There are several packages in R to simplify running code in parallel, like foreach and future. Most of these have constructs which are like lapply or a for loop: they carry on until all the tasks have finished.

Is there a simple parallel version of Find? That is, I would like to run several tasks in parallel. I don't need all of them to finish, I just need to get the first one that finishes (maybe with a particular result). After that the other tasks can be killed, or left to finish on their own.

Conceptual code:

hunt_needle <- function (x, y) x %in% (y-1000):y

x <- sample.int(1000000, 1) 

result <- parallel_find(seq(1000, 1000000, 1000), hunt_needle)
# should return the first value for which hunt_needle is true

1 Answer 1


You can use shared memory so that processes can communicate with one another. For that, you can use package bigstatsr (disclaimer: I'm the author).

Choose a block size and do:

# devtools::install_github("privefl/bigstatsr")

# Data example
cond <- logical(1e6)
cond[sample(length(cond), size = 1)] <- TRUE

ind.block <- bigstatsr:::CutBySize(length(cond), block.size = 1000)
cl <- parallel::makeCluster(nb_cores())

# This value (in an on-disk matrix) is shared by processes
found_it <- FBM(1, 1, type = "integer", init = 0L)

res <- foreach(ic = sample(rows_along(ind.block)), .combine = 'c') %dopar% {
  if (found_it[1]) return(NULL)
  ind <- bigstatsr:::seq2(ind.block[ic, ])
  find <- which(cond[ind])
  if (length(find)) {
    found_it[1] <- 1L
  } else {


# Verification
all.equal(res, which(cond))

Basically, when a solution is found, you don't need to do some computations anymore, and others know it because you put a 1 in found_it which is shared between all processes.

As your question is not reproducible and I don't understand everything you need, you may have to adapt this solution a little bit.

  • Nice but a bit hackish. There's nothing off the shelf?
    – user3603486
    Mar 1, 2018 at 22:40
  • Let me expand on "a bit hackish"... the processes use shared memory, but why shouldn't the parent process just realise when it gets a result and kill the remaining children? This seems more elegant.
    – user3603486
    Mar 3, 2018 at 2:21
  • Yeah, you could do that surely with MPI, but it's harder to use and to install. I use shared memory to reimplement things like message passing, barriers, etc.
    – F. Privé
    Mar 3, 2018 at 9:09
  • That indeed looks interesting. Thank you.
    – user3603486
    Mar 3, 2018 at 12:16

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