This is a fork of the NEAT wrapper PyTorch-NEAT. This is a test using cartpoles and OpenAI gym to integrate the wrapper. I did this to see if the GPU acceleration can increase NEAT's learning rate.
A PyTorch implementation of the NEAT (NeuroEvolution of Augmenting Topologies) method which was originally created by Kenneth O. Stanley as a principled approach to evolving neural networks. Read the paper here.
PyTorch-NEAT currently contains three built-in experiments: XOR, Single-Pole Balancing, and Car Mountain Climbing.
Run with the command: python xor_run.py
Will run up-to 150 generations with an initial population of 150 genomes. When/If a solution is found the solution network will be displayed along with statistics about the trial. Feel free to run for more than one trial - just increase the range in the outer for loop in the xor_run.py file.
Run with the command: python pole_run.py
Will run up-to 150 generations with an initial population of 150 genomes. Runs in the OpenAI gym enviornment. When/If a solution is found the solution network will be displayed along with a rendered evalution in the OpenAI gym.
Run with the command: python mountain_climb_run.py
Will run up-to 150 generations with an initial population of 150 genomes. Runs in the OpenAI gym enviornment. When/If a solution is found the solution network will be displayed along with a rendered evalution in the OpenAI gym.
Each experiment requries a configuration file. The XOR experiment config file is broken down here:
Import necessary items.
import torch
import torch.nn as nn
from torch import autograd
from v1.phenotype.feed_forward import FeedForwardNet
A config file consists of a Python class with certain requirnments (detailed in comments below).
class XORConfig:
# Where to evaluate tensors
DEVICE = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
# Boolean - print generation stats throughout trial
VERBOSE = False
# Number of inputs/outputs each genome should contain
NUM_INPUTS = 2
NUM_OUTPUTS = 1
# Boolean - use a bias node in each genome
USE_BIAS = True
# String - which activation function each node will use
# Note: currently only sigmoid and tanh are available - see v1/activations.py for functions
ACTIVATION = 'sigmoid'
# Float - what value to scale the activation function's input by
# This default value is taken directly from the paper
SCALE_ACTIVATION = 4.9
# Float - a solution is defined as having a fitness >= this fitness threshold
FITNESS_THRESHOLD = 3.9
# Integer - size of population
POPULATION_SIZE = 150
# Integer - max number of generations to be run for
NUMBER_OF_GENERATIONS = 150
# Float - an organism is said to be in a species if the genome distance to the model genome of a species is <= this speciation threshold
SPECIATION_THRESHOLD = 3.0
# Float between 0.0 and 1.0 - rate at which a connection gene will be mutated
CONNECTION_MUTATION_RATE = 0.80
# Float between 0.0 and 1.0 - rate at which a connections weight is perturbed (if connection is to be mutated)
CONNECTION_PERTURBATION_RATE = 0.90
# Float between 0.0 and 1.0 - rate at which a node will randomly be added to a genome
ADD_NODE_MUTATION_RATE = 0.03
# Float between 0.0 and 1.0 - rate at which a connection will randomly be added to a genome
ADD_CONNECTION_MUTATION_RATE = 0.5
# Float between 0.0 and 1.0 - rate at which a connection, if disabled, will be re-enabled
CROSSOVER_REENABLE_CONNECTION_GENE_RATE = 0.25
# Float between 0.0 and 1.0 - Top percentage of species to be saved before mating
PERCENTAGE_TO_SAVE = 0.30
# XOR's input and output values
# Note: it is not always necessary to explicity include these values. Depends on the fitness evaluation.
# See an OpenAI gym experiment config file for a different fitness evaluation example.
inputs = list(map(lambda s: autograd.Variable(torch.Tensor([s])), [
[0, 0],
[0, 1],
[1, 0],
[1, 1]
]))
targets = list(map(lambda s: autograd.Variable(torch.Tensor([s])), [
[0],
[1],
[1],
[0]
]))
It is required for an experiment's configuration class to contain a fitness_fn()
method. It takes just one argument - a genome.
def fitness_fn(self, genome):
fitness = 4.0 # Max fitness for XOR
phenotype = FeedForwardNet(genome, self)
phenotype.to(self.DEVICE)
criterion = nn.MSELoss()
for input, target in zip(self.inputs, self.targets): # 4 training examples
input, target = input.to(self.DEVICE), target.to(self.DEVICE)
pred = phenotype(input)
loss = (float(pred) - float(target)) ** 2
loss = float(loss)
fitness -= loss
return fitness
Feel free to add additional methods for experiment-specific uses.
def get_preds_and_labels(self, genome):
phenotype = FeedForwardNet(genome, self)
phenotype.to(self.DEVICE)
predictions = []
labels = []
for input, target in zip(self.inputs, self.targets): # 4 training examples
input, target = input.to(self.DEVICE), target.to(self.DEVICE)
predictions.append(float(phenotype(input)))
labels.append(float(target))
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