8

Suppose I have DataFrame df:

a b c
v f 3|4|5
v 2 6
v f 4|5

I'd like to produce this df:

a b c
v f 3
v f 4
v f 5
v 2 6
v f 4
v f 5

I know how to make this transformation in R, using tidyr package.

Is there an easy way of doing this in pandas?

2 Answers 2

2

You could:

import numpy as np

df = df.set_index(['a', 'b'])
df = df.astype(str) + '| ' # There's a space ' ' to match the replace later
df = df.c.str.split('|', expand=True).stack().reset_index(-1, drop=True).replace(' ', np.nan).dropna().reset_index() # and replace also has a space ' '

to get:

   a  b  0
0  v  f  3
1  v  f  4
2  v  f  5
3  v  2  6
4  v  f  4
5  v  f  5
2
  • I think that np means numpy. Okay, but it doesn't work. It looks my dataframe couldn't replace ' ' for na. Feb 3, 2016 at 1:32
  • Yep, np is for numpy. There are spaces in both the + ' ' and the .replace(' ', np.nan) parts.
    – Stefan
    Feb 3, 2016 at 1:34
1

Option 1

In [3404]: (df.set_index(['a', 'b'])['c']
              .str.split('|', expand=True).stack()
              .reset_index(name='c').drop('level_2', 1))
Out[3404]:
   a  b  c
0  v  f  3
1  v  f  4
2  v  f  5
3  v  2  6
4  v  f  4
5  v  f  5

Option 2 Using repeat and loc

In [3503]: s = df.c.str.split('|')

In [3504]: df.loc[df.index.repeat(s.str.len())].assign(c=np.concatenate(s))
Out[3504]:
   a  b  c
0  v  f  3
0  v  f  4
0  v  f  5
1  v  2  6
2  v  f  4
2  v  f  5

Details

In [3505]: s
Out[3505]:
0    [3, 4, 5]
1          [6]
2       [4, 5]
Name: c, dtype: object

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