chapter six
This chapter covers
- Customizing the entire AutoML search space without connecting AutoML blocks
- Tuning autoencoder models for unsupervised learning tasks
- Tuning shallow models with preprocessing pipelines.
- Controlling the AutoML process by customizing tuners
- Joint tuning and selection among deep learning and shallow models
- Hyperparameter tuning beyond Keras and Scikit-learn models
This chapter introduces customization of the entire AutoML search space in a layer-wise fashion without wiring up AutoML blocks, giving you more flexibility in designing the search space for tuning unsupervised learning models and optimization algorithm. We introduces how to tune a shallow model with its preprocessing pipeline including feature engineering steps. You will also learn how to control the model training and evaluation process to conduct a joint tuning and selection of deep learning models and shallow models. This allows you to tune models with different training and evaluation procedures implemented with different ML libraries.