mcp-server-openmetadata

Created By
tpaveleka year ago
Overview

What is mcp-server-openmetadata?

The mcp-server-openmetadata is a Model Context Protocol (MCP) server implementation for OpenMetadata, designed to facilitate seamless integration with MCP clients. It provides a standardized way to interact with OpenMetadata through the Model Context Protocol.

How to use mcp-server-openmetadata?

To use the mcp-server-openmetadata, set up the server by configuring the necessary environment variables for authentication, and then run the server using the provided commands. You can also integrate it with Claude Desktop or run it manually using Python.

Key features of mcp-server-openmetadata?

  • Implements the Model Context Protocol for OpenMetadata.
  • Provides a REST API for various data assets, services, teams, users, and more.
  • Supports both token and basic authentication methods.
  • Allows for manual execution and configuration.

Use cases of mcp-server-openmetadata?

  1. Integrating OpenMetadata with various data management tools.
  2. Facilitating data asset management through a standardized API.
  3. Enabling seamless communication between MCP clients and OpenMetadata.

FAQ from mcp-server-openmetadata?

  • What is the Model Context Protocol?

The Model Context Protocol is a standardized protocol for interacting with metadata services, allowing for consistent communication between clients and servers.

  • How do I authenticate with the server?

You can authenticate using either token authentication or basic authentication by setting the appropriate environment variables.

  • Can I run the server manually?

Yes, you can run the server manually using the command python src/server.py.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
tpavelek
Star
0
Language
Python
License
MIT license

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