# Slow nested loop in R

I'm new to R and having trouble vectorizing a nested loop that is particularly slow. The loop goes through a list of centers (vectors stored in a structure) and finds the distance between these vectors and the rows of an array called `x` below. I know this needs to be vectorized for speed, but cannot figure out the appropriate functions to or use of `apply` to do so.

``````clusterCenters <- matrix(runif(10000),nrow=100)
clusterMembers <- matrix(runif(400000),nrow=4000)

features <- matrix(0,(dim(clusterMembers)[1]),(dim(clusterCenters)[1]))

for(c in 1:dim(clusterCenters)[1]){
center <- clusterCenters[c,]
for(v in 1:(dim(clusterMembers)[1])){
vector <- clusterMembers[v,]
features[v,c] <- sqrt(sum((center - vector)^2))
}
}
``````

Thanks for any help.

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Please provide a reproducible example. Had you done that, you would have noticed the syntax error in your code. – Joshua Ulrich Mar 4 '13 at 17:33
(-1) I'd be happy to up-vote if you provide a reproducible example, that is expected of one, especially after 35 questions. – Arun Mar 4 '13 at 17:39
@Arun, my apologies. I know better and was sloppy. I've generated a reproducible example that illustrates the issue, although the dimensions involved in the real problem are much larger. – Sevenless Mar 4 '13 at 18:00

You can take advantage of R's recycling rules to make this a bit faster. But you have to know and account for the fact that R stores matrices in column-major order. You do that by transposing `clusterMembers` and then the `center` vector will be recycled along the columns of `t(clusterMembers)`.

``````set.seed(21)
clusterCenters <- matrix(runif(10000),nrow=100)
clusterMembers <- matrix(runif(400000),nrow=4000)
# your original code in function form
seven <- function() {
features <- matrix(0,(dim(clusterMembers)[1]),(dim(clusterCenters)[1]))
for(c in 1:dim(clusterCenters)[1]){
center <- clusterCenters[c,]
for(v in 1:(dim(clusterMembers)[1])){
vector <- clusterMembers[v,]
features[v,c] <- sqrt(sum((center - vector)^2))
}
}
features
}
# my fancy function
josh <- function() {
tcm <- t(clusterMembers)
Features <- matrix(0,ncol(tcm),nrow(clusterCenters))
for(i in 1:nrow(clusterCenters)) {
# clusterCenters[i,] returns a vector because drop=TRUE by default
Features[,i] <- colSums((clusterCenters[i,]-tcm)^2)
}
Features <- sqrt(Features)  # outside the loop to avoid function calls
}
system.time(seven())
#    user  system elapsed
#     2.7     0.0     2.7
system.time(josh())
#    user  system elapsed
#    0.28    0.11    0.39
identical(seven(),josh())
# [1] TRUE
``````
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