# Implementation of random number generator [duplicate]

Possible Duplicate:
How does a random number generator work?

I am looking for internal implementation of a random number generator in C/C++.Basically I am interested to know, what exactly happens when rand() is called. After all machine follows definite set of instructions, how can it be random!
Edit: Want to know how can I implement one in C/C++.

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## marked as duplicate by jogojapan, Burkhard, ForEveR, Tony D, Loki AstariAug 14 '12 at 7:49

This is why it is not random, it is pseudo random – amit Aug 14 '12 at 6:07
Because it's not really random: en.wikipedia.org/wiki/Pseudorandom_number_generator – Averroes Aug 14 '12 at 6:07
Implementation? if i don't want to use library function. – MaxSteel Aug 14 '12 at 6:08
en.wikipedia.org/wiki/Linear_congruential_generator. C++11 lets you use Mersenne twisters etc, too, with `<random>`, which work out a whole lot better. – chris Aug 14 '12 at 6:08
Other closely related questions: stackoverflow.com/questions/584566/…, stackoverflow.com/questions/7114043/… – jogojapan Aug 14 '12 at 6:13

They're pseudo-random number generators, not truly random ones. This is often a good thing since it allows you to reproduce bugs more easily where "random" numbers are involved.

You can get random number generators, such as reading `/dev/random` under Linux but the normal ones that ship with C libraries generally aren't.

The simplest one are linear congruential generators where:

``````n(x+1) = n(x) * A + C modulo M
``````

with suitably chosen values of `A`, `C` and `M`.

Wikipedia's page on LCGs gives some sample values used by various implementations. For example, the `glibc` one listed there has `a = 1103515245, c = 12345, m = 2^31` so it's a simple thing like:

``````static unsigned int seed = 1;
void srand (int newseed) {
seed = (unsigned)newseed & 0x7fffffffU;
}
int rand (void) {
seed = (seed * 1103515245U + 12345U) & 0x7fffffffU;
return (int)seed;
}
``````

Aside: The glibc implementation still has this generator within it (called the Type 0 generator) but it also has a fancier trinomial generator as well, which is (presumably) better.

There are also more complex ones (such as the Mersenne twister) that have a much greater cycle time (time before starting to repeat).

Any truly random generator must use a truly random input source which is why `/dev/random` will sometimes block ("waiting for entropy") while `/dev/urandom` won't.

"Truly" random sources may be affected by timing between keystrokes, data enetered by uers, the contents of network packets, disk I/O patterns, time taken for an ICMP response to come back over the network and all sorts of other wondrous, mostly non-deteministic things.

Unless you're heavily into crypto, normal random number generators will be just fine.

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That helps! Thanks a lot. :) – MaxSteel Aug 14 '12 at 6:41

As I said in the comments, the random generators of RAM machines are not truly random, they are pseudo-random.

You can always have a look at the java source of java.util.Random.

Specifically - the method `next(int bits)` is what you are looking for.

``````protected int next(int bits) {
long oldseed, nextseed;
AtomicLong seed = this.seed;
do {
oldseed = seed.get();
} while (!seed.compareAndSet(oldseed, nextseed));
return (int)(nextseed >>> (48 - bits));
}
``````

(*) This answer fits for a previous version of the question, which was tagged as java and did not ask specifically for C++.

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I think the numerical recipies book would be a good place to start.

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Here is a simple pseudo random algorithm:

``````//generates pseudo random series of numbers 0...RAND_MAX - 1 with uniform distribution, starting with 0

static const int A = 15342; // any number in (0, RAND_MAX)
static const int C = 45194; // any number in [0, RAND_MAX)
static const RAND_MAX = 100000;

int rand()
{
static int prev = 0; //seed. any number in [0, RAND_MAX)
prev = ( prev * A + C ) % RAND_MAX;
return prev;
}
``````

You can read more here: http://en.wikipedia.org/wiki/Linear_congruential_generator

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Those are very poorly chosen values for A, C and RAND_MAX by the way. All your numbers will be multiples of 5000 :-) Relatively prime numbers tend to give a better distribution. – paxdiablo Aug 14 '12 at 6:20
@paxdiablo: agree, randomized them a bit ) But in any case it will give a uniform distribution. Choosing good numbers require more research – Andrew Aug 14 '12 at 6:23
That static var `prev` does not seem to ever be updated. – jjmontes Jun 16 '14 at 15:50
@jjmontes: thanks, corrected – Andrew Jun 16 '14 at 15:58