mcp-agentic-rag
Provides RAG tools with local vector retrieval and web fallback using Firecrawl, enabling document ingestion and querying through MCP stdio transport.
README
Agentic RAG MCP
A minimal FastAPI + FastMCP project that combines local RAG retrieval with Firecrawl web fallback.
What this project does
- Loads a FastAPI application for document ingestion and vector queries.
- Uses ChromaDB for local vector storage and SentenceTransformers for embeddings.
- Provides an MCP tool server via
fastmcpto expose RAG tools over stdio transport. - Falls back to Firecrawl web search only when the local vector DB returns no documents.
Repository structure
app/- application source codeapi/- FastAPI routes and schemascore/- RAG logic, embeddings, fallback helperservices/- ChromaDB service integrationmcp/- FastMCP server entrypoint
scripts/- utility scripts (seed data, etc.)data/- storage and persistence directories.env.example- environment variable templatepyproject.toml- project dependencies and packaging config
Setup for a new user
1. Clone the repository
git clone https://github.com/sampathpulukurthi/agentic-rag-mcp.git
cd agentic-rag-mcp
2. Create a Python virtual environment
python3 -m venv .venv
source .venv/bin/activate
3. Install dependencies
python -m pip install -e .
4. Create environment variables
cp .env.example .env
Edit .env and set:
FIRECRAWL_API_KEY=your_firecrawl_api_key_here
5. Run the FastAPI backend
uvicorn app.main:app --host 127.0.0.1 --port 8000 --reload
Then verify:
curl http://127.0.0.1:8000/api/health
6. Run the MCP server
With the virtualenv active:
.venv/bin/python -m app.mcp.server
This starts the FastMCP server named mcp-agentic-rag using stdio transport.
How to use
Ingest documents
curl -X POST http://127.0.0.1:8000/api/ingest \
-H "Content-Type: application/json" \
-d '{"documents": [{"id":"doc1","text":"Machine learning models can classify text.","metadata":{"topic":"ml"}}]}'
Query local vector store
curl -X POST http://127.0.0.1:8000/api/query \
-H "Content-Type: application/json" \
-d '{"query_text":"How do text classification models work?","k":3}'
Query with fallback to Firecrawl
curl -X POST http://127.0.0.1:8000/api/query_with_fallback \
-H "Content-Type: application/json" \
-d '{"query_text":"What is machine learning?","k":5}'
If the vector store returns no documents, the endpoint will return fallback: true and web_results from Firecrawl.
Notes
- There is currently no chat UI included in this repository.
- The app returns vector DB matches by default and only uses Firecrawl when local results are empty.
- If you want stronger fallback behavior, the
query_with_fallbacklogic can be updated to use a similarity threshold.
推荐服务器
Baidu Map
百度地图核心API现已全面兼容MCP协议,是国内首家兼容MCP协议的地图服务商。
Playwright MCP Server
一个模型上下文协议服务器,它使大型语言模型能够通过结构化的可访问性快照与网页进行交互,而无需视觉模型或屏幕截图。
Magic Component Platform (MCP)
一个由人工智能驱动的工具,可以从自然语言描述生成现代化的用户界面组件,并与流行的集成开发环境(IDE)集成,从而简化用户界面开发流程。
Audiense Insights MCP Server
通过模型上下文协议启用与 Audiense Insights 账户的交互,从而促进营销洞察和受众数据的提取和分析,包括人口统计信息、行为和影响者互动。
VeyraX
一个单一的 MCP 工具,连接你所有喜爱的工具:Gmail、日历以及其他 40 多个工具。
graphlit-mcp-server
模型上下文协议 (MCP) 服务器实现了 MCP 客户端与 Graphlit 服务之间的集成。 除了网络爬取之外,还可以将任何内容(从 Slack 到 Gmail 再到播客订阅源)导入到 Graphlit 项目中,然后从 MCP 客户端检索相关内容。
Kagi MCP Server
一个 MCP 服务器,集成了 Kagi 搜索功能和 Claude AI,使 Claude 能够在回答需要最新信息的问题时执行实时网络搜索。
e2b-mcp-server
使用 MCP 通过 e2b 运行代码。
Neon MCP Server
用于与 Neon 管理 API 和数据库交互的 MCP 服务器
Exa MCP Server
模型上下文协议(MCP)服务器允许像 Claude 这样的 AI 助手使用 Exa AI 搜索 API 进行网络搜索。这种设置允许 AI 模型以安全和受控的方式获取实时的网络信息。