DP-3014: Implementing a Machine Learning Solution with Azure Databricks

Length: 1 Day(s)     Cost:$895 + GST

= Scheduled class     = Guaranteed to run     = Fully booked

Click on the date to book online
Please wait as we are loading the schedules...
LOCATION May June July August
Auckland
Hamilton
Christchurch
Wellington
Virtual Class

Azure Databricks is a cloud-scale platform for data analytics and machine learning. Data scientists and machine learning engineers can use Azure Databricks to implement machine learning solutions at scale.

Microsoft Applied Skills

Microsoft Applied Skills are scenario-based credentials that provide learners with validation of targeted skills. These credentials are an efficient and trusted way to identify and deepen proficiency in scenario-based skillsets. The interactive training and validation enable learners to demonstrate proficiency by completing real-world tasks.

Applied Skills can help students prepare for the workforce by providing them with real-world problem-solving experience and validation of their skills.


This course is for:

  • Data Scientists
  • Machine Learning Engineers

Experience using Python to explore data and train machine learning models with common open source frameworks, like Scikit-Learn, PyTorch, and TensorFlow.


After completing this course, students will be able to:

  • Provision an Azure Databricks workspace
  • Identify core workloads and personas for Azure Databricks
  • Describe key concepts of an Azure Databricks solution
  • Describe key elements of the Apache Spark architecture
  • Create and configure a Spark cluster
  • Describe use cases for Spark
  • Use Spark to process and analyse data stored in files
  • Use Spark to visualise data
  • Prepare data for machine learning
  • Train a machine learning model
  • Evaluate a machine learning model
  • Use MLflow to log parameters, metrics, and other details from experiment runs
  • Use MLflow to manage and deploy trained models
  • Use the Hyperopt library to optimise hyperparameters
  • Distribute hyperparameter tuning across multiple worker nodes
  • Use the AutoML user interface in Azure Databricks
  • Use the AutoML API in Azure Databricks
  • Train a deep learning model in Azure Databricks
  • Distribute deep learning training by using the Horovod library

  • Explore Azure Databricks
  • Use Apache Spark in Azure Databricks
  • Train a machine learning model in Azure Databricks
  • Use MLflow in Azure Databricks
  • Tune hyperparameters in Azure Databricks
  • Use AutoML in Azure Databricks
  • Train deep learning models in Azure Databricks