# Replicate() verses a for loop?

Does anyone know how the replicate() function works in R and how efficient it is relative to using a for loop?

For example, is there any efficiency difference between...

``````means <- replicate(100000, mean(rnorm(50)))
``````

And...

``````means <- c()
for(i in 1:100000) {
means <- c(means, mean(rnorm(50)))
}
``````

(I may have typed something slightly off above, but you get the idea.)

-

You can just benchmark the code and get your answer empirically. Note that I also added a second for loop flavor which circumvents the growing vector problem by preallocating the vector.

``````repl_function = function(no_rep) means <- replicate(no_rep, mean(rnorm(50)))
for_loop = function(no_rep) {
means <- c()
for(i in 1:no_rep) {
means <- c(means, mean(rnorm(50)))
}
means
}
for_loop_prealloc = function(no_rep) {
means <- vector(mode = "numeric", length = no_rep)
for(i in 1:no_rep) {
means[i] <- mean(rnorm(50))
}
means
}

no_loops = 50e3
benchmark(repl_function(no_loops),
for_loop(no_loops),
for_loop_prealloc(no_loops),
replications = 3)

test replications elapsed relative user.self sys.self
2          for_loop(no_loops)            3  18.886    6.274    17.803    0.894
3 for_loop_prealloc(no_loops)            3   3.209    1.066     3.189    0.000
1     repl_function(no_loops)            3   3.010    1.000     2.997    0.000
user.child sys.child
2          0         0
3          0         0
1          0         0
``````

Looking at the `relative` column, the un-preallocated for loop is 6.2 times slower. However, the preallocated for loop is just as fast as `replicate`.

-

`replicate` is a wrapper for `sapply`, which itself is a wrapper for `lapply`. `lapply` is ultimately an `.Internal` function that is written in C and performs the looping in an optimised way, rather than through the interpreter. It's main advantages are efficient memory management, especially compared to the highly inefficient vector growing method you present above.

-
A preallocated for loop is just as fast as `replicate`. I think that is because the major part of the code is spent in R. Reimplementing the whole loop around `mean`, in e.g. C++ would probably speed things up quite a bit. See the benchmarks in my answer. –  Paul Hiemstra Nov 16 '12 at 8:32