Ejemplo n.º 1
0
def test_ppo(args=get_args()):
    env, train_envs, test_envs = make_atari_env(
        args.task,
        args.seed,
        args.training_num,
        args.test_num,
        scale=args.scale_obs,
        frame_stack=args.frames_stack,
    )
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # should be N_FRAMES x H x W
    print("Observations shape:", args.state_shape)
    print("Actions shape:", args.action_shape)
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    # define model
    net = DQN(*args.state_shape,
              args.action_shape,
              device=args.device,
              features_only=True,
              output_dim=args.hidden_size)
    actor = Actor(net,
                  args.action_shape,
                  device=args.device,
                  softmax_output=False)
    critic = Critic(net, device=args.device)
    optim = torch.optim.Adam(ActorCritic(actor, critic).parameters(),
                             lr=args.lr)

    lr_scheduler = None
    if args.lr_decay:
        # decay learning rate to 0 linearly
        max_update_num = np.ceil(
            args.step_per_epoch / args.step_per_collect) * args.epoch

        lr_scheduler = LambdaLR(
            optim, lr_lambda=lambda epoch: 1 - epoch / max_update_num)

    # define policy
    def dist(p):
        return torch.distributions.Categorical(logits=p)

    policy = PPOPolicy(
        actor,
        critic,
        optim,
        dist,
        discount_factor=args.gamma,
        gae_lambda=args.gae_lambda,
        max_grad_norm=args.max_grad_norm,
        vf_coef=args.vf_coef,
        ent_coef=args.ent_coef,
        reward_normalization=args.rew_norm,
        action_scaling=False,
        lr_scheduler=lr_scheduler,
        action_space=env.action_space,
        eps_clip=args.eps_clip,
        value_clip=args.value_clip,
        dual_clip=args.dual_clip,
        advantage_normalization=args.norm_adv,
        recompute_advantage=args.recompute_adv,
    ).to(args.device)
    if args.icm_lr_scale > 0:
        feature_net = DQN(*args.state_shape,
                          args.action_shape,
                          args.device,
                          features_only=True)
        action_dim = np.prod(args.action_shape)
        feature_dim = feature_net.output_dim
        icm_net = IntrinsicCuriosityModule(
            feature_net.net,
            feature_dim,
            action_dim,
            hidden_sizes=args.hidden_sizes,
            device=args.device,
        )
        icm_optim = torch.optim.Adam(icm_net.parameters(), lr=args.lr)
        policy = ICMPolicy(policy, icm_net, icm_optim, args.icm_lr_scale,
                           args.icm_reward_scale,
                           args.icm_forward_loss_weight).to(args.device)
    # load a previous policy
    if args.resume_path:
        policy.load_state_dict(
            torch.load(args.resume_path, map_location=args.device))
        print("Loaded agent from: ", args.resume_path)
    # replay buffer: `save_last_obs` and `stack_num` can be removed together
    # when you have enough RAM
    buffer = VectorReplayBuffer(
        args.buffer_size,
        buffer_num=len(train_envs),
        ignore_obs_next=True,
        save_only_last_obs=True,
        stack_num=args.frames_stack,
    )
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                buffer,
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)

    # log
    now = datetime.datetime.now().strftime("%y%m%d-%H%M%S")
    args.algo_name = "ppo_icm" if args.icm_lr_scale > 0 else "ppo"
    log_name = os.path.join(args.task, args.algo_name, str(args.seed), now)
    log_path = os.path.join(args.logdir, log_name)

    # logger
    if args.logger == "wandb":
        logger = WandbLogger(
            save_interval=1,
            name=log_name.replace(os.path.sep, "__"),
            run_id=args.resume_id,
            config=args,
            project=args.wandb_project,
        )
    writer = SummaryWriter(log_path)
    writer.add_text("args", str(args))
    if args.logger == "tensorboard":
        logger = TensorboardLogger(writer)
    else:  # wandb
        logger.load(writer)

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

    def stop_fn(mean_rewards):
        if env.spec.reward_threshold:
            return mean_rewards >= env.spec.reward_threshold
        elif "Pong" in args.task:
            return mean_rewards >= 20
        else:
            return False

    def save_checkpoint_fn(epoch, env_step, gradient_step):
        # see also: https://pytorch.org/tutorials/beginner/saving_loading_models.html
        ckpt_path = os.path.join(log_path, "checkpoint.pth")
        torch.save({"model": policy.state_dict()}, ckpt_path)
        return ckpt_path

    # watch agent's performance
    def watch():
        print("Setup test envs ...")
        policy.eval()
        test_envs.seed(args.seed)
        if args.save_buffer_name:
            print(f"Generate buffer with size {args.buffer_size}")
            buffer = VectorReplayBuffer(
                args.buffer_size,
                buffer_num=len(test_envs),
                ignore_obs_next=True,
                save_only_last_obs=True,
                stack_num=args.frames_stack,
            )
            collector = Collector(policy,
                                  test_envs,
                                  buffer,
                                  exploration_noise=True)
            result = collector.collect(n_step=args.buffer_size)
            print(f"Save buffer into {args.save_buffer_name}")
            # Unfortunately, pickle will cause oom with 1M buffer size
            buffer.save_hdf5(args.save_buffer_name)
        else:
            print("Testing agent ...")
            test_collector.reset()
            result = test_collector.collect(n_episode=args.test_num,
                                            render=args.render)
        rew = result["rews"].mean()
        print(f"Mean reward (over {result['n/ep']} episodes): {rew}")

    if args.watch:
        watch()
        exit(0)

    # test train_collector and start filling replay buffer
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # trainer
    result = onpolicy_trainer(
        policy,
        train_collector,
        test_collector,
        args.epoch,
        args.step_per_epoch,
        args.repeat_per_collect,
        args.test_num,
        args.batch_size,
        step_per_collect=args.step_per_collect,
        stop_fn=stop_fn,
        save_best_fn=save_best_fn,
        logger=logger,
        test_in_train=False,
        resume_from_log=args.resume_id is not None,
        save_checkpoint_fn=save_checkpoint_fn,
    )

    pprint.pprint(result)
    watch()
Ejemplo n.º 2
0
def test_qrdqn(args=get_args()):
    env, train_envs, test_envs = make_atari_env(
        args.task,
        args.seed,
        args.training_num,
        args.test_num,
        scale=args.scale_obs,
        frame_stack=args.frames_stack,
    )
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # should be N_FRAMES x H x W
    print("Observations shape:", args.state_shape)
    print("Actions shape:", args.action_shape)
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    # define model
    net = QRDQN(*args.state_shape, args.action_shape, args.num_quantiles,
                args.device)
    optim = torch.optim.Adam(net.parameters(), lr=args.lr)
    # define policy
    policy = QRDQNPolicy(net,
                         optim,
                         args.gamma,
                         args.num_quantiles,
                         args.n_step,
                         target_update_freq=args.target_update_freq).to(
                             args.device)
    # load a previous policy
    if args.resume_path:
        policy.load_state_dict(
            torch.load(args.resume_path, map_location=args.device))
        print("Loaded agent from: ", args.resume_path)
    # replay buffer: `save_last_obs` and `stack_num` can be removed together
    # when you have enough RAM
    buffer = VectorReplayBuffer(args.buffer_size,
                                buffer_num=len(train_envs),
                                ignore_obs_next=True,
                                save_only_last_obs=True,
                                stack_num=args.frames_stack)
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                buffer,
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)

    # log
    now = datetime.datetime.now().strftime("%y%m%d-%H%M%S")
    args.algo_name = "qrdqn"
    log_name = os.path.join(args.task, args.algo_name, str(args.seed), now)
    log_path = os.path.join(args.logdir, log_name)

    # logger
    if args.logger == "wandb":
        logger = WandbLogger(
            save_interval=1,
            name=log_name.replace(os.path.sep, "__"),
            run_id=args.resume_id,
            config=args,
            project=args.wandb_project,
        )
    writer = SummaryWriter(log_path)
    writer.add_text("args", str(args))
    if args.logger == "tensorboard":
        logger = TensorboardLogger(writer)
    else:  # wandb
        logger.load(writer)

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

    def stop_fn(mean_rewards):
        if env.spec.reward_threshold:
            return mean_rewards >= env.spec.reward_threshold
        elif "Pong" in args.task:
            return mean_rewards >= 20
        else:
            return False

    def train_fn(epoch, env_step):
        # nature DQN setting, linear decay in the first 1M steps
        if env_step <= 1e6:
            eps = args.eps_train - env_step / 1e6 * \
                (args.eps_train - args.eps_train_final)
        else:
            eps = args.eps_train_final
        policy.set_eps(eps)
        if env_step % 1000 == 0:
            logger.write("train/env_step", env_step, {"train/eps": eps})

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

    # watch agent's performance
    def watch():
        print("Setup test envs ...")
        policy.eval()
        policy.set_eps(args.eps_test)
        test_envs.seed(args.seed)
        if args.save_buffer_name:
            print(f"Generate buffer with size {args.buffer_size}")
            buffer = VectorReplayBuffer(args.buffer_size,
                                        buffer_num=len(test_envs),
                                        ignore_obs_next=True,
                                        save_only_last_obs=True,
                                        stack_num=args.frames_stack)
            collector = Collector(policy,
                                  test_envs,
                                  buffer,
                                  exploration_noise=True)
            result = collector.collect(n_step=args.buffer_size)
            print(f"Save buffer into {args.save_buffer_name}")
            # Unfortunately, pickle will cause oom with 1M buffer size
            buffer.save_hdf5(args.save_buffer_name)
        else:
            print("Testing agent ...")
            test_collector.reset()
            result = test_collector.collect(n_episode=args.test_num,
                                            render=args.render)
        rew = result["rews"].mean()
        print(f"Mean reward (over {result['n/ep']} episodes): {rew}")

    if args.watch:
        watch()
        exit(0)

    # test train_collector and start filling replay buffer
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # 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,
        train_fn=train_fn,
        test_fn=test_fn,
        stop_fn=stop_fn,
        save_best_fn=save_best_fn,
        logger=logger,
        update_per_step=args.update_per_step,
        test_in_train=False,
    )

    pprint.pprint(result)
    watch()
Ejemplo n.º 3
0
def test_discrete_sac(args=get_args()):
    env, train_envs, test_envs = make_atari_env(
        args.task,
        args.seed,
        args.training_num,
        args.test_num,
        scale=args.scale_obs,
        frame_stack=args.frames_stack,
    )
    args.state_shape = env.observation_space.shape or env.observation_space.n
    args.action_shape = env.action_space.shape or env.action_space.n
    # should be N_FRAMES x H x W
    print("Observations shape:", args.state_shape)
    print("Actions shape:", args.action_shape)
    # seed
    np.random.seed(args.seed)
    torch.manual_seed(args.seed)
    # define model
    net = DQN(*args.state_shape,
              args.action_shape,
              device=args.device,
              features_only=True,
              output_dim=args.hidden_size)
    actor = Actor(net,
                  args.action_shape,
                  device=args.device,
                  softmax_output=False)
    actor_optim = torch.optim.Adam(actor.parameters(), lr=args.actor_lr)
    critic1 = Critic(net, last_size=args.action_shape, device=args.device)
    critic1_optim = torch.optim.Adam(critic1.parameters(), lr=args.critic_lr)
    critic2 = Critic(net, last_size=args.action_shape, device=args.device)
    critic2_optim = torch.optim.Adam(critic2.parameters(), lr=args.critic_lr)

    # define policy
    if args.auto_alpha:
        target_entropy = 0.98 * np.log(np.prod(args.action_shape))
        log_alpha = torch.zeros(1, requires_grad=True, device=args.device)
        alpha_optim = torch.optim.Adam([log_alpha], lr=args.alpha_lr)
        args.alpha = (target_entropy, log_alpha, alpha_optim)

    policy = DiscreteSACPolicy(
        actor,
        actor_optim,
        critic1,
        critic1_optim,
        critic2,
        critic2_optim,
        args.tau,
        args.gamma,
        args.alpha,
        estimation_step=args.n_step,
        reward_normalization=args.rew_norm,
    ).to(args.device)
    if args.icm_lr_scale > 0:
        feature_net = DQN(*args.state_shape,
                          args.action_shape,
                          args.device,
                          features_only=True)
        action_dim = np.prod(args.action_shape)
        feature_dim = feature_net.output_dim
        icm_net = IntrinsicCuriosityModule(
            feature_net.net,
            feature_dim,
            action_dim,
            hidden_sizes=[args.hidden_size],
            device=args.device,
        )
        icm_optim = torch.optim.Adam(icm_net.parameters(), lr=args.actor_lr)
        policy = ICMPolicy(policy, icm_net, icm_optim, args.icm_lr_scale,
                           args.icm_reward_scale,
                           args.icm_forward_loss_weight).to(args.device)
    # load a previous policy
    if args.resume_path:
        policy.load_state_dict(
            torch.load(args.resume_path, map_location=args.device))
        print("Loaded agent from: ", args.resume_path)
    # replay buffer: `save_last_obs` and `stack_num` can be removed together
    # when you have enough RAM
    buffer = VectorReplayBuffer(
        args.buffer_size,
        buffer_num=len(train_envs),
        ignore_obs_next=True,
        save_only_last_obs=True,
        stack_num=args.frames_stack,
    )
    # collector
    train_collector = Collector(policy,
                                train_envs,
                                buffer,
                                exploration_noise=True)
    test_collector = Collector(policy, test_envs, exploration_noise=True)

    # log
    now = datetime.datetime.now().strftime("%y%m%d-%H%M%S")
    args.algo_name = "discrete_sac_icm" if args.icm_lr_scale > 0 else "discrete_sac"
    log_name = os.path.join(args.task, args.algo_name, str(args.seed), now)
    log_path = os.path.join(args.logdir, log_name)

    # logger
    if args.logger == "wandb":
        logger = WandbLogger(
            save_interval=1,
            name=log_name.replace(os.path.sep, "__"),
            run_id=args.resume_id,
            config=args,
            project=args.wandb_project,
        )
    writer = SummaryWriter(log_path)
    writer.add_text("args", str(args))
    if args.logger == "tensorboard":
        logger = TensorboardLogger(writer)
    else:  # wandb
        logger.load(writer)

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

    def stop_fn(mean_rewards):
        if env.spec.reward_threshold:
            return mean_rewards >= env.spec.reward_threshold
        elif "Pong" in args.task:
            return mean_rewards >= 20
        else:
            return False

    def save_checkpoint_fn(epoch, env_step, gradient_step):
        # see also: https://pytorch.org/tutorials/beginner/saving_loading_models.html
        ckpt_path = os.path.join(log_path, "checkpoint.pth")
        torch.save({"model": policy.state_dict()}, ckpt_path)
        return ckpt_path

    # watch agent's performance
    def watch():
        print("Setup test envs ...")
        policy.eval()
        test_envs.seed(args.seed)
        if args.save_buffer_name:
            print(f"Generate buffer with size {args.buffer_size}")
            buffer = VectorReplayBuffer(
                args.buffer_size,
                buffer_num=len(test_envs),
                ignore_obs_next=True,
                save_only_last_obs=True,
                stack_num=args.frames_stack,
            )
            collector = Collector(policy,
                                  test_envs,
                                  buffer,
                                  exploration_noise=True)
            result = collector.collect(n_step=args.buffer_size)
            print(f"Save buffer into {args.save_buffer_name}")
            # Unfortunately, pickle will cause oom with 1M buffer size
            buffer.save_hdf5(args.save_buffer_name)
        else:
            print("Testing agent ...")
            test_collector.reset()
            result = test_collector.collect(n_episode=args.test_num,
                                            render=args.render)
        rew = result["rews"].mean()
        print(f"Mean reward (over {result['n/ep']} episodes): {rew}")

    if args.watch:
        watch()
        exit(0)

    # test train_collector and start filling replay buffer
    train_collector.collect(n_step=args.batch_size * args.training_num)
    # 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,
        stop_fn=stop_fn,
        save_best_fn=save_best_fn,
        logger=logger,
        update_per_step=args.update_per_step,
        test_in_train=False,
        resume_from_log=args.resume_id is not None,
        save_checkpoint_fn=save_checkpoint_fn,
    )

    pprint.pprint(result)
    watch()