def test_binary_val_default_params(): pop_shape = (6, 4) population = B.randint(0, 2, pop_shape) population = RandomMutations1D(max_gene_value=1, debug=1)(population) print(population) assert B.max(population) == 1 assert not B.min(population)
def test_uniform_distribution(): """check that every gene of the tensor are going to be flipped equally Note: # ! We need enough iterations and chromosomes to reduce collision # ! and ensure numerical stability """ NUM_ITERATIONS = 1000 GENOME_SHAPE = (20, 4, 4) population = B.randint(0, 1024, GENOME_SHAPE) population_fraction = 1 crossover_probability = (0.5, 0.5) # each gene proba of being mutated 0.5*0.5 > 0.25 # each chromosome proba of being mutated 1 # => gene average hit rate: 1000 / (1/4) ~250 MIN_DIFF_BOUND = 200 MAX_DIFF_BOUND = 300 OP = RandomMutations2D(population_fraction, crossover_probability) # diff matrix previous_population = copy(population) population = OP(population) diff = B.clip(abs(population - previous_population), 0, 1) for _ in range(NUM_ITERATIONS - 1): previous_population = copy(population) population = OP(population) curr_diff = B.clip(abs(population - previous_population), 0, 1) # acumulating diff matrix diff += curr_diff print(curr_diff) for c in diff: print(c) print('mean', B.mean(c), 'min', B.min(c), 'max', B.max(c)) assert B.min(c) > MIN_DIFF_BOUND assert B.max(c) < MAX_DIFF_BOUND assert MIN_DIFF_BOUND < B.mean(c) < MAX_DIFF_BOUND
def test_dualcrossover2d_distribution(): """check that every gene of the tensor are going to be flipped equally Note: # ! We need enough iterations and chromosomes to reduce collision # ! and ensure numerical stability """ NUM_ITERATIONS = 1000 GENOME_SHAPE = (100, 4, 4) population = B.randint(0, 1024, GENOME_SHAPE) population_fraction = 1 crossover_probability = (0.5, 0.5) OP = DualCrossover2D(population_fraction, crossover_probability) # diff matrix previous_population = copy(population) population = OP(population) diff = B.clip(abs(population - previous_population), 0, 1) print(diff) for _ in range(NUM_ITERATIONS - 1): previous_population = copy(population) population = OP(population) curr_diff = B.clip(abs(population - previous_population), 0, 1) # acumulating diff matrix diff += curr_diff # print(curr_diff) for c in diff: print(c) print('mean', B.mean(c), 'min', B.min(c), 'max', B.max(c)) assert B.min(c) > 50 assert B.max(c) < NUM_ITERATIONS / 2 assert 200 < B.mean(c) < NUM_ITERATIONS / 2
def test_randintpop(): shape = (100, 100, 10) pop = genRandIntPopulation(shape, 42, 1) assert pop.shape == shape assert B.max(pop) == 42 assert B.min(pop) == 1