Databricks MCP Server
What is Databricks MCP Server?
what is Databricks MCP Server? Databricks MCP Server is a Model Context Protocol (MCP) server that connects to the Databricks API, enabling users to run SQL queries, list jobs, and check job statuses within Databricks. how to use Databricks MCP Server? To use the Databricks MCP Server, clone the repository, set up a virtual environment, install dependencies, configure your Databricks credentials in a .env file, and run the server using the command python main.py. key features of Databricks MCP Server? Execute SQL queries on Databricks SQL warehouses List all jobs in Databricks Retrieve the status of specific jobs Access detailed information about jobs use cases of Databricks MCP Server? Running SQL queries to analyze data in Databricks. Monitoring job statuses for data processing tasks. Integrating with LLMs for natural language queries about data and jobs. FAQ from Databricks MCP Server? What are the prerequisites to use the server? You need Python 3.7+, a Databricks workspace with a personal access token, and permissions to run queries. How do I obtain Databricks credentials? You can create a personal access token in Databricks under User Settings, and find your SQL warehouse HTTP path in the SQL Warehouses section. Is there a way to test the connection? Yes, you can run the included test script python test_connection.py to verify your connection.
As an MCP (Model Context Protocol) server, Databricks MCP Server enables AI agents to communicate effectively through standardized interfaces. The Model Context Protocol simplifies integration between different AI models and agent systems.
How to use Databricks MCP Server
To use the Databricks MCP Server, clone the repository, set up a virtual environment, install dependencies, configure your Databricks credentials in a .env file, and run the server using the command python main.py. key features of Databricks MCP Server? Execute SQL queries on Databricks SQL warehouses List all jobs in Databricks Retrieve the status of specific jobs Access detailed information about jobs use cases of Databricks MCP Server? Running SQL queries to analyze data in Databricks. Monitoring job statuses for data processing tasks. Integrating with LLMs for natural language queries about data and jobs. FAQ from Databricks MCP Server? What are the prerequisites to use the server? You need Python 3.7+, a Databricks workspace with a personal access token, and permissions to run queries. How do I obtain Databricks credentials? You can create a personal access token in Databricks under User Settings, and find your SQL warehouse HTTP path in the SQL Warehouses section. Is there a way to test the connection? Yes, you can run the included test script python test_connection.py to verify your connection.
Learn how to integrate this MCP server with your AI agents and leverage the Model Context Protocol for enhanced capabilities.
Use Cases for this MCP Server
- No use cases specified.
MCP servers like Databricks MCP Server can be used with various AI models including Claude and other language models to extend their capabilities through the Model Context Protocol.
About Model Context Protocol (MCP)
The Model Context Protocol (MCP) is a standardized way for AI agents to communicate with various services and tools. MCP servers like Databricks MCP Server provide specific capabilities that can be accessed through a consistent interface, making it easier to build powerful AI applications with complex workflows.
Browse the MCP Directory to discover more servers and clients that can enhance your AI agents' capabilities.