I'm looking for as much speed as possible and staying in base to do what `expand.grid`

does. I have used `outer`

for similar purposes in the past to create a vector; something like this:

```
v <- outer(letters, LETTERS, paste0)
unlist(v[lower.tri(v)])
```

Benchmarking has shown me that `outer`

can be drastically faster than `expand.grid`

but this time I want to create two columns just like `expand.grid`

(all possible combos for 2 vectors) but my methods with `outer`

do not benchmark as fast with outer this time.

I'm hoping to take 2 vectors and create every possible combo as two columns as fast as possible (I think `outer`

may be the route but am wide open to any base method.

Here's the expand.grid method and outer method.

```
dat <- cbind(mtcars, mtcars, mtcars)
expand.grid(seq_len(nrow(dat)), seq_len(ncol(dat)))
FOO <- function(x, y) paste(x, y, sep=":")
x <- outer(seq_len(nrow(dat)), seq_len(ncol(dat)), FOO)
apply(do.call("rbind", strsplit(x, ":")), 2, as.integer)
```

The microbenchmarking shows outer is slower:

```
expr min lq median uq max
EXPAND.G 812.743 838.6375 894.6245 927.7505 27029.54
OUTER 5107.871 5198.3835 5329.4860 5605.2215 27559.08
```

I think my outer use is slow because I don't know how to use outer to directly create a length 2 vector that I can `do.call('rbind'`

together. I have to slow paste and slow split. How can I do this with outer (or other methods in base) in a way that's faster than expand grid?

**EDIT:
Adding the microbenchmark results.**

**

```
Unit: microseconds
expr min lq median uq max
1 ERNEST 34.993 39.1920 52.255 57.854 29170.705
2 JOHN 13.997 16.3300 19.130 23.329 266.872
3 ORIGINAL 352.720 372.7815 392.377 418.738 36519.952
4 TOMMY 16.330 19.5960 23.795 27.061 6217.374
5 VINCENT 377.447 400.3090 418.505 451.864 43567.334
```

**