23

I have read a solution to this using tic(), toc() functions

tic <- function(gcFirst = TRUE, type=c("elapsed", "user.self", "sys.self"))
{
   type <- match.arg(type)
   assign(".type", type, envir=baseenv())
   if(gcFirst) gc(FALSE)
   tic <- proc.time()[type]         
   assign(".tic", tic, envir=baseenv())
   invisible(tic)
}

toc <- function()
{
   type <- get(".type", envir=baseenv())
   toc <- proc.time()[type]
   tic <- get(".tic", envir=baseenv())
   print(toc - tic)
   invisible(toc)
}




tic();
-----code----
toc();


elapsed 
   0.15 

But I would like to get a lot of precision in milliseconds?

Also I was using this

ptm <- proc.time()
---code
proc.time() - ptm

and get this

   user  system elapsed 
   1.55    0.25    1.84 

How to get more decimals or more precision?

1
  • 1
    From the help page for proc.time: "The resolution of the times will be system-specific and on Unix-alikes times are rounded to the nearest 1ms."
    – IRTFM
    Commented Sep 25, 2011 at 16:58

4 Answers 4

37

1) Timing is operating-system dependent. On Windows you may only get milliseconds.

2) No need to define tic() and toc(), R has system.time(). Here is an example:

R> system.time(replicate(100, sqrt(seq(1.0, 1.0e6))))
   user  system elapsed 
  2.210   0.650   2.867 
R> 

3) There are excellent add-on packages rbenchmark and microbenchmark.

3.1) rbenchmark is particularly useful for comparison of commands, but can also be used directly:

R> library(rbenchmark)
R> x <- seq(1.0, 1.0e6); benchmark(sqrt(x), log(x))
     test replications elapsed relative user.self sys.self user.child sys.child
2  log(x)          100   5.408  2.85835      5.21     0.19          0         0
1 sqrt(x)          100   1.892  1.00000      1.62     0.26          0         0
R>

3.2) microbenchmark excels at highest precision measurements:

R> library(microbenchmark)
R> x <- seq(1.0, 1.0e6); microbenchmark(sqrt(x), log(x))
Unit: nanoseconds
     expr      min       lq   median       uq      max
1  log(x) 50589289 50703132 55283301 55353594 55917216
2 sqrt(x) 15309426 15412135 15452990 20011418 39551819
R> 

and this last one, particularly on Linux, already gives you nano-seconds. It can also plot results etc so have a closer look at that package.

3
  • 1
    If I have more than one line of code that I'd like to measure how would I use system.time(replicate(1000, ----several lines of code------ )) ?
    – edgarmtze
    Commented Sep 25, 2011 at 16:48
  • Use curly brackets : system.time(replicate(1000, { ----several lines of code------ )})
    – Julien
    Commented Aug 6, 2023 at 17:11
  • Or system.time({ ----several lines of code------ })
    – Julien
    Commented Aug 6, 2023 at 17:13
7

This one is good:

options(digits.secs = 6) # This is set so that milliseconds are displayed

start.time <- Sys.time()

...Relevant code...

end.time <- Sys.time()
time.taken <- end.time - start.time
time.taken

Taken from here.

3
  • 1
    This will not provide the execution time accurate to milliseconds. The answer is just a copy of another except that answer is more appropriate for the question.
    – Hugh
    Commented Apr 15, 2016 at 11:58
  • 1
    Hmmm... Strange :) I just timed my own code and the result was: "Time difference of 1.47222 secs" Now I am curious what milliseconds are in your opinion? Commented Apr 15, 2016 at 12:00
  • 3
    You need to set options(digits.secs=6) to see Sys.time() does contain millisecond data. If not, it will only show the second level data, which confuse people into thinking this does not have millisecond info. Commented Aug 12, 2016 at 14:19
2

Take the difference of two Sys.time()s with a units= argument, ie.

start_time <- Sys.time()
## ... code here ...
end_time <- Sys.time()
as.numeric(difftime(end_time, start_time, units="secs")) * 1000

The unit of time is specified, (otherwise "secs" will be used when difftime < 1 min, or "mins" will be used when 1 min <= difftime < 1 hour). As the smallest unit available to use with difftime() is "secs", we multiply the result by 1000 thereafter.

0

Place start_time before your code and end_time after your code.

i.e.

start_time <- as.numeric(as.numeric(Sys.time())*1000, digits=15) # place at start

-----code----

end_time <- as.numeric(as.numeric(Sys.time())*1000, digits=15) # place at end

end_time - start_time    # run time (in milliseconds)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.