示例#1
0
def parse_arch(arch, n_actions):
    if arch == 'nature':
        return links.Sequence(links.NatureDQNHead(n_input_channels=3),
                              L.Linear(512, n_actions), DiscreteActionValue)

    elif arch == 'doubledqn':

        class SingleSharedBias(chainer.Chain):
            """Single shared bias used in the Double DQN paper.
            You can add this link after a Linear layer with nobias=True to implement a
            Linear layer with a single shared bias parameter.
            See http://arxiv.org/abs/1509.06461.
            """
            def __init__(self):
                super().__init__()
                with self.init_scope():
                    self.bias = chainer.Parameter(0, shape=1)

            def __call__(self, x):
                return x + F.broadcast_to(self.bias, x.shape)

        return links.Sequence(links.NatureDQNHead(n_input_channels=3),
                              L.Linear(512, n_actions, nobias=True),
                              SingleSharedBias(), DiscreteActionValue)

    elif arch == 'nips':
        return links.Sequence(links.NIPSDQNHead(n_input_channels=3),
                              L.Linear(256, n_actions), DiscreteActionValue)

    elif arch == 'dueling':
        return DuelingDQN(n_actions, n_input_channels=3)
    else:
        raise RuntimeError('Not supported architecture: {}'.format(arch))
def parse_arch(arch, n_actions):
    if arch == 'nature':
        return links.Sequence(links.NatureDQNHead(), L.Linear(512, n_actions),
                              DiscreteActionValue)
    elif arch == 'doubledqn':
        return links.Sequence(links.NatureDQNHead(),
                              L.Linear(512, n_actions, nobias=True),
                              SingleSharedBias(), DiscreteActionValue)
    elif arch == 'nips':
        return links.Sequence(links.NIPSDQNHead(), L.Linear(256, n_actions),
                              DiscreteActionValue)
    elif arch == 'dueling':
        return DuelingDQN(n_actions)
    else:
        raise RuntimeError('Not supported architecture: {}'.format(arch))
示例#3
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def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--model',
                        type=str,
                        required=True,
                        help='Model directory path.')
    parser.add_argument('--out',
                        type=str,
                        required=True,
                        help='ONNX file output path.')
    parser.add_argument('--gpu', type=int, default=0, help='GPU id.')
    args = parser.parse_args()

    # Predefined parameters.
    n_actions = 4  # env.action_space.n
    replay_start_size = 5 * 10**4

    # Load the model.
    q_func = links.Sequence(links.NatureDQNHead(), L.Linear(512, n_actions),
                            DiscreteActionValue)
    opt = chainer.optimizers.RMSpropGraves(lr=2.5e-4,
                                           alpha=0.95,
                                           momentum=0.0,
                                           eps=1e-2)
    opt.setup(q_func)
    rbuf = replay_buffer.ReplayBuffer(10**6)
    explorer = explorers.LinearDecayEpsilonGreedy(
        start_epsilon=1.0,
        end_epsilon=0.1,
        decay_steps=10**6,
        random_action_func=lambda: np.random.randint(n_actions))

    def phi(x):
        # Feature extractor
        return np.asarray(x, dtype=np.float32) / 255

    Agent = agents.DQN
    agent = Agent(q_func,
                  opt,
                  rbuf,
                  gpu=args.gpu,
                  gamma=0.99,
                  explorer=explorer,
                  replay_start_size=replay_start_size,
                  target_update_interval=10**4,
                  clip_delta=True,
                  update_interval=4,
                  batch_accumulator='sum',
                  phi=phi)
    agent.load(args.model)

    # Extract core links from the model and export these links as an ONNX format.
    onnx_compat_model = convert_to_compatible_model(agent)
    x = cp.array(np.zeros((1, 4, 84, 84), dtype=np.float32))
    onnx_chainer.export(onnx_compat_model,
                        x,
                        input_names='input',
                        output_names='action',
                        return_named_inout=True,
                        filename=args.out)
示例#4
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def parse_arch(arch, n_actions, activation):
    if arch == 'nature':
        return links.Sequence(links.NatureDQNHead(activation=activation),
                              L.Linear(512, n_actions), DiscreteActionValue)
    elif arch == 'nips':
        return links.Sequence(links.NIPSDQNHead(activation=activation),
                              L.Linear(256, n_actions), DiscreteActionValue)
    elif arch == 'dueling':
        return DuelingDQN(n_actions)
    else:
        raise RuntimeError('Not supported architecture: {}'.format(arch))
示例#5
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    def __init__(self, modelpath, n_actions=4, n_stack_frames=4):
        # Predefined parameters.
        replay_start_size = 5 * 10**4

        # Load the model.
        q_func = links.Sequence(links.NatureDQNHead(),
                                L.Linear(512, n_actions), DiscreteActionValue)
        opt = chainer.optimizers.RMSpropGraves(lr=2.5e-4,
                                               alpha=0.95,
                                               momentum=0.0,
                                               eps=1e-2)
        opt.setup(q_func)
        rbuf = replay_buffer.ReplayBuffer(10**6)
        explorer = explorers.LinearDecayEpsilonGreedy(
            start_epsilon=1.0,
            end_epsilon=0.1,
            decay_steps=10**6,
            random_action_func=lambda: np.random.randint(n_actions))

        def phi(x):
            # Feature extractor
            return np.asarray(x, dtype=np.float32) / 255

        Agent = agents.DQN
        self._agent = Agent(q_func,
                            opt,
                            rbuf,
                            gpu=-1,
                            gamma=0.99,
                            explorer=explorer,
                            replay_start_size=replay_start_size,
                            target_update_interval=10**4,
                            clip_delta=True,
                            update_interval=4,
                            batch_accumulator='sum',
                            phi=phi)
        self._agent.load(modelpath)

        self._state = deque([], maxlen=n_stack_frames)
        self._action = 0
示例#6
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    def _test_load_dqn(self, gpu):
        q_func = links.Sequence(links.NatureDQNHead(), L.Linear(512, 4),
                                DiscreteActionValue)

        opt = optimizers.RMSpropGraves(lr=2.5e-4,
                                       alpha=0.95,
                                       momentum=0.0,
                                       eps=1e-2)
        opt.setup(q_func)

        rbuf = replay_buffer.ReplayBuffer(100)

        explorer = explorers.LinearDecayEpsilonGreedy(
            start_epsilon=1.0,
            end_epsilon=0.1,
            decay_steps=10**6,
            random_action_func=lambda: np.random.randint(4))

        agent = agents.DQN(q_func,
                           opt,
                           rbuf,
                           gpu=gpu,
                           gamma=0.99,
                           explorer=explorer,
                           replay_start_size=50,
                           target_update_interval=10**4,
                           clip_delta=True,
                           update_interval=4,
                           batch_accumulator='sum',
                           phi=lambda x: x)

        model, exists = download_model("DQN",
                                       "BreakoutNoFrameskip-v4",
                                       model_type=self.pretrained_type)
        agent.load(model)
        if os.environ.get('CHAINERRL_ASSERT_DOWNLOADED_MODEL_IS_CACHED'):
            assert exists
示例#7
0
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--env',
                        type=str,
                        default='BreakoutNoFrameskip-v4',
                        help='OpenAI Atari domain to perform algorithm on.')
    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('--seed',
                        type=int,
                        default=0,
                        help='Random seed [0, 2 ** 31)')
    parser.add_argument('--gpu',
                        type=int,
                        default=0,
                        help='GPU to use, set to -1 if no GPU.')
    parser.add_argument('--demo', action='store_true', default=False)
    parser.add_argument('--load', type=str, default=None)
    parser.add_argument('--logging-level',
                        type=int,
                        default=20,
                        help='Logging level. 10:DEBUG, 20:INFO etc.')
    parser.add_argument('--render',
                        action='store_true',
                        default=False,
                        help='Render env states in a GUI window.')
    parser.add_argument('--monitor',
                        action='store_true',
                        default=False,
                        help='Monitor env. Videos and additional information'
                        ' are saved as output files.')
    parser.add_argument('--steps',
                        type=int,
                        default=5 * 10**7,
                        help='Total number of timesteps to train the agent.')
    parser.add_argument('--replay-start-size',
                        type=int,
                        default=5 * 10**4,
                        help='Minimum replay buffer size before ' +
                        'performing gradient updates.')
    parser.add_argument('--eval-n-steps', type=int, default=125000)
    parser.add_argument('--eval-interval', type=int, default=250000)
    parser.add_argument('--n-best-episodes', type=int, default=30)
    args = parser.parse_args()

    import logging
    logging.basicConfig(level=args.logging_level)

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

    # Set different random seeds for train and test envs.
    train_seed = args.seed
    test_seed = 2**31 - 1 - args.seed

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

    def make_env(test):
        # Use different random seeds for train and test envs
        env_seed = test_seed if test else train_seed
        env = atari_wrappers.wrap_deepmind(atari_wrappers.make_atari(
            args.env, max_frames=None),
                                           episode_life=not test,
                                           clip_rewards=not test)
        env.seed(int(env_seed))
        if test:
            # Randomize actions like epsilon-greedy in evaluation as well
            env = chainerrl.wrappers.RandomizeAction(env, 0.05)
        if args.monitor:
            env = chainerrl.wrappers.Monitor(
                env, args.outdir, mode='evaluation' if test else 'training')
        if args.render:
            env = chainerrl.wrappers.Render(env)
        return env

    env = make_env(test=False)
    eval_env = make_env(test=True)

    n_actions = env.action_space.n
    q_func = links.Sequence(links.NatureDQNHead(), L.Linear(512, n_actions),
                            DiscreteActionValue)

    # Draw the computational graph and save it in the output directory.
    chainerrl.misc.draw_computational_graph(
        [q_func(np.zeros((4, 84, 84), dtype=np.float32)[None])],
        os.path.join(args.outdir, 'model'))

    # Use the same hyperparameters as the Nature paper
    opt = optimizers.RMSpropGraves(lr=2.5e-4,
                                   alpha=0.95,
                                   momentum=0.0,
                                   eps=1e-2)

    opt.setup(q_func)

    rbuf = replay_buffer.ReplayBuffer(10**6)

    explorer = explorers.LinearDecayEpsilonGreedy(
        start_epsilon=1.0,
        end_epsilon=0.1,
        decay_steps=10**6,
        random_action_func=lambda: np.random.randint(n_actions))

    def phi(x):
        # Feature extractor
        return np.asarray(x, dtype=np.float32) / 255

    Agent = agents.DQN
    agent = Agent(q_func,
                  opt,
                  rbuf,
                  gpu=args.gpu,
                  gamma=0.99,
                  explorer=explorer,
                  replay_start_size=args.replay_start_size,
                  target_update_interval=10**4,
                  clip_delta=True,
                  update_interval=4,
                  batch_accumulator='sum',
                  phi=phi)

    if args.load:
        agent.load(args.load)

    if args.demo:
        eval_stats = experiments.eval_performance(env=eval_env,
                                                  agent=agent,
                                                  n_steps=args.eval_n_steps,
                                                  n_episodes=None)
        print('n_episodes: {} mean: {} median: {} stdev {}'.format(
            eval_stats['episodes'], eval_stats['mean'], eval_stats['median'],
            eval_stats['stdev']))
    else:
        experiments.train_agent_with_evaluation(
            agent=agent,
            env=env,
            steps=args.steps,
            eval_n_steps=args.eval_n_steps,
            eval_n_episodes=None,
            eval_interval=args.eval_interval,
            outdir=args.outdir,
            save_best_so_far_agent=True,
            eval_env=eval_env,
        )

        dir_of_best_network = os.path.join(args.outdir, "best")
        agent.load(dir_of_best_network)

        # run 30 evaluation episodes, each capped at 5 mins of play
        stats = experiments.evaluator.eval_performance(
            env=eval_env,
            agent=agent,
            n_steps=None,
            n_episodes=args.n_best_episodes,
            max_episode_len=4500,
            logger=None)
        with open(os.path.join(args.outdir, 'bestscores.json'), 'w') as f:
            json.dump(stats, f)
        print("The results of the best scoring network:")
        for stat in stats:
            print(str(stat) + ":" + str(stats[stat]))
示例#8
0
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--env',
                        type=str,
                        default='BreakoutNoFrameskip-v4',
                        help='OpenAI Atari domain to perform algorithm on.')
    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('--seed',
                        type=int,
                        default=0,
                        help='Random seed [0, 2 ** 31)')
    parser.add_argument('--gpu',
                        type=int,
                        default=0,
                        help='GPU to use, set to -1 if no GPU.')
    parser.add_argument('--demo', action='store_true', default=False)
    parser.add_argument('--load', type=str, default=None)
    parser.add_argument('--final-exploration-frames',
                        type=int,
                        default=10**6,
                        help='Timesteps after which we stop ' +
                        'annealing exploration rate')
    parser.add_argument('--final-epsilon',
                        type=float,
                        default=0.1,
                        help='Final value of epsilon during training.')
    parser.add_argument('--eval-epsilon',
                        type=float,
                        default=0.05,
                        help='Exploration epsilon used during eval episodes.')
    parser.add_argument('--noisy-net-sigma', type=float, default=None)
    parser.add_argument('--arch',
                        type=str,
                        default='doubledqn',
                        choices=['nature', 'nips', 'dueling', 'doubledqn'],
                        help='Network architecture to use.')
    parser.add_argument('--steps',
                        type=int,
                        default=5 * 10**7,
                        help='Total number of timesteps to train the agent.')
    parser.add_argument(
        '--max-frames',
        type=int,
        default=30 * 60 * 60,  # 30 minutes with 60 fps
        help='Maximum number of frames for each episode.')
    parser.add_argument('--replay-start-size',
                        type=int,
                        default=5 * 10**4,
                        help='Minimum replay buffer size before ' +
                        'performing gradient updates.')
    parser.add_argument('--target-update-interval',
                        type=int,
                        default=1 * 10**4,
                        help='Frequency (in timesteps) at which ' +
                        'the target network is updated.')
    parser.add_argument('--eval-interval',
                        type=int,
                        default=10**5,
                        help='Frequency (in timesteps) of evaluation phase.')
    parser.add_argument('--update-interval',
                        type=int,
                        default=4,
                        help='Frequency (in timesteps) of network updates.')
    parser.add_argument('--eval-n-runs', type=int, default=10)
    parser.add_argument('--no-clip-delta',
                        dest='clip_delta',
                        action='store_false')
    parser.set_defaults(clip_delta=True)

    parser.add_argument('--logging-level',
                        type=int,
                        default=20,
                        help='Logging level. 10:DEBUG, 20:INFO etc.')
    parser.add_argument('--render',
                        action='store_true',
                        default=False,
                        help='Render env states in a GUI window.')
    parser.add_argument('--monitor',
                        action='store_true',
                        default=False,
                        help='Monitor env. Videos and additional information'
                        ' are saved as output files.')
    parser.add_argument('--lr',
                        type=float,
                        default=2.5e-4,
                        help='Learning rate.')
    args = parser.parse_args()

    import logging
    logging.basicConfig(level=args.logging_level)

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

    # Set different random seeds for train and test envs.
    train_seed = args.seed
    test_seed = 2**31 - 1 - args.seed

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

    def make_env(test):
        # Use different random seeds for train and test envs
        env_seed = test_seed if test else train_seed
        env = atari_wrappers.wrap_deepmind(atari_wrappers.make_atari(
            args.env, max_frames=args.max_frames),
                                           episode_life=not test,
                                           clip_rewards=not test)
        env.seed(int(env_seed))
        if test:
            # Randomize actions like epsilon-greedy in evaluation as well
            env = chainerrl.wrappers.RandomizeAction(env, args.eval_epsilon)
        if args.monitor:
            env = gym.wrappers.Monitor(
                env, args.outdir, mode='evaluation' if test else 'training')
        if args.render:
            env = chainerrl.wrappers.Render(env)
        return env

    env = make_env(test=False)
    eval_env = make_env(test=True)

    n_actions = env.action_space.n
    q_func = links.Sequence(links.NatureDQNHead(), L.Linear(512, n_actions),
                            DiscreteActionValue)

    if args.noisy_net_sigma is not None:
        links.to_factorized_noisy(q_func)
        # Turn off explorer
        explorer = explorers.Greedy()

    # Draw the computational graph and save it in the output directory.
    chainerrl.misc.draw_computational_graph(
        [q_func(np.zeros((4, 84, 84), dtype=np.float32)[None])],
        os.path.join(args.outdir, 'model'))

    # Use the same hyper parameters as the Nature paper's
    opt = optimizers.RMSpropGraves(lr=args.lr,
                                   alpha=0.95,
                                   momentum=0.0,
                                   eps=1e-2)

    opt.setup(q_func)

    rbuf = replay_buffer.ReplayBuffer(10**6)

    explorer = explorers.LinearDecayEpsilonGreedy(
        1.0, args.final_epsilon, args.final_exploration_frames,
        lambda: np.random.randint(n_actions))

    def phi(x):
        # Feature extractor
        return np.asarray(x, dtype=np.float32) / 255

    Agent = agents.DQN
    agent = Agent(q_func,
                  opt,
                  rbuf,
                  gpu=args.gpu,
                  gamma=0.99,
                  explorer=explorer,
                  replay_start_size=args.replay_start_size,
                  target_update_interval=args.target_update_interval,
                  clip_delta=args.clip_delta,
                  update_interval=args.update_interval,
                  batch_accumulator='sum',
                  phi=phi)

    if args.load:
        agent.load(args.load)

    if args.demo:
        eval_stats = experiments.eval_performance(env=eval_env,
                                                  agent=agent,
                                                  n_runs=args.eval_n_runs)
        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_n_episodes=args.eval_n_runs,
            eval_interval=args.eval_interval,
            outdir=args.outdir,
            save_best_so_far_agent=False,
            eval_env=eval_env,
        )
示例#9
0
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--out_dir', type=str, default='results',
                        help='Directory path to save output files.'
                             ' If it does not exist, it will be created.')
    parser.add_argument('--seed', type=int, default=0,
                        help='Random seed [0, 2 ** 31)')
    parser.add_argument('--gpu', type=int, default=0,
                        help='GPU to use, set to -1 if no GPU.')
    parser.add_argument('--demo', action='store_true', default=False)
    parser.add_argument('--load', type=str, default=None)
    parser.add_argument('--final-exploration-frames',
                        type=int, default=10 ** 5,
                        help='Timesteps after which we stop ' +
                        'annealing exploration rate')
    parser.add_argument('--final-epsilon', type=float, default=0.1,
                        help='Final value of epsilon during training.')
    parser.add_argument('--eval-epsilon', type=float, default=0.05,
                        help='Exploration epsilon used during eval episodes.')
    parser.add_argument('--steps', type=int, default=10 ** 6,
                        help='Total number of timesteps to train the agent.')
    parser.add_argument('--max-episode-len', type=int,
                        default=30 * 60 * 60 // 4,  # 30 minutes with 60/4 fps
                        help='Maximum number of timesteps for each episode.')
    parser.add_argument('--replay-start-size', type=int, default=1000,
                        help='Minimum replay buffer size before ' +
                        'performing gradient updates.')
    parser.add_argument('--target-update-interval',
                        type=int, default=1 * 10 ** 4,
                        help='Frequency (in timesteps) at which ' +
                        'the target network is updated.')
    parser.add_argument('--eval-interval', type=int, default=10 ** 5,
                        help='Frequency (in timesteps) of evaluation phase.')
    parser.add_argument('--update-interval', type=int, default=4,
                        help='Frequency (in timesteps) of network updates.')
    parser.add_argument('--eval-n-runs', type=int, default=10)
    parser.add_argument('--logging-level', type=int, default=20,
                        help='Logging level. 10:DEBUG, 20:INFO etc.')
    parser.add_argument('--lr', type=float, default=2.5e-4,
                        help='Learning rate.')
    args = parser.parse_args()

    import logging
    logging.basicConfig(level=args.logging_level)

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

    if not os.path.exists(args.out_dir):
        os.makedirs(args.out_dir)

    experiments.set_log_base_dir(args.out_dir)
    print('Output files are saved in {}'.format(args.out_dir))

    env = make_env(env_seed=args.seed)

    n_actions = env.action_space.n
    
    q_func = links.Sequence(
        links.NatureDQNHead(n_input_channels=3),
        L.Linear(512, n_actions),
        DiscreteActionValue
    )

    # Use the same hyper parameters as the Nature paper's
    opt = optimizers.RMSpropGraves(
        lr=args.lr, alpha=0.95, momentum=0.0, eps=1e-2)

    opt.setup(q_func)

    rbuf = replay_buffer.ReplayBuffer(10 ** 6)

    explorer = explorers.LinearDecayEpsilonGreedy(
        1.0, args.final_epsilon,
        args.final_exploration_frames,
        lambda: np.random.randint(n_actions))

    def phi(x):
        # Feature extractor
        x = x.transpose(2, 0, 1)
        return np.asarray(x, dtype=np.float32) / 255

    agent = agents.DQN(
        q_func,
        opt,
        rbuf,
        gpu=args.gpu,
        gamma=0.99,
        explorer=explorer,
        replay_start_size=args.replay_start_size,
        target_update_interval=args.target_update_interval,
        update_interval=args.update_interval,
        batch_accumulator='sum',
        phi=phi
    )

    if args.load:
        agent.load(args.load)

    if args.demo:
        eval_stats = experiments.eval_performance(
            env=env,
            agent=agent,
            n_runs=args.eval_n_runs)
        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_n_runs=args.eval_n_runs,
            eval_interval=args.eval_interval,
            outdir=args.out_dir,
            save_best_so_far_agent=False,
            max_episode_len=args.max_episode_len,
            eval_env=env,
        )
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--env',
                        type=str,
                        default='BreakoutNoFrameskip-v4',
                        help='OpenAI Atari domain to perform algorithm on.')
    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('--seed',
                        type=int,
                        default=0,
                        help='Random seed [0, 2 ** 31)')
    parser.add_argument('--gpu',
                        type=int,
                        default=0,
                        help='GPU to use, set to -1 if no GPU.')
    parser.add_argument('--load', type=str, default=None, required=True)
    parser.add_argument('--logging-level',
                        type=int,
                        default=20,
                        help='Logging level. 10:DEBUG, 20:INFO etc.')
    parser.add_argument('--render',
                        action='store_true',
                        default=False,
                        help='Render env states in a GUI window.')
    parser.add_argument('--monitor',
                        action='store_true',
                        default=False,
                        help='Monitor env. Videos and additional information'
                        ' are saved as output files.')
    parser.add_argument('--steps',
                        type=int,
                        default=5 * 10**7,
                        help='Total number of demo timesteps to collect')
    args = parser.parse_args()

    import logging
    logging.basicConfig(level=args.logging_level)

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

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

    def make_env():
        env = atari_wrappers.wrap_deepmind(atari_wrappers.make_atari(
            args.env, max_frames=None),
                                           episode_life=False,
                                           clip_rewards=False)
        env.seed(int(args.seed))
        # Randomize actions like epsilon-greedy
        env = chainerrl.wrappers.RandomizeAction(env, 0.01)
        if args.monitor:
            env = chainerrl.wrappers.Monitor(env,
                                             args.outdir,
                                             mode='evaluation')
        if args.render:
            env = chainerrl.wrappers.Render(env)
        return env

    env = make_env()

    n_actions = env.action_space.n
    q_func = links.Sequence(links.NatureDQNHead(), L.Linear(512, n_actions),
                            DiscreteActionValue)

    # Draw the computational graph and save it in the output directory.
    chainerrl.misc.draw_computational_graph(
        [q_func(np.zeros((4, 84, 84), dtype=np.float32)[None])],
        os.path.join(args.outdir, 'model'))

    # The optimizer and replay buffer are dummy variables required by agent
    opt = optimizers.RMSpropGraves()
    opt.setup(q_func)
    rbuf = replay_buffer.ReplayBuffer(1)

    def phi(x):
        # Feature extractor
        return np.asarray(x, dtype=np.float32) / 255

    Agent = agents.DQN
    agent = Agent(q_func,
                  opt,
                  rbuf,
                  gpu=args.gpu,
                  gamma=0.99,
                  explorer=None,
                  replay_start_size=1,
                  minibatch_size=1,
                  target_update_interval=None,
                  clip_delta=True,
                  update_interval=4,
                  phi=phi)

    agent.load(args.load)

    # saves demos to outdir/demos.pickle
    experiments.collect_demonstrations(agent=agent,
                                       env=env,
                                       steps=args.steps,
                                       episodes=None,
                                       outdir=args.outdir,
                                       max_episode_len=None)
示例#11
0
    def __init__(self, alg, env, model_path):
        self.alg = alg
        seed = 0
        n_actions = gym.make(env).action_space.n
        gpus = [-1]
        gpu = None
        misc.set_random_seed(seed, gpus=gpus)
        if alg == "DQN-C":
            model = links.Sequence(
                links.NatureDQNHead(),
                L.Linear(512, n_actions),
                DiscreteActionValue)
        if alg == "PPO":
            winit_last = chainer.initializers.LeCunNormal(1e-2)
            model = chainer.Sequential(
                L.Convolution2D(None, 32, 8, stride=4),
                F.relu,
                L.Convolution2D(None, 64, 4, stride=2),
                F.relu,
                L.Convolution2D(None, 64, 3, stride=1),
                F.relu,
                L.Linear(None, 512),
                F.relu,
                links.Branched(
                    chainer.Sequential(
                        L.Linear(None, n_actions, initialW=winit_last),
                        SoftmaxDistribution,
                    ),
                    L.Linear(None, 1),
                )
            )
        if alg == "C51":
            n_atoms = 51
            v_max = 10
            v_min = -10
            model = links.Sequence(
                links.NatureDQNHead(),
                DistributionalFCStateQFunctionWithDiscreteAction(
                    None, n_actions, n_atoms, v_min, v_max,
                    n_hidden_channels=0, n_hidden_layers=0),
            )
        if alg == "ACER":
            model = agents.acer.ACERSharedModel(
                shared=links.Sequence(
                    links.NIPSDQNHead(),
                    L.LSTM(256, 256)),
                pi=links.Sequence(
                    L.Linear(256, n_actions),
                    SoftmaxDistribution),
                q=links.Sequence(
                    L.Linear(256, n_actions),
                    DiscreteActionValue),
            )
        if alg == "A3C":
            model = A3CFF(n_actions)
        if alg == "Rainbow":
            n_atoms = 51
            v_max = 10
            v_min = -10
            model = DistributionalDuelingDQN(n_actions, n_atoms, v_min, v_max)
            links.to_factorized_noisy(model, sigma_scale=0.5)
        if alg == "IQN":
            model = agents.iqn.ImplicitQuantileQFunction(
                psi=chainerrl.links.Sequence(
                    L.Convolution2D(None, 32, 8, stride=4),
                    F.relu,
                    L.Convolution2D(None, 64, 4, stride=2),
                    F.relu,
                    L.Convolution2D(None, 64, 3, stride=1),
                    F.relu,
                    functools.partial(F.reshape, shape=(-1, 3136)),
                ),
                phi=chainerrl.links.Sequence(
                    chainerrl.agents.iqn.CosineBasisLinear(64, 3136),
                    F.relu,
                ),
                f=chainerrl.links.Sequence(
                    L.Linear(None, 512),
                    F.relu,
                    L.Linear(None, n_actions),
                ),
            )
        if alg in ["A3C"]:
            fake_obs = chainer.Variable(
                np.zeros((4, 84, 84), dtype=np.float32)[None],
                name='observation')
            with chainerrl.recurrent.state_reset(model):
                # The state of the model is reset again after drawing the graph
                variables = misc.collect_variables([model(fake_obs)])
                chainer.computational_graph.build_computational_graph(variables)
        elif alg in ["Rainbow", "DQN-C", "C51", "ACER", "PPO"]:
            variables = misc.collect_variables([model(np.zeros((4, 84, 84), dtype=np.float32)[None])])
            chainer.computational_graph.build_computational_graph(variables)
        else:
            fake_obs = np.zeros((4, 84, 84), dtype=np.float32)[None]
            fake_taus = np.zeros(32, dtype=np.float32)[None]
            variables = misc.collect_variables([model(fake_obs)(fake_taus)])

        def phi(x):
            # Feature extractor
            return np.asarray(x, dtype=np.float32) / 255

        opt = optimizers.RMSpropGraves()
        opt.setup(model)
        rbuf = replay_buffer.ReplayBuffer(1)
        if alg == "IQN":
            self.agent = agents.IQN(model, opt, rbuf, gpu=gpu, gamma=0.99, act_deterministically=True, explorer=None,
                                    replay_start_size=1, minibatch_size=1, target_update_interval=None, clip_delta=True,
                                    update_interval=4, phi=phi)
        if alg == "A3C":
            self.agent = a3c.A3C(model, opt, t_max=5, gamma=0.99, phi=phi, act_deterministically=True)
        if alg == "Rainbow":
            self.agent = agents.CategoricalDoubleDQN(model, opt, rbuf, gpu=gpu, gamma=0.99, explorer=None,
                                                     replay_start_size=1, minibatch_size=1, target_update_interval=None,
                                                     clip_delta=True, update_interval=4, phi=phi)
        if alg == "DQN-C":
            self.agent = agents.DQN(model, opt, rbuf, gpu=gpu, gamma=0.99, explorer=None, replay_start_size=1,
                                    minibatch_size=1, target_update_interval=None, clip_delta=True, update_interval=4,
                                    phi=phi)
        if alg == "C51":
            self.agent = agents.CategoricalDQN(
                model, opt, rbuf, gpu=gpu, gamma=0.99,
                explorer=None, replay_start_size=1,
                minibatch_size=1,
                target_update_interval=None,
                clip_delta=True,
                update_interval=4,
                phi=phi,
            )
        if alg == "ACER":
            self.agent = agents.acer.ACER(model, opt, t_max=5, gamma=0.99,
                                          replay_buffer=rbuf,
                                          n_times_replay=4,
                                          replay_start_size=1,
                                          act_deterministically=True,
                                          phi=phi
                                          )
        if alg == "PPO":
            self.agent = agents.PPO(model, opt, gpu=gpu, phi=phi, update_interval=4, minibatch_size=1, clip_eps=0.1,
                                    recurrent=False, act_deterministically=True)
        self.agent.load(os.path.join(model_path, 'chainer', alg, env.replace("NoFrameskip-v4", ""), 'final'))
示例#12
0
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--env',
                        type=str,
                        default='BreakoutNoFrameskip-v4',
                        help='OpenAI Atari domain to perform algorithm on.')
    parser.add_argument('--out_dir',
                        type=str,
                        default='results',
                        help='Directory path to save output files.'
                        ' If it does not exist, it will be created.')
    parser.add_argument('--seed',
                        type=int,
                        default=0,
                        help='Random seed [0, 2 ** 31)')
    parser.add_argument('--gpu',
                        type=int,
                        default=0,
                        help='GPU to use, set to -1 if no GPU.')
    parser.add_argument('--demo', action='store_true', default=False)
    parser.add_argument('--load', type=str, default=None)
    parser.add_argument('--final-exploration-frames',
                        type=int,
                        default=10**5,
                        help='Timesteps after which we stop ' +
                        'annealing exploration rate')
    parser.add_argument('--final-epsilon',
                        type=float,
                        default=0.1,
                        help='Final value of epsilon during training.')
    parser.add_argument('--eval-epsilon',
                        type=float,
                        default=0.05,
                        help='Exploration epsilon used during eval episodes.')
    parser.add_argument('--arch',
                        type=str,
                        default='doubledqn',
                        choices=['nature', 'nips', 'dueling', 'doubledqn'],
                        help='Network architecture to use.')
    parser.add_argument('--steps',
                        type=int,
                        default=10**6,
                        help='Total number of timesteps to train the agent.')
    parser.add_argument(
        '--max-episode-len',
        type=int,
        default=30 * 60 * 60 // 4,  # 30 minutes with 60/4 fps
        help='Maximum number of timesteps for each episode.')
    parser.add_argument('--replay-start-size',
                        type=int,
                        default=1000,
                        help='Minimum replay buffer size before ' +
                        'performing gradient updates.')
    parser.add_argument('--target-update-interval',
                        type=int,
                        default=1 * 10**4,
                        help='Frequency (in timesteps) at which ' +
                        'the target network is updated.')
    parser.add_argument('--eval-interval',
                        type=int,
                        default=10**5,
                        help='Frequency (in timesteps) of evaluation phase.')
    parser.add_argument('--update-interval',
                        type=int,
                        default=4,
                        help='Frequency (in timesteps) of network updates.')
    parser.add_argument('--eval-n-runs', type=int, default=100)
    parser.add_argument('--logging-level',
                        type=int,
                        default=20,
                        help='Logging level. 10:DEBUG, 20:INFO etc.')
    parser.add_argument('--render',
                        action='store_true',
                        default=False,
                        help='Render env states in a GUI window.')
    parser.add_argument('--lr',
                        type=float,
                        default=2.5e-4,
                        help='Learning rate.')
    args = parser.parse_args()

    import logging
    logging.basicConfig(level=args.logging_level)

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

    if not os.path.exists(args.out_dir):
        os.makedirs(args.out_dir)

    experiments.set_log_base_dir(args.out_dir)
    print('Output files are saved in {}'.format(args.out_dir))

    def make_env(render=False, env_seed=0):
        join_tokens = marlo.make("MarLo-FindTheGoal-v0",
                                 params=dict(
                                     allowContinuousMovement=["move", "turn"],
                                     videoResolution=[84, 84],
                                     kill_clients_after_num_rounds=500))
        env = marlo.init(join_tokens[0])

        obs = env.reset()
        if render:
            env.render(mode="rgb_array")
        action = env.action_space.sample()
        obs, r, done, info = env.step(action)
        env.seed(int(env_seed))
        return env

    env = make_env(render=args.render, env_seed=args.seed)

    n_actions = env.action_space.n
    q_func = links.Sequence(links.NatureDQNHead(n_input_channels=3),
                            L.Linear(512, n_actions), DiscreteActionValue)

    # Draw the computational graph and save it in the output directory.
    chainerrl.misc.draw_computational_graph(
        [q_func(np.zeros((3, 84, 84), dtype=np.float32)[None])],
        os.path.join(args.out_dir, 'model'))

    # Use the same hyper parameters as the Nature paper's
    opt = optimizers.RMSpropGraves(lr=args.lr,
                                   alpha=0.95,
                                   momentum=0.0,
                                   eps=1e-2)

    opt.setup(q_func)

    rbuf = replay_buffer.ReplayBuffer(10**6)

    explorer = explorers.LinearDecayEpsilonGreedy(
        1.0, args.final_epsilon, args.final_exploration_frames,
        lambda: np.random.randint(n_actions))

    def phi(x):
        # Feature extractor
        x = x.transpose(2, 0, 1)
        return np.asarray(x, dtype=np.float32) / 255

    agent = agents.DQN(q_func,
                       opt,
                       rbuf,
                       gpu=args.gpu,
                       gamma=0.99,
                       explorer=explorer,
                       replay_start_size=args.replay_start_size,
                       target_update_interval=args.target_update_interval,
                       update_interval=args.update_interval,
                       batch_accumulator='sum',
                       phi=phi)

    if args.load:
        agent.load(args.load)

    if args.demo:
        eval_stats = experiments.eval_performance(env=env,
                                                  agent=agent,
                                                  n_runs=args.eval_n_runs)
        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_n_runs=args.eval_n_runs,
            eval_interval=args.eval_interval,
            outdir=args.out_dir,
            save_best_so_far_agent=False,
            max_episode_len=args.max_episode_len,
            eval_env=env,
        )