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A Model Context Protocol (MCP) server that provides MetricFlow CLI tools

Project description

mcp-metricflow

Python License Coverage Code style: ruff Package manager: uv

A Model Context Protocol (MCP) server that provides MetricFlow CLI tools through both SSE (with optional API key authentication) and STDIO interfaces.

[!WARNING] This repository is a learning project focused on MetricFlow integration with MCP. For production use cases, please refer to the official dbt-mcp implementation by dbt Labs.

Table of Contents

Overview

This project provides a Model Context Protocol (MCP) server that wraps MetricFlow CLI commands, making them accessible through both Server-Sent Events (SSE) and Standard Input/Output (STDIO) interfaces. It enables seamless integration with Claude Desktop and other MCP-compatible clients.

Setup

# Install uv at https://docs.astral.sh/uv/getting-started/installation/

# Copy environment template
cp .env.template .env
# ...and then jump to # Configuration section to fulfill it

Configuration

Edit the .env file with your specific configuration:

# Required: Path to your dbt project
DBT_PROJECT_DIR=/path/to/your/dbt/project e.g. /Users/dat/repos/il/jaffle-shop

# Optional: Other configurations
DBT_PROFILES_DIR=~/.dbt
MF_PATH=mf
MF_TMP_DIR=/tmp

# SSE server configuration (optional)
MCP_HOST=localhost
MCP_PORT=8000

# API key authentication for SSE mode (optional)
MCP_API_KEY=your-secret-api-key
MCP_REQUIRE_AUTH=false

Running the MCP Server

STDIO Mode

For integration with Claude Desktop (or any other MCP Client tool), use STDIO mode with the following uvx command:

uvx --env-file /path/to/.env mcp-metricflow

Add this configuration to the respective client's config file:

{
  "mcpServers": {
    "mcp-metricflow": {
      "command": "uvx",
      "args": [
        "--env-file",
        "<path-to-.env-file>",
        "mcp-metricflow"
      ]
    },
  }
}

SSE Mode

For web-based integration or direct HTTP access:

# export DBT_PROFILES_DIR=~/.dbt
uv run python src/main_sse.py

The server will start on http://localhost:8000 (or the host/port specified in your environment variables).

API Key Authentication

The SSE server supports optional API key authentication. To enable authentication:

  1. Set the required environment variables:

    export MCP_API_KEY="your-secret-api-key"
    export MCP_REQUIRE_AUTH="true"
    
  2. Access authenticated endpoints by including the API key in the Authorization header:

    # Health check (no authentication required)
    curl http://localhost:8000/health
    
    # SSE endpoint (requires authentication when enabled)
    curl -H "Authorization: Bearer your-secret-api-key" http://localhost:8000/sse
    

Authentication Configuration:

  • MCP_API_KEY: The secret API key for authentication (required when MCP_REQUIRE_AUTH=true)
  • MCP_REQUIRE_AUTH: Enable/disable authentication (true, 1, yes, on to enable; default: false)

Security Notes:

  • The /health endpoint is always accessible without authentication for monitoring purposes
  • The /sse endpoint requires authentication when MCP_REQUIRE_AUTH=true
  • API keys are case-sensitive and support special characters
  • Store API keys securely and avoid committing them to version control

Available Tools

The MCP server exposes the following MetricFlow CLI tools:

Tool Description Required Parameters Optional Parameters
query Execute MetricFlow queries session_id, metrics group_by, start_time, end_time, where, order, limit, saved_query, explain, show_dataflow_plan, show_sql_descriptions
list_metrics List available metrics None search, show_all_dimensions
list_dimensions List available dimensions None metrics
list_entities List available entities None metrics
list_dimension_values List values for a dimension dimension, metrics start_time, end_time
validate_configs Validate model configurations None dw_timeout, skip_dw, show_all, verbose_issues, semantic_validation_workers
health_checks Perform system health checks None None

Each tool includes comprehensive documentation accessible through the MCP interface.

Project Structure

src/
├── config/
│   └── config.py              # Configuration management
├── server/
│   ├── auth.py                # API key authentication
│   ├── sse_server.py          # SSE server implementation
│   └── stdio_server.py        # STDIO server implementation
├── tools/
│   ├── prompts/mf_cli/        # Tool documentation (*.md files)
│   ├── metricflow/            # MetricFlow CLI wrappers
│   │   ├── base.py            # Shared command execution
│   │   ├── query.py           # Query functionality
│   │   ├── list_metrics.py    # List metrics
│   │   ├── list_dimensions.py # List dimensions
│   │   ├── list_entities.py   # List entities
│   │   ├── list_dimension_values.py # List dimension values
│   │   ├── validate_configs.py # Configuration validation
│   │   └── health_checks.py   # Health checks
│   └── cli_tools.py           # MCP tool registration
├── utils/
│   ├── logger.py              # Logging configuration
│   └── prompts.py             # Prompt loading utilities
├── main_sse.py                # SSE server entry point
└── main_stdio.py              # STDIO server entry point

Contributing ✨

If you've ever wanted to contribute to this tool, and a great cause, now is your chance!

See the contributing docs CONTRIBUTING for more information.

If you've found this tool to be very helpful, please consider giving the repository a star, sharing it on social media, or even writing a blog post about it 💌

mcp-metricflow stars buy me a coffee

Finally, super thanks to our Contributors:

TODO

  • Test STDIO mode

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