When you enroll in this course, you'll also be enrolled in this Specialization.
Learn new concepts from industry experts
Gain a foundational understanding of a subject or tool
Develop job-relevant skills with hands-on projects
Earn a shareable career certificate
There are 2 modules in this course
This course is designed to provide a comprehensive foundation in Azure Machine Learning, equipping learners with essential skills for managing ML workflows within the Azure ML workspace. Participants will begin by understanding core workspace fundamentals, including environment setup, resource management, and key components for ML experimentation. The course progresses to advanced concepts such as optimizing compute resources, managing datasets effectively, and configuring high-performance ML pipelines.
Learners will gain expertise in scaling ML workloads, fine-tuning data storage strategies, and applying best practices for secure and efficient model deployment. Additionally, the course covers advanced data and compute management techniques to enhance ML operations (MLOps) and ensure seamless integration with Azure services.
This course is structured into multiple modules, each featuring lessons and video lectures that provide theoretical insights and hands-on practice. Participants will engage with approximately 3:00–4:00 hours of instructional content, ensuring both conceptual understanding and practical application. To reinforce learning, graded and ungraded assignments are included within each module to test the ability of learners in real-world scenarios.
Module 1: Experiment with Azure Machine Learning
Module 2: Deploying, Consuming, Managing, and Evaluating Models with Azure Machine Learning
By the end of this course, a learner will be able to
Explore the process of registering, logging, and deploying MLflow models
Understand and implement Responsible AI practices
Understand the fundamentals of AutoML in Azure
Learn about different machine learning algorithms and tasks
Master how to interpret AutoML job results, ensuring success and optimizing model performance.
This course provides a deep dive into identifying appropriate data sources, formats, and ingestion strategies for machine learning projects in Azure, ensuring efficient data handling. It emphasizes the principles of selecting the right services and compute options for model training, optimizing performance and scalability.
Participants will gain expertise in differentiating between real-time and batch deployment strategies based on consumption needs, enabling informed architectural decisions. Additionally, the course explores MLOps best practices, guiding learners through the design and implementation of scalable workflows and effective Azure ML environment organization, ensuring seamless integration and lifecycle management.
What's included
11 videos3 readings2 assignments
Show info about module content
11 videos•Total 88 minutes
Introducing AutoML•7 minutes
Preprocess data and configure featurization•7 minutes
Run an Automated Machine Learning experiment•7 minutes
Machine Learning Algorithms•10 minutes
Different Types of Machine Learning Tasks•8 minutes
Evaluate and compare models•8 minutes
Exploring Preprocessing Steps in Azure Machine Learning•8 minutes
Configure MLflow for model tracking in notebooks•8 minutes
Setting and Running an AutoML job•12 minutes
Understanding an AutoML job success•7 minutes
Exam Tips•5 minutes
3 readings•Total 90 minutes
Welcome to the Course•30 minutes
Experiment with Azure Machine Learning - Overview•30 minutes
Meet & Greet•30 minutes
2 assignments•Total 60 minutes
Azure AutoML: From Data Prep to Model Evaluation - Practice Assignment•30 minutes
Experiment with Azure Machine Learning - Graded Assignment•30 minutes
Deploying, Consuming, Managing, and Evaluating Models with Azure Machine Learning
Module 2•4 hours to complete
Module details
This module provides a comprehensive understanding of deploying, registering, and managing machine learning models within Azure Machine Learning, equipping learners with the skills to operationalize ML solutions. Participants will explore concepts such as deploying models to managed online endpoints, MLflow model registration, and applying Blue-Green deployment strategies for seamless updates. The module covers logging and autologging ML models using MLflow, configuring model signatures, and understanding the MLflow model format to enhance interoperability. Learners will gain expertise in Responsible AI practices, including evaluating the Responsible AI dashboard, performing error analysis, and exploring explanations, counterfactuals, and causal analysis. Additionally, the module includes exam tips to help learners succeed in Azure ML certification. By the end of this module, participants will be equipped with practical knowledge to deploy and manage ML models efficiently while ensuring ethical and responsible AI implementation in Azure Machine Learning.
What's included
18 videos1 reading3 assignments
Show info about module content
18 videos•Total 116 minutes
Introduction To Exploring how to Register and Deploy Machine Learning Models Using MLflow•7 minutes
Logging machine learning models using MLflow•8 minutes
Use Autologging to log a model•8 minutes
Understand the MLflow model format•7 minutes
Configuring the Signature for MLflow Models in Azure Machine Learning•7 minutes
Registering an MLflow Model in Azure Machine Learning•7 minutes
Understand Responsible AI•10 minutes
Evaluating the Responsible AI Dashboard in Azure Machine Learning•4 minutes
Exploring Error Analysis in the Responsible AI Dashboard•5 minutes
Explore Explanations•6 minutes
Explore Counterfactuals and Causal Analysis•7 minutes
Registering a Model in Azure Machine Learning•5 minutes
Exam Tips•4 minutes
Deploy a model to a managed online endpoint•6 minutes
Managed Online Endpoint•8 minutes
Deploy MLflow Model to a Managed Online Endpoin•8 minutes
Blue-Green Deployment•6 minutes
Exam Tips•4 minutes
1 reading•Total 10 minutes
Deploying, Consuming, Managing, and Evaluating Models with Azure Machine Learning - Overview•10 minutes
3 assignments•Total 100 minutes
Manage and evaluate models with Azure ML - Practice Assignment•30 minutes
Deploy and consume models with Azure ML - Practice Assignment•30 minutes
Deploying, Consuming, Managing, and Evaluating Models with Azure Machine Learning - Graded Assignment•40 minutes
Earn a career certificate
Add this credential to your LinkedIn profile, resume, or CV. Share it on social media and in your performance review.
Providing certification training since the year 2000, Whizlabs is the pioneer among online training providers across the globe. We are dedicated to helping you learn the skills you need to transform your career in the IT industry.
We provide certification training in the form of Video Courses, Practice Tests, Hands-on Labs and Sandbox in various disciplines such as Cloud Computing, DevOps, Cyber Security, Java, Big Data, Snowflake, CompTIA, Agile, Linux, CCNA, Blockchain, and much more.
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.