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it's the first i use mclapply to run parallel script on multiple process, but the problem that i've tried the script on my laptop and it worked very well and filled the dataframe correctly, but now when i run the script on my office pc, when the printing ends and it's time to collect the data, the script stops with this error :

Error: cannot allocate vector of size 80 Kb
    fun <- function(testdf) {
    errordf <- mclapply(1:nrow(15000), function(i)
    for (ind in 1:nrow(testdf)) 
        if( i >= l/2 ){
            testdf[ind,]$X =  testdf[ind,]$pos * 2
        } else 
            testdf[ind,]$X = testdf[ind,]$pos/l

    permdf <- testdf
   lapply(1:100, function(j)
    {   permdf$X<- sample(permdf$X,nrow(permdf), replace=FALSE)
            fit=lm(X ~ gx, permdf)   #linear regression calculation

        data.frame(pc=i,error=regerror )

}, mc.cores=3)
tmp <- lapply(errordf, function(ii){
    tmp <- lapply(ii, function(ij){    #rbind the data and return the dataframe
        res<<- rbind(res, ij)
return (res)

testdf example:

structure(list(ax = c(-0.0242214, 0.19770304, 0.01587302, -0.0374415, 
0.05079826, 0.12209738), gx = c(-0.3913043, -0.0242214, -0.4259067, 
-0.725, -0.0374415, 0.01587302), pos = c(11222, 13564, 16532, 
12543, 12534, 14354)), .Names = c("ax", "gx", "pos"), row.names = c(NA, 
-6L), class = "data.frame")

i'm sure that the code is working (that's why i did not included the full code), because i tried it multiple times on my laptop, but when i tries it on my office pc it lunch this error.

any help would be appreciatd

share|improve this question
Do package versions match on both PCs? What operating systems are you using? – Roman Luštrik Feb 18 '13 at 13:23
currently i don't have my laptop, but it's a macbook pro and i think i have all the new packages. and my office pc is fedora 16 and on the office pc, i have R version 2.15.2. – ifreak Feb 18 '13 at 13:29
@RomanLuštrik is there maybe a way to structure the lapply functions in a better way to avoid the memory problem? maybe replace 1 lapply with a for loop or so ?? – ifreak Feb 19 '13 at 9:31
How much memory do your office pc and macbook have. Do you run 64 bit OS on both machines? – Paul Hiemstra Feb 19 '13 at 9:46
@PaulHiemstra my macbook pro has 4GB of ram, and the office pc have 6GB, but i found out that the script sometimes gives the same error on the macbook.. – ifreak Feb 19 '13 at 10:21

1 Answer 1

Right now you don't use the apply as intended in you last double nested lapply loop, you might as well use a for loop instead of using lapply combined with a global variable. In addition, you continuously grow res, this is rather memory and time intensive. Normally, an lapply loop would not suffer from this problem, but your use of a global variable totally negates the advantage. You seem to have a double nested list you want to rbind. I would defintely not loop over the data structure, I would just use something along the lines of"rbind", data_structure) to do this, although it is hard to provide concrete advice without a reproducible example. This solution does not suffer from the continuous growing problem you experience.

share|improve this answer
can you please give an example on how should i update the code ? at least how not to fall in the nested lapply thing ..? – ifreak Feb 19 '13 at 10:22
If you provide a reproducible example, I could provide some code. – Paul Hiemstra Feb 19 '13 at 10:24
Hi, I've updated the code and added a part of the dataframe, hope this is helpfull .. – ifreak Feb 19 '13 at 10:44

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