I am trying to reduce the memory footprint of an R package and have noticed behaviour that I can't seem to suppress. See the below example:
x <- matrix(runif(1.5e7), ncol = 200)
## CASE 1: Test with half of columns
gc(reset = TRUE)
a <- apply(x[, 1:100], 2, quantile)
gc()
# used (Mb) gc trigger (Mb) max used (Mb)
# Ncells 190549 10.2 407500 21.8 222055 11.9
# Vcells 15292303 116.7 35490421 270.8 35484249 270.8
object.size(a)
# 4696 bytes
rm(a)
## CASE 2: Test with all columns
gc(reset = TRUE)
b <- apply(x, 2, quantile)
gc()
# used (Mb) gc trigger (Mb) max used (Mb)
# Ncells 190824 10.2 407500 21.8 245786 13.2
# Vcells 15293740 116.7 39292189 299.8 39286529 299.8
object.size(b)
# 8696 bytes
rm(b)
## CASE 3: Test with all columns + call gc
gc(reset = TRUE)
c <- apply(x, 2, function(i) { r <- quantile(i); gc(); r })
gc()
# used (Mb) gc trigger (Mb) max used (Mb)
# Ncells 191396 10.3 407500 21.8 197511 10.6
# Vcells 15294307 116.7 45737818 349.0 30877185 235.6
object.size(c)
# 8696 bytes
rm(c)
a
and b
differ by only ~4kb yet the garbage collector reports a difference of ~30mb between the peak memory usage of cases 1 and 2. c
uses less memory than both a
and c
, I imagine not without a considerable penalty in runtime.
The peak memory allocation seems to positively correlate with the number of columns considered in the call to apply
, but why? Does the call to apply
result in memory allocation living beyond the scope of an iteration? I would have expected any internal temporaries to be freed (or marked as being unused) by the gc
before the end of each iteration.
This behaviour can be reproduced using lapply
over data.frame
s and also with different functions in lieu of quantile
.
I am under the impression that I am overlooking a very fundamental aspect of memory usage behaviour in R
but still can't wrap my head around it. Ultimately, my question is: how do I further reduce the memory footprint in cases like the example above?
Thanks in advance and do not hesitate to point out any inaccuracies in my question.
EDIT:
As per @ChristopherLouden's suggestion, I used calls to mem
in place of gc
and all three cases were described as taking ~126.9182mb.
## http://adv-r.had.co.nz/memory.html#garbarge-collection
mem <- function() {
bit <- 8L * .Machine$sizeof.pointer
if (!(bit == 32L || bit == 64L)) {
stop("Unknown architecture", call. = FALSE)
}
node_size <- if (bit == 32L) 28L else 56L
usage <- gc()
sum(usage[, 1] * c(node_size, 8)) / (1024 ^ 2)
}