Introduction
  • Introduction
  • What is Artificial Intelligence (AI)?
  • Machine Learning (ML), and how does it differ from AI?
  • Revolutionizing Industries Worldwide
  • Significance of AWS in AI and ML
Understanding AI and ML Concepts
  • Different types of ML models
  • Choose the right ML model
  • Neural network
  • Multi-modal models and diffusion models
  • Foundation model lifecycle
AWS AI/ML Services
  • Amazon SageMaker
  • Amazon Comprehend
  • Amazon Polly
  • AWS Lex
  • Amazon Bedrock
  • Amazon Q
Preparing Data for Machine Learning
  • Steps involved in preparing data for ML
  • Importance of data quality in ML models
  • Amazon SageMaker Data Wrangler help in data preparation
  • Factors to consider in data selection for foundation models
Model Training and Evaluation
  • Steps in training an ML model
  • Evaluate the performance of an ML model
  • Overfitting
  • How do inference parameters affect model responses?
  • What methods are used for fine-tuning foundation models?
Deployment and Monitoring of ML Models
  • Key considerations when deploying an ML model
  • Monitor the performance of a deployed ML model
  • Features of Amazon SageMaker Model Monitor
  • Retrieval Augmented Generation (RAG)
Security and Compliance in AI/ML
  • What are the security best practices for AI/ML on AWS?
  • AWS ensure compliance in AI/ML deployments
  • Legal risks of working with generative AI
  • Secure data engineering in AI workflows
Responsible AI
  • Features of responsible AI
  • Detect and monitor bias in AI models
  • Why are transparent and explainable models important in AI?
Tips
  • Some tips for effective exam preparation