Suppose i have a column with values(not column name) L1 xyy, L2 yyy, L3 abc, now i want to group L1, L2 and L3 as L(or any other name also would do). Similarly i have other values like A1 xxx, A2 xxx, to be grouped form A and so on for other alphabets. How do i achieve this in pandas? I have L1, A1 and so on all in same column, and not different columns.

  • can you make a sample dataframe and an expected output? also is this in one column or all df columns – anky_91 Mar 14 at 11:45
  • Just one column. – Ganesh Jadhav Mar 14 at 16:32
  • check the below answer by jez. – anky_91 Mar 14 at 16:34
  • 1
    Yeah, that's what I wanted. – Ganesh Jadhav Mar 14 at 16:37
  • cool. for future reference future, please take a look at this – anky_91 Mar 14 at 16:38

Use indexing by str[0] for return first letter of column and then aggregate some function, e.g. sum:

df = pd.DataFrame({'col':['L1 xyy','L2 yyy','L3 abc','A1 xxx','A2 xxx'],
print (df)
      col  val
0  L1 xyy    2
1  L2 yyy    3
2  L3 abc    5
3  A1 xxx    1
4  A2 xxx    2

df1 = df.groupby(df['col'].str[0])['val'].sum().reset_index(name='new')
print (df1)
  col  new
0   A    3
1   L   10

If need new column by first value:

df['new'] = df['col'].str[0]
print (df)
      col  val new
0  L1 xyy    2   L
1  L2 yyy    3   L
2  L3 abc    5   L
3  A1 xxx    1   A
4  A2 xxx    2   A

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.