LanceDB Node.js Vector Search
Vector search using the LanceDB vector database and Ollama embedding models.
LanceDB Node.js Vector Search
A Node.js implementation for vector search using LanceDB and Ollama's embedding model.
Overview
This project demonstrates how to:
- Connect to a LanceDB database
- Create custom embedding functions using Ollama
- Perform vector similarity search against stored documents
- Process and display search results
Prerequisites
- Node.js (v14 or later)
- Ollama running locally with the
nomic-embed-textmodel - LanceDB storage location with read/write permissions
Installation
- Clone the repository
- Install dependencies:
pnpm install
Dependencies
@lancedb/lancedb: LanceDB client for Node.jsapache-arrow: For handling columnar datanode-fetch: For making API calls to Ollama
Usage
Run the vector search test script:
pnpm test-vector-search
Or directly execute:
node test-vector-search.js
Configuration
The script connects to:
- LanceDB at the configured path
- Ollama API at
http://localhost:11434/api/embeddings
MCP Configuration
To integrate with Claude Desktop as an MCP service, add the following to your MCP configuration JSON:
{
"mcpServers": {
"lanceDB": {
"command": "node",
"args": [
"/path/to/lancedb-node/dist/index.js",
"--db-path",
"/path/to/your/lancedb/storage"
]
}
}
}
Replace the paths with your actual installation paths:
/path/to/lancedb-node/dist/index.js- Path to the compiled index.js file/path/to/your/lancedb/storage- Path to your LanceDB storage directory
Custom Embedding Function
The project includes a custom OllamaEmbeddingFunction that:
- Sends text to the Ollama API
- Receives embeddings with 768 dimensions
- Formats them for use with LanceDB
Vector Search Example
The example searches for "how to define success criteria" in the "ai-rag" table, displaying results with their similarity scores.
License
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
관련 서버
Supabase Next.js Server
A simple notes system for Next.js applications using Supabase as the backend.
TiDB
An MCP server for TiDB, a serverless, distributed SQL database.
Amazon Neptune
Query Amazon Neptune databases using openCypher, Gremlin, and SPARQL. Supports both Neptune Database and Neptune Analytics.
StockFlow
Provides real-time stock data and options analysis from Yahoo Finance, enabling market data access, stock analysis, and options strategy evaluation.
USDA Nutrition MCP Server
Access nutrition information for over 600,000 foods from the USDA FoodData Central database.
CData SAP ByDesign
A read-only MCP server for querying live SAP ByDesign data. Requires a separate CData JDBC Driver for SAP ByDesign.
GreptimeDB
Provides AI assistants with a secure and structured way to explore and analyze data in GreptimeDB.
MongoDB Mongoose MCP
An MCP server for MongoDB with optional Mongoose schema support.
MCP KQL Server
Execute KQL queries using Azure authentication. Requires Azure CLI login.
SchemaFlow
Real-time PostgreSQL & Supabase database schema access for AI-IDEs via Model Context Protocol. Provides live database context through secure SSE connections with three powerful tools: get_schema, analyze_database, and check_schema_alignment.