Data, Analytics & AI Category Banner Image

Microsoft DW-202 - Azure Machine Learning and MLOps

  • Length 4 day
  • Price  NZD 3250 exc GST
Course overview
View dates &
book now
Register interest

Why study this course

This course provides an in-depth exploration of Azure Machine Learning (Azure ML) and its comprehensive tools for automating, training, deploying, and managing machine learning models. Students will gain hands-on experience with Azure’s powerful ML tools, building pipelines, and operationalising machine learning workflows using MLOps principles. Additionally, the course includes modules on security, governance, and the responsible use of AI, which are essential for modern AI development.

Request Course Information


What you’ll learn

After completing this course, students will be able to:

  • Automate and deploy Azure Machine Learning models

  • Using Generative AI in Azure Machine Learning

  • Operationalise with MLOps


Microsoft Solutions Partner - Cloud - Training Services Logo

Microsoft Azure at Lumify Work

Lumify Work has been delivering effective training across all Microsoft products for over 30 years. We are proud to be both Australia's and New Zealand’s first Microsoft Gold Learning Solutions Partner and the winner of the Microsoft MCT Superstars Award for FY24, which formally recognises us as having the highest quality Microsoft Certified Trainers (MCTs) in ANZ. All Lumify Work Microsoft Azure courses follow Microsoft Official Curriculum (MOC) and are led by MCTs.


Who is the course for?

  • Data Scientists

  • IT Professionals

  • Developers

  • DevOps Engineers

  • Business Analysts

  • Data Analysts


Course subjects

Module 01: Introduction to Azure Machine Learning

  • What is machine learning?

  • What is Azure Machine Learning?

  • Azure Machine Learning CLI & Python SDK v2

  • Creating ML resources and getting started with Azure Machine Learning

  • Working with Data

    • Overview of Data concepts in Azure Machine Learning

    • Creating datastores

    • Creating connections (preview)

    • Preparing data with Apache Spark

    • Understanding Managed feature store

Hands on labs

  • Prepare dataset, train and deploy a classification model, using Azure Machine Learning Studio

  • Create a labeled dataset using Azure Machine Learning data labeling tools

  • Develop and register a feature set with managed feature store and train models by using features

Module 02: Automating and deploying Azure Machine Learning models

  • Training models with Azure Machine Learning

  • Overview of Automated machine learning (AutoML)

  • Deploying Azure ML models

  • Monitoring models with Azure Machine Learning

  • MLflow and Azure Machine Learning

Hands on labs

  • Train a classification model with no-code AutoML in the Azure Machine Learning studio

  • Forecast demand with no-code Automated Machine Learning in the Azure Machine Learning studio

  • Train the best Regression model for the Hardware dataset

Module 03: Using Generative AI in Azure Machine Learning

  • Working with Azure Machine Learning pipelines and components

  • Understanding Model Catalog and Collections

  • Overview of Azure Machine Learning prompt flow

  • Understanding Retrieval Augmented Generation using Azure Machine Learning prompt flow (preview)

  • Implementing Vector stores in Azure Machine Learning (preview)

  • Model monitoring for generative AI applications (preview)

Hands on labs

  • Develop, test and evaluate prompt flow

  • End-to-end process for building RAG applications using prompt flow in Azure AI Studio

Module 04: Operationalise with MLOps

  • Operationalise with MLOps

  • Introduction to Git integration for Azure Machine Learning

  • Using Azure Pipelines with Azure Machine Learning

  • Using GitHub Actions with Azure Machine Learning

  • GenAIOps (LLMOps) for MLOps practitioners

    • Implementing GenAIOps with prompt flow and GitHub

  • Securing AI Applications on Azure

    • Implementing Security and governance for Azure Machine Learning

  • Responsible use of AI

    • Configuring Responsible AI dashboards

    • Sharing Responsible AI insights using the Responsible AI scorecard (preview)

Hands on labs

  • Set up MLOps with GitHub

  • Implement end-to-end approach for MLOps(v2) in Azure using GitHub Workflows

  • Implement GenAIOps with prompt flow and GitHub


Prerequisites

  • Basic knowledge of machine learning concepts

  • Familiarity with Python programming

  • Experience with data manipulation and analysis

  • A basic understanding of cloud computing and Azure services is recommended


Terms & Conditions

The supply of this course by Lumify Work is governed by the booking terms and conditions. Please read the terms and conditions carefully before enrolling in this course, as enrolment in the course is conditional on acceptance of these terms and conditions.


Request Course Information

Awaiting course schedule

If you would like to receive a notification when this course becomes available, enter your details below.

Personalise your schedule with Lumify USchedule

Interested in a course that we have not yet scheduled? Get in touch, and ask for your preferred date and time. We can work together to make it happen.