12

Screenshot of the query below:

Groupby Query

Is there a way to easily drop the upper level column index and a have a single level with labels such as points_prev_amax, points_prev_amin, gf_prev_amax, gf_prev_amin and so on?

2 Answers 2

14

Use list comprehension for set new column names:

df.columns = df.columns.map('_'.join)

Or:

df.columns = ['_'.join(col) for col in df.columns]

Sample:

df = pd.DataFrame({'A':[1,2,2,1],
                   'B':[4,5,6,4],
                   'C':[7,8,9,1],
                   'D':[1,3,5,9]})

print (df)
   A  B  C  D
0  1  4  7  1
1  2  5  8  3
2  2  6  9  5
3  1  4  1  9

df = df.groupby('A').agg([max, min])

df.columns = df.columns.map('_'.join)
print (df)
   B_max  B_min  C_max  C_min  D_max  D_min
A                                          
1      4      4      7      1      9      1
2      6      5      9      8      5      3

print (['_'.join(col) for col in df.columns])
['B_max', 'B_min', 'C_max', 'C_min', 'D_max', 'D_min']

df.columns = ['_'.join(col) for col in df.columns]
print (df)
   B_max  B_min  C_max  C_min  D_max  D_min
A                                          
1      4      4      7      1      9      1
2      6      5      9      8      5      3

If need prefix simple swap items of tuples:

df.columns = ['_'.join((col[1], col[0])) for col in df.columns]
print (df)
   max_B  min_B  max_C  min_C  max_D  min_D
A                                          
1      4      4      7      1      9      1
2      6      5      9      8      5      3

Another solution:

df.columns = ['{}_{}'.format(i[1], i[0]) for i in df.columns]
print (df)
   max_B  min_B  max_C  min_C  max_D  min_D
A                                          
1      4      4      7      1      9      1
2      6      5      9      8      5      3

If len of columns is big (10^6), then rather use to_series and str.join:

df.columns = df.columns.to_series().str.join('_')
2

Using @jezrael's setup

df = pd.DataFrame({'A':[1,2,2,1],
                   'B':[4,5,6,4],
                   'C':[7,8,9,1],
                   'D':[1,3,5,9]})

df = df.groupby('A').agg([max, min])

Assign new columns with

from itertools import starmap

def flat(midx, sep=''):
    fstr = sep.join(['{}'] * midx.nlevels)
    return pd.Index(starmap(fstr.format, midx))

df.columns = flat(df.columns, '_')

df

enter image description here

7
  • @jezrael This is a new one I came up with today ;-) comprehension is still slightly faster.
    – piRSquared
    Sep 9, 2016 at 8:39
  • I think there is one exception - if len of columns is very big (few 10^6), then this is faster. df.columns = df.columns.to_series().str.join('_'). But I think practically len of columns is small, so list comprehension is better.
    – jezrael
    Sep 9, 2016 at 8:43
  • @jezrael it is also faster when there are more levels. pd.MultiIndex.from_product([list('ABCD'), range(4), list('wxyz')])
    – piRSquared
    Sep 9, 2016 at 8:46
  • Btw, I am surprised then no function for this.
    – jezrael
    Sep 9, 2016 at 8:48
  • @jezrael me too. One of us should start contributing to pandas :-)
    – piRSquared
    Sep 9, 2016 at 8:49

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.