### General solution:

Edit: As @MatthewLundberg comments, the issue I pointed out with "repeating numbers in x" can be easily overcome by working on `seq_along(x)`

, which would mean the resulting values will be indices. So, it'd be like so:

```
k <- 3
x <- c(2,2,1, 1,3,4, 4,6,5, 3)
x.s <- seq_along(x)
y <- sample(x.s)
x[unlist(split(y, (match(y, x.s)-1) %/% k), use.names = FALSE)]
# [1] 2 2 1 3 4 1 4 5 6 3
```

### Old answer:

The bottleneck here is the amount of calls to function `sample`

. And as long as your numbers don't repeat, I think you can do this with just one call to `sample`

in this manner:

```
k <- 3
x <- 1:20
y <- sample(x)
unlist(split(y, (match(y,x)-1) %/% k), use.names = FALSE)
# [1] 1 3 2 5 6 4 8 9 7 12 10 11 13 14 15 17 16 18 19 20
```

To put everything together in a function (I like the name `scramble`

from @Roland's):

```
scramble <- function(x, k=3) {
x.s <- seq_along(x)
y.s <- sample(x.s)
idx <- unlist(split(y.s, (match(y.s, x.s)-1) %/% k), use.names = FALSE)
x[idx]
}
scramble(x, 3)
# [1] 2 1 2 3 4 1 5 4 6 3
scramble(x, 3)
# [1] 1 2 2 1 4 3 6 5 4 3
```

To reduce the answer (and get it faster) even more, following @flodel's comment:

```
scramble <- function(x, k=3L) {
x.s <- seq_along(x)
y.s <- sample(x.s)
x[unlist(split(x.s[y.s], (y.s-1) %/% k), use.names = FALSE)]
}
```