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学ぶ Finding Null Values | Analyzing the Data
Introduction to Pandas
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bookFinding Null Values

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DataFrames often contain missing values, represented as None or NaN. When working with DataFrames, it's essential to identify these missing values because they can distort calculations, lead to inaccurate analyses, and compromise the reliability of results.

Addressing them ensures data integrity and improves the performance of tasks like statistical analysis and machine learning. For this purpose, pandas offers specific methods.

The first of these is isna(), which returns a boolean DataFrame. In this context, a True value indicates a missing value within the DataFrame, while a False value suggests the value is present.

For clarity, apply this method to the animals DataFrame. The isna() method returns a DataFrame of True/False values, where each True indicates a missing value in the animals DataFrame.

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import pandas as pd import numpy as np animals_data = {'animal': [np.nan, 'Dog', np.nan, 'Cat','Parrot', None], 'name': ['Dolly', None, 'Erin', 'Kelly', None, 'Odie']} animals = pd.DataFrame(animals_data) # Find missing values missing_values = animals.isna() print(missing_values)
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The second method is isnull(). It behaves identically to the previous one, with no discernible difference between them.

タスク

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You are given a DataFrame named wine_data.

  • Retrieve the missing values in this DataFrame and store the result in the missing_values variable.

解答

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