add debug mode for create_xx_functions for detail time cost analysis
This commit is contained in:
@@ -8,7 +8,7 @@ from jax import numpy as jnp
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from .utils import flatten_connections, unflatten_connections
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def create_crossover_function(N, config, batch: bool):
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def create_crossover_function(N, config, batch: bool, debug: bool = False):
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if batch:
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pop_size = config.neat.population.pop_size
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randkey_lower = jnp.zeros((pop_size, 2), dtype=jnp.uint32)
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@@ -16,16 +16,27 @@ def create_crossover_function(N, config, batch: bool):
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connections1_lower = jnp.zeros((pop_size, 2, N, N))
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nodes2_lower = jnp.zeros((pop_size, N, 5))
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connections2_lower = jnp.zeros((pop_size, 2, N, N))
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return jit(vmap(crossover)).lower(randkey_lower, nodes1_lower, connections1_lower,
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res_func = jit(vmap(crossover)).lower(randkey_lower, nodes1_lower, connections1_lower,
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nodes2_lower, connections2_lower).compile()
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if debug:
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return lambda *args: res_func(*args)
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else:
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return res_func
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else:
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randkey_lower = jnp.zeros((2,), dtype=jnp.uint32)
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nodes1_lower = jnp.zeros((N, 5))
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connections1_lower = jnp.zeros((2, N, N))
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nodes2_lower = jnp.zeros((N, 5))
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connections2_lower = jnp.zeros((2, N, N))
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return jit(crossover).lower(randkey_lower, nodes1_lower, connections1_lower,
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res_func = jit(crossover).lower(randkey_lower, nodes1_lower, connections1_lower,
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nodes2_lower, connections2_lower).compile()
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if debug:
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return lambda *args: res_func(*args)
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else:
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return res_func
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# @jit
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@@ -6,11 +6,12 @@ from numpy.typing import NDArray
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from .utils import flatten_connections, EMPTY_NODE, EMPTY_CON
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def create_distance_function(N, config, type: str):
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def create_distance_function(N, config, type: str, debug: bool = False):
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"""
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:param N:
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:param config:
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:param type: {'o2o', 'o2m'}, for one-to-one or one-to-many distance calculation
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:param debug:
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:return:
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"""
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disjoint_coe = config.neat.genome.compatibility_disjoint_coefficient
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@@ -20,8 +21,20 @@ def create_distance_function(N, config, type: str):
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return distance(nodes1, connections1, nodes2, connections2, disjoint_coe, compatibility_coe)
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if type == 'o2o':
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return lambda nodes1, connections1, nodes2, connections2: \
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distance_numpy(nodes1, connections1, nodes2, connections2, disjoint_coe, compatibility_coe)
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nodes1_lower = jnp.zeros((N, 5))
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connections1_lower = jnp.zeros((2, N, N))
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nodes2_lower = jnp.zeros((N, 5))
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connections2_lower = jnp.zeros((2, N, N))
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res_func = jit(distance_with_args).lower(nodes1_lower, connections1_lower,
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nodes2_lower, connections2_lower).compile()
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if debug:
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return lambda *args: res_func(*args) # for debug
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else:
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return res_func
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# return lambda nodes1, connections1, nodes2, connections2: \
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# distance_numpy(nodes1, connections1, nodes2, connections2, disjoint_coe, compatibility_coe)
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elif type == 'o2m':
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vmap_func = vmap(distance_with_args, in_axes=(None, None, 0, 0))
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@@ -30,7 +43,12 @@ def create_distance_function(N, config, type: str):
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connections1_lower = jnp.zeros((2, N, N))
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nodes2_lower = jnp.zeros((pop_size, N, 5))
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connections2_lower = jnp.zeros((pop_size, 2, N, N))
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return jit(vmap_func).lower(nodes1_lower, connections1_lower, nodes2_lower, connections2_lower).compile()
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res_func = jit(vmap_func).lower(nodes1_lower, connections1_lower, nodes2_lower, connections2_lower).compile()
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if debug:
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return lambda *args: res_func(*args) # for debug
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else:
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return res_func
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else:
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raise ValueError(f'unknown distance type: {type}, should be one of ["o2o", "o2m"]')
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@@ -48,6 +66,7 @@ def distance_numpy(nodes1: NDArray, connection1: NDArray, nodes2: NDArray,
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:param compatibility_coe:
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:return:
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"""
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def analysis(nodes, connections):
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nodes_dict = {}
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idx2key = {}
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@@ -86,6 +86,7 @@ def forward_single(inputs: Array, N: int, input_idx: Array, output_idx: Array,
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return vals[output_idx]
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@partial(jit, static_argnames=['N'])
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@partial(vmap, in_axes=(0, None, None, None, None, None, None))
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def forward_batch(batch_inputs: Array, N: int, input_idx: Array, output_idx: Array,
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cal_seqs: Array, nodes: Array, connections: Array) -> Array:
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@@ -106,6 +107,7 @@ def forward_batch(batch_inputs: Array, N: int, input_idx: Array, output_idx: Arr
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return forward_single(batch_inputs, N, input_idx, output_idx, cal_seqs, nodes, connections)
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@partial(jit, static_argnames=['N'])
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@partial(vmap, in_axes=(None, None, None, None, 0, 0, 0))
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def pop_forward_single(inputs: Array, N: int, input_idx: Array, output_idx: Array,
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pop_cal_seqs: Array, pop_nodes: Array, pop_connections: Array) -> Array:
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@@ -126,6 +128,7 @@ def pop_forward_single(inputs: Array, N: int, input_idx: Array, output_idx: Arra
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return forward_single(inputs, N, input_idx, output_idx, pop_cal_seqs, pop_nodes, pop_connections)
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@partial(jit, static_argnames=['N'])
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@partial(vmap, in_axes=(None, None, None, None, 0, 0, 0))
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def pop_forward_batch(batch_inputs: Array, N: int, input_idx: Array, output_idx: Array,
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pop_cal_seqs: Array, pop_nodes: Array, pop_connections: Array) -> Array:
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@@ -74,6 +74,7 @@ def topological_sort(nodes: Array, connections: Array) -> Array:
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return res
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@jit
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@vmap
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def batch_topological_sort(pop_nodes: Array, pop_connections: Array) -> Array:
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"""
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@@ -13,12 +13,13 @@ from .activations import act_name2key
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from .aggregations import agg_name2key
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def create_mutate_function(N, config, batch: bool):
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def create_mutate_function(N, config, batch: bool, debug: bool = False):
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"""
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create mutate function for different situations
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:param N:
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:param config:
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:param batch: mutate for population or not
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:param debug:
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:return:
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"""
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num_inputs = config.basic.num_inputs
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@@ -81,24 +82,31 @@ def create_mutate_function(N, config, batch: bool):
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single_structure_mutate)
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if not batch:
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rand_key_lower = jnp.zeros((2, ), dtype=jnp.uint32)
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rand_key_lower = jnp.zeros((2,), dtype=jnp.uint32)
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nodes_lower = jnp.zeros((N, 5))
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connections_lower = jnp.zeros((2, N, N))
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new_node_key_lower = jnp.zeros((), dtype=jnp.int32)
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return jit(mutate_with_args).lower(rand_key_lower, nodes_lower, connections_lower, new_node_key_lower).compile()
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res_func = jit(mutate_with_args).lower(rand_key_lower, nodes_lower,
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connections_lower, new_node_key_lower).compile()
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if debug:
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return lambda *args: res_func(*args)
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else:
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return res_func
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else:
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pop_size = config.neat.population.pop_size
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rand_key_lower = jnp.zeros((pop_size, 2), dtype=jnp.uint32)
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nodes_lower = jnp.zeros((pop_size, N, 5))
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connections_lower = jnp.zeros((pop_size, 2, N, N))
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new_node_key_lower = jnp.zeros((pop_size, ), dtype=jnp.int32)
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new_node_key_lower = jnp.zeros((pop_size,), dtype=jnp.int32)
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batched_mutate_func = jit(vmap(mutate_with_args)).lower(rand_key_lower, nodes_lower,
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connections_lower, new_node_key_lower).compile()
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if debug:
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return lambda *args: batched_mutate_func(*args)
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else:
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return batched_mutate_func
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# @partial(jit, static_argnames=["single_structure_mutate"])
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def mutate(rand_key: Array,
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nodes: Array,
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connections: Array,
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@@ -239,7 +247,6 @@ def mutate(rand_key: Array,
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return nodes, connections
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# @jit
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def mutate_values(rand_key: Array,
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nodes: Array,
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connections: Array,
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@@ -320,7 +327,6 @@ def mutate_values(rand_key: Array,
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return nodes, connections
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# @jit
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def mutate_float_values(rand_key: Array, old_vals: Array, mean: float, std: float,
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mutate_strength: float, mutate_rate: float, replace_rate: float) -> Array:
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"""
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@@ -353,7 +359,6 @@ def mutate_float_values(rand_key: Array, old_vals: Array, mean: float, std: floa
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return new_vals
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# @jit
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def mutate_int_values(rand_key: Array, old_vals: Array, val_list: Array, replace_rate: float) -> Array:
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"""
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Mutate integer values (act, agg) of a given array.
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@@ -376,7 +381,6 @@ def mutate_int_values(rand_key: Array, old_vals: Array, val_list: Array, replace
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return new_vals
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# @jit
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def mutate_add_node(rand_key: Array, new_node_key: int, nodes: Array, connections: Array,
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default_bias: float = 0, default_response: float = 1,
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default_act: int = 0, default_agg: int = 0) -> Tuple[Array, Array]:
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@@ -423,7 +427,6 @@ def mutate_add_node(rand_key: Array, new_node_key: int, nodes: Array, connection
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return nodes, connections
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# @jit
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def mutate_delete_node(rand_key: Array, nodes: Array, connections: Array,
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input_keys: Array, output_keys: Array) -> Tuple[Array, Array]:
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"""
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@@ -457,7 +460,6 @@ def mutate_delete_node(rand_key: Array, nodes: Array, connections: Array,
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return nodes, connections
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# @jit
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def mutate_add_connection(rand_key: Array, nodes: Array, connections: Array,
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input_keys: Array, output_keys: Array) -> Tuple[Array, Array]:
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"""
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@@ -496,7 +498,6 @@ def mutate_add_connection(rand_key: Array, nodes: Array, connections: Array,
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return nodes, connections
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# @jit
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def mutate_delete_connection(rand_key: Array, nodes: Array, connections: Array):
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"""
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Randomly delete a connection.
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@@ -519,7 +520,6 @@ def mutate_delete_connection(rand_key: Array, nodes: Array, connections: Array):
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return nodes, connections
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# @partial(jit, static_argnames=('allow_input_keys', 'allow_output_keys'))
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def choice_node_key(rand_key: Array, nodes: Array,
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input_keys: Array, output_keys: Array,
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allow_input_keys: bool = False, allow_output_keys: bool = False) -> Tuple[Array, Array]:
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@@ -548,7 +548,6 @@ def choice_node_key(rand_key: Array, nodes: Array,
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return key, idx
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# @jit
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def choice_connection_key(rand_key: Array, nodes: Array, connection: Array) -> Tuple[Array, Array, Array, Array]:
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"""
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Randomly choose a connection key from the given connections.
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@@ -576,6 +575,5 @@ def choice_connection_key(rand_key: Array, nodes: Array, connection: Array) -> T
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return from_key, to_key, from_idx, to_idx
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# @jit
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def rand(rand_key):
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return jax.random.uniform(rand_key, ())
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@@ -29,7 +29,7 @@ class Pipeline:
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self.initialize_func = create_initialize_function(config)
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self.pop_nodes, self.pop_connections, self.input_idx, self.output_idx = self.initialize_func()
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self.compile_functions()
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self.compile_functions(debug=True)
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self.generation = 0
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self.species_controller.speciate(self.pop_nodes, self.pop_connections,
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@@ -141,13 +141,13 @@ class Pipeline:
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s.representative = expand_single(*s.representative, self.N)
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# update functions
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self.compile_functions()
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self.compile_functions(debug=True)
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def compile_functions(self):
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self.mutate_func = create_mutate_function(self.N, self.config, batch=True)
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self.crossover_func = create_crossover_function(self.N, self.config, batch=True)
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self.o2o_distance = create_distance_function(self.N, self.config, type='o2o')
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self.o2m_distance = create_distance_function(self.N, self.config, type='o2m')
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def compile_functions(self, debug=False):
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self.mutate_func = create_mutate_function(self.N, self.config, batch=True, debug=debug)
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self.crossover_func = create_crossover_function(self.N, self.config, batch=True, debug=debug)
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self.o2o_distance = create_distance_function(self.N, self.config, type='o2o', debug=debug)
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self.o2m_distance = create_distance_function(self.N, self.config, type='o2m', debug=debug)
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def default_analysis(self, fitnesses):
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max_f, min_f, mean_f, std_f = max(fitnesses), min(fitnesses), np.mean(fitnesses), np.std(fitnesses)
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@@ -105,7 +105,7 @@ class SpeciesController:
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# the representatives of new species
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sid, rid = list(zip(*[(k, v) for k, v in new_representatives.items()]))
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distances = [
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o2o_distance(pop_nodes[i], pop_connections[i], pop_nodes[r], pop_connections[r])
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jax.device_get(o2o_distance(pop_nodes[i], pop_connections[i], pop_nodes[r], pop_connections[r]))
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for r in rid
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]
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distances = np.array(distances)
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@@ -2,7 +2,7 @@
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"basic": {
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"num_inputs": 2,
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"num_outputs": 1,
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"init_maximum_nodes": 10,
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"init_maximum_nodes": 20,
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"expands_coe": 2
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},
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"neat": {
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@@ -30,12 +30,12 @@
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},
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"activation": {
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"default": "sigmoid",
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"options": ["sigmoid", "gauss", "relu"],
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"options": ["sigmoid"],
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"mutate_rate": 0.1
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},
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"aggregation": {
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"default": "sum",
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"options": ["sum", "max", "min", "mean"],
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"options": ["sum"],
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"mutate_rate": 0.1
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},
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"weight": {
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@@ -59,7 +59,7 @@
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"node_delete_prob": 0.2
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},
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"species": {
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"compatibility_threshold": 3,
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"compatibility_threshold": 2.5,
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"species_fitness_func": "max",
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"max_stagnation": 20,
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"species_elitism": 2,
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