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I've tried many things and I've been having quite a bit of trouble vectorizing this code. I have managed to figure out a way of doing this with lapply but it's slightly slower than the code below. Note that data is sorted by err where err is increasing with the rows.

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

data <- data.frame(X = rnorm(10000), Y = rnorm(10000), err = rnorm(10000))
data <- data[order(data$err),]
system.time(mySlowFunction(data, exp))

My slightly slower lapply version:

myEvenSlowerFunction <- function(data, vectorizedFunc){
  #data is a data.frame
  res <- unlist(lapply(data$err, function(x) {
    idx <- which(data$err >= x)
    wt <- vectorizedFunc(data$X[idx] + x)
    c(sum(data$Y[idx] / wt), sum(1 / wt))
  }))
  idx <- seq(1,length(res) - 1,by=2)
  data$N.wt <- res[idx]
  data$D.wt <- res[idx + 1]
  data
}

Thank you!

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  • Can you provide some example data and code for vectorizedFunc? In particular, is it supposed to return a scalar or vector?
    – Hong Ooi
    Nov 6, 2013 at 5:45
  • it returns a vector. Note that data$X[i:nrow(data)] is a vector. vectorizedFunc is any arbitrary function really. I edited the post so you can run the function on some 'data'
    – useRname_
    Nov 6, 2013 at 5:51

2 Answers 2

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I think your solution is probably about as good as it gets. You're already vectorising the inner function call, and there don't seem to be any major gains to be had from further tweaking. Quite the opposite, in fact.

Here's a fully vectorised "solution", using outer to generate the wt variable. This is SLOWER than your code, mostly because 1) it requires creating an NxN matrix in memory, where N = nrow(data); and 2) half of those matrix elements aren't necessary. Putting it out there to see if someone else can improve on it.

vecf <- function(data, vectorizedFunc)
{
    wt <- outer(data$e, data$X, "+")
    wt[lower.tri(wt)] <- NA
    wt <- vectorizedFunc(wt)
    data$N.wt <- rowSums(rep(data$Y, each=nrow(data))/wt, na.rm=TRUE)
    data$D.wt <- rowSums(1/wt, na.rm=TRUE)
    data
}
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  • Thank you. This is an interesting approach and hopefully it can be improved upon. It seems to be around 4 times slower
    – useRname_
    Nov 6, 2013 at 7:49
  • This is exactly what I've got when I did vectorize!
    – Tay Shin
    Nov 6, 2013 at 7:54
  • 1
    Yep. There's really nothing wrong with for loops. They used to be bad about 20 years ago, in the S-Plus days, but they've been tightened up a lot since then.
    – Hong Ooi
    Nov 6, 2013 at 7:55
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EDITED

wait. isn't R is just using single thread ? As far as I know, vectorization is for parallel computing.... If you are willing to use 'unrolling', this will greatly decrease the computation time.

myFunction <- function(data, vectorizedFunc){
  #data is a data.frame
  #vectorizedFunc is a function
  len=nrow(data)        ## if you are going to compute something over and over,  
                        ## justsave          them
  n = d = numeric(len)
  for (i in 1:len){
    err.i <- data$err[i]
    temp=data$X[i:len]   ## changed
    wt <- vectorizedFunc( temp+ err.i)
    n[i] <- sum(temp / wt)
    d[i] <- sum(1 / wt)
  }
  data$N.wt <- n
  data$D.wt <- d
  data
}

system.time(myFunction(data, exp))
#   user  system elapsed 
#   5.01    0.00    5.04 

#while your function gives

#   user  system elapsed 
#   6.15    0.02    6.20 
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  • thanks. that's just bad practice on my part. do you have any ideas on how to vectorize the function?
    – useRname_
    Nov 6, 2013 at 7:00
  • I have tried to think of ways to incorporate cumsum and/or expand.grid but I haven't thought hard enough. (memory is not a limitation for me)
    – useRname_
    Nov 6, 2013 at 7:29
  • Thank you for helping out! I'll know not to go down that route
    – useRname_
    Nov 6, 2013 at 7:37
  • No, vectorization is a standard tool for speeding up (and simplifying) code in a single 'thread.' Nov 6, 2013 at 13:17

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