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mcp-projects

@SrGrace

mcp-projects について

My Projects Repo for MCP (Model Context Protocol)

基本情報

カテゴリ

その他

ライセンス

MIT license

ランタイム

python

トランスポート

stdio

公開者

SrGrace

設定

標準の設定はありません

このサーバーの README には解析可能な MCP 設定ブロックが含まれていません。インストール手順はリポジトリをご確認ください。

リポジトリ

ツール

ツールは検出されませんでした

ツールは README から自動的に抽出されます。メンテナーは ## Tools という見出しの下に記載することで、このタブに反映できます。

概要

What is mcp-projects?

mcp‑projects is an open‑source repository of example projects that demonstrate the Model Context Protocol (MCP). It provides reusable MCP server and client code, along with integration examples for IBM watsonx.ai and Tavily, and is intended for developers learning or implementing context‑aware AI systems.

How to use mcp-projects?

Clone the repository, install the required Python packages (e.g., mcp, fastapi, llama-index, etc.) with pip, create a .env file with credentials for IBM watsonx and Tavily, then run the MCP servers first and the clients afterward. The project is designed to be agnostic to the LLM provider with minor changes.

Key features of mcp-projects

  • Open‑source collection of MCP server and client examples
  • Integrates with IBM watsonx.ai and Tavily search
  • Agnostic to the LLM provider (adjustable with few changes)
  • Includes both server and client run scripts
  • Educational explanation of the Model Context Protocol

Use cases of mcp-projects

  • Learning how to implement MCP servers and clients
  • Building and testing context‑aware AI applications
  • Experimenting with different LLM providers in an MCP setup
  • Creating prototypes that maintain conversation memory across sessions

FAQ from mcp-projects

What is the Model Context Protocol (MCP)?

MCP is a standardized way for applications to provide AI models with richer context about their environment, user preferences, and conversation history, solving the problem of limited “working memory” in AI systems.

What dependencies are required to run the projects?

The projects require Python packages such as mcp, fastapi, uvicorn, fastapi-mcp, llama-index, llama-index-embeddings-huggingface, llama-index-llms-langchain, langchain-mcp-adapters, and mcp-use, installed via pip.

How do I configure API keys?

Create a .env file in the root folder with the following credentials: API_KEY, PROJECT_ID, IBM_CLOUD_URL, MODEL_ID (for IBM watsonx.ai), and TAVILY_API_KEY (for web search).

Can I use a different LLM provider instead of IBM watsonx?

Yes, the projects are agnostic to the LLM provider, though a few code changes are needed to adapt to a different provider.

How should I run the servers and clients?

Always run the MCP servers first, and only then run the clients.

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