change project structure and using .ini as config file
This commit is contained in:
@@ -1,457 +0,0 @@
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from typing import Tuple
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from functools import partial
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import jax
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import numpy as np
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from jax import numpy as jnp
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from jax import jit, vmap, Array
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from .utils import fetch_random, fetch_first, I_INT, unflatten_connections
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from .genome import add_node, delete_node_by_idx, delete_connection_by_idx, add_connection
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from .graph import check_cycles
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# TODO: Temporally delete single_structural_mutation, for i need to run it as soon as possible.
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@jit
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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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new_node_key: int,
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input_idx: Array,
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output_idx: Array,
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bias_mean: float = 0,
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bias_std: float = 1,
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bias_mutate_strength: float = 0.5,
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bias_mutate_rate: float = 0.7,
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bias_replace_rate: float = 0.1,
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response_mean: float = 1.,
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response_std: float = 0.,
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response_mutate_strength: float = 0.,
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response_mutate_rate: float = 0.,
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response_replace_rate: float = 0.,
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weight_mean: float = 0.,
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weight_std: float = 1.,
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weight_mutate_strength: float = 0.5,
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weight_mutate_rate: float = 0.7,
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weight_replace_rate: float = 0.1,
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act_default: int = 0,
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act_list: Array = None,
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act_replace_rate: float = 0.1,
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agg_default: int = 0,
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agg_list: Array = None,
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agg_replace_rate: float = 0.1,
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enabled_reverse_rate: float = 0.1,
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add_node_rate: float = 0.2,
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delete_node_rate: float = 0.2,
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add_connection_rate: float = 0.4,
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delete_connection_rate: float = 0.4,
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):
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"""
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:param output_idx:
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:param input_idx:
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:param agg_default:
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:param act_default:
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:param rand_key:
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:param nodes: (N, 5)
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:param connections: (2, N, N)
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:param new_node_key:
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:param bias_mean:
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:param bias_std:
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:param bias_mutate_strength:
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:param bias_mutate_rate:
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:param bias_replace_rate:
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:param response_mean:
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:param response_std:
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:param response_mutate_strength:
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:param response_mutate_rate:
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:param response_replace_rate:
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:param weight_mean:
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:param weight_std:
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:param weight_mutate_strength:
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:param weight_mutate_rate:
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:param weight_replace_rate:
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:param act_list:
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:param act_replace_rate:
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:param agg_list:
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:param agg_replace_rate:
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:param enabled_reverse_rate:
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:param add_node_rate:
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:param delete_node_rate:
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:param add_connection_rate:
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:param delete_connection_rate:
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:return:
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"""
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def m_add_node(rk, n, c):
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return mutate_add_node(rk, n, c, new_node_key, bias_mean, response_mean, act_default, agg_default)
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def m_add_connection(rk, n, c):
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return mutate_add_connection(rk, n, c, input_idx, output_idx)
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def m_delete_node(rk, n, c):
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return mutate_delete_node(rk, n, c, input_idx, output_idx)
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def m_delete_connection(rk, n, c):
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return mutate_delete_connection(rk, n, c)
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r1, r2, r3, r4, rand_key = jax.random.split(rand_key, 5)
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# mutate add node
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aux_nodes, aux_connections = m_add_node(r1, nodes, connections)
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nodes = jnp.where(rand(r1) < add_node_rate, aux_nodes, nodes)
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connections = jnp.where(rand(r1) < add_node_rate, aux_connections, connections)
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# mutate add connection
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aux_nodes, aux_connections = m_add_connection(r3, nodes, connections)
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nodes = jnp.where(rand(r3) < add_connection_rate, aux_nodes, nodes)
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connections = jnp.where(rand(r3) < add_connection_rate, aux_connections, connections)
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# mutate delete node
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aux_nodes, aux_connections = m_delete_node(r2, nodes, connections)
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nodes = jnp.where(rand(r2) < delete_node_rate, aux_nodes, nodes)
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connections = jnp.where(rand(r2) < delete_node_rate, aux_connections, connections)
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# mutate delete connection
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aux_nodes, aux_connections = m_delete_connection(r4, nodes, connections)
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nodes = jnp.where(rand(r4) < delete_connection_rate, aux_nodes, nodes)
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connections = jnp.where(rand(r4) < delete_connection_rate, aux_connections, connections)
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nodes, connections = mutate_values(rand_key, nodes, connections, bias_mean, bias_std, bias_mutate_strength,
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bias_mutate_rate, bias_replace_rate, response_mean, response_std,
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response_mutate_strength, response_mutate_rate, response_replace_rate,
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weight_mean, weight_std, weight_mutate_strength,
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weight_mutate_rate, weight_replace_rate, act_list, act_replace_rate, agg_list,
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agg_replace_rate, enabled_reverse_rate)
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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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cons: Array,
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bias_mean: float = 0,
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bias_std: float = 1,
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bias_mutate_strength: float = 0.5,
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bias_mutate_rate: float = 0.7,
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bias_replace_rate: float = 0.1,
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response_mean: float = 1.,
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response_std: float = 0.,
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response_mutate_strength: float = 0.,
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response_mutate_rate: float = 0.,
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response_replace_rate: float = 0.,
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weight_mean: float = 0.,
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weight_std: float = 1.,
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weight_mutate_strength: float = 0.5,
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weight_mutate_rate: float = 0.7,
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weight_replace_rate: float = 0.1,
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act_list: Array = None,
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act_replace_rate: float = 0.1,
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agg_list: Array = None,
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agg_replace_rate: float = 0.1,
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enabled_reverse_rate: float = 0.1) -> Tuple[Array, Array]:
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"""
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Mutate values of nodes and connections.
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Args:
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rand_key: A random key for generating random values.
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nodes: A 2D array representing nodes.
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cons: A 3D array representing connections.
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bias_mean: Mean of the bias values.
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bias_std: Standard deviation of the bias values.
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bias_mutate_strength: Strength of the bias mutation.
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bias_mutate_rate: Rate of the bias mutation.
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bias_replace_rate: Rate of the bias replacement.
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response_mean: Mean of the response values.
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response_std: Standard deviation of the response values.
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response_mutate_strength: Strength of the response mutation.
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response_mutate_rate: Rate of the response mutation.
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response_replace_rate: Rate of the response replacement.
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weight_mean: Mean of the weight values.
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weight_std: Standard deviation of the weight values.
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weight_mutate_strength: Strength of the weight mutation.
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weight_mutate_rate: Rate of the weight mutation.
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weight_replace_rate: Rate of the weight replacement.
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act_list: List of the activation function values.
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act_replace_rate: Rate of the activation function replacement.
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agg_list: List of the aggregation function values.
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agg_replace_rate: Rate of the aggregation function replacement.
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enabled_reverse_rate: Rate of reversing enabled state of connections.
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Returns:
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A tuple containing mutated nodes and connections.
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"""
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k1, k2, k3, k4, k5, rand_key = jax.random.split(rand_key, num=6)
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bias_new = mutate_float_values(k1, nodes[:, 1], bias_mean, bias_std,
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bias_mutate_strength, bias_mutate_rate, bias_replace_rate)
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response_new = mutate_float_values(k2, nodes[:, 2], response_mean, response_std,
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response_mutate_strength, response_mutate_rate, response_replace_rate)
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weight_new = mutate_float_values(k3, cons[:, 2], weight_mean, weight_std,
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weight_mutate_strength, weight_mutate_rate, weight_replace_rate)
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act_new = mutate_int_values(k4, nodes[:, 3], act_list, act_replace_rate)
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agg_new = mutate_int_values(k5, nodes[:, 4], agg_list, agg_replace_rate)
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# mutate enabled
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r = jax.random.uniform(rand_key, cons[:, 3].shape)
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enabled_new = jnp.where(r < enabled_reverse_rate, 1 - cons[:, 3], cons[:, 3])
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enabled_new = jnp.where(~jnp.isnan(cons[:, 3]), enabled_new, jnp.nan)
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nodes = nodes.at[:, 1].set(bias_new)
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nodes = nodes.at[:, 2].set(response_new)
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nodes = nodes.at[:, 3].set(act_new)
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nodes = nodes.at[:, 4].set(agg_new)
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cons = cons.at[:, 2].set(weight_new)
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cons = cons.at[:, 3].set(enabled_new)
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return nodes, cons
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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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Mutate float values of a given array.
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Args:
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rand_key: A random key for generating random values.
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old_vals: A 1D array of float values to be mutated.
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mean: Mean of the values.
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std: Standard deviation of the values.
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mutate_strength: Strength of the mutation.
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mutate_rate: Rate of the mutation.
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replace_rate: Rate of the replacement.
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Returns:
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A mutated 1D array of float values.
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"""
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k1, k2, k3, rand_key = jax.random.split(rand_key, num=4)
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noise = jax.random.normal(k1, old_vals.shape) * mutate_strength
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replace = jax.random.normal(k2, old_vals.shape) * std + mean
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r = jax.random.uniform(k3, old_vals.shape)
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new_vals = old_vals
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new_vals = jnp.where(r < mutate_rate, new_vals + noise, new_vals)
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new_vals = jnp.where(
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jnp.logical_and(mutate_rate < r, r < mutate_rate + replace_rate),
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replace,
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new_vals
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)
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new_vals = jnp.where(~jnp.isnan(old_vals), new_vals, jnp.nan)
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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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Args:
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rand_key: A random key for generating random values.
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old_vals: A 1D array of integer values to be mutated.
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val_list: List of the integer values.
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replace_rate: Rate of the replacement.
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Returns:
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A mutated 1D array of integer values.
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"""
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k1, k2, rand_key = jax.random.split(rand_key, num=3)
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replace_val = jax.random.choice(k1, val_list, old_vals.shape)
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r = jax.random.uniform(k2, old_vals.shape)
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new_vals = old_vals
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new_vals = jnp.where(r < replace_rate, replace_val, new_vals)
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new_vals = jnp.where(~jnp.isnan(old_vals), new_vals, jnp.nan)
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return new_vals
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@jit
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def mutate_add_node(rand_key: Array, nodes: Array, cons: Array, new_node_key: int,
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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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"""
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Randomly add a new node from splitting a connection.
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:param rand_key:
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:param new_node_key:
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:param nodes:
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:param cons:
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:param default_bias:
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:param default_response:
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:param default_act:
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:param default_agg:
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:return:
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"""
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# randomly choose a connection
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i_key, o_key, idx = choice_connection_key(rand_key, nodes, cons)
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def nothing(): # there is no connection to split
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return nodes, cons
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def successful_add_node():
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# disable the connection
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new_nodes, new_cons = nodes, cons
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new_cons = new_cons.at[idx, 3].set(False)
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# add a new node
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new_nodes, new_cons = \
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add_node(new_nodes, new_cons, new_node_key,
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bias=default_bias, response=default_response, act=default_act, agg=default_agg)
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# add two new connections
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w = new_cons[idx, 2]
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new_nodes, new_cons = add_connection(new_nodes, new_cons, i_key, new_node_key, weight=1, enabled=True)
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new_nodes, new_cons = add_connection(new_nodes, new_cons, new_node_key, o_key, weight=w, enabled=True)
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return new_nodes, new_cons
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# if from_idx == I_INT, that means no connection exist, do nothing
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nodes, cons = jax.lax.cond(idx == I_INT, nothing, successful_add_node)
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return nodes, cons
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# TODO: Need we really need to delete a node?
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@jit
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def mutate_delete_node(rand_key: Array, nodes: Array, cons: Array,
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input_keys: Array, output_keys: Array) -> Tuple[Array, Array]:
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"""
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Randomly delete a node. Input and output nodes are not allowed to be deleted.
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:param rand_key:
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:param nodes:
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:param cons:
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:param input_keys:
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:param output_keys:
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:return:
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"""
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# randomly choose a node
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node_key, node_idx = choice_node_key(rand_key, nodes, input_keys, output_keys,
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allow_input_keys=False, allow_output_keys=False)
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def nothing():
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return nodes, cons
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def successful_delete_node():
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# delete the node
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aux_nodes, aux_cons = delete_node_by_idx(nodes, cons, node_idx)
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# delete all connections
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aux_cons = jnp.where(((aux_cons[:, 0] == node_key) | (aux_cons[:, 1] == node_key))[:, jnp.newaxis],
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jnp.nan, aux_cons)
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return aux_nodes, aux_cons
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nodes, cons = jax.lax.cond(node_idx == I_INT, nothing, successful_delete_node)
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return nodes, cons
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@jit
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def mutate_add_connection(rand_key: Array, nodes: Array, cons: Array,
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input_keys: Array, output_keys: Array) -> Tuple[Array, Array]:
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"""
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Randomly add a new connection. The output node is not allowed to be an input node. If in feedforward networks,
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cycles are not allowed.
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:param rand_key:
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:param nodes:
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:param cons:
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:param input_keys:
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:param output_keys:
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:return:
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"""
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# randomly choose two nodes
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k1, k2 = jax.random.split(rand_key, num=2)
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i_key, from_idx = choice_node_key(k1, nodes, input_keys, output_keys,
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allow_input_keys=True, allow_output_keys=True)
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o_key, to_idx = choice_node_key(k2, nodes, input_keys, output_keys,
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allow_input_keys=False, allow_output_keys=True)
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con_idx = fetch_first((cons[:, 0] == i_key) & (cons[:, 1] == o_key))
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def successful():
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new_nodes, new_cons = add_connection(nodes, cons, i_key, o_key, weight=1, enabled=True)
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return new_nodes, new_cons
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def already_exist():
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new_cons = cons.at[con_idx, 3].set(True)
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return nodes, new_cons
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def cycle():
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return nodes, cons
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is_already_exist = con_idx != I_INT
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unflattened = unflatten_connections(nodes, cons)
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is_cycle = check_cycles(nodes, unflattened, from_idx, to_idx)
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choice = jnp.where(is_already_exist, 0, jnp.where(is_cycle, 1, 2))
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nodes, cons = jax.lax.switch(choice, [already_exist, cycle, successful])
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return nodes, cons
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@jit
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def mutate_delete_connection(rand_key: Array, nodes: Array, cons: Array):
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"""
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Randomly delete a connection.
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:param rand_key:
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:param nodes:
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:param cons:
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:return:
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"""
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# randomly choose a connection
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i_key, o_key, idx = choice_connection_key(rand_key, nodes, cons)
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def nothing():
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return nodes, cons
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def successfully_delete_connection():
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return delete_connection_by_idx(nodes, cons, idx)
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nodes, cons = jax.lax.cond(idx == I_INT, nothing, successfully_delete_connection)
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return nodes, cons
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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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"""
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Randomly choose a node key from the given nodes. It guarantees that the chosen node not be the input or output node.
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:param rand_key:
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:param nodes:
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:param input_keys:
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:param output_keys:
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:param allow_input_keys:
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:param allow_output_keys:
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:return: return its key and position(idx)
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"""
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node_keys = nodes[:, 0]
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mask = ~jnp.isnan(node_keys)
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if not allow_input_keys:
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mask = jnp.logical_and(mask, ~jnp.isin(node_keys, input_keys))
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if not allow_output_keys:
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mask = jnp.logical_and(mask, ~jnp.isin(node_keys, output_keys))
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idx = fetch_random(rand_key, mask)
|
||||
key = jnp.where(idx != I_INT, nodes[idx, 0], jnp.nan)
|
||||
return key, idx
|
||||
|
||||
|
||||
@jit
|
||||
def choice_connection_key(rand_key: Array, nodes: Array, cons: Array) -> Tuple[Array, Array, Array]:
|
||||
"""
|
||||
Randomly choose a connection key from the given connections.
|
||||
:param rand_key:
|
||||
:param nodes:
|
||||
:param cons:
|
||||
:return: i_key, o_key, idx
|
||||
"""
|
||||
|
||||
idx = fetch_random(rand_key, ~jnp.isnan(cons[:, 0]))
|
||||
i_key = jnp.where(idx != I_INT, cons[idx, 0], jnp.nan)
|
||||
o_key = jnp.where(idx != I_INT, cons[idx, 1], jnp.nan)
|
||||
|
||||
return i_key, o_key, idx
|
||||
|
||||
|
||||
@jit
|
||||
def rand(rand_key):
|
||||
return jax.random.uniform(rand_key, ())
|
||||
Reference in New Issue
Block a user