83

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

Output:

a: 3
b: 2
d: 1
3
  • 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
146

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.

0
2

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

np.sum(df.count())
1

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()

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.