Snowflake Cortex Agent Mcp Server Nodejs

Created By
BHANUJ9 months ago
This Snowflake MCP server provides tooling for Snowflake Cortex AI features, bringing these capabilities to the MCP ecosystem. When connected to an MCP Client (e.g. Claude for Desktop, fast-agent, Agentic Orchestration Framework), users can leverage these Cortex AI features. The MCP server currently supports the below Cortex AI capabilities: - Cortex Search: Query unstructured data in Snowflake as commonly used in Retrieval Augmented Generation (RAG) applications. - Cortex Analyst: Query structured data in Snowflake via rich semantic modeling. - Cortex Agent: Agentic orchestrator across structured and unstructured data retrieval
Overview

What is Snowflake Cortex Agent MCP Server?

The Snowflake Cortex Agent MCP Server is a tool that integrates Snowflake Cortex AI features into the MCP ecosystem, allowing users to leverage advanced AI capabilities when connected to an MCP Client.

How to use Snowflake Cortex Agent MCP Server?

To use the MCP Server, connect it to an MCP Client (like Claude for Desktop or fast-agent) and run the server using the command yarn dev. Ensure to configure the connection to Snowflake using the appropriate authentication methods.

Key features of Snowflake Cortex Agent MCP Server?

  • Cortex Search: Enables querying of unstructured data in Snowflake for Retrieval Augmented Generation (RAG) applications.
  • Cortex Analyst: Allows querying of structured data in Snowflake with rich semantic modeling.
  • Cortex Agent: Acts as an orchestrator for retrieving both structured and unstructured data.

Use cases of Snowflake Cortex Agent MCP Server?

  1. Performing complex queries on unstructured data for AI applications.
  2. Analyzing structured data with semantic models for insights.
  3. Integrating with various MCP Clients for enhanced data retrieval capabilities.

FAQ from Snowflake Cortex Agent MCP Server?

  • How do I connect to Snowflake?

Use a Programmatic Access Token (PAT) set as an environment variable (SNOWFLAKE_PAT).

  • How do I try this?

The MCP server is part of the MCP ecosystem and requires an MCP Client to function.

  • Where is this deployed?

The server is intended to be started by the MCP client and does not require separate remote service deployment.

Project Info
Created At
9 months ago
Updated At
9 months ago
Author Name
BHANUJ
Star
-
Language
-
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