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(EDIT: @Arun cleaned and fixed up the code below, and has replaced 'CJ' in data.table on R-Forge. Feature request: #4849; Faster CJ and update on Why is expand.grid faster than data.table 's CJ?)

In my mind CJ is meant to work on argument vectors that satisfy anyDuplicated(vector) == F.

Does anyone use it with non-unique arguments?

If so, is it worth leveling a 100x speed hit on what I consider to be the primary use?

Lower bound of speed improvement by tuning for primary use (lower bound for these sample arguments, not lower bound for any arguments):


Unit: milliseconds
                  expr        min         lq     median         uq      max neval
    dt1 <- CJ(a, b, c) 3149.15293 3166.59638 3204.95956 3472.70826 4414.919   100
dt2 <- fastCJ(a, b, c)   22.85207   23.16003   23.43691   24.04215 1208.855   100
Output identical: TRUE



repTE <- function(x, times, each) {
  rep.int(rep.int(x, times=rep.int(each, times=length(x))), times=times)
fastCJ <- function(...) {
  arg_list <- list(...)
  l <- lapply(arg_list, sort.int, method="quick")
  seq_ct <- length(l)
  if (seq_ct > 1) {
    seq_lens <- vapply(l, length, numeric(1))
    tot_len <- prod(seq_lens)

    l <-lapply(
      function(i) {
        if (i==1) {
          len <- seq_lens[1]
          rep.int(l[[1]], times=rep.int(tot_len/len, len))
        } else if (i < seq_ct) {
          pre_len <- prod(seq_lens[1:(i - 1)])
          repTE(l[[i]], times=pre_len, each=tot_len/pre_len/seq_lens[i])
        } else {
          rep.int(l[[seq_ct]], times=tot_len/seq_lens[seq_ct])
  } else {
    tot_len <- length(l[[1]])

  setattr(l, "row.names", .set_row_names(tot_len))
  setattr(l, "class", c("data.table", "data.frame"))
  if (is.null(names <- names(arg_list))) {
    names <- vector("character", seq_ct)
  if (any(tt <- names == "")) {
    names[tt] <- paste0("V", which(tt))
  setattr(l, "names", names)
  data.table:::settruelength(l, 0L)
  l <- alloc.col(l)
  setattr(l, "sorted", names(l))


a <- factor(sample(1:1000, 1000))
b <- sample(letters, 26)
c <- runif(100)
print(microbenchmark( dt1 <- CJ(a, b, c), dt2 <- fastCJ(a, b, c)))
cat("Output identical:", identical(dt1, dt2))
share|improve this question
do you have a seq_list in your environment somewhere? ;) –  Ricardo Saporta Jul 30 '13 at 19:40
This seems more like a question for the data.table mailing list, where development issues for the package are discussed. –  joran Jul 30 '13 at 19:41
Your code, as Ricardo mentions, gives an error with seq_list not found. I've managed to get it to work by removing the dependency on seq_list. What do you mean using CJ with unique/non-unique arguments? Your code seems to work when there are duplicated elements.. just the order is different. –  Arun Jul 30 '13 at 20:37
This question appears to be off-topic because it is about opinions about design/tradeoffs of an existing package. –  Ben Bolker Jul 30 '13 at 20:45
Please can you check the changes, and acknowledgements to you in NEWS are appropriate. You are very welcome to join the project and make changes yourself! –  Matt Dowle Sep 1 '13 at 22:57

1 Answer 1

up vote 1 down vote accepted

For completeness, to add an answer, from NEWS :

CJ() is 90% faster on 1e6 rows (for example), #4849. The inputs are now sorted first before combining rather than after combining and uses rep.int instead of rep (thanks to Sean Garborg for the ideas, code and benchmark) and only sorted if is.unsorted(), #2321.

Reminder: CJ = Cross Join; i.e., joins to all combinations of its inputs.

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