VOOZH about

URL: https://www.coursera.org/learn/cloud-platforms-for-ml-aws-azure-and-gcp-deployment

⇱ Cloud Platforms for ML: AWS, Azure & GCP Deployment | Coursera


Cloud Platforms for ML: AWS, Azure & GCP Deployment

Keep adding new skills with 10,000+ programs for $239 (usually $399). Save now.

Cloud Platforms for ML: AWS, Azure & GCP Deployment

Included with

β€’

Learn more

Ask Coursera

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Deploy ML models using AWS SageMaker endpoints, Azure Functions, and Google Cloud Vertex AI

  • Build automated data pipelines with AWS S3, Glue, and BigQuery ML for cloud-scale ML

  • Integrate Azure Cognitive Services APIs and serverless inference into production ML workflows

Details to know

Shareable certificate

Add to your LinkedIn profile

Recently updated!

May 2026

Assessments

17 assignments

Taught in English

Build your subject-matter expertise

This course is part of the Machine Learning Operations (MLOps) Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
  • Learn new concepts from industry experts
  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 4 modules in this course

"Cloud ML Platforms: AWS, Azure, and GCP for ML Engineers is designed for aspiring cloud ML engineers, data scientists, and developers looking to master enterprise ML deployment across the top three cloud providers. You'll learn to deploy, scale, and integrate machine learning models using SageMaker, Azure ML Studio, Vertex AI, BigQuery ML, and serverless functions β€” while building skills to evaluate and choose the right cloud platform for any business need.

The first module dives into the AWS ML ecosystem, where you'll explore SageMaker, Lambda, S3, and Glue to build end-to-end data pipelines and deploy models as scalable endpoints. The second module introduces Azure ML Studio, Azure Functions, and Cognitive Services, enabling low-code workflows, serverless inference, and integration with pre-built NLP and Vision APIs. The third module covers Google Cloud's ML stack β€” Vertex AI, BigQuery ML, and Cloud Functions β€” giving you hands-on exposure to unified workflows, SQL-based modeling, and event-driven deployment. The final module equips you with evaluation frameworks to compare AWS, Azure, and GCP on cost, scalability, and integration, helping you make confident build-vs-buy and platform selection decisions. By the end of this course, you will: - Deploy ML models across AWS SageMaker, Azure ML, and Vertex AI using managed services - Build serverless inference workflows with Lambda, Azure Functions, and Cloud Functions - Evaluate cost, scalability, and vendor lock-in trade-offs across major cloud ML platforms - Recommend the right cloud ML platform aligned with enterprise business goals"

Learners explore AWS’s ML ecosystem, focusing on end-to-end workflows using SageMaker for training and deployment, and S3/Glue for data management.

What's included

12 videos4 readings5 assignments

12 videosβ€’Total 78 minutes
  • Cloud ML Engineer Roles and Pathwaysβ€’8 minutes
  • Industry Trends in Cloud MLβ€’6 minutes
  • Skills and Certificationsβ€’9 minutes
  • Overview of AWS AI/ML Servicesβ€’6 minutes
  • SageMaker Capabilitiesβ€’5 minutes
  • Serverless ML with AWS Lambdaβ€’5 minutes
  • Deploying Models as Endpointsβ€’7 minutes
  • Autoscaling for Inferenceβ€’8 minutes
  • Testing and Monitoring Endpointsβ€’5 minutes
  • ETL Concepts in AWSβ€’5 minutes
  • Using AWS Glue for Data Preparationβ€’4 minutes
  • Automating Dataset Updatesβ€’10 minutes
4 readingsβ€’Total 60 minutes
  • Reading - Career Scope in Cloud ML Engineering (AWS Focus)β€’15 minutes
  • Reading - Introduction to AWS ML Stackβ€’15 minutes
  • Reading - Model Deployment on SageMakerβ€’15 minutes
  • Reading - Data Pipelines with S3 and Glueβ€’15 minutes
5 assignmentsβ€’Total 180 minutes
  • AWS ML Servicesβ€’60 minutes
  • Practice Quiz : Career Scope in Cloud ML Engineering (AWS Focus)β€’30 minutes
  • Practice Quiz : Introduction to AWS ML Stackβ€’30 minutes
  • Practice Quiz : Model Deployment on SageMakerβ€’30 minutes
  • Practice Quiz : Data Pipelines with S3 and Glueβ€’30 minutes

This module introduces Azure’s ML platform, highlighting low-code solutions, serverless deployment, and integration with pre-built AI capabilities.

What's included

9 videos3 readings4 assignments

9 videosβ€’Total 61 minutes
  • Navigating Azure ML Studioβ€’7 minutes
  • Dataset Managementβ€’7 minutes
  • Training Models in Studioβ€’6 minutes
  • Introduction to Serverless MLβ€’7 minutes
  • Creating Azure Functions for Inferenceβ€’8 minutes
  • Monitoring and Scalingβ€’8 minutes
  • Overview of Cognitive Servicesβ€’5 minutes
  • Using NLP and Vision APIsβ€’6 minutes
  • Combining Cognitive and Custom Modelsβ€’7 minutes
3 readingsβ€’Total 45 minutes
  • Reading - Azure ML Studio Overviewβ€’15 minutes
  • Reading - Deploying with Azure Functionsβ€’15 minutes
  • Reading - Cognitive Services Integrationβ€’15 minutes
4 assignmentsβ€’Total 150 minutes
  • Graded Quiz : Azure ML Servicesβ€’60 minutes
  • Practice Quiz : Azure ML Studio Overviewβ€’30 minutes
  • Practice Quiz : Deploying with Azure Functionsβ€’30 minutes
  • Practice Quiz : Cognitive Services Integrationβ€’30 minutes

Learners dive into Google Cloud’s ML ecosystem, focusing on practical use of Vertex AI, BigQuery ML, and lightweight deployment options.

What's included

9 videos3 readings4 assignments

9 videosβ€’Total 63 minutes
  • Introduction to Vertex AIβ€’6 minutes
  • Training and Deployment Workflowsβ€’7 minutes
  • Monitoring and Metadataβ€’8 minutes
  • Building Models with SQLβ€’6 minutes
  • Evaluating Model Performanceβ€’7 minutes
  • Integrating with BI Toolsβ€’8 minutes
  • Event-Driven ML Inferenceβ€’6 minutes
  • Deploying Lightweight Modelsβ€’7 minutes
  • Testing and Monitoring Functionsβ€’7 minutes
3 readingsβ€’Total 45 minutes
  • Reading - Vertex AI Overviewβ€’15 minutes
  • Reading - BigQuery ML for Data-Centric Teamsβ€’15 minutes
  • Reading - Cloud Functions for ML Servingβ€’15 minutes
4 assignmentsβ€’Total 150 minutes
  • Graded Quiz : Google Cloud ML Servicesβ€’60 minutes
  • Practice Quiz : Vertex AI Overviewβ€’30 minutes
  • Practice Quiz : BigQuery ML for Data-Centric Teamsβ€’30 minutes
  • Practice Quiz : Cloud Functions for ML Servingβ€’30 minutes

Learners synthesize insights from all three cloud platforms and build evaluation frameworks for platform selection, integration, and cost management.

What's included

9 videos3 readings4 assignments

9 videosβ€’Total 54 minutes
  • Defining Evaluation Criteriaβ€’7 minutes
  • Analyzing Feature Parityβ€’6 minutes
  • Integration and Vendor Lock-Inβ€’6 minutes
  • Understanding Pricing Modelsβ€’6 minutes
  • Scaling for Inference Loadsβ€’6 minutes
  • Cost Simulation Toolsβ€’6 minutes
  • Managed vs. Custom ML Servicesβ€’5 minutes
  • Integration Scenariosβ€’6 minutes
  • Presenting Platform Recommendationsβ€’7 minutes
3 readingsβ€’Total 45 minutes
  • Reading - Platform Comparison Frameworkβ€’15 minutes
  • Reading - Cost and Scalability Analysisβ€’15 minutes
  • Reading - Build vs. Buy Decisionsβ€’15 minutes
4 assignmentsβ€’Total 150 minutes
  • Graded Quiz : Comparing and Choosing Platformsβ€’60 minutes
  • Practice Quiz : Platform Comparison Frameworkβ€’30 minutes
  • Practice Quiz : Cost and Scalability Analysisβ€’30 minutes
  • Practice Quiz : Build vs. Buy Decisionsβ€’30 minutes

Earn a career certificate

Add this credential to your LinkedIn profile, resume, or CV. Share it on social media and in your performance review.

Instructor

Board Infinity
261 Coursesβ€’428,749 learners

Why people choose Coursera for their career

πŸ‘ Image

Felipe M.

Learner since 2018
"To be able to take courses at my own pace and rhythm has been an amazing experience. I can learn whenever it fits my schedule and mood."
πŸ‘ Image

Jennifer J.

Learner since 2020
"I directly applied the concepts and skills I learned from my courses to an exciting new project at work."
πŸ‘ Image

Larry W.

Learner since 2021
"When I need courses on topics that my university doesn't offer, Coursera is one of the best places to go."
πŸ‘ Image

Chaitanya A.

"Learning isn't just about being better at your job: it's so much more than that. Coursera allows me to learn without limits."

Frequently asked questions

No deep cloud experience is required, but basic familiarity with any cloud platform and ML concepts will help you get the most out of the hands-on activities.

The course covers AWS (SageMaker, Lambda, S3, Glue), Microsoft Azure (ML Studio, Functions, Cognitive Services), and Google Cloud (Vertex AI, BigQuery ML, Cloud Functions).

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 Specialization, 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.

Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.

Financial aid available,