1

I have a dataframe which looks like follows,

 df.head()

Sym P1  P2  P3  P4  P5  B1  B2  B3  B4  B5
AA  7.86    8.86    9.86    10.86   11.86   0.7768  1.7768  2.7768  3.7768  4.7768
AA  7.86    8.86    9.86    10.86   11.86   0.8664  1.8664  2.8664  3.8664  4.8664
AA  7.86    8.86    9.86    10.86   11.86   0.874534    1.874534    2.874534    3.874534    4.874534
BB  5.8 6.8 7.8 8.8 9.8 7.42    8.42    9.42    10.42   11.42
BB  5.8 6.8 7.8 8.8 9.8 0.1434  1.1434  2.1434  3.1434  4.1434
CC  0.421   1.421   2.421   3.421   4.421   6.78    7.78    8.78    9.78    10.78
CC  0.421   1.421   2.421   3.421   4.421   8.43    9.43    10.43   11.43   12.43
VV  3.25    4.25    5.25    6.25    7.25    0.97    1.97    2.97    3.97    4.97
VV  3.25    4.25    5.25    6.25    7.25    0.2 1.2 2.2 3.2 4.2
VV  3.25    4.25    5.25    6.25    7.25    0.45    1.45    2.45    3.45    4.45
VV  3.25    4.25    5.25    6.25    7.25    0.78    1.78    2.78    3.78    4.78

And what I am aiming is to get the mean of the second half(Columns Starting with name B1..B5) of the data frame based on the unique values in column 'sym' and make a new dataframe which looks as follows.

Sym P1  P2  P3  P4  P5  B1  B2  B3  B4  B5
AA  7.86    8.86    9.86    10.86   11.86   0.8664  1.8664  2.8664  3.8664  4.8664
BB  5.8 6.8 7.8 8.8 9.8 3.7817  4.7817  5.7817  6.7817  7.7817
CC  0.421   1.421   2.421   3.421   4.421   7.605   8.605   9.605   10.605  11.605
VV  3.25    4.25    5.25    6.25    7.25    0.615   1.615   2.615   3.615   4.615

I tried to used groupby for that to get the unique sym .Would be great if someone could suggest a simple way to proceed Thank you

1 Answer 1

1

Use filter and groupby

transformed = df.filter(like='B').groupby(df.Sym).transform(np.mean)
df.loc[:, df.columns.str.contains('B')] = transformed
df

enter image description here

0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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