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I am using the R parallel package command “parLapply” in Windows 7, with R 2.14.2. It works like a charm but when I try to do many itterations, i want to use it for feature selection in a double looped cross-validation set up, then I get an error that there are no more tempfile() names available.

A short version of the commands I use are these:

###Generate Traning index
#sizeLearning; double; probability of being in the training set
#exprSet; expressionSet; Expression set of interest

generateIndex <- function(sizeLearning, exprSet){

  total.size <- length(pData(exprSet)$Factor)
  learning.size <- round(sizeLearning * total.size)
  validation.size <- total.size - learning.size

  K <- nlevels(factor(pData(exprSet)$Factor))
  learning.index <- NULL
  props <- round(learning.size/total.size * table(factor(pData(exprSet)$Factor)))
  props[1] <- learning.size - sum(props[2:K])
  for (k in 1:K) {
    y.num <- as.numeric(factor(pData(exprSet)$Factor))
    learning.index <- c(learning.index, sample(which(y.num ==k))[1:props[k]])
  }

  return(learning.index)
}

#testData is a expression set with 122 samples and almost 10000 genes.

for(outerLoopCounter in 1:5){


  learning.index <- generateIndex(0.8, testData)
  validation.index <- (1:ncol(testData))[-learning.index]

  outerLoopTraining <- testData[,learning.index]
  outerLoopValidation <- testData[,validation.index]

  for(innerLoopCounter in 1:5){
    #Hier moet de dataset weer gesplits
    #Training_T 80% / Test_T 20%
    #Respect to outcome / original set

    learningInnerLoop.index <- generateIndex(0.8, outerLoopTraining)
    validationInnerLoop.index <- (1:ncol(outerLoopTraining))[-learningInnerLoop.index]

    TrainingSet <- outerLoopTraining[,learningInnerLoop.index]
    ValidationSet <- outerLoopTraining[,validationInnerLoop.index]

    Outcome <- as.character(pData(TrainingSet)$Outcome)
    TrainingSetDataFrame <- cbind(as.data.frame(t(exprs(TrainingSet))), Outcome)

    Outcome <- as.character(pData(ValidationSet)$Outcome)
    ValidationSetDataFrame <- cbind(as.data.frame(t(exprs(ValidationSet))), Outcome)

    cl <- makeCluster(4)
    clusterExport(cl, "TrainingSetDataFrame")
    weightsWMW <- parLapply(cl, 1:(ncol(TrainingSetDataFrame)-1), function(i) wilcox.test(TrainingSetDataFrame[TrainingSetDataFrame$Outcome==1,i], TrainingSetDataFrame[TrainingSetDataFrame$Outcome==2,i])$p.value)
    stopCluster(cl)

    #The weights are used as a feature selection criteria and tested in multiple machine learning models
  }

  Outcome <- as.character(pData(outerLoopTraining)$Outcome)
  TrainingSetDataFrame <- cbind(as.data.frame(t(exprs(outerLoopTraining))), Outcome)

  Outcome <- as.character(pData(outerLoopValidation)$Outcome)
  ValidationSetDataFrame <- cbind(as.data.frame(t(exprs(outerLoopValidation))), Outcome)

  cl <- makeCluster(4)
  clusterExport(cl, "TrainingSetDataFrame")
  weightsWMW <- parLapply(cl, 1:(ncol(TrainingSetDataFrame)-1), function(i) wilcox.test(TrainingSetDataFrame[TrainingSetDataFrame$Outcome==1,i], TrainingSetDataFrame[TrainingSetDataFrame$Outcome==2,i])$p.value)
  stopCluster(cl)

  #here again the model is tested but now on a larger dataset, I test only the best feature selection method + machine learning model
}

I cannot supply the expression data, as this is not yet publically available. But it will work with any expression set that is available

It seems to me that the cluster command does not remove the tempfiles that were used during the execution or that I do not close the cluster correctly. I already tried to remove the cl object after the cluster is finished with the parallel execution but this does not help. Is there a way to make it automatically remove the old tempfiles, or is there anything else I could try to use to overcome this problem?

I already searched the internet but I could not find anything other than a resolved bug in R and this thread on stack overflow: parallel R execution problem in R

I also contacted the maintainer of the R parallel package but i did not got any response yet.

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1  
Please provide reproducible code that generates the error. –  mdsumner Mar 20 '12 at 11:56
    
Where can I find the function generateIndex –  GSee Mar 20 '12 at 13:43
    
Instead of making nested clusters, make a list of tasks and apply them, e.g., for an 'outer loop' of 10 and 'inner loop' of 5 tasks <- expand.grid(1:10, 1:5) and then parApply(cl, tasks, 1, fun) where fun is a function taking a vector of outer and inner task indicies you'd like to perform. –  Martin Morgan Mar 20 '12 at 19:14
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