# What is the fastest method of sampling random values from a Gaussian distribution?

The Box-Muller transform, is an elegant and reasonably performant method of sampling random values from a Gaussian distribution.

I'm looking for a faster method clearly written and in C#.

For reference here's an implementation of the Box-Muller Implementation to act as a baseline for performance comparisons...

``````public class GaussianGenerator
{
FastRandom _rng = new FastRandom();
double? _spareValue = null;

/// <summary>
/// Get the next sample point from the gaussian distribution.
/// </summary>
public double NextDouble()
{
if(null != _spareValue)
{
double tmp = _spareValue.Value;
_spareValue = null;
return tmp;
}

// Generate two new gaussian values.
double x, y, sqr;

// We need a non-zero random point inside the unit circle.
do
{
x = 2.0 * _rng.NextDouble() - 1.0;
y = 2.0 * _rng.NextDouble() - 1.0;
sqr = x * x + y * y;
}
while(sqr > 1.0 || sqr == 0);

// Make the Box-Muller transformation.
double fac = Math.Sqrt(-2.0 * Math.Log(sqr) / sqr);

_spareValue = x * fac;
return y * fac;
}

/// <summary>
/// Get the next sample point from the gaussian distribution.
/// </summary>
public double NextDouble(double mu, double sigma)
{
return mu + (NextDouble() * sigma);
}
}
``````
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Do you have a question? –  Marcelo Cantos Aug 24 '11 at 22:58
Do you have an elegant implementation of the Ziggurat Algorithm in C#? –  locster Aug 24 '11 at 23:34
You want speed and elegance ? Implement ratio-of-uniforms ! Ziggurat is (to my mind) ugly and terribly difficult to tune. –  Alexandre C. Aug 30 '11 at 12:40
@Alexadre. I have spent a couple of days so far writing a version that's as elegant as possible, but yes it's a lot more complex than e.g. Box-Muller, especially after optimizations! I have not heard of ratio-of-uniforms, I will look into it, thanks for the pointer. –  locster Aug 30 '11 at 21:07
Not sure why this was closed - seems like a perfectly valid programming related question to me, i.e. generating gaussian noise is quite a common requirement, as is doing so efficiently/quickly. –  locster Nov 13 '12 at 13:40

For the record there's a well written, tested, optimized and explained version available via this link to a source file within an SVN repository:

ZigguratGaussianSampler.cs

On my Core i7 920 @ 2.66Ghz it achieves about 45k/samples/millisec running on one core. Box-Muller achieves about 24k/ms in the same environment/setup. Both are using SharpNEAT's FastRandom class as a source of uniform random numbers.

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