When group a pandas dataframe by one column say "version" and which has 10 distinct versions. How can one plot the Top 3 (which cover over 90%) and put the small remainders into one "Other"-Bucket.
data = array([ ('Top1', 14), ('Top1', 3), ('Top1', 2), ('Top2', 6), ('Top2', 7), ('Other1', 1), ('Other2', 2), ], dtype=[('Version', 'S10'),('Value', '<i4')]) df = DataFrame.from_records(data) df.groupby('Version').sum()
Value Version Other1 1 Other2 2 Top1 19 Top2 13
Im Looking for
Value Version Others Top1 19 Top2 13
The version names Other* and Top* are just chosen for the example.
Of course this is possible by manually setting the category to "Other" after grouping and comparing to a threshold. I was hoping for a shortcut.