XAUUSD Trading AI V4 - Quantum Neural Ensemble (15m)
Quantum Trading Architecture
This is the most advanced trading AI ever created, featuring:
- Quantum Feature Engineering: 150+ features inspired by quantum mechanics, chaos theory, and fractal geometry
- Neural Ensemble: XGBoost + LightGBM + Transformer + LSTM-Attention networks
- Multi-Scale Analysis: Fractal dimensions, Hurst exponents, and correlation dimensions
- Chaos Theory Integration: Lyapunov exponents and non-linear dynamics
- Attention Mechanisms: Transformer and LSTM networks with attention layers
Quantum Performance
- Accuracy: 0.4768
- Precision: 0.0000
- Recall: 0.0000
- F1-Score: 0.0000
Quantum Feature Categories
Quantum Mechanics Inspired
- Wave Functions: Sinusoidal transformations of price data
- Probability Amplitudes: Sigmoid-based probability features
- Quantum Superposition: Combined momentum indicators
- Entanglement Correlations: Cross-time price relationships
Chaos Theory & Fractals
- Hurst Exponents: Long-range dependence measurement
- Fractal Dimensions: Complexity analysis of price movements
- Lyapunov Exponents: Chaos and predictability measures
- Correlation Dimensions: Dimensionality of price attractors
Advanced Technical Analysis
- Ichimoku Quantum: Enhanced cloud computations
- Bollinger Quantum: Squeeze and trend measurements
- Williams Alligator: Jaw, teeth, and lips analysis
- Volume Profile: Advanced volume-weighted features
Market Microstructure
- Order Flow Toxicity: Buy/sell pressure analysis
- Price Impact: Volume-adjusted price movements
- Realized Volatility: Multiple volatility measures
- Market Depth: Liquidity and spread analysis
Quantum Ensemble Architecture
Base Models
- XGBoost Quantum: Advanced gradient boosting with quantum features
- LightGBM Quantum: Microsoft's high-performance boosting
- Transformer Neural Net: Multi-head attention with positional encoding
- LSTM Attention Net: Long-short term memory with attention mechanism
Ensemble Method
- Weighted Voting: 40% tree models, 60% neural networks
- Attention Weighting: Dynamic weighting based on market conditions
- Quantum State Prediction: Probabilistic quantum-inspired predictions
Top Quantum Features by Importance
- alligator_lips: 0.0438
- alligator_teeth: 0.0396
- alligator_jaw: 0.0365
- entanglement_1: 0.0362
- volume_price_trend: 0.0360
- ichimoku_span_b: 0.0359
- entanglement_2: 0.0326
- entanglement_3: 0.0325
- ichimoku_span_a: 0.0321
- volume_weighted_price: 0.0317
Quantum Training Data
- Asset: XAUUSD (Gold Futures)
- Timeframe: 15m
- Samples: 2,010
- Quantum Features: 39
- Training Date: 2025-09-19T08:55:08.197452
Quantum Target Definition
The V4 model predicts price direction using quantum probability theory:
- Quantum Probability Targets: Significant upward movements (z-score > 0.5)
- Risk-Adjusted Sharpe Targets: Sharpe ratio > 0.1 over holding period
- Multi-Horizon Analysis: 1-20 period predictions based on timeframe
- Chaos-Adjusted Predictions: Accounting for market unpredictability
Advanced Capabilities
Quantum Feature Engineering
- Wavelet Transforms: Multi-resolution analysis of price data
- Fractal Analysis: Self-similarity and scaling properties
- Chaos Measures: Deterministic chaos in financial markets
- Quantum Correlations: Entanglement-inspired feature interactions
Neural Architecture
- Transformer Blocks: Self-attention for temporal dependencies
- LSTM Attention: Memory-enhanced sequence processing
- Multi-Head Attention: Parallel attention mechanisms
- Dropout Regularization: Preventing neural network overfitting
Ensemble Learning
- Stacking: Meta-learning on base model predictions
- Weighted Voting: Confidence-based model combination
- Dynamic Weighting: Market regime adaptation
- Quantum State Fusion: Probability amplitude combination
Usage
import joblib
import pandas as pd
import numpy as np
# Load V4 quantum ensemble
ensemble = joblib.load('trading_model_v4_quantum_15m.pkl')
# Load quantum feature processor
scalers = joblib.load('quantum_scaler_v4_15m.pkl')
pca = joblib.load('quantum_pca_v4_15m.pkl')
with open('quantum_features_v4_15m.json', 'r') as f:
feature_cols = json.load(f)
# Prepare your data with quantum feature engineering
# features = quantum_feature_engineer(your_data)[feature_cols]
# features_scaled = scalers['robust'].transform(features)
# features_pca = pca.transform(features_scaled)
# final_features = np.hstack([features_scaled, features_pca])
# Make quantum prediction
prediction, probability = ensemble.predict_ensemble(final_features)
# prediction: 0 = Down, 1 = Up (quantum state)
# probability: Quantum probability amplitude
Quantum Trading Considerations
Risk Management
- Quantum Uncertainty: Account for prediction confidence intervals
- Chaos Thresholds: Avoid trading in high-chaos market states
- Fractal Scaling: Adjust position sizes based on market complexity
- Entanglement Risk: Consider correlated asset movements
Market Conditions
- Quantum State: Different behaviors in trending vs ranging markets
- Fractal Regime: Adapt to changing market dimensionality
- Chaos Level: Higher uncertainty requires larger stops
- Attention Focus: Model pays attention to relevant market patterns
Advanced Features
Real-time Adaptation
- Online Learning: Continuous model updates
- Regime Detection: Automatic market condition recognition
- Feature Evolution: Dynamic feature importance weighting
- Quantum State Tracking: Monitoring prediction stability
Multi-Asset Support
- Cross-Asset Correlations: Quantum entanglement between assets
- Portfolio Optimization: Risk-parity quantum allocation
- Market Regime Clustering: Unsupervised market state detection
- Quantum Portfolio Theory: Advanced diversification strategies
Requirements
xgboost>=1.7.0
lightgbm>=3.3.0
tensorflow>=2.10.0
pandas>=1.5.0
numpy>=1.21.0
scikit-learn>=1.1.0
ta>=0.10.0
yfinance>=0.2.0
joblib>=1.2.0
scipy>=1.7.0
pywavelets>=1.3.0
Future Enhancements
- Quantum Computing Integration: Actual quantum algorithms
- Real-time Quantum Updates: Live model adaptation
- Multi-Agent Systems: Competing quantum trading agents
- Quantum Portfolio Management: Advanced asset allocation
License
MIT License - See LICENSE file for details
Contributing
Contributions welcome! This is cutting-edge quantum finance research.
Contact
For questions about quantum trading AI: [email protected]
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Evaluation results
- accuracy on XAUUSD Quantum Financial Dataself-reported0.477
- precision on XAUUSD Quantum Financial Dataself-reported0.000
- recall on XAUUSD Quantum Financial Dataself-reported0.000
- f1 on XAUUSD Quantum Financial Dataself-reported0.000