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I am trying to match some data on what could be a fairly large data set and even on the medium sized data set it is taking too long.

The task I am performing is to take a mechanical problem, then go back 6 months and look for procedural problems (failures on the part of individual employees). I match first on machine and location, so I want to match the same place with the same machine. Then I require that the procedural error comes before the mechanical one, since its in the future. Finally, I limit it to 180 days to keep things comparable.

In the data construction phase, I limit the mechanical issues to exclude the first 6 months, so I have the same 180 day block for each.

I have read a fair bit on optimizing loops. I know that you want to create a storage variable outside of the loop and then just add to it, but I don't actually have any idea how many matches it will return, so initially I had been using rbind inside of the loop. I know the upper bound on the storage variables is the number of mechanical issues * number of procedural issues, but this is gigantic and I can't allocate a vector that large. The code I have places here has my max sized storage variable approach, but I think I will have to go back to something like this:

if (counter == 1) {
    pro = procedural[i, ]
    other = mechanical[j, ]
if (counter != 1) {
    pro = rbind(pro, procedural[i, ])
    other = rbind(other, mechanical[j, ])

I have also read a fair bit about vectorization, but I have never actually managed to get it to work. I have tried a few different things on the vectorization front, but I think I must be doing something wrong.

I also tried removing the second loop and just using the which command, but that doesn't seem to work with a full column of data (from the procedural data) being compared to a single value (from the mechanical data).

Here is the code I have currently. It works for small sets of data fine, but for anything remotely large it takes forever.

maxval = mechrow * prorow
pro = matrix(nrow = maxval, ncol = ncol(procedural))
other = matrix(nrow = maxval, ncol = ncol(procedural))
numprocissues = matrix(nrow = mechrow, ncol = 1)
counter = 1
for (j in 1:mechrow) {
    for (i in 1:prorow) {
        if (procedural[i, 16] == mechanical[j, 16] &
            procedural[i, 17] < mechanical[j, 17] &
            procedural[i, 2] == mechanical[j, 2] &
            abs(procedural[i, 17] - mechanical[j, 17]) < 180) {

            pro[counter, ] = procedural[i, ]
            other[counter, ] = mechanical[j, ]
            counter = counter + 1
    numprocissues[j, 1] = counter

The places I imagine improvement can be made is in my storage variable, potential vectorization, changing the conditions in the if statement or maybe a fancy which statement to remove a loop.

Any advice would be greatly appreciated!

Thank you.

share|improve this question
Could you post a small sample data set to make your code reproducible? –  Aaron Oct 3 '11 at 19:43
Have you read the R inferno by Patrick Burns? He talks about creating your object used for looping and then expand it once in a while. Beats rbind any day. burns-stat.com/pages/Tutor/R_inferno.pdf –  Roman Luštrik Oct 3 '11 at 20:07
Working up a sample set now. –  asjohnson Oct 3 '11 at 20:12
Hi, Andy! I thought your picture looked familiar... –  Aaron Oct 3 '11 at 20:18
Hey Aaron! It is me indeed. Stackedoverflow is great. –  asjohnson Oct 3 '11 at 20:21

1 Answer 1

up vote 6 down vote accepted


xy <- expand.grid(mech=1:mechrow, pro=1:prorow)
ok <- (procedural[xy$pro, 16] == mechanical[xy$mech, 16] &
       procedural[xy$pro, 17] <  mechanical[xy$mech, 17] &
       procedural[xy$pro,  2] == mechanical[xy$mech,  2] &
       abs(procedural[xy$pro, 17] -  mechanical[xy$mech, 17]) < 180)
pro   <- procedural[xy$pro[ok],]
other <- mechanical[xy$mech[ok],]
numprocissues <- tapply(ok, xy$mech, sum)
share|improve this answer
Oh I didn't see this. I will give it a shot, thanks Aaron! –  asjohnson Oct 3 '11 at 20:22
Gosh, that is really clever. I did a spot check of it and ok gives the correct number of matches and numprocissues is correct as well. The only thing I run into is that pro and other have the correct number of rows and columns and the first 3 rows of pro are filled out, along with the first row of other, but then the rest is just NAs. I am going to play around with it and see if I can get past it. Thanks again, that is a really excellent idea. –  asjohnson Oct 3 '11 at 20:38
See edit. It wasn't filling pro and other correctly. –  Aaron Oct 3 '11 at 20:41
Here is what it was missing: pro = procedural[xy[ok,2],] other = mechanical[xy[ok,1],] Thanks again! Not having to loop things is the best feeling in the world. –  asjohnson Oct 3 '11 at 20:44

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