Cover image
Try Now
2025-04-07

Erstellte ein Beispielprojekt für Pydantic Agent mit lokalem OLLAMA -Modell mit MCP Server -Integration.

3 years

Works with Finder

1

Github Watches

0

Github Forks

0

Github Stars

Ollama Pydantic Project

This project demonstrates how to use a local Ollama model with the Pydantic agent framework to create an intelligent agent. The agent is connected to an MCP server to utilize tools and provides a user-friendly interface using Streamlit.

Overview

The main goal of this project is to showcase:

  • Local Ollama Model Integration: Using a locally hosted Ollama model for generating responses.
  • Pydantic Agent Framework: Creating an agent with Pydantic for data validation and interaction.
  • MCP Server Connection: Enabling the agent to use tools via an MCP server.
  • Streamlit UI: Providing a web-based chatbot interface for user interaction.

Prerequisites

Before setting up the project, ensure the following:

  1. Python: Install Python 3.8 or higher. You can download it from python.org.
  2. Ollama Model: Install and run the Ollama server locally:
    • Download the Ollama CLI from Ollama's official website.
    • Install the CLI by following the instructions provided on their website.
    • Start the Ollama server:
      ollama serve
      
    • Ensure the server is running on http://localhost:11434/v1.
  3. MCP Server: Set up an MCP server to enable agent tools. For more details, refer to MCP Server Sample.

Setup Instructions

Follow these steps to set up the project:

  1. Clone the Repository:

    git clone <repository-url>
    cd ollama-pydantic-project
    
  2. Create a Virtual Environment:

    python3 -m venv venv
    
  3. Activate the Virtual Environment:

    • On macOS/Linux:
      source venv/bin/activate
      
    • On Windows:
      venv\Scripts\activate
      
  4. Install Dependencies:

    pip install -r requirements.txt
    
  5. Ensure the Ollama Server is Running: Start the Ollama server as described in the prerequisites.

  6. Run the Application: Start the Streamlit application:

    streamlit run src/streamlit_app.py
    

Usage

Once the application is running, open the provided URL in your browser (usually http://localhost:8501). You can interact with the chatbot by typing your queries in the input box. The agent will process your queries using the Ollama model and tools provided by the MCP server.

Example Interaction

Below is an example of how the chatbot interface looks when interacting with the agent:

Chatbot Example

Project Structure

The project is organized as follows:

ollama-pydantic-project/
├── src/
│   ├── streamlit_app.py        # Main Streamlit application
│   ├── agents/
│   │   ├── base_agent.py       # Abstract base class for agents
│   │   ├── ollama_agent.py     # Implementation of the Ollama agent
│   ├── utils/
│       ├── config.py           # Configuration settings
│       ├── logger.py           # Logger utility
├── requirements.txt            # Python dependencies
├── README.md                   # Project documentation
├── assets/
│   ├── ollama_agent_mcp_example.png  # Example interaction image
├── .gitignore                  # Git ignore file

Features

  • Streamlit Chatbot: A user-friendly chatbot interface.
  • Ollama Model Integration: Uses a local Ollama model for generating responses.
  • MCP Server Tools: Connects to an MCP server to enhance agent capabilities.
  • Pydantic Framework: Ensures data validation and type safety.

Troubleshooting

  • If you encounter issues with the Ollama server, ensure it is running on http://localhost:11434/v1.
  • If dependencies fail to install, ensure you are using Python 3.8 or higher and that your virtual environment is activated.
  • For MCP server-related issues, refer to the MCP Server Sample.

License

This project is licensed under the MIT License. See the LICENSE file for details.

Contributing

Contributions are welcome! Feel free to open issues or submit pull requests.

相关推荐

  • Joshua Armstrong
  • Confidential guide on numerology and astrology, based of GG33 Public information

  • https://suefel.com
  • Latest advice and best practices for custom GPT development.

  • Emmet Halm
  • Converts Figma frames into front-end code for various mobile frameworks.

  • Elijah Ng Shi Yi
  • Advanced software engineer GPT that excels through nailing the basics.

  • lumpenspace
  • Take an adjectivised noun, and create images making it progressively more adjective!

  • https://maiplestudio.com
  • Find Exhibitors, Speakers and more

  • tomoyoshi hirata
  • Sony α7IIIマニュアルアシスタント

  • Carlos Ferrin
  • Encuentra películas y series en plataformas de streaming.

  • Yusuf Emre Yeşilyurt
  • I find academic articles and books for research and literature reviews.

  • apappascs
  • Entdecken Sie die umfassendste und aktuellste Sammlung von MCP-Servern auf dem Markt. Dieses Repository dient als zentraler Hub und bietet einen umfangreichen Katalog von Open-Source- und Proprietary MCP-Servern mit Funktionen, Dokumentationslinks und Mitwirkenden.

  • jae-jae
  • MCP -Server für den Fetch -Webseiteninhalt mit dem Headless -Browser von Dramatikern.

  • ravitemer
  • Ein leistungsstarkes Neovim -Plugin für die Verwaltung von MCP -Servern (Modellkontextprotokoll)

  • patruff
  • Brücke zwischen Ollama und MCP -Servern und ermöglicht es lokalen LLMs, Modellkontextprotokoll -Tools zu verwenden

  • JackKuo666
  • 🔍 Ermöglichen Sie AI -Assistenten, über eine einfache MCP -Schnittstelle auf PYPI -Paketinformationen zu suchen und auf Paketinformationen zuzugreifen.

  • pontusab
  • Die Cursor & Windsurf -Community finden Regeln und MCPs

  • av
  • Führen Sie mühelos LLM -Backends, APIs, Frontends und Dienste mit einem Befehl aus.

  • Mintplex-Labs
  • Die All-in-One-Desktop & Docker-AI-Anwendung mit integriertem Lappen, AI-Agenten, No-Code-Agent Builder, MCP-Kompatibilität und vielem mehr.

    Reviews

    4 (1)
    Avatar
    user_X7TfBaTz
    2025-04-17

    I've been using the ollama-pydantic-project for a few weeks now, and I'm thoroughly impressed. The implementation is seamless and integrates perfectly with my existing workflow. Kudos to jageenshukla for creating such a well-thought-out project. If you're working with Pydantic, this is a must-try! Highly recommended. Check it out at the GitHub link provided.