Follow these sample notebooks to learn:
- Train within notebook: train a simple scikit-learn model using the Jupyter kernel and deploy the model to Azure Container Service.
- Train on local: train a model using local computer as compute target.
- Train on remote VM: train a model using a remote Azure VM as compute target.
- Train on AmlCompute: train a model using an AmlCompute cluster as compute target.
- Train in an HDI Spark cluster: train a Spark ML model using an HDInsight Spark cluster as compute target.
- Logging API: experiment with various logging functions to create runs and automatically generate graphs.
- Train and hyperparameter tune on Iris Dataset with Scikit-learn: train a model using the Scikit-learn estimator and tune hyperparameters with Hyperdrive.