コード例 #1
0
def make_dqn(args):
    """Make a DQN policy
    :return: policy"""
    net = DQN(*args.state_shape, args.action_shape,
              args.device).to(args.device)
    policy = DQNPolicy(net,
                       None,
                       args.gamma,
                       args.n_step,
                       target_update_freq=args.target_update_freq)
    policy.set_eps(0)
    return policy
コード例 #2
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def test_dqn(args=get_args()):
    env = gym.make(args.task)
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # train_envs = gym.make(args.task)
    # you can also use tianshou.env.SubprocVectorEnv
    train_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.training_num)])
    # test_envs = gym.make(args.task)
    test_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.test_num)])
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    train_envs.seed(args.seed)
    test_envs.seed(args.seed)
    # Q_param = V_param = {"hidden_sizes": [128]}
    # model
    net = Net(
        args.state_shape,
        args.action_shape,
        hidden_sizes=args.hidden_sizes,
        device=args.device,
        # dueling=(Q_param, V_param),
    ).to(args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    policy = DQNPolicy(net,
                       optim,
                       args.gamma,
                       args.n_step,
                       target_update_freq=args.target_update_freq)
    # buffer
    if args.prioritized_replay:
        buf = PrioritizedVectorReplayBuffer(args.buffer_size,
                                            buffer_num=len(train_envs),
                                            alpha=args.alpha,
                                            beta=args.beta)
    else:
        buf = VectorReplayBuffer(args.buffer_size, buffer_num=len(train_envs))
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                buf,
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)
    # policy.set_eps(1)
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # log
    log_path = os.path.join(args.logdir, args.task, 'dqn')
    writer = SummaryWriter(log_path)
    logger = BasicLogger(writer)

    def save_fn(policy):
        torch.save(policy.state_dict(), os.path.join(log_path, 'policy.pth'))

    def stop_fn(mean_rewards):
        return mean_rewards >= env.spec.reward_threshold

    def train_fn(epoch, env_step):
        # eps annnealing, just a demo
        if env_step <= 10000:
            policy.set_eps(args.eps_train)
        elif env_step <= 50000:
            eps = args.eps_train - (env_step - 10000) / \
                40000 * (0.9 * args.eps_train)
            policy.set_eps(eps)
        else:
            policy.set_eps(0.1 * args.eps_train)

    def test_fn(epoch, env_step):
        policy.set_eps(args.eps_test)

    # trainer
    result = offpolicy_trainer(policy,
                               train_collector,
                               test_collector,
                               args.epoch,
                               args.step_per_epoch,
                               args.step_per_collect,
                               args.test_num,
                               args.batch_size,
                               update_per_step=args.update_per_step,
                               train_fn=train_fn,
                               test_fn=test_fn,
                               stop_fn=stop_fn,
                               save_fn=save_fn,
                               logger=logger)

    assert stop_fn(result['best_reward'])

    if __name__ == '__main__':
        pprint.pprint(result)
        # Let's watch its performance!
        env = gym.make(args.task)
        policy.eval()
        policy.set_eps(args.eps_test)
        collector = Collector(policy, env)
        result = collector.collect(n_episode=1, render=args.render)
        rews, lens = result["rews"], result["lens"]
        print(f"Final reward: {rews.mean()}, length: {lens.mean()}")

    # save buffer in pickle format, for imitation learning unittest
    buf = VectorReplayBuffer(args.buffer_size, buffer_num=len(test_envs))
    collector = Collector(policy, test_envs, buf)
    collector.collect(n_step=args.buffer_size)
    pickle.dump(buf, open(args.save_buffer_name, "wb"))
コード例 #3
0
ファイル: test_dqn.py プロジェクト: ZhaoliangHe/PerConfigure
def test_dqn(args=get_args()):
    env = gym.make(args.task)
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # train_envs = gym.make(args.task)
    # you can also use tianshou.env.SubprocVectorEnv
    train_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.training_num)])
    # test_envs = gym.make(args.task)
    test_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.test_num)])
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    train_envs.seed(args.seed)
    test_envs.seed(args.seed)
    # model
    net = Net(args.layer_num, args.state_shape,
              args.action_shape, args.device,  # dueling=(1, 1)
              ).to(args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    policy = DQNPolicy(
        net, optim, args.gamma, args.n_step,
        target_update_freq=args.target_update_freq)
    # buffer
    if args.prioritized_replay > 0:
        buf = PrioritizedReplayBuffer(
            args.buffer_size, alpha=args.alpha, beta=args.beta)
    else:
        buf = ReplayBuffer(args.buffer_size)
    # collector
    train_collector = Collector(policy, train_envs, buf)
    test_collector = Collector(policy, test_envs)
    # policy.set_eps(1)
    train_collector.collect(n_step=args.batch_size)
    # log
    log_path = os.path.join(args.logdir, args.task, 'dqn')
    writer = SummaryWriter(log_path)

    def save_fn(policy):
        torch.save(policy.state_dict(), os.path.join(log_path, 'policy.pth'))

    def stop_fn(mean_rewards):
        return mean_rewards >= env.spec.reward_threshold

    def train_fn(epoch, env_step):
        # eps annnealing, just a demo
        if env_step <= 10000:
            policy.set_eps(args.eps_train)
        elif env_step <= 50000:
            eps = args.eps_train - (env_step - 10000) / \
                40000 * (0.9 * args.eps_train)
            policy.set_eps(eps)
        else:
            policy.set_eps(0.1 * args.eps_train)

    def test_fn(epoch, env_step):
        policy.set_eps(args.eps_test)

    # trainer
    result = offpolicy_trainer(
        policy, train_collector, test_collector, args.epoch,
        args.step_per_epoch, args.collect_per_step, args.test_num,
        args.batch_size, train_fn=train_fn, test_fn=test_fn,
        stop_fn=stop_fn, save_fn=save_fn, writer=writer)

    assert stop_fn(result['best_reward'])
    if __name__ == '__main__':
        pprint.pprint(result)
        # Let's watch its performance!
        env = gym.make(args.task)
        policy.eval()
        policy.set_eps(args.eps_test)
        collector = Collector(policy, env)
        result = collector.collect(n_episode=1, render=args.render)
        print(f'Final reward: {result["rew"]}, length: {result["len"]}')
コード例 #4
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def test_dqn(args=get_args()):
    env = gym.make(args.task)
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # train_envs = gym.make(args.task)
    # you can also use tianshou.env.SubprocVectorEnv
    train_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.training_num)])
    # test_envs = gym.make(args.task)
    test_envs = SubprocVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.test_num)])
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    train_envs.seed(args.seed)
    test_envs.seed(args.seed)
    # model
    Q_param = {"hidden_sizes": args.dueling_q_hidden_sizes}
    V_param = {"hidden_sizes": args.dueling_v_hidden_sizes}
    net = Net(args.state_shape,
              args.action_shape,
              hidden_sizes=args.hidden_sizes,
              device=args.device,
              dueling_param=(Q_param, V_param)).to(args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    policy = DQNPolicy(net,
                       optim,
                       args.gamma,
                       args.n_step,
                       target_update_freq=args.target_update_freq)
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                VectorReplayBuffer(args.buffer_size,
                                                   len(train_envs)),
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)
    # policy.set_eps(1)
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # log
    log_path = os.path.join(args.logdir, args.task, 'dqn')
    writer = SummaryWriter(log_path)
    logger = TensorboardLogger(writer)

    def save_fn(policy):
        torch.save(policy.state_dict(), os.path.join(log_path, 'policy.pth'))

    def stop_fn(mean_rewards):
        return mean_rewards >= env.spec.reward_threshold

    def train_fn(epoch, env_step):  # exp decay
        eps = max(args.eps_train * (1 - 5e-6)**env_step, args.eps_test)
        policy.set_eps(eps)

    def test_fn(epoch, env_step):
        policy.set_eps(args.eps_test)

    # trainer
    result = offpolicy_trainer(policy,
                               train_collector,
                               test_collector,
                               args.epoch,
                               args.step_per_epoch,
                               args.step_per_collect,
                               args.test_num,
                               args.batch_size,
                               update_per_step=args.update_per_step,
                               stop_fn=stop_fn,
                               train_fn=train_fn,
                               test_fn=test_fn,
                               save_fn=save_fn,
                               logger=logger)

    assert stop_fn(result['best_reward'])
    if __name__ == '__main__':
        pprint.pprint(result)
        # Let's watch its performance!
        policy.eval()
        policy.set_eps(args.eps_test)
        test_envs.seed(args.seed)
        test_collector.reset()
        result = test_collector.collect(n_episode=args.test_num,
                                        render=args.render)
        rews, lens = result["rews"], result["lens"]
        print(f"Final reward: {rews.mean()}, length: {lens.mean()}")
コード例 #5
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def test_dqn(args=get_args()):
    env = gym.make(args.task)
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # train_envs = gym.make(args.task)
    # you can also use tianshou.env.SubprocVectorEnv
    train_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.training_num)])
    # test_envs = gym.make(args.task)
    test_envs = SubprocVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.test_num)])
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    train_envs.seed(args.seed)
    test_envs.seed(args.seed)
    # model
    net = Net(args.layer_num, args.state_shape,
              args.action_shape, args.device,
              dueling=(2, 2)).to(args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    policy = DQNPolicy(
        net, optim, args.gamma, args.n_step,
        target_update_freq=args.target_update_freq)
    # collector
    train_collector = Collector(
        policy, train_envs, ReplayBuffer(args.buffer_size))
    test_collector = Collector(policy, test_envs)
    # policy.set_eps(1)
    train_collector.collect(n_step=args.batch_size)
    # log
    log_path = os.path.join(args.logdir, args.task, 'dqn')
    writer = SummaryWriter(log_path)

    def save_fn(policy):
        torch.save(policy.state_dict(), os.path.join(log_path, 'policy.pth'))

    def stop_fn(mean_rewards):
        return mean_rewards >= env.spec.reward_threshold

    def train_fn(epoch, env_step):  # exp decay
        eps = max(args.eps_train * (1 - 5e-6) ** env_step, args.eps_test)
        policy.set_eps(eps)

    def test_fn(epoch, env_step):
        policy.set_eps(args.eps_test)

    # trainer
    result = offpolicy_trainer(
        policy, train_collector, test_collector, args.epoch,
        args.step_per_epoch, args.collect_per_step, args.test_num,
        args.batch_size, train_fn=train_fn, test_fn=test_fn,
        stop_fn=stop_fn, save_fn=save_fn, writer=writer,
        test_in_train=False)

    assert stop_fn(result['best_reward'])
    if __name__ == '__main__':
        pprint.pprint(result)
        # Let's watch its performance!
        policy.eval()
        policy.set_eps(args.eps_test)
        test_envs.seed(args.seed)
        test_collector.reset()
        result = test_collector.collect(n_episode=[1] * args.test_num,
                                        render=args.render)
        print(f'Final reward: {result["rew"]}, length: {result["len"]}')
コード例 #6
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ファイル: dqn.py プロジェクト: Daffan/jackal_helper
net = Net(training_config['layer_num'], state_shape, action_shape,
          config['device']).to(config['device'])
optim = torch.optim.Adam(net.parameters(), lr=training_config['learning_rate'])
policy = DQNPolicy(net,
                   optim,
                   training_config['gamma'],
                   training_config['n_step'],
                   target_update_freq=training_config['target_update_freq'])

if training_config['prioritized_replay']:
    buf = PrioritizedReplayBuffer(training_config['buffer_size'],
                                  alpha=training_config['alpha'],
                                  beta=training_config['beta'])
else:
    buf = ReplayBuffer(training_config['buffer_size'])
policy.set_eps(1)
train_collector = Collector(policy, train_envs, buf)
train_collector.collect(n_step=1)

train_fn = lambda e: [
    policy.set_eps(
        max(
            0.05, 1 - e / training_config['epoch'] / training_config[
                'exploration_ratio'])),
    torch.save(policy.state_dict(),
               os.path.join(save_path, 'policy_%d.pth' % (e)))
]

result = offpolicy_trainer(policy,
                           train_collector,
                           training_config['epoch'],
コード例 #7
0
ファイル: test_dqn_icm.py プロジェクト: tongzhoumu/tianshou
def test_dqn_icm(args=get_args()):
    env = gym.make(args.task)
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    if args.reward_threshold is None:
        default_reward_threshold = {"CartPole-v0": 195}
        args.reward_threshold = default_reward_threshold.get(
            args.task, env.spec.reward_threshold)
    # train_envs = gym.make(args.task)
    # you can also use tianshou.env.SubprocVectorEnv
    train_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.training_num)])
    # test_envs = gym.make(args.task)
    test_envs = DummyVectorEnv(
        [lambda: gym.make(args.task) for _ in range(args.test_num)])
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    train_envs.seed(args.seed)
    test_envs.seed(args.seed)
    # Q_param = V_param = {"hidden_sizes": [128]}
    # model
    net = Net(
        args.state_shape,
        args.action_shape,
        hidden_sizes=args.hidden_sizes,
        device=args.device,
        # dueling=(Q_param, V_param),
    ).to(args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    policy = DQNPolicy(
        net,
        optim,
        args.gamma,
        args.n_step,
        target_update_freq=args.target_update_freq,
    )
    feature_dim = args.hidden_sizes[-1]
    feature_net = MLP(np.prod(args.state_shape),
                      output_dim=feature_dim,
                      hidden_sizes=args.hidden_sizes[:-1],
                      device=args.device)
    action_dim = np.prod(args.action_shape)
    icm_net = IntrinsicCuriosityModule(feature_net,
                                       feature_dim,
                                       action_dim,
                                       hidden_sizes=args.hidden_sizes[-1:],
                                       device=args.device).to(args.device)
    icm_optim = torch.optim.Adam(icm_net.parameters(), lr=args.lr)
    policy = ICMPolicy(policy, icm_net, icm_optim, args.lr_scale,
                       args.reward_scale, args.forward_loss_weight)
    # buffer
    if args.prioritized_replay:
        buf = PrioritizedVectorReplayBuffer(
            args.buffer_size,
            buffer_num=len(train_envs),
            alpha=args.alpha,
            beta=args.beta,
        )
    else:
        buf = VectorReplayBuffer(args.buffer_size, buffer_num=len(train_envs))
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                buf,
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)
    # policy.set_eps(1)
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # log
    log_path = os.path.join(args.logdir, args.task, 'dqn_icm')
    writer = SummaryWriter(log_path)
    logger = TensorboardLogger(writer)

    def save_best_fn(policy):
        torch.save(policy.state_dict(), os.path.join(log_path, 'policy.pth'))

    def stop_fn(mean_rewards):
        return mean_rewards >= args.reward_threshold

    def train_fn(epoch, env_step):
        # eps annnealing, just a demo
        if env_step <= 10000:
            policy.set_eps(args.eps_train)
        elif env_step <= 50000:
            eps = args.eps_train - (env_step - 10000) / \
                40000 * (0.9 * args.eps_train)
            policy.set_eps(eps)
        else:
            policy.set_eps(0.1 * args.eps_train)

    def test_fn(epoch, env_step):
        policy.set_eps(args.eps_test)

    # trainer
    result = offpolicy_trainer(
        policy,
        train_collector,
        test_collector,
        args.epoch,
        args.step_per_epoch,
        args.step_per_collect,
        args.test_num,
        args.batch_size,
        update_per_step=args.update_per_step,
        train_fn=train_fn,
        test_fn=test_fn,
        stop_fn=stop_fn,
        save_best_fn=save_best_fn,
        logger=logger,
    )
    assert stop_fn(result['best_reward'])

    if __name__ == '__main__':
        pprint.pprint(result)
        # Let's watch its performance!
        env = gym.make(args.task)
        policy.eval()
        policy.set_eps(args.eps_test)
        collector = Collector(policy, env)
        result = collector.collect(n_episode=1, render=args.render)
        rews, lens = result["rews"], result["lens"]
        print(f"Final reward: {rews.mean()}, length: {lens.mean()}")