示例#1
0
def her_td3_experiment(variant):
    import gym
    import multiworld.envs.mujoco
    import multiworld.envs.pygame
    import railrl.samplers.rollout_functions as rf
    import railrl.torch.pytorch_util as ptu
    from railrl.exploration_strategies.base import (
        PolicyWrappedWithExplorationStrategy)
    from railrl.exploration_strategies.epsilon_greedy import EpsilonGreedy
    from railrl.exploration_strategies.gaussian_strategy import GaussianStrategy
    from railrl.exploration_strategies.ou_strategy import OUStrategy
    from railrl.torch.grill.launcher import get_video_save_func
    from railrl.demos.her_td3bc import HerTD3BC
    from railrl.torch.networks import FlattenMlp, TanhMlpPolicy
    from railrl.data_management.obs_dict_replay_buffer import (
        ObsDictRelabelingBuffer)

    if 'env_id' in variant:
        env = gym.make(variant['env_id'])
    else:
        env = variant['env_class'](**variant['env_kwargs'])

    observation_key = variant['observation_key']
    desired_goal_key = variant['desired_goal_key']
    variant['algo_kwargs']['her_kwargs']['observation_key'] = observation_key
    variant['algo_kwargs']['her_kwargs']['desired_goal_key'] = desired_goal_key
    if variant.get('normalize', False):
        raise NotImplementedError()

    achieved_goal_key = desired_goal_key.replace("desired", "achieved")
    replay_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs'])
    demo_train_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs'])
    demo_test_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs'])
    obs_dim = env.observation_space.spaces['observation'].low.size
    action_dim = env.action_space.low.size
    goal_dim = env.observation_space.spaces['desired_goal'].low.size
    exploration_type = variant['exploration_type']
    if exploration_type == 'ou':
        es = OUStrategy(action_space=env.action_space, **variant['es_kwargs'])
    elif exploration_type == 'gaussian':
        es = GaussianStrategy(
            action_space=env.action_space,
            **variant['es_kwargs'],
        )
    elif exploration_type == 'epsilon':
        es = EpsilonGreedy(
            action_space=env.action_space,
            **variant['es_kwargs'],
        )
    else:
        raise Exception("Invalid type: " + exploration_type)
    qf1 = FlattenMlp(input_size=obs_dim + action_dim + goal_dim,
                     output_size=1,
                     **variant['qf_kwargs'])
    qf2 = FlattenMlp(input_size=obs_dim + action_dim + goal_dim,
                     output_size=1,
                     **variant['qf_kwargs'])
    policy = TanhMlpPolicy(input_size=obs_dim + goal_dim,
                           output_size=action_dim,
                           **variant['policy_kwargs'])
    exploration_policy = PolicyWrappedWithExplorationStrategy(
        exploration_strategy=es,
        policy=policy,
    )
    algorithm = HerTD3BC(env,
                         qf1=qf1,
                         qf2=qf2,
                         policy=policy,
                         exploration_policy=exploration_policy,
                         demo_train_buffer=demo_train_buffer,
                         demo_test_buffer=demo_test_buffer,
                         replay_buffer=replay_buffer,
                         demo_path=variant["demo_path"],
                         **variant['algo_kwargs'])
    if variant.get("save_video", False):
        rollout_function = rf.create_rollout_function(
            rf.multitask_rollout,
            max_path_length=algorithm.max_path_length,
            observation_key=algorithm.observation_key,
            desired_goal_key=algorithm.desired_goal_key,
        )
        video_func = get_video_save_func(
            rollout_function,
            env,
            policy,
            variant,
        )
        algorithm.post_epoch_funcs.append(video_func)
    algorithm.to(ptu.device)
    algorithm.train()
示例#2
0
def grill_her_td3_experiment(variant):
    import railrl.samplers.rollout_functions as rf
    import railrl.torch.pytorch_util as ptu
    from railrl.data_management.obs_dict_replay_buffer import \
        ObsDictRelabelingBuffer
    from railrl.exploration_strategies.base import (
        PolicyWrappedWithExplorationStrategy
    )
    from railrl.demos.her_td3bc import HerTD3BC
    from railrl.torch.networks import FlattenMlp, TanhMlpPolicy
    grill_preprocess_variant(variant)
    env = get_envs(variant)
    es = get_exploration_strategy(variant, env)

    observation_key = variant.get('observation_key', 'latent_observation')
    desired_goal_key = variant.get('desired_goal_key', 'latent_desired_goal')
    achieved_goal_key = desired_goal_key.replace("desired", "achieved")
    obs_dim = (
            env.observation_space.spaces[observation_key].low.size
            + env.observation_space.spaces[desired_goal_key].low.size
    )
    action_dim = env.action_space.low.size
    qf1 = FlattenMlp(
        input_size=obs_dim + action_dim,
        output_size=1,
        **variant['qf_kwargs']
    )
    qf2 = FlattenMlp(
        input_size=obs_dim + action_dim,
        output_size=1,
        **variant['qf_kwargs']
    )
    policy = TanhMlpPolicy(
        input_size=obs_dim,
        output_size=action_dim,
        **variant['policy_kwargs']
    )
    exploration_policy = PolicyWrappedWithExplorationStrategy(
        exploration_strategy=es,
        policy=policy,
    )

    replay_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs']
    )
    demo_train_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs']
    )
    demo_test_buffer = ObsDictRelabelingBuffer(
        env=env,
        observation_key=observation_key,
        desired_goal_key=desired_goal_key,
        achieved_goal_key=achieved_goal_key,
        **variant['replay_buffer_kwargs']
    )

    algo_kwargs = variant['algo_kwargs']
    algo_kwargs['replay_buffer'] = replay_buffer
    base_kwargs = algo_kwargs['base_kwargs']
    base_kwargs['training_env'] = env
    base_kwargs['render'] = variant["render"]
    base_kwargs['render_during_eval'] = variant["render"]
    her_kwargs = algo_kwargs['her_kwargs']
    her_kwargs['observation_key'] = observation_key
    her_kwargs['desired_goal_key'] = desired_goal_key
    # algorithm = HerTd3(
    #     env,
    #     qf1=qf1,
    #     qf2=qf2,
    #     policy=policy,
    #     exploration_policy=exploration_policy,
    #     **variant['algo_kwargs']
    # )
    env.vae.to(ptu.device)

    algorithm = HerTD3BC(
        env,
        qf1=qf1,
        qf2=qf2,
        policy=policy,
        exploration_policy=exploration_policy,
        demo_train_buffer=demo_train_buffer,
        demo_test_buffer=demo_test_buffer,
        demo_path=variant["demo_path"],
        add_demo_latents=True,
        **variant['algo_kwargs']
    )

    if variant.get("save_video", True):
        rollout_function = rf.create_rollout_function(
            rf.multitask_rollout,
            max_path_length=algorithm.max_path_length,
            observation_key=algorithm.observation_key,
            desired_goal_key=algorithm.desired_goal_key,
        )
        video_func = get_video_save_func(
            rollout_function,
            env,
            algorithm.eval_policy,
            variant,
        )
        algorithm.post_epoch_funcs.append(video_func)

    algorithm.to(ptu.device)
    if not variant.get("do_state_exp", False):
        env.vae.to(ptu.device)

    algorithm.train()