MCP Client for Ollama (ollmcp)

Created By
jonigla year ago
A Python-based client for interacting with Model Context Protocol (MCP) servers using Ollama. Features include multi-server support, dynamic model switching, tool management, and a rich terminal interface.
Overview

What is MCP Client for Ollama?

MCP Client for Ollama is a Python-based client designed for interacting with Model Context Protocol (MCP) servers using Ollama, enabling local LLMs to utilize various tools.

How to use MCP Client for Ollama?

To use the MCP Client, install it via pip or the UV package manager, and run the command-line tool to connect to MCP servers and process queries.

Key features of MCP Client for Ollama?

  • Multi-server support for simultaneous connections
  • Rich terminal interface for user interaction
  • Tool management capabilities to enable/disable tools
  • Dynamic model switching without restarting
  • Configuration persistence for saving tool preferences
  • Auto-discovery of MCP server configurations

Use cases of MCP Client for Ollama?

  1. Connecting to multiple MCP servers for diverse functionalities.
  2. Managing tools and models in a user-friendly terminal interface.
  3. Utilizing local LLMs for various applications through tool calls.

FAQ from MCP Client for Ollama?

  • What is the minimum Python version required?

    Python 3.10 or higher is required to run the MCP Client.

  • Can I connect to multiple servers?

    Yes, the client supports connections to multiple MCP servers simultaneously.

  • Is there a graphical interface?

    The client operates through a command-line interface, providing a rich terminal experience.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
jonigl
Star
14
Language
Python
License
MIT license

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