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Lære Multiple Conditions | s1
Track DA with Py - Data Manipulation with pandas
Sektion 1. Kapitel 22
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bookMultiple Conditions

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Sometimes we need several conditions to be applied. For instance, we want to extract data on hazardous asteroids with a small minimum diameter. But how do we write two conditions simultaneously? Look at the table:

The example was included to help you deal with this topic. This code extracts data on large and hazardous asteroids, where the minimum estimated diameter is larger than 3.5 kilometers and 'hazardous' is True.

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import pandas as pd data = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/4bf24830-59ba-4418-969b-aaf8117d522e/planet', index_col = 0) data_extracted = data.loc[(data['est_diameter_min'] > 3.5) & (data['hazardous'] == True)] print(data_extracted)
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In the output, you can see all the rows that satisfy these two conditions:

  • est_diameter_min > 3.5;
  • hazardous == True.

Look at the following example with the or statement. This code will extract data on extremely small or large asteroids with a minimum estimated diameter less than 0.0005 kilometers and a maximum estimated diameter larger than 20 kilometers:

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import pandas as pd data = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/4bf24830-59ba-4418-969b-aaf8117d522e/planet', index_col = 0) data_extracted = data.loc[(data['est_diameter_min'] < 0.0005) | (data['est_diameter_max'] > 20)] print(data_extracted)
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In the output, you can see all the rows that satisfy one of these two conditions:

  • est_diameter_min < 0.0005;
  • est_diameter_max > 20.
Opgave

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You are given a dataset containing information about asteroids.

  1. Your task is to extract data on very bright and not hazardous asteroids, where:

    • 'absolute_magnitude' \ge 25;
    • 'hazardous' == False.
  2. Use the .loc[] attribute with both conditions connected by the & operator (remember to wrap each condition in parentheses).

Finally, output 5 random rows from the resulting DataFrame using .sample(5).

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Sektion 1. Kapitel 22
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