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Databricks MCP Server Nm7

The Databricks MCP Server is a model interaction service based on the MCP protocol, providing access interfaces to functions such as Databricks clusters, jobs, and notebooks, and supporting the integrated interaction between LLM tools and the Databricks platform.
2.5 points
38

What is the Databricks MCP Server?

The Databricks MCP Server is a middleware service that implements the Model Completion Protocol (MCP), enabling AI tools to interact with the Databricks platform through a standardized interface. It simplifies the access and management of Databricks resources (such as clusters, jobs, notebooks, etc.) by AI tools.

How to use the Databricks MCP Server?

Before use, you need to configure Databricks access credentials and then run the service through the startup script. After the service is started, AI tools can send requests via the MCP protocol to perform various Databricks operations.

Use cases

Suitable for scenarios where Databricks resources need to be managed automatically through AI tools, such as: - Managing clusters through natural language instructions - Automatically executing data engineering jobs - Querying and analyzing data warehouses - Managing notebooks and workspace files

Main features

Cluster managementProvides complete cluster lifecycle management functions, including creating, starting, terminating, and querying cluster status.
Job executionSupports listing and running Databricks jobs, and can obtain job execution status and results.
Notebook operationsProvides functions such as viewing the notebook list and exporting content, facilitating the management of notebooks in the Workspace.
SQL executionSupports direct execution of SQL queries, facilitating data analysis and exploration.

Advantages and limitations

Advantages
Standardized interface: Provides a unified access method through the MCP protocol
Comprehensive functions: Covers the main functional modules of Databricks
Easy to integrate: Can be seamlessly integrated with various AI tools
Asynchronous support: High - performance asynchronous processing architecture
Limitations
Requires Databricks access permissions
Some advanced functions may be restricted
Performance depends on the quality of the network connection

How to use

Installation preparation
Ensure that Python 3.10 or a higher version is installed on the system and prepare Databricks access credentials.
Install dependencies
Use the uv package manager to install project dependencies.
Configure environment variables
Set the Databricks host address and personal access token.
Start the service
Run the startup script to start the MCP server.

Usage examples

Cluster status checkObtain information about all running clusters through a natural language query
Job executionTrigger the specified Databricks job to run
Data queryExecute an SQL query to obtain data insights

Frequently Asked Questions

How to obtain a Databricks access token?
Which versions of Databricks does the service support?
How to extend custom functions?
Does the service support authentication and authorization?

Related resources

Databricks official documentation
Complete documentation for the Databricks platform
MCP protocol specification
Detailed specification of the Model Completion Protocol
GitHub repository
Project source code and issue tracking
Example application
Example application using the MCP server
Installation
Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.
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