M

Mcpheonix

An intelligent distributed AI event system based on the Elixir Phoenix framework
2 points
8

What is MCPheonix?

MCPheonix is an intelligent distributed AI interaction system that enables AI models to seamlessly interact with your application data and functions through the standardized Model Context Protocol. It's like providing a unified 'remote control' for AI models to operate various functions of your system.

How to use MCPheonix?

Through simple API endpoints, you can establish real-time event connections or send request instructions. The system will automatically manage the interaction process of AI models, and you only need to focus on the implementation of business logic.

Applicable Scenarios

Suitable for scenarios where AI models need to be deeply integrated into business processes, such as intelligent customer service, automated workflows, real-time data analysis, and other applications that require continuous AI interaction.

Main Features

Real-time Event StreamEstablish a persistent connection through Server-Sent Events technology to receive events and notifications generated by AI models in real-time
Standardized InterfaceSupports the JSON-RPC 2.0 protocol, providing a unified instruction interaction method
Self-healing ArchitectureDistributed design based on Cloudflare Durable Objects, automatically recovering failed nodes
Tool ExtensionSupports the integration of external tools such as Flux image generation and Dart task management
Edge ComputingDeployed at global edge nodes using Cloudflare Workers to reduce latency

Advantages and Limitations

Advantages
The distributed architecture ensures high availability, and a single-point failure will not affect the overall service
The automatic recovery mechanism reduces the operational burden
The unified protocol interface simplifies the integration of AI models
Global edge deployment provides low-latency responses
Flexible tool extension capabilities
Limitations
A Cloudflare account is required to use all features
The complexity is high when configuring multiple integrated components
The real-time event stream requires the client to maintain a persistent connection
There may be resource limitations at edge computing nodes

How to Use

Environment Preparation
Ensure that Elixir 1.14+, Erlang 25+, and Phoenix 1.7.0+ are installed
Get the Code
Clone the repository and enter the project directory
Install Dependencies
Get all necessary dependencies
Configure Cloudflare
Set environment variables to point to your Cloudflare Worker
Start the Service
Run the Phoenix server

Usage Examples

Intelligent Customer Service ConversationReceive user messages through the event stream and use AI to generate responses
Automated Image GenerationCall the integrated Flux tool to generate marketing images
Task AutomationCreate scheduled tasks through Dart integration

Frequently Asked Questions

Do I need programming experience to use it?
Is a Cloudflare account required?
How to add a new AI model?
Will the event stream automatically recover after being disconnected?
Which programming languages are supported for clients?

Related Resources

Official Documentation
Official documentation for the Phoenix framework
Example Repository
Examples of client implementations in various languages
Cloudflare Workers
Documentation for Cloudflare Workers
JSON-RPC Specification
Specification for the JSON-RPC 2.0 protocol
Installation
Copy the following command to your Client for configuration
{
  "mcpServers": {
    "your_server_id": {
      "command": "/path/to/executable",
      "args": ["arg1", "arg2"],
      "env": {
        "ENV_VAR1": "value1",
        "ENV_VAR2": "value2"
      },
      "tools": {
        "your_tool": {
          "description": "Description of your tool",
          "parameters": [
            { "name": "param1", "type": "string", "description": "Parameter description" }
          ]
        }
      }
    }
  }
}
Note: Your key is sensitive information, do not share it with anyone.
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