Lorsque vous vous inscrivez à ce cours, vous êtes également inscrit(e) à cette Spécialisation.
Apprenez de nouveaux concepts auprès d'experts du secteur
Acquérez une compréhension de base d'un sujet ou d'un outil
Développez des compétences professionnelles avec des projets pratiques
Obtenez un certificat professionnel partageable
Il y a 4 modules dans ce cours
"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 — 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 — Vertex AI, BigQuery ML, and Cloud Functions — 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.
Inclus
12 vidéos4 lectures5 devoirs
Afficher les informations sur le contenu du module
12 vidéos•Total 78 minutes
Cloud ML Engineer Roles and Pathways•8 minutes
Industry Trends in Cloud ML•6 minutes
Skills and Certifications•9 minutes
Overview of AWS AI/ML Services•6 minutes
SageMaker Capabilities•5 minutes
Serverless ML with AWS Lambda•5 minutes
Deploying Models as Endpoints•7 minutes
Autoscaling for Inference•8 minutes
Testing and Monitoring Endpoints•5 minutes
ETL Concepts in AWS•5 minutes
Using AWS Glue for Data Preparation•4 minutes
Automating Dataset Updates•10 minutes
4 lectures•Total 60 minutes
Reading - Career Scope in Cloud ML Engineering (AWS Focus)•15 minutes
Reading - Introduction to AWS ML Stack•15 minutes
Reading - Model Deployment on SageMaker•15 minutes
Reading - Data Pipelines with S3 and Glue•15 minutes
5 devoirs•Total 180 minutes
Practice Quiz : Career Scope in Cloud ML Engineering (AWS Focus)•30 minutes
Practice Quiz : Introduction to AWS ML Stack•30 minutes
Practice Quiz : Model Deployment on SageMaker•30 minutes
Practice Quiz : Data Pipelines with S3 and Glue•30 minutes
AWS ML Services•60 minutes
Azure ML Services
Module 2•4 heures à terminer
Détails du module
This module introduces Azure’s ML platform, highlighting low-code solutions, serverless deployment, and integration with pre-built AI capabilities.
Inclus
9 vidéos3 lectures4 devoirs
Afficher les informations sur le contenu du module
9 vidéos•Total 61 minutes
Navigating Azure ML Studio•7 minutes
Dataset Management•7 minutes
Training Models in Studio•6 minutes
Introduction to Serverless ML•7 minutes
Creating Azure Functions for Inference•8 minutes
Monitoring and Scaling•8 minutes
Overview of Cognitive Services•5 minutes
Using NLP and Vision APIs•6 minutes
Combining Cognitive and Custom Models•7 minutes
3 lectures•Total 45 minutes
Reading - Azure ML Studio Overview•15 minutes
Reading - Deploying with Azure Functions•15 minutes
Reading - Cost and Scalability Analysis•15 minutes
Reading - Build vs. Buy Decisions•15 minutes
4 devoirs•Total 150 minutes
Practice Quiz : Platform Comparison Framework•30 minutes
Practice Quiz : Cost and Scalability Analysis•30 minutes
Practice Quiz : Build vs. Buy Decisions•30 minutes
Graded Quiz : Comparing and Choosing Platforms•60 minutes
Obtenez un certificat professionnel
Ajoutez ce titre à votre profil LinkedIn, à votre curriculum vitae ou à votre CV. Partagez-le sur les médias sociaux et dans votre évaluation des performances.
Board Infinity is a full-stack career platform, founded in 2017 that bridges the gap between career aspirants and industry experts. Our platform fosters professional growth, delivering personalized learning experiences, expert career coaching, and diverse opportunities to help individuals fulfill their career dreams. Board Infinity has successfully facilitated over 20,000 career transitions, marking a significant impact in the career development landscape.
Pour quelles raisons les étudiants sur Coursera nous choisissent-ils pour leur carrière ?
Felipe M.
Étudiant(e) depuis 2018
’Pouvoir suivre des cours à mon rythme à été une expérience extraordinaire. Je peux apprendre chaque fois que mon emploi du temps me le permet et en fonction de mon humeur.’
Jennifer J.
Étudiant(e) depuis 2020
’J'ai directement appliqué les concepts et les compétences que j'ai appris de mes cours à un nouveau projet passionnant au travail.’
Larry W.
Étudiant(e) depuis 2021
’Lorsque j'ai besoin de cours sur des sujets que mon université ne propose pas, Coursera est l'un des meilleurs endroits où se rendre.’
Chaitanya A.
’Apprendre, ce n'est pas seulement s'améliorer dans son travail : c'est bien plus que cela. Coursera me permet d'apprendre sans limites.’
Do I need prior cloud experience to take this course?
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.
Which cloud platforms are covered in this course?
The course covers AWS (SageMaker, Lambda, S3, Glue), Microsoft Azure (ML Studio, Functions, Cognitive Services), and Google Cloud (Vertex AI, BigQuery ML, Cloud Functions).
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 Specialization?
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.
Is financial aid available?
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.