I have a really big DataFrame and I was wondering if there was short (one or two liner) way to get the a count of non-NaN entries in a DataFrame. I don't want to do this one column at a time as I have close to 1000 columns.

df1 = pd.DataFrame([(1,2,None),(None,4,None),(5,None,7),(5,None,None)], 
                    columns=['a','b','d'], index = ['A', 'B','C','D'])

    a   b   d
A   1   2 NaN
B NaN   4 NaN
C   5 NaN   7
D   5 NaN NaN


a: 3
b: 2
d: 1
  • 1
    df1[df1.notnull()].count() this seem to have worked – cryp Apr 30 '15 at 15:02
  • 3
    The extra indexing with df1.notnull() is not necessary since count ignores null values anyway. – Alex Riley Apr 30 '15 at 15:11
  • 1
    Unlike series.value_counts(..., dropna=False), there is no option on df.count() to directly get NA counts. – smci Nov 17 '16 at 6:36

The count() method returns the number of non-NaN values in each column:

>>> df1.count()
a    3
b    2
d    1
dtype: int64

Similarly, count(axis=1) returns the number of non-NaN values in each row.


If you want to sum the total count values which are not NAN, one can do;


In case you are dealing with empty strings you may want to count them as NA as well :

df.replace('', np.nan).count()

or if you also want to remove blank strings :

df.replace(r'^\s*$', np.nan, regex=True).count()

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