This course provides hands-on experience with Microsoft Azure's AI and ML services. You will learn to set up, manage, and troubleshoot Azure-based AI & ML workflows. The course covers the entire ML lifecycle in Azure, from data preparation to model deployment and monitoring.

Microsoft Azure for AI and Machine Learning
本课程是 Microsoft AI & ML Engineering 专业证书 的一部分

位教师: Microsoft
5,921 人已注册
包含在 中
25 条评论
推荐体验
推荐体验
中级
You should have completed the first three courses in the program, or have equivalent experience with the concepts taught in those courses.
25 条评论
推荐体验
推荐体验
中级
You should have completed the first three courses in the program, or have equivalent experience with the concepts taught in those courses.
您将获得的技能
要了解的详细信息
了解顶级公司的员工如何掌握热门技能

积累 Software Development 领域的专业知识
- 向行业专家学习新概念
- 获得对主题或工具的基础理解
- 通过实践项目培养工作相关技能
- 通过 Microsoft 获得可共享的职业证书

该课程共有5个模块
This module provides a comprehensive guide to setting up and managing Azure resources specifically tailored for AI and ML projects. As organizations increasingly leverage Azure's cloud infrastructure to build and deploy AI/ML solutions, understanding how to configure and manage these resources efficiently becomes critical. This module equips you with the skills to configure Azure resources, set up Azure Machine Learning workspaces, implement data storage solutions, and establish secure access controls. The module includes a blend of theoretical knowledge and practical exercises, featuring hands-on labs and real-world scenarios to reinforce learning objectives. You'll have the opportunity to apply your skills in a controlled environment, ensuring you gain practical experience in configuring and managing Azure resources for AI/ML projects.
涵盖的内容
9个视频13篇阅读材料7个作业
9个视频• 总计53分钟
- Introduction to the AI/ML engineering advanced professional certificate program• 4分钟
- Introduction to Microsoft Azure for AI and Machine Learning• 4分钟
- Walkthrough: Creating your code repository Part 1 (Optional)• 5分钟
- Walkthrough: Creating your code repository Part 2 (Optional)• 8分钟
- Walkthrough: Configuring resources (Optional)• 8分钟
- Setting up Azure Machine Learning workspaces• 4分钟
- Walkthrough: Implementing the best practices for workspace setup (Optional)• 11分钟
- Introduction to data storage solutions• 4分钟
- Walkthrough: Implementing data storage solutions (Optional)• 6分钟
13篇阅读材料• 总计239分钟
- Welcome to the Coursera Community• 2分钟
- Microsoft updates• 2分钟
- Practice activity: Setting up your environment in Microsoft Azure• 30分钟
- Walkthrough: Setting up your environment in Microsoft Azure (Optional)• 0分钟
- Practice activity: Creating your code repository• 60分钟
- Course syllabus: Microsoft Azure for AI and Machine Learning• 10分钟
- Step-by-step guide to configuring resources for AI/ML projects• 5分钟
- Practice activity: Configuring resources• 30分钟
- Explanation of workspace setup• 10分钟
- Practice activity: Implementing the best practices for workspace setup• 45分钟
- Explanation of storage solutions• 10分钟
- Practice activity: Implementing data storage solutions• 30分钟
- Summary: Setting up an AI/ML Azure environment• 5分钟
7个作业• 总计38分钟
- Graded quiz: Setting up an AI/ML Azure environment• 20分钟
- Reflection: Setting up your environment in Microsoft Azure• 3分钟
- Reflection: Creating your code repository• 3分钟
- Reflection: Configuring resources• 3分钟
- Reflection: Implementing the best practices for workspace setup• 3分钟
- Reflection: Implementing data storage solutions• 3分钟
- Knowledge check: Implementing data storage solutions• 3分钟
This module delves into the intricacies of building and managing comprehensive data workflows and ML processes on Azure. The module covers the end-to-end process of ingesting data, preprocessing it, training ML models, and overseeing the training life cycle. Learners will gain hands-on experience with Azure services that streamline and enhance data and ML operations, ensuring effective management and monitoring of ML projects. You will engage in hands-on exercises to apply your knowledge in building and managing data ingestion pipelines, preprocessing data, training ML models, and monitoring ML processes. Through interactive sessions and guided practices, you'll develop the skills necessary to effectively manage end-to-end data and ML workflows in Azure.
涵盖的内容
8个视频7篇阅读材料6个作业
8个视频• 总计47分钟
- Data preparation and model training in Azure• 4分钟
- Walkthrough: Creating an ingestion pipeline (Optional)• 6分钟
- Data preprocessing• 5分钟
- Walkthrough: Implementing preprocessing techniques (Optional)• 7分钟
- Model training• 6分钟
- How to train models using Azure Machine Learning• 8分钟
- Monitoring and logging training processes• 5分钟
- Walkthrough: Implementing logging in ML systems (Optional)• 6分钟
7篇阅读材料• 总计135分钟
- Guide to creating ingestion pipelines• 5分钟
- Practice activity: Creating an ingestion pipeline• 30分钟
- Explanation of preprocessing techniques• 10分钟
- Practice activity: Implementing preprocessing techniques• 45分钟
- Explanation of monitoring and logging• 10分钟
- Practice activity: Logging• 30分钟
- Summary: Data preparation and model training in Azure• 5分钟
6个作业• 总计35分钟
- Graded quiz: Data preparation and model training in Azure• 20分钟
- Reflection: Creating an ingestion pipeline• 3分钟
- Knowledge check: Creating an ingestion pipeline• 3分钟
- Reflection: Implementing preprocessing techniques• 3分钟
- Knowledge check: Model training• 3分钟
- Reflection: Logging• 3分钟
This module focuses on the critical aspects of deploying, managing, and monitoring ML models within Azure production environments. This module provides a detailed exploration of best practices for model deployment, continuous integration and delivery (CI/CD), version control, and performance monitoring. You will learn to streamline the model life cycle from deployment to ongoing management, ensuring robust and reliable ML operations. Through interactive learning and guided practice, you will acquire the skills needed to effectively manage the life cycle of ML models in Azure production environments.
涵盖的内容
7个视频10篇阅读材料7个作业
7个视频• 总计53分钟
- Model deployment• 5分钟
- Walkthrough: Deploying trained models (Optional)• 9分钟
- Walkthrough: Using AKS (Optional)• 9分钟
- Walkthrough: Authenticating to Azure Machine Learning (Optional)• 10分钟
- Implementing CI/CD pipelines• 6分钟
- Continuing deployment best practices• 5分钟
- Walkthrough: Monitoring deployed models (Optional)• 8分钟
10篇阅读材料• 总计78分钟
- Model deployment industry standards• 10分钟
- Practice activity: Deploying trained models (Optional)• 0分钟
- Practice activity: Using AKS (Optional)• 0分钟
- Practice activity: Authenticating to Azure Machine Learning• 3分钟
- Explanation of CI/CD pipelines• 10分钟
- How to implement CI/CD pipelines • 0分钟
- Introduction and explanation of model management• 10分钟
- Explanation of monitoring techniques• 10分钟
- Practice activity: Monitoring deployed models• 30分钟
- Summary: Model deployment and management in Azure• 5分钟
7个作业• 总计46分钟
- Graded quiz: Model deployment and management in Azure• 20分钟
- Reflection: Deploying trained models (Optional)• 1分钟
- Reflection: Using AKS (Optional)• 1分钟
- Reflection: Authenticating to Azure Machine Learning• 3分钟
- Knowledge check: Implementing CI/CD pipelines• 15分钟
- Knowledge check: Monitoring deployed models• 3分钟
- Reflection: Monitoring deployed models• 3分钟
This module focuses on the essential skills needed to troubleshoot, diagnose, and optimize AI and ML pipelines in Azure. The module covers the identification and resolution of common issues in Azure AI/ML workflows, systematic troubleshooting methods, effective use of diagnostic tools, and the implementation of automated alerts and remediation strategies. You will learn how to maintain the smooth operation and performance of AI/ML pipelines, ensuring reliable and efficient deployments. Through interactive sessions and guided practices, you'll develop the skills necessary to effectively troubleshoot and optimize your Azure AI/ML environments.
涵盖的内容
10个视频9篇阅读材料7个作业
10个视频• 总计66分钟
- Common issues and troubleshooting guide• 6分钟
- Walkthrough: Designing an intelligent troubleshooting agent (Optional)• 10分钟
- Walkthrough: Troubleshooting a sample pipeline (Optional)• 10分钟
- Walkthrough: Using diagnostic and monitoring tools (Optional)• 7分钟
- Implementing automated alerts and remediation• 5分钟
- Walkthrough: Implementing automated alerts and remediation (Optional)• 7分钟
- Using additional Azure automation tools, Part 1• 6分钟
- Using additional Azure automation tools, Part 2• 4分钟
- Summary: Troubleshooting Azure AI/ML workflows• 8分钟
- Hear from an expert: Real-world applications of high-stakes use cases• 4分钟
9篇阅读材料• 总计215分钟
- Explanation of common issues in model deployment• 10分钟
- Guide to troubleshooting approaches in model deployment• 5分钟
- Practice activity: Designing an intelligent troubleshooting agent• 85分钟
- Practice activity: Troubleshooting a sample pipeline• 30分钟
- Explanation of diagnostic tools in machine learning pipelines• 10分钟
- Practice activity: Using diagnostic and monitoring tools• 30分钟
- Explanation of automation tools in machine learning pipelines• 10分钟
- Practice activity: Implementing automated alerts and remediation• 30分钟
- Examples and best practices for troubleshooting workflows in Azure AI/ML• 5分钟
7个作业• 总计48分钟
- Graded quiz: Troubleshooting Azure AI/ML workflows• 30分钟
- Knowledge check: Troubleshooting techniques• 3分钟
- Reflection: Designing an intelligent troubleshooting agent• 3分钟
- Reflection: Troubleshooting a sample pipeline• 3分钟
- Reflection: Using diagnostic and monitoring tools• 3分钟
- Knowledge check: Diagnostic and monitoring tools• 3分钟
- Reflection: Implementing automated alerts and remediation• 3分钟
This module provides a deep dive into practical strategies for addressing Azure issues, securing environments, and preparing for future software integrations. The module focuses on examining real-world use cases, understanding the ramifications of unsecured environments, and leveraging Azure documentation for continued learning. You will engage in ideation and discussion to anticipate potential issues and develop solutions for future integrations. Through collaborative learning and practical application, you'll develop a comprehensive approach to managing and securing Azure environments effectively.
涵盖的内容
6个视频8篇阅读材料4个作业
6个视频• 总计27分钟
- Unsecured environments and ramifications• 6分钟
- Ideating potential issues and solutions• 4分钟
- Hear from an expert: Applying AI responsibly• 4分钟
- Summary: Toward system integration• 6分钟
- Course summary• 4分钟
- Congratulations on completing the course!• 4分钟
8篇阅读材料• 总计62分钟
- Real-world Azure deployment issues and remediations• 5分钟
- Real-world example library• 5分钟
- Discussion: Remediation strategies• 20分钟
- Explanation of unsecured environments• 10分钟
- Data security breach examples• 5分钟
- Discussion: Ideating potential issues• 2分钟
- Explanation of solutions• 5分钟
- Interactive resource guide: Tools and platforms for further learning• 10分钟
4个作业• 总计170分钟
- Graded quiz: Toward system integration• 20分钟
- Peer-reviewed assignment: Drafting the technical report (AI graded)• 90分钟
- Practice activity: Analyzing a case study (essay assignment with AI feedback)• 30分钟
- Practice activity: Ideating potential issues• 30分钟
获得职业证书
将此证书添加到您的 LinkedIn 个人资料、简历或履历中。在社交媒体和绩效考核中分享。
位教师
授课教师评分
我们要求所有学生根据授课教师的教学风格和质量提供对授课教师的反馈。

提供方

提供方

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.
从 Software Development 浏览更多内容
LLearnQuest
课程
MMicrosoft
课程
人们为什么选择 Coursera 来帮助自己实现职业发展

Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
常见问题
To be successful in this course, you should have intermediate programming knowledge of Python, plus experience with AI & ML infrastructure, core AI & ML algorithms and techniques, and the design and implementation of intelligent troubleshooting agents. Familiarity with statistics is also recommended.
You will need a license to Microsoft Azure (or a free trial version) and appropriate hardware. Note: the free trial version of Azure is time limited and may expire before completion of the program.
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.
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.
更多问题
提供助学金,
¹ 本课程的部分作业采用 AI 评分。对于这些作业,将根据 Coursera 隐私声明使用您的数据。




