Book Image

Azure Data Engineering Cookbook - Second Edition

By : Nagaraj Venkatesan, Ahmad Osama
Book Image

Azure Data Engineering Cookbook - Second Edition

By: Nagaraj Venkatesan, Ahmad Osama

Overview of this book

The famous quote 'Data is the new oil' seems more true every day as the key to most organizations' long-term success lies in extracting insights from raw data. One of the major challenges organizations face in leveraging value out of data is building performant data engineering pipelines for data visualization, ingestion, storage, and processing. This second edition of the immensely successful book by Ahmad Osama brings to you several recent enhancements in Azure data engineering and shares approximately 80 useful recipes covering common scenarios in building data engineering pipelines in Microsoft Azure. You’ll explore recipes from Azure Synapse Analytics workspaces Gen 2 and get to grips with Synapse Spark pools, SQL Serverless pools, Synapse integration pipelines, and Synapse data flows. You’ll also understand Synapse SQL Pool optimization techniques in this second edition. Besides Synapse enhancements, you’ll discover helpful tips on managing Azure SQL Database and learn about security, high availability, and performance monitoring. Finally, the book takes you through overall data engineering pipeline management, focusing on monitoring using Log Analytics and tracking data lineage using Azure Purview. By the end of this book, you’ll be able to build superior data engineering pipelines along with having an invaluable go-to guide.
Table of Contents (16 chapters)

Preface

Data is the new oil and probably the most valuable resource. Data engineering covers how one can gain insights out of data. This book will introduce the key processes in data engineering (ingesting, storing, processing, and consuming) and share a few common recipes that can help us develop data engineering pipelines to gain insights into our data.

The book follows the logical data engineering process by beginning with Azure Data Lake and covering data ingestion using Azure Data Factory into Azure Data Lake and Azure SQL Database in the first few chapters. In these chapters, the book also covers the management of common storage layers such as Azure Data Lake and Azure SQL Database, focusing on topics such as security, high availability, and performance monitoring. The middle chapters focus on data processing using Azure Databricks, Azure Synapse Analytics Spark pools, and Synapse dataflows, and data exploration using Synapse serverless SQL pools. The final few chapters focus on the consumption of the data using Synapse dedicated SQL pool and Synapse Spark lake databases, covering the tips and tricks to optimize and maintain Synapse dedicated SQL pool databases and lake databases. Finally, the book also has a bonus chapter on managing the overall data engineering pipeline, which covers pipeline monitoring using Azure Log Analytics and tracking data lineage using Microsoft Purview.

While the book can be consumed in parts or any sequence, following along sequentially will help the readers experience building an end-to-end data engineering solution on Azure.