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Introducing Microsoft SQL Server 2019

You're reading from  Introducing Microsoft SQL Server 2019

Product type Book
Published in Apr 2020
Publisher Packt
ISBN-13 9781838826215
Pages 488 pages
Edition 1st Edition
Languages
Authors (8):
Kellyn Gorman Kellyn Gorman
Profile icon Kellyn Gorman
Allan Hirt Allan Hirt
Profile icon Allan Hirt
Dave Noderer Dave Noderer
Profile icon Dave Noderer
Mitchell Pearson Mitchell Pearson
Profile icon Mitchell Pearson
James Rowland-Jones James Rowland-Jones
Profile icon James Rowland-Jones
Dustin Ryan Dustin Ryan
Profile icon Dustin Ryan
Arun Sirpal Arun Sirpal
Profile icon Arun Sirpal
Buck Woody Buck Woody
Profile icon Buck Woody
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Toc

Table of Contents (15) Chapters close

Preface 1. Optimizing for performance, scalability and real‑time insights 2. Enterprise Security 3. High Availability and Disaster Recovery 4. Hybrid Features – SQL Server and Microsoft Azure 5. SQL Server 2019 on Linux 6. SQL Server 2019 in Containers and Kubernetes 7. Data Virtualization 8. Machine Learning Services Extensibility Framework 9. SQL Server 2019 Big Data Clusters 10. Enhancing the Developer Experience 11. Data Warehousing 12. Analysis Services 13. Power BI Report Server 14. Modernization to the Azure Cloud

Data virtualization use cases

In this section, you will review three specific scenarios where a modern enterprise data hub implemented using data virtualization technology adds significant value to your solution.

Data virtualization and hybrid transactional analytical processing

One approach that has gained popularity in recent times is operational analytics, also known as hybrid transactional analytical processing (HTAP). With this approach, you blend the operational workload and the analytical workload into a single system for that dataset. This has the advantage of consolidation and can limit data duplication. It also addresses data quality issues at the source, which leads to a reduction in the data management burden. However, there is a notable downside. Most enterprises have multiple-source systems, which would result in multiple HTAP systems. This introduces the challenge to users of querying across all their analytical data.

Enter your modern enterprise data hub....

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