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I have a dataFrame in pandas and several of the columns have all null values. Is there a built in function which will let me remove those columns?

Thank you!

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1 Answer 1

Yes, dropna. See http://pandas.pydata.org/pandas-docs/stable/missing_data.html and the DataFrame.dropna docstring:

Definition: DataFrame.dropna(self, axis=0, how='any', thresh=None, subset=None)
Docstring:
Return object with labels on given axis omitted where alternately any
or all of the data are missing

Parameters
----------
axis : {0, 1}
how : {'any', 'all'}
    any : if any NA values are present, drop that label
    all : if all values are NA, drop that label
thresh : int, default None
    int value : require that many non-NA values
subset : array-like
    Labels along other axis to consider, e.g. if you are dropping rows
    these would be a list of columns to include

Returns
-------
dropped : DataFrame

The specific command to run would be:

df=df.dropna(axis=1,how='all')
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can you specify the 'dropna' value? for example could you drop rows that are all zeros? –  zach Oct 10 '12 at 19:15
3  
you could either define with the pandas io parsers that your NaN value in given input tabels is 0, OR, you could prepare your step like this: df[df==0] = np.nan ; df=df.dropna(axis=1,how='all') –  K.-Michael Aye Dec 11 '12 at 1:50
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