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Does it toss a coin to get random bit?
Or throw a die to get a random integer from 1 to 6?
Or take a card from a shuffled deck to get a number from 1 to 52?
Or can it think like us or have intelligence like us?

Obviously the above examples can't be ways of generating random data.

Then how do software libraries generate random numbers on a given range? Which is more random: human- or software-generated?

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Do you mean "computer" rather than "compiler"? I wouldn't like my compiler to be random :) –  Paul Dixon Jul 6 '11 at 8:40
Wikipedia actually has some decent quality articles on the subject, like (in particular look at the Linear Congruential Generator) –  jonsca Jul 6 '11 at 8:42 Sorry, I couldn't resist :-/ –  spraff Jul 6 '11 at 16:15
spraff: It gets old by now, honestly. –  Joey Jul 6 '11 at 18:46

7 Answers 7

(Note: I'm ignoring the use of the word “compiler” in your question, as it doesn't really mean anything. Instead this is generally about random [and pseudo-random] numbers in computing and their uses.)

You can never have true random numbers with a deterministic process, which is why computers are fairly ill-suited to generate them (as the CPU can only flip bits in a deterministic manner). Most languages, frameworks and libraries use so-called Pseudo-random number generators (PRNG). Those take a seed which is sort of an initial state vector which can be a single number or an array of numbers and generate a sequence of seemingly-random values from there. The results usually satisfy certain statistical measures, but are not totally random, as the same seed will yield the exact same sequence.

One of the easiest PRNGs is the so-called Linear Congruential Generator (LCG). It just has a single number as state (which is initially the seed). Then for each successive return value the formula looos like this:

LCG formula: x_(n+1)=a⋅x_n+b (mod⁡c )

where a, b and c are constants for the generator. c is usually a power of two, such as 232 simply because it's easy to implement (done automatically) and fast. Finding good values for a and b is hard, however. As a most trivial example, when using a = 2 and b = 0, you can see that the resulting values can never be odd. This limits the range of values the generator can yield quite severely. Generally, LCGs are a very old concept and long supplanted by much better generators, so don't use them, except in extremely limited environments (although even embedded systems can handle better generators without problem, usually) – MT19937 or its generalization, the WELL generators are usually much better for people who simply don't want to worry about the properties of their pseudo-random numbers.

One major application of PRNGs is simulation. Since PRNGs can give an estimate or guarantee of statistical properties and an experiment can be repeated exactly due to the nature of the seed they do quite well here. Imagine you're publishing a paper and want other people to replicate your results. With a hardware RNG (se below) you have no other option than including every single random number you used. For Monte-Carlo simulations which can easily use a few billion numbers or more this is ... not quite feasible.

Then there are random number generators for cryptographic applications, e.g. for securing your SSL connection. Examples here are Windows' CryptGenRandom or Unix's /dev/urandom. Those often are also a PRNG, however they use a so-called “entropy pool” for seeding which contains unpredictable values. The main point here is to generate unpredictable sequences, even though the same seed will still yield the same sequence. To minimize the effect of an attacker guessing the sequence they need to be re-seeded regularly. The entropy pool is gathered from various points in the system: events, such as input, network activity, etc. Sometimes it's initialized also with memory locations throughout the system assumed to contain garbage. However if it's done, care must be taken to ensure that the entropy pool really contains unpredictable stuff. Something that Debian got wrong in OpenSSL a few years ago.

You can also use the entropy pool directly to get random numbers, (e.g. Linux's /dev/random; FreeBSD instead uses the same algorithm for /dev/random as for /dev/urandom), but you don't get too much out of it and once it's empty it takes a while to replenish. That's why the algorithms mentioned above are usually used to extend what little entropy there is to larger volumes.

Then there are hardware-based random number generators, which use unpredictable natural processes, such as radioactive decay or electrical noise in a wire. Those are for the most demanding of applications requiring many “truly” random numbers and are able to generate a few hundred MiB of randomness per second, usually (ok, that data point is a few years old, but I doubt it can be done much faster by now).

You can emulate such things by writing a program taking images from a webcam with lens cap on (only noise remains, then) or from audio input when no actual input is present. Those are fine for a little hacking, but usually will not generate good random numbers, as they are biased, i.e. in the bit stream zeroes and ones are not represented with the same frequency (or, going further, the sequences 00, 01, 10 and 11 are not generated with the same frequency ... you can do this for larger sequences as well). So a part of an actual hardware RNG goes into making sure that the resulting values satisfy certain statistical distribution properties.

Some people actually throw dice to get random dice rolls or even take this into overdrive. And humans make very bad random number generators.

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There are a number of webservices that provide real random numbers. For example, uses the static that occurs in 3 untuned radios as a source of entropy for generating random numbers –  Dónal Jul 6 '11 at 11:01
The claim of something "Debian got wrong" is rather mis-stated. OpenSSL was using uninitialized memory as entropy, which both invoked undefined behavior, and could have failed to get any entropy if the uninitialized memory happened to read all-zeros (or any other predictable pattern). Debian fixed half of the bug, but failed to provide a new, actually-valid entropy source. –  R.. Jul 29 '11 at 9:29

A compiler does absolutely nothing with regards to requiring a random number. A compiler merely makes your code, call some other code which returns a random number. Now the "other code" which calls the random number might be:

  1. Implemented within your code.
  2. Implemented as a part of a standard library.
  3. Implemented as a part of a special library.

In cases (1) and (2), it is mostly a pseudo-random algorithm, and the numbers you get aren't really random. If it is part of a standard library (like cmath or math.h), then one cannot say for sure that the result values are pseudo-random because the standards specify only the definition and not implementation.

EDIT: The library is stdlib.h and it is ALWAYS a psuedo-random number as pointed out by Joey and phresnel. Read comments for details on their answers. I apologize for the error and I agree that I should have known better than to reply on instinct.

Special libraries may be used which may have special implementation of other algorithms, like the Mersenne Twister algorithm. Also, they may be nothing more than drivers of Hardware that can generate random numbers. Hardware random number generators return somewhat "true" random numbers

Random number algorithms from standard libraries eventually map to system calls on the OS. So, on linux, for example, you may simply be reading from /dev/random or /dev/urandom (or you may be doing the same thing in your own code as well).

Also note that, true randomness can be achieved without using dedicated hardware or some dedicated service. /dev/random and /dev/urandom provide random numbers, which for all intents and purposes can be considered true.

EDIT: Some special libraries or your own code may even be using a network service for random numbers (many of which provide true random numbers).

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Your post sounds a bit like you just copied from the other posts ... Also it is pretty wrong right in the first paragraph: man 3 rand explitly says pseudo random number generator. Also, how can you implement srand() for true random numbers? Apart from that, rand() and std::rand() are in stdlib.h and cstdlib, and not in cmath/math.h –  phresnel Jul 6 '11 at 8:58
@phresnel: Different architectures have different implementations. If a device running a dedicated Hardware RNG chooses to implement rand that way, why can it not? And I did not say "true random number generator", I said, "for all intents and purposes, can be considered true". And the mention of the wrong library file was a mistake –  Rohan Prabhu Jul 6 '11 at 9:04
C guarantees a behavior for rand() and srand(), namely that the sequences generated by rand() are always repeatable by calling srand() with the same value. A hardware RNG cannot satisfy those, thus rand() must always be a PRNG. It doesn't need to be the braindeadly broken LCG published in the standards decades ago, admittedly and can vary between implementations. –  Joey Jul 6 '11 at 9:16
@Rohan Prabhu: You wrote If it is part of [e.g. cmath], then one cannot say for sure that the result values are pseudo-random because the standards specify only the definition and not implementation. This is absolutely wrong, actually it is a lie. The standard explicitly writes: The rand function returns a __pseudo-random integer__. –  phresnel Jul 6 '11 at 9:16
@Joey, @phresnel: In that case, I'm extremely sorry for saying so. It is an honest mistake from my side, because I assumed it to be so. –  Rohan Prabhu Jul 6 '11 at 9:27

Those numbers generated by your computer are not "random" by the true definition of "random". They are pseudorandom - there is an algorithm that generates numbers. Here you can read more about those numbers:

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True random is possible, and by design supported on some operating systems. Also, there is not "an algorithm that generates numbers", but many. –  phresnel Jul 6 '11 at 8:45

Google random number generation:

Whist not truly random I would choose a computer to generate a random number any day humans are rubbish at randomness as they behave in a predicitable way


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See Joeys answer. There also exist hardware random generators which use some physical process to produce nouse and which can be plugged into your computer to be used for "true" random number generation (in the mathematical sense, the "true" is superfluous").

Under Unix-likes, such devices could be queried at /dev/random and /dev/urandom.

For an online example, see .

Also make sure to have a look at

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This is linux-specific but there is some OS support for "real" randomness: /dev/random and /dev/urandom. You read these like normal files.

random is real randomness gleaned from physical processes such as irregular latencies in the hardware -- it is depleted when you read it and is cryptographically secure.

urandom is a limitless pseudorandom source which is derived from random and almost certainly higher quality than your C library PRNG.

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That's not real randomness unless /dev/random / /dev/random are plugged into a "true random device". The OS can't be non-deterministic without some help. See . –  phresnel Jul 6 '11 at 8:50
/dev/random is plugged into a "true random device" (the motherboard), it doesn't HAVE to be a dedicated true random device. The only consequence is that /dev/random generates entropy more slowly without a dedicated random device. It's still really random. If your OS has a bad implementation then that's another matter. –  spraff Jul 6 '11 at 8:54
That's interesting news to me. Mea culpa. I'd remove the -1, but it seems locked, sorry. –  phresnel Jul 6 '11 at 9:06
To my knowledge it is only truly random if you include outside sources in your entropy, such as network packets sent to you. If a computer is completely self-contained and gets no outside input, then you're back to the beginning. –  Joey Jul 6 '11 at 9:19
Joey, hard disk seek time is a local example. Yes you can write malicious code that will make the seek time somewhat regular, but if you measure it in nanoseconds, take the lowest few bits and hash then mechanical effects dominate any application logic. –  spraff Jul 6 '11 at 9:35

Surely human is more random. Compiler (actually, the random module which is compiled by the compiler) only uses some dummy-random (not actually random, just likely) algorithm to generate a random number.

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No, human generated random numbers are bad:… –  phresnel Jul 6 '11 at 8:48
One of the why's is already there. Re-iterating: Humans generally produce noise of lesser quality than PRNGs or even Hardware-RNGs do. –  phresnel Jul 6 '11 at 8:54
@phresnel:In means, human created such a precious thing which can think beyond the human thinking. –  Javed Akram Jul 6 '11 at 8:57
Humans are lousy at randomness, particularly when they try their hardest. gives a good feel for just how bad you are. –  msw Jul 6 '11 at 9:05
@longbkit: Even if that was true, which it is not (see my remarks on my favourites: I will always prefer 2^n and for some reasons prime numbers (personal fav. "7") as well as numbers of the golden ratio (1,2,3,5,8,13,...)), it wouldn't change much. If you are asked one time, then you are already biased for the next time someone requests a single number by you. Also, even if you generate just one number in your whole life, what could you do with that single number? Imho, that's irrelevant. –  phresnel Jul 6 '11 at 10:05

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