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Microsoft Machine Learning Operations (MLOps) Engineer (AI-300)

This course prepares learners to design, implement, and operate Machine Learning Operations (MLOps) and Generative AI Operations (GenAIOps) solutions on Azure. It covers building secure and scalable AI infrastructure, managing the full lifecycle of traditional machine learning models with Azure Machine Learning, and deploying, evaluating, monitoring, and optimizing generative AI applications and agents using Microsoft Foundry.

course: Microsoft Machine Learning Operations (MLOps) Engineer (AI-300)

Duration: 4 days

Format: Virtual or Classroom

prepare-exam Prepares for Exam: Operationalizing Machine Learning and Generative AI Solutions AI-300

certification-icon Prepares for Certification: Microsoft Certified: Machine Learning Operations (MLOps) Engineer Associate

ktk-icon Attend this and 60+ other Microsoft courses for FREE with Unlimited Microsoft Training

Overview

Learners will gain hands-on knowledge of automation, continuous integration and delivery, infrastructure as code, and observability by using tools such as GitHub Actions, Azure CLI, and Bicep. The course emphasizes collaboration with data science and DevOps teams to deliver reliable, production-ready AI systems aligned with modern MLOps and GenAIOps best practices.

This course includes
  • intructor-icon Instructor-led training
  • intructor-icon Personal Learning Path
  • intructor-icon Email, chat and phone support
  • intructor-icon Certification Guarantee

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Who is this course for?

Who is the Microsoft Machine Learning Operations (MLOps) Engineer (AI-300) course for?

This course is intended for data scientists, machine learning engineers, and DevOps professionals who want to design and operate production-grade AI solutions on Azure. It is suited for learners with experience in Python, a foundational understanding of machine learning concepts, and basic familiarity with DevOps practices such as source control, CI/CD, and command-line tools, who are preparing to implement MLOps and GenAIOps workflows using Azure-native services.

Curriculum

What you will learn during our Microsoft Machine Learning Operations (MLOps) Engineer (AI-300) course.

  • Learn how to find the best machine learning model with automated machine learning (AutoML), MLflowtracked notebooks, and the Responsible AI dashboard.
  • Preprocess data and configure featurization
  • Run an automated machine learning experiment
  • Evaluate and compare models
  • Configure MLflow for model tracking in notebooks
  • Train and track models in notebooks
  • Evaluate models with the Responsible AI dashboard
  • Exercise Find the best classification model with Azure Machine Learning
  • Learn how to perform hyperparameter tuning with a sweep job in Azure Machine Learning.
  • Define a search space
  • Configure a sampling method
  • Configure early termination
  • Use a sweep job for hyperparameter tuning
  • Exercise Run a sweep job
  • Learn how to create and use components to build pipeline in Azure Machine Learning. Run and schedule Azure Machine Learning pipelines to automate machine learning workflows.
  • Create components
  • Create a pipeline
  • Run a pipeline job
  • Exercise Run a pipeline job
  • Learn how to automate your machine learning workflows by using GitHub Actions.
  • Understand the business problem
  • Explore the solution architecture
  • Use GitHub Actions for model training
  • Exercise
  • Learn how to protect your main branch and how to trigger tasks in the machine learning workflow based on changes to the code.
  • Understand the business problem
  • Explore the solution architecture
  • Trigger a workflow
  • Exercise
  • Learn how to train, test, and deploy a machine learning model by using environments as part of your machine learning operations (MLOps) strategy.
  • Understand the business problem
  • Explore the solution architecture
  • Set up environments
  • Exercise
  • Learn how to automate and test model deployment with GitHub Actions and the Azure Machine Learning CLI (v2).
  • Understand the business problem
  • Explore the solution architecture
  • Model deployment
  • Exercise
  • Learn how to develop chat applications with language models using a codefirst development approach. By developing generative AI apps codefirst, you can create robust and reproducible flows that are integral for generative AI Operations, or GenAIOps.
  • Explore use cases for GenAIOps
  • Select the right generative AI model
  • Understand the development lifecycle of a language model application
  • Explore available tools and frameworks to implement GenAIOps
  • Exercise Compare language models from the model catalog
  • Learn how to manage AI prompts as versioned assets using GitHub. Apply software engineering best practices to create, test, and promote prompt versions used in Microsoft Foundry as part of a GenAIOps workflow.
  • Apply version control to prompts
  • Understand Microsoft Foundry agents and prompt versioning
  • Organize prompts in GitHub repositories
  • Develop safe prompt deployment workflows
  • Exercise Develop prompt and agent versions
  • Learn how to optimize AI agents through structured evaluation that transforms guesswork into evidencebased engineering decisions. You'll explore how to design evaluation experiments with clear metrics for quality, cost, and performance; organize experiments using Gitbased workflows; create evaluation rubrics for consistent scoring; and compare results to make informed optimization decisions.
  • Design evaluation experiments
  • Apply Gitbased workflows to optimization experiments
  • Apply evaluation rubrics for consistent scoring
  • Exercise Evaluate and compare AI agent versions
  • Learn how to implement automated evaluations for AI agent responses using Microsoft Foundry evaluators, create evaluation datasets from production data and synthetic generation, run batch evaluations with Python scripts, and integrate evaluation workflows into GitHub Actions for continuous quality assurance.
  • Understand why automated evaluations matter
  • Align evaluators with human criteria
  • Create evaluation datasets
  • Implement batch evaluations with Python
  • Integrate evaluations into GitHub Actions
  • Exercise Set up automated evaluations
  • Learn how to monitor the performance of your generative AI application using Microsoft Foundry. This module teaches you to track key metrics like latency and token usage to make informed, costeffective deployment decisions.
  • Why do you need to monitor?
  • Understand key metrics to monitor
  • Explore how to monitor with Azure
  • Integrate monitoring into your app
  • Interpret monitoring results
  • Exercise Enable monitoring for a generative AI application
  • Learn how to implement tracing in your generative AI applications using Microsoft Foundry and OpenTelemetry. This module teaches you to capture detailed execution flows, debug complex workflows, and understand application behavior for better reliability and optimization.
  • Why do you need to use tracing?
  • Identify what to trace in generative AI applications
  • Implement tracing in generative AI applications
  • Debug complex workflows with advanced tracing patterns
  • Make informed decisions with trace data analysis
  • Exercise Enable tracing for a generative AI application

Preparation

  • Orange-check Programming experience with Python or R
  • Orange-check Experience developing and training machine learning models
  • Orange-check Familiarity with basic Azure Machine Learning concepts
  • Orange-check Familiarity with fundamental generative AI concepts and services in Azure.

Meet our instructors

Meet some of the Readynez Instructors you can meet on your course. They are experts, passionate about what they do, and dedicated to give back to their industry, their field, and those who want to learn, explore, and advance in their careers.

Tiago Costa

With a long-standing reputation as a Microsoft MVP and MCT, Tiago Costa delivers LIVE training that blends expert knowledge with real-world application. His courses help professionals build hands-on cloud skills and prepare effectively for Microsoft certifications.

Meet the Instructor: Tiago Costa

At Readynez, we believe world-class training starts with world-class instructors - and Tiago Costa is a prime example.

With over 20 years of experience delivering Microsoft Cloud & AI solutions (including to Fortune 500 companies), Tiago brings a rare combination of deep technical expertise and real-world perspective to every course.

  • 50+ Microsoft certifications.
  • Microsoft MVP since 2016 & Microsoft Certified Trainer since 2006.

  • Speaker, architect, and trusted advisor to global enterprises.

As a dedicated community leader, an independent contractor and founder of the Azure & AI Portugal User Group, Tiago is passionate about helping others grow their careers through knowledge sharing and practical skills.

When you train with Tiago, you’re not just learning from certified professionals...
You’re learning from a global leader.

Find your next Microsoft course with Tiago Costa here.

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FAQ

FAQs for the Microsoft Machine Learning Operations (MLOps) Engineer (AI-300) course.

AB-100 is an advanced training program focused on designing enterprise AI agent and copilot solutions using Microsoft technologies. It prepares candidates to architect AI-driven business solutions and earn the official AB-100 certification.

Preparation involves reviewing AI fundamentals, understanding Microsoft cloud services, and becoming familiar with business process automation concepts. A strategic mindset toward digital transformation and governance frameworks will help you maximize the course value.

There are no strict prerequisites. However, familiarity with Microsoft cloud platforms, AI fundamentals, enterprise architecture principles, and business process design is highly recommended.

The course covers AI solution architecture, agent and copilot design, governance and compliance, responsible AI principles, enterprise data integration, automation frameworks, risk management, scalability strategies, and business value measurement.

Yes. As organizations increasingly adopt AI agents and copilots, certified AI business architects are in high demand. This certification validates your ability to design scalable and responsible AI solutions aligned with enterprise strategy.

The Microsoft Agentic AI Business Solutions Architect (AB-100) course cost depends on the training provider and delivery format (online or in-person). Your course fee typically includes instructor-led training and all official course materials.

Passing the course requires successfully completing the AB-100 certification exam. The exact passing score is set by the exam provider and may change over time, so it’s best to check the official exam details when booking your test.

Yes. To earn the official certification, candidates must successfully pass the AB-100 certification exam after completing the training.

Yes. The course is available in instructor-led online formats as well as in-person delivery, depending on the training provider. Online sessions include interactive discussions and practical architectural case studies.

The exam is considered advanced-level. It requires strong understanding of AI architecture, governance, business alignment, and Microsoft platform integration. Practical experience with enterprise systems will significantly help.

Stay updated with Microsoft AI updates, practice designing AI solution architectures, engage in enterprise AI projects, and follow responsible AI and governance best practices. Continuous learning ensures your expertise remains relevant.

Professionals certified in AB-100 typically earn between €85,000 and €140,000 annually, depending on experience, region, and industry. Senior AI solution architects and enterprise AI strategists may command even higher compensation in large organizations.

Reviews

Feedback from our delegates.

Johan Andersson

Johan Andersson

Easy to attend over Teams and an excellent instructor gave me great value for the time I invested.

Stephen Ridgway

Readynez is the best training provider I've used for many years. Their customer service is first class, prices are very competitive and instruction excellent.

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