0

Sorry if this question has been already asked. I cant seem to find the answer on internet.

I have a DF that looks like this:

Positions=pd.DataFrame( {'position':rateQualityOutTrim['position'].unique() })
    Positions
                    position
0       CITI_52299G66_201210
1       CITI_52299G66_201210
2       CITI_52299G66_202374
3       CITI_52299G66_202734
4       CITI_52299G66_204130
5       CITI_52299G66_204685
6       CITI_52299G66_205140
7       CITI_52299G66_206425

new=Positions['position'].str.split(pat="_", n=2, expand=False)

new
0         [CITI, 52299G66, 201210]
1         [CITI, 52299G66, 201210]
2         [CITI, 52299G66, 202374]
3         [CITI, 52299G66, 202734]
4         [CITI, 52299G66, 204130]
5         [CITI, 52299G66, 204685]

I am looking to extract each element separately.

I have used this:

Positions.position.apply(lambda x: x.split("_")[0])
0         CITI
1         CITI
2         CITI
3         CITI

Positions.position.apply(lambda x: x.split("_")[-1])
0        201210     
1        201210
2        202374
3        202734
4        204130
5        204685

The middle element i struggle to extract it. Any help is welcome. Thank you

  • Positions['position'].str.split("_").str[1] ? – anky_91 Mar 15 at 10:14
  • it did not work iam afraid it says "list index out of range" – SBad Mar 15 at 10:17
3

Use indexing by str:

df=Positions['position'].str.split(pat="_")
print (df)

0    [CITI, 52299G66, 201210]
1    [CITI, 52299G66, 201210]
2    [CITI, 52299G66, 202374]
3    [CITI, 52299G66, 202734]
4    [CITI, 52299G66, 204130]
5    [CITI, 52299G66, 204685]
6    [CITI, 52299G66, 205140]
7    [CITI, 52299G66, 206425]
Name: position, dtype: object

print (df.str[0])
print (df.str[1])
print (df.str[2])

Or create new DataFrame:

df = Positions['position'].str.split(pat="_", expand=True)
print (df)
      0         1       2
0  CITI  52299G66  201210
1  CITI  52299G66  201210
2  CITI  52299G66  202374
3  CITI  52299G66  202734
4  CITI  52299G66  204130
5  CITI  52299G66  204685
6  CITI  52299G66  205140
7  CITI  52299G66  206425

And if necessary select each column:

print (df[0])
print (df[1])
print (df[2])
  • Creating a new DF is even better. Thank you so much ... PS: it seems that fourth column has been created with 'None'? 1 CITI 52299G66 201210 None 2 CITI 52299G66 202374 None 3 CITI 52299G66 202734 None 4 CITI 52299G66 204130 None 5 CITI 52299G66 204685 None 6 CITI 52299G66 205140 None – SBad Mar 15 at 10:20
  • @SBad - hmm, maybe in some data are 3 times _ – jezrael Mar 15 at 10:21
  • 1
    Sure i ll check that but regardless your proposition works fine. Thank you Sir! – SBad Mar 15 at 10:23

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.