Reader small image

You're reading from  Azure Data Factory Cookbook - Second Edition

Product typeBook
Published inFeb 2024
PublisherPackt
ISBN-139781803246598
Edition2nd Edition
Right arrow
Authors (4):
Dmitry Foshin
Dmitry Foshin
author image
Dmitry Foshin

Dmitry Foshin is a business intelligence team leader, whose main goals are delivering business insights to the management team through data engineering, analytics, and visualization. He has led and executed complex full-stack BI solutions (from ETL processes to building DWH and reporting) using Azure technologies, Data Lake, Data Factory, Data Bricks, MS Office 365, PowerBI, and Tableau. He has also successfully launched numerous data analytics projects – both on-premises and cloud – that help achieve corporate goals in international FMCG companies, banking, and manufacturing industries.
Read more about Dmitry Foshin

Tonya Chernyshova
Tonya Chernyshova
author image
Tonya Chernyshova

Tonya Chernyshova is an experienced Data Engineer with over 10 years in the field, including time at Amazon. Specializing in Data Modeling, Automation, Cloud Computing (AWS and Azure), and Data Visualization, she has a strong track record of delivering scalable, maintainable data products. Her expertise drives data-driven insights and business growth, showcasing her proficiency in leveraging cloud technologies to enhance data capabilities.
Read more about Tonya Chernyshova

Dmitry Anoshin
Dmitry Anoshin
author image
Dmitry Anoshin

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.
Read more about Dmitry Anoshin

Xenia Ireton
Xenia Ireton
author image
Xenia Ireton

Xenia Ireton is a Senior Software Engineer at Microsoft. She has extensive knowledge in building distributed services, data pipelines and data warehouses.
Read more about Xenia Ireton

View More author details
Right arrow

What this book covers

Chapter 1, Getting Started with ADF, will provide a general introduction to the Azure data platform. In this chapter, you will learn about the ADF interface and options as well as common use cases. You will perform hands-on exercises in order to find ADF in the Azure portal and create your first ADF job.

Chapter 2, Orchestration and Control Flow, will introduce you to the building blocks of data processing in ADF. The chapter contains hands-on exercises that show you how to set up linked services and datasets for your data sources, use various types of activities, design data-processing workflows, and create triggers for data transfers.

Chapter 3, Setting Up Synapse Analytics, covers key features and benefits of cloud data warehousing and Azure Synapse Analytics. You will learn how to connect and configure Azure Synapse Analytics, load data, build transformation processes, and operate data flows.

Chapter 4, Working with Data Lake and Spark Pools, will cover the main features of the Azure Data Lake Storage Gen2. It is a multimodal cloud storage solution that is frequently used for big data analytics. We will load and manage the datasets that we will use for analytics in the next chapter.

Chapter 5, Working with Big Data and Databricks, will actively engage with analytical tools from Azure’s data services. You will learn how to build data models in Delta Lake using Azure Databricks and mapping data flows. Also, this recipe will show you how to set up HDInsights clusters and how to work with delta tables.

Chapter 6, Data Migration – Azure Data Factory and Other Cloud Services, will walk though several illustrative examples on migrating data from Amazon Web Services and Google Cloud providers. In addition, you will learn how to use ADF’s custom activities to work with providers who are not supported by Microsoft’s built-in connectors.

Chapter 7, Extending Azure Data Factory with Logic Apps and Azure Functions, will show you how to harness the power of serverless execution by integrating some of the most commonly used Azure services: Azure Logic Apps and Azure Functions. These recipes will help you understand how Azure services can be useful in designing Extract, Transform, Load (ETL) pipelines.

Chapter 8, Microsoft Fabric and Power BI, Azure ML, and Cognitive Services, will teach you how to build an ADF pipeline that operates on a pre-built Azure ML model. You will also create and run an ADF pipeline that leverages Azure AI for text data analysis. In the last three recipes, you’ll familiarize yourself with the primary components of Microsoft Fabric Data Factory.

Chapter 9, Managing Deployment Processes with Azure DevOps, will delve into setting up CI and CD for data analytics solutions in ADF using Azure DevOps. Throughout the process, we will also demonstrate how to use Visual Studio Code to facilitate the deployment of changes to ADF.

Chapter 10, Monitoring and Troubleshooting Data Pipelines, will introduce tools to help you manage and monitor your ADF pipelines. You will learn where and how to find more information about what went wrong when a pipeline failed, how to debug a failed run, how to set up alerts that notify you when there is a problem, and how to identify problems with your integration runtimes.

Chapter 11, Working with Azure Data Explorer, will help you to set up a data ingestion pipeline from ADF to Azure Data Explorer: it includes a step-by-step guide to ingesting JSON data from Azure Storage and will teach you how to transform data in Azure Data Explorer with ADF activities.

Chapter 12, The Best Practices of Working with ADF, will guide you through essential considerations, strategies, and practical recipes that will elevate your ADF projects to new heights of efficiency, security, and scalability.

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Azure Data Factory Cookbook - Second Edition
Published in: Feb 2024Publisher: PacktISBN-13: 9781803246598

Authors (4)

author image
Dmitry Foshin

Dmitry Foshin is a business intelligence team leader, whose main goals are delivering business insights to the management team through data engineering, analytics, and visualization. He has led and executed complex full-stack BI solutions (from ETL processes to building DWH and reporting) using Azure technologies, Data Lake, Data Factory, Data Bricks, MS Office 365, PowerBI, and Tableau. He has also successfully launched numerous data analytics projects – both on-premises and cloud – that help achieve corporate goals in international FMCG companies, banking, and manufacturing industries.
Read more about Dmitry Foshin

author image
Tonya Chernyshova

Tonya Chernyshova is an experienced Data Engineer with over 10 years in the field, including time at Amazon. Specializing in Data Modeling, Automation, Cloud Computing (AWS and Azure), and Data Visualization, she has a strong track record of delivering scalable, maintainable data products. Her expertise drives data-driven insights and business growth, showcasing her proficiency in leveraging cloud technologies to enhance data capabilities.
Read more about Tonya Chernyshova

author image
Dmitry Anoshin

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.
Read more about Dmitry Anoshin

author image
Xenia Ireton

Xenia Ireton is a Senior Software Engineer at Microsoft. She has extensive knowledge in building distributed services, data pipelines and data warehouses.
Read more about Xenia Ireton