Build machine learning solutions using Azure Databricks (DP-3014)

 

Course Overview

Azure Databricks is a fully managed, cloud-based data analytics platform, which empowers developers to accelerate AI and innovation by simplifying the process of building enterprise-grade data applications. Built as a joint effort by Microsoft and the team that started Apache Spark, Azure Databricks provides data science, engineering, and analytical teams with a single platform for big data processing and machine learning. In this course, you’ll learn how to use Azure Databricks to train and deploy machine learning models.

Who should attend

This course is designed for aspiring data scientists and AI engineers who need to train and manage machine learning models by using Azure Databricks.

Prerequisites

This learning path assumes that you have experience of using Python to explore data and train machine learning models with common open source frameworks, like Scikit-Learn, PyTorch, and TensorFlow. Consider completing the Create machine learning models learning path before starting this one.

Course Content

Explore Azure Databricks

  • Introduction
  • Get started with Azure Databricks
  • Identify Azure Databricks workloads
  • Understand key concepts
  • Data governance using Unity Catalog and Microsoft Purview
  • Exercise - Explore Azure Databricks
  • Module assessment
  • Summary

Use Apache Spark in Azure Databricks

  • Introduction
  • Get to know Spark
  • Create a Spark cluster
  • Use Spark in notebooks
  • Use Spark to work with data files
  • Visualize data
  • Exercise - Use Spark in Azure Databricks
  • Module assessment
  • Summary

Train a machine learning model in Azure Databricks

  • Introduction
  • Understand principles of machine learning
  • Machine learning in Azure Databricks
  • Prepare data for machine learning
  • Train a machine learning model
  • Evaluate a machine learning model
  • Exercise - Train a machine learning model in Azure Databricks
  • Module assessment
  • Summary

Use MLflow in Azure Databricks

  • Introduction
  • Capabilities of MLflow
  • Run experiments with MLflow
  • Register and serve models with MLflow
  • Exercise - Use MLflow in Azure Databricks
  • Module assessment
  • Summary

Tune hyperparameters in Azure Databricks

  • Introduction
  • Optimize hyperparameters with Optuna
  • Review trials
  • Scale hyperparameter optimization
  • Exercise - Optimize hyperparameters for machine learning in Azure Databricks
  • Module assessment
  • Summary

Use AutoML in Azure Databricks

  • Introduction
  • What is AutoML?
  • Use AutoML in the Azure Databricks user interface
  • Use code to run an AutoML experiment
  • Exercise - Use AutoML in Azure Databricks
  • Module assessment
  • Summary

Train deep learning models in Azure Databricks

  • Introduction
  • Understand deep learning concepts
  • Train models with PyTorch
  • Distribute PyTorch training with TorchDistributor
  • Exercise - Train deep learning models on Azure Databricks
  • Module assessment
  • Summary

Manage machine learning in production with Azure Databricks

  • Introduction
  • Automate your data transformations
  • Explore model development
  • Explore model deployment strategies
  • Explore model versioning and lifecycle management
  • Exercise - Manage a machine learning model
  • Module assessment
  • Summary

Prijs & Delivery methods

Online training

Duur
1 dag

Prijs
  • 645,– €
Klassikale training

Duur
1 dag

Prijs
  • Benelux: 645,– €

Beschikbare data

Instructor-led Online Training:   Dit is een Instructor-Led Online (ILO) training: een online training verzorgd door een trainer. If you have any questions about our online courses, feel free to contact us via phone or Email anytime.
Dit is een FLEX-training: een training die zowel klassikaal als online gevolgd kan worden. Je kiest zelf de gewenste leervorm.

Engels

Tijdzone: Midden-Europese Zomertijd (MEZT)   ±1 uur

Online training Tijdzone: British Summer Time (BST) Taal: Engels
Online training Dit is een FLEX-training. Tijdzone: Midden-Europese Zomertijd (MEZT)
Online training Dit is een FLEX-training. Tijdzone: Midden-Europese Tijd (MET)
Online training Tijdzone: Greenwich Mean Time (GMT) Taal: Engels

6 uur tijdsverschil

Online training Tijdzone: Eastern Daylight Time (EDT) Taal: Engels
Online training Tijdzone: Eastern Daylight Time (EDT) Taal: Engels

7 uur tijdsverschil

Online training Tijdzone: Central Daylight Time (CDT) Taal: Engels
Online training Tijdzone: Central Daylight Time (CDT) Taal: Engels
Online training Tijdzone: Central Standard Time (CST) Taal: Engels
Online training Tijdzone: Central Standard Time (CST) Taal: Engels

9 uur tijdsverschil

Online training Tijdzone: Pacific Daylight Time (PDT) Taal: Engels
Online training Tijdzone: Pacific Daylight Time (PDT) Taal: Engels
Online training Tijdzone: Pacific Standard Time (PST) Taal: Engels
Online training Tijdzone: Pacific Standard Time (PST) Taal: Engels
Dit is een FLEX-training: een training die zowel klassikaal als online gevolgd kan worden. Je kiest zelf de gewenste leervorm.

Nederland

Utrecht Dit is een FLEX-training.   Tijdzone: Midden-Europese Zomertijd (MEZT) boek direct:
de online FLEX-training
de klassikale FLEX-training
Utrecht Dit is een FLEX-training.   Tijdzone: Midden-Europese Tijd (MET) boek direct:
de online FLEX-training
de klassikale FLEX-training