This solution suggested by Marek is the best answer to the original Q. See below for a discussion of other approaches and why Marek's is the most useful.

```
> unique(unlist(x, use.names = FALSE))
[1] 1 2 3 4 5 6
```

### Discussion

A faster solution is to compute `unique()`

on the components of your `x`

first and then do a final `unique()`

on those results. This will only work if the components of the list have the same number of unique values, as they do in both examples below. E.g.:

First your version, then my double unique approach:

```
> unique(unlist(x))
[1] 1 2 3 4 5 6
> unique.default(sapply(x, unique))
[1] 1 2 3 4 5 6
```

We have to call `unique.default`

as there is a `matrix`

method for `unique`

that keeps one margin fixed; this is fine as a matrix can be treated as a vector.

Marek, in the comments to this answer, notes that the slow speed of the `unlist`

approach is potentially due to the `names`

on the list. Marek's solution is to make use of the `use.names`

argument to `unlist`

, which if used, results in a faster solution than the double unique version above. For the simple `x`

of Roman's post we get

```
> unique(unlist(x, use.names = FALSE))
[1] 1 2 3 4 5 6
```

Marek's solution will work even when the number of unique elements differs between components.

Here is a larger example with some timings of all three methods:

```
## Create a large list (1000 components of length 100 each)
DF <- as.list(data.frame(matrix(sample(1:10, 1000*1000, replace = TRUE),
ncol = 1000)))
```

Here are results for the two approaches using `DF`

:

```
> ## Do the three approaches give the same result:
> all.equal(unique.default(sapply(DF, unique)), unique(unlist(DF)))
[1] TRUE
> all.equal(unique(unlist(DF, use.names = FALSE)), unique(unlist(DF)))
[1] TRUE
> ## Timing Roman's original:
> system.time(replicate(10, unique(unlist(DF))))
user system elapsed
12.884 0.077 12.966
> ## Timing double unique version:
> system.time(replicate(10, unique.default(sapply(DF, unique))))
user system elapsed
0.648 0.000 0.653
> ## timing of Marek's solution:
> system.time(replicate(10, unique(unlist(DF, use.names = FALSE))))
user system elapsed
0.510 0.000 0.512
```

Which shows that the double `unique`

is a lot quicker to applying `unique()`

to the individual components and then `unique()`

those smaller sets of unique values, but this speed-up is purely due to the `names`

on the list `DF`

. If we tell `unlist`

to not use the `names`

, Marek's solution is marginally quicker than the double `unique`

for this problem. As Marek's solution is using the correct tool properly, and it is quicker than the work-around, it is the preferred solution.

The big gotcha with the double `unique`

approach is that it will only work **if**, as in the two examples here, each component of the input list (`DF`

or `x`

) has the same number of unique values. In such cases `sapply`

simplifies the result to a matrix which allows us to apply `unique.default`

. If the components of the input list have differing numbers of unique values, the double unique solution will fail.