01Automatic generation of cross-validation and evaluation logic
020 GitHub stars
03Automated Grid, Random, and Bayesian optimization strategies
04Seamless integration with scikit-learn and Optuna libraries
05Support for multiple ML model types including Random Forest and Gradient Boosting
06Detailed reporting of best hyperparameter configurations and performance metrics