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September 19, 2018 06:28
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parallel-evolution-strategies.py
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import numpy as np | |
import multiprocessing | |
from joblib import Parallel, delayed | |
np.random.seed(0) | |
# the function we want to optimize | |
def f(w): | |
reward = -np.sum(np.square(solution - w)) | |
return reward | |
# hyperparameters | |
pop_size = 1000 # population size | |
std = 1 # noise standard deviation | |
alpha = 0.001 # learning rate | |
# start the optimization | |
solution = np.array([0.5, 0.1, -0.3]) | |
w = np.random.randn(3) # our initial guess is random | |
def run_episode(w, jittered_w): | |
return f(w + jittered_w) | |
for i in range(1000): | |
# print current fitness of the most likely parameter setting | |
if i % 20 == 0: | |
print('iter %d. w: %s, solution: %s, reward: %f' % | |
(i, str(w), str(solution), f(w))) | |
N = np.random.randn(pop_size, 3) # samples from a normal distribution N(0,1) | |
R = np.zeros(pop_size) | |
R = np.array(Parallel(n_jobs=multiprocessing.cpu_count())(delayed(run_episode)(w, std * N[j]) for j in range(pop_size))) | |
A = (R - np.mean(R)) / np.std(R) | |
w = w + alpha / (pop_size * std) * np.dot(N.T, A) |
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