LanceDB
Interact with on-disk documents using agentic RAG and hybrid search via LanceDB.
🗄️ LanceDB MCP Server for LLMS
A Model Context Protocol (MCP) server that enables LLMs to interact directly the documents that they have on-disk through agentic RAG and hybrid search in LanceDB. Ask LLMs questions about the dataset as a whole or about specific documents.
✨ Features
- 🔍 LanceDB-powered serverless vector index and document summary catalog.
- 📊 Efficient use of LLM tokens. The LLM itself looks up what it needs when it needs.
- 📈 Security. The index is stored locally so no data is transferred to the Cloud when using a local LLM.
🚀 Quick Start
To get started, create a local directory to store the index and add this configuration to your Claude Desktop config file:
MacOS: ~/Library/Application\ Support/Claude/claude_desktop_config.json
Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"lancedb": {
"command": "npx",
"args": [
"lance-mcp",
"PATH_TO_LOCAL_INDEX_DIR"
]
}
}
}
Prerequisites
- Node.js 18+
- npx
- MCP Client (Claude Desktop App for example)
- Summarization and embedding models installed (see config.ts - by default we use Ollama models)
ollama pull snowflake-arctic-embed2ollama pull llama3.1:8b
Demo
Local Development Mode:
{
"mcpServers": {
"lancedb": {
"command": "node",
"args": [
"PATH_TO_LANCE_MCP/dist/index.js",
"PATH_TO_LOCAL_INDEX_DIR"
]
}
}
}
Use npm run build to build the project.
Use npx @modelcontextprotocol/inspector dist/index.js PATH_TO_LOCAL_INDEX_DIR to run the MCP tool inspector.
Seed Data
The seed script creates two tables in LanceDB - one for the catalog of document summaries, and another one - for vectorized documents' chunks. To run the seed script use the following command:
npm run seed -- --dbpath <PATH_TO_LOCAL_INDEX_DIR> --filesdir <PATH_TO_DOCS>
You can use sample data from the docs/ directory. Feel free to adjust the default summarization and embedding models in the config.ts file. If you need to recreate the index, simply rerun the seed script with the --overwrite option.
Catalog
- Document summary
- Metadata
Chunks
- Vectorized document chunk
- Metadata
🎯 Example Prompts
Try these prompts with Claude to explore the functionality:
"What documents do we have in the catalog?"
"Why is the US healthcare system so broken?"
📝 Available Tools
The server provides these tools for interaction with the index:
Catalog Tools
catalog_search: Search for relevant documents in the catalog
Chunks Tools
chunks_search: Find relevant chunks based on a specific document from the catalogall_chunks_search: Find relevant chunks from all known documents
📜 License
This project is licensed under the MIT License - see the LICENSE file for details.
संबंधित सर्वर
Legifrance
Query French legal databases using the Legifrance API.
BigQuery
Inspect database schemas and execute queries on Google BigQuery.
Dynamics 365 MCP Server by CData
A read-only MCP server by CData that enables LLMs to query live data from Dynamics 365. Requires the CData JDBC Driver for Dynamics 365.
Octodet Elasticsearch MCP Server
An MCP server for interacting with Elasticsearch clusters, enabling LLM-powered applications to search, update, and manage data.
Python MSSQL MCP Server
A Python MCP server for Microsoft SQL Server, enabling schema inspection and SQL query execution.
Momento MCP Server
An MCP server providing a simple interface to Momento's serverless caching service.
NCBI Entrez MCP Server
Access NCBI's suite of APIs, including E-utilities, BLAST, PubChem, and PMC services.
BigQuery
Server implementation for Google BigQuery integration that enables direct BigQuery database access and querying capabilities
ChatQL MCP Server
Query SQL Server databases using natural language with OpenAI GPT models.
CData Square Server
A read-only MCP server for querying live data from Square using the CData JDBC Driver.