10

I would like to melt several groups of columns of a dataframe into multiple target columns. Similar to questions Python Pandas Melt Groups of Initial Columns Into Multiple Target Columns and pandas dataframe reshaping/stacking of multiple value variables into seperate columns. However I need to do this explicitly by column name, rather than by index location.

import pandas as pd
df = pd.DataFrame([('a','b','c',1,2,3,'aa','bb','cc'), ('d', 'e', 'f', 4, 5, 6, 'dd', 'ee', 'ff')],
                  columns=['a_1', 'a_2', 'a_3','b_1', 'b_2', 'b_3','c_1', 'c_2', 'c_3'])
df

Original Dataframe:

    id   a_1  a_2  a_3  b_1  b_2  b_3  c_1  c_2  c_3
0   101   a    b    c    1    2    3    aa   bb   cc
1   102   d    e    f    4    5    6    dd   ee   ff

Target Dataframe

     id   a   b   c
0   101   a   1   aa
1   101   b   2   bb
2   101   c   3   cc
3   102   d   4   dd
4   102   e   5   ee
5   102   f   6   ff

Advice is much appreciated on an approach to this.

  • There is a more intuitive solution that uses pd.wide_to_long function which is built exactly for this situation. See my answer below. – Ted Petrou Aug 23 '17 at 1:26
8

There is a more efficient way to do these type of problems that involve melting multiple different sets of columns. pd.wide_to_long is built for these exact situations.

pd.wide_to_long(df, stubnames=['a', 'b', 'c'], i='id', j='dropme', sep='_')\
  .reset_index()\
  .drop('dropme', axis=1)\
  .sort_values('id')

    id  a  b   c
0  101  a  1  aa
2  101  b  2  bb
4  101  c  3  cc
1  102  d  4  dd
3  102  e  5  ee
5  102  f  6  ff
9

You can convert the column names to multi index based on the columns pattern and then stack at a particular level depending on the result you need:

import pandas as pd
df.set_index('id', inplace=True)
df.columns = pd.MultiIndex.from_tuples(tuple(df.columns.str.split("_")))
df.stack(level = 1).reset_index(level = 1, drop = True).reset_index()

# id    a   b    c      
#101    a   1   aa
#101    b   2   bb
#101    c   3   cc
#102    d   4   dd
#102    e   5   ee
#102    f   6   ff
  • 1
    df.columns = df.columns.str.split('_', expand=True) also works – Happy001 Aug 10 '16 at 3:08
2
cols = df.columns.difference(['id'])

pd.lreshape(df, cols.groupby(cols.str.split('_').str[0])).sort_values('id')
Out: 
    id  a   c  b
0  101  a  aa  1
2  101  b  bb  2
4  101  c  cc  3
1  102  d  dd  4
3  102  e  ee  5
5  102  f  ff  6
  • You explain why this " cols.groupby(cols.str.split('_').str[0]) " returns a dict? – Merlin Aug 10 '16 at 16:48
  • Index.groupby returns a dict. Probably because doing arithmetic on the index is not a common use case and generally we need the groups instead. – ayhan Aug 10 '16 at 17:02
  • It was unexpected behavior, thats why I ask. – Merlin Aug 10 '16 at 17:11

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