Analytics optimization with columnstore indexes in Microsoft SQL Server : optimizing OLAP workloads / Edward Pollack.
2022
QA76.9.C55
Linked e-resources
Linked Resource
Online Access
Concurrent users
Unlimited
Authorized users
Authorized users
Document Delivery Supplied
Can lend chapters, not whole ebooks
Details
Title
Analytics optimization with columnstore indexes in Microsoft SQL Server : optimizing OLAP workloads / Edward Pollack.
Edition
[First edition].
ISBN
9781484280485 (electronic bk.)
1484280482 (electronic bk.)
1484280474
9781484280478
1484280482 (electronic bk.)
1484280474
9781484280478
Published
New York, NY : Apress, [2022]
Language
English
Description
1 online resource : illustrations
Item Number
10.1007/978-1-4842-8048-5 doi
9781484280485
9781484280485
Call Number
QA76.9.C55
Dewey Decimal Classification
005.75/85
Summary
Meet the challenge of storing and accessing analytic data in SQL Server in a fast and performant manner. This book illustrates how columnstore indexes can provide an ideal solution for storing analytic data that leads to faster performing analytic queries and the ability to ask and answer business intelligence questions with alacrity. The book provides a complete walk through of columnstore indexing that encompasses an introduction, best practices, hands-on demonstrations, explanations of common mistakes, and presents a detailed architecture that is suitable for professionals of all skill levels. With little or no knowledge of columnstore indexing you can become proficient with columnstore indexes as used in SQL Server, and apply that knowledge in development, test, and production environments. This book serves as a comprehensive guide to the use of columnstore indexes and provides definitive guidelines. You will learn when columnstore indexes should be used, and the performance gains that you can expect. You will also become familiar with best practices around architecture, implementation, and maintenance. Finally, you will know the limitations and common pitfalls to be aware of and avoid. As analytic data can become quite large, the expense to manage it or migrate it can be high. This book shows that columnstore indexing represents an effective storage solution that saves time, money, and improves performance for any applications that use it. You will see that columnstore indexes are an effective performance solution that is included in all versions of SQL Server, with no additional costs or licensing required. What You Will Learn Implement columnstore indexes in SQL Server Know best practices for the use and maintenance of analytic data in SQL Server Use metadata to fully understand the size and shape of data stored in columnstore indexes Employ optimal ways to load, maintain, and delete data from large analytic tables Know how columnstore compression saves storage, memory, and time Understand when a columnstore index should be used instead of a rowstore index Be familiar with advanced features and analytics Who This Book Is For Database developers, administrators, and architects who are responsible for analytic data, especially for those working with very large data sets who are looking for new ways to achieve high performance in their queries, and those with immediate or future challenges to analytic data and query performance who want a methodical and effective solution.
Note
Includes index.
Access Note
Access limited to authorized users.
Available in Other Form
Print version: 9781484280478
Linked Resources
Online Access
Record Appears in
Online Resources > Ebooks
All Resources
All Resources
Table of Contents
1. Introduction to Analytic Data in a Transactional Database
2. Transactional vs. Analytic Workloads
3. What are Columnstore Indexes?
4. Columnstore Index Architecture
5. Columnstore Compression
6. Columnstore Metadata
7. Batch Execution
8. Bulk Loading Data
9. Delete and Update Operations
10. Segment and Rowgroup Elimination
11. Partitioning
12. Non-Clustered Columnstore Indexes on Rowstore Tables
13. Non-Clustered Rowstore Indexes on Columnstore Tables
14. Columnstore Index Maintenance
15. Columnstore Index Performance.
2. Transactional vs. Analytic Workloads
3. What are Columnstore Indexes?
4. Columnstore Index Architecture
5. Columnstore Compression
6. Columnstore Metadata
7. Batch Execution
8. Bulk Loading Data
9. Delete and Update Operations
10. Segment and Rowgroup Elimination
11. Partitioning
12. Non-Clustered Columnstore Indexes on Rowstore Tables
13. Non-Clustered Rowstore Indexes on Columnstore Tables
14. Columnstore Index Maintenance
15. Columnstore Index Performance.