MCP Server for Paper Analytical Devices (PAD)

Created By
psaboiaa year ago
A Python MCP Server for Paper Analytical Devices (PAD)
Overview

What is MCP Server for PAD?

MCP Server for Paper Analytical Devices (PAD) is a Python-based server that provides a standardized interface for interacting with the PAD system at Notre Dame, enabling LLM-based tools to access and process PAD data through the Model Context Protocol.

How to use MCP Server for PAD?

To use the MCP Server, clone the repository, configure it with Claude Desktop settings, and start the server using the provided commands. Ensure you have Python 3.12 or higher installed.

Key features of MCP Server for PAD?

  • Card Management: Retrieve and list PAD test cards with metadata, access individual card details, and process card images.
  • Neural Network Integration: List available neural networks and access their configurations.
  • Project Organization: Manage PAD projects and track issues and samples.
  • Image Processing: High-quality image resizing and optimization with detailed metadata.

Use cases of MCP Server for PAD?

  1. Managing and analyzing PAD test cards.
  2. Integrating neural networks for data analysis.
  3. Processing and optimizing images for research purposes.

FAQ from MCP Server for PAD?

  • What is the purpose of the MCP Server?

It provides a standardized interface for accessing and processing PAD data.

  • Is there a specific Python version required?

Yes, Python 3.12 or higher is required.

  • How do I start the server?

Use the command uv run python pad.py after configuration.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
psaboia
Star
0
Language
Python
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.*

6 hours ago