Planning Center Online API and MCP Server Integration

Created By
jake-ccnha year ago
Planning Center Online MCP Server
Overview

What is PCO-MCP?

PCO-MCP is a project that integrates the Planning Center Online (PCO) API with an MCP server, allowing users to interact with PCO data using natural language queries through a Large Language Model (LLM).

How to use PCO-MCP?

To use PCO-MCP, clone the repository, install the required dependencies, configure your environment variables with your PCO API key, and run the MCP server to start sending natural language queries.

Key features of PCO-MCP?

  • PCO API Integration: Seamlessly connects to Planning Center Online for data access.
  • FASTMCP Server: Middleware that processes requests between the LLM and PCO API.
  • Natural Language Query Support: Allows users to fetch and manipulate data using conversational queries.

Use cases of PCO-MCP?

  1. Retrieve information about services in Planning Center.
  2. Automate workflows by querying and updating data using natural language.
  3. Provide insights and analytics through conversational queries.

FAQ from PCO-MCP?

  • What are the prerequisites for using PCO-MCP?

You need access to the Planning Center API, a Python environment, an MCP Client, and API keys for authentication.

  • Is there a license for PCO-MCP?

Yes, this project is licensed under the MIT License.

  • How can I contribute to PCO-MCP?

Contributions are welcome! You can submit a pull request or open an issue for suggestions or improvements.

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

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