Book Image

Data Modeling for Azure Data Services

By : Peter ter Braake
Book Image

Data Modeling for Azure Data Services

By: Peter ter Braake

Overview of this book

Data is at the heart of all applications and forms the foundation of modern data-driven businesses. With the multitude of data-related use cases and the availability of different data services, choosing the right service and implementing the right design becomes paramount to successful implementation. Data Modeling for Azure Data Services starts with an introduction to databases, entity analysis, and normalizing data. The book then shows you how to design a NoSQL database for optimal performance and scalability and covers how to provision and implement Azure SQL DB, Azure Cosmos DB, and Azure Synapse SQL Pool. As you progress through the chapters, you'll learn about data analytics, Azure Data Lake, and Azure SQL Data Warehouse and explore dimensional modeling, data vault modeling, along with designing and implementing a Data Lake using Azure Storage. You'll also learn how to implement ETL with Azure Data Factory. By the end of this book, you'll have a solid understanding of which Azure data services are the best fit for your model and how to implement the best design for your solution.
Table of Contents (16 chapters)
1
Section 1 – Operational/OLTP Databases
8
Section 2 – Analytics with a Data Lake and Data Warehouse
13
Section 3 – ETL with Azure Data Factory

Chapter 10: Designing and Implementing a Data Lake Using Azure Storage

In Chapter 9, Data Vault Modeling, you learned how to design a Data Vault data warehouse. It is a flexible and scalable data warehouse. The flexibility refers to the fact that it is agile: it can adapt easily to different circumstances, such as new source databases or other reporting requirements. It is, however, a relational database implementation. Relational databases are good at handling structured data.

What if you have data in JSON documents stored in Cosmos DB? What will you do with web logs, error logs, and other semi- or non-structured data that is also interesting to analyze? Are you going to transform that data into table structures?

Instead of combining with a Data Vault data warehouse, you might implement a data lake. This chapter teaches you the why and the how of designing and implementing a data lake. You will learn about the following topics:

  • Background of data lakes
  • Modeling a...