To give some context, I have been writing a basic Perlin noise implementation in Java, and when it came to implementing seeding, I had encountered a bug that I couldn't explain.

In order to generate the same random weight vectors each time for the same seed no matter which set of coordinates' noise level is queried and in what order, I generated a new seed (`newSeed`

), based on a combination of the original seed and the coordinates of the weight vector, and used this as the seed for the randomization of the weight vector by running:

```
rnd.setSeed(newSeed);
weight = new NVector(2);
weight.setElement(0, rnd.nextDouble() * 2 - 1);
weight.setElement(1, rnd.nextDouble() * 2 - 1);
weight.normalize()
```

Where `NVector`

is a self-made class for vector mathematics.

However, when run, the program generated very bad noise:

After some digging, I found that the first element of each vector was very similar (and so the first `nextDouble()`

call after each `setSeed()`

call) resulting in the first element of every vector in the vector grid being similar.

This can be proved by running:

```
long seed = Long.valueOf(args[0]);
int loops = Integer.valueOf(args[1]);
double avgFirst = 0.0, avgSecond = 0.0, avgThird = 0.0;
double lastfirst = 0.0, lastSecond = 0.0, lastThird = 0.0;
for(int i = 0; i<loops; i++)
{
ran.setSeed(seed + i);
double first = ran.nextDouble();
double second = ran.nextDouble();
double third = ran.nextDouble();
avgFirst += Math.abs(first - lastfirst);
avgSecond += Math.abs(second - lastSecond);
avgThird += Math.abs(third - lastThird);
lastfirst = first;
lastSecond = second;
lastThird = third;
}
System.out.println("Average first difference.: " + avgFirst/loops);
System.out.println("Average second Difference: " + avgSecond/loops);
System.out.println("Average third Difference.: " + avgSecond/loops);
```

Which finds the average difference between the first, second and third random numbers generated after a `setSeed()`

method has been called over a range of seeds as specified by the program's arguments; which for me returned these results:

```
C:\java Test 462454356345 10000
Average first difference.: 7.44638117976783E-4
Average second Difference: 0.34131692827329957
Average third Difference.: 0.34131692827329957
C:\java Test 46245445 10000
Average first difference.: 0.0017196011123287126
Average second Difference: 0.3416750057190849
Average third Difference.: 0.3416750057190849
C:\java Test 1 10000
Average first difference.: 0.0021601598225344998
Average second Difference: 0.3409914232342002
Average third Difference.: 0.3409914232342002
```

Here you can see that the first average difference is significantly smaller than the rest, and seemingly decreasing with higher seeds.

As such, by adding a simple dummy call to `nextDouble()`

before setting the weight vector, I was able to fix my perlin noise implementation:

```
rnd.setSeed(newSeed);
rnd.nextDouble();
weight.setElement(0, rnd.nextDouble() * 2 - 1);
weight.setElement(1, rnd.nextDouble() * 2 - 1);
```

Resulting in:

I would like to know why this bad variation in the first call to `nextDouble()`

(I have not checked other types of randomness) occurs and/or to alert people to this issue.

Of course, it could just be an implementation error on my behalf, which I would be greatful if it were pointed out to me.

`Random`

has similar issues. – Mark Hurd Jan 7 '15 at 4:45