Track MCP LogoTrack MCP
Track MCP LogoTrack MCP

The world's largest repository of Model Context Protocol servers. Discover, explore, and submit MCP tools.

Product

  • Categories
  • Top MCP
  • New & Updated
  • Submit MCP

Company

  • About

Legal

  • Privacy Policy
  • Terms of Service
  • Cookie Policy

© 2026 TrackMCP. All rights reserved.

Built with ❤️ by Krishna Goyal

    Databricks Mcp Server

    A Model Completion Protocol (MCP) server for interacting with Databricks services

    39 stars
    Python
    Updated Oct 17, 2025

    Table of Contents

    • Features
    • Available Tools
    • Installation
    • Prerequisites
    • Setup
    • Running the MCP Server
    • Querying Databricks Resources
    • Project Structure
    • Development
    • Code Standards
    • Linting
    • Testing
    • Documentation
    • Examples
    • Contributing
    • License

    Table of Contents

    • Features
    • Available Tools
    • Installation
    • Prerequisites
    • Setup
    • Running the MCP Server
    • Querying Databricks Resources
    • Project Structure
    • Development
    • Code Standards
    • Linting
    • Testing
    • Documentation
    • Examples
    • Contributing
    • License

    Documentation

    Databricks MCP Server

    A Model Completion Protocol (MCP) server for Databricks that provides access to Databricks functionality via the MCP protocol. This allows LLM-powered tools to interact with Databricks clusters, jobs, notebooks, and more.

    Features

    • MCP Protocol Support: Implements the MCP protocol to allow LLMs to interact with Databricks
    • Databricks API Integration: Provides access to Databricks REST API functionality
    • Tool Registration: Exposes Databricks functionality as MCP tools
    • Async Support: Built with asyncio for efficient operation

    Available Tools

    The Databricks MCP Server exposes the following tools:

    • list_clusters: List all Databricks clusters
    • create_cluster: Create a new Databricks cluster
    • terminate_cluster: Terminate a Databricks cluster
    • get_cluster: Get information about a specific Databricks cluster
    • start_cluster: Start a terminated Databricks cluster
    • list_jobs: List all Databricks jobs
    • run_job: Run a Databricks job
    • list_notebooks: List notebooks in a workspace directory
    • export_notebook: Export a notebook from the workspace
    • list_files: List files and directories in a DBFS path
    • execute_sql: Execute a SQL statement

    Installation

    Prerequisites

    • Python 3.10 or higher
    • uv package manager (recommended for MCP servers)

    Setup

    1. Install uv if you don't have it already:

    bash
    # MacOS/Linux
       curl -LsSf https://astral.sh/uv/install.sh | sh
       
       # Windows (in PowerShell)
       irm https://astral.sh/uv/install.ps1 | iex

    Restart your terminal after installation.

    2. Clone the repository:

    bash
    git clone https://github.com/JustTryAI/databricks-mcp-server.git
       cd databricks-mcp-server

    3. Set up the project with uv:

    bash
    # Create and activate virtual environment
       uv venv
       
       # On Windows
       .\.venv\Scripts\activate
       
       # On Linux/Mac
       source .venv/bin/activate
       
       # Install dependencies in development mode
       uv pip install -e .
       
       # Install development dependencies
       uv pip install -e ".[dev]"

    4. Set up environment variables:

    bash
    # Windows
       set DATABRICKS_HOST=https://your-databricks-instance.azuredatabricks.net
       set DATABRICKS_TOKEN=your-personal-access-token
       
       # Linux/Mac
       export DATABRICKS_HOST=https://your-databricks-instance.azuredatabricks.net
       export DATABRICKS_TOKEN=your-personal-access-token

    You can also create an .env file based on the .env.example template.

    Running the MCP Server

    To start the MCP server, run:

    bash
    # Windows
    .\start_mcp_server.ps1
    
    # Linux/Mac
    ./start_mcp_server.sh

    These wrapper scripts will execute the actual server scripts located in the scripts directory. The server will start and be ready to accept MCP protocol connections.

    You can also directly run the server scripts from the scripts directory:

    bash
    # Windows
    .\scripts\start_mcp_server.ps1
    
    # Linux/Mac
    ./scripts/start_mcp_server.sh

    Querying Databricks Resources

    The repository includes utility scripts to quickly view Databricks resources:

    bash
    # View all clusters
    uv run scripts/show_clusters.py
    
    # View all notebooks
    uv run scripts/show_notebooks.py

    Project Structure

    code
    databricks-mcp-server/
    ├── src/                             # Source code
    │   ├── __init__.py                  # Makes src a package
    │   ├── __main__.py                  # Main entry point for the package
    │   ├── main.py                      # Entry point for the MCP server
    │   ├── api/                         # Databricks API clients
    │   ├── core/                        # Core functionality
    │   ├── server/                      # Server implementation
    │   │   ├── databricks_mcp_server.py # Main MCP server
    │   │   └── app.py                   # FastAPI app for tests
    │   └── cli/                         # Command-line interface
    ├── tests/                           # Test directory
    ├── scripts/                         # Helper scripts
    │   ├── start_mcp_server.ps1         # Server startup script (Windows)
    │   ├── run_tests.ps1                # Test runner script
    │   ├── show_clusters.py             # Script to show clusters
    │   └── show_notebooks.py            # Script to show notebooks
    ├── examples/                        # Example usage
    ├── docs/                            # Documentation
    └── pyproject.toml                   # Project configuration

    See project_structure.md for a more detailed view of the project structure.

    Development

    Code Standards

    • Python code follows PEP 8 style guide with a maximum line length of 100 characters
    • Use 4 spaces for indentation (no tabs)
    • Use double quotes for strings
    • All classes, methods, and functions should have Google-style docstrings
    • Type hints are required for all code except tests

    Linting

    The project uses the following linting tools:

    bash
    # Run all linters
    uv run pylint src/ tests/
    uv run flake8 src/ tests/
    uv run mypy src/

    Testing

    The project uses pytest for testing. To run the tests:

    bash
    # Run all tests with our convenient script
    .\scripts\run_tests.ps1
    
    # Run with coverage report
    .\scripts\run_tests.ps1 -Coverage
    
    # Run specific tests with verbose output
    .\scripts\run_tests.ps1 -Verbose -Coverage tests/test_clusters.py

    You can also run the tests directly with pytest:

    bash
    # Run all tests
    uv run pytest tests/
    
    # Run with coverage report
    uv run pytest --cov=src tests/ --cov-report=term-missing

    A minimum code coverage of 80% is the goal for the project.

    Documentation

    • API documentation is generated using Sphinx and can be found in the docs/api directory
    • All code includes Google-style docstrings
    • See the examples/ directory for usage examples

    Examples

    Check the examples/ directory for usage examples. To run examples:

    bash
    # Run example scripts with uv
    uv run examples/direct_usage.py
    uv run examples/mcp_client_usage.py

    Contributing

    Contributions are welcome! Please feel free to submit a Pull Request.

    1. Ensure your code follows the project's coding standards

    2. Add tests for any new functionality

    3. Update documentation as necessary

    4. Verify all tests pass before submitting

    License

    This project is licensed under the MIT License - see the LICENSE file for details.

    Similar MCP

    Based on tags & features

    • MA

      Mayamcp

      Python·
      27
    • BI

      Biothings Mcp

      Python·
      25
    • FH

      Fhir Mcp Server

      Python·
      55
    • MC

      Mcp Aoai Web Browsing

      Python·
      30

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k
    View All MCP Servers

    Similar MCP

    Based on tags & features

    • MA

      Mayamcp

      Python·
      27
    • BI

      Biothings Mcp

      Python·
      25
    • FH

      Fhir Mcp Server

      Python·
      55
    • MC

      Mcp Aoai Web Browsing

      Python·
      30

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k