Suppose we've a `vector`

(or a `data.frame`

for that matter) as follows:

```
set.seed(1)
x <- sample(10, 1e6, TRUE)
```

And one wants to get all values of `x`

where `x > 4`

, say:

```
a1 <- x[x > 4] # (or)
a2 <- x[which(x > 4)]
identical(a1, a2) # TRUE
```

I think most people would prefer `x[x > 4]`

. But surprisingly (at least to me), subsetting using `which`

is faster!

```
require(microbenchmark)
microbenchmark(x[x > 4], x[which(x > 4)], times = 100)
Unit: milliseconds
expr min lq median uq max neval
x[x > 4] 56.59467 57.70877 58.54111 59.94623 104.51472 100
x[which(x > 4)] 26.62217 27.64490 28.31413 29.97908 99.68973 100
```

It's about 2.1 times faster on mine.

One possibility for the difference, I thought, could be due to the fact that `which`

doesn't consider `NA`

but `>`

returns them as well. But then logical operation itself should be the reason for this difference, which is *not* the case (obviously). That is:

```
microbenchmark(x > 4, which(x > 4), times = 100)
Unit: milliseconds
expr min lq median uq max neval
x > 4 8.182576 10.06163 12.68847 14.64203 60.83536 100
which(x > 4) 18.579746 19.94923 21.43004 23.75860 64.20152 100
```

Using `which`

is about 1.7 times slower just before subsetting. But `which`

seems to catch up drastically on/during subsetting.

It seems not possible to use my usual weapon of choice `debugonce`

(thanks to @GavinSimpson) as `which`

calls `.Internal(which(x))`

whereas `==`

calls `.Primitive("==")`

.

My question therefore is why is `[`

on `numeric`

type resulting from `which`

faster than logical vector resulting from `>`

? Any ideas?