ProtoLinkAI 🚀

ProtoLinkAI 🚀

By StevenROyola GitHub

Simplifying MCP server interactions for seamless AI integration.

mathgpt math-solver
Overview

What is ProtoLinkAI?

ProtoLinkAI is a standardized tool wrapping framework designed to simplify interactions with MCP servers, enabling seamless integration of various AI tools for developers.

How to use ProtoLinkAI?

To use ProtoLinkAI, install it via PyPI and run it locally or in a Docker container. Configure the necessary environment variables for specific integrations like Twitter or ElizaOS.

Key features of ProtoLinkAI?

  • 🔧 Standardized wrapping for building tools using the MCP protocol.
  • 🚀 Flexible use cases allowing easy addition or removal of tools.
  • ✨ Out-of-the-box tools for common scenarios including Twitter management, cryptocurrency prices, and weather information.

Use cases of ProtoLinkAI?

  1. Automating social media interactions on Twitter.
  2. Accessing real-time cryptocurrency and stock market data.
  3. Integrating various AI tools for enhanced automation and context sharing.

FAQ from ProtoLinkAI?

  • Can ProtoLinkAI integrate with any tool?

Yes! ProtoLinkAI is designed to integrate with a variety of tools and services through the MCP protocol.

  • Is ProtoLinkAI free to use?

Yes! ProtoLinkAI is open-source and free to use for everyone.

  • How do I set up Twitter integration?

You can set up Twitter integration by configuring the necessary environment variables in your Docker setup or .env file.

Content

ProtoLinkAI 🚀

ProtoLink AI is a standardized tool wrapping framework for implementing and managing diverse tools in a unified way. It is designed to help developers quickly integrate and launch tool-based use cases.

Key Features

  • 🔧 Standardized Wrapping: Provides an abstraction layer for building tools using the MCP protocol.
  • 🚀 Flexible Use Cases: Easily add or remove tools to fit your specific requirements.
  • Out-of-the-Box Tools: Includes pre-built tools for common scenarios:
    • 🐦 Twitter Management: Automate tweeting, replying, and managing Twitter interactions.
    • 💸 Crypto: Get the latest cryptocurrency prices.
    • 🤖 ElizaOS Integration: Seamlessly connect and interact with ElizaOS for enhanced automation.
    • 🕑 Time utilities
    • ☁️ Weather information (API)
    • 📚 Dictionary lookups
    • 🧮 Calculator for mathematical expressions
    • 💵 Currency exchange (API)
    • 📈 Stocks Data: Access real-time and historical stock market information.
    • [WIP] 📰 News: Retrieve the latest news headlines.

Tech Stack 🛠️

  • Python: Core programming language
  • MCP Framework: Communication protocol
  • Docker: Containerization

🤔 What is MCP?

The Model Context Protocol (MCP) is a cutting-edge standard for context sharing and management across AI models and systems. Think of it as the language AI agents use to interact seamlessly. 🧠✨

Here’s why MCP matters:

  • 🧩 Standardization: MCP defines how context can be shared across models, enabling interoperability.
  • Scalability: It’s built to handle large-scale AI systems with high throughput.
  • 🔒 Security: Robust authentication and fine-grained access control.
  • 🌐 Flexibility: Works across diverse systems and AI architectures.

mcp_architecture source

Installation 📦

Install via PyPI

pip install ProtoLinkai

Usage 💻

Run Locally

ProtoLinkai --local-timezone "America/New_York"

Run in Docker

  1. Build the Docker image: docker build -t ProtoLinkai .

  2. Run the container: docker run -i --rm ProtoLinkai


Twitter Integration 🐦

MProtoLinkAI offers robust Twitter integration, allowing you to automate tweeting, replying, and managing Twitter interactions. This section provides detailed instructions on configuring and using the Twitter integration, both via Docker and .env + scripts/run_agent.sh.

Docker Environment Variables for Twitter Integration

When running ProtoLinkAI within Docker, it's essential to configure environment variables for Twitter integration. These variables are divided into two categories:

1. Agent Node Client Credentials

These credentials are used by the Node.js client within the agent for managing Twitter interactions.

ENV TWITTER_USERNAME=
ENV TWITTER_PASSWORD=
ENV TWITTER_EMAIL=

2. Tweepy (Twitter API v2) Credentials

These credentials are utilized by Tweepy for interacting with Twitter's API v2.

ENV TWITTER_API_KEY=
ENV TWITTER_API_SECRET=
ENV TWITTER_ACCESS_TOKEN=
ENV TWITTER_ACCESS_SECRET=
ENV TWITTER_CLIENT_ID=
ENV TWITTER_CLIENT_SECRET=
ENV TWITTER_BEARER_TOKEN=

Running ProtoLinkAI with Docker

  1. Build the Docker image:

    docker build -t ProtoLinkai .
    
  2. Run the container:

    docker run -i --rm ProtoLinkai
    

Setting Up Environment Variables

Create a .env file in the root directory of your project and add the following environment variables:

ANTHROPIC_API_KEY=your_anthropic_api_key
ELIZA_PATH=/path/to/eliza
TWITTER_USERNAME=your_twitter_username
TWITTER_EMAIL=your_twitter_email
TWITTER_PASSWORD=your_twitter_password
PERSONALITY_CONFIG=/path/to/personality_config.json
RUN_AGENT=True

# Tweepy (Twitter API v2) Credentials
TWITTER_API_KEY=your_twitter_api_key
TWITTER_API_SECRET=your_twitter_api_secret
TWITTER_ACCESS_TOKEN=your_twitter_access_token
TWITTER_ACCESS_SECRET=your_twitter_access_secret
TWITTER_CLIENT_ID=your_twitter_client_id
TWITTER_CLIENT_SECRET=your_twitter_client_secret
TWITTER_BEARER_TOKEN=your_twitter_bearer_token

Running the Agent

  1. Make the script executable:

    chmod +x scripts/run_agent.sh
    
  2. Run the agent:

    bash scripts/run_agent.sh
    

Summary

You can configure ProtoLink to run with Twitter integration either using Docker or by setting up environment variables in a .env file and running the scripts/run_agent.sh script.

This flexibility allows you to choose the method that best fits your deployment environment.


ElizaOS Integration 🤖

This approach allows you to use Eliza Agents without running the Eliza Framework in the background. It simplifies the setup by embedding Eliza functionality directly within ProtoLink.

Steps:

  1. Configure ProtoLink to Use Eliza MCP Agent: In your Python code, add Eliza MCP Agent to the MultiToolAgent:
    from ProtoLink.core.multi_tool_agent import MultiToolAgent
    from ProtoLink.tools.eliza_mcp_agent import eliza_mcp_agent
    
    multi_tool_agent = MultiToolAgent([
        # ... other agents
        eliza_mcp_agent
    ])
    

Advantages:

  • Simplified Setup: No need to manage separate background processes.
  • Easier Monitoring: All functionalities are encapsulated within MCPAgentAI.
  • Highlight Feature: Emphasizes the flexibility of MCPAgentAI in integrating various tools seamlessly.

2. Run Eliza Framework from ProtoLinkai

This method involves running the Eliza Framework as a separate background process alongside ProtoLinkAI.

Steps:

  1. Start Eliza Framework: bash src/ProtoLinkai/tools/eliza/scripts/run.sh

  2. Monitor Eliza Processes: bash src/ProtoLinkai/tools/eliza/scripts/monitor.sh

  3. Configure MCPAgentAI to Use Eliza Agent: In your Python code, add Eliza Agent to the MultiToolAgent:

    from ProtoLink.core.multi_tool_agent import MultiToolAgent
    from ProtoLink.tools.eliza_agent import eliza_agent
    
    multi_tool_agent = MultiToolAgent([
       # ... other agents
       eliza_agent
    ])
    

Tutorial: Selecting Specific Tools

You can configure ProtoLink to run only certain tools by modifying the agent configuration in your server or by updating the server.py file to only load desired agents. For example:

from ProtoLinkai.tools.time_agent import TimeAgent
from ProtoLinkai.tools.weather_agent import WeatherAgent
from ProtoLinkai.core.multi_tool_agent import MultiToolAgent

multi_tool_agent = MultiToolAgent([
    TimeAgent(),
    WeatherAgent()
])
This setup will only enable **Time** and **Weather** tools.

Integration Example: Claude Desktop Configuration

You can integrate ProtoLinkAI with Claude Desktop using the following configuration (claude_desktop_config.json), note that local ElizaOS repo is optional arg:

{
    "mcpServers": {
        "mcpagentai": {
            "command": "docker",
            "args": ["run", "-i", "-v", "/path/to/local/eliza:/app/eliza", "--rm", "mcpagentai"]
        }
    }
}

Development 🛠️

  1. Clone this repository:

    git clone https://github.com/StevenROyola/ProtoLink.git
    cd mcpagentai
    
  2. (Optional) Create a virtual environment:

    python3 -m venv .venv
    source .venv/bin/activate
    
  3. Install dependencies:

    pip install -e .
    
  4. Build the package:

    python -m build
    


License: MIT
Enjoy! 🎉

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