1

I have this DataFrame:

C1   C2
A    2:3:1:7
B    2:1:4:3
C    2:1:1:1

I need to sort the integers in C2, keeping the colons.

The output should look like this:

C1   C2
A    1:2:3:7
B    1:2:3:4
C    1:1:1:2

The example above is for understanding, this is the output I have so far:

{'_c1': {0: 'A', 1: 'B', 2: 'C', 3: 'D', 4: 'E'}, '_c2': {0: '2:3:7:9:1:8:6:1', 1: '5:1:3:9:4:6:8', 2: '6:7:5:0:9', 3: '3:1:5:5:2:7', 4: '1:2:8:3:8:9:7:3:4:6:5:5:1:5'}}
0
2
df['C2'] = df['C2'].str.split(':').apply(lambda x: x.sort() or x).str.join(':')

Output:

>>> df
  C1       C2
0  A  1:2:3:7
1  B  1:2:3:4
2  C  1:1:1:2
7
  • 1
    df.assign(C2 = df.C2.str.split(':').map(sorted).str.join(':'))
    – sammywemmy
    Nov 23 '21 at 2:05
  • I'm getting this error: "Can only use .str accessor with string values!", but I already use astype str, do you have any suggestion? Nov 23 '21 at 2:17
  • Send me the output of print(df.head().to_dict()), please.
    – richardec
    Nov 23 '21 at 2:17
  • 1
    Give me one moment. Nov 23 '21 at 2:23
  • 1
    Try this code: df['_c2'] = df['_c2'].str.split(':').apply(lambda x: x.sort() or x).str.join(':')
    – richardec
    Nov 23 '21 at 2:25
2

No NaN's, you can use:

df['C2_new'] = [':'.join(sorted(x.split(':'))) for x in df['C2']]

Output:

  C1       C2   C2_new
0  A  2:3:1:7  1:2:3:7
1  B  2:1:4:3  1:2:3:4
2  C  2:1:1:1  1:1:1:2

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