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Suppose that df is a pandas DataFrame object.

How do I drop all the columns of df that contain only None, empty strings, or white-space-only strings?

The criterion for dropping could be expressed as those columns where all the values yield True when fed to the following test function:

lambda x: (x is None) or not re.match('\S', str(x))
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would it be an option to loop through the columns and drop when the check is True? –  herrfz Feb 12 '13 at 20:20

2 Answers 2

You can use applymap to apply your function to the elements of the DataFrame:

In [19]: df = pd.DataFrame({'a': [None] * 4, 'b': list('abc') + [' '],
                            'c': [None] + list('bcd'), 'd': range(7, 11),
                            'e': [' '] * 4})

In [20]: df
Out[20]: 
      a  b     c   d  e
0  None  a  None   7   
1  None  b     b   8   
2  None  c     c   9   
3  None        d  10   

In [21]: to_drop = df.applymap(
                     lambda x: (x is None) or not re.match('\S', str(x))).all()

In [22]: df.drop(df.columns[to_drop], axis=1)
Out[22]: 
   b     c   d
0  a  None   7
1  b     b   8
2  c     c   9
3        d  10
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applymap was the key to getting the re.match function to work for me. It failed when using just apply –  Zelazny7 Feb 12 '13 at 22:06
1  
Actually I think the OP's question wants all rather than any. :) –  Andy Hayden Feb 12 '13 at 22:49
    
@AndyHayden ok I think your are right, I'll update the answer. Thanks –  bmu Feb 13 '13 at 7:22

I've got it mostly figured out below, but I'm not too familiar with RegEx in Python yet. This is the basic approach I would take:

Dummy Data:

In [1]: df
Out[1]:
      a  b  c
0  None     1
1     b     2
2     c  x  3
3     d     4
4     e  z  5

In [2]: df.to_dict()
Out[2]:
{'a': {0: None, 1: 'b', 2: 'c', 3: 'd', 4: 'e'},
 'b': {0: ' ', 1: ' ', 2: 'x', 3: ' ', 4: 'z'},
 'c': {0: 1, 1: 2, 2: 3, 3: 4, 4: 5}}

Apply a lambda testing for the conditions you want to drop:

In [3]: df.apply(lambda x: x.isin([None,""," "]))
Out[3]:
       a      b      c
0   True   True  False
1  False   True  False
2  False  False  False
3  False   True  False
4  False  False  False

Invoke the any() method which tests for True in any of the df columns

In [4]: df.apply(lambda x: x.isin([None,""," "])).any()
Out[4]:
a     True
b     True
c    False

Index df.columns with the boolean Series from above to get the columns you want to drop:

In [5]: drop_cols = df.columns[df.apply(lambda x: x.isin([None,""," "])).any()]

In [6]: drop_cols
Out[6]: Index([a, b], dtype=object)

Use the df.drop() method and pass the axis=1 option to operate on the columns:

In [7]: df.drop(drop_cols, axis=1)
Out[7]:
   c
0  1
1  2
2  3
3  4
4  5

Now if someone with more Pandas/RegEx experience can figure out that piece, I'd say you have a decent solution.

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Actually I think the OP's question wants all rather than any. :) It's funny because this is so nearly df.apply(all)... It's definitely worth learning regular expressions. –  Andy Hayden Feb 12 '13 at 22:51

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