Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am running random forest in R in parallel

x <- matrix(runif(500), 100)
y <- gl(2, 50)

Parallel execution (took 73 sec)

rf <- foreach(ntree=rep(25000, 6), .combine=combine, .packages='randomForest') %dopar%
randomForest(x, y, ntree=ntree) 

Sequential execution (took 82 sec)

rf <- foreach(ntree=rep(25000, 6), .combine=combine) %do%
randomForest(x, y, ntree=ntree) 

In parallel execution, the tree generation is pretty quick like 3-7 sec, but the rest of the time is consumed in combining the results (combine option). So, its only worth to run parallel execution is the number of trees are really high. Is there any way I can tweak "combine" option to avoid any calculation at each node which I dont need and make it more faster

PS. Above is just an example of data. In real I have some 100 thousands features for some 100 observations.

share|improve this question

2 Answers 2

up vote 8 down vote accepted

Setting .multicombine to TRUE can make a significant difference:

rf <- foreach(ntree=rep(25000, 6), .combine=combine, .multicombine=TRUE,
              .packages='randomForest') %dopar% {
    randomForest(x, y, ntree=ntree)

This causes combine to be called once rather than five times. On my desktop machine, this runs in 8 seconds rather than 19 seconds.

share|improve this answer

Are you aware that the caret package can do a lot of the hand-holding for parallel runs (as well as data prep, summaries, ...) for you?

Ultimately, of course, if there are some costly operations left in the random forest computation itself, there is little you can do as Andy spent quite a few years on improving it. I would expect few to no low-hanging fruits to be around for the picking...

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.