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Extending Power BI with Python and R

You're reading from   Extending Power BI with Python and R Ingest, transform, enrich, and visualize data using the power of analytical languages

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Product type Paperback
Published in Nov 2021
Publisher Packt
ISBN-13 9781801078207
Length 558 pages
Edition 1st Edition
Languages
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Author (1):
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Luca Zavarella Luca Zavarella
Author Profile Icon Luca Zavarella
Luca Zavarella
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Table of Contents (22) Chapters Close

Preface 1. Section 1: Best Practices for Using R and Python in Power BI
2. Chapter 1: Where and How to Use R and Python Scripts in Power BI FREE CHAPTER 3. Chapter 2: Configuring R with Power BI 4. Chapter 3: Configuring Python with Power BI 5. Section 2: Data Ingestion and Transformation with R and Python in Power BI
6. Chapter 4: Importing Unhandled Data Objects 7. Chapter 5: Using Regular Expressions in Power BI 8. Chapter 6: Anonymizing and Pseudonymizing Your Data in Power BI 9. Chapter 7: Logging Data from Power BI to External Sources 10. Chapter 8: Loading Large Datasets beyond the Available RAM in Power BI 11. Section 3: Data Enrichment with R and Python in Power BI
12. Chapter 9: Calling External APIs to Enrich Your Data 13. Chapter 10: Calculating Columns Using Complex Algorithms 14. Chapter 11: Adding Statistics Insights: Associations 15. Chapter 12: Adding Statistics Insights: Outliers and Missing Values 16. Chapter 13: Using Machine Learning without Premium or Embedded Capacity 17. Section 3: Data Visualization with R in Power BI
18. Chapter 14: Exploratory Data Analysis 19. Chapter 15: Advanced Visualizations 20. Chapter 16: Interactive R Custom Visuals 21. Other Books You May Enjoy

Why interactive R custom visuals?

Let's start with a graph you've already implemented in R. Consider, for example, the raincloud plot of Fare versus Pclass variables introduced in Chapter 14, Exploratory Data Analysis:

Figure 16.1 – Raincloud plot for Fare (transformed) and Pclass variables

Focus for a moment only on the boxplots you see in Figure 16.1. Although the Fare variable is already transformed according to Yeo-Johnson to try to reduce skewness, there remain some extreme outliers for each of the passenger classes described by the categorical variable, Pclass. If, for example, you want to know the values of the transformed variable Fare corresponding to the whiskers (fences) of the boxplot on the left so that you can then determine the outliers located beyond those whiskers, it would be convenient that these values appear when you pass the mouse near that boxplot, as in Figure 16.2:

Figure 16.2 – Main labels...

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