
Cloud Platforms for GenAI (Azure, AWS, Google Cloud)
Deploy scalable Generative AI solutions using cloud-native services.
Pillar
Technology – Platforms, Tools, Infrastructure & Productivity
Overview
This course provides an in-depth understanding of how to leverage major cloud platforms—Microsoft Azure, Amazon Web Services (AWS), and Google Cloud—to build, deploy, and scale Generative AI applications. Participants will explore cloud-native AI tools, services, and best practices for efficient, secure, and cost-effective GenAI implementations.
Learning Objectives
Participants will be able to:
-
Understand the AI and GenAI services offered by Azure, AWS, and Google Cloud
-
Architect scalable GenAI solutions using cloud infrastructure
-
Deploy and manage GenAI workloads leveraging serverless and containerized environments
-
Implement security, compliance, and cost optimization strategies for AI deployments
-
Monitor and optimize GenAI applications for performance and reliability
Target Audience
-
Cloud architects and engineers
-
AI/ML developers and data scientists
-
IT managers and technical leads
-
DevOps and MLOps professionals
Duration
20 hours over 4 days (5 hours per day)
Delivery Format
-
Interactive lectures and platform demos
-
Hands-on labs deploying GenAI models on cloud services
-
Case studies and architecture workshops
-
Group discussions on cloud AI governance and compliance
Materials Provided
-
Cloud platform AI service guides and setup instructions
-
Sample deployment templates and code snippets
-
Access to sandbox environments for practical exercises
-
Course slides and reference documentation
Outcomes
-
Design and deploy scalable GenAI applications on Azure, AWS, and Google Cloud
-
Leverage cloud AI tools and frameworks efficiently
-
Manage security, compliance, and cost in cloud GenAI projects
-
Maintain and monitor AI workloads for optimal business value
Outline / Content
Day 1: Overview of Cloud AI Platforms
-
Introduction to Azure AI, AWS AI & ML, and Google Cloud AI services
-
Key differences and selecting the right platform for your needs
-
Cloud concepts: Compute, storage, and networking for AI
Day 2: Deploying GenAI Models on Cloud
-
Using Azure AI Studio, AWS Bedrock, and Google Vertex AI
-
Containerization and serverless AI deployments
-
API integration and scaling GenAI workloads
Day 3: Security, Compliance, and Cost Management
-
Identity and access management for AI services
-
Data privacy, encryption, and compliance frameworks
-
Cost optimization strategies and monitoring
Day 4: Monitoring, Optimization, and Case Studies
-
Performance monitoring and logging GenAI workloads
-
Troubleshooting and auto-scaling best practices
-
Real-world use cases and architecture design workshop
