3

I am trying to get sum, mean and count of a metric

df.groupby(['id', 'pushid']).agg({"sess_length": [ np.sum, np.mean, np.count]})

But I get "module 'numpy' has no attribute 'count'", and I have tried different ways of expressing the count function but can't get it to work. How do I just an aggregate record count together with the other metrics?

3
  • Do you just want len? Not sure what you mean about different ways of expressing the count function - numpy certainly doesn't have np.count, as you've seen. What is this function expected to do? – Nathan Apr 9 '19 at 18:32
  • you can use np.size – jxc Apr 9 '19 at 18:37
  • @jxc size will count nan as a row, count will exclude nan – YJZ Jul 8 '19 at 21:00
3

You can use strings instead of the functions, like so:

In [16]: df = pd.DataFrame({"id": list("ccdef"), 
                            "pushid": list("aabbc"),
                            "sess_length": [10, 20, 30, 40, 50]})

In [17]: df.groupby(['id', 'pushid']).agg({"sess_length": [ 'sum', 'mean', 'count']})

Out[17]:           sess_length
                           sum mean count
         id pushid
         c  a               30   15     2
         d  b               30   30     1
         e  b               40   40     1
         f  c               50   50     1
0

I think you mean :

df.groupby(['id', 'pushid']).agg({"sess_length": [ 'sum', 'count','mean']})

As mentioned in documentation of pandas, you can use string arguments like 'sum','count'. TBH It's more preferable way of doing these aggregations.

0

This might work:

df.groupby(['id', 'pushid']).agg({"sess_length": [ np.sum, np.mean, np.**size**]})
1
  • Is there a benefit to this syntax over the use of [ 'sum', 'mean', 'count'], as described in the accepted answer from last year? If so, it'd be useful to edit your answer to include that. – Jeremy Caney Oct 28 '20 at 21:33

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