# What Type of Random Number Generator is Used in the Gaming Industry?

Given the extremely high requirements for unpredictability to prevent casinos from going bankrupt, what random number generation algorithm and seeding scheme is typically used in devices like slot machines, video poker machines, etc.?

EDIT: Related questions:

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Interesting question - I'd have assumed that they would use hardware that provided true randomness (noise generators or whatever), but I imagine that even with those they might use them in conjunction with a PRNG. – Michael Burr Jan 9 '09 at 2:29

For a casino gaming applications, I think the seeding of the algorithm is the most important part to make sure all games "booted" up don't run through the same sequence or some small set of predictable sequences. That is, the source of entropy leading to the seed for the starting position is the critical thing. Beyond that, any good quality random number generator where each bit position as has a ~50/50 probability of being 1/0 and the period is relatively long would be sufficient. For example, something like the Mersenne twister PRNG has such properties.

Using cryptographically secure random generators only becomes important when the actual output of the random generator can be viewed directly. For example, if you were monitoring each number actually generated by the number generator - after viewing many numbers in the sequence - with a non-cryptographic generator information about that sequence can lead to establishing information about all the internal state of the generator. At this point, if you know what the algorithm looks like, you would be able to predict future numbers and that would be bad. The cryptographic generator prevents that reverse engineering back to the internal state so that predicting future numbers becomes "impossible".

However, in the case of a casino game, you would (or should) have no visibility to the actual numbers being generated under the hood. Each time a random number is generated - say a 32-bit number - that number will be used then, for example, mod 52 for a deck shuffling algorithm....no where in that process do you have any idea what numbers were being generated by the algorithm to shuffle that deck. That is, most of the bits of "randomness" is just being thrown out and even the ones being used you have no visibility to. Therefore, no way to reverse engineer the state.

Getting back to a true source of entropy to seed the whole process, that is the hard part. See the Wikipedia entry on entropy for some starting points on techniques.

As an aside, if you did want cryptographically sequence random numbers from a "regular" algorithm, a simple approach is to take a few random numbers in sequence, concatenate them together and then run something like MD5 or SHA-1 on them and the result is just as random and also cryptographically secure. That is, you just made your own "secure" random number generator.

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Security by obscurity (i.e., hiding your algorithms and/or some system parameters) is generally not a good idea. An insider attack is all it takes to break the system. However, using fast hash functions makes sense if speed is a concern. – PolyThinker Jan 9 '09 at 4:55
From what I've read, slots and the like continually generate random numbers even when not being played. The number chosen is based on when the button is pressed; thus, the security of the RNG is relatively unimportant. – Nick Johnson Jan 9 '09 at 10:34
There was I video horse racing game in Australia a few years ago that suffered from bad seeding. During the time when the game was not in use it showed a "demo" version of a horse race. Except that the demo version turned out to be what was in use when you played the game. Thus you already knew which horse had won. – Peter M Jul 21 '10 at 10:23
How disappointing to see a highly up voted answer recommend Mersenne Twister. Mersenne Twister is NOT SUITABLE for this application. It is not cryptographically secure: given some of its outputs, you can predict future outputs. That's a serious problem for a gambling machine. Also, the claims about "no direct visibility" are baloney: they are witchcraft with no solid technical basis underlying them. Just because you have transformed the output of a non-secure PRNG somehow, does not necessarily make it secure. I hope no one will follow the advice in this answer. – D.W. Dec 19 '13 at 19:12
The mod example for bringing a random number generator result into a certain range is usually a bad idea, as it can introduce bias. – Adrian McCarthy Dec 19 '13 at 22:20

There are many things that the gaming sites have to consider when choosing/implementing an RNG. Without due dilligence, it can go spectacularly wrong.

To get a licence to operate a gaming site in a particular jurisdiction usually requires that the RNG has been certified by an independent third-party. The third-party testers will analyse the source code and run statistical tests (e.g. Diehard) to ensure that the RNG behaves randomly. Reputable poker sites will usually include details of the certification that their RNG has undergone (for example: PokerStars's RNG page).

I've been involved in a few gaming projects, and for one of them I had to design and implement the RNG part, so I had to investigate all of these issues. Most poker sites will use some hardware device for entropy, but they won't rely on just hardware. Usually it will be used in conjunction with a pseudo-RNG (PRNG). There are two main reasons for this. Firstly, the hardware is slow, it can only extract a certain number of bits of entropy in a given time period from whatever physical process it is monitoring. Secondly, hardware fails in unpredictable ways that software PRNGs do not.

Fortuna is the state of the art in terms of cryptographically strong PRNGs. It can be fed entropy from one or more external sources (e.g. a hardware RNG) and is resilient in the face of attempted exploits or RNG hardware failure. It's a decent choice for gaming sites, though some might argue it is overkill.

Pokerroom.com used to just use Java's SecureRandom (they probably still do, but I couldn't find details on their site). This is mostly good enough, but it does suffer from the degrees of freedom problem.

Most stock RNG implementations (e.g. Mersenne Twister) do not have sufficient degrees of freedom to be able to generate every possible shuffle of a 52-card deck from a given initial state (this is something I tried to explain in a previous blog post).

EDIT: I've answered mostly in relation to online poker rooms and casinos, but the same considerations apply to physical video poker and video slots machines in real world casinos.

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Read your blog. Very interesting although the degree of free argument is flawed. Mersenne has 2^64 different starting points, but it's sequences are 2^19937 numbers long. If you do not re-seed between shuffles you will eventually hit every deck combo. There is 2^64 starting decks not total decks. – Tall Jeff Jan 10 '09 at 14:13
In any case I definitely up-voted your answer and particularly appreciate the practical points and experience with the application. – Tall Jeff Jan 10 '09 at 14:14
@Jeff, you will eventually hit every combination, but from a given state the next shuffle can be only one of 2^64 possibilities. In practice it probably doesn't matter, but in theory it's nicer to have every shuffle to be possible. – Dan Dyer Jan 10 '09 at 14:20
The 2002 update to the original MT algorithm lets you determine any arbitrary section of the internal state by allowing for seeds of up to 19968 bits, giving you 2^19937 degrees of freedom (31 of the internal state bits are not used to generate numbers), so the issue you mentioned only exists if you are using an ancient implementation (or a port based on one - of which there are surprisingly many). The real problem with MT is that given a relative small sample of outputs you can calculate the internal state. – JBentley Feb 18 '14 at 1:40

We've been using the Protego R210-USB TRNG (and the non-usb version before that) as random seed generators in casino applications, with java.security.SecureRandom on top. We had The Swedish National Laboratory of Forensic Science perform a separate audit of the R210, and it passed without a flaw.

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You probably need a cryptographically secure pseudo-random generator. There are a lot of variants. Google "Blum-Blum-Shub", for example.

The security properties of these pseudo-random generators will generally be that, even when the attacker can observe polynomially many outputs from such generators, it won't be feasible to guess the next output with a probability much better than random guessing. Also, it is not feasible to distinguish the output of such generators from truly random bits. The security holds even when all the algorithms and parameters are known by the attacker (except for the secret seed).

The security of the generators is often measured with respect to a security parameter. In the case of BBS, it is the size of the modulus. This is no different from other crypto stuff. For example, RSA is secure only when the key is long enough.

Note that, the output of such generators may not be uniform (in fact, can be far away from uniform in statistical sense). But since no one can distinguish the two distributions without infinite computing power, these generators will suffice in most applications that require truly random bits.

Bear in mind, however, that these cryptographically secure pseudo-random generators are usually slow. So if speed is indeed a concern, less rigorous approaches may be more relevant, such as using hash functions, as suggested by Jeff.

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i've always loved that name :D – olliej Jan 9 '09 at 2:25
I don't think it is necessary for the PRNG to be cryptographically secure. The seeding is the more important part. I try to address this in more detail in my answer. – Tall Jeff Jan 9 '09 at 3:18
B-B-S is exactly what should not be used: "...use M=16873, and hence the period is much lesser than 16873. ... BBS failed all of the statistical tests we have conducted and is therefore not suitable for stochastic simulations." cs.dartmouth.edu/~akapadia/project2/node11.html – hughdbrown Jan 9 '09 at 3:44
@hughdbrown: of course, too small modulus doesn't give you anything. neither security nor statistical randomness. – PolyThinker Jan 9 '09 at 4:32
@Jeff, stuff like BBS has the advantage that their security can be proven (with proper assumptions) even when the algorithm itself is known. Your methods will rely more on adhoc assumptions or obscurity (by keeping algo/code secret). – PolyThinker Jan 9 '09 at 4:35

Casinos shouldn't be using Pseudo-random number generators, they should be using hardware ones: http://en.wikipedia.org/wiki/Hardware_random_number_generator

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PRNGs are much faster and somewhat safer because they don't fail in the same way as hardware devices. A good solution is to use hardware devices to seed the PRNG. A PRNG design like Fortuna allows you to continuously mix in entropy from the hardware, but is still safe if the hardware fails. – Dan Dyer Jan 10 '09 at 13:18

Casino slot machines generate random numbers continuously at very high speed and use the most recent result(s) when the user pulls the lever (or hits the button) to spin the reels.

Even a simplistic generator can be used. Even if you knew the algorithm used, you cannot observe where in the sequence it is because nearly all the results are discarded. If somehow you did know where it was in the sequence, you'd have to have millisecond or better timing to take advantage of it.

Modern "mechanical reel" machines use PRNGs and drive the reels with stepper motors to simulate the old style spin-and-brake.

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If you want to do it properly you have to get physical - ERNIE the UK national savings number picker uses a shot noise in Neon tubes.

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I for sure have seen a german gambling machine that was not allowed to be ran commercially after a given date, so I suppose it was a PNRG with a looong one time pad seed list.

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Most poker sites use hardware random number generators. They will also modify the output to remove any scaling bias and often use 'pots' of numbers which can be 'stirred' using entropic events (user activity, serer i/o events etc). Quite often the resultant numbers just index pre-generated decks (starting off as a sorted list of cards).

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