I have a python-pandas-dataframe in which first column is user_id and rest of the columns are tags(tag_0 to tag_122). I have the data in the following format:
UserId Tag_0 Tag_1 7867688 0 5 7867688 0 3 7867688 3 0 7867688 3.5 3.5 7867688 4 4 7867688 3.5 0
My aim is to achieve
Sum(Tag)/Count(NonZero(Tags)) for each user_id
df.groupby('user_id').sum(), gives me
sum(tag), however I am clueless about counting non zero values
Is it possible to achieve
Sum(Tag)/Count(NonZero(Tags)) in one command?
In MySQL I could achieve this as follows:-
select user_id, sum(tag)/count(nullif(tag,0)) from table group by 1
Any help shall be appreciated.