11

I have such DataFrame:

df = pd.DataFrame(data={
    'col0': [11, 22,1, 5]
    'col1': ['aa:a:aaa', 'a:a', 'a', 'a:aa:a:aaa'],
    'col2': ["foo", "foo", "foobar", "bar"],
    'col3': [True, False, True, False],
    'col4': ['elo', 'foo', 'bar', 'dupa']})

I want to get length of the list after split on ":" in col1, then I want to overwrite the values if length > 2 OR not overwrite the values if length <= 2.

Ideally, in one line as fast as possible.

Currently, I try but it returns ValueError.

df[['col1', 'col2', 'col3']] = df.loc[df['col1'].str.split(":").apply(len) > 2], ("", "", False), df[['col1', 'col2', 'col3']])

EDIT: condition on col1. EDIT2: thank you for all the great and quickly provided answers. amazing! EDIT3: timing on 10^6 rows:

@ansev 3.2657s

@jezrael 0.8922s

@anky_91 1.9511s

  • Is the condition on col2 or col1? – anishtain4 Jan 20 at 14:48
  • I do apologize for the mistake. It is col1. – NullByte Jan 20 at 14:58
8

Use Series.str.count, add 1, compare by Series.gt and assign list to filtered columns in list:

df.loc[df['col1'].str.count(":").add(1).gt(2), ['col1','col2','col3']] = ["", "", False]
print (df)
   col0 col1    col2   col3  col4
0    11               False   elo
1    22  a:a     foo  False   foo
2     1    a  foobar   True   bar
3     5               False  dupa
  • 2
    This is the best answer as it doesn't store a temporary split, but why not using gt(1) instead of adding 1 and gt(2)? – anishtain4 Jan 20 at 15:02
  • @anishtain4 - yop, agree – jezrael Jan 20 at 15:03
9

You need series.str.len() after splitting to determining the length of the list , then you can compare and using .loc[] , assign the the list wherever condition matches:

df.loc[df['col1'].str.split(":").str.len()>2,['col1','col2','col3']]=["", "", False]
print(df)

   col0 col1    col2   col3  col4
0    11               False   elo
1    22  a:a     foo  False   foo
2     1    a  foobar   True   bar
3     5               False  dupa
5

Another approach is Series.str.split with expand = True and DataFrame.count with axis=1.

df.loc[df['col1'].str.split(":",expand = True).count(axis=1).gt(2),['col1','col2','col3']]=["", "", False]
print(df)
   col0 col1    col2   col3  col4
0    11               False   elo
1    22  a:a     foo  False   foo
2     1    a  foobar   True   bar
3     5               False  dupa

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