69

How can I get a random System.Decimal? System.Random doesn't support it directly.

3
  • 8
    would it not just be easier to generate a random integer between, say, 1 and 999, and divide the result by 100? ex. random number 1 would be 0.01 and 999 would be 9.99 Apr 19, 2012 at 10:47
  • @StefanZCamilleri Depends on what you need the random decimal for. Have a read through some of the answers below. The complete range of possible Decimal values that can be represented is really large and some thought is required to get random ints to feed into the Decimal constructor. Then there is the problem of how uniform the random distribution of generated decimal values is. Apr 20, 2012 at 1:05
  • Besides, if I am not mistaken, .01 is not between 1 and 999. It's less than 1 therefor would not be a valid response. Nov 17, 2017 at 15:31

14 Answers 14

56

EDIT: Removed old version

This is similar to Daniel's version, but will give the complete range. It also introduces a new extension method to get a random "any integer" value, which I think is handy.

Note that the distribution of decimals here is not uniform.

/// <summary>
/// Returns an Int32 with a random value across the entire range of
/// possible values.
/// </summary>
public static int NextInt32(this Random rng)
{
     int firstBits = rng.Next(0, 1 << 4) << 28;
     int lastBits = rng.Next(0, 1 << 28);
     return firstBits | lastBits;
}

public static decimal NextDecimal(this Random rng)
{
     byte scale = (byte) rng.Next(29);
     bool sign = rng.Next(2) == 1;
     return new decimal(rng.NextInt32(), 
                        rng.NextInt32(),
                        rng.NextInt32(),
                        sign,
                        scale);
}
23
  • I wondered about this and/or the ctor that takes a byte[] - but are all the byte[] permutations legal? Mar 4, 2009 at 7:20
  • @Marc: My recollection is that they are, and the other bits are just ignored. I haven't checked though.
    – Jon Skeet
    Mar 4, 2009 at 7:23
  • 3
    @Hosam: It's absolutely non-uniform in terms of magnitude of decimal. It's uniform in terms of each bit pattern having the same probability of occurring. For a uniform pattern, we'd be better off generating a number between 0 and 1.
    – Jon Skeet
    Mar 4, 2009 at 19:27
  • 1
    @LosManos: Next() never returns a negative number. NextInt32 can return any int.
    – Jon Skeet
    Jul 8, 2016 at 11:14
  • 1
    @D.R.: Yes, it is. I can't remember (8 1/2 years later) why I put it in, but it's possible there were some non-bitwise operations before. Removed now.
    – Jon Skeet
    Nov 19, 2017 at 16:53
10

You would normally expect from a random-number-generator that it not only generated random numbers, but that the numbers were uniformly randomly generated.

There are two definitions of uniformly random: discrete uniformly random and continuous uniformly random.

Discretely uniformly random makes sense for a random number generator that has a finite number of different possible outcomes. For example generating an integer between 1 and 10. You would then expect that the probability of getting 4 is the same as getting 7.

Continuously uniformly random makes sense when the random number generator generates numbers in a range. For example a generator that generates a real number between 0 and 1. You would then expect that the probability of getting a number between 0 and 0.5 is the same as getting a number between 0.5 and 1.

When a random number generator generates floating-point numbers (which is basically what a System.Decimal is - it is just floating-point with base 10), it is arguable what the proper definition of uniformly random is:

On one hand, since the floating-point number is being represented by a fixed number of bits in a computer, it is obvious that there are a finite number of possible outcomes. So one could argue that the proper distribution is a discrete continuous distribution with each representable number having the same probability. That is basically what Jon Skeet's and John Leidegren's implementation does.

On the other hand, one might argue that since a floating-point number is supposed to be an approximation to a real number, we would be better off by trying to approximate the behavior of a continuous random number generator - even though are actual RNG is actually discrete. This is the behavior you get from Random.NextDouble(), where - even though there are approximately as many representable numbers in the range 0.00001-0.00002 as there are in the range 0.8-0.9, you are a thousand times more likely to get a number in the second range - as you would expect.

So a proper implementation of a Random.NextDecimal() should probably be continuously uniformly distributed.

Here is a simple variation of Jon Skeet's answer that is uniformly distributed between 0 and 1 (I reuse his NextInt32() extension method):

public static decimal NextDecimal(this Random rng)
{
     return new decimal(rng.NextInt32(), 
                        rng.NextInt32(),
                        rng.Next(0x204FCE5E),
                        false,
                        0);
}

You could also discuss how to get an uniform distribution over the entire range of decimals. There is probably an easier way to do this, but this slight modification of John Leidegren's answer should produce a relatively uniform distribution:

private static int GetDecimalScale(Random r)
{
  for(int i=0;i<=28;i++){
    if(r.NextDouble() >= 0.1)
      return i;
  }
  return 0;
}

public static decimal NextDecimal(this Random r)
{
    var s = GetDecimalScale(r);
    var a = (int)(uint.MaxValue * r.NextDouble());
    var b = (int)(uint.MaxValue * r.NextDouble());
    var c = (int)(uint.MaxValue * r.NextDouble());
    var n = r.NextDouble() >= 0.5;
    return new Decimal(a, b, c, n, s);
}

Basically, we make sure that values of scale are chosen proportionally to the size of the corresponding range.

That means that we should get a scale of 0 90% of the time - since that range contains 90% of the possible range - a scale of 1 9% of the time, etc.

There are still some problems with the implementation, since it does not take into account that some numbers have multiple representations - but it should be much closer to a uniform distribution than the other implementations.

10
  • Why is your scale ratio 0.1? It doesn't seem uniform to me. Perhaps 1.0/28 is more uniform.
    – Hosam Aly
    Mar 4, 2009 at 12:41
  • And how is this different from 28 * r.NextDouble()?
    – Hosam Aly
    Mar 4, 2009 at 12:42
  • That's quite interesting, because we're totally just putting in garbage. Supposedly you would wanna have a nice uniform distribution between 0 and 1 and then you would scale that with what ever range you require. Though I fail to see how this accomplish that? Mar 4, 2009 at 13:58
  • @Hosam Aly I have tried to explain in more depth what I am doing. Basically, you want to get scale=28 90% of the time, since that contains the largest range of numbers. 28*r.NextDouble() makes it as likely to get a number between 0.1 and 0.2 as it is to get a number between 100000000 and 200000000. Mar 5, 2009 at 8:18
  • @John Leidegren: Yes, it usually would be easier to start off with a uniform distribution between 0 and 1 and just scale that. I think I will make an answer that provides that. Mar 5, 2009 at 8:20
8

I know this is an old question, but the distribution issue Rasmus Faber described kept bothering me so I came up with the following. I have not looked in depth at the NextInt32 implementation provided by Jon Skeet and am assuming (hoping) it has the same distribution as Random.Next().

//Provides a random decimal value in the range [0.0000000000000000000000000000, 0.9999999999999999999999999999) with (theoretical) uniform and discrete distribution.
public static decimal NextDecimalSample(this Random random)
{
    var sample = 1m;
    //After ~200 million tries this never took more than one attempt but it is possible to generate combinations of a, b, and c with the approach below resulting in a sample >= 1.
    while (sample >= 1)
    {
        var a = random.NextInt32();
        var b = random.NextInt32();
        //The high bits of 0.9999999999999999999999999999m are 542101086.
        var c = random.Next(542101087);
        sample = new Decimal(a, b, c, false, 28);
    }
    return sample;
}

public static decimal NextDecimal(this Random random)
{
    return NextDecimal(random, decimal.MaxValue);
}

public static decimal NextDecimal(this Random random, decimal maxValue)
{
    return NextDecimal(random, decimal.Zero, maxValue);
}

public static decimal NextDecimal(this Random random, decimal minValue, decimal maxValue)
{
    var nextDecimalSample = NextDecimalSample(random);
    return maxValue * nextDecimalSample + minValue * (1 - nextDecimalSample);
}
0
8

It is also, through the power of easy stuff, to do:

var rand = new Random();
var item = new decimal(rand.NextDouble());
1
  • 2
    This might work for some use-cases, but it won't generate decimals with the precision that .NET decimal can support. Dec 17, 2019 at 19:07
6

Here is Decimal random with Range implementation that works fine for me.

public static decimal NextDecimal(this Random rnd, decimal from, decimal to)
{
    byte fromScale = new System.Data.SqlTypes.SqlDecimal(from).Scale;
    byte toScale = new System.Data.SqlTypes.SqlDecimal(to).Scale;

    byte scale = (byte)(fromScale + toScale);
    if (scale > 28)
        scale = 28;

    decimal r = new decimal(rnd.Next(), rnd.Next(), rnd.Next(), false, scale);
    if (Math.Sign(from) == Math.Sign(to) || from == 0 || to == 0)
        return decimal.Remainder(r, to - from) + from;

    bool getFromNegativeRange = (double)from + rnd.NextDouble() * ((double)to - (double)from) < 0;
    return getFromNegativeRange ? decimal.Remainder(r, -from) + from : decimal.Remainder(r, to);
}
1
  • is System.Data necessary ?
    – Sonic Soul
    Nov 2, 2018 at 21:43
2

I puzzled with this for a bit. This is the best I could come up with:

public class DecimalRandom : Random
    {
        public override decimal NextDecimal()
        {
            //The low 32 bits of a 96-bit integer. 
            int lo = this.Next(int.MinValue, int.MaxValue);
            //The middle 32 bits of a 96-bit integer. 
            int mid = this.Next(int.MinValue, int.MaxValue);
            //The high 32 bits of a 96-bit integer. 
            int hi = this.Next(int.MinValue, int.MaxValue);
            //The sign of the number; 1 is negative, 0 is positive. 
            bool isNegative = (this.Next(2) == 0);
            //A power of 10 ranging from 0 to 28. 
            byte scale = Convert.ToByte(this.Next(29));

            Decimal randomDecimal = new Decimal(lo, mid, hi, isNegative, scale);

            return randomDecimal;
        }
    }

Edit: As noted in the comments lo, mid and hi can never contain int.MaxValue so the complete range of Decimals isn't possible.

2
  • Not quite... Random.Next(int.MinValue, int.MaxValue) will never return int.MaxValue. I've got an answer, but I think I can improve on it.
    – Jon Skeet
    Mar 4, 2009 at 7:13
  • Statistics is not my strong point, so I'm probably wrong, but I'd worry that the distribution might not be very uniform. Mar 4, 2009 at 7:14
2

here you go... uses the crypt library to generate a couple of random bytes, then convertes them to a decimal value... see MSDN for the decimal constructor

using System.Security.Cryptography;

public static decimal Next(decimal max)
{
    // Create a int array to hold the random values.
    Byte[] randomNumber = new Byte[] { 0,0 };

    RNGCryptoServiceProvider Gen = new RNGCryptoServiceProvider();

    // Fill the array with a random value.
    Gen.GetBytes(randomNumber);

    // convert the bytes to a decimal
    return new decimal(new int[] 
    { 
               0,                   // not used, must be 0
               randomNumber[0] % 29,// must be between 0 and 28
               0,                   // not used, must be 0
               randomNumber[1] % 2  // sign --> 0 == positive, 1 == negative
    } ) % (max+1);
}

revised to use a different decimal constructor to give a better range of numbers

public static decimal Next(decimal max)
{
    // Create a int array to hold the random values.
    Byte[] bytes= new Byte[] { 0,0,0,0 };

    RNGCryptoServiceProvider Gen = new RNGCryptoServiceProvider();

    // Fill the array with a random value.
    Gen.GetBytes(bytes);
    bytes[3] %= 29; // this must be between 0 and 28 (inclusive)
    decimal d = new decimal( (int)bytes[0], (int)bytes[1], (int)bytes[2], false, bytes[3]);

        return d % (max+1);
    }
2
  • That does mean we're limited to 65536 values out of the huge possible range though, doesn't it?
    – Jon Skeet
    Mar 4, 2009 at 9:15
  • 2
    Are we living in the days of 16-bit computing? What's the meaning of this? Mar 4, 2009 at 13:59
2

Since the OP question is very embracing and just want a random System.Decimal without any restriction, below is a very simple solution that worked for me.

I was not concerned with any type of uniformity or precision of the generated numbers, so others answers here are probably better if you have some restrictions, but this one works fine in simple cases.

Random rnd = new Random();
decimal val;
int decimal_places = 2;
val = Math.Round(new decimal(rnd.NextDouble()), decimal_places);

In my specific case, I was looking for a random decimal to use as a money string, so my complete solution was:

string value;
value = val = Math.Round(new decimal(rnd.NextDouble()) * 1000,2).ToString("0.00", System.Globalization.CultureInfo.InvariantCulture);
1

Check out the following link for ready-made implementations that should help:

MathNet.Numerics, Random Numbers and Probability Distributions

The extensive distributions are especially of interest, built on top of the Random Number Generators (MersenneTwister, etc.) directly derived from System.Random, all providing handy extension methods (e.g. NextFullRangeInt32, NextFullRangeInt64, NextDecimal, etc.). You can, of course, just use the default SystemRandomSource, which is simply System.Random embellished with the extension methods.

Oh, and you can create your RNG instances as thread safe if you need it.

Very handy indeed!

This is an old question, but for those who are just reading it, why re-invent the wheel?

1
static decimal GetRandomDecimal()
    {

        int[] DataInts = new int[4];
        byte[] DataBytes = new byte[DataInts.Length * 4];

        // Use cryptographic random number generator to get 16 bytes random data
        RNGCryptoServiceProvider rng = new RNGCryptoServiceProvider();

        do
        {
            rng.GetBytes(DataBytes);

            // Convert 16 bytes into 4 ints
            for (int index = 0; index < DataInts.Length; index++)
            {
                DataInts[index] = BitConverter.ToInt32(DataBytes, index * 4);
            }

            // Mask out all bits except sign bit 31 and scale bits 16 to 20 (value 0-31)
            DataInts[3] = DataInts[3] & (unchecked((int)2147483648u | 2031616));

          // Start over if scale > 28 to avoid bias 
        } while (((DataInts[3] & 1835008) == 1835008) && ((DataInts[3] & 196608) != 0));

        return new decimal(DataInts);
    }
    //end
1

To be honest I don't believe the internal format of the C# decimal works the way many people think. For this reason at least some of the solutions presented here are possibly invalid or may not work consistently. Consider the following 2 numbers and how they are stored in the decimal format:

0.999999999999999m
Sign: 00
96-bit integer: 00 00 00 00 FF 7F C6 A4 7E 8D 03 00
Scale: 0F

and

0.9999999999999999999999999999m
Sign: 00
96-bit integer: 5E CE 4F 20 FF FF FF 0F 61 02 25 3E
Scale: 1C

Take special note of how the scale is different but both values are nearly the same, that is, they are both less than 1 by only a tiny fraction. It appears that it is the scale and the number of digits that have a direct relationship. Unless I'm missing something, this should throw a monkey wrench into most any code that tampers with the 96-bit integer part of a decimal but leaves the scale unchanged.

In experimenting I found that the number 0.9999999999999999999999999999m, which has 28 nines, has the maximum number of nines possible before the decimal will round up to 1.0m.

Further experimenting proved the following code sets the variable "Dec" to the value 0.9999999999999999999999999999m:

double DblH = 0.99999999999999d;
double DblL = 0.99999999999999d;
decimal Dec = (decimal)DblH + (decimal)DblL / 1E14m;

It is from this discovery that I came up with the extensions to the Random class that can be seen in the code below. I believe this code is fully functional and in good working order, but would be glad for other eyes to be checking it for mistakes. I'm not a statistician so I can't say if this code produces a truly uniform distribution of decimals, but if I had to guess I would say it fails perfection but comes extremely close (as in 1 call out of 51 trillion favoring a certain range of numbers).

The first NextDecimal() function should produce values equal to or greater than 0.0m and less than 1.0m. The do/while statement prevents RandH and RandL from exceeding the value 0.99999999999999d by looping until they are below that value. I believe the odds of this loop ever repeating are 1 in 51 trillion (emphasis on the word believe, I don't trust my math). This in turn should prevent the functions from ever rounding the return value up to 1.0m.

The second NextDecimal() function should work the same as the Random.Next() function, only with Decimal values instead of integers. I actually haven't been using this second NextDecimal() function and haven't tested it. Its fairly simple so I think I have it right, but again, I haven't tested it - so you will want to make sure it is working correctly before relying on it.

public static class ExtensionMethods {
    public static decimal NextDecimal(this Random rng) {
        double RandH, RandL;
        do {
            RandH = rng.NextDouble();
            RandL = rng.NextDouble();
        } while((RandH > 0.99999999999999d) || (RandL > 0.99999999999999d));
        return (decimal)RandH + (decimal)RandL / 1E14m;
    }
    public static decimal NextDecimal(this Random rng, decimal minValue, decimal maxValue) {
        return rng.NextDecimal() * (maxValue - minValue) + minValue;
    }
}
0

I wanted to generate "random" decimals up to 9 decimal places. My approach was to just generate a double and divide it for the decimals.

int randomInt = rnd.Next(0, 100);

double randomDouble = rnd.Next(0, 999999999);
decimal randomDec = Convert.ToDecimal(randomint) + Convert.ToDecimal((randomDouble/1000000000));

the "randomInt" is the number before the decimal place, you could just put 0. To reduce decimal points simply remove "9"s in random and "0"s in dividing

-1
    public static decimal RandomDecimal()
    {
        int a = RandomNumber(2, 10);
        int b = RandomNumber(0, 99);

        string c = a + "." + b;
        decimal d = decimal.Parse(c);
        return d;
    }

    public static int RandomNumber(int min, int max)
    {
        return _random.Next(min, max);
    }
1
  • Please don't post code-only answers. Future readers will be grateful to see explained why it answers the question instead of having to infer it from the code. And, since this is an old question, please explain how it compliments the other answers. If it doesn't, kindly remove the answer. Jan 29 at 15:04
-1
System.Random rnd = new System.Random();
System.Math.Round( Convert.ToDecimal(rnd.NextDouble() * (maxValue-minValue) + minValue) , decimalPlaces);

Oneliners are always the best full code and example bellow

using System;
                    
public class Program
{
    public static void Main()
    {
        var val = GetRandomDecimal(0, 100, 2);
        Console.WriteLine(val.ToString());
    }

    
    static System.Random rnd = new System.Random();
    public static decimal GetRandomDecimal(int minValue, int maxValue, int decimalPlaces)
    {
        return System.Math.Round( Convert.ToDecimal(rnd.NextDouble() * (maxValue-minValue) + minValue) , decimalPlaces);
    }
        
}

https://dotnetfiddle.net/wt5XeZ

1
  • The Math.Round is causing a bias for the upper and lower bounded numbers. So, for example, if I tried to generate numbers between 0 and 1 with 1 decimal place then 0.0 comes up one 20th of the time, as does 1.0. The other numbers, 01. to 0.9 come up one tenth of the time. This isn't uniform. Jun 6 at 8:22

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