For an answer to 2, first see the help page `?RNGkind`

.

To find the kind of RNG in use:

```
RNGkind()
# [1] "Mersenne-Twister" "Inversion"
```

The Mersenne Twister is the default.

From the help page:

‘"Mersenne-Twister":’ From Matsumoto and Nishimura (1998). A
twisted GFSR with period 2^19937 - 1 and equidistribution in
623 consecutive dimensions (over the whole period). The
‘seed’ is a 624-dimensional set of 32-bit integers plus a
current position in that set.

To find the current seed in use, you need to first call the random number generator.

```
runif(1, 0, 1)
# [1] 0.9834062
.Random.seed
# [Gives a 626 length vector]
```

Calling `set.seed(some_integer)`

followed by `.Random.seed`

,
will always give the same 626 length vector if you use the same `some_integer`

. To put it differently, the 626-length vector is determined solely by `some_integer`

, given one is using the Mersenne Twister, of course.

Also, of course, running `set.seed`

to some fixed value will give you the same values for calls to random number routines following it. That's the main use for it in practice, to give reproducibility. E.g.

```
set.seed(1)
runif(5, 0, 1)
# [1] 0.2655087 0.3721239 0.5728534 0.9082078 0.2016819
rnorm(1, 0, 1)
# [1] 1.272429
set.seed(1)
runif(5, 0, 1)
# [1] 0.2655087 0.3721239 0.5728534 0.9082078 0.2016819
rnorm(1, 0, 1)
# [1] 1.272429
```

All the basic number generator code in R is in the file src/main/RNG.c in the source code.

It is in C, but fairly easy to follow.

`?.Random.seed`

(it's a little more complicated than that, but maybe someone else will answer) – Ben Bolker Jun 6 '12 at 8:37`?RNG`

to get most of your answers – Andrie Jun 6 '12 at 8:38