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This is related to my previous question mclapply vs for loops for plotting: speed and scalability focus, I think I now have three/four ways of doing the same thing, but get different results even when setting the random seed.

Firstly...why are the results different...

Are results2 and results3 in effect doing the same thing?

Although not shown in the first example (it is shown below)...there are times that results2 takes longer than when not using the .parrallel = TRUE option, why is that?

> rm(list=ls())
> gc()
         used (Mb) gc trigger  (Mb) max used  (Mb)
Ncells 253264 13.6    1801024  96.2  1643320  87.8
Vcells 829208  6.4   22407472 171.0 28009341 213.7
> require(ggplot2)
Loading required package: ggplot2
> require(plyr)
Loading required package: plyr
> require(foreach)
Loading required package: foreach
foreach: simple, scalable parallel programming from Revolution Analytics
Use Revolution R for scalability, fault tolerance and more.
http://www.revolutionanalytics.com
> require(doMC)
Loading required package: doMC   
Loading required package: iterators
Loading required package: multicore
> registerDoMC(cores=4)
> gc()
          used (Mb) gc trigger  (Mb) max used  (Mb)
Ncells  409261 21.9    1440819  77.0  1643320  87.8
Vcells 1039134  8.0   17925977 136.8 28009341 213.7
> df <- expand.grid(i = 1:100, j = 1:2 , k = seq(100, 500, 100))
> params <- mapply(list, n = df[, 3], mu = df[, 1], stdev = df[,2], SIMPLIFY = F)
> ff <- function(tlist) {
+     set.seed(123)
+     n <- tlist$n
+     mu <- tlist$mu
+     stdev <- tlist$stdev
+     x1 <- c(1:n)
+     y1 <- rnorm(n,mu,stdev)
+     z1 <- data.frame(cbind(x1,y1))
+     ggplot(z1, aes(x=x1,y=y1))+
+         geom_point()+
+         labs(title=paste("n=",n,"mu=",mu, "stdev=",stdev))
+ }
> system.time(results <- llply(params, ff))
   user  system elapsed 
  5.363   0.009   5.368 
> system.time(results2 <- llply(params, ff,.parallel=TRUE))
   user  system elapsed 
  2.689   0.259   2.938 
> system.time(results3 <- mclapply(params, ff, mc.cores = 4, mc.preschedule = TRUE))
   user  system elapsed 
  7.488   0.685   2.501 
> identical(results,results2)
[1] FALSE
> identical(results,results3)
[1] FALSE
> identical(results2,results3)
[1] FALSE

comparisons:

require(rbenchmark)
benchmark(results <- llply(params, ff),
          results2 <- llply(params, ff,.parallel=TRUE), 
           results3 <- mclapply(params, ff, mc.cores = 4, mc.preschedule = TRUE),
             replications=5 )

giving the following results:

                                                                    test replications elapsed relative user.self sys.self user.child sys.child
 1                                          results <- llply(params, ff)            5  27.869    1.521    27.833    0.043      0.000     0.000
 2                       results2 <- llply(params, ff, .parallel = TRUE)            5 109.990    6.003     5.455    2.472     37.565     7.048
 3 results3 <- mclapply(params, ff, mc.cores = 4, mc.preschedule = TRUE)            5  18.322    1.000     1.582    1.545     42.730    10.441

And even more weirdly when doing 10 replications instead of just 5....

 benchmark(results <- llply(params, ff),
      results2 <- llply(params, ff,.parallel=TRUE), 
      results3 <- mclapply(params, ff, mc.cores = 4, mc.preschedule = TRUE),
       replications=10 )

you get this:

                                                                     test replications elapsed relative user.self sys.self user.child sys.child
  1                                          results <- llply(params, ff)           10  55.031    1.000    54.641    0.144      0.000     0.000
  2                       results2 <- llply(params, ff, .parallel = TRUE)           10 107.801    1.959     9.877    6.045     80.022    23.062
  3 results3 <- mclapply(params, ff, mc.cores = 4, mc.preschedule = TRUE)           10 297.556    5.407     3.576    5.624     96.493    31.035

What is going on here?

share|improve this question
    
Just a thought but it takes time to set up a cluster. – Tyler Rinker Oct 9 '12 at 5:01
    
I thought I am just using different cores rather than a different cluster.... – h.l.m Oct 9 '12 at 5:05
    
also doesn't explain the differing results... – h.l.m Oct 9 '12 at 5:20
    
my understanding is that cores are kinda like separate processors. it's not entirely different than running a computer lab in parallel in that you have to first bunch the cores/units into a cluster. This is my non tech understanding and may be wrong. Generally comments don't answer your question that's more the point of a comment. – Tyler Rinker Oct 9 '12 at 5:21
    
fair enough...appreciate your thoughts though....thanks! – h.l.m Oct 9 '12 at 5:25

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