So I'm working on a data mining project where we're looking at code elements and their relationships and changes to these things over time. What we want is to ask some questions about how often related elements are changed. I've set it up as a view, but it's taking like 10 min to run. I believe the problem is that I'm having to do a lot of subtraction, concatenation, and string comparisons to compare entries (for our window size), but I don't know a good way to fix this. The query looks like
select aw.same , rw.k , count(distint concat_ws(',', r1.id, r2.id)) as num from deltamethoddeclaration dmd1 join revision r1 on r1.id=FKrevID join methodinvocation mi on mi.FKcallerID = dmd1.FKMDID join deltamethoddeclaration dmd2 on mi.FKcalleeID = dmd2.FKMDID join revision r2 on r2.id = dmd2.FKrevID join revisionwindow rw join authorwindow aw where (dmd1.FKrevID - dmd2.FKrevID) < rw.k and (dmd2.FKrevID - dmd1.FKrevID) < rw.k and case aw.same when 1 then r1.author = r2.author when 0 then r1.author <> r2.author else 1=1 end group by aw.same , rw.k ;
Ok, so revisionwindow stores the revision windows we're interested in (10, 20, 50, 100) and authorwindow stores which author types we want (same, different, and don't care). Part of the problem is, we could have the same revision pair with different elements matching, so the only hack i could come up with was that ugly count(distinct concat()) thing. This should return a table with 12 rows, one for each combination of the author and revision windows. The entries under 'num' are the unique pairs of revisions related in the manner specified (in this case, both change methods and one of the methods calls the other). It works perfectly, it's just crazy slow (~10 min running time). I'm basically looking for any advice or help to make this work better without sacrificing accuracy.