Created
January 7, 2017 10:12
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cma-v3
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import argparse | |
import numpy | |
import keras | |
import gym | |
import cma | |
parser = argparse.ArgumentParser() | |
parser.add_argument("environment") | |
args = parser.parse_args() | |
environment = gym.make(args.environment) | |
model = keras.models.Sequential() | |
model.add(keras.layers.convolutional.Convolution2D(16, 8, 8, subsample=(4,4), activation="relu", input_shape=environment.observation_space.shape)) | |
model.add(keras.layers.convolutional.Convolution2D(32, 4, 4, subsample=(2,2), activation="relu")) | |
model.add(keras.layers.core.Flatten()) | |
model.add(keras.layers.core.Dense(256, activation="relu")) | |
model.add(keras.layers.core.Dense(environment.action_space.n)) | |
shapes = [weight.shape for weight in model.get_weights()] | |
def get_solution(weights): | |
return numpy.concatenate([weight.reshape(-1) for weight in weights]) | |
def set_weights(solution): | |
model.set_weights([solution[1:1+numpy.prod(shape)].reshape(shape) for shape in shapes]) | |
def get_action(observation): | |
return numpy.argmax(model.predict_on_batch(observation)) | |
shape = (1,) + environment.observation_space.shape | |
def get_reward(): | |
observation = environment.reset() | |
Reward = 0 | |
done = False | |
while not done: | |
observation = observation.reshape(shape) | |
action = get_action(observation) | |
observation, reward, done, _info = environment.step(action) | |
Reward += reward | |
return Reward | |
def f(x): | |
set_weights(x) | |
Reward = get_reward() | |
return -Reward | |
x0 = get_solution(model.get_weights()) | |
environment.monitor.start("") | |
cma.fmin(f, x0, 1.0, {"maxfevals": 1e4, "tolx": 0, "tolfun": 0, "tolfunhist": 0}) | |
environment.monitor.close() | |
gym.upload("", algorithm_id="alg_Y9Siabv9RMiM7Zvj2YpeEA") |
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