Metabase MCP Server
Enables AI assistants to interact with Metabase analytics platform, allowing them to query databases, manage dashboards, execute SQL queries, and organize collections through natural language.
README
Metabase MCP Server
A Model Context Protocol server that integrates AI assistants with Metabase analytics platform.
Overview
This MCP server provides integration with the Metabase API, enabling LLM with MCP capabilites to directly interact with your analytics data, this server acts as a bridge between your analytics platform and conversational AI.
Key Features
- Resource Access: Navigate Metabase resources via intuitive
metabase://URIs - Two Authentication Methods: Support for both session-based and API key authentication
- Structured Data Access: JSON-formatted responses for easy consumption by AI assistants
- Comprehensive Logging: Detailed logging for easy debugging and monitoring
- Error Handling: Robust error handling with clear error messages
Available Tools
The server exposes the following tools for AI assistants:
Data Access Tools
list_dashboards: Retrieve all available dashboards in your Metabase instancelist_cards: Get all saved questions/cards in Metabaselist_databases: View all connected database sourceslist_collections: List all collections in Metabaselist_tables: List all tables in a specific databaseget_table_fields: Get all fields/columns in a specific table
Execution Tools
execute_card: Run saved questions and retrieve results with optional parametersexecute_query: Execute custom SQL queries against any connected database
Dashboard Management
get_dashboard_cards: Extract all cards from a specific dashboardcreate_dashboard: Create a new dashboard with specified name and parametersupdate_dashboard: Update an existing dashboard's name, description, or parametersdelete_dashboard: Delete a dashboardadd_card_to_dashboard: Add or update cards in a dashboard with position specifications and optional tab assignment
Card/Question Management
create_card: Create a new question/card with SQL queryupdate_card_visualization: Update visualization settings for a card
Collection Management
create_collection: Create a new collection to organize dashboards and questions
Configuration
The server supports two authentication methods:
Option 1: Username and Password Authentication
# Required
METABASE_URL=https://your-metabase-instance.com
METABASE_USER_EMAIL=your_email@example.com
METABASE_PASSWORD=your_password
# Optional
LOG_LEVEL=info # Options: debug, info, warn, error, fatal
Option 2: API Key Authentication (Recommended for Production)
# Required
METABASE_URL=https://your-metabase-instance.com
METABASE_API_KEY=your_api_key
# Optional
LOG_LEVEL=info # Options: debug, info, warn, error, fatal
You can set these environment variables directly or use a .env file with dotenv.
Deployment with Smithery
To use this MCP server with Claude or other AI assistants, fork this repository and deploy using Smithery:
Steps to Deploy:
- Fork this repository to your GitHub account
- Go to Smithery and connect with your GitHub account
- Deploy the forked repository through Smithery's interface
Claude Desktop Integration
Configure your Claude Desktop to use the Smithery-hosted version:
MacOS: Edit ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: Edit %APPDATA%/Claude/claude_desktop_config.json
API Key Authentication:
{
"mcpServers": {
"metabase-mcp": {
"command": "npx",
"args": [
"-y",
"@smithery/cli@latest",
"run",
"YOUR_GITHUB_USERNAME/metabase-mcp-server",
"--config",
"{\"metabaseUrl\":\"https://your-metabase-instance.com\",\"metabaseApiKey\":\"your_api_key\",\"metabasePassword\":\"\",\"metabaseUserEmail\":\"\"}"
]
}
}
}
Username and Password Authentication:
{
"mcpServers": {
"metabase-mcp": {
"command": "npx",
"args": [
"-y",
"@smithery/cli@latest",
"run",
"YOUR_GITHUB_USERNAME/metabase-mcp-server",
"--config",
"{\"metabaseUrl\":\"https://your-metabase-instance.com\",\"metabaseApiKey\":\"\",\"metabasePassword\":\"your_password\",\"metabaseUserEmail\":\"your_email@example.com\"}"
]
}
}
}
Security Considerations
- recommend using API key authentication for production environments
- Keep your API keys and credentials secure
- Consider using environment variables instead of hardcoding credentials
- Apply appropriate network security measures to restrict access to your Metabase instance
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
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