0%

Build efficient data lakes that can scale to virtually unlimited size using AWS Glue

Key Features

  • Learn to work with AWS Glue to overcome typical implementation challenges in data lakes
  • Create and manage serverless ETL pipelines that can scale to manage big data
  • Written by AWS Glue community members, this practical guide shows you how to implement AWS Glue in no time

Book Description

Organizations these days have gravitated toward services such as AWS Glue that undertake undifferentiated heavy lifting and provide serverless Spark, enabling you to create and manage data lakes in a serverless fashion. This guide shows you how AWS Glue can be used to solve real-world problems along with helping you learn about data processing, data integration, and building data lakes.

Beginning with AWS Glue basics, this book teaches you how to perform various aspects of data analysis such as ad hoc queries, data visualization, and real-time analysis using this service. It also provides a walk-through of CI/CD for AWS Glue and how to shift left on quality using automated regression tests. You'll find out how data security aspects such as access control, encryption, auditing, and networking are implemented, as well as getting to grips with useful techniques such as picking the right file format, compression, partitioning, and bucketing. As you advance, you'll discover AWS Glue features such as crawlers, Lake Formation, governed tables, lineage, DataBrew, Glue Studio, and custom connectors. The concluding chapters help you to understand various performance tuning, troubleshooting, and monitoring options.

By the end of this AWS book, you'll be able to create, manage, troubleshoot, and deploy ETL pipelines using AWS Glue.

What you will learn

  • Apply various AWS Glue features to manage and create data lakes
  • Use Glue DataBrew and Glue Studio for data preparation
  • Optimize data layout in cloud storage to accelerate analytics workloads
  • Manage metadata including database, table, and schema definitions
  • Secure your data during access control, encryption, auditing, and networking
  • Monitor AWS Glue jobs to detect delays and loss of data
  • Integrate Spark ML and SageMaker with AWS Glue to create machine learning models

Who this book is for

This book is for ETL developers, data engineers, and data analysts who want to understand how AWS Glue can help you solve your business problems. Basic knowledge of AWS data services is assumed.

Table of Contents

  1. Serverless ETL and Analytics with AWS Glue
  2. Contributors
  3. About the authors
  4. About the reviewers
  5. Preface
  6. Section 1 – Introduction, Concepts, and the Basics of AWS Glue
  7. Chapter 1: Data Management – Introduction and Concepts
  8. Chapter 2: Introduction to Important AWS Glue Features
  9. Chapter 3: Data Ingestion
  10. Section 2 – Data Preparation, Management, and Security
  11. Chapter 4: Data Preparation
  12. Chapter 5: Data Layouts
  13. Chapter 6: Data Management
  14. Chapter 7: Metadata Management
  15. Chapter 8: Data Security
  16. Chapter 9: Data Sharing
  17. Chapter 10: Data Pipeline Management
  18. Section 3 – Tuning, Monitoring, Data Lake Common Scenarios, and Interesting Edge Cases
  19. Chapter 11: Monitoring
  20. Chapter 12: Tuning, Debugging, and Troubleshooting
  21. Chapter 13: Data Analysis
  22. Chapter 14: Machine Learning Integration
  23. Chapter 15: Architecting Data Lakes for Real-World Scenarios and Edge Cases
  24. Other Books You May Enjoy
3.149.214.32