Wenn Sie sich fĂĽr diesen Kurs anmelden, werden Sie auch fĂĽr dieses berufsbezogene Zertifikat angemeldet.
Lernen Sie neue Konzepte von Branchenexperten
Gewinnen Sie ein Grundverständnis bestimmter Themen oder Tools
Erwerben Sie berufsrelevante Kompetenzen durch praktische Projekte
Erwerben Sie ein Berufszertifikat von Microsoft zur Vorlage
In diesem Kurs gibt es 4 Module
This course equips you with the essential skills to take generative AI models from development to production. You will learn to implement robust MLOps practices on Azure, including automated CI/CD pipelines, version control, and full lifecycle management for your models. Simultaneously, you will dive into the critical principles of Responsible AI, using Microsoft’s framework to build fair, transparent, and ethical models that you can deploy with confidence.
This module introduces the core principles of MLOps (machine learning operations), such as automation and reproducibility. Learners will explore the complete AI model lifecycle, from initial setup to deployment, and learn to manage these stages effectively using Azure ML and tools like MLflow.
Important Notice on the Azure Interface: The screencast videos and screenshots were last updated in late 2025.
Please be aware that Microsoft may have updated the Azure interface since then. If the steps shown in the course materials look different from your current Azure environment, please follow the most up-to-date interface, as the underlying concepts and learning objectives remain the same.
Das ist alles enthalten
7 Videos6 LektĂĽren6 Aufgaben
Infos zu Modulinhalt anzeigen
7 Videos•Insgesamt 31 Minuten
Introduction to Microsoft GenAI engineering certification•4 Minuten
Introduction to MLOps in Azure AI Engineering•3 Minuten
What is MLOps?•6 Minuten
A guided tour of the MLOps toolkit in Azure ML•5 Minuten
The importance of gathering requirements•4 Minuten
Visualizing the end-to-end model lifecycle•7 Minuten
Module 1 summary: From manual workflows to strategic management•2 Minuten
6 Lektüren•Insgesamt 55 Minuten
Course syllabus and recommended background•5 Minuten
Principles of MLOps and the Azure toolkit•10 Minuten
MLOps key takeaways•10 Minuten
A practical guide to the model lifecycle in Azure•10 Minuten
Lifecycle management highlights•10 Minuten
Making business-driven lifecycle decisions•10 Minuten
6 Aufgaben•Insgesamt 190 Minuten
Setting up MLOps in Azure ML•30 Minuten
MLOps basics: Practice Quiz•30 Minuten
Manually managing a model in the Azure ML Model Registry•30 Minuten
Manually registering and versioning a model•40 Minuten
Lifecycle management skills: Practice Quiz•30 Minuten
Module 1 evaluation: Graded Quiz•30 Minuten
Version control and CI/CD pipelines
Modul 2•5 Stunden abzuschließen
Moduldetails
This module focuses on automating the AI development process. You will be introduced to the fundamentals of version control with Git, a critical skill for any professional developer. To support learners who may be new to this tool, this module will provide a practical guide to essential commands and demonstrate their use within Azure Repos. With this foundation, you will then build an end-to-end Continuous Integration/Continuous Deployment (CI/CD) pipeline in Azure to automatically train, validate, and deploy your models, turning your manual workflow into a robust, automated system.
Important Notice on the Azure Interface: The screencast videos and screenshots were last updated in late 2025.
Please be aware that Microsoft may have updated the Azure interface since then. If the steps shown in the course materials look different from your current Azure environment, please follow the most up-to-date interface, as the underlying concepts and learning objectives remain the same.
Das ist alles enthalten
5 Videos5 LektĂĽren5 Aufgaben
Infos zu Modulinhalt anzeigen
5 Videos•Insgesamt 26 Minuten
Module 2 introduction: From code commits to automated deployments•3 Minuten
Importance of version control in AI•6 Minuten
Connecting Azure Repos and Azure ML: A step-by-step guide•7 Minuten
CI/CD workflows in Azure•7 Minuten
Module 2 summary: From automated deployment to production reality•3 Minuten
5 Lektüren•Insgesamt 55 Minuten
Implementing version control with Azure Repos•15 Minuten
Version control strategies•10 Minuten
Designing and implementing CI/CD pipelines•10 Minuten
CI/CD techniques•10 Minuten
Case study: Anatomy of a production-grade AI pipeline•10 Minuten
5 Aufgaben•Insgesamt 210 Minuten
Implementing version control with GitHub and Azure ML•60 Minuten
Version control proficiency: Practice Quiz•30 Minuten
Implementing an end-to-end CI/CD pipeline for AI models•60 Minuten
CI/CD workflow understanding: Practice Quiz•30 Minuten
Module 2 evaluation: Graded Quiz•30 Minuten
Monitoring, logging, and cost optimization
Modul 3•6 Stunden abzuschließen
Moduldetails
This module addresses the critical post-deployment phase of MLOps. Learners will implement robust monitoring and logging frameworks using tools like Azure Monitor, Application Insights, and MLflow to track model performance and ensure reliability. Additionally, they will explore and apply practical strategies for managing and optimizing the costs associated with training and hosting AI models in Azure.
Important Notice on the Azure Interface: The screencast videos and screenshots were last updated in late 2025.
Please be aware that Microsoft may have updated the Azure interface since then. If the steps shown in the course materials look different from your current Azure environment, please follow the most up-to-date interface, as the underlying concepts and learning objectives remain the same.
Das ist alles enthalten
5 Videos6 LektĂĽren6 Aufgaben
Infos zu Modulinhalt anzeigen
5 Videos•Insgesamt 22 Minuten
Module 3 introduction: From deployment to operational excellence•3 Minuten
The role of monitoring in AI•5 Minuten
A tour of Azure's monitoring and logging tools•5 Minuten
Optimizing AI-related costs in Azure•7 Minuten
Module 3 summary: From deployment to operational excellence•2 Minuten
6 Lektüren•Insgesamt 65 Minuten
Setting up logging and monitoring frameworks•10 Minuten
Monitoring best practices•10 Minuten
From logs to insights: Analyzing custom logging data•10 Minuten
Managing costs with Azure ML compute and OpenAI services•15 Minuten
Strategic cost management and trade-offs•10 Minuten
Achieving operational excellence: A unified approach•10 Minuten
6 Aufgaben•Insgesamt 245 Minuten
Configuring Azure monitoring tools•60 Minuten
Implementing custom logging for an inference endpoint•35 Minuten
Monitoring and logging: Practice Quiz•30 Minuten
Managing and optimizing AI deployment costs•60 Minuten
Cost management assessment: Practice Quiz•30 Minuten
Module 3 evaluation: Graded Quiz•30 Minuten
Ethical AI and Microsoft’s responsible AI practices
Modul 4•7 Stunden abzuschließen
Moduldetails
This module focuses on the critical importance of building trustworthy and ethical AI. Learners will explore foundational ethical principles like fairness and transparency. They will then learn to operationalize these concepts using Microsoft's Responsible AI framework and Azure's built-in tools to assess, track, and mitigate issues like bias in generative models.
Important Notice on the Azure Interface: The screencast videos and screenshots were last updated in late 2025.
Please be aware that Microsoft may have updated the Azure interface since then. If the steps shown in the course materials look different from your current Azure environment, please follow the most up-to-date interface, as the underlying concepts and learning objectives remain the same.
Das ist alles enthalten
6 Videos5 LektĂĽren7 Aufgaben
Infos zu Modulinhalt anzeigen
6 Videos•Insgesamt 27 Minuten
Module 4 introduction: From a working model to a trustworthy system•2 Minuten
Why ethics matter in AI•6 Minuten
Introducing the Azure Responsible AI Dashboard•7 Minuten
Implementing responsible AI with Microsoft guidelines•6 Minuten
Module 4 summary: From ethical principles to an integrated pipeline•3 Minuten
Course Summary: Integrating MLOps and ethics for production AI•4 Minuten
5 Lektüren•Insgesamt 55 Minuten
Guidelines for ethical AI•10 Minuten
Implementing ethics in AI•10 Minuten
Integrating Microsoft's responsible AI practices and AETHER guidelines•15 Minuten
Responsible AI implementation•10 Minuten
Integrating Responsible AI into your MLOps pipeline•10 Minuten
7 Aufgaben•Insgesamt 330 Minuten
Building an ethical AI checklist•30 Minuten
Ethical considerations in AI: Practice Quiz•30 Minuten
Implementing responsible AI from assessment to mitigation•60 Minuten
Responsible and ethical AI analysis: Practice Quiz•30 Minuten
Hands-on final project•120 Minuten
Final Project rationale and strategy assessment: Graded project•30 Minuten
MLOps and Responsible AI: Graded Quiz•30 Minuten
Erwerben Sie ein Karrierezertifikat.
FĂĽgen Sie dieses Zeugnis Ihrem LinkedIn-Profil, Lebenslauf oder CV hinzu. Teilen Sie sie in Social Media und in Ihrer Leistungsbeurteilung.
Our goal at Microsoft is to empower every individual and organization on the planet to achieve more.
In this next revolution of digital transformation, growth is being driven by technology. Our integrated cloud approach creates an unmatched platform for digital transformation. We address the real-world needs of customers by seamlessly integrating Microsoft 365, Dynamics 365, LinkedIn, GitHub, Microsoft Power Platform, and Azure to unlock business value for every organization—from large enterprises to family-run businesses. The backbone and foundation of this is Azure.
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 Certificate?
When you enroll in the course, you get access to all of the courses in the Certificate, 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.
Finanzielle UnterstĂĽtzung verfĂĽgbar, weitere Informationen
Âą Einige Aufgaben in diesem Kurs werden mit AI bewertet. FĂĽr diese Aufgaben werden Ihre Daten in Ăśbereinstimmung mit Datenschutzhinweis von Courseraverwendet.