🚀 MCP-Ollama Server
@Sethuram2003
🚀 MCP-Ollama Server について
Extends Model Context Protocol (MCP) to local LLMs via Ollama, enabling Claude-like tool use (files, web, email, GitHub, AI images) while keeping data private. Modular Python servers for on-prem AI. #LocalAI #MCP #Ollama
基本情報
設定
以下の設定を使って、このサーバーを MCP 対応クライアントに追加してください。
{
"mcpServers": {
"MCP-ollama_server": {
"command": "uv",
"args": [
"run",
"client.py",
"../file_system/file_system.py"
]
}
}
}ツール
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概要
What is 🚀 MCP-Ollama Server?
🚀 MCP-Ollama Server bridges Anthropic's Model Context Protocol (MCP) with local LLMs via Ollama, enabling on-premise AI models with tool capabilities like file system access, calendar integration, web browsing, email, GitHub, and AI image generation while ensuring complete data privacy.
How to use 🚀 MCP-Ollama Server?
Install prerequisites (Python 3.8+, Ollama, Git), clone the repository, and pull a model (e.g., ollama pull llama3). Then navigate to a module directory (e.g., client_mcp/) and run uv run client.py ../file_system/file_system.py to start interacting with the agent.
Key features of 🚀 MCP-Ollama Server
- 🔒 Complete data privacy – all computations run locally via Ollama
- 🔧 Tool use for local LLMs (file, calendar, and more)
- 🧩 Modular architecture with independent Python service modules
- 🔌 Easy integration via simple APIs
- 🚀 Performance optimized for responsive AI interactions
- 📦 Containerized deployment with Docker (coming soon)
- 🧪 Extensive test coverage for reliability
Use cases of 🚀 MCP-Ollama Server
- Enterprise security & compliance (legal, healthcare, financial institutions)
- Developer productivity (code generation, automated documentation, git integration)
- Personal knowledge management (document processing, calendar management, content generation)
FAQ from 🚀 MCP-Ollama Server
How does this differ from using cloud-based AI assistants?
MCP-Ollama Server runs entirely on your local infrastructure, ensuring complete data privacy and eliminating dependence on external APIs.
What models are supported?
Any model compatible with Ollama can be used. For best results, we recommend Llama 3, Mistral, or other recent open models with at least 7B parameters.
How can I extend the system with new capabilities?
Follow the modular architecture pattern to create new service modules. See the Extension Guide for details.
What are the system requirements?
Requirements depend on the Ollama model you choose. For basic functionality, we recommend at least 16GB RAM and a modern multi-core CPU.
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