I'm aiming to compare the workings of Rmpi and multicore on a duel processor quad core machine with 64 bit R-2.11.1 Kubuntu 10.4. It's impossible for me to get a small reproducable code segment to show what I mean, but if I show what works for mclapply, I'd hope it's possible to be shown what would be the equivalent way with mpi.apply. The function lr.gbm has variables trees, folds and minob which I use with mclapply like this: out <- mclapply(subsets, lr.gbm, mc.cores = 6, trees=trees, folds=folds, minob=minob) subsets is simply a vector that looks like this: [1] "COB_2" "CNJ_2" "COB_3" "CNJ_3" "COB_4" "CNJ_4" and that works more or less fine to produce a list of length 6 which I've named with the elements of the subsets vector. names(out) <- subsets Now, when I use mpi.apply, I make the trees, folds and minob available to all slaves thus: mpi.spawn.Rslaves(nslaves=6) mpi.bcast.Robj2slave(trees) mpi.bcast.Robj2slave(folds) mpi.bcast.Robj2slave(minob) but, I can't work out what sort of 'array' is required for the first argument to mpi.apply. out.mpi <- mpi.apply(subsets.l, lr.gbm) What should subsets.l look like? I tried a list of length 6 with elements the same as those in 'subsets', but evidently, something more array-like is required, but I'm out of ideas. TIA -- ~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~. ___ Patrick Connolly {~._.~} Great minds discuss ideas _( Y )_ Average minds discuss events (:_~*~_:) Small minds discuss people (_)-(_) ..... Eleanor Roosevelt ~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.~.