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When using clusters in R on Windows I been trying to find a simple way to transfer results from a cluster to the master. If the results is an array or a simple number the .combine option of foreach / %dopar% statement takes care of this, but if the result is a complex object lets such a randomForest model, how to transfer the whole model from the slave cluster back to the master?

I try: assing with env=.Global but it does not work on my Windows 7.

At the end I work around by saving the object to file. Then the master can recover the object. If someone knows a more elegant way or why assing does not work I appreciate comments.

sample code:

print(" paralelize with 8 cores ------------------------------")
library(doSNOW)
cl<-makeCluster(8)
registerDoSNOW(cl)
clusterEvalQ(cl, library(randomForest))
clusterExport(cl, "x")
clusterExport(cl, "y")
clusterExport(cl, "x.selected")

makeModel <- function(i){
  m <- randomForest(x,x.selected[i,],mtry=250,sampsize=3200,ntree = 3000,do.trace=TRUE) 
  eval(parse(text = paste("model_",i," <- m",sep="")))
  eval(parse( text =paste("save(model_", i, ", file =\"model_", i, ".Rdata\")",sep="" ) ))
}

foreach(i = 1:length(x.selected[,1]),.verbose = TRUE ) %dopar% makeModel(i)
stopCluster(cl)

foreach(i = 1:length(x.selected[,1]),.verbose = TRUE ) %do% 
load(paste("model_",i,".RData",sep=""))
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I don't know which type of object foreach returns, it seems that it returns not a list of objects by default. Maybe it tries to combine somehow results of each node and fails to do that. But you can use clusterApply instead of foreach. Then you will receive a list of models as a result. – DrDom May 23 '12 at 6:15

If you don't specify a .combine function, foreach will return a list in order to handle arbitrary objects just like the clusterApply function. Many foreach examples use .combine="c", but that won't work with randomForest model objects. If the body of the foreach loop evaluates to the randomForest model object, foreach will return a list of those objects.

Here is a simplified version of the randomForest example from the foreach package that returns model objects in a list and combines them afterwards. I also modified it to use the doSNOW package as in your example:

library(doSNOW)
library(randomForest)
cl <- makeCluster(8)
registerDoSNOW(cl)
nr <- 1000
x <- matrix(runif(100000), nr)
y <- gl(2, nr/2)
rf <- foreach(ntree=rep(125, 8), .packages='randomForest') %dopar% {
  randomForest(x, y, ntree=ntree)
}
crf <- do.call('combine', rf)
print(crf)
stopCluster(cl)
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