I have the following dataframe:

pp  b          pp   b
5   0.001464    6   0.001853
5   0.001459    6   0.001843

Is there a way to combine columns with the same name? I just want this as output:

pp  b         
5   0.001464    
5   0.001459    
6   0.001853
6   0.001843
up vote 3 down vote accepted

Try groupby with axis=1

df.groupby(df.columns.values, axis=1).agg(lambda x: x.values.tolist()).sum().apply(pd.Series).T.sort_values('pp')
Out[320]: 
          b   pp
0  0.001464  5.0
2  0.001459  5.0
1  0.001853  6.0
3  0.001843  6.0

A fun way with wide_to_long

s=pd.Series(df.columns)
df.columns=df.columns+s.groupby(s).cumcount().astype(str)

pd.wide_to_long(df.reset_index(),stubnames=['pp','b'],i='index',j='drop',suffix='\d+')
Out[342]: 
            pp         b
index drop              
0     0      5  0.001464
1     0      5  0.001459
0     1      6  0.001853
1     1      6  0.001843
  • thanks @Wen, your soln works. can you tell me what is the groupby and agg part doing? thanks! – user308827 Apr 29 at 3:36
  • 1
    @user308827 that part is groupby the columns , same column we concat the value into a list , then we juts need to flatten the list , we yield the result – Wen Apr 29 at 4:51

Let's use melt, cumcount and unstack:

dm = df.melt()
dm.set_index(['variable',dm.groupby('variable').cumcount()])\
  .sort_index()['value'].unstack(0)

Output:

variable         b   pp
0         0.001464  5.0
1         0.001459  5.0
2         0.001853  6.0
3         0.001843  6.0
  • thanks! I get this error: *** TypeError: '<' not supported between instances of 'str' and 'int', not sure yet if this is because the sample dataframe is different from my actual dataframe or something else – user308827 Apr 29 at 2:56

This is possible using numpy:

res = pd.DataFrame({'pp': df['pp'].values.T.ravel(),
                    'b': df['b'].values.T.ravel()})

print(res)

          b  pp
0  0.001464   5
1  0.001459   5
2  0.001853   6
3  0.001843   6

Or without referencing specific columns explicitly:

res = pd.DataFrame({i: df[i].values.T.ravel() for i in set(df.columns)})

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