Reader small image

You're reading from  Data Engineering with AWS - Second Edition

Product typeBook
Published inOct 2023
PublisherPackt
ISBN-139781804614426
Edition2nd Edition
Right arrow
Author (1)
Gareth Eagar
Gareth Eagar
author image
Gareth Eagar

Gareth Eagar has over 25 years of experience in the IT industry, starting in South Africa, working in the United Kingdom for a while, and now based in the USA. Having worked at AWS since 2017, Gareth has broad experience with a variety of AWS services, and deep expertise around building data platforms on AWS. While Gareth currently works as a Solutions Architect, he has also worked in AWS Professional Services, helping architect and implement data platforms for global customers. Gareth frequently speaks on data related topics.
Read more about Gareth Eagar

Right arrow

What this book covers

Each of the chapters in this book takes the approach of introducing important concepts or key AWS services, and then providing a hands-on exercise related to the topic of the chapter:

Chapter 1, An Introduction to Data Engineering, reviews the challenges of ever-increasing dataset volumes, and the role of the data engineer in working with data in the cloud.

Chapter 2, Data Management Architectures for Analytics, introduces foundational concepts and technologies related to big data processing.

Chapter 3, The AWS Data Engineer’s Toolkit, provides an introduction to a wide range of AWS services that are used for ingesting, processing, and consuming data, and orchestrating pipelines.

Chapter 4, Data Governance, Security, and Cataloging, covers the all-important topics of keeping data secure, ensuring good data governance, and the importance of cataloging your data.

Chapter 5, Architecting Data Engineering Pipelines, provides an approach for whiteboarding the high-level design of a data engineering pipeline.

Chapter 6, Ingesting Batch and Streaming Data, looks at the variety of data sources that we may need to ingest from, and examines AWS services for ingesting both batch and streaming data.

Chapter 7, Transforming Data to Optimize for Analytics, covers common transformations for optimizing datasets and for applying business logic.

Chapter 8, Identifying and Enabling Data Consumers, is about better understanding the different types of data consumers that a data engineer may work to prepare data for.

Chapter 9, A Deeper Dive into Data Marts and Amazon Redshift, focuses on the use of data warehouses as a data mart and looks at moving data between a data lake and data warehouse. This chapter also does a deep dive into Amazon Redshift, a cloud-based data warehouse.

Chapter 10, Orchestrating the Data Pipeline, looks at how various data engineering tasks and transformations can be put together in a data pipeline, and how these can be run and managed with pipeline orchestration tools such as AWS Step Functions.

Chapter 11, Ad Hoc Queries with Amazon Athena, does a deeper dive into the Amazon Athena service, which can be used to run SQL queries directly on data in the data lake, and beyond.

Chapter 12, Visualizing Data with Amazon QuickSight, discusses the importance of being able to craft visualizations of data, and how the Amazon QuickSight service enables this.

Chapter 13, Enabling Artificial Intelligence and Machine Learning, reviews how AI and ML are increasingly important for gaining new value from data, and introduces some of the AWS services for both ML and AI.

Chapter 14, Building Transactional Data Lakes, looks at new table formats (including Apache Iceberg, Apache Hudi, and Delta Lake) that bring traditional data warehousing type features to data lakes.

Chapter 15, Implementing a Data Mesh Strategy, discusses a recent trend, referred to as a data mesh, that provides a new way to approach analytical data management and data sharing within an organization.

Chapter 16, Building a Modern Data Platform on AWS, introduces important concepts, such as DataOps, which provides automation and observability when building a modern data platform.

Chapter 17, Wrapping Up the First Part of Your Learning Journey, concludes the book by looking at the bigger picture of data analytics, including real-world examples of data pipelines, and a review of emerging trends in the industry.

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Data Engineering with AWS - Second Edition
Published in: Oct 2023Publisher: PacktISBN-13: 9781804614426

Author (1)

author image
Gareth Eagar

Gareth Eagar has over 25 years of experience in the IT industry, starting in South Africa, working in the United Kingdom for a while, and now based in the USA. Having worked at AWS since 2017, Gareth has broad experience with a variety of AWS services, and deep expertise around building data platforms on AWS. While Gareth currently works as a Solutions Architect, he has also worked in AWS Professional Services, helping architect and implement data platforms for global customers. Gareth frequently speaks on data related topics.
Read more about Gareth Eagar