Ollama MCP Server
A bridge to use local LLMs from Ollama within the Model Context Protocol.
Ollama MCP Server
🚀 A powerful bridge between Ollama and the Model Context Protocol (MCP), enabling seamless integration of Ollama's local LLM capabilities into your MCP-powered applications.
🌟 Features
Complete Ollama Integration
- Full API Coverage: Access all essential Ollama functionality through a clean MCP interface
- OpenAI-Compatible Chat: Drop-in replacement for OpenAI's chat completion API
- Local LLM Power: Run AI models locally with full control and privacy
Core Capabilities
-
🔄 Model Management
- Pull models from registries
- Push models to registries
- List available models
- Create custom models from Modelfiles
- Copy and remove models
-
🤖 Model Execution
- Run models with customizable prompts
- Chat completion API with system/user/assistant roles
- Configurable parameters (temperature, timeout)
- Raw mode support for direct responses
-
🛠 Server Control
- Start and manage Ollama server
- View detailed model information
- Error handling and timeout management
🚀 Getting Started
Prerequisites
- Ollama installed on your system
- Node.js and npm/pnpm
Installation
- Install dependencies:
pnpm install
- Build the server:
pnpm run build
Configuration
Add the server to your MCP configuration:
For Claude Desktop:
MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"ollama": {
"command": "node",
"args": ["/path/to/ollama-server/build/index.js"],
"env": {
"OLLAMA_HOST": "http://127.0.0.1:11434" // Optional: customize Ollama API endpoint
}
}
}
}
🛠 Usage Examples
Pull and Run a Model
// Pull a model
await mcp.use_mcp_tool({
server_name: "ollama",
tool_name: "pull",
arguments: {
name: "llama2"
}
});
// Run the model
await mcp.use_mcp_tool({
server_name: "ollama",
tool_name: "run",
arguments: {
name: "llama2",
prompt: "Explain quantum computing in simple terms"
}
});
Chat Completion (OpenAI-compatible)
await mcp.use_mcp_tool({
server_name: "ollama",
tool_name: "chat_completion",
arguments: {
model: "llama2",
messages: [
{
role: "system",
content: "You are a helpful assistant."
},
{
role: "user",
content: "What is the meaning of life?"
}
],
temperature: 0.7
}
});
Create Custom Model
await mcp.use_mcp_tool({
server_name: "ollama",
tool_name: "create",
arguments: {
name: "custom-model",
modelfile: "./path/to/Modelfile"
}
});
🔧 Advanced Configuration
OLLAMA_HOST: Configure custom Ollama API endpoint (default: http://127.0.0.1:11434)- Timeout settings for model execution (default: 60 seconds)
- Temperature control for response randomness (0-2 range)
🤝 Contributing
Contributions are welcome! Feel free to:
- Report bugs
- Suggest new features
- Submit pull requests
📝 License
MIT License - feel free to use in your own projects!
Built with ❤️ for the MCP ecosystem
संबंधित सर्वर
Alpha Vantage MCP Server
प्रायोजकAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
DeepSeek-Claude MCP Server
Enhance Claude's reasoning capabilities by integrating DeepSeek's advanced engine.
Muster
A universal control plane for managing MCP servers and providing intelligent tool discovery for AI agents.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers, without authentication.
Figma → Vue Design System
A Vue 3 component library with automated design token synchronization from Figma.
ndlovu-code-reviewer
Manual code reviews are time-consuming and often miss the opportunity to combine static analysis with contextual, human-friendly feedback. This project was created to experiment with MCP tooling that gives AI assistants access to a purpose-built reviewer. Uses the Gemini cli application to process the reviews at this time and linting only for typescript/javascript apps at the moment. Will add API based calls to LLM's in the future and expand linting abilities. It's also cheaper than using coderabbit ;)
WCAG Aria patterns MCP
MCP server for WCAG practices found at https://github.com/karanshah229/wcag-aria-practices-mcp-skill/tree/main
JSONPlaceholder
A free public REST API for testing and prototyping, powered by JSONPlaceholder.
Google Jules MCP
Automate Google Jules, the AI coding assistant, for tasks like code reviews, repository management, and AI-powered development workflows.
cli-mcp
A command-line interface (CLI) client for calling tools from local and remote MCP servers.
Tiktoken MCP
Count tokens using OpenAI's tiktoken library.