PHP Classes

File: README.md

Recommend this page to a friend!
  Packages of Christos Drogidis   Quantum AI JML   README.md   Download  
File: README.md
Role: Documentation
Content type: text/markdown
Description: Documentation
Class: Quantum AI JML
Show Quantum Decoherence and AI drift prediction
Author: By
Last change: Initial
Date: 1 month ago
Size: 3,187 bytes
 

Contents

Class file image Download

Quantum AI JML Visualizer

Visualization of Quantum Decoherence & AI Drift Prediction using Ascoos OS Kernel 1.0.0

License PHP Ascoos OS Category

Overview

This repository contains the quantum-ai-jml-visualizer case study for Ascoos OS Kernel 1.0.0.

It demonstrates how the kernel performs:

  • Quantum simulation (Bell State |?+>, decoherence, Everett branching)
  • Statistical analysis (variance-based drift factor)
  • Neural network prediction (instability detection)
  • JML-based UI rendering (native, zero-dependency HTML generation)

Everything runs natively, without frameworks, without template engines, and without external libraries.

Features

  • Quantum state normalization & unitary evolution
  • Decoherence simulation using ?-parameter
  • Z-basis measurement with branching probabilities
  • Variance-based drift analysis
  • Neural network training & prediction (ReLU + Sigmoid)
  • JML dashboard rendering (dark mode, responsive grid)
  • Zero dependencies ? powered entirely by Ascoos OS Kernel

File Structure

/quantum-ai-jml-visualizer
?
??? quantum_ai_jml_visualizer.php   # Main case study file
??? LICENSE.md                      # AGL-F License
??? README.md                       # English documentation
??? README-GR.md                    # Greek documentation

Running the Case Study

Requires:

  • PHP 8.4+
  • Ascoos OS Kernel 1.0.0

Run:

php quantum_ai_jml_visualizer.php

The script outputs a fully rendered HTML dashboard generated from JML.

Quantum Logic (Snippet)

$bellState = $quantum->normalize([
    [0.707, 0.0], [0.0, 0.0],
    [0.0, 0.0],   [0.707, 0.0]
]);

$lambda = 0.75;
$U = $math->tensor($I, $D);
$noisyState = $quantum->normalize(
    $quantum->applyUnitary($U, $bellState)
);

Drift Analysis (Snippet)

$driftFactor = (new TStatisticAnalysisHandler([
    $branchesZ[0]['probability'],
    $branchesZ[1]['probability']
]))->variance();

AI Prediction (Snippet)

$ai->compile([
    ['input'=>1,'output'=>4,'activation'=>'relu'],
    ['input'=>4,'output'=>1,'activation'=>'sigmoid']
]);

$ai->fit([[$driftFactor]], [($driftFactor > 0.2 ? 1 : 0)], epochs:100);
$prediction = $ai->predictNetwork([[$driftFactor]])[0];

JML Dashboard (Snippet)

div:class('status-bar'),style('background:{$statusColor}') {
    `STATUS: {$statusText}`
}

The kernel converts this JML into HTML automatically.

License

This project is licensed under the AGL-F License.

Author

Drogidis Christos Creator of Ascoos OS https://www.ascoos.com