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.
संबंधित सर्वर
Alpha Vantage MCP Server
प्रायोजकAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Change8
Breaking Change Alerts for Humans and AI Agents.
kafka-mcp-server
Expose Apache Kafka operations (topics, produce, consume, consumer groups) as MCP tools.
MCP Server for iOS Simulator
Programmatically control iOS simulators via stdio transport. Requires macOS with Xcode and installed iOS simulators.
EdgeOne Pages MCP
An MCP server and client implementation for EdgeOne Pages Functions, supporting OpenAI-formatted requests.
React Native AI Debugger
Enables AI assistants like Claude Code to capture logs, execute code, inspect state, and control navigation in your React Native app.
Second Opinion
Review commits and codebases using external LLMs like OpenAI, Google Gemini, and Mistral.
FlowZap
FlowZap's MCP generates Workflow, Sequence and Architecture Diagrams from your App in seconds. Pretty ones.
MantisBT MCP Server
Integrates MantisBT bug tracker into Claude and other MCP clients via the REST API. Read and manage issues, notes, file attachments, tags, relationships, and monitors — with optional offline semantic search across all issues.
Test Automator
An LLM-powered server for automating unit, integration, E2E, and API tests.
Zaim API
A server template for interacting with APIs that require an API key, using the Zaim API as an example.