Description

Book Synopsis


Table of Contents

Introduction xvii

Assessment Test xxix

Answers to Assessment Test xxxv

Part I Introduction 1

Chapter 1 AWS AI ML Stack 3

Amazon Rekognition 4

Image and Video Operations 6

Amazon Textract 10

Sync and Async APIs 11

Amazon Transcribe 13

Transcribe Features 13

Transcribe Medical 14

Amazon Translate 15

Amazon Translate Features 16

Amazon Polly 17

Amazon Lex 19

Lex Concepts 19

Amazon Kendra 21

How Kendra Works 22

Amazon Personalize 23

Amazon Forecast 27

Forecasting Metrics 30

Amazon Comprehend 32

Amazon CodeGuru 33

Amazon Augmented AI 34

Amazon SageMaker 35

Analyzing and Preprocessing Data 36

Training 39

Model Inference 40

AWS Machine Learning Devices 42

Summary 43

Exam Essentials 43

Review Questions 44

Chapter 2 Supporting Services from the AWS Stack 49

Storage 50

Amazon S3 50

Amazon EFS 52

Amazon FSx for Lustre 52

Data Versioning 53

Amazon VPC 54

AWS Lambda 56

AWS Step Functions 59

AWS RoboMaker 60

Summary 62

Exam Essentials 62

Review Questions 63

Part II Phases of Machine Learning Workloads 67

Chapter 3 Business Understanding 69

Phases of ML Workloads 70

Business Problem Identification 71

Summary 72

Exam Essentials 73

Review Questions 74

Chapter 4 Framing a Machine Learning Problem 77

ML Problem Framing 78

Recommended Practices 80

Summary 81

Exam Essentials 81

Review Questions 82

Chapter 5 Data Collection 85

Basic Data Concepts 86

Data Repositories 88

Data Migration to AWS 89

Batch Data Collection 89

Streaming Data Collection 92

Summary 96

Exam Essentials 96

Review Questions 98

Chapter 6 Data Preparation 101

Data Preparation Tools 102

SageMaker Ground Truth 102

Amazon EMR 104

Amazon SageMaker Processing 105

AWS Glue 105

Amazon Athena 107

Redshift Spectrum 107

Summary 107

Exam Essentials 107

Review Questions 109

Chapter 7 Feature Engineering 113

Feature Engineering Concepts 114

Feature Engineering for Tabular Data 114

Feature Engineering for Unstructured and Time Series Data 119

Feature Engineering Tools on AWS 120

Summary 121

Exam Essentials 121

Review Questions 123

Chapter 8 Model Training 127

Common ML Algorithms 128

Supervised Machine Learning 129

Textual Data 138

Image Analysis 141

Unsupervised Machine Learning 142

Reinforcement Learning 146

Local Training and Testing 147

Remote Training 149

Distributed Training 150

Monitoring Training Jobs 154

Amazon CloudWatch 155

AWS CloudTrail 155

Amazon Event Bridge 158

Debugging Training Jobs 158

Hyperparameter Optimization 159

Summary 162

Exam Essentials 162

Review Questions 164

Chapter 9 Model Evaluation 167

Experiment Management 168

Metrics and Visualization 169

Metrics in AWS AI/ML Services 173

Summary 174

Exam Essentials 175

Review Questions 176

Chapter 10 Model Deployment and Inference 181

Deployment for AI Services 182

Deployment for Amazon SageMaker 184

SageMaker Hosting: Under the Hood 184

Advanced Deployment Topics 187

Autoscaling Endpoints 187

Deployment Strategies 188

Testing Strategies 190

Summary 191

Exam Essentials 191

Review Questions 192

Chapter 11 Application Integration 195

Integration with On-Premises

Systems 196

Integration with Cloud Systems 198

Integration with Front-End

Systems 200

Summary 200

Exam Essentials 201

Review Questions 202

Part III Machine Learning Well-Architected Lens 205

Chapter 12 Operational Excellence Pillar for ML 207

Operational Excellence on AWS 208

Everything as Code 209

Continuous Integration and Continuous Delivery 210

Continuous Monitoring 213

Continuous Improvement 214

Summary 215

Exam Essentials 215

Review Questions 217

Chapter 13 Security Pillar 221

Security and AWS 222

Data Protection 223

Isolation of Compute 224

Fine-Grained

Access Controls 225

Audit and Logging 226

Compliance Scope 227

Secure SageMaker Environments 228

Authentication and Authorization 228

Data Protection 231

Network Isolation 232

Logging and Monitoring 233

Compliance Scope 235

AI Services Security 235

Summary 236

Exam Essentials 236

Review Questions 238

Chapter 14 Reliability Pillar 241

Reliability on AWS 242

Change Management for ML 242

Failure Management for ML 245

Summary 246

Exam Essentials 246

Review Questions 247

Chapter 15 Performance Efficiency Pillar for ML 251

Performance Efficiency for ML on AWS 252

Selection 253

Review 254

Monitoring 255

Trade-offs

256

Summary 257

Exam Essentials 257

Review Questions 258

Chapter 16 Cost Optimization Pillar for ML 261

Common Design Principles 262

Cost Optimization for ML Workloads 263

Design Principles 263

Common Cost Optimization Strategies 264

Summary 266

Exam Essentials 266

Review Questions 267

Chapter 17 Recent Updates in the AWS AI/ML Stack 271

New Services and Features Related to AI Services 272

New Services 272

New Features of Existing Services 275

New Features Related to Amazon SageMaker 279

Amazon SageMaker Studio 279

Amazon SageMaker Data Wrangler 279

Amazon SageMaker Feature Store 280

Amazon SageMaker Clarify 281

Amazon SageMaker Autopilot 282

Amazon SageMaker JumpStart 283

Amazon SageMaker Debugger 283

Amazon SageMaker Distributed Training Libraries 284

Amazon SageMaker Pipelines and Projects 284

Amazon SageMaker Model Monitor 284

Amazon SageMaker Edge Manager 285

Amazon SageMaker Asynchronous Inference 285

Summary 285

Exam Essentials 285

Appendix Answers to the Review Questions 287

Chapter 1: AWS AI ML Stack 288

Chapter 2: Supporting Services from the AWS Stack 289

Chapter 3: Business Understanding 290

Chapter 4: Framing a Machine Learning Problem 291

Chapter 5: Data Collection 291

Chapter 6: Data Preparation 292

Chapter 7: Feature Engineering 293

Chapter 8: Model Training 294

Chapter 9: Model Evaluation 295

Chapter 10: Model Deployment and Inference 295

Chapter 11: Application Integration 296

Chapter 12: Operational Excellence Pillar for ML 297

Chapter 13: Security Pillar 298

Chapter 14: Reliability Pillar 298

Chapter 15: Performance Efficiency Pillar for ML 299

Chapter 16: Cost Optimization Pillar for ML 300

Index 303

AWS Certified Machine Learning Study Guide

Product form

£35.62

Includes FREE delivery

RRP £47.50 – you save £11.88 (25%)

Order before 4pm tomorrow for delivery by Thu 22 Jan 2026.

A Paperback / softback by Shreyas Subramanian, Stefan Natu

15 in stock


    View other formats and editions of AWS Certified Machine Learning Study Guide by Shreyas Subramanian

    Publisher: John Wiley & Sons Inc
    Publication Date: 07/02/2022
    ISBN13: 9781119821007, 978-1119821007
    ISBN10: 1119821002
    Also in:
    Machine learning

    Description

    Book Synopsis


    Table of Contents

    Introduction xvii

    Assessment Test xxix

    Answers to Assessment Test xxxv

    Part I Introduction 1

    Chapter 1 AWS AI ML Stack 3

    Amazon Rekognition 4

    Image and Video Operations 6

    Amazon Textract 10

    Sync and Async APIs 11

    Amazon Transcribe 13

    Transcribe Features 13

    Transcribe Medical 14

    Amazon Translate 15

    Amazon Translate Features 16

    Amazon Polly 17

    Amazon Lex 19

    Lex Concepts 19

    Amazon Kendra 21

    How Kendra Works 22

    Amazon Personalize 23

    Amazon Forecast 27

    Forecasting Metrics 30

    Amazon Comprehend 32

    Amazon CodeGuru 33

    Amazon Augmented AI 34

    Amazon SageMaker 35

    Analyzing and Preprocessing Data 36

    Training 39

    Model Inference 40

    AWS Machine Learning Devices 42

    Summary 43

    Exam Essentials 43

    Review Questions 44

    Chapter 2 Supporting Services from the AWS Stack 49

    Storage 50

    Amazon S3 50

    Amazon EFS 52

    Amazon FSx for Lustre 52

    Data Versioning 53

    Amazon VPC 54

    AWS Lambda 56

    AWS Step Functions 59

    AWS RoboMaker 60

    Summary 62

    Exam Essentials 62

    Review Questions 63

    Part II Phases of Machine Learning Workloads 67

    Chapter 3 Business Understanding 69

    Phases of ML Workloads 70

    Business Problem Identification 71

    Summary 72

    Exam Essentials 73

    Review Questions 74

    Chapter 4 Framing a Machine Learning Problem 77

    ML Problem Framing 78

    Recommended Practices 80

    Summary 81

    Exam Essentials 81

    Review Questions 82

    Chapter 5 Data Collection 85

    Basic Data Concepts 86

    Data Repositories 88

    Data Migration to AWS 89

    Batch Data Collection 89

    Streaming Data Collection 92

    Summary 96

    Exam Essentials 96

    Review Questions 98

    Chapter 6 Data Preparation 101

    Data Preparation Tools 102

    SageMaker Ground Truth 102

    Amazon EMR 104

    Amazon SageMaker Processing 105

    AWS Glue 105

    Amazon Athena 107

    Redshift Spectrum 107

    Summary 107

    Exam Essentials 107

    Review Questions 109

    Chapter 7 Feature Engineering 113

    Feature Engineering Concepts 114

    Feature Engineering for Tabular Data 114

    Feature Engineering for Unstructured and Time Series Data 119

    Feature Engineering Tools on AWS 120

    Summary 121

    Exam Essentials 121

    Review Questions 123

    Chapter 8 Model Training 127

    Common ML Algorithms 128

    Supervised Machine Learning 129

    Textual Data 138

    Image Analysis 141

    Unsupervised Machine Learning 142

    Reinforcement Learning 146

    Local Training and Testing 147

    Remote Training 149

    Distributed Training 150

    Monitoring Training Jobs 154

    Amazon CloudWatch 155

    AWS CloudTrail 155

    Amazon Event Bridge 158

    Debugging Training Jobs 158

    Hyperparameter Optimization 159

    Summary 162

    Exam Essentials 162

    Review Questions 164

    Chapter 9 Model Evaluation 167

    Experiment Management 168

    Metrics and Visualization 169

    Metrics in AWS AI/ML Services 173

    Summary 174

    Exam Essentials 175

    Review Questions 176

    Chapter 10 Model Deployment and Inference 181

    Deployment for AI Services 182

    Deployment for Amazon SageMaker 184

    SageMaker Hosting: Under the Hood 184

    Advanced Deployment Topics 187

    Autoscaling Endpoints 187

    Deployment Strategies 188

    Testing Strategies 190

    Summary 191

    Exam Essentials 191

    Review Questions 192

    Chapter 11 Application Integration 195

    Integration with On-Premises

    Systems 196

    Integration with Cloud Systems 198

    Integration with Front-End

    Systems 200

    Summary 200

    Exam Essentials 201

    Review Questions 202

    Part III Machine Learning Well-Architected Lens 205

    Chapter 12 Operational Excellence Pillar for ML 207

    Operational Excellence on AWS 208

    Everything as Code 209

    Continuous Integration and Continuous Delivery 210

    Continuous Monitoring 213

    Continuous Improvement 214

    Summary 215

    Exam Essentials 215

    Review Questions 217

    Chapter 13 Security Pillar 221

    Security and AWS 222

    Data Protection 223

    Isolation of Compute 224

    Fine-Grained

    Access Controls 225

    Audit and Logging 226

    Compliance Scope 227

    Secure SageMaker Environments 228

    Authentication and Authorization 228

    Data Protection 231

    Network Isolation 232

    Logging and Monitoring 233

    Compliance Scope 235

    AI Services Security 235

    Summary 236

    Exam Essentials 236

    Review Questions 238

    Chapter 14 Reliability Pillar 241

    Reliability on AWS 242

    Change Management for ML 242

    Failure Management for ML 245

    Summary 246

    Exam Essentials 246

    Review Questions 247

    Chapter 15 Performance Efficiency Pillar for ML 251

    Performance Efficiency for ML on AWS 252

    Selection 253

    Review 254

    Monitoring 255

    Trade-offs

    256

    Summary 257

    Exam Essentials 257

    Review Questions 258

    Chapter 16 Cost Optimization Pillar for ML 261

    Common Design Principles 262

    Cost Optimization for ML Workloads 263

    Design Principles 263

    Common Cost Optimization Strategies 264

    Summary 266

    Exam Essentials 266

    Review Questions 267

    Chapter 17 Recent Updates in the AWS AI/ML Stack 271

    New Services and Features Related to AI Services 272

    New Services 272

    New Features of Existing Services 275

    New Features Related to Amazon SageMaker 279

    Amazon SageMaker Studio 279

    Amazon SageMaker Data Wrangler 279

    Amazon SageMaker Feature Store 280

    Amazon SageMaker Clarify 281

    Amazon SageMaker Autopilot 282

    Amazon SageMaker JumpStart 283

    Amazon SageMaker Debugger 283

    Amazon SageMaker Distributed Training Libraries 284

    Amazon SageMaker Pipelines and Projects 284

    Amazon SageMaker Model Monitor 284

    Amazon SageMaker Edge Manager 285

    Amazon SageMaker Asynchronous Inference 285

    Summary 285

    Exam Essentials 285

    Appendix Answers to the Review Questions 287

    Chapter 1: AWS AI ML Stack 288

    Chapter 2: Supporting Services from the AWS Stack 289

    Chapter 3: Business Understanding 290

    Chapter 4: Framing a Machine Learning Problem 291

    Chapter 5: Data Collection 291

    Chapter 6: Data Preparation 292

    Chapter 7: Feature Engineering 293

    Chapter 8: Model Training 294

    Chapter 9: Model Evaluation 295

    Chapter 10: Model Deployment and Inference 295

    Chapter 11: Application Integration 296

    Chapter 12: Operational Excellence Pillar for ML 297

    Chapter 13: Security Pillar 298

    Chapter 14: Reliability Pillar 298

    Chapter 15: Performance Efficiency Pillar for ML 299

    Chapter 16: Cost Optimization Pillar for ML 300

    Index 303

    Recently viewed products

    © 2026 Book Curl

      • American Express
      • Apple Pay
      • Diners Club
      • Discover
      • Google Pay
      • Maestro
      • Mastercard
      • PayPal
      • Shop Pay
      • Union Pay
      • Visa

      Login

      Forgot your password?

      Don't have an account yet?
      Create account