MCP.so
ログイン

Ollama Pydantic Project

@jageenshukla

Ollama Pydantic Project について

Created sample project for pydantic agent with local ollama model with mcp server integration.

基本情報

カテゴリ

AI とエージェント

ランタイム

python

トランスポート

stdio

公開者

jageenshukla

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": {
    "ollama-pydantic-project": {
      "command": "python3",
      "args": [
        "-m",
        "venv",
        "venv"
      ]
    }
  }
}

ツール

ツールは検出されませんでした

ツールは README から自動的に抽出されます。メンテナーは ## Tools という見出しの下に記載することで、このタブに反映できます。

概要

What is Ollama Pydantic Project?

Ollama Pydantic Project is a demonstration that integrates a local Ollama model with the Pydantic agent framework and an MCP (Model Context Protocol) server to create an intelligent agent. It provides a user-friendly web-based chatbot interface using Streamlit, and is intended for developers exploring local LLM-based agents with tool integration.

How to use Ollama Pydantic Project?

Install Python 3.8+, run the Ollama server locally on http://localhost:11434/v1, and set up a separate MCP server (a sample is referenced). Clone the repository, create a virtual environment, install dependencies (pip install -r requirements.txt), then start the application with streamlit run src/streamlit_app.py. Open the provided URL (typically http://localhost:8501) to interact with the chatbot.

Key features of Ollama Pydantic Project

  • Integrates a local Ollama model for response generation.
  • Uses Pydantic agent framework for data validation.
  • Connects to an MCP server to enable tool use.
  • Provides a Streamlit-based web chatbot interface.
  • Ensures type safety and data validation.

Use cases of Ollama Pydantic Project

  • Building a chatbot powered by a locally hosted LLM.
  • Creating an agent that uses external tools via MCP.
  • Prototyping an AI assistant with structured data handling.
  • Demonstrating integration of Ollama, Pydantic, and Streamlit.

FAQ from Ollama Pydantic Project

What are the prerequisites to run the project?

You need Python 3.8 or higher, the Ollama server running locally on http://localhost:11434/v1, and an MCP server set up as described in the referenced sample.

How do I start the application?

After cloning the repository and installing dependencies, ensure the Ollama server is running, then execute streamlit run src/streamlit_app.py. The application will be available at http://localhost:8501.

What should I do if I encounter issues?

Verify that the Ollama server is running on the correct port and that your virtual environment is activated. Ensure you are using Python 3.8 or higher. For MCP server problems, refer to the MCP Server Sample repository.

コメント

「AI とエージェント」の他のコンテンツ