I am using foreach with a .combine = rbindlist. This does not appear to work, although it works fine if I use .combine = rbind.

Just to illustrate using a simple example --

> t2 <- data.table(col1=c(1,2,3))
> foreach (i=1:3, .combine=rbind) %dopar% unique(t2)
1:    1
2:    2
3:    3
4:    1
5:    2
6:    3
7:    1
8:    2
9:    3

# But using rbindlist gives an error

> foreach (i=1:3, .combine=rbindlist) %dopar% unique(t2)
error calling combine function:
<simpleError in fun(result.1, result.2): unused argument(s) (result.2)>

Has anyone been able to make this work ?

Thanks in advance.

  • I understand that we should be calling rbindlist on a list object - rbindlist(list(dt1, dt2)) ... but not sure how to perform it using the foreach .combine function.
    – xbsd
    Jul 1, 2013 at 18:37

2 Answers 2


It's basically what you said - rbindlist assumes a list argument, and the error you're getting is the same as this one:

result.1 = data.table(blah = 23)
result.2 = data.table(blah = 34)

rbindlist(result.1, result.2)
#Error in rbindlist(result.1, result.2) : unused argument (result.2)

If you want to utilize rbindlist, the way to do it would be this:

rbindlist(foreach (i = 1:3) %dopar% unique(t2))

or this:

foreach (i=1:3, .combine=function(x,y)rbindlist(list(x,y))) %dopar% unique(t2)
  • Your first solution using .combine=list fails when there are more than 100 results since you get a nested list in that case. Just leave out the .combine and .multicombine arguments and it works fine since the default behavior is to return the results in a list. I like your second solution best, and it works with any number of results. Jul 2, 2013 at 0:26
  • @SteveWeston see the .maxcombine comment and ?foreach
    – eddi
    Jul 2, 2013 at 4:31
  • Do you mean you expected your example to only work if you set .maxcombine to be greater than the number of tasks? That's pretty fragile, especially since you can't always tell how many tasks there are. Neither of the other examples depend on .maxcombine for correctness. It's supposed to be a tuning parameter. Jul 2, 2013 at 12:08
  • @SteveWeston Inf is always greater than the number of tasks (I haven't checked if foreach will eat that value, but I don't see why it shoudln't, I'll check a bit later)
    – eddi
    Jul 2, 2013 at 12:40
  • 1
    Using .maxcombine=Inf doesn't work since that value is used for allocating the buffer to process the results. But even if it did work, I don't see why you'd ever want to use list as a combine function when the default behavior is to return the results in a list, and will work correctly regardless of the value of .maxcombine. Jul 2, 2013 at 13:08

Here's a way to both use rbindlist as your .combine function and have .multicombine=TRUE:

foreach (i=1:3,
         .combine=function(...) rbindlist(list(...)),
         .multicombine=TRUE) %dopar% unique(t2)

If you have a decent amount of seperate results to aggregate, this could be quite a bit faster than only combining two-at-a-time.

For a single foreach statement, this produces the same result as letting foreach default .combine to list and wrapping with rbindlist, as in eddi's first solution. I'm not sure which is faster, though I would expect them to be close.

For small, single-foreach jobs I like wrapping with rbindlist, but when chaining several foreach's together with %:% I think the above approach (likely in the first foreach) looks cleaner.

  • 3
    This kind of combine function works well with a parallel backend that calls the combine function on-the-fly. That allows the master to perform post-processing in parallel with the workers. It's even more useful when the combine function performs a reduction. Sep 25, 2013 at 13:14
  • 3
    You can also use rbindlist directly as a ".final" function with the default combine function since that produces a list. That's a very clean solution, but I would use your combine function. Sep 25, 2013 at 13:21
  • 1
    Ah I didn't know about .final! I've got a few places that will look cleaner. As for your first comment, that's exactly how I've been using, with the doMPI package. It's really nice not waiting for all the children to finish before the parent does anything when you have thousands of individual jobs.
    – ClaytonJY
    Sep 25, 2013 at 13:46
  • ClaytonJY and Steve Weston would either of you have an example of how you set up the master to perform post-processing in parallel with the workers? May 7, 2020 at 1:21
  • @CooperBuckeye05 I haven't used this pattern in some time (today I'd use the future or furrr packages), but I don't recall doing any special configuration beyond using a compliant backend. doMPI was one of the few backends that did this, so I'd recommend following installation & configuration instruction for that package. biggest drawback I recall was it didn't work on Windows.
    – ClaytonJY
    May 8, 2020 at 18:19

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