MLflow Prompt Registry
Access prompt templates managed in an MLflow Prompt Registry. Requires a running MLflow server configured via the MLFLOW_TRACKING_URI environment variable.
MLflow Prompt Registry MCP Server
Model Context Protocol (MCP) Server for MLflow Prompt Registry, enabling access to prompt templates managed in MLflow.
This server implements the MCP Prompts specification for discovering and using prompt templates from MLflow Prompt Registry. The primary use case is to load prompt templates from MLflow in Claude Desktop, allowing users to instruct Claude conveniently for repetitive tasks or common workflows.

Tools
list-prompts- List available prompts
- Inputs:
cursor(optional string): Cursor for paginationfilter(optional string): Filter for prompts
- Returns: List of prompt objects
get-prompt- Retrieve and compile a specific prompt
- Inputs:
name(string): Name of the prompt to retrievearguments(optional object): JSON object with prompt variables
- Returns: Compiled prompt object
Setup
1: Install MLflow and Start Prompt Registry
Install and start an MLflow server if you haven't already to host the Prompt Registry:
pip install mlflow>=2.21.1
mlflow server --port 5000
2: Create a prompt template in MLflow
If you haven't already, create a prompt template in MLflow following this guide.
3: Build MCP Server
npm install
npm run build
4: Add the server to Claude Desktop
Configure Claude for Desktop by editing claude_desktop_config.json:
{
"mcpServers": {
"mlflow": {
"command": "node",
"args": ["<absolute-path-to-this-repository>/dist/index.js"],
"env": {
"MLFLOW_TRACKING_URI": "http://localhost:5000"
}
}
}
}
Make sure to replace the MLFLOW_TRACKING_URI with your actual MLflow server address.
Похожие серверы
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Testomat.io
Integrate Testomat.io API with AI assistants for test management.
markmap-http-mcp
An MCP server for converting Markdown to interactive mind maps with export support (PNG/JPG/SVG). Server runs as HTTP service.
Cache Overflow
knowledge network for AI coding agents. Developers connect their agents to a shared pool of verified solutions — saving tokens, reducing debugging time, and getting better results. Solution authors earn when their work helps others.
YFinance Trader
Provides stock market data and trading capabilities using the yfinance library.
bulhufas
MCP server that ingests project docs once and lets Claude search by meaning instead of reading everything — saving tokens on large codebases
Honeybadger
Interact with the Honeybadger API for error monitoring and reporting using LLMs.
Zyntra - Temp e-mails MCP
MCP server for e-mail testing: create disposable inboxes, wait for delivery, and extract e-mail content or links - all from your AI agent or test automation workflow.
Model Context Protocol servers
A collection of reference server implementations for the Model Context Protocol (MCP) using Typescript and Python SDKs.
BaseMcpServer
A minimal, containerized base for building MCP servers with the Python SDK, featuring a standardized Docker image and local development setup.
MetaMCP
A self-hostable middleware to manage all your MCPs through a GUI and a local proxy, supporting multiple clients and workspaces.