# Hope to make the R code more efficient [closed]

I have the following R code:

``````pp = function(N,J,K){
for(i in 1:100){
pai=runif(J)
alpha=matrix(rbinom(N*K,1,0.5),nrow=N)
Q=matrix(rbinom(J*K,1,0.5),nrow=J)
r=matrix(runif(J*K),nrow=J)
ta=r^Q
arrayalpha=array(rep((1-alpha), J),c(N,K,J))
arrayta=array(rep(ta, N),c(J,K,N))
arraytap=aperm(arrayta, c(3,2,1))
tare=arraytap^arrayalpha #ta^re
arrayprod=apply(tare,c(1,3),prod)
repai=t(matrix(rep(pai,N),nrow=J))
predarray=t(arrayprod*repai)
}
predarray
}

> system.time(pp(500,20,5))
user  system elapsed
5.381   0.008  12.468
``````

How can I make it more efficient? Thank you for your help.

-
Without any explanation of what you are trying to do, and what you think is the bottleneck in your code, this is `too localized`. –  mnel Feb 20 '13 at 5:15
What is this code intended to do? Code comments and a little explanation will be of great benefit. What is input? What is output? There might be an existing function to do what you're trying to do, but it's no fun stepping through code line by line blindly searching for efficiencies. –  thelatemail Feb 20 '13 at 5:16
I wonder whether the question will be more at home at sister sites: scicomp.stackexchange.com or stats.stackexchange.com or if it can be framed as linear algebra, math.stackexchange.com –  minopret Feb 20 '13 at 5:19
The site codereview.stackexchange.com is a better place for this question. –  Sven Hohenstein Feb 20 '13 at 7:17

## closed as too localized by mnel, thelatemail, agstudy, Sven Hohenstein, plannapusFeb 20 '13 at 7:51

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Considering that `predarray` gets replaced completely each loop, you would obtain the same results without iterating (but way faster).

Seriously, though, don't you want to accumulate predarray?, like:

``````pp = function(N,J,K){
predarray <- array(numeric(100*J*N), c(100, J, N))
for(i in 1:100){
...
predarray[i, , ] <- t(arrayprod*repai)}
predarray
}
``````

That would return 100 predarray(JxN) matrices (each as a dim:1 slice of a (100xJxN) array). Also, it should decrease your timing since the array is pre-allocated (versus allocating it 100 times, as in your code).

To make it more efficient, your goal should be to avoid explicit R looping. The best way to do this would be explicit parallelization, since the problem seems "embarrassingly parallel" (i.e. each iteration should be completely independent on the other ones).

Another option is that since explicit R looping is slower than implicit C looping (which is used in vectorized operations, the `apply` family of functions) and the package `plyr`. You should go on that like:

• Set `num <- 100` (i.e. the number of "iterations", inside the definition of pp)
• Generate each of `(pai, alpha)` as an array with an additional dimension of length `num` (i.e. each element or slice will be equivalent to the original iterations on those variables).
• `ta` and the rest of matrix operations are the bottlenecks, since you are operating on two matrices each time in `(ta, arrayta, tare, predarray)`.
• The bottlenecks can be fixed by generating (or joining) each pair of matrix operands in an additional dimension on the same array (or each pari as an element in a list, when not of the same dimensions), and then operating over the margin that represents the "iteration".

Example with Q and r:

``````# Q and r in one array of dimensions (J x K x iterations x 2)
# 100 Qs are stored in [,,,1] and 100 rs in [,,,2]
Qr <- array(c(Q=rbinom(J*K*100,1,0.5),
r=runif(J*K*100)),
dim=c(J=J, K=K, iter=100, var=2))

# Third dimension is equivalent to each iteration
Qr[,,1,]

# And you operate each Q^r using apply, over each iteration
library(package=plyr)  # plyr is needed for this
ta <- alply(.data=Qr, .margins=3, .fun=function(x) x[,,2]^x[,,1])
``````
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yes, thanks @Oscar. –  Stephen Jung Feb 20 '13 at 5:42