Bültmann & Gerriets
Azure Data Factory Cookbook
Build and manage ETL and ELT pipelines with Microsoft Azure's serverless data integration service
von Dmitry Anoshin, Dmitry Foshin, Roman Storchak
Verlag: Packt Publishing
Hardcover
ISBN: 978-1-80056-529-6
Erschienen am 24.12.2020
Sprache: Englisch
Format: 235 mm [H] x 191 mm [B] x 21 mm [T]
Gewicht: 712 Gramm
Umfang: 382 Seiten

Preis: 54,80 €
keine Versandkosten (Inland)


Dieser Titel wird erst bei Bestellung gedruckt. Eintreffen bei uns daher ca. am 4. November.

Der Versand innerhalb der Stadt erfolgt in Regel am gleichen Tag.
Der Versand nach außerhalb dauert mit Post/DHL meistens 1-2 Tage.

54,80 €
merken
klimaneutral
Der Verlag produziert nach eigener Angabe noch nicht klimaneutral bzw. kompensiert die CO2-Emissionen aus der Produktion nicht. Daher übernehmen wir diese Kompensation durch finanzielle Förderung entsprechender Projekte. Mehr Details finden Sie in unserer Klimabilanz.
Klappentext
Biografische Anmerkung

Solve real-world data problems and create data-driven workflows for easy data movement and processing at scale with Azure Data Factory
Key FeaturesLearn how to load and transform data from various sources, both on-premises and on cloud
Use Azure Data Factory's visual environment to build and manage hybrid ETL pipelines
Discover how to prepare, transform, process, and enrich data to generate key insights
Book Description
Azure Data Factory (ADF) is a modern data integration tool available on Microsoft Azure. This Azure Data Factory Cookbook helps you get up and running by showing you how to create and execute your first job in ADF. You'll learn how to branch and chain activities, create custom activities, and schedule pipelines. This book will help you to discover the benefits of cloud data warehousing, Azure Synapse Analytics, and Azure Data Lake Gen2 Storage, which are frequently used for big data analytics. With practical recipes, you'll learn how to actively engage with analytical tools from Azure Data Services and leverage your on-premise infrastructure with cloud-native tools to get relevant business insights. As you advance, you'll be able to integrate the most commonly used Azure Services into ADF and understand how Azure services can be useful in designing ETL pipelines. The book will take you through the common errors that you may encounter while working with ADF and show you how to use the Azure portal to monitor pipelines. You'll also understand error messages and resolve problems in connectors and data flows with the debugging capabilities of ADF.
By the end of this book, you'll be able to use ADF as the main ETL and orchestration tool for your data warehouse or data platform projects.
What You Will LearnCreate an orchestration and transformation job in ADF
Develop, execute, and monitor data flows using Azure Synapse
Create big data pipelines using Azure Data Lake and ADF
Build a machine learning app with Apache Spark and ADF
Migrate on-premises SSIS jobs to ADF
Integrate ADF with commonly used Azure services such as Azure ML, Azure Logic Apps, and Azure Functions
Run big data compute jobs within HDInsight and Azure Databricks
Copy data from AWS S3 and Google Cloud Storage to Azure Storage using ADF's built-in connectors
Who this book is for
¿This book is for ETL developers, data warehouse and ETL architects, software professionals, and anyone who wants to learn about the common and not-so-common challenges faced while developing traditional and hybrid ETL solutions using Microsoft's Azure Data Factory. You'll also find this book useful if you are looking for recipes to improve or enhance your existing ETL pipelines. Basic knowledge of data warehousing is expected.



Dmitry Anoshin is a data-centric technologist and a recognized expert in building and implementing big data and analytics solutions. He has a successful track record when it comes to implementing business and digital intelligence projects in numerous industries, including retail, finance, marketing, and e-commerce. Dmitry possesses in-depth knowledge of digital/business intelligence, ETL, data warehousing, and big data technologies. He has extensive experience in the data integration process and is proficient in using various data warehousing methodologies. Dmitry has constantly exceeded project expectations when he has worked in the financial, machine tool, and retail industries. He has completed a number of multinational full BI/DI solution life cycle implementation projects. With expertise in data modeling, Dmitry also has a background and business experience in multiple relation databases, OLAP systems, and NoSQL databases. He is also an active speaker at data conferences and helps people to adopt cloud analytics.