Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am using parLapply function on 20 cores. I guess it is the same for the other function parSapply etc...

First, is it a bad practice to pass a cluster as an argument into a function so that the function can then dispatch the use of the cluster between different subfunctions?

Second, I pass this cluster argument into a function so i suppose it is the same cluster everytime i use parLapply, would it be better to use a new cluster for every parLapply call?

Thanks

Rgds

share|improve this question
    
I would be interested in a modified vsn of Question One: is there any functional difference between passing the cluster and not passing the cluster as an argument to the main function? –  Carl Witthoft Jan 17 at 14:46

2 Answers 2

I am not an expert in parallel computing but will venture an answer anyway.

1) It is not bad practice to pass the cluster around as a function argument. It is just a collection of connections to worker processes, similar to connections to a file.

2) Restarting the cluster between calls is not needed. There will be problems if something has gone seriously wrong with a worker process, but in that case I would recommend cancelling the whole computation and restarting the master process too.

share|improve this answer
    
It seems that the calculation slows down the more i use the cluster for different parallel apply. –  user1176316 Jan 17 at 15:51
    
That's odd. I Have had similar problems with slow execution and sometimes even lost workers, if I abort and try to restart a parallel computation. But my only remedy to that has been to abort and restart the whole thing. It's hard to tell what is the cause because it is so system specific. –  Backlin Jan 18 at 17:37

It's not bad practice to pass cluster objects as function arguments, so I don't see anything wrong with using them to dispatch between different sub-functions.

The problem with creating cluster objects for each operation is that it may take significant time, especially when starting many workers via ssh on a cluster, for example. However, it may be useful in some cases, and I think that that may be the purpose of Fork clusters, which are created by the makeForkCluster function in the parallel package. Fork cluster workers are very much like the workers forked by mclapply, which does create workers every time it's called. However, I think this is rarely done.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.