OpenRouter Agents MCP Server

Created By
wheattoast11a year ago
MCP Server that orchestrates research with Claude and Perplexity/GPT/Gemini automatically
Overview

What is OpenRouter Agents MCP Server?

OpenRouter Agents MCP Server is a Model Context Protocol (MCP) server that orchestrates research using AI models like Claude and Perplexity/GPT/Gemini, enabling sophisticated research capabilities.

How to use OpenRouter Agents MCP Server?

To use the server, clone the repository, install dependencies, and configure your OpenRouter API key in the .env file. You can then send research queries through the integrated system in tools like Cline in VS Code.

Key features of OpenRouter Agents MCP Server?

  • Multi-agent orchestration for research tasks
  • Adaptive fallback system for model failures
  • Context-aware refinement of research queries
  • Semantic knowledge base for enhanced query results
  • In-memory caching for fast response times

Use cases of OpenRouter Agents MCP Server?

  1. Conducting complex research queries across multiple AI models.
  2. Utilizing adaptive synthesis for tailored research reports.
  3. Integrating with development environments for seamless research capabilities.

FAQ from OpenRouter Agents MCP Server?

  • What is the purpose of the MCP server?

The MCP server orchestrates research tasks using various AI models to provide comprehensive research outputs.

  • Is there a cost associated with using the server?

The server can utilize both high-cost and low-cost models based on user preferences.

  • What are the prerequisites for running the server?

You need Node.js, npm, Git, and an OpenRouter API key to run the server.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
wheattoast11
Star
10
Language
JavaScript
License
-

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