# Training Report - Ensemble Generated: 2025-09-08 18:12:05 ## Overview - **Command**: `ensemble` - **Training Duration**: 6144.87 seconds (102.4 minutes) - **Output Directory**: `output/ensemble_20250908_162940` ## Dataset Information - **Total Records**: 25,512 - **Training Steps per Epoch**: 637 - **Validation Steps per Epoch**: 159 ### Vocabulary Sizes - **Stations**: 6 unique stations - **Routes**: 13 unique routes - **Tracks**: 13 unique tracks (prediction targets) ## Training Configuration - **Num Models**: 6 - **Epochs**: 1000 - **Batch Size**: 32 - **Base Learning Rate**: 0.001 - **Dataset Size**: 25512 - **Bagging Fraction**: 1.0 - **Seed Base**: 42 ## Final Performance Metrics - **Average Validation Loss**: 0.9233 - **Average Validation Accuracy**: 0.7460 - **Best Individual Accuracy**: 0.7720 - **Worst Individual Accuracy**: 0.7256 - **Ensemble Std Accuracy**: 0.0181 ## Additional Information - **Individual Model Metrics**: {'model_index': 0, 'validation_loss': 0.8818949460983276, 'validation_accuracy': 0.7720125913619995, 'learning_rate': 0.0011677725896206085, 'parameters': 53384}, {'model_index': 1, 'validation_loss': 0.9238271713256836, 'validation_accuracy': 0.7682783007621765, 'learning_rate': 0.0010442193817105285, 'parameters': 156552}, {'model_index': 2, 'validation_loss': 0.9241461753845215, 'validation_accuracy': 0.7399764060974121, 'learning_rate': 0.00096484374873539, 'parameters': 14856}, {'model_index': 3, 'validation_loss': 0.9481979608535767, 'validation_accuracy': 0.7256289124488831, 'learning_rate': 0.0009162122256532111, 'parameters': 14856}, {'model_index': 4, 'validation_loss': 0.9160543084144592, 'validation_accuracy': 0.7421383857727051, 'learning_rate': 0.0008199605784692232, 'parameters': 14856}, {'model_index': 5, 'validation_loss': 0.9454122185707092, 'validation_accuracy': 0.7279874086380005, 'learning_rate': 0.0009672535936195217, 'parameters': 14856} - **Ensemble Strategy**: Diverse architectures (deep, wide, standard) - **Learning Rate Variation**: 0.8x to 1.2x base rate with random variation - **Total Parameters**: 269360 ### Temperature Scaling - **Temperature**: 1.5000 - **Uncalibrated Nll**: 1.9108 - **Calibrated Nll**: 1.8276 - **Uncalibrated Ece**: 0.0939 - **Calibrated Ece**: 0.0302 ## Dataset Schema The model was trained on MBTA track assignment data with the following features: - **Categorical Features**: station_id, route_id, direction_id - **Temporal Features**: hour, minute, day_of_week (cyclically encoded) - **Target**: track_number (classification with 13 classes) ## Model Architecture - Embedding layers for categorical features - Cyclical time encoding (sin/cos) for temporal patterns - Dense layers with dropout regularization - Softmax output for multi-class track prediction ## Usage To load and use this model: ```python import keras # Load for inference (optimizer not saved): model = keras.models.load_model('track_prediction_ensemble_final.keras', compile=False) ``` --- *Report generated by imt-ml training pipeline*