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I'm running a large number of iterations in parallel. Certain iterates take much (say 100x) longer than others. I want to time these out, but I'd rather not have to dig into the C code behind the function (call it fun.c) doing the heavy lifting. I am hoping there is something similar to try() but with a time.out option. Then I could do something like:

for (i in 1:1000) {

So if fun.c took longer than 60 seconds for a certain iterate, then the revamped try() function would just kill it and return a warning or something along those lines.

Anybody have any advice? Thanks in advance.

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There are some nice answers below. Also look at ?setTimeLimit in base R. –  Andrie Oct 14 '14 at 8:05

2 Answers 2

See this thread:

and ?evalWithTimeout in the R.utils package.

Here's an example:


## function that can take a long time
fn1 <- function(x)
    for (i in 1:x^x)
        rep(x, 1000)

## test timeout
evalWithTimeout(fn1(3), timeout = 1, onTimeout = "error") # should be fine
evalWithTimeout(fn1(8), timeout = 1, onTimeout = "error") # should timeout
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This seems perfect, but my initial experimentation with evalWithTimeout() makes me think it doesn't play well at all with the C code. It seems to be greatly lengthening the run time for the iterations that are ok. –  Ben Oct 25 '11 at 16:01
@Ben Ah, that is too bad. I am not familiar with the inner workings of evalWithTimeout(). Perhaps you can try asking the package's author, Henrik Bengtsson (website:, for any tips on speeding things up. –  jthetzel Oct 25 '11 at 16:24

This sounds like it should be something that should be managed by whatever is doling out tasks to the workers, rather than something that should be contained in a worker thread. The multicore package supports timeouts for some functions; snow doesn't, as far as I can tell.

EDIT: If you're really desperate to have this in the worker threads, then try this function, inspired by the links in @jthetzel's answer.

try_with_time_limit <- function(expr, cpu = Inf, elapsed = Inf)
  y <- try({setTimeLimit(cpu, elapsed); expr}, silent = TRUE) 
  if(inherits(y, "try-error")) NULL else y 

try_with_time_limit(sqrt(1:10), 1)                   #value returns as normal
try_with_time_limit(for(i in 1:1e7) sqrt(1:10), 1)   #returns NULL

You'll perhaps want to customise the behaviour in the event of a timeout. At the moment it just returns NULL.

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Excellent point. I hadn't thought to check the worker managers. Unfortunately I'm parallel-izing over multiple nodes so I don't think multicore will work. I'm currently using snow. Drat. –  Ben Oct 25 '11 at 15:17

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