Machine learning with Azure Databricks (DP-3014)
    About Lesson

    Learning Objectives

    1. Explore Azure Databricks
    • Introduction to Azure Databricks as a cloud service providing a scalable platform for data analytics.
    • Use of Apache Spark in Azure Databricks for performing data transformations, analysis, and visualizations at scale.
    1. Train a Machine Learning Model in Azure Databricks
    • Understanding how data is used for training predictive models in Azure Databricks.
    • Overview of the commonly used machine learning frameworks supported by Azure Databricks.
    1. Use MLflow in Azure Databricks
    • Introduction to MLflow as an open-source platform managing the machine learning lifecycle.
    • Insight into how MLflow is natively supported in Azure Databricks.
    1. Tune Hyperparameters in Azure Databricks
    • The important role of tuning hyperparameters in machine learning.
    • Using the Hyperopt library in Azure Databricks for automated hyperparameters optimization.
    1. Use AutoML in Azure Databricks
    • An overview of AutoML’s role in simplifying the process of building effective machine learning models.
    • Insight into how AutoML fits into the Azure Databricks ecosystem.
    1. Train Deep Learning Models in Azure Databricks
    • Understanding deep learning and its use of neural networks for training machine learning models.
    • Looking at the complex forecasting, computer vision, natural language processing, and other AI workloads handled by deep learning in Azure Databricks.