I have a dataframe that looks like

stock  date         type1 type2 volume_A qtit_A volume_B qtit_B
'ABC' '2013-01-01'  1     2     1000     5      2500     6
'ABC' '2013-01-02'  1     3     4000     10     2500     0

and I would like to reshape it as follows:

stock  date         type1 type2 volume qtit type
'ABC' '2013-01-01'  1     2     1000     5   A    
'ABC' '2013-01-01'  1     2     2500     6   B   
'ABC' '2013-01-02'  1     3     4000     10  A 
'ABC' '2013-01-02'  1     3     2500     0   B   

where you can see that the columns ['volume_A','qtit_A','volume_B','qtit_B'] are broken down in ['volume','qtit'] with a type indicator to remember which type of volume/price we are looking at.

I am struggling to have that done in Pandas in a clean way (using melt or stack() for instance)

Any ideas? Thanks!

up vote 2 down vote accepted

If you set ['date','stock','type1','type2'] as the index, then you can split the remaining column labels on '_', create a MultiIndex from these tuples, and then move the A,B labels into the index using stack. reset_index then produces the desired result by moving the index levels back into columns.

import pandas as pd

df = pd.DataFrame({'date': ['2013-01-01', '2013-01-02'],
 'qtit_A': [5, 10],
 'qtit_B': [6, 0],
 'stock': ['ABC', 'ABC'],
 'type1': [1, 1],
 'type2': [2, 3],
 'volume_A': [1000, 4000],
 'volume_B': [2500, 2500]})

df = df.set_index(['date','stock','type1','type2'])
df.columns = pd.MultiIndex.from_tuples([col.split('_', 1) for col in df.columns])
result = df.stack(level=1).reset_index()
result = result.rename(columns={'level_4':'type'})
print(result)

yields:

         date stock  type1  type2 type  qtit  volume
0  2013-01-01   ABC      1      2    A     5    1000
1  2013-01-01   ABC      1      2    B     6    2500
2  2013-01-02   ABC      1      3    A    10    4000
3  2013-01-02   ABC      1      3    B     0    2500
pd.lreshape(df.assign(type_A=['A']*len(df), type_B=['B']*len(df)), 
            {'volume': ['volume_A', 'volume_B'], 
             'qtit': ['qtit_A', 'qtit_B'], 
             'type': ['type_A', 'type_B']})
Out: 
           date  stock  type1  type2  qtit type  volume
0  '2013-01-01'  'ABC'      1      2     5    A    1000
1  '2013-01-02'  'ABC'      1      3    10    A    4000
2  '2013-01-01'  'ABC'      1      2     6    B    2500
3  '2013-01-02'  'ABC'      1      3     0    B    2500

Assigning two new columns for type may not be necessary considering the output is ordered based on the order of the lists.

  • 1
    thanks ayhan but what the hell is lreshape??? :D where did you find about it – ℕʘʘḆḽḘ Aug 15 '16 at 13:01
  • 2
    I think unutbu found it :) (see the answer here). I first saw it in one of jezrael's answers. You can type pd.lreshape? for limited docs. – user2285236 Aug 15 '16 at 13:03
  • 1
    Well, I've used it a couple of times without a problem but of course I cannot guarantee that it doesn't contain any bugs. :) – user2285236 Aug 15 '16 at 13:07
  • 1
    Assign is for adding columns. Without them, you wouldn't have a column for type. They act as auxiliary columns so that in the end you can combine them into 'type': ['type_A', 'type_B']. – user2285236 Aug 15 '16 at 13:13
  • 1
    thanks buddy but this time I think unutbu's proposal is the safest bet! – ℕʘʘḆḽḘ Aug 15 '16 at 13:28

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