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Pandas 1.x Cookbook

You're reading from   Pandas 1.x Cookbook Practical recipes for scientific computing, time series analysis, and exploratory data analysis using Python

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Product type Paperback
Published in Feb 2020
Publisher Packt
ISBN-13 9781839213106
Length 626 pages
Edition 2nd Edition
Languages
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Authors (2):
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Theodore Petrou Theodore Petrou
Author Profile Icon Theodore Petrou
Theodore Petrou
Matthew Harrison Matthew Harrison
Author Profile Icon Matthew Harrison
Matthew Harrison
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Toc

Table of Contents (17) Chapters Close

Preface 1. Pandas Foundations 2. Essential DataFrame Operations FREE CHAPTER 3. Creating and Persisting DataFrames 4. Beginning Data Analysis 5. Exploratory Data Analysis 6. Selecting Subsets of Data 7. Filtering Rows 8. Index Alignment 9. Grouping for Aggregation, Filtration, and Transformation 10. Restructuring Data into a Tidy Form 11. Combining Pandas Objects 12. Time Series Analysis 13. Visualization with Matplotlib, Pandas, and Seaborn 14. Debugging and Testing Pandas 15. Other Books You May Enjoy
16. Index

Comparing continuous values across categories

The previous sections discussed looking at a single column. This section will show how to compare continuous variables in different categories. We will look at mileage numbers in different brands: Ford, Honda, Tesla, and BMW.

How to do it…

  1. Make a mask for the brands we want and then use a group by operation to look at the mean and standard deviation for the city08 column for each group of cars:
    >>> mask = fueleco.make.isin(
    ...     ["Ford", "Honda", "Tesla", "BMW"]
    ... )
    >>> fueleco[mask].groupby("make").city08.agg(
    ...     ["mean", "std"]
    ... )
                mean       std
    make
    BMW    17.817377  7.372907
    Ford   16.853803  6.701029
    Honda  24.372973  9.154064
    Tesla  92.826087  5.538970
    
  2. Visualize the city08 values for each make with seaborn:
    >>> g = sns.catplot(
    ...     x="make", y=...
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