MCPheonix

Created By
jmanhypea year ago
A simplified implementation of the Model Context Protocol (MCP) server using Elixir's Phoenix Framework.
Overview

What is MCPheonix?

MCPheonix is a simplified implementation of the Model Context Protocol (MCP) server using Elixir's Phoenix Framework, designed to facilitate intelligent, self-healing, distributed AI event systems.

How to use MCPheonix?

To use MCPheonix, clone the repository, install dependencies, configure Cloudflare integration, and start the server. Detailed instructions are provided in the documentation.

Key features of MCPheonix?

  • Real-time notifications via Server-Sent Events (SSE)
  • JSON-RPC endpoint for client requests
  • Event publish/subscribe mechanism
  • Self-healing distributed architecture with Cloudflare Durable Objects
  • Extensible architecture for custom MCP servers

Use cases of MCPheonix?

  1. Building resilient AI applications that require real-time data processing.
  2. Integrating multiple AI models with a unified interface.
  3. Developing applications that need to maintain state across distributed systems.

FAQ from MCPheonix?

  • What is the Model Context Protocol?

The Model Context Protocol is a standard for enabling AI models to interact with application data and functionality.

  • Is MCPheonix suitable for production use?

Yes, MCPheonix is designed for production environments with its self-healing capabilities.

  • What are the prerequisites for running MCPheonix?

You need Elixir, Erlang, Phoenix, Python, Node.js, and a Cloudflare account for integration.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
jmanhype
Star
34
Language
Elixir
License
MIT license

Recommend Servers

View All
Thiri Chord Intelligence
@BluesPrince

### Deterministic Music Theory for Claude, Cursor, and Autonomous AI Agents Large Language Models (LLMs) frequently hallucinate music theory, leading to incorrect notes, false Roman numerals, and broken voice leading. **THIRI** solves this by providing a deterministic, mathematical music-theory engine (pitch-class-set theory over ℤ/12) directly to your AI. It gives AI assistants precise, reproducible harmonic reasoning in milliseconds, allowing them to write correct musical scores, analyze progressions, and generate playable arrangements. #### 🎷 Key Features: * **Chord Analysis (`analyze_chord`):** Parse any symbol (e.g., `Cmaj7/E`, `G7#11`) to retrieve root, quality, intervals, Roman numerals, and diatonic or chromatic harmonic functions. * **Note Resolution (`resolve_chord`):** Resolve chord symbols to spelled notes (enharmonically correct), frequencies (Hz), MIDI numbers, and scale recommendations. * **Voicing Engine (`generate_voicing`):** Generate instrument-ready voicings (rootless, shell, triad, pad, drop-2, drop-3) and calculate voice-leading scores for transitions. * **Reharmonization (`reharmonize`):** Substitute progressions using classic jazz techniques, including Tritone Substitution, ii-V Insertion, Modal Interchange, Coltrane Changes, and Backdoor cadences. *Ideal for developers building AI music assistants, digital audio workstation (DAW) agents, educational theory tools, and automated composition workflows.*

14 minutes ago
Sellerguide

17 hours ago