Book Image

SQL Server Analysis Services 2012 Cube Development Cookbook

Book Image

SQL Server Analysis Services 2012 Cube Development Cookbook

Overview of this book

Microsoft SQL Server is a relational database management system. As a database, it is a software product whose primary function is to store and retrieve data as requested by other software applications. SQL Server Analysis Services adds OLAP and data mining capabilities for SQL Server databases. OLAP (online analytical processing) is a technique for analyzing business data for effective business intelligence. This practical guide teaches you how to build business intelligence solutions using Microsoft’s core product – SQL Server Analysis Services. The book covers the traditional multi-dimensional model which has been around for over a decade as well as the tabular model introduced with SQL Server 2012. Starting with comparing MultiDimensional and tabular models – discussing the values and limitations of each, you will then cover the essential techniques for building dimensions and cubes. Following on from this, you will be introduced to more advanced topics, such as designing partitions and aggregations, implementing security, and synchronizing databases for solutions serving many users. The book also covers administrative material, such as database backups, server configuration options, and monitoring and tuning performance. We also provide a primer on MultiDimensional eXpressions (MDX) as well as Data Analysis expressions (DAX) languages. This book provides you with data cube development techniques, and also the ongoing monitoring and tuning for Analysis Services.
Table of Contents (19 chapters)
SQL Server Analysis Services 2012 Cube Development Cookbook
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
Index

Diagnosing performance issues


The practice of performance tuning can range from being simple to being very complex, but most issues are easy to resolve through effective design and by applying simple troubleshooting steps and techniques. Sometimes problems are obvious and can be resolved easily. In more challenging cases, we must consider the possible causes and then eliminate possibilities to discover the remaining options. Fortunately, in most models, performance issues can be addressed without extensive experimentation. If your models have large volumes of data, many tables, complex relationships, or layers of complex calculation logic, you have a higher likelihood of running into performance problems that you'll need to sort out.

Processing and query-related performance

The xVelocity In-Memory Analytics Engine consists of a storage engine and a query engine that work in tandem to return query results and perform calculations. A fundamental understanding of these components is helpful,...