I have a 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?

5 Answers 5


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


For the number of non-zeros in each row use


(Thanks to Skulas)

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


(Thanks to SirC)

  • 2
    I think you meant to axis=0. If you do axis=1 you'd be counting non zero rows
    – Skulas
    Nov 29, 2017 at 14:01
  • 1
    @skulas Good catch! I guess most people come here for rows and that is why no-one has complained before :) Nov 29, 2017 at 14:16
  • Thats a great one liner! To get all the column values which are not null Mar 18, 2018 at 12:52
  • @Amir would datetypes ever be zero though? Apr 18, 2018 at 18:28
  • 2
    It is dangerous if you have nan in your dataframe, they would contribute to the sum.
    – SirC
    May 9, 2018 at 14:21

Why not use np.count_nonzero?

  1. To count the number of non-zeros of an entire dataframe, np.count_nonzero(df)
  2. To count the number of non-zeros of all rows np.count_nonzero(df, axis=0)
  3. To count the number of non-zeros of all columns np.count_nonzero(df, axis=1)

It works with dates too.

  • 4
    Thanksfor this answer! I ended up with this solution as I think it is very human-readable. I only modified two things: For my understanding of "getting the number of non-zero values for all rows" (your case 2) I needed axis=1 instead of axis=0. And I preferred to get the output as pandas.Series, so I used result = pd.Series(index=df.index, data=np.count_nonzero(df, axis=1))
    – marcu1000s
    Feb 26, 2020 at 14:05

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())
  • @BrenBram What shall be the approach if we have negative values in some of the cells? Sep 30, 2014 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, 2014 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! Oct 1, 2014 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, 2014 at 17:58

I know this question is old but it seems OP's aim is different from the question title:

My aim is to achieve Sum(Tag)/Count(NonZero(Tags)) for each user_id...

For OP's aim, we could replace 0 with NaN and use groupby + mean (this works because mean skips NaN by default):

out = df.replace(0, np.nan).groupby('UserId', as_index=False).mean()


    UserId  Tag_0  Tag_1
0  7867688    3.5  3.875

A simple list comprehension to get the count of non-zero values in each column of df:

[np.count_nonzero(df[x]) for x in df.columns]

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