Owning the AI Lifecycle in Azure focuses on managing AI system delivery from build through deployment and ongoing operations. AI initiatives introduce new complexities in data architecture, model development, performance evaluation, and production monitoring. This course equips you to coordinate those moving parts within enterprise environments.
You’ll examine cloud-native AI architecture decisions, data readiness requirements, and model development workflows using Azure Machine Learning and Microsoft Foundry models. The course explores how AutoML, generative AI, AI agents, and Copilot deployments fit into structured delivery processes.
You will also learn how to interpret model performance metrics, support MLOps practices, and guide production monitoring strategies to ensure AI systems remain reliable and aligned with business objectives.
By the end of this course, you’ll be able to coordinate AI delivery across development and operational stages while supporting scalable, production-ready AI systems within the Microsoft Azure ecosystem.
This module builds your ability to evaluate and compare Azure AI services as a decision-maker, not as a technical implementer. You'll learn how project context, including business goals, delivery timelines, data constraints, and organizational requirements, shapes which services are viable for a given initiative. By the end of this module, you'll be able to assess service options, identify misalignments between proposals and requirements, and justify selection recommendations to stakeholders with confidence.
涵盖的内容
3个视频1篇阅读材料1个作业
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3个视频•总计15分钟
Understanding your Azure AI service options•3分钟
Azure AI services capabilities•6分钟
Azure AI services tradeoffs and selection•6分钟
1篇阅读材料•总计10分钟
Azure AI service selection guide•10分钟
1个作业•总计15分钟
Applying Azure AI service selection criteria•15分钟
How to make AI architecture decisions
第 2 单元•小时 后完成
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This module develops your ability to reason through AI architecture decisions and evaluate trade-offs that shape system design. You'll learn how teams move from business requirements to architectural choices, when specific Azure services are appropriate, and how to assess cloud versus on-premises deployment options. By the end of this module, you'll be able to participate meaningfully in architecture discussions, evaluate proposals against project constraints, and guide teams through decisions that balance performance, cost, security, and operational feasibility
涵盖的内容
3个视频1篇阅读材料1个作业
显示有关单元内容的信息
3个视频•总计14分钟
How teams design AI architectures that actually work•3分钟
Choosing the right Azure services for AI projects•6分钟
How to decide between cloud and on-premises for AI•5分钟
1篇阅读材料•总计10分钟
Architecture decision framework and migration analysis•10分钟
1个作业•总计30分钟
Making Azure service choices•30分钟
Designing and governing data pipelines for AI projects
第 3 单元•小时 后完成
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This module builds your ability to evaluate data pipeline designs and assess governance readiness for AI projects. You'll learn how Azure Data Factory and Microsoft Purview work together to move data and maintain oversight, how to interpret pipeline structures and governance outputs without configuring them yourself, and how to identify risks related to data lineage, PII classification, and compliance. By the end of this module, you'll be able to review pipeline proposals, assess governance gaps, and guide teams toward designs that meet both delivery and compliance requirements.
涵盖的内容
3个视频1篇阅读材料3个作业
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3个视频•总计16分钟
How Azure Data Factory and Purview work together•4分钟
How to build a basic Data Factory pipeline •6分钟
Using Microsoft Purview to govern AI data pipelines•7分钟
1篇阅读材料•总计10分钟
Explore a real Azure Data Factory pipeline •10分钟
3个作业•总计45分钟
Evaluate an AI data pipeline design and assess governance readiness•20分钟
Making data pipeline design and governance decisions•10分钟
Designing and governing AI data pipelines in practice•15分钟
Making model development decisions with AutoML
第 4 单元•小时 后完成
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This module builds your ability to use AutoML (Automated Machine Learning) strategically as a decision-making tool rather than treating it as a shortcut for model development. You'll learn when AutoML is appropriate for establishing baselines and testing feasibility, how to interpret AutoML results to assess model readiness, and how to decide when results are "good enough" versus when custom development is warranted. By the end of this module, you'll be able to review AutoML outputs, document defensible recommendations, and guide teams through model development decisions with confidence.
涵盖的内容
2个视频1篇阅读材料2个作业
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2个视频•总计6分钟
When and why teams use AutoML•2分钟
How teams manage AutoML models•4分钟
1篇阅读材料•总计10分钟
Deciding between AutoML and custom model development•10分钟
2个作业•总计30分钟
Interpreting AutoML results to decide model readiness•15分钟
Applying the AutoML decision flow•15分钟
Choosing the right AI approach for your project
第 5 单元•小时 后完成
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This module develops your ability to choose between AI implementation approaches and communicate requirements clearly to technical teams. You'll learn how business constraints, including content volatility, cost sensitivity, compliance exposure, and delivery timelines, shape whether fine-tuning or RAG is appropriate for a given situation. You'll also learn to write structured requirements that technical teams can execute without ambiguity. By the end of this module, you'll be able to evaluate implementation options, justify your recommendations, and translate strategic decisions into actionable specifications.
涵盖的内容
3个视频1篇阅读材料2个作业
显示有关单元内容的信息
3个视频•总计16分钟
When teams choose fine-tuning vs RAG•4分钟
How to write AI requirements that technical teams can execute•6分钟
How to evaluate fine-tuning vs RAG and make a recommendation•6分钟
1篇阅读材料•总计10分钟
AI implementation decision guide for project managers•10分钟
2个作业•总计30分钟
Evaluating AI implementation options under constraints•15分钟
Making model development decsions•15分钟
Managing AI agent workflows
第 6 单元•小时 后完成
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This module builds your ability to oversee AI agent deployments and diagnose workflow issues when they arise. You'll learn when agents are appropriate for automating complete business processes, how agent workflows are structured and where failures typically occur, and how to interpret log information to identify problems and coordinate resolution. By the end of this module, you'll be able to evaluate agent proposals, review workflow designs for risk, and guide troubleshooting conversations with technical teams, without performing technical debugging yourself.
涵盖的内容
3个视频1篇阅读材料2个作业
显示有关单元内容的信息
3个视频•总计18分钟
When and why teams deploy AI agents and Copilots•6分钟
Setting up agent workflows for business processes•5分钟
How to diagnose agent workflow failures using logs•7分钟
1篇阅读材料•总计10分钟
Agent communication protocols (A2A and MCP)•10分钟
2个作业•总计30分钟
Diagnosing agent failures through log analysis•15分钟
Agent workflow design and troubleshooting•15分钟
Building and governing Copilot deployments
第 7 单元•小时 后完成
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This module develops your ability to evaluate and govern Copilot deployments within Microsoft 365 environments. You'll learn how to assess no-code Copilot designs for business fit and integration appropriateness, how to conduct Responsible AI reviews that identify fairness, transparency, and accountability concerns, and how to document remediation steps when issues are found. By the end of this module, you'll be able to review Copilot proposals, guide deployment decisions, and ensure AI assistants operate within organizational and ethical guidelines.
涵盖的内容
1个视频1篇阅读材料3个作业
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1个视频•总计5分钟
Evaluating a Copilot design and conducting a responsible AI review•5分钟
1篇阅读材料•总计10分钟
Microsoft 365 Copilot implementation approach•10分钟
3个作业•总计60分钟
Evaluating a no-code M365 Copilot design•15分钟
Copilot design and responsible AI assessment•15分钟
Managing AI agents and Copilot deployments•30分钟
Reading AI performance reports for business decisions
第 8 单元•小时 后完成
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This module builds your ability to read AI performance reports and translate technical metrics into business impact. You'll learn what classification metrics like precision, recall, F1-score, and AUROC actually measure, how different metrics reflect different types of business risk, and how to connect performance data to ROI and resource allocation decisions. By the end of this module, you'll be able to review performance reports with confidence, identify when intervention is needed, and communicate findings to executives in terms that drive action.
涵盖的内容
3个视频1篇阅读材料1个作业
显示有关单元内容的信息
3个视频•总计16分钟
Understanding key performance metrics•4分钟
How to read AI performance reports for business impact•6分钟
Creating executive performance reports•6分钟
1篇阅读材料•总计10分钟
A practical framework for connecting AI metrics to business outcomes•10分钟
1个作业•总计15分钟
Analyzing AI performance for strategic business decisions•15分钟
Building and operating reliable ML pipelines
第 9 单元•小时 后完成
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This module develops your ability to oversee machine learning pipelines and make deployment decisions based on operational signals. You'll learn how Azure ML pipelines structure work across training, validation, and deployment stages, how to interpret pipeline results to identify failures and their likely causes, and how CI/CD practices connect monitoring outcomes to release decisions. By the end of this module, you'll be able to review pipeline status, coordinate resolution when issues arise, and guide teams through deployment decisions that balance delivery speed with operational safety.
涵盖的内容
3个视频1篇阅读材料2个作业
显示有关单元内容的信息
3个视频•总计13分钟
What Azure ML Pipelines are and how they work•3分钟
Designing effective Azure ML Pipelines and diagnosing failures•6分钟
Connecting Azure ML Pipelines monitoring and CI workflows•5分钟
1篇阅读材料•总计10分钟
Production AI monitoring and performance frameworks•10分钟
2个作业•总计30分钟
Making deployment decisions from MLOps signals•15分钟
Reading AI performance for business decisions•15分钟
Production monitoring and retraining decisions
第 10 单元•小时 后完成
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This module builds your ability to monitor production AI systems and make retraining decisions based on drift and degradation signals. You'll learn how AI systems degrade over time, what monitoring signals indicate emerging problems, and how to decide when investigation, retraining, or continued observation is appropriate. By the end of this module, you'll be able to interpret alerts and dashboard trends, distinguish between noise and meaningful signals, and guide teams through retraining decisions that balance responsiveness with restraint.
涵盖的内容
3个视频1篇阅读材料1个作业
显示有关单元内容的信息
3个视频•总计15分钟
Early warning signs in production AI systems•4分钟
Using Azure Monitor to decide when to act•5分钟
Setting up monitoring and security for production AI systems•7分钟
1篇阅读材料•总计10分钟
How teams monitor, alert, and decide on model retraining•10分钟
1个作业•总计15分钟
Production monitoring and retraining decisions•15分钟
Enterprise integration and access governance
第 11 单元•小时 后完成
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This module develops your ability to oversee enterprise integrations for AI systems and ensure they operate securely within organizational boundaries. You'll learn how Copilots and agents connect to enterprise platforms like Microsoft Graph, SharePoint, and Teams, how to evaluate API permission requirements and apply least-privilege principles, and how to audit access over time to identify and remediate overly broad permissions. By the end of this module, you'll be able to assess integration proposals, guide access governance decisions, and coordinate with security teams to maintain secure AI operations.
涵盖的内容
2个视频1篇阅读材料1个作业
显示有关单元内容的信息
2个视频•总计10分钟
Enterprise integration and access decisions in production AI•5分钟
Auditing and managing enterprise integration access•5分钟
1篇阅读材料•总计10分钟
Enterprise integration security and access governance•10分钟
1个作业•总计30分钟
Managing AI performance after deployment•30分钟
End-to-end AI system delivery project
第 12 单元•小时 后完成
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This module gives you the opportunity to demonstrate your ability to plan and justify end-to-end AI system delivery in an enterprise environment. You will develop a complete AI system delivery plan that brings together conceptual architecture, operational oversight, governance, and business integration for an AI-enabled decision support system. In your project, you’ll show how data, AI capabilities, workflows, monitoring signals, accountability, and stakeholder communication connect to support reliable business decision-making. By the end of this module, you’ll have produced a structured, business-facing delivery plan that demonstrates system-level reasoning, clear trade-off analysis, and responsible AI project leadership.
涵盖的内容
3个视频1篇阅读材料1个作业
显示有关单元内容的信息
3个视频•总计14分钟
Designing AI systems that actually work in production•3分钟
What you are building and how it will be evaluated•4分钟
A practical framework for building an AI system from data to deployment•7分钟
1篇阅读材料•总计10分钟
AI system delivery project guide and evaluation criteria •10分钟
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.
This program is designed for project managers, program managers, and business or technology professionals responsible for coordinating AI initiatives. It is ideal for those working within or alongside technical teams in the Microsoft Azure AI ecosystem who want to strengthen their ability to manage AI delivery from strategy through production.
What background knowledge is necessary?
Learners should have prior experience leading projects or cross-functional initiatives. Familiarity with project management principles and basic AI/ML terminology such as models, training, and inference will support success in this Intermediate-level program.
Do I need coding or technical AI experience to take this program?
No coding experience is required. This program focuses on managing AI initiatives rather than building models. You will learn how to coordinate data scientists, engineers, and stakeholders, oversee AI workflows, and support responsible AI governance within Azure environments.
What tools and technologies will I work with?
You will explore AI delivery within the Microsoft Azure AI ecosystem, including Microsoft Foundry, Azure OpenAI Service, and Azure Machine Learning. The program emphasizes understanding capabilities, constraints, and use-case alignment at a manager level.
What roles does this certificate support?
This certificate strengthens readiness for AI Project Manager, AI Program Manager, and technology delivery roles involving AI oversight. It builds the structured coordination and governance skills required to manage AI initiatives in enterprise environments.
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.