Book Image

QlikView: Advanced Data Visualization

By : Miguel Angel Garcia, Barry Harmsen, Stephen Redmond, Karl Pover
Book Image

QlikView: Advanced Data Visualization

By: Miguel Angel Garcia, Barry Harmsen, Stephen Redmond, Karl Pover

Overview of this book

QlikView is one of the most flexible and powerful business intelligence platforms around, and if you want to transform data into insights, it is one of the best options you have at hand. Use this Learning Path, to explore the many features of QlikView to realize the potential of your data and present it as impactful and engaging visualizations. Each chapter in this Learning Path starts with an understanding of a business requirement and its associated data model and then helps you create insightful analysis and data visualizations around it. You will look at problems that you might encounter while visualizing complex data insights using QlikView, and learn how to troubleshoot these and other not-so-common errors. This Learning Path contains real-world examples from a variety of business domains, such as sales, finance, marketing, and human resources. With all the knowledge that you gain from this Learning Path, you will have all the experience you need to implement your next QlikView project like a pro. This Learning Path includes content from the following Packt products: • QlikView for Developers by Miguel Ángel García, Barry Harmsen • Mastering QlikView by Stephen Redmond • Mastering QlikView Data Visualization by Karl Pover
Table of Contents (25 chapters)
QlikView: Advanced Data Visualization
Contributors
Preface
Index

Aggregating data


While QlikView shines in dealing with massive data volumes, sometimes we just do not need to load everything at an atomic level. Data aggregation can, for example, be used in deployments where document segmentation by detail is needed, in which case two documents are created to serve different user groups and analysis needs: one document will have all data with the highest level of detail and another one will have a similar data model but with aggregated (reduced) tables. This way, users are better served by keeping a balance between performance and analysis needs.

In this section, we will implement a document segmentation scenario by aggregating the Flight Data table to create a second document intended for executive users, who only require summary data.

Aggregating the Flight Data table

When aggregating data, the first step is always to define which dimension fields will be left out and which ones will be kept in the summarized table. We should analyze this question by looking...