Multi-MCP AI Agent

Created By
aviban15a year ago
An AI agent which utilizes multiple MCP servers, including internal tools like math tools, and external tools like Google services and web scraping.
Overview

what is Multi-MCP AI Agent?

Multi-MCP AI Agent is an advanced AI system that utilizes multiple Model Control Protocol (MCP) servers to perform a variety of tasks, including mathematical operations and integrations with external services like Google Workspace and web scraping.

how to use Multi-MCP AI Agent?

To use the Multi-MCP AI Agent, clone the repository, set up the required environment variables, and run the agent or the Telegram bot server to interact with the system.

key features of Multi-MCP AI Agent?

  • Multi-MCP architecture for distributed processing
  • Integration with Google Workspace and web scraping tools
  • Real-time communication via Telegram bot and Server-Sent Events (SSE)
  • Cognitive modules for perception, decision-making, memory, and action

use cases of Multi-MCP AI Agent?

  1. Performing complex mathematical calculations
  2. Automating document processing tasks in Google Drive
  3. Fetching real-time data from the web using scraping techniques

FAQ from Multi-MCP AI Agent?

  • What programming language is used for Multi-MCP AI Agent?

The project is developed in Python.

  • Is there a Telegram bot available?

Yes, the agent includes a Telegram bot interface for real-time interaction.

  • How can I integrate Google services?

You need to set up Google Cloud credentials and configure them in the project.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
aviban15
Star
0
Language
Python
License
MIT license

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