I have the following csv file:

col_1,col_2
foo,1
foo,1
bar,1
bar,2
baz,1
baz,1
baz,2
baz,2
qux,1
qux,2
qux,3

And the following code (together with the outputs)

print(df.groupby('col_1').count())
#        col_2
# col_1
# bar        2
# baz        4
# foo        2
# qux        3

print(df.groupby('col_1').nunique())
#        col_1  col_2
# col_1
# bar        1      2
# baz        1      2
# foo        1      1
# qux        1      3

With nunique, 2 columns are returned: col_1 and col_2. Why is col_1 missing when I call count?

up vote 1 down vote accepted

count & nunique are different functions and do different things.

Documentation links for further reading:

count returns the number of non-NA values for each series in each group.

nunique returns the number of unique non-NA values for each series in each group


As to why nunique is implemented such that the grouping columns are also included, I'm not sure, as that series will trivially always be a series of ones in the df.groupby(...).nunique() use case.

In the usual case, the grouping columns are set as index (unless as_index=False) is used and not duplicated as columns in the frame.

The behaviour of count conforms to the expected groupby apply/agg semantics and not the other way around.

However, someone did write test for nunique where the expected output also includes the grouping columns as columns for both as_index=True & as_index=False as you have observed.

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