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.

MLOps and responsible AI practices

MLOps and responsible AI practices
This course is part of Microsoft Generative AI Engineering Professional Certificate

Instructor: Microsoft
Access provided by Capgemini
Recommended experience
Skills you'll gain
- Generative AI
- MLOps (Machine Learning Operations)
- Continuous Deployment
- Git (Version Control System)
- Application Lifecycle Management
- AI Workflows
- Artificial Intelligence
- System Monitoring
- Version Control
- Data Ethics
- Microsoft Azure
- Responsible AI
- Continuous Integration
- CI/CD
- Model Deployment
- Skills section collapsed. Showing 7 of 15 skills.
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February 2026
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There are 4 modules in this course
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.
What's included
7 videos6 readings6 assignments
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.
What's included
5 videos5 readings5 assignments
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.
What's included
5 videos6 readings6 assignments
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.
What's included
6 videos5 readings7 assignments
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