I've put the above suggestions through a microbenchmark:

```
library(microbenchmark)
Rcpp::cppFunction('double last(NumericVector x) { int n = x.size(); return x[n-1]; }')
for (n in c(1e3,1e4,1e5,1e6)) {
x <- runif(n);
print(microbenchmark(tail(x,n=1),
last(x),
x[[end(x)[[1]]]],
x[length(x)],
rev(x)[[1]]))
}
```

gives me

```
Unit: nanoseconds
expr min lq mean median uq max neval
tail(x, n = 1) 13412 14908.5 16515.84 16053.0 17145.5 37701 100
last(x) 2315 3150.0 3791.43 3710.5 4042.0 15603 100
x[[end(x)[[1]]]] 14850 15810.5 17823.94 17460.0 18485.0 53283 100
x[length(x)] 250 402.5 472.26 487.0 538.0 878 100
rev(x)[[1]] 13196 14148.5 15172.17 14680.0 15049.0 28153 100
Unit: nanoseconds
expr min lq mean median uq max neval
tail(x, n = 1) 10827 12428.5 14406.98 14902.5 15500.0 33981 100
last(x) 2024 2758.5 3251.12 3401.5 3627.0 7331 100
x[[end(x)[[1]]]] 22245 23501.5 24801.37 24683.5 25214.5 61019 100
x[length(x)] 200 423.0 448.80 469.0 505.5 822 100
rev(x)[[1]] 72252 74413.5 75059.54 74963.5 75366.5 96632 100
Unit: nanoseconds
expr min lq mean median uq max neval
tail(x, n = 1) 8459 9788.0 14901.49 14001.5 16989.0 38781 100
last(x) 1498 2260.0 3398.24 3062.0 3860.0 8834 100
x[[end(x)[[1]]]] 95884 103709.0 129822.63 106157.5 109951.5 863248 100
x[length(x)] 178 342.5 435.49 402.0 479.5 983 100
rev(x)[[1]] 508216 534723.5 563657.15 550468.5 581428.0 1343420 100
Unit: nanoseconds
expr min lq mean median uq max neval
tail(x, n = 1) 8712 9929 27796.53 36659.5 41815.0 51768 100
last(x) 1446 1979 7650.59 9709.5 10815.0 13343 100
x[[end(x)[[1]]]] 1222849 1347212 1855905.75 1365886.0 1917885.5 26816272 100
x[length(x)] 197 339 1246.54 1152.5 1982.5 3377 100
rev(x)[[1]] 5276699 5306810 7063420.69 5961484.0 5998397.0 30825281 100
```

In other words: Since anything that isn't `O(1)`

is unacceptable, two solutions are immediately out. In native R, that leaves us with `tail(x, n = 1)`

and `x[length(x)]`

. The former is slower than the latter by a factor of 30. Even the C++ function `last`

(which is rather restrictive and does not handle an empty list properly) is slower than `x[length(x)]`

! So I suggest going with that.