I am a user of a Rocks 4.3 cluster with 22 nodes. I am using it to run a clustering function - parPvclust - on a dataset of 2 million rows and 100 columns (it clusters the sample names in the columns). To run parPvclust, I am using a C-shell script in which I've embedded some R code. Using the R code as it is below with a dataset of2 million rows and 100 columns, I always crash one of the nodes.
library("Rmpi") library("pvclust") library("snow") cl <- makeCluster() load("dataset.RData") # dataset.m: 2 million rows x 100 columns # subset.m <- dataset.m[1:200000,] # 200 000 rows x 100 columns output <- parPvclust(cl, dataset.m, method.dist="correlation", method.hclust="ward",nboot=500) save(output,"clust.RData")
I know that the C-shell script code works, and I know that the R-code actually works with a smaller dataset because if I use a subset of the dataset (commented out above), the code runs fine and I get an output. Likewise, if I use the non-parallelized version (i.e. just pvclust), that also works fine, although running the non-parallelized version defeats the gain in speed of running it in parallel.
The parPvclust function requires the Rmpi and snow R packages (for parallelization) and the pvclust package.
The following can produce a reasonable approximation of the dataset I'm using:
dataset <- matrix(unlist(lapply(rnorm(n=2000,0,1),rep,sample.int(1000,1))),ncol=100,nrow=2000000)
Are there any ideas as to why I always crash a node with the larger dataset and not the smaller one?