Thanks for making the reproducible example! I prefer snowfall for my parallel processing, so here's how it looks in there.
install.packages('snowfall')
require(snowfall)
### wasn't sure what you were using for x or y
set.seed(1001)
x <- sample(seq(1,100),20)
y <- sample(seq(1,100),20)
k <- 100
sigma <- seq(0.1, 10, 0.2)
### makes a local cluster on 4 cores and puts the data each core will need onto each
sfInit(parallel=TRUE,cpus=4, type="SOCK",socketHosts=rep("localhost",4))
sfExport('x','y','k','sigma')
answers <- sfSapply(seq(1,k), function(M)
sapply(seq(1,length(sigma)), function(N)
mean((mean(x)-supsmu(x,y)$y)^2) ## wasn't sure what you mean by m(x) so guessed mean
)
)
sup_mse <- t(answers) ## will give you a matrix with length(sigma) columns and k rows
sfStop()
I remember reading somewhere that you only want to use sfSapply
in the outer loops and then use your regular apply functions inside of that loop. Hope this helps!