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I'm trying to use doSMP / foreach to parallelize some code in R.

I had a huge 2d matrix of genetic data - 10,000 observations (rows), and 3 million variables (columns). I had to split this data up into chunks of 1000 variables because of memory issues.

I want to read in each file, do some stats, and write out those results to a file. This is easy with a for loop, but I want to use foreach to speed it up. Here's what I'm doing:

# load doSMP, foreach, iterators, codetools

# files i'm processing
print(filelist <- system("ls matrix1k.*.txt", T))

#initialize processes
w <- startWorkers(2)

# for each file, read into memory, do some stuff, write out results.
foreach (i =  1:length(filelist)) %dopar% {
    file <- filelist[i]
    thisfile <- read.table(file,header=T) 
    # here i'll do stuff using that file
    # here i'll write out results of the stuff I do above

#stop processes

But this results in an error: Error in { : task 2 failed - "cannot open the connection". When I change the %dopar% to %do%, there's no issue at all.

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Not answering your question, but putting the data into a NetCDF file (with package ncdf) would make it easy and fast to input chunks of data; using scan() instead of read.table will be much faster. And I'd guess opening the files outside the loop (?file) might work –  Martin Morgan Mar 23 '11 at 3:57
Still now answering your question, but a halfway house to what @Martin suggests is to use the colClasses argument in read.table. This can really speed things up. –  csgillespie Mar 23 '11 at 10:11
could you give a bit more detail? 1) did it open some files, or does it fail immediately? 2) are you writing to different files or to one and the same? –  Joris Meys Apr 4 '11 at 9:32

2 Answers 2

up vote 1 down vote accepted

I don't think that parallel input does speed up things. The limiting factor is the disk controller, so it does not help when you open up 2 connections and read the data because it has to go through the disk controller anyway. Disk IO is a serial job (sadly) unless you have a RAID array with several disk controllers. Parallel IO only works well on clusters where each machine has its own disk.

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In theory you are right. However, in practice with certain size data sets in R using the functions OP is using (probably for the very inefficiency reasons mentioned in the comments above), I have seen considerable speed increases using parallel code. –  rpierce Jul 5 '13 at 13:09

Inside your foreach loop you must call the package tha you are going to use.



foreach (i =  1:length(filelist), .packages = "rgdal") %dopar% ......

in your case, you shoud call a vector of packages.



package.vector <- c("package.1","package.2",etc)

foreach (i =  1:length(filelist), .packages = package.vector) %dopar% ......

I recomend you call all packages that you are using

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