Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I want to run a program which need substantial time. I want to write a function that can run in parallel (I am graphical interface user in windows). The function divides the task into n sub-tasks and performs a final consensus task. I want to run n task at parallel( same time within same program window) and then combine the outputs. The following just an example:

ptm <- proc.time()
j1 <- cov(mtcars[1:10,], use="complete.obs") # job 1
j2 <- cov(mtcars[11:20,], use="complete.obs") # job 2
j3 <- cov(mtcars[21:32,], use="complete.obs") # job 3
proc.time() - ptm

out <- list (j1 = j1, j2 = j2, j3 = j3) 

I know in unix "&" usually allows the jobs to run in background. Is there similar way in R

share|improve this question
look at the parallel package, it's included in R 2.15: ?parallel::parallel – Joris Meys May 30 '12 at 11:48
Note though that without sufficiently multi-core processors, the amount of benefit you can obtain from parallelisation is limited. – Fhnuzoag May 30 '12 at 12:17
up vote 4 down vote accepted

You can use mclapply or clusterApply to launch several functions in parallel. They are not really in the background: R will wait until they are all finished (as if you were using wait, in a Unix shell, after launching the processes in the background).

tasks <- list(
  job1 = function() cov(mtcars[1:10,],  use="complete.obs"),
  job2 = function() cov(mtcars[11:20,], use="complete.obs"),
  job3 = function() cov(mtcars[21:32,], use="complete.obs"),
  # To check that the computations are indeed running in parallel.
  job4 = function() for (i in 1:5) { cat("4"); Sys.sleep(1) },
  job5 = function() for (i in 1:5) { cat("5"); Sys.sleep(1) },
  job6 = function() for (i in 1:5) { cat("6"); Sys.sleep(1) }

# Using fork()
out <- mclapply( 
  function(f) f(), 
  mc.cores = length(tasks) 

# Equivalently: create a cluster and destroy it.
# (This may work on Windows as well.)
cl <- makeCluster( length(tasks) )
out <- clusterApply( 
  function(f) f()
share|improve this answer

I have good experience using the plyr package functions together with a parallel backend created by snow. In a blog post I describe how to do this. After R 2.14 parallel processing is part of the R core distribution through the parallel package. I have not tried to let plyr work with a backend generated by parallel, but I think this should work.

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.