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@@ -13,7 +13,7 @@ class Species(object):
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self.created = generation
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self.last_improved = generation
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self.representative: Tuple[NDArray, NDArray] = (None, None) # (nodes, connections)
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self.members: List[int] = [] # idx in pop_nodes, pop_connections,
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self.members: NDArray = None # idx in pop_nodes, pop_connections,
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self.fitness = None
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self.member_fitnesses = None
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self.adjusted_fitness = None
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@@ -24,7 +24,7 @@ class Species(object):
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self.members = members
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def get_fitnesses(self, fitnesses):
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return [fitnesses[m] for m in self.members]
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return fitnesses[self.members]
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class SpeciesController:
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@@ -55,7 +55,7 @@ class SpeciesController:
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pop_size = pop_nodes.shape[0]
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species_id = next(self.species_idxer)
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s = Species(species_id, 0)
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members = list(range(pop_size))
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members = np.array(list(range(pop_size)))
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s.update((pop_nodes[0], pop_connections[0]), members)
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self.species[species_id] = s
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@@ -81,6 +81,7 @@ class SpeciesController:
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for sid in previous_species_list
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])
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# TODO: Use jit to wrapper function find_min_with_mask to accelerate this part
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for i, sid in enumerate(previous_species_list):
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distances = total_distances[i]
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min_idx = find_min_with_mask(distances, unspeciated) # find the min un-specified distance
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@@ -145,7 +146,7 @@ class SpeciesController:
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s = Species(sid, generation)
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self.species[sid] = s
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members = new_members[sid]
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members = np.array(new_members[sid])
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s.update((pop_nodes[rid], pop_connections[rid]), members)
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def update_species_fitnesses(self, fitnesses):
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@@ -195,9 +196,10 @@ class SpeciesController:
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result.append((sid, s, is_stagnant))
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return result
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def reproduce(self, generation: int) -> List[Union[int, Tuple[int, int]]]:
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def reproduce(self, fitnesses: NDArray, generation: int) -> Tuple[NDArray, NDArray, NDArray]:
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"""
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code modified from neat-python!
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:param fitnesses:
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:param generation:
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:return: crossover_pair for next generation.
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# int -> idx in the pop_nodes, pop_connections of elitism
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@@ -208,21 +210,22 @@ class SpeciesController:
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# The average adjusted fitness scheme (normalized to the interval
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# [0, 1]) allows the use of negative fitness values without
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# interfering with the shared fitness scheme.
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all_fitnesses = []
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min_fitness = np.inf
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max_fitness = -np.inf
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remaining_species = []
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for stag_sid, stag_s, stagnant in self.stagnation(generation):
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if not stagnant:
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all_fitnesses.extend(stag_s.member_fitnesses)
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min_fitness = min(min_fitness, np.min(stag_s.member_fitnesses))
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max_fitness = max(max_fitness, np.max(stag_s.member_fitnesses))
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remaining_species.append(stag_s)
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# No species left.
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if not remaining_species:
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self.species = {}
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return []
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assert remaining_species
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# Compute each species' member size in the next generation.
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min_fitness = min(all_fitnesses)
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max_fitness = max(all_fitnesses)
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# Do not allow the fitness range to be zero, as we divide by it below.
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# TODO: The ``1.0`` below is rather arbitrary, and should be configurable.
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fitness_range = max(1.0, max_fitness - min_fitness)
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@@ -242,21 +245,23 @@ class SpeciesController:
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# int -> idx in the pop_nodes, pop_connections of elitism
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# (int, int) -> the father and mother idx to be crossover
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crossover_pair: List[Union[int, Tuple[int, int]]] = []
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part1, part2, elite_mask = [], [], []
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for spawn, s in zip(spawn_amounts, remaining_species):
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assert spawn >= self.genome_elitism
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# retain remain species to next generation
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old_members, fitnesses = s.members, s.member_fitnesses
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old_members, member_fitnesses = s.members, s.member_fitnesses
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s.members = []
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self.species[s.key] = s
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# add elitism genomes to next generation
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sorted_members, sorted_fitnesses = sort_element_with_fitnesses(old_members, fitnesses)
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sorted_members, sorted_fitnesses = sort_element_with_fitnesses(old_members, member_fitnesses)
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if self.genome_elitism > 0:
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for m in sorted_members[:self.genome_elitism]:
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crossover_pair.append(m)
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part1.append(m)
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part2.append(m)
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elite_mask.append(True)
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spawn -= 1
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if spawn <= 0:
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@@ -269,15 +274,16 @@ class SpeciesController:
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sorted_members = sorted_members[:repro_cutoff]
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list_idx1, list_idx2 = np.random.choice(len(sorted_members), size=(2, spawn), replace=True)
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for c1, c2 in zip(list_idx1, list_idx2):
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idx1, fitness1 = sorted_members[c1], sorted_fitnesses[c1]
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idx2, fitness2 = sorted_members[c2], sorted_fitnesses[c2]
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if fitness1 >= fitness2:
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crossover_pair.append((idx1, idx2))
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else:
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crossover_pair.append((idx2, idx1))
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part1.extend(sorted_members[list_idx1])
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part2.extend(sorted_members[list_idx2])
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elite_mask.extend([False] * spawn)
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return crossover_pair
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part1_fitness, part2_fitness = fitnesses[part1], fitnesses[part2]
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is_part1_win = part1_fitness >= part2_fitness
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winner_part = np.where(is_part1_win, part1, part2)
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loser_part = np.where(is_part1_win, part2, part1)
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return winner_part, loser_part, np.array(elite_mask)
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def compute_spawn(adjusted_fitness, previous_sizes, pop_size, min_species_size):
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@@ -326,10 +332,7 @@ def find_min_with_mask(arr: NDArray, mask: NDArray) -> int:
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return min_idx
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def sort_element_with_fitnesses(members: List[int], fitnesses: List[float]) \
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-> Tuple[List[int], List[float]]:
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combined = zip(members, fitnesses)
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sorted_combined = sorted(combined, key=lambda x: x[1], reverse=True)
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sorted_members = [item[0] for item in sorted_combined]
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sorted_fitnesses = [item[1] for item in sorted_combined]
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return sorted_members, sorted_fitnesses
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def sort_element_with_fitnesses(members: NDArray, fitnesses: NDArray) \
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-> Tuple[NDArray, NDArray]:
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sorted_idx = np.argsort(fitnesses)[::-1]
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return members[sorted_idx], fitnesses[sorted_idx]
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