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the difference between doMC and doParallel in R

What's the difference between doParallel and doMC in R concerning foreach function? doParallel supports windows, unix-like, while doMC supports unix-like only. In other words, why doParallel cannot replace doMC directly? Thank you.

Update: doParallel is built on parallel, which is essentially a merger of multicore and snow and automatically uses the appropriate tool for your system. As a result, we can use doParallel to support multi systems. In other words, we can use doParallel to replace doMC.

ref: http://michaeljkoontz.weebly.com/uploads/1/9/9/4/19940979/parallel.pdf

BTW, what is the difference between registerDoParallel(ncores=3) and

cl <- makeCluster(3) registerDoParallel(cl) 

It seems registerDoParallel(ncores=3) can stop cluster automatically, while the second do not stop automatically and needs stopCluster(cl).

ref: http://cran.r-project.org/web/packages/doParallel/vignettes/gettingstartedParallel.pdf

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Zhilong Jia Avatar asked Mar 11 '15 14:03

Zhilong Jia


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What does doParallel do in R?

The doParallel package acts as an interface between foreach and the parallel package of R 2.14. 0 and later. The parallel package is essentially a merger of the multicore package, which was written by Simon Urbanek, and the snow package, which was written by Luke Tierney and others.


1 Answers

The doParallel package is a merger of doSNOW and doMC, much as parallel is a merger of snow and multicore. But although doParallel has all the features of doMC, I was told by Rich Calaway of Revolution Analytics that they wanted to keep doMC around because it was more efficient in certain circumstances, even though doMC now uses parallel just like doParallel. I haven't personally run any benchmarks to determine if and when there is a significant difference.

I tend to use doMC on a Linux or Mac OS X computer, doParallel on a Windows computer, and doMPI on a Linux cluster, but doParallel does work on all of those platforms.


As for the different registration methods, if you execute:

registerDoParallel(cores=3) 

on a Windows machine, it will create a cluster object implicitly for later use with clusterApplyLB, whereas on Linux and Mac OS X, no cluster object is created or used. The number of cores is simply remembered and used as the value of the mc.cores argument later when calling mclapply.

If you execute:

cl <- makeCluster(3) registerDoParallel(cl) 

then the registered cluster object will be used with clusterApplyLB regardless of the platform. You are correct that in this case, it is your responsibility to shutdown the cluster object since you created it, whereas the implicit cluster object is automatically shutdown.

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Steve Weston Avatar answered Oct 18 '22 22:10

Steve Weston