Files
wls2002 ee1a2a8271 This commit is related to issue: https://github.com/EMI-Group/tensorneat/issues/11
1. Add origin_node and origin_conn.
2. Change the behavior of crossover and mutation. Now, TensorNEAT will use all fix_attrs(include historical marker if it has one) as identifier for gene in crossover and distance calculation.
3. Other slightly change.
4. Add two related examples: xor_origin and hopper_origin
5. Add related test file.
2024-12-18 16:20:34 +08:00

48 lines
1.2 KiB
Python

from tensorneat.pipeline import Pipeline
from tensorneat import algorithm, genome, problem
from tensorneat.common import ACT
algorithm = algorithm.NEAT(
pop_size=10000,
species_size=20,
survival_threshold=0.01,
genome=genome.DefaultGenome(
num_inputs=3,
num_outputs=1,
max_nodes=7,
output_transform=ACT.sigmoid,
),
)
problem = problem.XOR3d()
pipeline = Pipeline(
algorithm,
problem,
generation_limit=200,
fitness_target=-1e-6,
seed=42,
)
state = pipeline.setup()
# run until terminate
state, best = pipeline.auto_run(state)
# show result
pipeline.show(state, best)
# visualize the best individual
network = algorithm.genome.network_dict(state, *best)
print(algorithm.genome.repr(state, *best))
# algorithm.genome.visualize(network, save_path="./imgs/xor_network.svg")
# transform the best individual to latex formula
from tensorneat.common.sympy_tools import to_latex_code, to_python_code
sympy_res = algorithm.genome.sympy_func(
state, network, sympy_output_transform=ACT.obtain_sympy(ACT.sigmoid)
)
latex_code = to_latex_code(*sympy_res)
print(latex_code)
# transform the best individual to python code
python_code = to_python_code(*sympy_res)
print(python_code)