Model training examples
This section includes examples showing how to train machine learning models on Databricks using many popular open-source libraries.
You can also use AutoML, which automatically prepares a dataset for model training, performs a set of trials using open-source libraries such as scikit-learn and XGBoost, and creates a Python notebook with the source code for each trial run so you can review, reproduce, and modify the code.
Machine learning examples
Package | Notebook(s) | Features |
---|---|---|
scikit-learn | Unity Catalog, classification model, MLflow, automated hyperparameter tuning with Hyperopt and MLflow | |
scikit-learn | Unity Catalog, classification model, MLflow, automated hyperparameter tuning with Hyperopt and MLflow, XGBoost | |
MLlib | Binary classification, decision trees, GBT regression, Structured Streaming, custom transformer | |
xgboost | Python, PySpark, and Scala, single node workloads and distributed training |
Hyperparameter tuning examples
For general information about hyperparameter tuning in Databricks, see Hyperparameter tuning.
Package | Notebook | Features |
---|---|---|
Optuna | Optuna, distributed Optuna, scikit-learn, MLflow | |
Hyperopt | Distributed hyperopt, scikit-learn, MLflow | |
Hyperopt | Use distributed hyperopt to search hyperparameter space for different model types simultaneously | |
Hyperopt | Hyperopt, MLlib | |
Hyperopt | Best practices for datasets of different sizes |