantic connections and expand structural context by seamlessly following relationships.

Community

RAG Docs

Enhances information retrieval through semantic search functionality and a vector database (Qdrant), facilitating streamlined access to extensive document repositories.

Community

LanceDB

Unlock the potential of LanceDB integration with seamless support for querying, insertion, and administration of vector data. Enhance your similarity search and semantic analysis capabilities effortlessly.

Community

RAG Documentation

Experience advanced knowledge access with seamless integration of Qdrant vector search and documentation retrieval in Model Context Protocol (MCP). Unlock context-aware responses and enable semantic querying for a richer user experience.

Community

Qdrant with OpenAI Embeddings

Unlock the potential of AI applications by seamlessly integrating them with Qdrant vector databases through the innovative Model Context Protocol (MCP). This cutting-edge protocol leverages OpenAI embeddings to empower semantic search capabilities, facilitating contextual document retrieval and enhancing knowledge base query processes.

Official

Vectorize

Enhance your document search, text analysis, and research tasks by integrating Bridges Claude with Vectorize.io's cutting-edge vector database solutions. Leveraging TypeScript tools, this integration ensures secure access through organization IDs and API tokens, enabling seamless authentication for enhanced efficiency and productivity.

Community

ChromaDB

Enhance your natural language processing and information retrieval projects with seamless integration of advanced capabilities from ChromaDB vector database. Experience optimized semantic document search, storage, and retrieval functionalities for enhanced efficiency.

Community

Documentation Search

Discover the latest content from well-known documentation platforms like LangChain, LlamaIndex, and OpenAI with seamless Google search integration and advanced content retrieval capabilities.

Community

Journal RAG

Easily search and retrieve personal notes and reflections from your markdown journal using advanced vector database technology, enhancing the way you recall past memories, ideas, and events.

Community

Rust Local RAG

Discover a cutting-edge Model Context Protocol (MCP) offering swift local document access and management. Leveraging Rust for unparalleled PDF handling capabilities and semantic search powered by Ollama embeddings, this protocol efficiently indexes PDF files within designated folders. Enjoy rapid document retrieval sans reliance on external solutions.

Community

Pinecone Vector DB

Utilize Pinecone's vector databases to enhance semantic search capabilities and RAG functionality.