Model Card: AutoML Tabular Predictor for Cheese Price
Model Details
- Framework:
AutoGluon - Task:
Regression
Dataset
- Source: aslan-ng/cheese-tabular
- Target:
price - Splits:
- Augmented: 300 rows
- Original: 30 rows
- Preprocessing Steps:
- Dropped 'name' and 'origin' columns.
- Train/test split (80%/20%).
Training
- Framework: AutoGluon
- Preset:
"best_quality" - Time Limit: 300 seconds
- Explored Models: LightGBM, XGBoost, Random Forest, NeuralNetTorch, NeuralNetFastAI, and ExtraTrees.
Best Model
- Model: NeuralNetTorch_r79_BAG_L1
- Time to train: 8.433802 seconds
- Time to inference: 0.109650 seconds
- RMSE Validation: $1.330218
- RMSE Test: $0.869771
Results
- Validation Split:
- RMSE: $2.0570
- MAE: $1.5431
- MSE: $4.2313
Notes
Educational use only. Used AutoML for training model, used ChatGPT to debug
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