panda dataframe remove constant column

I have a dataframe that may or may not have columns that are the same value. For example

``````    row    A    B
1      9    0
2      7    0
3      5    0
4      2    0
``````

I'd like to return just

``````   row    A
1      9
2      7
3      5
4      2
``````

Is there a simple way to identify if any of these columns exist and then remove them?

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I believe this option will be faster than the other answers here as it will traverse the data frame only once for the comparison and short-circuit if a non-unique value is found.

``````>>> df

0  1  2
0  1  9  0
1  2  7  0
2  3  7  0

>>> df.loc[:, (df != df.ix[0]).any()]

0  1
0  1  9
1  2  7
2  3  7
``````
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Aargh to: `<>`. –  Andy Hayden Nov 26 '13 at 7:12
@AndyHayden Pascal habits die hard. I've changed it. –  chthonicdaemon Nov 26 '13 at 9:55
+1 thanks for changing. This short circuits on the any, after it's already done the != comparison on every element, so DSM's solution will probably be more efficient... wonder if better short circuiting solution. –  Andy Hayden Nov 27 '13 at 7:09
In my tests, my solution is always faster than counting the unique elements, although the factor varies from 0.1 for a 10×10 DataFrame to around 0.5 for 10000×10. I think the memory you save by not calculating the full equality array trades off against the extra time involved in counting all the unique values (and maintaining a table of values already seen and so on). –  chthonicdaemon Nov 27 '13 at 7:24
Good point, take back the more efficient! Still wonder if way to short circuit the != after first difference it sees. –  Andy Hayden Nov 27 '13 at 7:33

Ignoring `NaN`s like usual, a column is constant if `nunique() == 1`. So:

``````>>> df
A  B  row
0  9  0    1
1  7  0    2
2  5  0    3
3  2  0    4
>>> df = df.loc[:,df.apply(pd.Series.nunique) != 1]
>>> df
A  row
0  9    1
1  7    2
2  5    3
3  2    4
``````
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