Book Image

Data Engineering with Apache Spark, Delta Lake, and Lakehouse

By : Manoj Kukreja
5 (2)
Book Image

Data Engineering with Apache Spark, Delta Lake, and Lakehouse

5 (2)
By: Manoj Kukreja

Overview of this book

In the world of ever-changing data and schemas, it is important to build data pipelines that can auto-adjust to changes. This book will help you build scalable data platforms that managers, data scientists, and data analysts can rely on. Starting with an introduction to data engineering, along with its key concepts and architectures, this book will show you how to use Microsoft Azure Cloud services effectively for data engineering. You'll cover data lake design patterns and the different stages through which the data needs to flow in a typical data lake. Once you've explored the main features of Delta Lake to build data lakes with fast performance and governance in mind, you'll advance to implementing the lambda architecture using Delta Lake. Packed with practical examples and code snippets, this book takes you through real-world examples based on production scenarios faced by the author in his 10 years of experience working with big data. Finally, you'll cover data lake deployment strategies that play an important role in provisioning the cloud resources and deploying the data pipelines in a repeatable and continuous way. By the end of this data engineering book, you'll know how to effectively deal with ever-changing data and create scalable data pipelines to streamline data science, ML, and artificial intelligence (AI) tasks.
Table of Contents (17 chapters)
1
Section 1: Modern Data Engineering and Tools
5
Section 2: Data Pipelines and Stages of Data Engineering
11
Section 3: Data Engineering Challenges and Effective Deployment Strategies

Summary

In this chapter, we went through several scenarios that highlighted a couple of important points.

Firstly, the importance of data-driven analytics is the latest trend that will continue to grow in the future. Data-driven analytics gives decision makers the power to make key decisions but also to back these decisions up with valid reasons.

Secondly, data engineering is the backbone of all data analytics operations. None of the magic in data analytics could be performed without a well-designed, secure, scalable, highly available, and performance-tuned data repository—a data lake.

In the next few chapters, we will be talking about data lakes in depth. We will start by highlighting the building blocks of effective data—storage and compute. We will also look at some well-known architecture patterns that can help you create an effective data lake—one that effectively handles analytical requirements for varying use cases.