On Tue, Nov 17, 2009 at 6:01 PM, raluca <uca...@hotmail.com> wrote: > > Hello, > > Is the first time I am using SNOW package and I am trying to tune the cost > parameter for a linear SVM, where the cost (variable cost1) takes 10 values > between 0.5 and 30. > > I have a large dataset and a pc which is not very powerful, so I need to > tune the parameters using both CPUs of the pc. > > Somehow I cannot manage to do it. It seems that both CPUs are fitting the > model for the same values of cost1, I guess the first 5, but not for the > last 5. > > Please, can anyone help me! :-((
This is pretty easy to do with the train() funciton in the caret package. From ?train, here is an example for a different data set > library(caret) > library(snow) > library(mlbench) > > data(BostonHousing) > > mpiCalcs <- function(X, FUN, ...) + { + theDots <- list(...) + parLapply(theDots$cl, X, FUN) + } > > library(snow) > cl <- makeCluster(5, "MPI") > > ## 50 bootstrap models distributed across 5 workers > mpiControl <- trainControl(workers = 5, + number = 50, + computeFunction = mpiCalcs, + computeArgs = list(cl = cl)) > set.seed(1) > usingMPI <- train(medv ~ ., + data = BostonHousing, + "svmLinear", + tuneGrid = data.frame(.C = seq(.5, 30, length = 10)), + trControl = mpiControl) > > stopCluster(cl) [1] 1 -- Max ______________________________________________ R-help@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.