# Writing tests for stochastic functions

I'm coding a package for experimenting with evolutionary algorithms, and needless to say, it includes a lot of stochastic methods. Now, I'd like to write some (doc)tests for this package, so I can verify that everything works, but I run into situations where the test should simply be true "most of the time". It feels like I'm probably approaching this the wrong way, but I'd still like to hear some of your thoughts on this.

For example, I have something like this in my doctests:

``````>>> a = Genome()
>>> b = Genome()
>>> a.mutate()
>>> a != b
True # Well, most of the time.
``````

Implementing tests like that would mean that the test will sometimes fail while everything is working.

I read the suggestion to fix the RNG seed before doing tests, but then I would have to make sure that everything works before I can write the test, since the test should include the expected result.

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Do you know what you want by `most of the time`? If it is at least 1%, then you can in your unit generate 100 answers, and make sure that no more than 1 or 2 differs from what you want. –  Zenon Apr 5 '12 at 14:35
@Zenon But statistically, it is sometimes going to be more than that minimum percentage, so it might still fail the tests. –  noio Apr 5 '12 at 20:45
you should identify your tests on stochastic functions, and if one fails, run the test a second time, with reasonable thresholds. –  Zenon Apr 5 '12 at 20:52

You could make the probability that it fails negligible, e.g.

``````a = Genome()
genomes = []
for i in range(100):
b = Genome()
b.mutate()
genomes.append(b)
assert any(a != b for b in genomes)
``````

If your original test succeeded most of the time, this one will succeed always for all practical purposes.

This test could also impose reasonable limits on the number of Genomes that are allowed to match.

Arguably the test reads less nice than the original one. Maybe using doctests is the wrong approach here, and you should write separate unit tests.

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So the fact that it is possible (though unlikely) for it to fail for no good reason is forgivable? –  noio Apr 5 '12 at 20:48
@Noio: This is more a practical than a theoretical question. If you original test failed in, say, 10 % of the cases, this one will fail in in one out of 10^100 cases. In practice, that's never. –  Sven Marnach Apr 6 '12 at 13:50