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How could I speed up the following while loop?

count <- function(start, stepsize, threshold) {
  i <- 1;
  while ( start <= threshold ) {
    start <- stepsize*i+start;
    i <- i+1;
  return( i-1 );

system.time(count(1, 0.004, 1e10))
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for this particular problem I would work out the summation by hand -- e.g. you know that sum(i) from 1 to n is n*(n+1) -- then solve the appropriate quadratic equation and adjust. You could also byte-compile ... is this part of a larger problem, or do you just need to solve this exact problem? –  Ben Bolker Jan 8 '12 at 15:17
Thats it! Thanks a lot! –  rua Jan 8 '12 at 16:27

3 Answers 3

up vote 10 down vote accepted

Working out the sums as in the comment above:

## start + S*n*(n-1)/2 = T
## (T-start)*2/S = n*(n-1)
## n*(n-1) - (T-start)*2/S = 0

A function to solve this quadratic equation:

ff <- function(start,stepsize,threshold) {
  C <- (threshold-start)*2/stepsize
  ceiling((-1 + sqrt(1+4*C))/2)

This solution takes essentially no time ...

> system.time(cc <- count(1, 0.004, 1e10))
   user  system elapsed 
  5.372   0.056   5.642 
> system.time(cc2 <- ff(1, 0.004, 1e10))
   user  system elapsed 
      0       0       0 
> cc2
[1] 2236068
> cc
[1] 2236068

The question is whether this generalizes to the exact problem you need to solve.

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It looks like you are trying to do this:

recount <- function(start, stepsize, threshold) {
  NewCount <<- floor((threshold-start)/stepsize)
(fast <- system.time(recount(1, 0.004, 1e10)))

It takes no measurable time.

Without the global variable, here is what it looks like:

recount <- function(start, stepsize, threshold) {
(fast <- system.time(NewCount <- recount(1, 0.004, 1e10)))
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?? but this doesn't give the same answer as the OP's test code ... and setting a global variable rather than returning a value is rather unidiomatic ... –  Ben Bolker Jan 12 '12 at 16:13

There is an interesting blog how to speed a loop in R with some tips

Another aspect of speeding up loops in R

This is the example reported in that page


#Ex. 1 - Creation of a results matrix where its memory
#allocation must continually be redefined
t1 <- Sys.time()
x <- c()
for(i in seq(NROW)){
   x <- rbind(x, runif(NCOL))
T1 <- Sys.time() - t1

#Ex. 2 - Creation of a results matrix where its memory
#allocation is defined only once, at the beginning of the loop.
t2 <- Sys.time()
x <- matrix(NA, nrow=NROW, ncol=NCOL)
for(i in seq(NROW)){
   x[i,] <- runif(NCOL)
T2 <- Sys.time() - t2

#Ex. 3 - Creation of a results object as an empty list of length NROW. 
#Much faster than Ex. 1 even though the size of the list is
#not known at the start of the loop.
t3 <- Sys.time()
x <- vector(mode="list", NROW)
for(i in seq(NROW)){
   x[[i]] <- runif(NCOL)
T3 <- Sys.time() - t3

barplot(c(T1, T2, T3), names.arg = c("Concatenate result", "Fill empty matrix", "Fill empty list"),ylab="Time in seconds")

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