🧠 MCP Flow - Chat Workflow Engine with ADK Integration

Created By
alelcolda year ago
Try to Set MCP Server
Overview

What is MCP Flow?

MCP Flow is a chat workflow engine designed for integrating various AI agents and external APIs, built using Python, FastAPI, and the Google Agent Development Kit (ADK).

How to use MCP Flow?

To use MCP Flow, clone the repository, navigate to the project directory, and install the required dependencies using pip. You can then run the CLI tool to execute tests and set up workflows.

Key features of MCP Flow?

  • Supports multiple workflows including formatting, answering, and ADK agents.
  • FastAPI provides a REST API interface for easy integration.
  • CLI tool for quick testing and execution.
  • Integration with Google ADK for custom agents and tools.
  • Extensible workflows and plugin tools for customization.

Use cases of MCP Flow?

  1. Creating unified AI Q&A workflows.
  2. Integrating different AI agents for enhanced responses.
  3. Formatting tools for processing user queries.

FAQ from MCP Flow?

  • Can MCP Flow integrate with any AI agent?

Yes! MCP Flow is designed to work with various AI agents and can be customized to fit specific needs.

  • Is MCP Flow easy to set up?

Yes! With a simple installation process, you can quickly set up and start using MCP Flow.

  • What programming language is MCP Flow built with?

MCP Flow is built using Python and utilizes FastAPI for its web framework.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
alelcold
Star
0
Language
Python
License
-

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