from tensorneat.pipeline import Pipeline from tensorneat.algorithm.neat import NEAT from tensorneat.genome import RecurrentGenome from tensorneat.problem.func_fit import XOR3d from tensorneat.common import Act, Agg if __name__ == "__main__": pipeline = Pipeline( algorithm=NEAT( pop_size=10000, species_size=20, survival_threshold=0.01, genome=RecurrentGenome( num_inputs=3, num_outputs=1, init_hidden_layers=(), output_transform=Act.standard_sigmoid, activate_time=10, ), ), problem=XOR3d(), generation_limit=500, fitness_target=-1e-6, # float32 precision seed=42, ) # initialize state state = pipeline.setup() # run until terminate state, best = pipeline.auto_run(state) # show result pipeline.show(state, best)