- ホーム
- > 洋書
- > 英文書
- > Computer / General
Full Description
Build efficient data lakes that can scale to virtually unlimited size using AWS Glue
Key Features
Book DescriptionOrganizations 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 ETL developers, data engineers, and data analysts
Contents
Table of Contents
Data Management - Introduction and Concepts
Introduction to Important AWS Glue Features
Data Ingestion
Data Preparation
Designing Data Layouts
Data Management
Metadata Management
Data Security
Data Sharing
Data Pipeline Management
Monitoring
Tuning, Debugging, and Troubleshooting
Data Analysis
Machine Learning Integration
Architecting Data Lakes for Real-World Scenarios and Edge Cases