OmniMCP-Container
A containerized MCP bridge that lets local or cloud LLMs access your filesystem and perform web searches via Ollama and FastMCP.
README
OmniMCP-Container π

A containerized Model Context Protocol (MCP) bridge for local and external LLMs. This project provides a robust, extensible hub that allows you to use your local models (via Ollama) or cloud models while giving them access to your local filesystem and web search tools.
π Key Features
- Local Inference: Integrated Ollama service for running models locally (no internet required).
- Bridge Service: Python-based MCP server using
FastMCPthat acts as the tool hub. - Filesystem Access: Secure access to your project files via mounted Docker volumes.
- Web Search: Extensible web search tool for real-time information.
- SSE Transport: Exposes the MCP server over HTTP (SSE) for easy integration with other apps.
π οΈ Stack
- Orchestration: Docker Compose
- Inference: Ollama
- MCP Framework: FastMCP (Python)
- Networking: LAN-ready SSE (Server-Sent Events)
π Getting Started
1. Configure Environment
Copy the template and fill in your API keys (optional for local-only use):
cp .env.template .env
2. Launch the Hub
docker-compose up -d --build
3. Verify Services
- Ollama: Accessible at
http://localhost:11434 - MCP Bridge: Accessible at
http://localhost:8000/sse
π Mounting Your Project
To give the LLM access to your specific project files, place them in the my_project_files/ directory, or modify the volumes section in docker-compose.yml:
volumes:
- ./your_local_path:/data
π Connecting to Claude Desktop
To use this as an MCP server in Claude Desktop, add this to your claude_desktop_config.json:
{
"mcpServers": {
"omnimcp": {
"command": "npx",
"args": ["-y", "@modelcontextprotocol/inspector", "http://localhost:8000/sse"]
}
}
}
Note: This utilizes the MCP inspector to bridge the SSE connection to Claude Desktop's stdio-based expectations, or you can use other clients that support SSE directly.
π οΈ Customizing Tools
Add new tools in app.py by using the @mcp.tool() decorator.
π Licencia
Este proyecto estΓ‘ bajo la Licencia MIT - mira el archivo LICENSE para detalles.
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