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I have a for loop which generates via png() and a plot and saves it the working directory.

The loop I have is similar to the following example

test.df<-data.frame(id=1:25000, x=rnorm(25000),y=rnorm(25000))

for (i in test.df$id){
  plot(test.df$x[test.df$id==i], test.df$y[test.df$id==i], xlab="chi",ylab="psi")

The for loop will run and generate thousands of plots. Is it possible to make it run parallel on all 8 cores of my system so that I can get the plots faster?

PS. The code is an example. My original problem and plots are much more complicated. Don't go viral on the example.

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I believe that it is. You haven't given any code so here's a link to a blog I did on parallel computing.… This approach was using a windows machine. Note the links that describe other approaches. – Tyler Rinker Jan 27 '13 at 18:23
I have added an example. I don't use a function for the plotting and the *ply family as well as it's parallel optimized cousins don't fit in my example. What I think I have to do is assign each iteration of the for loop to different core. – ECII Jan 27 '13 at 18:29
up vote 5 down vote accepted

Provided you are using a new version of R, then this should be straightforward. The trick is to create a function that can be run on any core in any order. First we create our data frame:

test.df = data.frame(id=1:250, x=rnorm(250),y=rnorm(250))

Next we create the function that runs on each core:

#I could also pass the row or the entire data frame
myplot = function(id) {
  fname = paste0("/tmp/plot", id, ".png")
  plot(test.df$x[id], test.df$y[id], 

Then I load the parallel package (this comes with base R)


and then use mclapply

no_of_cores = 8
##Non windows
mclapply(1:nrow(test.df), myplot, 
         mc.cores = no_of_cores)

##All OS's
cl = makeCluster(no_of_cores)
clusterExport(cl, "test.df")
parSapply(cl, 1:nrow(test.df), myplot)

There are two advantages here:

  1. The package parallel comes with R, so we don't need to install anything extra
  2. We can switch off the "parallel" part:

    sapply(1:nrow(test.df), myplot)
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Provided also that that the OP is not under Windows... – agstudy Jan 27 '13 at 19:22
@agstudy Good point. Thanks – csgillespie Jan 27 '13 at 19:26
Won't this be delayed for write unless you can somehow provide a physical drive for each separate core? – mdsumner Jan 28 '13 at 9:35
@mdsumner That is a good point, and to be honest I'm not entirely sure. However, if the bottle neck is doing data manipulation for the plots, you'll still get a speed-up. The OP will just have test. – csgillespie Jan 28 '13 at 9:37

With foreach package you have to modify you core code minimally. Also you can choose any backend of your choice regarding OS or other issues.

## Working dir and data generation
N <- 25000
test.df<-data.frame(id=1:N, x=rnorm(N),y=rnorm(N))

## Making a cluster
require(doSNOW) # Or any other backend of your choice
NC <- 8         # Number of nodes in cluster, i.e. cores
cl <- makeCluster(rep("localhost", NC), type="SOCK")

## Core loop
foreach(i=1:N) %dopar% {
  plot(test.df$x[test.df$id==i], test.df$y[test.df$id==i], xlab="chi",ylab="psi")

## Stop cluster

It's easy to go for one core: just substitute %dopar% with %do%.

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Since mclapply is not supported on windows, I give a solution for windows users, using parallel package.

cl <- makeCluster(8)
parSapply(cl, 1:20, fun, fun.args)
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