1 | #TODO hof should be the complete non-dominated set from the entire process of evolution (all evaluated individuals), not limited in any way (remove '-hof_size'). Now we are not storing the entire Pareto front, but individuals that were better than others in hof [better=on all criteria?] at the time of inserting to hof. Hof has a size limit. |
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2 | #TODO when -dissim is used, print its statistics just like all other criteria |
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3 | #TODO in statistics, do not print "gen" (generation number) for each criterion |
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4 | #TODO if possible, when saving the final .gen file, instead of fitness as a python tuple, save individual criteria - so instead of fitness:(0.005251036058321138, 0.025849976588613266), write "velocity:...\nvertpos:..." (this also applies to other .py examples in this directory) |
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5 | |
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6 | |
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7 | import argparse |
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8 | import logging |
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9 | import os |
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10 | import pickle |
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11 | import sys |
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12 | import copy |
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13 | from enum import Enum |
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14 | |
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15 | import numpy as np |
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16 | |
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17 | from deap import base |
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18 | from deap import tools |
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19 | |
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20 | from FramsticksLib import FramsticksLib |
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21 | from evolalg.base.lambda_step import LambdaStep |
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22 | from evolalg.base.step import Step |
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23 | from evolalg.dissimilarity.frams_dissimilarity import FramsDissimilarity |
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24 | from evolalg.dissimilarity.levenshtein import LevenshteinDissimilarity |
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25 | from evolalg.experiment import Experiment |
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26 | from evolalg.fitness.fitness_step import FitnessStep |
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27 | from evolalg.mutation_cross.frams_cross_and_mutate import FramsCrossAndMutate |
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28 | from evolalg.population.frams_population import FramsPopulation |
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29 | from evolalg.repair.remove.field import FieldRemove |
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30 | from evolalg.repair.remove.remove import Remove |
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31 | from evolalg.selection.nsga2 import NSGA2Selection |
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32 | from evolalg.statistics.halloffame_stats import HallOfFameStatistics |
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33 | from evolalg.statistics.multistatistics_deap import MultiStatistics |
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34 | from evolalg.statistics.statistics_deap import StatisticsDeap |
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35 | from evolalg.base.union_step import UnionStep |
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36 | from evolalg.utils.population_save import PopulationSave |
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37 | |
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38 | |
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39 | def ensureDir(string): |
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40 | if os.path.isdir(string): |
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41 | return string |
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42 | else: |
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43 | raise NotADirectoryError(string) |
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44 | |
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45 | |
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46 | class Dissim(Enum): |
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47 | levenshtein = "levenshtein" |
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48 | frams = "frams" |
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49 | |
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50 | def __str__(self): |
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51 | return self.name |
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52 | |
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53 | |
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54 | |
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55 | def parseArguments(): |
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56 | parser = argparse.ArgumentParser( |
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57 | description='Run this program with "python -u %s" if you want to disable buffering of its output.' % sys.argv[ |
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58 | 0]) |
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59 | parser.add_argument('-path', type=ensureDir, required=True, |
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60 | help='Path to the Framsticks library without trailing slash.') |
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61 | parser.add_argument('-opt', required=True, |
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62 | help='optimization criteria seperated with a comma: vertpos, velocity, distance, vertvel, lifespan, numjoints, numparts, numneurons, numconnections (and others as long as they are provided by the .sim file and its .expdef). Single or multiple criteria.') |
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63 | parser.add_argument('-lib', required=False, help="Filename of .so or .dll with the Framsticks library") |
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64 | |
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65 | parser.add_argument('-genformat', required=False, default="1", |
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66 | help='Genetic format for the demo run, for example 4, 9, or B. If not given, f1 is assumed.') |
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67 | parser.add_argument('-sim', required=False, default="eval-allcriteria.sim", |
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68 | help="Name of the .sim file with all parameter values. If you want to provide more files, separate them with a semicolon ';'.") |
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69 | parser.add_argument('-dissim', required=False, type=Dissim, default=Dissim.frams, |
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70 | help='Dissimilarity measure, default: frams', choices=list(Dissim)) |
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71 | parser.add_argument('-popsize', type=int, default=40, help="Population size (must be a multiple of 4), default: 40.") # mod 4 because of DEAP |
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72 | parser.add_argument('-generations', type=int, default=5, help="Number of generations, default: 5.") |
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73 | |
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74 | parser.add_argument('-max_numparts', type=int, default=None, help="Maximum number of Parts. Default: no limit") |
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75 | parser.add_argument('-max_numjoints', type=int, default=None, help="Maximum number of Joints. Default: no limit") |
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76 | parser.add_argument('-max_numneurons', type=int, default=None, help="Maximum number of Neurons. Default: no limit") |
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77 | parser.add_argument('-max_numconnections', type=int, default=None, |
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78 | help="Maximum number of Neural connections. Default: no limit") |
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79 | |
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80 | parser.add_argument('-hof_size', type=int, default=10, help="Number of genotypes in Hall of Fame. Default: 10.") |
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81 | parser.add_argument('-hof_evaluations', type=int, default=20, |
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82 | help="Number of final evaluations of each genotype in Hall of Fame to obtain reliable (averaged) fitness. Default: 20.") |
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83 | parser.add_argument('-checkpoint_path', required=False, default=None, help="Path to the checkpoint file") |
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84 | parser.add_argument('-checkpoint_interval', required=False, type=int, default=100, help="Checkpoint interval") |
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85 | parser.add_argument('-debug', dest='debug', action='store_true', help="Prints names of steps as they are executed") |
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86 | parser.set_defaults(debug=False) |
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87 | return parser.parse_args() |
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88 | |
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89 | |
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90 | class NumPartsHigher(Remove): |
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91 | def __init__(self, max_number): |
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92 | super(NumPartsHigher, self).__init__() |
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93 | self.max_number = max_number |
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94 | |
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95 | def remove(self, individual): |
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96 | return individual.numparts > self.max_number |
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97 | |
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98 | |
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99 | class NumJointsHigher(Remove): |
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100 | def __init__(self, max_number): |
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101 | super(NumJointsHigher, self).__init__() |
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102 | self.max_number = max_number |
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103 | |
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104 | def remove(self, individual): |
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105 | return individual.numjoints > self.max_number |
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106 | |
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107 | |
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108 | class NumNeuronsHigher(Remove): |
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109 | def __init__(self, max_number): |
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110 | super(NumNeuronsHigher, self).__init__() |
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111 | self.max_number = max_number |
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112 | |
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113 | def remove(self, individual): |
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114 | return individual.numneurons > self.max_number |
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115 | |
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116 | |
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117 | class NumConnectionsHigher(Remove): |
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118 | def __init__(self, max_number): |
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119 | super(NumConnectionsHigher, self).__init__() |
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120 | self.max_number = max_number |
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121 | |
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122 | def remove(self, individual): |
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123 | return individual.numconnections > self.max_number |
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124 | |
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125 | |
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126 | class ReplaceWithHallOfFame(Step): |
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127 | def __init__(self, hof, *args, **kwargs): |
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128 | super(ReplaceWithHallOfFame, self).__init__(*args, **kwargs) |
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129 | self.hof = hof |
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130 | |
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131 | def call(self, population, *args, **kwargs): |
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132 | super(ReplaceWithHallOfFame, self).call(population) |
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133 | return list(self.hof.halloffame) |
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134 | |
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135 | |
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136 | class DeapFitness(base.Fitness): |
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137 | weights = (1, 1) |
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138 | |
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139 | def __init__(self, *args, **kwargs): |
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140 | super(DeapFitness, self).__init__(*args, **kwargs) |
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141 | |
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142 | |
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143 | class Nsga2Fitness: |
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144 | def __init__(self, fields): |
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145 | self.fields = fields |
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146 | def __call__(self, ind): |
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147 | setattr(ind, "fitness", DeapFitness(tuple(getattr(ind, _) for _ in self.fields))) |
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148 | |
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149 | |
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150 | |
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151 | class ExtractField: |
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152 | def __init__(self, field_name): |
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153 | self.field_name = field_name |
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154 | def __call__(self, ind): |
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155 | return getattr(ind, self.field_name) |
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156 | |
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157 | def extract_fitness(ind): |
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158 | return ind.fitness_raw |
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159 | |
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160 | |
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161 | def load_experiment(path): |
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162 | with open(path, "rb") as file: |
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163 | experiment = pickle.load(file) |
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164 | print("Loaded experiment. Generation:", experiment.generation) |
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165 | return experiment |
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166 | |
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167 | |
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168 | def create_experiment(): |
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169 | parsed_args = parseArguments() |
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170 | frams_lib = FramsticksLib(parsed_args.path, parsed_args.lib, parsed_args.sim.split(";")) |
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171 | |
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172 | opt_dissim = [] |
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173 | opt_fitness = [] |
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174 | for crit in parsed_args.opt.split(','): |
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175 | try: |
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176 | Dissim(crit) |
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177 | opt_dissim.append(crit) |
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178 | except ValueError: |
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179 | opt_fitness.append(crit) |
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180 | if len(opt_dissim) > 1: |
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181 | raise ValueError("Only one type of dissimilarity supported") |
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182 | |
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183 | # Steps for generating first population |
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184 | init_stages = [ |
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185 | FramsPopulation(frams_lib, parsed_args.genformat, parsed_args.popsize) |
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186 | ] |
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187 | |
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188 | # Selection procedure |
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189 | selection = NSGA2Selection(copy=True) |
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190 | |
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191 | # Procedure for generating new population. This steps will be run as long there is less than |
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192 | # popsize individuals in the new population |
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193 | new_generation_stages = [FramsCrossAndMutate(frams_lib, cross_prob=0.2, mutate_prob=0.9)] |
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194 | |
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195 | # Steps after new population is created. Executed exactly once per generation. |
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196 | generation_modifications = [] |
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197 | |
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198 | # ------------------------------------------------- |
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199 | # Fitness |
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200 | |
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201 | fitness_raw = FitnessStep(frams_lib, fields={**{_:_ for _ in opt_fitness}, |
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202 | "numparts": "numparts", |
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203 | "numjoints": "numjoints", |
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204 | "numneurons": "numneurons", |
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205 | "numconnections": "numconnections"}, |
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206 | fields_defaults={parsed_args.opt: None, "numparts": float("inf"), |
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207 | "numjoints": float("inf"), "numneurons": float("inf"), |
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208 | "numconnections": float("inf"), |
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209 | **{_:None for _ in opt_fitness} |
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210 | }, |
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211 | evaluation_count=1) |
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212 | |
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213 | fitness_end = FitnessStep(frams_lib, fields={_:_ for _ in opt_fitness}, |
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214 | fields_defaults={parsed_args.opt: None}, |
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215 | evaluation_count=parsed_args.hof_evaluations) |
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216 | # Remove |
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217 | remove = [] |
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218 | remove.append(FieldRemove(opt_fitness[0], None)) # Remove individuals if they have default value for fitness |
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219 | if parsed_args.max_numparts is not None: |
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220 | # This could be also implemented by "LambdaRemove(lambda x: x.numparts > parsed_args.num_parts)" |
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221 | # But this would not serialize in checkpoint. |
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222 | remove.append(NumPartsHigher(parsed_args.max_numparts)) |
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223 | if parsed_args.max_numjoints is not None: |
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224 | remove.append(NumJointsHigher(parsed_args.max_numjoints)) |
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225 | if parsed_args.max_numneurons is not None: |
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226 | remove.append(NumNeuronsHigher(parsed_args.max_numneurons)) |
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227 | if parsed_args.max_numconnections is not None: |
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228 | remove.append(NumConnectionsHigher(parsed_args.max_numconnections)) |
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229 | |
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230 | remove_step = UnionStep(remove) |
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231 | |
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232 | fitness_remove = UnionStep([fitness_raw, remove_step]) |
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233 | |
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234 | init_stages.append(fitness_remove) |
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235 | new_generation_stages.append(fitness_remove) |
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236 | |
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237 | # ------------------------------------------------- |
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238 | # Dissimilarity as one of the criteria |
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239 | dissim = None |
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240 | if len(opt_dissim) > 0 and Dissim(opt_dissim[0]) == Dissim.levenshtein: |
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241 | dissim = LevenshteinDissimilarity(reduction="mean", output_field="dissim") |
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242 | elif len(opt_dissim) > 0 and Dissim(opt_dissim[0]) == Dissim.frams: |
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243 | dissim = FramsDissimilarity(frams_lib, reduction="mean", output_field="dissim") |
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244 | |
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245 | if dissim is not None: |
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246 | init_stages.append(dissim) |
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247 | generation_modifications.append(dissim) |
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248 | |
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249 | if dissim is not None: |
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250 | nsga2_fittnes = Nsga2Fitness(["dissim"]+ opt_fitness) |
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251 | else: |
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252 | nsga2_fittnes = Nsga2Fitness(opt_fitness) |
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253 | |
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254 | init_stages.append(LambdaStep(nsga2_fittnes)) |
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255 | generation_modifications.append(LambdaStep(nsga2_fittnes)) |
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256 | |
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257 | # ------------------------------------------------- |
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258 | # Statistics |
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259 | hall_of_fame = HallOfFameStatistics(parsed_args.hof_size, "fitness") # Wrapper for halloffamae |
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260 | replace_with_hof = ReplaceWithHallOfFame(hall_of_fame) |
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261 | statistics_deap = MultiStatistics({fit:StatisticsDeap([ |
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262 | ("avg", np.mean), |
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263 | ("stddev", np.std), |
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264 | ("min", np.min), |
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265 | ("max", np.max) |
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266 | ], ExtractField(fit)) for fit in opt_fitness}) # Wrapper for deap statistics |
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267 | |
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268 | statistics_union = UnionStep( |
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269 | [hall_of_fame, |
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270 | statistics_deap] |
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271 | ) # Union of two statistics steps. |
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272 | |
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273 | init_stages.append(statistics_union) |
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274 | generation_modifications.append(statistics_union) |
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275 | |
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276 | # ------------------------------------------------- |
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277 | # End stages: this will execute exactly once after all generations. |
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278 | end_stages = [ |
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279 | replace_with_hof, |
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280 | fitness_end, |
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281 | PopulationSave("halloffame.gen", provider=hall_of_fame.halloffame, fields={"genotype": "genotype", |
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282 | "fitness": "fitness"})] |
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283 | # ...but custom fields can be added, e.g. "custom": "recording" |
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284 | |
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285 | # ------------------------------------------------- |
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286 | |
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287 | # Experiment creation |
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288 | |
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289 | experiment = Experiment(init_population=init_stages, |
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290 | selection=selection, |
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291 | new_generation_steps=new_generation_stages, |
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292 | generation_modification=generation_modifications, |
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293 | end_steps=end_stages, |
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294 | population_size=parsed_args.popsize, |
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295 | checkpoint_path=parsed_args.checkpoint_path, |
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296 | checkpoint_interval=parsed_args.checkpoint_interval |
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297 | ) |
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298 | return experiment |
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299 | |
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300 | |
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301 | def main(): |
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302 | print("Running experiment with", sys.argv) |
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303 | parsed_args = parseArguments() |
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304 | |
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305 | if parsed_args.popsize % 4 != 0: |
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306 | raise ValueError("popsize must be a multiple of 4 (for example %d)." % (parsed_args.popsize//4*4)) # required by deap.tools.selTournamentDCD() |
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307 | |
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308 | if parsed_args.debug: |
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309 | logging.basicConfig(level=logging.DEBUG) |
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310 | |
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311 | if parsed_args.checkpoint_path is not None and os.path.exists(parsed_args.checkpoint_path): |
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312 | experiment = load_experiment(parsed_args.checkpoint_path) |
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313 | else: |
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314 | experiment = create_experiment() |
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315 | experiment.init() # init is mandatory |
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316 | |
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317 | experiment.run(parsed_args.generations) |
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318 | |
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319 | # Next call for experiment.run(10) will do nothing. Parameter 10 specifies how many generations should be |
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320 | # in one experiment. Previous call generated 10 generations. |
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321 | # Example 1: |
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322 | # experiment.init() |
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323 | # experiment.run(10) |
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324 | # experiment.run(12) |
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325 | # #This will run for total of 12 generations |
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326 | # |
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327 | # Example 2 |
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328 | # experiment.init() |
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329 | # experiment.run(10) |
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330 | # experiment.init() |
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331 | # experiment.run(10) |
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332 | # # All work produced by first run will be "destroyed" by second init(). |
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333 | |
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334 | |
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335 | if __name__ == '__main__': |
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336 | main() |
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