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Is there a shorter way of dropping a column MultiIndex level (in my case, basic_amt) except transposing it twice?

In [704]: test
Out[704]: 
           basic_amt               
Faculty          NSW  QLD  VIC  All
All                1    1    2    4
Full Time          0    1    0    1
Part Time          1    0    2    3

In [705]: test.reset_index(level=0, drop=True)
Out[705]: 
         basic_amt               
Faculty        NSW  QLD  VIC  All
0                1    1    2    4
1                0    1    0    1
2                1    0    2    3

In [711]: test.transpose().reset_index(level=0, drop=True).transpose()
Out[711]: 
Faculty    NSW  QLD  VIC  All
All          1    1    2    4
Full Time    0    1    0    1
Part Time    1    0    2    3
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1 Answer 1

up vote 8 down vote accepted

How about simply reassigning df.columns:

levels = df.columns.levels
labels = df.columns.labels
df.columns = levels[1][labels[1]]

For example:

import pandas as pd

columns = pd.MultiIndex.from_arrays([['basic_amt']*4,
                                     ['NSW','QLD','VIC','All']])
index = pd.Index(['All', 'Full Time', 'Part Time'], name = 'Faculty')
df = pd.DataFrame([(1,1,2,4),
                   (0,01,0,1),
                   (1,0,2,3)])
df.columns = columns
df.index = index

Before:

print(df)

           basic_amt               
                 NSW  QLD  VIC  All
Faculty                            
All                1    1    2    4
Full Time          0    1    0    1
Part Time          1    0    2    3

After:

levels = df.columns.levels
labels = df.columns.labels
df.columns = levels[1][labels[1]]
print(df)

           NSW  QLD  VIC  All
Faculty                      
All          1    1    2    4
Full Time    0    1    0    1
Part Time    1    0    2    3
share|improve this answer
    
That won't work if one has more than one category in MultiIndex level=0, and this (as per your example) also messes the order of columns. Can you think of a more general (and fail proof) solution? –  dmvianna Jan 9 '13 at 23:28
    
I just tried it and it seems to work find for me. Can you give an example of the kind of DataFrame you are working with? –  unutbu Jan 10 '13 at 1:38
    
df = pd.DataFrame(np.array(np.mat('0 1 0 1; 1 0 2 3; 1 1 2 4'))) –  dmvianna Jan 10 '13 at 4:28
    
arrays = [['a','a','b','b'],['one','two','one','two']] && tuples = zip(*arrays) && index = pd.MultiIndex.from_tuples(tuples, names=['First','Second']) && df.columns = index df.index = index[:3] –  dmvianna Jan 10 '13 at 4:29
1  
I agree it is not much shorter, but reassigning df.columns is about 4 times faster than df.transpose().reset_index().transpose. –  unutbu Jan 10 '13 at 22:54

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