This is really a follow-up to the other answers - go upvote both of them, not this one.

If all you want to do is randomly permute a vector of observations, `sample()`

from the base R installation works just fine (as shown by @t.f in their answer):

```
a <- c("Ar","Ba","Bl","Bu","Ca")
x <- list(a)
sample(a)
sample(x[[1]])
> sample(a)
[1] "Ca" "Bu" "Ba" "Ar" "Bl"
> sample(x[[1]])
[1] "Bl" "Ba" "Bu" "Ar" "Ca"
```

Note you don't need `sample(1:length(a))`

or to use this to index into `x[[1]]`

; `sample()`

does the right thing if you give it a vector as input, as shown above.

`shuffle()`

and `shuffleSet()`

were designed as an interface to restricted permutations but they needed to handle complete randomisation as a special case and so if you dig deep enough you'll see that `shuffle`

or `shuffleSet`

call `shuffleFree`

and internally that uses `sample.int()`

(for efficiency reasons, but for all intents and purposes this is a call to `sample()`

just a bit more explicit about setting all arguments.)

Because these two functions were designed for more general problems, all we need to know is the number of observations to iterate; hence the first argument to both should be the number of observations. If you pass them a *vector*, then as a little bit of sugar I just compute `n`

from the size of the object (length for a vector, nrow for a matrix etc).

@RHertel notes that `shuffleSet()`

generates, with this example, all the permutations of the set `a`

. This is due to heuristics that try to provide better random permutations when the set of permutations is small. A more direct way of generating the set of all permutations is to do it via `allPerms()`

:

```
> head(allPerms(seq_along(a)))
[,1] [,2] [,3] [,4] [,5]
[1,] 1 2 3 5 4
[2,] 1 2 4 3 5
[3,] 1 2 4 5 3
[4,] 1 2 5 3 4
[5,] 1 2 5 4 3
[6,] 1 3 2 4 5
```

Note that `allPerms(a)`

won't work because `a`

is of class `"character"`

and there isn't a `nobs()`

method for that (but I'll go fix that in **permute** so it will work in future.)

`shuffle`

and `shuffleSet`

return permutations of the *indices* of the thing you want to permute, not the permuted elements themselves; in fact they never really know about the actual elements/things you want to permute. Hence why @RHertel uses the `sapply`

call to apply the permuted indices to `a`

. A quicker way of doing this is to store the permutations and then insert back into this matrix of permutations the elements of `a`

, *indexed by the permutation matrix*:

```
perms <- allPerms(seq_along(a)) # store all permutations
perms[] <- a[perms] # replace elements of perms with shuffled elements of a
> perms <- allPerms(seq_along(a))
> perms[] <- a[perms]
> head(perms)
[,1] [,2] [,3] [,4] [,5]
[1,] "Ar" "Ba" "Bl" "Ca" "Bu"
[2,] "Ar" "Ba" "Bu" "Bl" "Ca"
[3,] "Ar" "Ba" "Bu" "Ca" "Bl"
[4,] "Ar" "Ba" "Ca" "Bl" "Bu"
[5,] "Ar" "Ba" "Ca" "Bu" "Bl"
[6,] "Ar" "Bl" "Ba" "Bu" "Ca"
```

The efficiency here is that the replacement is done in a single function call to `<-.[()`

, rather than separate calls to `[()`

. You need the `[]`

on `perms`

otherwise you'd overwrite `perms`

not replace *in place*.

`shuffleSet(as.integer(x))`

`shuffleSet(as.integer(x[[1]]))`