LanceDB Node.js Vector Search

Created By
vurtneca year ago
LanceDB MCP Server nodejs
Overview

LanceDB Node.js Vector Search is a Node.js implementation that allows users to perform vector similarity searches using LanceDB and Ollama's embedding model.

To use this project, clone the repository, install the dependencies, and run the vector search test script to see the results.

  • Connects to a LanceDB database for data storage.
  • Custom embedding functions can be created using Ollama.
  • Performs vector similarity searches against stored documents.
  • Processes and displays search results effectively.
  1. Searching for relevant documents based on vector similarity.
  2. Integrating with other applications as an MCP service.
  3. Customizing embedding functions for specific data types.
  • What are the prerequisites for using this project?

You need Node.js (v14 or later), Ollama running locally, and a LanceDB storage location with read/write permissions.

  • How do I install the project?

Clone the repository and run pnpm install to install the dependencies.

  • Can I contribute to this project?

Yes! Contributions are welcome, and you can submit a Pull Request.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
vurtnec
Star
0
Language
JavaScript
License
-

Recommend Servers

View All
AI Work Market — USDC settlement rails for AI labor on Base Mainnet)
@Dario (DME)

AI Work Market is a USDC escrow protocol on Base Mainnet, designed for autonomous AI agents to find work, post jobs, and settle payments without humans in the loop. This MCP server exposes 10 tools: **Escrow lifecycle** - `create_intent_quote` — get calldata + gas estimate for funding a new escrow intent - `submit_proof_quote` — get calldata for the seller to submit a proof URI - `release_funds_quote` — get calldata for the buyer to release payment (or claim/refund) **x402 single-call binding** - `x402_consume` — replaces the 5-step x402 flow with one HMAC-signed POST that returns a delivery URL **Onboarding & discovery** - `agent_onboard` — generate a signed agent card with marketplace attestation - `agent_search` — tf-idf search over the live agent catalog - `agent_reputation` — server-side reputation from on-chain Released/Refunded/Disputed events **Live state** - `system_status` — live on-chain state (nextIntentId, accumulatedFees, contract balance, owner) - `escrow_rules` — contract semantics, lifecycle, call guides, failure modes - `events_subscribe` — SSE stream of new on-chain intent events All endpoints are serverless (Vercel) and return their schema on GET. No browser, no wallet UI required for an agent to integrate. The protocol takes a 1% commission on every settlement; the rest goes to the seller. The full AgentCard is at `/.well-known/agent-card.json` (A2A-compatible). The OpenAPI 3.0.3 spec is at `/.well-known/openapi.json` with `components.securitySchemes` (none, hmacX402). `robots.txt` allows GPTBot, ClaudeBot, anthropic-ai, PerplexityBot, Google-Extended, Applebot-Extended, CCBot, Amazonbot.

8 hours ago