I have a for loop that is something like this:

for (i=1:150000) {
   tempMatrix = {}
   tempMatrix = functionThatDoesSomething() #calling a function
   finalMatrix =  cbind(finalMatrix, tempMatrix)

}

Could you tell me how to make this parallel ?

I tried this based on an example online, but am not sure if the syntax is correct. It also didn't increase the speed much.

finalMatrix = foreach(i=1:150000, .combine=cbind) %dopar%  {
   tempMatrix = {}
   tempMatrix = functionThatDoesSomething() #calling a function

   cbind(finalMatrix, tempMatrix)

}
  • 1
    Running things in parallel requires quite a bit of overhead. You will only get a substantial speed up if functionThatDoesSomething takes enough time for the overhead to be worth it. – Gregor Jul 12 '16 at 0:33
  • 1
    I think there's also a lot more work that you need to do before this post is qualified. Look up parallel and doParallel packages, for instance... – gregmacfarlane Jul 12 '16 at 0:41
  • You shouldn't need this -- cbind(finalMatrix, tempMatrix) -- if you are using the .combine argument, just return the function output. – nrussell Jul 12 '16 at 0:43
up vote 44 down vote accepted

Thanks for your feedback. I did look up parallel after I posted this question.

Finally after a few tries, I got it running. I have added the code below in case it is useful to others

library(foreach)
library(doParallel)

#setup parallel backend to use many processors
cores=detectCores()
cl <- makeCluster(cores[1]-1) #not to overload your computer
registerDoParallel(cl)

finalMatrix <- foreach(i=1:150000, .combine=cbind) %dopar% {
   tempMatrix = functionThatDoesSomething() #calling a function
   #do other things if you want

   tempMatrix #Equivalent to finalMatrix = cbind(finalMatrix, tempMatrix)
}
#stop cluster
stopCluster(cl)

Note - I must add a note that if the user allocates too many processes, then user may get this error: Error in serialize(data, node$con) : error writing to connection

Note - If .combine in the foreach statement is rbind , then the final object returned would have been created by appending output of each loop row-wise.

Hope this is useful for folks trying out parallel processing in R for the first time like me.

References: http://www.r-bloggers.com/parallel-r-loops-for-windows-and-linux/ https://beckmw.wordpress.com/2014/01/21/a-brief-foray-into-parallel-processing-with-r/

  • Can I return multiple different objects from parallel loop. For example I want to return dataframe and vector/list? – user1700890 Aug 15 at 17:39

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