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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

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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
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2 Answers

up vote 3 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).

library(parallel)
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( 
  tasks, 
  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( 
  cl,
  tasks,
  function(f) f()
)
stopCluster(cl)
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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.

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