I'm trying to parallelize (using snow::parLapply) some code that depends on a package (ie, a package other than snow). Objects referenced in the function called by parLapply must be explicitly passed to the cluster using clusterExport. Is there any way to pass an entire package to the cluster rather than having to explicitly name every function (including a package's internal functions called by user functions!) in clusterExport?


Install the package on all nodes, and have your code call library(thePackageYouUse) on all nodes via one the available commands, egg something like

 clusterApply(cl, library(thePackageYouUse))

I think the parallel package which comes with recent R releases has examples -- see for example here from help(clusterApply) where the boot package is loaded everywhere:

 ## A bootstrapping example, which can be done in many ways:
 clusterEvalQ(cl, {
   ## set up each worker.  Could also use clusterExport()
   cd4.rg <- function(data, mle) MASS::mvrnorm(nrow(data), mle$m, mle$v)
   cd4.mle <- list(m = colMeans(cd4), v = var(cd4))
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    Thanks Dirk. Are there any reasons why doing clusterExport(ls()) would be dangerous? This wouldn't help with passing functions from packages but it would save a lot of headache to quickly parallelize for loops (someone elses, not mine!) which rely on a ton of global variables. – Michael Sep 2 '12 at 1:17
  • It's just bad design in that it uses a scattershot plus kitchen sink approach. Design what you need in a serial solution, then make it parallel. – Dirk Eddelbuettel Sep 2 '12 at 1:18
  • Some problems are tricky. It may make sense to have each node acquire its data rather than shipping it from the master, but sometimes you can't. It all depends -- you got to try it. When communication costs are really high relative to computation costs, your gains will be limited. The r-sig-hpc list good for more in-depth questions. – Dirk Eddelbuettel Sep 2 '12 at 1:25
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    I realise this is an old post, but I think that the first suggestion (clusterApply) should be: clusterCall(cl, function() library(thePackageYouUse)) – CnrL Jun 2 '14 at 15:24
  • @CnrL Thank you for that comment. That's what I needed. – Matthew Crews Sep 10 '14 at 21:29

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