Ejemplo n.º 1
0
def main():
    import logging
    logging.basicConfig(level=logging.DEBUG)

    parser = argparse.ArgumentParser()
    parser.add_argument('--outdir',
                        type=str,
                        default='results',
                        help='Directory path to save output files.'
                        ' If it does not exist, it will be created.')
    parser.add_argument('--env', type=str, default='Humanoid-v2')
    parser.add_argument('--seed',
                        type=int,
                        default=0,
                        help='Random seed [0, 2 ** 32)')
    parser.add_argument('--gpu', type=int, default=0)
    parser.add_argument('--final-exploration-steps', type=int, default=10**6)
    parser.add_argument('--actor-lr', type=float, default=1e-4)
    parser.add_argument('--critic-lr', type=float, default=1e-3)
    parser.add_argument('--load', type=str, default='')
    parser.add_argument('--steps', type=int, default=10**7)
    parser.add_argument('--n-hidden-channels', type=int, default=300)
    parser.add_argument('--n-hidden-layers', type=int, default=3)
    parser.add_argument('--replay-start-size', type=int, default=5000)
    parser.add_argument('--n-update-times', type=int, default=1)
    parser.add_argument('--target-update-interval', type=int, default=1)
    parser.add_argument('--target-update-method',
                        type=str,
                        default='soft',
                        choices=['hard', 'soft'])
    parser.add_argument('--soft-update-tau', type=float, default=1e-2)
    parser.add_argument('--update-interval', type=int, default=4)
    parser.add_argument('--eval-n-runs', type=int, default=100)
    parser.add_argument('--eval-interval', type=int, default=10**5)
    parser.add_argument('--gamma', type=float, default=0.995)
    parser.add_argument('--minibatch-size', type=int, default=200)
    parser.add_argument('--render', action='store_true')
    parser.add_argument('--demo', action='store_true')
    parser.add_argument('--use-bn', action='store_true', default=False)
    parser.add_argument('--monitor', action='store_true')
    parser.add_argument('--reward-scale-factor', type=float, default=1e-2)
    args = parser.parse_args()

    args.outdir = experiments.prepare_output_dir(args,
                                                 args.outdir,
                                                 argv=sys.argv)
    print('Output files are saved in {}'.format(args.outdir))

    # Set a random seed used in ChainerRL
    misc.set_random_seed(args.seed, gpus=(args.gpu, ))

    def clip_action_filter(a):
        return np.clip(a, action_space.low, action_space.high)

    def reward_filter(r):
        return r * args.reward_scale_factor

    def make_env(test):
        env = gym.make(args.env)
        # Use different random seeds for train and test envs
        env_seed = 2**32 - 1 - args.seed if test else args.seed
        env.seed(env_seed)
        # Cast observations to float32 because our model uses float32
        env = chainerrl.wrappers.CastObservationToFloat32(env)
        if args.monitor:
            env = chainerrl.wrappers.Monitor(env, args.outdir)
        if isinstance(env.action_space, spaces.Box):
            misc.env_modifiers.make_action_filtered(env, clip_action_filter)
        if not test:
            # Scale rewards (and thus returns) to a reasonable range so that
            # training is easier
            env = chainerrl.wrappers.ScaleReward(env, args.reward_scale_factor)
        if args.render and not test:
            env = chainerrl.wrappers.Render(env)
        return env

    env = make_env(test=False)
    timestep_limit = env.spec.tags.get(
        'wrapper_config.TimeLimit.max_episode_steps')
    obs_size = np.asarray(env.observation_space.shape).prod()
    action_space = env.action_space

    action_size = np.asarray(action_space.shape).prod()
    if args.use_bn:
        q_func = q_functions.FCBNLateActionSAQFunction(
            obs_size,
            action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            normalize_input=True)
        pi = policy.FCBNDeterministicPolicy(
            obs_size,
            action_size=action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            min_action=action_space.low,
            max_action=action_space.high,
            bound_action=True,
            normalize_input=True)
    else:
        q_func = q_functions.FCSAQFunction(
            obs_size,
            action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers)
        pi = policy.FCDeterministicPolicy(
            obs_size,
            action_size=action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            min_action=action_space.low,
            max_action=action_space.high,
            bound_action=True)
    model = DDPGModel(q_func=q_func, policy=pi)
    opt_a = optimizers.Adam(alpha=args.actor_lr)
    opt_c = optimizers.Adam(alpha=args.critic_lr)
    opt_a.setup(model['policy'])
    opt_c.setup(model['q_function'])
    opt_a.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
    opt_c.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')

    rbuf = replay_buffer.ReplayBuffer(5 * 10**5)

    def random_action():
        a = action_space.sample()
        if isinstance(a, np.ndarray):
            a = a.astype(np.float32)
        return a

    ou_sigma = (action_space.high - action_space.low) * 0.2
    explorer = explorers.AdditiveOU(sigma=ou_sigma)
    agent = DDPG(model,
                 opt_a,
                 opt_c,
                 rbuf,
                 gamma=args.gamma,
                 explorer=explorer,
                 replay_start_size=args.replay_start_size,
                 target_update_method=args.target_update_method,
                 target_update_interval=args.target_update_interval,
                 update_interval=args.update_interval,
                 soft_update_tau=args.soft_update_tau,
                 n_times_update=args.n_update_times,
                 gpu=args.gpu,
                 minibatch_size=args.minibatch_size)

    if len(args.load) > 0:
        agent.load(args.load)

    eval_env = make_env(test=True)
    if args.demo:
        eval_stats = experiments.eval_performance(
            env=eval_env,
            agent=agent,
            n_steps=None,
            n_episodes=args.eval_n_runs,
            max_episode_len=timestep_limit)
        print('n_runs: {} mean: {} median: {} stdev {}'.format(
            args.eval_n_runs, eval_stats['mean'], eval_stats['median'],
            eval_stats['stdev']))
    else:
        experiments.train_agent_with_evaluation(
            agent=agent,
            env=env,
            steps=args.steps,
            eval_env=eval_env,
            eval_n_steps=None,
            eval_n_episodes=args.eval_n_runs,
            eval_interval=args.eval_interval,
            outdir=args.outdir,
            train_max_episode_len=timestep_limit)
Ejemplo n.º 2
0
obs_size = np.asarray(env.observation_space.shape).prod()
action_space = env.action_space

action_size = np.asarray(action_space.shape).prod()

# Critic Network

q_func = q_functions.FCSAQFunction(obs_size,
                                   action_size,
                                   n_hidden_channels=critic_hidden_units,
                                   n_hidden_layers=critic_hidden_layers)

pi = policy.FCDeterministicPolicy(obs_size,
                                  action_size=action_size,
                                  n_hidden_channels=actor_hidden_units,
                                  n_hidden_layers=actor_hidden_layers,
                                  min_action=action_space.low,
                                  max_action=action_space.high,
                                  bound_action=True)

# The Model

model = DDPGModel(q_func=q_func, policy=pi)
opt_actor = optimizers.Adam(alpha=actor_lr)
opt_critic = optimizers.Adam(alpha=critic_lr)
opt_actor.setup(model['policy'])
opt_critic.setup(model['q_function'])
opt_actor.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
opt_critic.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')

rbuf = replay_buffer.ReplayBuffer(replay_buffer_size)
Ejemplo n.º 3
0
def main():
    import logging
    logging.basicConfig(level=logging.DEBUG)

    parser = argparse.ArgumentParser()
    parser.add_argument('--outdir', type=str, default='out')
    parser.add_argument('--env', type=str, default='Humanoid-v1')
    parser.add_argument('--seed', type=int, default=None)
    parser.add_argument('--gpu', type=int, default=0)
    parser.add_argument('--final-exploration-steps', type=int, default=10**6)
    parser.add_argument('--actor-lr', type=float, default=1e-4)
    parser.add_argument('--critic-lr', type=float, default=1e-3)
    parser.add_argument('--load', type=str, default='')
    parser.add_argument('--steps', type=int, default=10**7)
    parser.add_argument('--n-hidden-channels', type=int, default=300)
    parser.add_argument('--n-hidden-layers', type=int, default=3)
    parser.add_argument('--replay-start-size', type=int, default=5000)
    parser.add_argument('--n-update-times', type=int, default=1)
    parser.add_argument('--target-update-frequency', type=int, default=1)
    parser.add_argument('--target-update-method',
                        type=str,
                        default='soft',
                        choices=['hard', 'soft'])
    parser.add_argument('--soft-update-tau', type=float, default=1e-2)
    parser.add_argument('--update-frequency', type=int, default=4)
    parser.add_argument('--eval-n-runs', type=int, default=100)
    parser.add_argument('--eval-frequency', type=int, default=10**5)
    parser.add_argument('--gamma', type=float, default=0.995)
    parser.add_argument('--minibatch-size', type=int, default=200)
    parser.add_argument('--render', action='store_true')
    parser.add_argument('--demo', action='store_true')
    parser.add_argument('--use-bn', action='store_true', default=False)
    parser.add_argument('--monitor', action='store_true')
    parser.add_argument('--reward-scale-factor', type=float, default=1e-2)
    args = parser.parse_args()

    args.outdir = experiments.prepare_output_dir(args,
                                                 args.outdir,
                                                 argv=sys.argv)
    print('Output files are saved in {}'.format(args.outdir))

    if args.seed is not None:
        misc.set_random_seed(args.seed)

    def clip_action_filter(a):
        return np.clip(a, action_space.low, action_space.high)

    def reward_filter(r):
        return r * args.reward_scale_factor

    def make_env():
        env = gym.make(args.env)
        if args.monitor:
            env = gym.wrappers.Monitor(env, args.outdir)
        if isinstance(env.action_space, spaces.Box):
            misc.env_modifiers.make_action_filtered(env, clip_action_filter)
        misc.env_modifiers.make_reward_filtered(env, reward_filter)
        if args.render:
            misc.env_modifiers.make_rendered(env)

        def __exit__(self, *args):
            pass

        env.__exit__ = __exit__
        return env

    env = make_env()
    timestep_limit = env.spec.tags.get(
        'wrapper_config.TimeLimit.max_episode_steps')
    obs_size = np.asarray(env.observation_space.shape).prod()
    action_space = env.action_space

    action_size = np.asarray(action_space.shape).prod()
    if args.use_bn:
        q_func = q_functions.FCBNLateActionSAQFunction(
            obs_size,
            action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            normalize_input=True)
        pi = policy.FCBNDeterministicPolicy(
            obs_size,
            action_size=action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            min_action=action_space.low,
            max_action=action_space.high,
            bound_action=True,
            normalize_input=True)
    else:
        q_func = q_functions.FCSAQFunction(
            obs_size,
            action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers)
        pi = policy.FCDeterministicPolicy(
            obs_size,
            action_size=action_size,
            n_hidden_channels=args.n_hidden_channels,
            n_hidden_layers=args.n_hidden_layers,
            min_action=action_space.low,
            max_action=action_space.high,
            bound_action=True)
    model = DDPGModel(q_func=q_func, policy=pi)
    opt_a = optimizers.Adam(alpha=args.actor_lr)
    opt_c = optimizers.Adam(alpha=args.critic_lr)
    opt_a.setup(model['policy'])
    opt_c.setup(model['q_function'])
    opt_a.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
    opt_c.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')

    rbuf = replay_buffer.ReplayBuffer(5 * 10**5)

    def phi(obs):
        return obs.astype(np.float32)

    def random_action():
        a = action_space.sample()
        if isinstance(a, np.ndarray):
            a = a.astype(np.float32)
        return a

    ou_sigma = (action_space.high - action_space.low) * 0.2
    explorer = explorers.AdditiveOU(sigma=ou_sigma)
    agent = DDPG(model,
                 opt_a,
                 opt_c,
                 rbuf,
                 gamma=args.gamma,
                 explorer=explorer,
                 replay_start_size=args.replay_start_size,
                 target_update_method=args.target_update_method,
                 target_update_frequency=args.target_update_frequency,
                 update_frequency=args.update_frequency,
                 soft_update_tau=args.soft_update_tau,
                 n_times_update=args.n_update_times,
                 phi=phi,
                 gpu=args.gpu,
                 minibatch_size=args.minibatch_size)
    agent.logger.setLevel(logging.DEBUG)

    if len(args.load) > 0:
        agent.load(args.load)

    if args.demo:
        mean, median, stdev = experiments.eval_performance(
            env=env,
            agent=agent,
            n_runs=args.eval_n_runs,
            max_episode_len=timestep_limit)
        print('n_runs: {} mean: {} median: {} stdev'.format(
            args.eval_n_runs, mean, median, stdev))
    else:
        experiments.train_agent_with_evaluation(
            agent=agent,
            env=env,
            steps=args.steps,
            eval_n_runs=args.eval_n_runs,
            eval_frequency=args.eval_frequency,
            outdir=args.outdir,
            max_episode_len=timestep_limit)
Ejemplo n.º 4
0
phi = lambda x: np.array(x).astype(np.float32, copy=False)
obs_size = np.asarray(env.observation_space.shape).prod()
action_space = env.action_space
action_size = np.asarray(action_space.shape).prod()

#Critic Network
q_func = q_functions.FCSAQFunction(160,
                                   action_size,
                                   n_hidden_channels=args.hidden_size,
                                   n_hidden_layers=args.hidden_size)

#Policy Network
pi = policy.FCDeterministicPolicy(160,
                                  action_size=action_size,
                                  n_hidden_channels=args.hidden_size,
                                  n_hidden_layers=args.hidden_size,
                                  min_action=action_space.low,
                                  max_action=action_space.high,
                                  bound_action=True)

#Model
model = DDPGModel(q_func=q_func, policy=pi)
opt_actor = optimizers.Adam(alpha=args.actor_lr)
opt_critic = optimizers.Adam(alpha=args.critic_lr)
opt_actor.setup(model['policy'])
opt_critic.setup(model['q_function'])
opt_actor.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
opt_critic.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')
rbuf = replay_buffer.ReplayBuffer(5 * 10**5)
ou_sigma = (action_space.high - action_space.low) * 0.2
import random
from logging import getLogger
import copy

env = gym.make("MountainCarContinuous-v0")

obs_size = env.observation_space.shape[0]
action_size = env.action_space.shape[0]

print("obs_size", obs_size)
print("actions_size", action_size)

pi = policy.FCDeterministicPolicy(obs_size,
                                  n_hidden_layers=2,
                                  n_hidden_channels=100,
                                  action_size=1,
                                  min_action=0,
                                  max_action=1,
                                  bound_action=True,
                                  last_wscale=1)


class QFunction(chainer.Chain):
    def __init__(self, obs_size, n_actions, n_hidden_channels=50):
        super().__init__(l0=L.Linear(obs_size + n_actions, n_hidden_channels),
                         l1=L.Linear(n_hidden_channels, n_hidden_channels),
                         l2=L.Linear(n_hidden_channels, 1))

    def __call__(self, state, action, test=False):
        h = F.concat((state, action), axis=1)
        h = F.tanh(self.l0(h))
        h = F.tanh(self.l1(h))
Ejemplo n.º 6
0
#np.asarray(env.observation_space.shape).prod()
print(args.obs_size)
action_size = np.asarray(env.action_space.shape).prod()  #19

# Función Q
q_func = q_functions.FCSAQFunction(args.obs_size,
                                   action_size,
                                   n_hidden_channels=args.hidd_lay,
                                   n_hidden_layers=args.c_hidd_lay)
q_func.to_gpu(0)

# Policy
pi = policy.FCDeterministicPolicy(args.obs_size,
                                  action_size=action_size,
                                  n_hidden_channels=args.hidd_lay,
                                  n_hidden_layers=args.c_hidd_lay,
                                  min_action=env.action_space.low,
                                  max_action=env.action_space.high,
                                  bound_action=True)

print(env.action_space)

# El Modelo

model = DDPGModel(q_func=q_func, policy=pi)
opt_actor = optimizers.Adam(alpha=args.actor_lr)
opt_critic = optimizers.Adam(alpha=args.critic_lr)
opt_actor.setup(model['policy'])
opt_critic.setup(model['q_function'])
opt_actor.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
opt_critic.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')
Ejemplo n.º 7
0
def main():
    import logging
    logging.basicConfig(level=logging.DEBUG)

    parser = argparse.ArgumentParser()
    parser.add_argument('--outdir', type=str, default='results',
                        help='Directory path to save output files.'
                             ' If it does not exist, it will be created.')
    parser.add_argument('--env', type=str, default='FetchPickAndPlace-v1')
    parser.add_argument('--seed', type=int, default=0,
                        help='Random seed [0, 2 ** 32)')
    parser.add_argument('--gpu', type=int, default=0)
    parser.add_argument('--final-exploration-steps',
                        type=int, default=10 ** 6)
    parser.add_argument('--actor-lr', type=float, default=1e-3)
    parser.add_argument('--critic-lr', type=float, default=1e-3)
    parser.add_argument('--load', type=str, default='')
    parser.add_argument('--steps', type=int, default=200 * 50 * 16 * 50)
    parser.add_argument('--n-hidden-channels', type=int, default=64)
    parser.add_argument('--n-hidden-layers', type=int, default=3)
    parser.add_argument('--replay-start-size', type=int, default=10000)
    parser.add_argument('--n-update-times', type=int, default=40)
    parser.add_argument('--target-update-interval',
                        type=int, default=16 * 50)
    parser.add_argument('--target-update-method',
                        type=str, default='soft', choices=['hard', 'soft'])
    parser.add_argument('--soft-update-tau', type=float, default=1 - 0.95)
    parser.add_argument('--update-interval', type=int, default=16 * 50)
    parser.add_argument('--eval-n-runs', type=int, default=30)
    parser.add_argument('--eval-interval', type=int, default=50 * 16 * 50)
    parser.add_argument('--gamma', type=float, default=0.98)
    parser.add_argument('--minibatch-size', type=int, default=128)
    parser.add_argument('--render', action='store_true')
    parser.add_argument('--demo', action='store_true')
    parser.add_argument('--monitor', action='store_true')
    parser.add_argument('--epsilon', type=float, default=0.05)
    parser.add_argument('--noise-std', type=float, default=0.05)
    parser.add_argument('--clip-threshold', type=float, default=5.0)
    parser.add_argument('--num-envs', type=int, default=1)
    args = parser.parse_args()

    args.outdir = experiments.prepare_output_dir(
        args, args.outdir, argv=sys.argv)
    print('Output files are saved in {}'.format(args.outdir))

    # Set a random seed used in ChainerRL
    misc.set_random_seed(args.seed, gpus=(args.gpu,))

    def clip_action_filter(a):
        return np.clip(a, action_space.low, action_space.high)

    # Set different random seeds for different subprocesses.
    # If seed=0 and processes=4, subprocess seeds are [0, 1, 2, 3].
    # If seed=1 and processes=4, subprocess seeds are [4, 5, 6, 7].
    process_seeds = np.arange(args.num_envs) + args.seed * args.num_envs
    assert process_seeds.max() < 2 ** 32

    def make_env(idx, test):
        env = gym.make(args.env)
        # Use different random seeds for train and test envs
        process_seed = int(process_seeds[idx])
        env_seed = 2 ** 32 - 1 - process_seed if test else process_seed
        env.seed(env_seed)
        if args.monitor:
            env = gym.wrappers.Monitor(env, args.outdir)
        if isinstance(env.action_space, spaces.Box):
            misc.env_modifiers.make_action_filtered(env, clip_action_filter)
        if args.render and not test:
            env = chainerrl.wrappers.Render(env)
        if test:
            env = HEREnvWrapper(env, args.outdir)
        return env

    def make_batch_env(test):
        return chainerrl.envs.MultiprocessVectorEnv(
            [(lambda: make_env(idx, test))
             for idx, env in enumerate(range(args.num_envs))])

    sample_env = make_env(0, test=False)

    def reward_function(state, action, goal):
        return sample_env.compute_reward(achieved_goal=state['achieved_goal'],
                                  desired_goal=goal,
                                  info=None)

    timestep_limit = sample_env.spec.tags.get(
        'wrapper_config.TimeLimit.max_episode_steps')
    space_dict = sample_env.observation_space.spaces
    observation_space = space_dict['observation']
    goal_space = space_dict['desired_goal']
    obs_size = np.asarray(observation_space.shape).prod()
    goal_size = np.asarray(goal_space.shape).prod()
    action_space = sample_env.action_space

    action_size = np.asarray(action_space.shape).prod()    
    q_func = q_functions.FCSAQFunction(
        obs_size + goal_size, action_size,
        n_hidden_channels=args.n_hidden_channels,
        n_hidden_layers=args.n_hidden_layers)
    pi = policy.FCDeterministicPolicy(
        obs_size + goal_size, action_size=action_size,
        n_hidden_channels=args.n_hidden_channels,
        n_hidden_layers=args.n_hidden_layers,
        min_action=action_space.low, max_action=action_space.high,
        bound_action=True)
    model = DDPGModel(q_func=q_func, policy=pi)
    opt_a = optimizers.Adam(alpha=args.actor_lr)
    opt_c = optimizers.Adam(alpha=args.critic_lr)
    opt_a.setup(model['policy'])
    opt_c.setup(model['q_function'])
    opt_a.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_a')
    opt_c.add_hook(chainer.optimizer.GradientClipping(1.0), 'hook_c')

    rbuf = replay_buffer.HindsightReplayBuffer(reward_function,
        10 ** 6,
        future_k=4)

    def phi(dict_state):
        return np.concatenate(
            (dict_state['observation'].astype(np.float32, copy=False),
            dict_state['desired_goal'].astype(np.float32, copy=False)), 0)

    # Normalize observations based on their empirical mean and variance
    obs_normalizer = chainerrl.links.EmpiricalNormalization(
        obs_size + goal_size, clip_threshold=args.clip_threshold)

    explorer = HERExplorer(args.noise_std,
        args.epsilon,
        action_space)
    agent = DDPG(model, opt_a, opt_c, rbuf,
                 obs_normalizer=obs_normalizer,
                 gamma=args.gamma,
                 explorer=explorer,
                 replay_start_size=args.replay_start_size,
                 phi=phi,
                 target_update_method=args.target_update_method,
                 target_update_interval=args.target_update_interval,
                 update_interval=args.update_interval,
                 soft_update_tau=args.soft_update_tau,
                 n_times_update=args.n_update_times,
                 gpu=args.gpu,
                 minibatch_size=args.minibatch_size,
                 clip_critic_tgt=(-1.0/(1.0-args.gamma), 0.0))

    if len(args.load) > 0:
        agent.load(args.load)

    if args.demo:
        eval_stats = experiments.eval_performance(
            env=make_batch_env(test=True),
            agent=agent,
            n_steps=None,
            n_episodes=args.eval_n_runs,
            max_episode_len=timestep_limit)
        print('n_runs: {} mean: {} median: {} stdev {}'.format(
            args.eval_n_runs, eval_stats['mean'], eval_stats['median'],
            eval_stats['stdev']))
    else:
        experiments.train_agent_batch_with_evaluation(
            agent=agent, env=make_batch_env(test=False), steps=args.steps,
            eval_env=make_batch_env(test=True), eval_n_steps=None,
            eval_n_episodes=args.eval_n_runs, eval_interval=args.eval_interval,
            outdir=args.outdir,
            max_episode_len=timestep_limit)