Azure Data Engineering Cookbook: Design and implement batch and streaming analytics using Azure Cloud Services
by: Ahmad Osama
Publisher finelybook 出版社: Packt Publishing (April 5,2021)
Language 语言: English
Print Length 页数: 454 pages
ISBN-10: 1800206550
ISBN-13: 9781800206557
Book Description
By finelybook
Over 90 recipes to help data scientists and AI engineers orchestrate modern ETL/ELT workflows and perform analytics using Azure services more easily
Data engineering is a growing field that focuses on preparing data for analysis. This book uses various Azure services to implement and maintain infrastructure to extract data from multiple sources,and then transform and load it for data analysis.
This book takes you through different techniques for performing big data engineering using Microsoft cloud services. It begins by: showing you how Azure Blob storage can be used for storing large amounts of unstructured data and how to use it for orchestrating a data workflow. You’ll then work with different Cosmos DB APIs and Azure SQL Database. Moving on,you’ll discover how to provision an Azure Synapse database and find out how to ingest and analyze data in Azure Synapse. As you advance,you’ll cover the design and implementation of batch processing solutions using Azure Data Factory,and understand how to manage,maintain,and secure Azure Data Factory pipelines. You’ll also design and implement batch processing solutions using Azure Databricks and then manage and secure Azure Databricks clusters and jobs. In the concluding chapters,you’ll learn how to process streaming data using Azure Stream Analytics and Data Explorer.
by: the end of this Azure book,you’ll have gained the knowledge you need to be able to orchestrate batch and real-time ETL workflows in Microsoft Azure.
What you will learn
Use Azure Blob storage for storing large amounts of unstructured data
Perform CRUD operations on the Cosmos Table API
Implement elastic pools and business continuity with Azure SQL Database
Ingest and analyze data using Azure Synapse Analytics
Develop Data Factory data flows to extract data from multiple sources
Manage,maintain,and secure Azure Data Factory pipelines
Process streaming data using Azure Stream Analytics and Data Explorer