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I would like to optimize the following code. Currently it runs around 0.085 seconds on a 2Ghz dual core machine with 2MB L2 cache, for M being a 2404 by 100 numeric matrix:

Rescale <- function( M = utility.mat){
  exp.M <- exp(M) 
  result <- apply(exp.M, 1, function(x) x/sum(x))
  result <- t(result)
  return (result)
}

I have tried replacing apply() with for loop, which gives about the same performance. Any other ideas?

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1 Answer 1

up vote 3 down vote accepted

This appears to be a bout 6 times faster on my machine:

Rescale1 <- function(M){
    M <- exp(M)
    result <- M / rowSums(M)
    return (result)
}

I thought that maybe you could speed it up further by calling .Internal(rowSums()) but it didn't work out. Although that could simply be because I'm not using it correctly.

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is the t() needed in your code? –  Tyler Rinker May 10 '12 at 0:43
    
Oops...nope. Fixing. –  joran May 10 '12 at 0:45
    
Thanks. This gives me 0.28 second on my machine. –  user103500 May 10 '12 at 2:03
    
Calling .Internal (not recommended in general!) would only help if the overhead of calling rowSums was large. Since you only call it once, it's pointless. And in R 2.15 there is now .rowSums which is much less hacky. Still doesn't help here though. –  Tommy May 10 '12 at 9:54

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