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Its always the things that seem easy that bug me. I am trying to get a count of the number of non-null values of some variables in a Dataframe grouped by month and year. So I can do this which works fine

counts_by_month=df[variable1, variable2].groupby([lambda x: x.year,lambda x: x.month]).count()

But I REALLY want to know is how many of those values in each group are NaNs. So I want to count the Nans in each variable too so that I can calculate the percentage data missing in each group. I can not find a function to do this. or maybe I could get to the same end by counting the total items in the group. Then the NaNs would be Total - 'Non-Null values'

I have been trying to find out if I can somehow count the index values but I haven't been able to do so. Any assistance on this greatly appreciated. Best wishes Jason

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1 Answer 1

up vote 4 down vote accepted
In [279]: df
     A         B         C         D         E
a  foo       NaN  1.115320 -0.528363 -0.046242
b  bar  0.991114 -1.978048 -1.204268  0.676268
c  bar  0.293008 -0.708600       NaN -0.388203
d  foo  0.408837 -0.012573  1.019361  1.774965
e  foo  0.127372       NaN       NaN       NaN

In [280]: def count_missing(frame):
    return (frame.shape[0] * frame.shape[1]) - frame.count().sum()

In [281]: df.groupby('A').apply(count_missing)
bar    1
foo    4
dtype: int64
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Excellent. Thanks for the example! SHAPE gave me the information required to then calculate the NaN values. Thanks heaps –  user1911866 May 17 '13 at 6:18

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