AI+ Cloud™

Wishlist Share
Share Course
Page Link
Share On Social Media

About Course

Executive Summary

The AI+ Cloud™ program equips developers and IT professionals to integrate AI with cloud computing efficiently.

  • Master AI concepts, machine learning, and cloud infrastructure.

  • Gain hands-on experience with AWS, Azure, and Google Cloud services.

  • Learn to deploy AI models, optimize performance, and integrate with cloud-based applications.

  • Complete a capstone project to apply AI+Cloud skills in real-world scenarios.


Learning Outcomes

Upon completion, participants will be able to:

  • Understand AI fundamentals and cloud computing principles.

  • Develop machine learning models using Python and popular libraries (NumPy, Pandas, Scikit-learn).

  • Utilize cloud platforms (AWS, Azure, GCP) to deploy AI solutions.

  • Optimize AI models and evaluate performance with relevant metrics.

  • Integrate AI services into cloud-based applications using APIs and microservices.

  • Apply best practices for scalability, security, and ethical AI in the cloud.

  • Explore emerging trends: Edge AI, AutoML, Federated Learning, Serverless AI, and Quantum Computing.


Course Modules

Module 1 – AI & Cloud Fundamentals

  • Introduction to AI: concepts, applications, and methodologies

  • Overview of Cloud Computing: service models (IaaS, PaaS, SaaS), deployment models (public, private, hybrid)

  • Benefits & challenges of AI-Cloud integration

Module 2 – Introduction to Artificial Intelligence

  • Core AI concepts and components (ML, NLP, Computer Vision)

  • Machine Learning fundamentals: Supervised, Unsupervised, Reinforcement Learning

  • Python programming for AI: basics and libraries

  • Hands-on: Implement basic AI tasks

Module 3 – Cloud Computing Fundamentals

  • Cloud service and deployment models

  • Major cloud providers: AWS, Azure, Google Cloud

  • Hands-on: Create virtual machines, deploy web services

Module 4 – AI Services in the Cloud

  • Cloud-based AI services (AWS AI, Azure Cognitive Services, GCP AI)

  • Pre-built ML models and tools for AI development

  • Hands-on: Integrate AI services into cloud applications

Module 5 – AI Model Development in the Cloud

  • Build, train, and optimize ML models

  • Hyperparameter tuning and evaluation metrics

  • AutoML for automated model development

  • Collaborative development using GitHub/GitLab

  • Hands-on: Build and train ML models

Module 6 – Cloud Infrastructure for AI

  • Infrastructure as Code (IaC) using Terraform

  • Scalability and performance: GPU/TPU utilization, auto-scaling

  • Data storage, management, security, and compliance

Module 7 – Deployment and Integration

  • Deploy AI models with popular patterns (blue-green, canary)

  • Integration with cloud applications and microservices

  • API design and testing for AI services

Module 8 – Future Trends in AI+Cloud

  • Explainable AI (XAI), Federated Learning, AI for Good

  • Edge AI, Serverless AI, AutoML, Responsible AI

  • Quantum computing and AI opportunities

Module 9 – Hands-on Real-world Projects

  • Diabetes prediction using ML

  • Build & deploy image classification apps with GCP AutoML, TensorFlow.js, and Flask

  • Deploy custom ML models on GCP using REST API, model version monitoring

Show More

Student Ratings & Reviews

No Review Yet
No Review Yet