# efficient vectorizisation of a double for loop

how can one vectorize the following double for loop in R?

a <-  seq(1,10, length=5)
b <- seq(0,1, length=4)
fun <- function(a,b){return(a+b)}

out <- matrix(NaN, nrow=5, ncol=4)

for(i in 1:5) {
for(j in 1:4) {
out[i, j] <- fun(a[i], b[j])
}
}


outer(1:nrow(out), 1:ncol(out), FUN = fun(a,b))
mapply(out, fun)

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Why not use outer(a, b, fun)? –  sgibb Sep 24 '13 at 17:35

outer(a, b, '+')

## > outer(a, b, '+')
##       [,1]      [,2]      [,3]  [,4]
## [1,]  1.00  1.333333  1.666667  2.00
## [2,]  3.25  3.583333  3.916667  4.25
## [3,]  5.50  5.833333  6.166667  6.50
## [4,]  7.75  8.083333  8.416667  8.75
## [5,] 10.00 10.333333 10.666667 11.00

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I have a much more complicated function "fun", hence I keep getting errors "Error in outer(a, b, function(ai, bj) { : dims [product 900] do not match the length of object [1]".. But your answer is useful, thanks! –  T_D Sep 24 '13 at 17:42
@T_D This should help you on how you can use outer and rewrite your "fun". –  agstudy Sep 24 '13 at 18:02
@T_D I'd say post the function you're attempting to use then. –  Tyler Rinker Sep 24 '13 at 18:07

As a general rule, vectorizing the innermost loop is usually enough to get you the performance gains. In this case that would mean:

for(i in 1:5) {
out[i,]<- a[i] + b
}


Assuming that a and b both have length O(n), then by doing it this way, you ensure that the overhead from iterating through a loop in R is only incurred O(n) times, rather than O(n^2) times if you do both loops in R. Since the running time of the algorithm is going to be O(n^2) anyway, the additional O(n) overhead won't affect the running time much.

Of course, for this particular example, you could use outer like others have suggested.

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I upvoted because someone downvoted. While this isn't the best solution (likely) it removes a for loop and replaces it with vectorization. I don't think this deserved a downvote. –  Tyler Rinker Sep 24 '13 at 19:26