MCPApp

Created By
tanaikecha year ago
This text introduces the Model Context Protocol (MCP) for AI interaction, exploring Google Apps Script (GAS) as a server option. It shows feasibility with a sample but notes the lack of a GAS SDK, aiming to encourage understanding and development.
Overview

What is MCPApp?

MCPApp introduces the Model Context Protocol (MCP) for AI interaction, utilizing Google Apps Script (GAS) as a server option to connect AI applications with external systems and data.

How to use MCPApp?

To use MCPApp, create a Google Apps Script project, install the provided library, and deploy it as a Web App. You can then access the MCP server using HTTP POST requests.

Key features of MCPApp?

  • Implements the Model Context Protocol for AI integration.
  • Allows secure access to Google Workspace services like Docs, Sheets, and Calendar.
  • Provides sample scripts for easy deployment and testing.

Use cases of MCPApp?

  1. Integrating AI with Google Workspace for enhanced productivity.
  2. Automating workflows that require data from Google services.
  3. Developing custom AI applications that leverage Google Apps Script.

FAQ from MCPApp?

  • What is the Model Context Protocol?

It is a standard for connecting AI applications with external systems and data.

  • Is there an official SDK for Google Apps Script?

Currently, there is no official GAS SDK for MCP, but the library provided serves as a workaround.

  • Can I modify the sample scripts?

Yes, the sample scripts are designed to be modified to fit your specific needs.

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

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