import unittest import unittest.mock import random import time import pickle import warnings from functools import partial from math import log, exp, pi, fsum, sin, factorial from test import support from fractions import Fraction class TestBasicOps: # Superclass with tests common to all generators. # Subclasses must arrange for self.gen to retrieve the Random instance # to be tested. def randomlist(self, n): """Helper function to make a list of random numbers""" return [self.gen.random() for i in range(n)] def test_autoseed(self): self.gen.seed() state1 = self.gen.getstate() time.sleep(0.1) self.gen.seed() # diffent seeds at different times state2 = self.gen.getstate() self.assertNotEqual(state1, state2) def test_saverestore(self): N = 1000 self.gen.seed() state = self.gen.getstate() randseq = self.randomlist(N) self.gen.setstate(state) # should regenerate the same sequence self.assertEqual(randseq, self.randomlist(N)) def test_seedargs(self): # Seed value with a negative hash. class MySeed(object): def __hash__(self): return -1729 for arg in [None, 0, 0, 1, 1, -1, -1, 10**20, -(10**20), 3.14, 1+2j, 'a', tuple('abc'), MySeed()]: self.gen.seed(arg) for arg in [list(range(3)), dict(one=1)]: self.assertRaises(TypeError, self.gen.seed, arg) self.assertRaises(TypeError, self.gen.seed, 1, 2, 3, 4) self.assertRaises(TypeError, type(self.gen), []) @unittest.mock.patch('random._urandom') # os.urandom def test_seed_when_randomness_source_not_found(self, urandom_mock): # Random.seed() uses time.time() when an operating system specific # randomness source is not found. To test this on machines were it # exists, run the above test, test_seedargs(), again after mocking # os.urandom() so that it raises the exception expected when the # randomness source is not available. urandom_mock.side_effect = NotImplementedError self.test_seedargs() def test_shuffle(self): shuffle = self.gen.shuffle lst = [] shuffle(lst) self.assertEqual(lst, []) lst = [37] shuffle(lst) self.assertEqual(lst, [37]) seqs = [list(range(n)) for n in range(10)] shuffled_seqs = [list(range(n)) for n in range(10)] for shuffled_seq in shuffled_seqs: shuffle(shuffled_seq) for (seq, shuffled_seq) in zip(seqs, shuffled_seqs): self.assertEqual(len(seq), len(shuffled_seq)) self.assertEqual(set(seq), set(shuffled_seq)) # The above tests all would pass if the shuffle was a # no-op. The following non-deterministic test covers that. It # asserts that the shuffled sequence of 1000 distinct elements # must be different from the original one. Although there is # mathematically a non-zero probability that this could # actually happen in a genuinely random shuffle, it is # completely negligible, given that the number of possible # permutations of 1000 objects is 1000! (factorial of 1000), # which is considerably larger than the number of atoms in the # universe... lst = list(range(1000)) shuffled_lst = list(range(1000)) shuffle(shuffled_lst) self.assertTrue(lst != shuffled_lst) shuffle(lst) self.assertTrue(lst != shuffled_lst) def test_choice(self): choice = self.gen.choice with self.assertRaises(IndexError): choice([]) self.assertEqual(choice([50]), 50) self.assertIn(choice([25, 75]), [25, 75]) def test_sample(self): # For the entire allowable range of 0 <= k <= N, validate that # the sample is of the correct length and contains only unique items N = 100 population = range(N) for k in range(N+1): s = self.gen.sample(population, k) self.assertEqual(len(s), k) uniq = set(s) self.assertEqual(len(uniq), k) self.assertTrue(uniq <= set(population)) self.assertEqual(self.gen.sample([], 0), []) # test edge case N==k==0 # Exception raised if size of sample exceeds that of population self.assertRaises(ValueError, self.gen.sample, population, N+1) self.assertRaises(ValueError, self.gen.sample, [], -1) def test_sample_distribution(self): # For the entire allowable range of 0 <= k <= N, validate that # sample generates all possible permutations n = 5 pop = range(n) trials = 10000 # large num prevents false negatives without slowing normal case for k in range(n): expected = factorial(n) // factorial(n-k) perms = {} for i in range(trials): perms[tuple(self.gen.sample(pop, k))] = None if len(perms) == expected: break else: self.fail() def test_sample_inputs(self): # SF bug #801342 -- population can be any iterable defining __len__() self.gen.sample(set(range(20)), 2) self.gen.sample(range(20), 2) self.gen.sample(range(20), 2) self.gen.sample(str('abcdefghijklmnopqrst'), 2) self.gen.sample(tuple('abcdefghijklmnopqrst'), 2) def test_sample_on_dicts(self): self.assertRaises(TypeError, self.gen.sample, dict.fromkeys('abcdef'), 2) def test_choices(self): choices = self.gen.choices data = ['red', 'green', 'blue', 'yellow'] str_data = 'abcd' range_data = range(4) set_data = set(range(4)) # basic functionality for sample in [ choices(data, k=5), choices(data, range(4), k=5), choices(k=5, population=data, weights=range(4)), choices(k=5, population=data, cum_weights=range(4)), ]: self.assertEqual(len(sample), 5) self.assertEqual(type(sample), list) self.assertTrue(set(sample) <= set(data)) # test argument handling with self.assertRaises(TypeError): # missing arguments choices(2) self.assertEqual(choices(data, k=0), []) # k == 0 self.assertEqual(choices(data, k=-1), []) # negative k behaves like ``[0] * -1`` with self.assertRaises(TypeError): choices(data, k=2.5) # k is a float self.assertTrue(set(choices(str_data, k=5)) <= set(str_data)) # population is a string sequence self.assertTrue(set(choices(range_data, k=5)) <= set(range_data)) # population is a range with self.assertRaises(TypeError): choices(set_data, k=2) # population is not a sequence self.assertTrue(set(choices(data, None, k=5)) <= set(data)) # weights is None self.assertTrue(set(choices(data, weights=None, k=5)) <= set(data)) with self.assertRaises(ValueError): choices(data, [1,2], k=5) # len(weights) != len(population) with self.assertRaises(TypeError): choices(data, 10, k=5) # non-iterable weights with self.assertRaises(TypeError): choices(data, [None]*4, k=5) # non-numeric weights for weights in [ [15, 10, 25, 30], # integer weights [15.1, 10.2, 25.2, 30.3], # float weights [Fraction(1, 3), Fraction(2, 6), Fraction(3, 6), Fraction(4, 6)], # fractional weights [True, False, True, False] # booleans (include / exclude) ]: self.assertTrue(set(choices(data, weights, k=5)) <= set(data)) with self.assertRaises(ValueError): choices(data, cum_weights=[1,2], k=5) # len(weights) != len(population) with self.assertRaises(TypeError): choices(data, cum_weights=10, k=5) # non-iterable cum_weights with self.assertRaises(TypeError): choices(data, cum_weights=[None]*4, k=5) # non-numeric cum_weights with self.assertRaises(TypeError): choices(data, range(4), cum_weights=range(4), k=5) # both weights and cum_weights for weights in [ [15, 10, 25, 30], # integer cum_weights [15.1, 10.2, 25.2, 30.3], # float cum_weights [Fraction(1, 3), Fraction(2, 6), Fraction(3, 6), Fraction(4, 6)], # fractional cum_weights ]: self.assertTrue(set(choices(data, cum_weights=weights, k=5)) <= set(data)) # Test weight focused on a single element of the population self.assertEqual(choices('abcd', [1, 0, 0, 0]), ['a']) self.assertEqual(choices('abcd', [0, 1, 0, 0]), ['b']) self.assertEqual(choices('abcd', [0, 0, 1, 0]), ['c']) self.assertEqual(choices('abcd', [0, 0, 0, 1]), ['d']) # Test consistency with random.choice() for empty population with self.assertRaises(IndexError): choices([], k=1) with self.assertRaises(IndexError): choices([], weights=[], k=1) with self.assertRaises(IndexError): choices([], cum_weights=[], k=5) def test_gauss(self): # Ensure that the seed() method initializes all the hidden state. In # particular, through 2.2.1 it failed to reset a piece of state used # by (and only by) the .gauss() method. for seed in 1, 12, 123, 1234, 12345, 123456, 654321: self.gen.seed(seed) x1 = self.gen.random() y1 = self.gen.gauss(0, 1) self.gen.seed(seed) x2 = self.gen.random() y2 = self.gen.gauss(0, 1) self.assertEqual(x1, x2) self.assertEqual(y1, y2) def test_pickling(self): for proto in range(pickle.HIGHEST_PROTOCOL + 1): state = pickle.dumps(self.gen, proto) origseq = [self.gen.random() for i in range(10)] newgen = pickle.loads(state) restoredseq = [newgen.random() for i in range(10)] self.assertEqual(origseq, restoredseq) def test_bug_1727780(self): # verify that version-2-pickles can be loaded # fine, whether they are created on 32-bit or 64-bit # platforms, and that version-3-pickles load fine. files = [("randv2_32.pck", 780), ("randv2_64.pck", 866), ("randv3.pck", 343)] for file, value in files: f = open(support.findfile(file),"rb") r = pickle.load(f) f.close() self.assertEqual(int(r.random()*1000), value) def test_bug_9025(self): # Had problem with an uneven distribution in int(n*random()) # Verify the fix by checking that distributions fall within expectations. n = 100000 randrange = self.gen.randrange k = sum(randrange(6755399441055744) % 3 == 2 for i in range(n)) self.assertTrue(0.30 < k/n < .37, (k/n)) try: random.SystemRandom().random() except NotImplementedError: SystemRandom_available = False else: SystemRandom_available = True @unittest.skipUnless(SystemRandom_available, "random.SystemRandom not available") class SystemRandom_TestBasicOps(TestBasicOps, unittest.TestCase): gen = random.SystemRandom() def test_autoseed(self): # Doesn't need to do anything except not fail self.gen.seed() def test_saverestore(self): self.assertRaises(NotImplementedError, self.gen.getstate) self.assertRaises(NotImplementedError, self.gen.setstate, None) def test_seedargs(self): # Doesn't need to do anything except not fail self.gen.seed(100) def test_gauss(self): self.gen.gauss_next = None self.gen.seed(100) self.assertEqual(self.gen.gauss_next, None) def test_pickling(self): for proto in range(pickle.HIGHEST_PROTOCOL + 1): self.assertRaises(NotImplementedError, pickle.dumps, self.gen, proto) def test_53_bits_per_float(self): # This should pass whenever a C double has 53 bit precision. span = 2 ** 53 cum = 0 for i in range(100): cum |= int(self.gen.random() * span) self.assertEqual(cum, span-1) def test_bigrand(self): # The randrange routine should build-up the required number of bits # in stages so that all bit positions are active. span = 2 ** 500 cum = 0 for i in range(100): r = self.gen.randrange(span) self.assertTrue(0 <= r < span) cum |= r self.assertEqual(cum, span-1) def test_bigrand_ranges(self): for i in [40,80, 160, 200, 211, 250, 375, 512, 550]: start = self.gen.randrange(2 ** (i-2)) stop = self.gen.randrange(2 ** i) if stop <= start: continue self.assertTrue(start <= self.gen.randrange(start, stop) < stop) def test_rangelimits(self): for start, stop in [(-2,0), (-(2**60)-2,-(2**60)), (2**60,2**60+2)]: self.assertEqual(set(range(start,stop)), set([self.gen.randrange(start,stop) for i in range(100)])) def test_randrange_nonunit_step(self): rint = self.gen.randrange(0, 10, 2) self.assertIn(rint, (0, 2, 4, 6, 8)) rint = self.gen.randrange(0, 2, 2) self.assertEqual(rint, 0) def test_randrange_errors(self): raises = partial(self.assertRaises, ValueError, self.gen.randrange) # Empty range raises(3, 3) raises(-721) raises(0, 100, -12) # Non-integer start/stop raises(3.14159) raises(0, 2.71828) # Zero and non-integer step raises(0, 42, 0) raises(0, 42, 3.14159) def test_genrandbits(self): # Verify ranges for k in range(1, 1000): self.assertTrue(0 <= self.gen.getrandbits(k) < 2**k) # Verify all bits active getbits = self.gen.getrandbits for span in [1, 2, 3, 4, 31, 32, 32, 52, 53, 54, 119, 127, 128, 129]: cum = 0 for i in range(100): cum |= getbits(span) self.assertEqual(cum, 2**span-1) # Verify argument checking self.assertRaises(TypeError, self.gen.getrandbits) self.assertRaises(TypeError, self.gen.getrandbits, 1, 2) self.assertRaises(ValueError, self.gen.getrandbits, 0) self.assertRaises(ValueError, self.gen.getrandbits, -1) self.assertRaises(TypeError, self.gen.getrandbits, 10.1) def test_randbelow_logic(self, _log=log, int=int): # check bitcount transition points: 2**i and 2**(i+1)-1 # show that: k = int(1.001 + _log(n, 2)) # is equal to or one greater than the number of bits in n for i in range(1, 1000): n = 1 << i # check an exact power of two numbits = i+1 k = int(1.00001 + _log(n, 2)) self.assertEqual(k, numbits) self.assertEqual(n, 2**(k-1)) n += n - 1 # check 1 below the next power of two k = int(1.00001 + _log(n, 2)) self.assertIn(k, [numbits, numbits+1]) self.assertTrue(2**k > n > 2**(k-2)) n -= n >> 15 # check a little farther below the next power of two k = int(1.00001 + _log(n, 2)) self.assertEqual(k, numbits) # note the stronger assertion self.assertTrue(2**k > n > 2**(k-1)) # note the stronger assertion class MersenneTwister_TestBasicOps(TestBasicOps, unittest.TestCase): gen = random.Random() def test_guaranteed_stable(self): # These sequences are guaranteed to stay the same across versions of python self.gen.seed(3456147, version=1) self.assertEqual([self.gen.random().hex() for i in range(4)], ['0x1.ac362300d90d2p-1', '0x1.9d16f74365005p-1', '0x1.1ebb4352e4c4dp-1', '0x1.1a7422abf9c11p-1']) self.gen.seed("the quick brown fox", version=2) self.assertEqual([self.gen.random().hex() for i in range(4)], ['0x1.1239ddfb11b7cp-3', '0x1.b3cbb5c51b120p-4', '0x1.8c4f55116b60fp-1', '0x1.63eb525174a27p-1']) def test_bug_27706(self): # Verify that version 1 seeds are unaffected by hash randomization self.gen.seed('nofar', version=1) # hash('nofar') == 5990528763808513177 self.assertEqual([self.gen.random().hex() for i in range(4)], ['0x1.8645314505ad7p-1', '0x1.afb1f82e40a40p-5', '0x1.2a59d2285e971p-1', '0x1.56977142a7880p-6']) self.gen.seed('rachel', version=1) # hash('rachel') == -9091735575445484789 self.assertEqual([self.gen.random().hex() for i in range(4)], ['0x1.0b294cc856fcdp-1', '0x1.2ad22d79e77b8p-3', '0x1.3052b9c072678p-2', '0x1.578f332106574p-3']) self.gen.seed('', version=1) # hash('') == 0 self.assertEqual([self.gen.random().hex() for i in range(4)], ['0x1.b0580f98a7dbep-1', '0x1.84129978f9c1ap-1', '0x1.aeaa51052e978p-2', '0x1.092178fb945a6p-2']) def test_setstate_first_arg(self): self.assertRaises(ValueError, self.gen.setstate, (1, None, None)) def test_setstate_middle_arg(self): # Wrong type, s/b tuple self.assertRaises(TypeError, self.gen.setstate, (2, None, None)) # Wrong length, s/b 625 self.assertRaises(ValueError, self.gen.setstate, (2, (1,2,3), None)) # Wrong type, s/b tuple of 625 ints self.assertRaises(TypeError, self.gen.setstate, (2, ('a',)*625, None)) # Last element s/b an int also self.assertRaises(TypeError, self.gen.setstate, (2, (0,)*624+('a',), None)) # Last element s/b between 0 and 624 with self.assertRaises((ValueError, OverflowError)): self.gen.setstate((2, (1,)*624+(625,), None)) with self.assertRaises((ValueError, OverflowError)): self.gen.setstate((2, (1,)*624+(-1,), None)) # Little trick to make "tuple(x % (2**32) for x in internalstate)" # raise ValueError. I cannot think of a simple way to achieve this, so # I am opting for using a generator as the middle argument of setstate # which attempts to cast a NaN to integer. state_values = self.gen.getstate()[1] state_values = list(state_values) state_values[-1] = float('nan') state = (int(x) for x in state_values) self.assertRaises(TypeError, self.gen.setstate, (2, state, None)) def test_referenceImplementation(self): # Compare the python implementation with results from the original # code. Create 2000 53-bit precision random floats. Compare only # the last ten entries to show that the independent implementations # are tracking. Here is the main() function needed to create the # list of expected random numbers: # void main(void){ # int i; # unsigned long init[4]={61731, 24903, 614, 42143}, length=4; # init_by_array(init, length); # for (i=0; i<2000; i++) { # printf("%.15f ", genrand_res53()); # if (i%5==4) printf("\n"); # } # } expected = [0.45839803073713259, 0.86057815201978782, 0.92848331726782152, 0.35932681119782461, 0.081823493762449573, 0.14332226470169329, 0.084297823823520024, 0.53814864671831453, 0.089215024911993401, 0.78486196105372907] self.gen.seed(61731 + (24903<<32) + (614<<64) + (42143<<96)) actual = self.randomlist(2000)[-10:] for a, e in zip(actual, expected): self.assertAlmostEqual(a,e,places=14) def test_strong_reference_implementation(self): # Like test_referenceImplementation, but checks for exact bit-level # equality. This should pass on any box where C double contains # at least 53 bits of precision (the underlying algorithm suffers # no rounding errors -- all results are exact). from math import ldexp expected = [0x0eab3258d2231f, 0x1b89db315277a5, 0x1db622a5518016, 0x0b7f9af0d575bf, 0x029e4c4db82240, 0x04961892f5d673, 0x02b291598e4589, 0x11388382c15694, 0x02dad977c9e1fe, 0x191d96d4d334c6] self.gen.seed(61731 + (24903<<32) + (614<<64) + (42143<<96)) actual = self.randomlist(2000)[-10:] for a, e in zip(actual, expected): self.assertEqual(int(ldexp(a, 53)), e) def test_long_seed(self): # This is most interesting to run in debug mode, just to make sure # nothing blows up. Under the covers, a dynamically resized array # is allocated, consuming space proportional to the number of bits # in the seed. Unfortunately, that's a quadratic-time algorithm, # so don't make this horribly big. seed = (1 << (10000 * 8)) - 1 # about 10K bytes self.gen.seed(seed) def test_53_bits_per_float(self): # This should pass whenever a C double has 53 bit precision. span = 2 ** 53 cum = 0 for i in range(100): cum |= int(self.gen.random() * span) self.assertEqual(cum, span-1) def test_bigrand(self): # The randrange routine should build-up the required number of bits # in stages so that all bit positions are active. span = 2 ** 500 cum = 0 for i in range(100): r = self.gen.randrange(span) self.assertTrue(0 <= r < span) cum |= r self.assertEqual(cum, span-1) def test_bigrand_ranges(self): for i in [40,80, 160, 200, 211, 250, 375, 512, 550]: start = self.gen.randrange(2 ** (i-2)) stop = self.gen.randrange(2 ** i) if stop <= start: continue self.assertTrue(start <= self.gen.randrange(start, stop) < stop) def test_rangelimits(self): for start, stop in [(-2,0), (-(2**60)-2,-(2**60)), (2**60,2**60+2)]: self.assertEqual(set(range(start,stop)), set([self.gen.randrange(start,stop) for i in range(100)])) def test_genrandbits(self): # Verify cross-platform repeatability self.gen.seed(1234567) self.assertEqual(self.gen.getrandbits(100), 97904845777343510404718956115) # Verify ranges for k in range(1, 1000): self.assertTrue(0 <= self.gen.getrandbits(k) < 2**k) # Verify all bits active getbits = self.gen.getrandbits for span in [1, 2, 3, 4, 31, 32, 32, 52, 53, 54, 119, 127, 128, 129]: cum = 0 for i in range(100): cum |= getbits(span) self.assertEqual(cum, 2**span-1) # Verify argument checking self.assertRaises(TypeError, self.gen.getrandbits) self.assertRaises(TypeError, self.gen.getrandbits, 'a') self.assertRaises(TypeError, self.gen.getrandbits, 1, 2) self.assertRaises(ValueError, self.gen.getrandbits, 0) self.assertRaises(ValueError, self.gen.getrandbits, -1) def test_randbelow_logic(self, _log=log, int=int): # check bitcount transition points: 2**i and 2**(i+1)-1 # show that: k = int(1.001 + _log(n, 2)) # is equal to or one greater than the number of bits in n for i in range(1, 1000): n = 1 << i # check an exact power of two numbits = i+1 k = int(1.00001 + _log(n, 2)) self.assertEqual(k, numbits) self.assertEqual(n, 2**(k-1)) n += n - 1 # check 1 below the next power of two k = int(1.00001 + _log(n, 2)) self.assertIn(k, [numbits, numbits+1]) self.assertTrue(2**k > n > 2**(k-2)) n -= n >> 15 # check a little farther below the next power of two k = int(1.00001 + _log(n, 2)) self.assertEqual(k, numbits) # note the stronger assertion self.assertTrue(2**k > n > 2**(k-1)) # note the stronger assertion @unittest.mock.patch('random.Random.random') def test_randbelow_overridden_random(self, random_mock): # Random._randbelow() can only use random() when the built-in one # has been overridden but no new getrandbits() method was supplied. random_mock.side_effect = random.SystemRandom().random maxsize = 1<= maxsize) self.gen._randbelow(maxsize+1, maxsize = maxsize) self.gen._randbelow(5640, maxsize = maxsize) # This might be going too far to test a single line, but because of our # noble aim of achieving 100% test coverage we need to write a case in # which the following line in Random._randbelow() gets executed: # # rem = maxsize % n # limit = (maxsize - rem) / maxsize # r = random() # while r >= limit: # r = random() # <== *This line* <==< # # Therefore, to guarantee that the while loop is executed at least # once, we need to mock random() so that it returns a number greater # than 'limit' the first time it gets called. n = 42 epsilon = 0.01 limit = (maxsize - (maxsize % n)) / maxsize random_mock.side_effect = [limit + epsilon, limit - epsilon] self.gen._randbelow(n, maxsize = maxsize) def test_randrange_bug_1590891(self): start = 1000000000000 stop = -100000000000000000000 step = -200 x = self.gen.randrange(start, stop, step) self.assertTrue(stop < x <= start) self.assertEqual((x+stop)%step, 0) def test_choices_algorithms(self): # The various ways of specifying weights should produce the same results choices = self.gen.choices n = 104729 self.gen.seed(8675309) a = self.gen.choices(range(n), k=10000) self.gen.seed(8675309) b = self.gen.choices(range(n), [1]*n, k=10000) self.assertEqual(a, b) self.gen.seed(8675309) c = self.gen.choices(range(n), cum_weights=range(1, n+1), k=10000) self.assertEqual(a, c) # Amerian Roulette population = ['Red', 'Black', 'Green'] weights = [18, 18, 2] cum_weights = [18, 36, 38] expanded_population = ['Red'] * 18 + ['Black'] * 18 + ['Green'] * 2 self.gen.seed(9035768) a = self.gen.choices(expanded_population, k=10000) self.gen.seed(9035768) b = self.gen.choices(population, weights, k=10000) self.assertEqual(a, b) self.gen.seed(9035768) c = self.gen.choices(population, cum_weights=cum_weights, k=10000) self.assertEqual(a, c) def gamma(z, sqrt2pi=(2.0*pi)**0.5): # Reflection to right half of complex plane if z < 0.5: return pi / sin(pi*z) / gamma(1.0-z) # Lanczos approximation with g=7 az = z + (7.0 - 0.5) return az ** (z-0.5) / exp(az) * sqrt2pi * fsum([ 0.9999999999995183, 676.5203681218835 / z, -1259.139216722289 / (z+1.0), 771.3234287757674 / (z+2.0), -176.6150291498386 / (z+3.0), 12.50734324009056 / (z+4.0), -0.1385710331296526 / (z+5.0), 0.9934937113930748e-05 / (z+6.0), 0.1659470187408462e-06 / (z+7.0), ]) class TestDistributions(unittest.TestCase): def test_zeroinputs(self): # Verify that distributions can handle a series of zero inputs' g = random.Random() x = [g.random() for i in range(50)] + [0.0]*5 g.random = x[:].pop; g.uniform(1,10) g.random = x[:].pop; g.paretovariate(1.0) g.random = x[:].pop; g.expovariate(1.0) g.random = x[:].pop; g.weibullvariate(1.0, 1.0) g.random = x[:].pop; g.vonmisesvariate(1.0, 1.0) g.random = x[:].pop; g.normalvariate(0.0, 1.0) g.random = x[:].pop; g.gauss(0.0, 1.0) g.random = x[:].pop; g.lognormvariate(0.0, 1.0) g.random = x[:].pop; g.vonmisesvariate(0.0, 1.0) g.random = x[:].pop; g.gammavariate(0.01, 1.0) g.random = x[:].pop; g.gammavariate(1.0, 1.0) g.random = x[:].pop; g.gammavariate(200.0, 1.0) g.random = x[:].pop; g.betavariate(3.0, 3.0) g.random = x[:].pop; g.triangular(0.0, 1.0, 1.0/3.0) def test_avg_std(self): # Use integration to test distribution average and standard deviation. # Only works for distributions which do not consume variates in pairs g = random.Random() N = 5000 x = [i/float(N) for i in range(1,N)] for variate, args, mu, sigmasqrd in [ (g.uniform, (1.0,10.0), (10.0+1.0)/2, (10.0-1.0)**2/12), (g.triangular, (0.0, 1.0, 1.0/3.0), 4.0/9.0, 7.0/9.0/18.0), (g.expovariate, (1.5,), 1/1.5, 1/1.5**2), (g.vonmisesvariate, (1.23, 0), pi, pi**2/3), (g.paretovariate, (5.0,), 5.0/(5.0-1), 5.0/((5.0-1)**2*(5.0-2))), (g.weibullvariate, (1.0, 3.0), gamma(1+1/3.0), gamma(1+2/3.0)-gamma(1+1/3.0)**2) ]: g.random = x[:].pop y = [] for i in range(len(x)): try: y.append(variate(*args)) except IndexError: pass s1 = s2 = 0 for e in y: s1 += e s2 += (e - mu) ** 2 N = len(y) self.assertAlmostEqual(s1/N, mu, places=2, msg='%s%r' % (variate.__name__, args)) self.assertAlmostEqual(s2/(N-1), sigmasqrd, places=2, msg='%s%r' % (variate.__name__, args)) def test_constant(self): g = random.Random() N = 100 for variate, args, expected in [ (g.uniform, (10.0, 10.0), 10.0), (g.triangular, (10.0, 10.0), 10.0), (g.triangular, (10.0, 10.0, 10.0), 10.0), (g.expovariate, (float('inf'),), 0.0), (g.vonmisesvariate, (3.0, float('inf')), 3.0), (g.gauss, (10.0, 0.0), 10.0), (g.lognormvariate, (0.0, 0.0), 1.0), (g.lognormvariate, (-float('inf'), 0.0), 0.0), (g.normalvariate, (10.0, 0.0), 10.0), (g.paretovariate, (float('inf'),), 1.0), (g.weibullvariate, (10.0, float('inf')), 10.0), (g.weibullvariate, (0.0, 10.0), 0.0), ]: for i in range(N): self.assertEqual(variate(*args), expected) def test_von_mises_range(self): # Issue 17149: von mises variates were not consistently in the # range [0, 2*PI]. g = random.Random() N = 100 for mu in 0.0, 0.1, 3.1, 6.2: for kappa in 0.0, 2.3, 500.0: for _ in range(N): sample = g.vonmisesvariate(mu, kappa) self.assertTrue( 0 <= sample <= random.TWOPI, msg=("vonmisesvariate({}, {}) produced a result {} out" " of range [0, 2*pi]").format(mu, kappa, sample)) def test_von_mises_large_kappa(self): # Issue #17141: vonmisesvariate() was hang for large kappas random.vonmisesvariate(0, 1e15) random.vonmisesvariate(0, 1e100) def test_gammavariate_errors(self): # Both alpha and beta must be > 0.0 self.assertRaises(ValueError, random.gammavariate, -1, 3) self.assertRaises(ValueError, random.gammavariate, 0, 2) self.assertRaises(ValueError, random.gammavariate, 2, 0) self.assertRaises(ValueError, random.gammavariate, 1, -3) @unittest.mock.patch('random.Random.random') def test_gammavariate_full_code_coverage(self, random_mock): # There are three different possibilities in the current implementation # of random.gammavariate(), depending on the value of 'alpha'. What we # are going to do here is to fix the values returned by random() to # generate test cases that provide 100% line coverage of the method. # #1: alpha > 1.0: we want the first random number to be outside the # [1e-7, .9999999] range, so that the continue statement executes # once. The values of u1 and u2 will be 0.5 and 0.3, respectively. random_mock.side_effect = [1e-8, 0.5, 0.3] returned_value = random.gammavariate(1.1, 2.3) self.assertAlmostEqual(returned_value, 2.53) # #2: alpha == 1: first random number less than 1e-7 to that the body # of the while loop executes once. Then random.random() returns 0.45, # which causes while to stop looping and the algorithm to terminate. random_mock.side_effect = [1e-8, 0.45] returned_value = random.gammavariate(1.0, 3.14) self.assertAlmostEqual(returned_value, 2.507314166123803) # #3: 0 < alpha < 1. This is the most complex region of code to cover, # as there are multiple if-else statements. Let's take a look at the # source code, and determine the values that we need accordingly: # # while 1: # u = random() # b = (_e + alpha)/_e # p = b*u # if p <= 1.0: # <=== (A) # x = p ** (1.0/alpha) # else: # <=== (B) # x = -_log((b-p)/alpha) # u1 = random() # if p > 1.0: # <=== (C) # if u1 <= x ** (alpha - 1.0): # <=== (D) # break # elif u1 <= _exp(-x): # <=== (E) # break # return x * beta # # First, we want (A) to be True. For that we need that: # b*random() <= 1.0 # r1 = random() <= 1.0 / b # # We now get to the second if-else branch, and here, since p <= 1.0, # (C) is False and we take the elif branch, (E). For it to be True, # so that the break is executed, we need that: # r2 = random() <= _exp(-x) # r2 <= _exp(-(p ** (1.0/alpha))) # r2 <= _exp(-((b*r1) ** (1.0/alpha))) _e = random._e _exp = random._exp _log = random._log alpha = 0.35 beta = 1.45 b = (_e + alpha)/_e epsilon = 0.01 r1 = 0.8859296441566 # 1.0 / b r2 = 0.3678794411714 # _exp(-((b*r1) ** (1.0/alpha))) # These four "random" values result in the following trace: # (A) True, (E) False --> [next iteration of while] # (A) True, (E) True --> [while loop breaks] random_mock.side_effect = [r1, r2 + epsilon, r1, r2] returned_value = random.gammavariate(alpha, beta) self.assertAlmostEqual(returned_value, 1.4499999999997544) # Let's now make (A) be False. If this is the case, when we get to the # second if-else 'p' is greater than 1, so (C) evaluates to True. We # now encounter a second if statement, (D), which in order to execute # must satisfy the following condition: # r2 <= x ** (alpha - 1.0) # r2 <= (-_log((b-p)/alpha)) ** (alpha - 1.0) # r2 <= (-_log((b-(b*r1))/alpha)) ** (alpha - 1.0) r1 = 0.8959296441566 # (1.0 / b) + epsilon -- so that (A) is False r2 = 0.9445400408898141 # And these four values result in the following trace: # (B) and (C) True, (D) False --> [next iteration of while] # (B) and (C) True, (D) True [while loop breaks] random_mock.side_effect = [r1, r2 + epsilon, r1, r2] returned_value = random.gammavariate(alpha, beta) self.assertAlmostEqual(returned_value, 1.5830349561760781) @unittest.mock.patch('random.Random.gammavariate') def test_betavariate_return_zero(self, gammavariate_mock): # betavariate() returns zero when the Gamma distribution # that it uses internally returns this same value. gammavariate_mock.return_value = 0.0 self.assertEqual(0.0, random.betavariate(2.71828, 3.14159)) class TestModule(unittest.TestCase): def testMagicConstants(self): self.assertAlmostEqual(random.NV_MAGICCONST, 1.71552776992141) self.assertAlmostEqual(random.TWOPI, 6.28318530718) self.assertAlmostEqual(random.LOG4, 1.38629436111989) self.assertAlmostEqual(random.SG_MAGICCONST, 2.50407739677627) def test__all__(self): # tests validity but not completeness of the __all__ list self.assertTrue(set(random.__all__) <= set(dir(random))) def test_random_subclass_with_kwargs(self): # SF bug #1486663 -- this used to erroneously raise a TypeError class Subclass(random.Random): def __init__(self, newarg=None): random.Random.__init__(self) Subclass(newarg=1) if __name__ == "__main__": unittest.main()