MCP Router

Created By
codewithkenzoa year ago
MCP Router: A web interface for orchestrating MCP servers with Upsonic agent framework integration
Overview

What is MCP Router?

MCP Router is a Python package designed for managing Model Context Protocol (MCP) servers, integrating with the OpenRouter LLM framework, and orchestrating complex workflows using the Upsonic agent framework.

How to use MCP Router?

To use MCP Router, clone the repository, install the required dependencies, and either use it as a module in your Python scripts or run the command line interface (CLI) for server management tasks.

Key features of MCP Router?

  • MCP Server Management: Add, edit, and remove MCP servers.
  • OpenRouter Integration: Query OpenRouter models for AI-assisted tasks.
  • Upsonic Integration: Create and manage complex workflows.
  • Intelligent Task Analysis: Automatically determine necessary tools for tasks.
  • API Framework: Expose functionalities via REST API endpoints.

Use cases of MCP Router?

  1. Managing multiple MCP servers for AI applications.
  2. Automating workflows that require multiple steps and tools.
  3. Integrating AI models into applications for enhanced functionality.

FAQ from MCP Router?

  • What is the minimum Python version required?

Python 3.8 or higher is required to run MCP Router.

  • Can I run MCP servers without Docker?

Yes, Docker is optional but recommended for easier management of MCP servers.

  • How can I contribute to MCP Router?

Contributions are welcome! Fork the repository, create a feature branch, and submit a Pull Request.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
codewithkenzo
Star
0
Language
TypeScript
License
-

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