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Apprendre Challenge: Using iloc[] | Section
Data Manipulation with pandas
Section 1. Chapitre 10
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bookChallenge: Using iloc[]

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The DataFrame you are working with:

You can also use negative indexing to access rows in the DataFrame. Negative indexing starts from the end of the DataFrame: index -1 points to the last row, -2 to the second to last, and so on.

To access the seventh row (which refers to Latvia), you can use either index 6 or -1.

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import pandas countries_data = {'country' : ['Thailand', 'Philippines', 'Monaco', 'Malta', 'Sweden', 'Paraguay', 'Latvia'], 'continent' : ['Asia', 'Asia', 'Europe', 'Europe', 'Europe', 'South America', 'Europe'], 'capital':['Bangkok', 'Manila', 'Monaco', 'Valletta', 'Stockholm', 'Asuncion', 'Riga']} countries = pandas.DataFrame(countries_data) # Accessing to the seventh row using negative indexing print(countries.iloc[-1])
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Running the above code will return the row highlighted in the image below:

Tâche

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You are given a DataFrame named audi_cars.

Task Table
  1. Select the entire row (all columns) for the 'Audi A1' model from the year 2017 and store it in audi_A1_2017.
  2. Do the same for the 'Audi A1' model from the year 2016 and store it in audi_A1_2016.
  3. Finally, select the 'Audi A3' model and store it in audi_A3.

Solution

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Section 1. Chapitre 10
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