Skip to main content
Glama
hyzhak

Ollama MCP Server

by hyzhak

Ollama MCP Server

This is a rebooted and actively maintained fork.
Original project: NightTrek/Ollama-mcp

This repository (hyzhak/ollama-mcp-server) is a fresh upstream with improved maintenance, metadata, and publishing automation.

See NightTrek/Ollama-mcp for project history and prior releases.

🚀 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 (response is returned only after completion; streaming is not supported in stdio mode)

    • Vision/multimodal support: pass images to compatible models

    • Chat completion API with system/user/assistant roles

    • Configurable parameters (temperature, timeout)

    • NEW: think parameter for advanced reasoning and transparency (see below)

    • Raw mode support for direct responses

  • 🛠 Server Control

    • Start and manage Ollama server

    • View detailed model information

    • Error handling and timeout management

Related MCP server: Ollama MCP Server

🚀 Quick Start

Prerequisites

  • Ollama installed on your system

  • Node.js (with npx, included with npm)

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": "npx",
      "args": ["ollama-mcp-server"],
      "env": {
        "OLLAMA_HOST": "http://127.0.0.1:11434"  // Optional: customize Ollama API endpoint
      }
    }
  }
}

🛠 Developer Setup

Prerequisites

  • Ollama installed on your system

  • Node.js and npm

Installation

  1. Install dependencies:

npm install
  1. Build the server:

npm run build

🛠 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"
  }
});

Run a Vision/Multimodal Model

// Run a model with an image (for vision/multimodal models)
await mcp.use_mcp_tool({
  server_name: "ollama",
  tool_name: "run",
  arguments: {
    name: "gemma3:4b",
    prompt: "Describe the contents of this image.",
    imagePath: "./path/to/image.jpg"
  }
});

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
  }
});

// Chat with images (for vision/multimodal models)
await mcp.use_mcp_tool({
  server_name: "ollama",
  tool_name: "chat_completion",
  arguments: {
    model: "gemma3:4b",
    messages: [
      {
        role: "system",
        content: "You are a helpful assistant."
      },
      {
        role: "user",
        content: "Describe the contents of this image.",
        images: ["./path/to/image.jpg"]
      }
    ]
  }
});

Note: The images field is optional and only supported by vision/multimodal models.

Create Custom Model

await mcp.use_mcp_tool({
  server_name: "ollama",
  tool_name: "create",
  arguments: {
    name: "custom-model",
    modelfile: "./path/to/Modelfile"
  }
});

🧠 Advanced Reasoning with the think Parameter

Both the run and chat_completion tools now support an optional think parameter:

  • think: true: Requests the model to provide step-by-step reasoning or "thought process" in addition to the final answer (if supported by the model).

  • think: false (default): Only the final answer is returned.

Example (run tool):

await mcp.use_mcp_tool({
  server_name: "ollama",
  tool_name: "run",
  arguments: {
    name: "deepseek-r1:32b",
    prompt: "how many r's are in strawberry?",
    think: true
  }
});
  • If the model supports it, the response will include a <think>...</think> block with detailed reasoning before the final answer.

Example (chat_completion tool):

await mcp.use_mcp_tool({
  server_name: "ollama",
  tool_name: "chat_completion",
  arguments: {
    model: "deepseek-r1:32b",
    messages: [
      { role: "user", content: "how many r's are in strawberry?" }
    ],
    think: true
  }
});
  • The model's reasoning (if provided) will be included in the message content.

Note: Not all models support the think parameter. Advanced models (e.g., "deepseek-r1:32b", "magistral") may provide more detailed and accurate reasoning when think is enabled.

🔧 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

Install Server
A
security – no known vulnerabilities
A
license - permissive license
A
quality - confirmed to work

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/hyzhak/ollama-mcp-server'

If you have feedback or need assistance with the MCP directory API, please join our Discord server