48

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.

96

My favorite way of getting number of nonzeros in each column is

df.astype(bool).sum(axis=0)

For the number of non-zeros in each row use

df.astype(bool).sum(axis=1)

(Thanks to Skulas)

If you have nans in your df you should make these zero first, otherwise they will be counted as 1.

df.fillna(0).astype(bool).sum(axis=1)

(Thanks to SirC)

  • 1
    this astype(bool) seems to not work on a lot of date types... – Amir Oct 9 '17 at 19:05
  • 1
    I think you meant to axis=0. If you do axis=1 you'd be counting non zero rows – Skulas Nov 29 '17 at 14:01
  • @skulas Good catch! I guess most people come here for rows and that is why no-one has complained before :) – The Unfun Cat Nov 29 '17 at 14:16
  • Thats a great one liner! To get all the column values which are not null – Chandra Kanth Mar 18 '18 at 12:52
  • 2
    It is dangerous if you have nan in your dataframe, they would contribute to the sum. – SirC May 9 '18 at 14:21
12

To count nonzero values, just do (column!=0).sum(), where column is the data you want to do it for. column != 0 returns a boolean array, and True is 1 and False is 0, so summing this gives you the number of elements that match the condition.

So to get your desired result, do

df.groupby('user_id').apply(lambda column: column.sum()/(column != 0).sum())
  • Thanks BrenBarn, that solved the problem. – Harsh Singal Sep 26 '14 at 9:06
  • @BrenBram What shall be the approach if we have negative values in some of the cells? – Harsh Singal Sep 30 '14 at 10:37
  • @HarshSingal: column != 0 will find all values that are not zero, regardless of whether they're positive or negative. – BrenBarn Sep 30 '14 at 17:51
  • Sorry for not stating the problem precisely. When I implemented above method the user_id's for which the SUM(Tags) was negative returned -inf in the output while positive SUM(Tags) performed perfectly. I have been unable to figure out why! – Harsh Singal Oct 1 '14 at 9:46
  • @HarshSingal: You could get inf if there were no nonzero tags (so that the count of nonzero tags was zero). Your original formulation is not well-defined for that case, so you'll need to think about what you want the result to be. – BrenBarn Oct 1 '14 at 17:58

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