I am trying to run an R script that builds randomForests, and the script will die with a "cannot allocate vector of size 549.4 Mb"
error. I am running 64 bit R on a Google Cloud Engine linux instance with 8 cores and 7.2 GB Memory. I see other folks having trouble with the memory limits in R, but I don't understand why I am limited at so far below the physical allocation on the instance. A trace of the memory usage at the system level shows that the machine is not low on memory. The ulimit is set to unlimited for everything that looks important (output below). Question: how to increase the amount of memory R can allocate to vectors?
The code is designed to test the scalability/time gains from using randomForest on parallel cores. It works until the model needs to be fit with 6000 training examples, so I know the code functions for at least the inner most 2 loops. I've also tried adding explicit GC calls, and it the gcinfo output says I have ~50% remaining until I need to build the bigger model (with 6000 input points).
Code:
install.packages(c("randomForest", "doMC", "foreach", "dismo", "raster", "gbm", "SDMTools", "RMySQL", "rgdal", "gam", "earth"), repos='http://cran.mtu.edu/')
library(foreach)
library(raster)
library(dismo)
library(SDMTools)
library(parallel)
library(randomForest)
library(RMySQL)
library(doMC)
picea_points <- read.csv(paste(occPath, "picea_ready.csv", sep=""))
treeSeq <- seq(from=1000, to=11000, by=5000)
TexSeq <- seq(from=11000, to=11000, by =5000)
totalCores <- detectCores()
for (ncores in 3:totalCores){
registerDoMC(cores = ncores)
for (numTex in TexSeq){ ## change the number of training examples
for (numTrees in treeSeq){ ## number of randomForest trees
for (rep in 1:5){ ## replicate benchmarks
## Take a testing set
t1 <- Sys.time()
q <- nrow(picea_points)
q_test <- 0.75*q
testing_set <- picea_points[sample(q, q_test), ] ## select q_test random rows from points
## now take a random sampling on nocc rows
training_set <- points[sample(q, numTex), ] ## this is what we will build the model upon
training_set <- na.omit(training_set)
x <- as.matrix(training_set[c('bio2', 'bio7', 'bio8', 'bio15', 'bio18', 'bio19')])
y <- training_set[['presence']]
model <- foreach(ntree=rep(numTrees, ncores), .combine=combine, .multicombine=TRUE,
.packages='randomForest') %dopar% {
randomForest(x, y, ntree=ntree)}
t2 <- Sys.time()
# save to database
# ...
}
}
}
}
ulimit -a
:
core file size (blocks, -c) 0 data seg size (kbytes, -d) unlimited scheduling priority (-e) 0 file size (blocks, -f) unlimited pending signals (-i) 28716 max locked memory (kbytes, -l) 64 max memory size (kbytes, -m) unlimited open files (-n) 65536 pipe size (512 bytes, -p) 8 POSIX message queues (bytes, -q) 819200 real-time priority (-r) 0 stack size (kbytes, -s) 8192 cpu time (seconds, -t) unlimited max user processes (-u) 28716 virtual memory (kbytes, -v) unlimited file locks (-x) unlimited
R Info
R version 3.3.1 (2016-06-21) Platform: x86_64-pc-linux-gnu (64-bit) Running under: Debian GNU/Linux 8 (jessie)
I have the error log and can post that too if it would be helpful.