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Polars Cookbook

You're reading from   Polars Cookbook Over 60 practical recipes to transform, manipulate, and analyze your data using Python Polars 1.x

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Product type Paperback
Published in Aug 2024
Publisher Packt
ISBN-13 9781805121152
Length 394 pages
Edition 1st Edition
Languages
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Author (1):
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Yuki Kakegawa Yuki Kakegawa
Author Profile Icon Yuki Kakegawa
Yuki Kakegawa
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Table of Contents (15) Chapters Close

Preface 1. Chapter 1: Getting Started with Python Polars FREE CHAPTER 2. Chapter 2: Reading and Writing Files 3. Chapter 3: An Introduction to Data Analysis in Python Polars 4. Chapter 4: Data Transformation Techniques 5. Chapter 5: Handling Missing Data 6. Chapter 6: Performing String Manipulations 7. Chapter 7: Working with Nested Data Structures 8. Chapter 8: Reshaping and Tidying Data 9. Chapter 9: Time Series Analysis 10. Chapter 10: Interoperability with Other Python Libraries 11. Chapter 11: Working with Common Cloud Data Sources 12. Chapter 12: Testing and Debugging in Polars 13. Index 14. Other Books You May Enjoy

Applying logic to each element in lists

One of Polars’s strengths is the ability to work well with nested structures. It not only helps with aggregations, as well as selecting and accessing elements in lists but also helps you apply simple to complex logic to each element in a list. This gives you the flexibility and power to transform your data in an efficient manner utilizing Polars’s optimizations.

In this recipe, we’ll cover how you can apply transformation logic to each element in a list.

Getting ready

We’ll be using a pre-aggregated DataFrame for this recipe. We will aggregate views, likes, and channel titles by trending date:

agg_df = (
    df
    .group_by('trending_date')
    .agg('views', 'likes', 'channel_title')
)
agg_df.head()

The preceding code will return the following output:

Figure 7.20 – A DataFrame with views and channel_title aggregated into lists

Figure 7.20 – A DataFrame...

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