3

В таблице, значения столбца представлены строками:

df = pd.DataFrame({ 'a':['female, female, female, female, male, female', 'female, male, female, female', 'female, female, female', 'male, male, male']})

       a
0   female, female, female, female, male, female
1   female, male, female, female
2   female, female, female
3   male, male, male

Моё решение с использованием метода set():

f = lambda x: [set(y) for y in x.split('; ')]
df['b'] = df['a'].apply(f)

Даёт следующий результат:

      a                                              b
0   female, female, female, female, male, female    [{m, , e, ,, a, f, l}]
1   female, male, female, female                    [{m, , e, ,, a, f, l}]
2   female, female, female                          [{m, , e, ,, a, f, l}]
3   male, male, male                                [{m, , e, ,, a, l}]

А нужно:

     a                                               b
0   female, female, female, female, male, female    female, male
1   female, male, female, female                    female, male
2   female, female, female                          female
3   male, male, male                                male

1 ответ 1

4

Вариант 1:

df["res"] = [", ".join(set(x.split(", "))) for x in df["a"]]

Вариант 2:

df["res"] = df["a"].str.split(", ").apply(lambda x: ", ".join(set(x)))

Вариант 3:

df["res"] = df["a"].str.split(", ").explode().groupby(level=0).apply(lambda x: ", ".join(set(x)))

Результат:

In [93]: df
Out[93]:
                                              a           res
0  female, female, female, female, male, female  male, female
1                  female, male, female, female  male, female
2                        female, female, female        female
3                              male, male, male          male

Ваш ответ

By clicking “Отправить ответ”, you agree to our terms of service and acknowledge you have read our privacy policy.

Всё ещё ищете ответ? Посмотрите другие вопросы с метками или задайте свой вопрос.