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Packt Publishing

AWS Certified Machine Learning Engineer - Associate Study Guide: Pass the MLA-C01 exam with hands-on labs, case studies, and practice questions

AWS Certified Machine Learning Engineer - Associate Study Guide: Pass the MLA-C01 exam with hands-on labs, case studies, and practice questions

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Master AWS machine learning by building real-world pipelines, completing hands-on labs, and preparing confidently for the MLA-C01 certification.
  • Build real AWS ML pipelines with practical labs and case studies
  • Map every MLA-C01 exam domain to clear explanations and exercises
  • Deploy, monitor, and secure ML solutions using modern AWS services
The AWS Certified Machine Learning Engineer – Associate Study Guide gives you the knowledge and practical skills to build, deploy, and manage ML systems on AWS while preparing you for the MLA-C01 exam. This book is designed for data scientists, ML engineers, developers, and cloud professionals who want real-world experience—not just theoretical exam prep. You’ll work through the entire ML lifecycle using AWS services: ingesting and preparing data with S3, Glue, and SageMaker Data Wrangler; training models with built-in algorithms or custom frameworks; and deploying them using real-time, batch, asynchronous, or serverless endpoints. Each chapter includes hands-on labs, best practices, and exam tips mapped directly to MLA-C01 domains. You’ll then explore automation with SageMaker Pipelines and CI/CD tooling, as well as critical MLOps skills such as drift detection, bias monitoring, workload security, and cost optimization. The book also features end-to-end case studies and coverage of emerging AWS AI tools—including Amazon Bedrock, JumpStart, and Canvas—so you can apply both traditional and generative AI techniques. By the end of this guide, you’ll be ready to pass the MLA-C01 exam and confidently design production-ready ML solutions on AWS.
  • Build end-to-end ML pipelines using AWS data and ML services
  • Train models using built-in algorithms and custom frameworks
  • Tune and evaluate models with HPO and Clarify
  • Deploy models via real-time, batch, async, and serverless options
  • Automate ML workflows with SageMaker Pipelines and CI/CD
  • Monitor drift, bias, and performance with Model Monitor
  • Secure ML workloads with IAM, KMS, VPCs, and cost controls
  • Use Bedrock and JumpStart for generative and foundation models

This book is for data scientists, ML engineers, MLOps engineers, developers, cloud practitioners, and data engineers who want to design and operationalize machine-learning solutions on AWS while preparing for the AWS Certified Machine Learning Engineer – Associate exam. Readers should have basic ML knowledge and Python experience, but the book’s hands-on labs and guided approach support learners transitioning into applied ML engineering.

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