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Parallel processing in R limited

I've written some code in R multicore, and I'm running it on a 24-core machine. In fact there are only 12 cores, but they are hyperthreaded, so it looks like there are 24.

Here's what's strange: all the threads run on the same single core! So they each only use a tiny amount of cpu, instead of each running on a single core, and chewing up all available cores.

For simplicity, I'm just running 4 threads:

mclapply( 1:30, function(size) {
    # time consuming stuff that is cpu bound (think "forecast.ets" et al)
}, mc.cores = 4, mc.preschedule = F )

Prior to running this, there is already an R process running on one core, using 100% of that core's capacity:

enter image description here

Next, I launch the "multicore process", and 4 extra threads fight for the same core!:

enter image description here

... so, they each get 12% of one core, or about 1% of the available processing power, when they should each be able to get 100% of one core. Also, the other R process now only get 50% of the core.

OS is Ubuntu 12.04 64-bit. Hardware is Intel. R is version 2.15.2 "trick or treat"

Thoughts? (I know I could just use snowfall, but I have a ton of variables, and I really don't want to have to sfExport all of them!)

Edit: oh, I guess there's some global lock somewhere? But still, why would there be a conflict between two completely separate R processes? I can run two R processes in parallel just fine, with each taking 100% of a core's CPU.

Edit2: Thanks to Dirk's pointer, I rebuilt openblas, and it's looking much healthier now!:

enter image description here

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marked as duplicate by Gavin Simpson, mnel, Code-Apprentice, j0k, Steve Fenton Oct 29 '12 at 23:58

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

Have you run "registerDC" before "doMC" ? –  Gong-Yi Liao Oct 29 '12 at 17:51
Haven't heard of either, so no, and I will go and find what those are now. –  Hugh Perkins Oct 29 '12 at 17:51
Hmmm, I'm using the multicore package that comes with R, as the parallel package. There doesn't seem to be either of those two functions. Should I be better off downloading the raw multicore package instead of using parallel? –  Hugh Perkins Oct 29 '12 at 17:52
No. Did you read the vignette that came with the package? –  Gavin Simpson Oct 29 '12 at 17:56
No. I will go and look for a vignette now. I read the multicore.pdf file, and the ?multicore output. –  Hugh Perkins Oct 29 '12 at 17:58

1 Answer 1

up vote 8 down vote accepted

A possible issue is a possible side effect of the OpenBLAS package which sets CPU affinity such that processes stick to one core. See Parallel processing in R limited for a discussion and link to more discussion on the r-sig-hpc list which has a fix.

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Is that not what I have in the third line of my code above? }, mc.cores = 4, mc.preschedule = F ) –  Hugh Perkins Oct 29 '12 at 18:08
Yes but if you want 24, setting 4 won't help :) I recommend a simple example -- such as the while(1) I had there and just call some simple base functions. –  Dirk Eddelbuettel Oct 29 '12 at 18:19
Do you have libopenblas-base installed? There is an issue with CPU affinity. See Claudia Beleites answer here:… –  Dirk Eddelbuettel Oct 29 '12 at 18:20
Yes, I'm using openblas. I will take a look at that page. –  Hugh Perkins Oct 29 '12 at 18:46
@HughPerkins: or maybe close this question as a duplicate. –  Joshua Ulrich Oct 29 '12 at 19:24

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