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I have similar code implemented already that takes advantage of the cumsum function in R. I cannot use that in this case because of some.step.function.

Besides using the compiler package, does anyone have any advice for significant speed improvments? Thank you!

genIPCWNumDenom <- function(data, some.step.function){
  #data is a data.frame
  #some.step.function is a function
  n <- d <- array(0, dim = c(nrow(data),1))
  for (i in 1:nrow(data)){
    n.tmp <- d.tmp <- 0
    for (j in i:nrow(data)){
      wt <- some.step.function(data$X[j] + data$err[i])
      n.tmp <- n.tmp + data$Y[j] / wt
      d.tmp <- d.tmp + 1 / wt
    }
    n[i] <- n.tmp  
    d[i] <- d.tmp
  }
  data$N.wt <- n
  data$D.wt <- d
  data
}

EDIT: Thanks for the help so far. Removing the inner loop made the code runnable. I'm hoping to further improve the speed. Here is my loop currently:

for (i in 1:nrow(data)){
    err.i <- data$err[i]
    wt <- some.step.func(data$X[i:nrow(data)] + err.i)
    n[i] <- sum(data$Y[i:nrow(data)] / wt)
    d[i] <- sum(1 / wt)
}
share|improve this question
    
is some.step.function vectorized? In other words, can you run some.step.function(c(a, b)) for some scalars a and b and it will return c(some.step.function(a), some.step.function(b))? If yes, you can definitely make this a lot faster by removing at least one of the two for loops. –  flodel Nov 3 '13 at 20:20
    
Yes some.step.function is vectorized. To me it is not obvious how to exploit this though EDIT: the inner loops looks prime for removal due to this –  useRname_ Nov 3 '13 at 20:40
    
Thanks. Removing the inner loop made the code runnable. I'm hoping to further improve the speed. Here is my loop currently: for (i in 1:nrow(data)){ err.i <- data$err[i] wt <- some.step.func(data$X[i:nrow(data)] + err.i) n[i] <- sum(data$Y[i:nrow(data)] / wt) d[i] <- sum(1 / wt) } –  useRname_ Nov 3 '13 at 20:49

1 Answer 1

You can evaluate data$err[i] in the outer loop.

for (i in 1:nrow(data)){
    n.tmp <- d.tmp <- 0
    datai <- data$err[i]
    for (j in i:nrow(data)){
      wt <- some.step.function(data$X[j] + datai)
      n.tmp <- n.tmp + data$Y[j] / wt
      d.tmp <- d.tmp + 1 / wt
    }
    n[i] <- n.tmp  
    d[i] <- d.tmp
}
share|improve this answer
    
Thank you that's a good point. That's due to negligence on my part. I'm hoping that there's some structural change I can make or some way to vectorize my code –  useRname_ Nov 3 '13 at 20:00
    
You can use the Reduce function, but there shouldn't be any structural difference between that and your loop. –  Rob Lyndon Nov 3 '13 at 20:06
    
I'm not familiar with Reduce. Does it typically lead to speed improvements? –  useRname_ Nov 3 '13 at 20:14

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