I know that the Random class can generate pseudorandom numbers but is there a way to generate truly random numbers?

The answer here has two main sides to it. There are some quite important subtleties to which you should pay due attention... The Easy Way (for simplicity & practicality)The There are other crypographic APIs with high quality pseudo random generaters available too. Algorithms such as the Mersenne twister are quite popular. Comparing this to the The Hard Way (for high quality theoretical randomness)To generate truly random numbers, you need to make use of some natural phenomenon, such as nuclear decay, microscopic temperature fluctuations (CPU temperature is a comparatively conveient source), to name a few. This however is much more difficult and requires additional hardware, of course. I suspect the practical solution ( Now, note that if you really do require truly random numbers, you could use a service such as Random.org, which generates numbers with very high randomness/entropy (based on atmospheric noise). Data is freely available for download. This may nonetheless be unnecessarily complicated for your situation, although it certainly gives you data suitable for scientific study and whatnot. The choice is yours in the end, but at least you should now be able to make an informative decision, being aware of the various types and levels of RNGs. 


short answer: It is not directly possible to generate TRULY RANDOM NUMBERS using only C# (i.e. using only a purely mathematical construction). long(er) answer: Only by means of employing an external device capable of generating "randomness" such as a white noise generator or similar  and capturing the output of that device as a seed for a pseudo random number generator (PRG). That part could be accomplished using C#. 


True random numbers can only be generated if there is a truly random physical input device that provides the seed for the random function. Whether anything physical and truly random exists is still debated (and likely will be for a long time) by the science community. Psuedorandom number generators are the next best thing and the best are very difficult to predict. 


As John von Neumann joked, "Anyone who considers arithmetical methods of producing random digits is, of course, in a state of sin." 


The thread is old and answered, but i thought I'd proceed anyway. It's for completeness and people should know some things about Random in c#. As for truly random, the best you can ever hope to do is use a "secure Pseudo Random Generator" like salsa20 or RC4 (sort of, sometimes). They pass a barrage of tests where "efficient" adversaries try to distinguish them from random. This comes with certain costs and is probably unnecessary for most uses. The random class in c# is pretty good most of the time, it has a statically distribution that looks random. However the default seed for random() is the system time. So if you take lots of randoms at the "same time" they are taken with the same seed and will be the same ("random" is completely deterministic, don't let it fool you). Similar system time seeds also may produce similar numbers because of random class's shortcomings. The way to deal with this is to set you own seeds, like
where x is some value you increment if you've created a loop to get a bunch of random numbers, say. Also with c# random extensionsto your new variable like NextDouble() can be helpful in manipulating the random numbers, in this case crowbaring them into interval (0,1) to become unif(0,1), which happens is a distribution you can plug into stat formulas to create all the distributions in statistics. 


I always liked this idea, for the retro 60s look: 


Take a look at using an algorithm like Yarrow or Fortuna with entropy accumulation. The point with these algorithms is that they keep track of entropy as a measure of theoretical information content available for predicting future numbers by knowing the past numbers and the algorithms used to produce them; and they use cryptographic techniques to fold new entropy sources into the number generator. You'll still need an external source of random data (e.g. hardware source of random numbers), whether that's time of keystrokes, or mouse movement, or hard disk access times, or CPU temperature, or webcam data, or stock prices, or whatever  but in any case, you keep mixing this information into the entropy pools, so that even if the truly random data is slow or low quality, it's enough to keep things going in an unpredictable fashion. 


There is no "true" random in computers, everything is based on something else. For some (feasible) ways to generate pseudorandom data, try something such as a pool of the HD temp, CPU temp, network usage (packets/second) and possibly hits/second to the webserver. 


This code will return you a random number between
Usage:



I was debating building a random number generator based off twitter or one of the other social networking sites. Basically use the api to pull recent posts and then use that to seed a high quality pseudo random number generator. It probably isn't any more effective than randomizing off the timer but seemed like fun. Besides it seems like the best use for most of the stuff people post to twitter. 


There is no way to generate truly random numbers with a computer. True randomness requires an external source that monitors some natural phenomenon. That said, if you don't have access to such a source of truly random numbers you could use a "poor man's" process like this:
This twostep process should improve the randomness of your results somewhat without the need for external input. Here's a sample library that implements the abovedescribed algorithm in C++: http://www.boost.org/doc/libs/1_39_0/libs/random/randomgenerators.html 


Whether true randomness exist in nature is itself in debate, let alone true randomness in computers. For the purpose of randomness required in computer applications, "random" is a number that you do not know and cannot calculate offhand. This means that using the random class in a way that the user does not know, even if they are accustomed with the algorithm used with random, you accomplish your goal. For example, creating a custom random using the BCL random like:
You insert lots of uncertain parameters for any human trying to calculate the next number, even if they know the seed. 

