So I have a dataset with two columns, one a string variable with names of products, and the other interval values.
Affiliate_ID Average "A" Level store X 7.0 store Y 4.3 store Z 5.6
I am curious if it is possible in python to compute and sum all possible pairwise differences, without repeats.
Sum = |7.0 - 4.3| + |4.3 - 5.6| + |7.0 - 5.6|
I don't know what format is best for python to do such an operation, but I have the data in a csv file and in an excel file. I use pandas to get the data into a dataframe. One of the things I've tried is to grab a particular column from the dataframe
df = pd.DataFrame.from_csv(infile_path + "mp_viewed_item_AGG_affiliate_item_TOP_10.csv", sep=',') i = 0 for i in df: x = df[i]
But this feels incorrect - like it is going nowhere (not that I'd know!)
Someone suggested that I make use of something called itertools, and provided me with a sample
sum([args[i] - args[j] for i,j in itertools.permutations(range(len(args)
but I really don't know how to make this work.
If anyone could provide me with some insight into my problem, I would be very grateful. I'm a newbie to python; I know basics, have written a couple very simple programs but am not a developer at all.