I need to group some data in a pandas dataframe but the standard grouping method does not quite work how I need it to. It must group so that each change in "loc" and/or each change in "name" is treated as a separate group.
x = pd.DataFrame([['john','abc',1],['john','abc',2],['john','abc',3],['john','xyz',4],['john','xyz',5],['john','abc',6],['john','abc',7],['matt','abc',8]]) x.columns = ['name','loc','time'] name loc time john abc 1 john abc 2 john abc 3 john xyz 4 john xyz 5 john abc 6 john abc 7 matt abc 8
I need to group these values so that the resulting data is
name loc first last john abc 1 3 john xyz 4 5 john abc 6 7 matt abc 8 8
The default grouping function (correctly) groups all the loc and name values so we are only left with 3 groups (john / abc is 1 group). Does anybody know how the grouping can be forced to group how i require it to?
I'm able to generate the required table using a for loop (iterrows), but if there is a nice pandas pythonic way to do the same thing I would love to know.
Thank you in advance.