I often need to call groupby().apply(). Since the callback function of apply() is only allowed to return a Series or DataFrame (or maybe a scalar), it becomes rather awkward if my call back function needs to return a tuple of one dimensional and two dimensional arrays, since I will have to pack them into a DataFrame and then unpack to the arrays once I get the results from apply().
def my_callback(g): """This function takes the group g and calculates a two dim array and a one dim array""" a = np.ones(len(g),2) b = np.ones(len(g)) #I need to return a and b return a, b #this won't work x = data.groupby('key').apply(my_callback)
Does anyone have some suggestions? If pandas allow more flexible return value from the callback, it will be much more convenient.
Now to see a few use cases, here are a few examples: Case 1: I need to transform the DataFrame to the independent and dependent variables of a regression. The transformation involves generating a 2D array and a 1D array group by group and then stack together the rows of the arrays from each group. It would be great if only I can write:
X, Y = data.groupby('key').apply(my_callback)
Using a DataFrame sort of works but it involves np.column_stack().
Case 2: I want to transform the DataFrame to two arrays of different rows and columns group by group. I don't think there is any way to do this today, unless we encode everything as a 1D series.