I am using pandas groupBy and was wondering how to implement the following:
Dataframes A and B have the same variable to index on, but A has 20 unique index values and B has 5.
I want to create a dataframe C that contains rows whose indices are present in A and not in B.
Assume that the 5 unique index values in B are all present in A. C in this case would have only those rows associated with index values in A and not in B (i.e. 15).
Using inner, outer, left and right do not do this (unless I misread something).
In SQL I might do this as
where A.index <> (not equal) B.index
My Left handed solution:
a) get the respective index columns from each data set, say x and y.
""" x and y are series compare col is the name to the series being returned . It is the same name as the name of x and y in their respective dataframes""" x = x.unique() y = y.unique() """ Need to compare arrays x.unique() returns arrays""" new =  for item in (x): if item not in y: new.append(item) returnADataFrame = pa.DataFrame(pa.Series(new, name = compareCol)) return returnADataFrame
b) now do a left join on this on the data set A.
I am reasonably confident that my elementwise comparison is slow as a tortoise on weed with no motivation.