129

I have a massive DataFrame, and I was wondering if there was a short (one or two liner) way to get 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, 2015 at 15:02
  • 3
    The extra indexing with df1.notnull() is not necessary since count ignores null values anyway.
    – Alex Riley
    Apr 30, 2015 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, 2016 at 6:36

4 Answers 4

209

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.

6
  • I dont believe that works if the column has strings
    – DISC-O
    Jul 15, 2021 at 19:30
  • @DISC-O: just tried and it works for me (pandas version 1.2.1). E.g. df = pd.DataFrame({"a": ["x", np.nan, "z"]}) then df.count() produces the expected value 2. Do you have an example where this method does not work?
    – Alex Riley
    Jul 15, 2021 at 21:01
  • 2
    yes, if you manually create a df and place the np.nan it could work I guess. But that is not how you typically create your columns. One often used way, by me at least is: df['C'] =np.where(df.A>df.B,'some text',np.nan). This turns the np.nan into 'nan' and is no longer recognized as nan.
    – DISC-O
    Jul 17, 2021 at 0:03
  • I have a column with None values and this doesnt work
    – West
    Nov 10, 2022 at 9:20
  • @DISC-O (very late reply, apologies) - in that example you don't end up with any NaN values in the column (you have a column of string values) so the .count() method works as intended. Some NumPy methods, especially with strings, don't fit well with pandas and that's one of them so it's better to use pandas methods like df["C"] = (df.A > df.B).map({True: 'some text', False: np.nan}) instead.
    – Alex Riley
    Nov 10, 2022 at 11:32
8

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

np.sum(df.count())
4

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()
4

You can use methods notna / notnull and sum:

df.notna().sum()

Output:

a    3
b    2
d    1
dtype: int64

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