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Microsoft Power BI Cookbook

You're reading from   Microsoft Power BI Cookbook Creating Business Intelligence Solutions of Analytical Data Models, Reports, and Dashboards

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781788290142
Length 802 pages
Edition 1st Edition
Languages
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Authors (2):
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Brett Powell Brett Powell
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Brett Powell
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Table of Contents (14) Chapters Close

Preface 1. Configuring Power BI Development Tools FREE CHAPTER 2. Accessing and Retrieving Data 3. Building a Power BI Data Model 4. Authoring Power BI Reports 5. Creating Power BI Dashboards 6. Getting Serious with Date Intelligence 7. Parameterizing Power BI Solutions 8. Implementing Dynamic User-Based Visibility in Power BI 9. Applying Advanced Analytics and Custom Visuals 10. Developing Solutions for System Monitoring and Administration 11. Enhancing and Optimizing Existing Power BI Solutions 12. Deploying and Distributing Power BI Content 13. Integrating Power BI with Other Applications

Creating and managing Power BI groupings and bins

Power BI grouping was introduced in the Creating browsable hierarchies and groups recipe in Chapter 3, Building a Power BI Data Model as a means to consolidate the values or members of columns in your data model into dedicated group columns. These group columns can then be utilized like other columns in the model to simplify report visualizations and self-service analysis, given their reduced granularity. Additionally, groups can be managed and edited in Power BI Desktop, providing a flexible option for dataset owners to respond quickly to changing requirements or preferences.

In this recipe, a customer attrition analysis is supported by a quarterly group based on a First Purchase Date column of a Customer dimension table. In the second example, a Number of Days Since Last Purchase column is created via M queries and then grouped...

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