I have a hypothetical set of data with 3 columns that has monthly profit data for a set of widget machines. I am trying to figure out the maximum profit period within a 2-year span.
The 3 columns are as follows:
name: identifier of widget machine (there are maybe 100 of these)
date: month/year over a 2 year period
profit: dollars made from widgets that month (can be negative if costs exceed revenue)
The maximum profit period is a concurrent set of months at least 3 months long (and could encompass all of the data).
Obviously I could brute force this and simply test every combination: Jan-Mar, Jan-Apr, Jan-May, Feb-Apr, etc. but I am looking for a better solution than creating all of these by hand. It seems like the data is a bit too big to want to transpose across and turn months into columns so I would like to be able to operate on a stacked dataset as described.
I'd prefer a sas data step but an sql query that works in proc SQL would be fine as well (but the sets of subqueries that might be required are beyond my ability).
data max(drop=dt); length name dt $50; infile datalines delimiter=','; input name $ dt profit; date=input(dt,mmddyy10.); format date mmddyy10.; datalines; Widget1,01/01/2011,1000 Widget1,02/01/2011,2000 Widget1,03/01/2011,500 Widget2,01/01/2011,100 Widget2,02/01/2011,200 Widget2,03/01/2011,-50 Widget2,04/01/2011,250 Widget2,05/01/2011,-150 Widget2,06/01/2011,-250 Widget2,07/01/2011,400 Widget2,08/01/2011,0 Widget2,03/01/2011,-200 ;
Maybe a better phrasing of the question would be "How do I come up with all possible consecutive combinations of values?" From a query like that, I could then take the max of combinations where # of values >= 3.
The query would build up every combination of sequential rows in the table, drop those where there are less than 3 rows, and then return the max value (grouped by Widget# of course). I suppose it would also helpful to know the starting and ending row for each combination. I'm trying to work out how this would be done in an SQL query (doesn't sound like a sas datastep to my mind)
Here is a sample with some made up data that I wrote in Python. It is not the most efficient thing but it gets the sort of result I am looking for--I just can't figure out how to replicate it in SQL or SAS:
from itertools import groupby data =  data.append(['Widget1','Jan',5]) data.append(['Widget1','Feb',1]) data.append(['Widget1','Mar',-2]) data.append(['Widget1','Apr',0]) data.append(['Widget1','May',-3]) data.append(['Widget1','Jun',8]) data.append(['Widget1','Jul',-2]) data.append(['Widget1','Aug',1]) data.append(['Widget2','Jan',-1]) data.append(['Widget2','Feb',1]) data.append(['Widget2','Mar',-3]) data.append(['Widget2','Apr',1]) data.append(['Widget2','May',-60]) data.append(['Widget2','Jun',9]) data.append(['Widget2','Jul',-2]) data.append(['Widget2','Aug',20]) results =  for key, group in groupby(data, lambda g: g): max = -999999 for i,v in enumerate(data): if key <> v: continue runningtotal = 0 for j,w in enumerate(data): if key <> w: continue if i <= j: runningtotal = runningtotal + w if i+2 <= j and runningtotal > max: max = runningtotal maxstart = v maxend = w results.append([key, maxstart, maxend, max]) print results
This gives me the result of [['Widget1', 'Jan', 'Jun', 9], ['Widget2', 'Jun', 'Aug', 27]] for the fake python data I made.