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ETL with Azure Cookbook

You're reading from   ETL with Azure Cookbook Practical recipes for building modern ETL solutions to load and transform data from any source

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Product type Paperback
Published in Sep 2020
Publisher Packt
ISBN-13 9781800203310
Length 446 pages
Edition 1st Edition
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Authors (3):
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Christian Cote Christian Cote
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Christian Cote
Matija Lah Matija Lah
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Matija Lah
Madina Saitakhmetova Madina Saitakhmetova
Author Profile Icon Madina Saitakhmetova
Madina Saitakhmetova
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Toc

Table of Contents (12) Chapters Close

Preface 1. Chapter 1: Getting Started with Azure and SSIS 2019 2. Chapter 2: Introducing ETL FREE CHAPTER 3. Chapter 3: Creating and Using SQL Server 2019 Big Data Clusters 4. Chapter 4: Azure Data Integration 5. Chapter 5: Extending SSIS with Custom Tasks and Transformations 6. Chapter 6: Azure Data Factory 7. Chapter 7: Azure Databricks 8. Chapter 8: SSIS Migration Strategies 9. Chapter 9: Profiling data in Azure 10. Chapter 10: Manage SSIS and Azure Data Factory with Biml 11. Other Books You May Enjoy

Designing a Custom Data Flow Component

This recipe demonstrates the design of a Custom Data flow transformation. Efficient resource use represents one of the principal objectives in ETL development. Being able to determine which data extracted from the source actually needs to be loaded into the destination is probably the most important capability of any ETL solution. Determining whether an incoming row contains data that is different from the corresponding existing row can be performed by comparing each source column with the corresponding destination column. Such comparisons can be costly as they require all relevant data to be loaded from the destination table to perform the comparison.

By creating a single hash value based on the values of all the columns in the incoming row, and comparing only this single value with the one stored in the destination table, resource use can be reduced significantly. Of course, the hashed values are restricted in size and none of the algorithms...

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