Esempio n. 1
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def load_pearl(env_name="CartPole-v0"):
    """Return an instance of the PEARL algorithm.

    NOTE: currently not working.

    """
    num_train_tasks = 100
    num_test_tasks = 30
    latent_size = 5
    net_size = 300
    encoder_hidden_size = 200
    encoder_hidden_sizes = (encoder_hidden_size, encoder_hidden_size,
                            encoder_hidden_size)

    # Create multi-task environment and sample tasks.
    env_start = GarageEnv(env_name=env_name)
    env_sampler = SetTaskSampler(lambda: GarageEnv(normalize(env_start)))
    env = env_sampler.sample(num_train_tasks)
    test_env_sampler = SetTaskSampler(lambda: GarageEnv(normalize(env_start)))

    # Instantiate networks.
    augmented_env = PEARL.augment_env_spec(env[0](), latent_size)
    qf = ContinuousMLPQFunction(env_spec=augmented_env,
                                hidden_sizes=[net_size, net_size, net_size])

    vf_env = PEARL.get_env_spec(env[0](), latent_size, 'vf')
    vf = ContinuousMLPQFunction(env_spec=vf_env,
                                hidden_sizes=[net_size, net_size, net_size])

    inner_policy = TanhGaussianMLPPolicy(
        env_spec=augmented_env, hidden_sizes=[net_size, net_size, net_size])

    pearl = PEARL(env=env,
                  inner_policy=inner_policy,
                  qf=qf,
                  vf=vf,
                  num_train_tasks=num_train_tasks,
                  num_test_tasks=num_test_tasks,
                  latent_dim=latent_size,
                  encoder_hidden_sizes=encoder_hidden_sizes,
                  test_env_sampler=test_env_sampler)
    return pearl
Esempio n. 2
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    def test_pickling(self):
        """Test pickle and unpickle."""
        net_size = 10
        env_sampler = SetTaskSampler(PointEnv)
        env = env_sampler.sample(5)

        test_env_sampler = SetTaskSampler(PointEnv)

        augmented_env = PEARL.augment_env_spec(env[0](), 5)
        qf = ContinuousMLPQFunction(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        vf_env = PEARL.get_env_spec(env[0](), 5, 'vf')
        vf = ContinuousMLPQFunction(
            env_spec=vf_env, hidden_sizes=[net_size, net_size, net_size])

        inner_policy = TanhGaussianMLPPolicy(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        pearl = PEARL(env=env,
                      inner_policy=inner_policy,
                      qf=qf,
                      vf=vf,
                      num_train_tasks=5,
                      num_test_tasks=5,
                      latent_dim=5,
                      encoder_hidden_sizes=[10, 10],
                      test_env_sampler=test_env_sampler)

        # This line is just to improve coverage
        pearl.to()

        pickled = pickle.dumps(pearl)
        unpickled = pickle.loads(pickled)

        assert hasattr(unpickled, '_replay_buffers')
        assert hasattr(unpickled, '_context_replay_buffers')
        assert unpickled._is_resuming
Esempio n. 3
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    def test_pearl_ml1_push(self):
        """Test PEARL with ML1 Push environment."""
        params = dict(seed=1,
                      num_epochs=1,
                      num_train_tasks=5,
                      latent_size=7,
                      encoder_hidden_sizes=[10, 10, 10],
                      net_size=30,
                      meta_batch_size=16,
                      num_steps_per_epoch=40,
                      num_initial_steps=40,
                      num_tasks_sample=15,
                      num_steps_prior=15,
                      num_extra_rl_steps_posterior=15,
                      batch_size=256,
                      embedding_batch_size=8,
                      embedding_mini_batch_size=8,
                      reward_scale=10.,
                      use_information_bottleneck=True,
                      use_next_obs_in_context=False,
                      use_gpu=False)

        net_size = params['net_size']
        set_seed(params['seed'])
        # create multi-task environment and sample tasks
        ml1 = metaworld.ML1('push-v1')
        train_env = MetaWorldSetTaskEnv(ml1, 'train')
        env_sampler = SetTaskSampler(MetaWorldSetTaskEnv,
                                     env=train_env,
                                     wrapper=lambda env, _: normalize(env))
        env = env_sampler.sample(params['num_train_tasks'])
        test_env = MetaWorldSetTaskEnv(ml1, 'test')
        test_env_sampler = SetTaskSampler(
            MetaWorldSetTaskEnv,
            env=test_env,
            wrapper=lambda env, _: normalize(env))

        augmented_env = PEARL.augment_env_spec(env[0](), params['latent_size'])
        qf = ContinuousMLPQFunction(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        vf_env = PEARL.get_env_spec(env[0](), params['latent_size'], 'vf')
        vf = ContinuousMLPQFunction(
            env_spec=vf_env, hidden_sizes=[net_size, net_size, net_size])

        inner_policy = TanhGaussianMLPPolicy(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        pearl = PEARL(
            env=env,
            policy_class=ContextConditionedPolicy,
            encoder_class=MLPEncoder,
            inner_policy=inner_policy,
            qf=qf,
            vf=vf,
            num_train_tasks=params['num_train_tasks'],
            latent_dim=params['latent_size'],
            encoder_hidden_sizes=params['encoder_hidden_sizes'],
            test_env_sampler=test_env_sampler,
            meta_batch_size=params['meta_batch_size'],
            num_steps_per_epoch=params['num_steps_per_epoch'],
            num_initial_steps=params['num_initial_steps'],
            num_tasks_sample=params['num_tasks_sample'],
            num_steps_prior=params['num_steps_prior'],
            num_extra_rl_steps_posterior=params[
                'num_extra_rl_steps_posterior'],
            batch_size=params['batch_size'],
            embedding_batch_size=params['embedding_batch_size'],
            embedding_mini_batch_size=params['embedding_mini_batch_size'],
            reward_scale=params['reward_scale'],
        )

        set_gpu_mode(params['use_gpu'], gpu_id=0)
        if params['use_gpu']:
            pearl.to()

        trainer = Trainer(snapshot_config)
        trainer.setup(algo=pearl,
                      env=env[0](),
                      sampler_cls=LocalSampler,
                      n_workers=1,
                      worker_class=PEARLWorker)

        trainer.train(n_epochs=params['num_epochs'],
                      batch_size=params['batch_size'])
Esempio n. 4
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def pearl_metaworld_ml10(ctxt=None,
                         seed=1,
                         num_epochs=1000,
                         num_train_tasks=10,
                         latent_size=7,
                         encoder_hidden_size=200,
                         net_size=300,
                         meta_batch_size=16,
                         num_steps_per_epoch=4000,
                         num_initial_steps=4000,
                         num_tasks_sample=15,
                         num_steps_prior=750,
                         num_extra_rl_steps_posterior=750,
                         batch_size=256,
                         embedding_batch_size=64,
                         embedding_mini_batch_size=64,
                         reward_scale=10.,
                         use_gpu=False):
    """Train PEARL with ML10 environments.

    Args:
        ctxt (garage.experiment.ExperimentContext): The experiment
            configuration used by Trainer to create the snapshotter.
        seed (int): Used to seed the random number generator to produce
            determinism.
        num_epochs (int): Number of training epochs.
        num_train_tasks (int): Number of tasks for training.
        latent_size (int): Size of latent context vector.
        encoder_hidden_size (int): Output dimension of dense layer of the
            context encoder.
        net_size (int): Output dimension of a dense layer of Q-function and
            value function.
        meta_batch_size (int): Meta batch size.
        num_steps_per_epoch (int): Number of iterations per epoch.
        num_initial_steps (int): Number of transitions obtained per task before
            training.
        num_tasks_sample (int): Number of random tasks to obtain data for each
            iteration.
        num_steps_prior (int): Number of transitions to obtain per task with
            z ~ prior.
        num_extra_rl_steps_posterior (int): Number of additional transitions
            to obtain per task with z ~ posterior that are only used to train
            the policy and NOT the encoder.
        batch_size (int): Number of transitions in RL batch.
        embedding_batch_size (int): Number of transitions in context batch.
        embedding_mini_batch_size (int): Number of transitions in mini context
            batch; should be same as embedding_batch_size for non-recurrent
            encoder.
        reward_scale (int): Reward scale.
        use_gpu (bool): Whether or not to use GPU for training.

    """
    set_seed(seed)
    encoder_hidden_sizes = (encoder_hidden_size, encoder_hidden_size,
                            encoder_hidden_size)
    ml10 = metaworld.ML10()
    train_env = MetaWorldSetTaskEnv(ml10, 'train')
    env_sampler = SetTaskSampler(MetaWorldSetTaskEnv,
                                 env=train_env,
                                 wrapper=lambda env, _: normalize(env))
    env = env_sampler.sample(num_train_tasks)
    test_env = MetaWorldSetTaskEnv(ml10, 'test')
    test_env_sampler = SetTaskSampler(MetaWorldSetTaskEnv,
                                      env=test_env,
                                      wrapper=lambda env, _: normalize(env))

    trainer = Trainer(ctxt)

    # instantiate networks
    augmented_env = PEARL.augment_env_spec(env[0](), latent_size)
    qf = ContinuousMLPQFunction(env_spec=augmented_env,
                                hidden_sizes=[net_size, net_size, net_size])

    vf_env = PEARL.get_env_spec(env[0](), latent_size, 'vf')
    vf = ContinuousMLPQFunction(env_spec=vf_env,
                                hidden_sizes=[net_size, net_size, net_size])

    inner_policy = TanhGaussianMLPPolicy(
        env_spec=augmented_env, hidden_sizes=[net_size, net_size, net_size])

    pearl = PEARL(
        env=env,
        policy_class=ContextConditionedPolicy,
        encoder_class=MLPEncoder,
        inner_policy=inner_policy,
        qf=qf,
        vf=vf,
        num_train_tasks=num_train_tasks,
        latent_dim=latent_size,
        encoder_hidden_sizes=encoder_hidden_sizes,
        test_env_sampler=test_env_sampler,
        meta_batch_size=meta_batch_size,
        num_steps_per_epoch=num_steps_per_epoch,
        num_initial_steps=num_initial_steps,
        num_tasks_sample=num_tasks_sample,
        num_steps_prior=num_steps_prior,
        num_extra_rl_steps_posterior=num_extra_rl_steps_posterior,
        batch_size=batch_size,
        embedding_batch_size=embedding_batch_size,
        embedding_mini_batch_size=embedding_mini_batch_size,
        reward_scale=reward_scale,
    )

    set_gpu_mode(use_gpu, gpu_id=0)
    if use_gpu:
        pearl.to()

    trainer.setup(algo=pearl,
                  env=env[0](),
                  sampler_cls=LocalSampler,
                  n_workers=1,
                  worker_class=PEARLWorker)

    trainer.train(n_epochs=num_epochs, batch_size=batch_size)
Esempio n. 5
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def pearl_half_cheetah(
        ctxt=None,
        seed=1,
        num_epochs=param_num_epoches,
        num_train_tasks=param_train_tasks_num,
        num_test_tasks=param_test_tasks_num,
        latent_size=param_latent_size,
        encoder_hidden_size=param_encoder_hidden_size,
        net_size=param_net_size,
        meta_batch_size=param_meta_batch_size,
        num_steps_per_epoch=param_num_steps_per_epoch,
        num_initial_steps=param_num_initial_steps,
        num_tasks_sample=param_num_tasks_sample,
        num_steps_prior=param_num_steps_prior,
        num_extra_rl_steps_posterior=param_num_extra_rl_steps_posterior,
        batch_size=param_batch_size,
        embedding_batch_size=param_embedding_batch_size,
        embedding_mini_batch_size=param_embedding_mini_batch_size,
        max_path_length=param_max_path_length,
        reward_scale=param_reward_scale,
        use_gpu=param_use_gpu):
    set_seed(seed)
    encoder_hidden_sizes = (encoder_hidden_size, encoder_hidden_size,
                            encoder_hidden_size)
    # create multi-task environment and sample tasks
    env_sampler = SetTaskSampler(
        lambda: GarageEnv(normalize(HalfCheetahVelEnv())))
    env = env_sampler.sample(num_train_tasks)
    test_env_sampler = SetTaskSampler(
        lambda: GarageEnv(normalize(HalfCheetahVelEnv())))

    runner = LocalRunner(ctxt)

    # instantiate networks
    augmented_env = PEARL.augment_env_spec(env[0](), latent_size)
    qf = ContinuousMLPQFunction(env_spec=augmented_env,
                                hidden_sizes=[net_size, net_size, net_size])

    vf_env = PEARL.get_env_spec(env[0](), latent_size, 'vf')
    vf = ContinuousMLPQFunction(env_spec=vf_env,
                                hidden_sizes=[net_size, net_size, net_size])

    inner_policy = TanhGaussianMLPPolicy(
        env_spec=augmented_env, hidden_sizes=[net_size, net_size, net_size])

    pearl = PEARL(
        env=env,
        policy_class=ContextConditionedPolicy,
        encoder_class=MLPEncoder,
        inner_policy=inner_policy,
        qf=qf,
        vf=vf,
        num_train_tasks=num_train_tasks,
        num_test_tasks=num_test_tasks,
        latent_dim=latent_size,
        encoder_hidden_sizes=encoder_hidden_sizes,
        test_env_sampler=test_env_sampler,
        meta_batch_size=meta_batch_size,
        num_steps_per_epoch=num_steps_per_epoch,
        num_initial_steps=num_initial_steps,
        num_tasks_sample=num_tasks_sample,
        num_steps_prior=num_steps_prior,
        num_extra_rl_steps_posterior=num_extra_rl_steps_posterior,
        batch_size=batch_size,
        embedding_batch_size=embedding_batch_size,
        embedding_mini_batch_size=embedding_mini_batch_size,
        max_path_length=max_path_length,
        reward_scale=reward_scale,
    )

    tu.set_gpu_mode(use_gpu, gpu_id=0)
    if use_gpu:
        pearl.to()

    runner.setup(algo=pearl,
                 env=env[0](),
                 sampler_cls=LocalSampler,
                 sampler_args=dict(max_path_length=max_path_length),
                 n_workers=1,
                 worker_class=PEARLWorker)

    average_returns = runner.train(n_epochs=num_epochs, batch_size=batch_size)
    runner.save(num_epochs - 1)

    return average_returns
Esempio n. 6
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def diayn_pearl_half_cheeth(
        ctxt=None,
        seed=1,
        num_epochs=param_num_epoches,
        num_train_tasks=param_train_tasks_num,
        num_test_tasks=param_test_tasks_num,
        latent_size=param_latent_size,
        encoder_hidden_size=param_encoder_hidden_size,
        net_size=param_net_size,
        meta_batch_size=param_meta_batch_size,
        num_steps_per_epoch=param_num_steps_per_epoch,
        num_initial_steps=param_num_initial_steps,
        num_tasks_sample=param_num_tasks_sample,
        num_steps_prior=param_num_steps_prior,
        num_extra_rl_steps_posterior=param_num_extra_rl_steps_posterior,
        batch_size=param_batch_size,
        embedding_batch_size=param_embedding_batch_size,
        embedding_mini_batch_size=param_embedding_mini_batch_size,
        max_path_length=param_max_path_length,
        reward_scale=param_reward_scale,
        use_gpu=param_use_gpu):
    if task_proposer is None:
        raise ValueError("Task proposer is empty")

    assert num_train_tasks is skills_num

    set_seed(seed)
    encoder_hidden_sizes = (encoder_hidden_size, encoder_hidden_size,
                            encoder_hidden_size)
    # create multi-task environment and sample tasks

    ML_train_envs = [
        DiaynEnvWrapper(task_proposer, skills_num, task_name,
                        normalize(HalfCheetahVelEnv()))
        for task_name in range(skills_num)
    ]
    env_sampler = EnvPoolSampler(ML_train_envs)
    env = env_sampler.sample(num_train_tasks)

    # train_trajs_dist = [train_env.get_training_traj(diayn_trained_agent)
    #               for train_env in ML_train_envs]

    # ML_test_envs = [
    #     GarageEnv(normalize(
    #         DiaynEnvWrapper(env, task_proposer, skills_num, task_name)))
    #     for task_name in random.sample(range(skills_num), test_tasks_num)
    # ]

    test_env_sampler = SetTaskSampler(
        lambda: GarageEnv(normalize(HalfCheetahVelEnv())))

    runner = LocalRunner(ctxt)

    # instantiate networks
    augmented_env = PEARL.augment_env_spec(env[0](), latent_size)
    qf = ContinuousMLPQFunction(env_spec=augmented_env,
                                hidden_sizes=[net_size, net_size, net_size])

    vf_env = PEARL.get_env_spec(env[0](), latent_size, 'vf')
    vf = ContinuousMLPQFunction(env_spec=vf_env,
                                hidden_sizes=[net_size, net_size, net_size])

    inner_policy = TanhGaussianMLPPolicy(
        env_spec=augmented_env, hidden_sizes=[net_size, net_size, net_size])

    pearl = PEARL(
        env=env,
        policy_class=ContextConditionedPolicy,
        encoder_class=MLPEncoder,
        inner_policy=inner_policy,
        qf=qf,
        vf=vf,
        num_train_tasks=num_train_tasks,
        num_test_tasks=num_test_tasks,
        latent_dim=latent_size,
        encoder_hidden_sizes=encoder_hidden_sizes,
        test_env_sampler=test_env_sampler,
        meta_batch_size=meta_batch_size,
        num_steps_per_epoch=num_steps_per_epoch,
        num_initial_steps=num_initial_steps,
        num_tasks_sample=num_tasks_sample,
        num_steps_prior=num_steps_prior,
        num_extra_rl_steps_posterior=num_extra_rl_steps_posterior,
        batch_size=batch_size,
        embedding_batch_size=embedding_batch_size,
        embedding_mini_batch_size=embedding_mini_batch_size,
        max_path_length=max_path_length,
        reward_scale=reward_scale,
    )

    tu.set_gpu_mode(use_gpu, gpu_id=0)
    if use_gpu:
        pearl.to()

    runner.setup(algo=pearl,
                 env=env[0](),
                 sampler_cls=LocalSampler,
                 sampler_args=dict(max_path_length=max_path_length),
                 n_workers=1,
                 worker_class=PEARLWorker)

    average_returns = runner.train(n_epochs=num_epochs, batch_size=batch_size)
    runner.save(num_epochs - 1)

    return average_returns
def pearl_half_cheetah_vel(ctxt=None,
                           seed=1,
                           num_epochs=500,
                           num_train_tasks=100,
                           num_test_tasks=30,
                           latent_size=5,
                           encoder_hidden_size=200,
                           net_size=300,
                           meta_batch_size=16,
                           num_steps_per_epoch=2000,
                           num_initial_steps=2000,
                           num_tasks_sample=5,
                           num_steps_prior=400,
                           num_extra_rl_steps_posterior=600,
                           batch_size=256,
                           embedding_batch_size=100,
                           embedding_mini_batch_size=100,
                           max_path_length=200,
                           reward_scale=5.,
                           use_gpu=False):
    """Train PEARL with HalfCheetahVel environment.

    Args:
        ctxt (garage.experiment.ExperimentContext): The experiment
            configuration used by LocalRunner to create the snapshotter.
        seed (int): Used to seed the random number generator to produce
            determinism.
        num_epochs (int): Number of training epochs.
        num_train_tasks (int): Number of tasks for training.
        num_test_tasks (int): Number of tasks for testing.
        latent_size (int): Size of latent context vector.
        encoder_hidden_size (int): Output dimension of dense layer of the
            context encoder.
        net_size (int): Output dimension of a dense layer of Q-function and
            value function.
        meta_batch_size (int): Meta batch size.
        num_steps_per_epoch (int): Number of iterations per epoch.
        num_initial_steps (int): Number of transitions obtained per task before
            training.
        num_tasks_sample (int): Number of random tasks to obtain data for each
            iteration.
        num_steps_prior (int): Number of transitions to obtain per task with
            z ~ prior.
        num_extra_rl_steps_posterior (int): Number of additional transitions
            to obtain per task with z ~ posterior that are only used to train
            the policy and NOT the encoder.
        batch_size (int): Number of transitions in RL batch.
        embedding_batch_size (int): Number of transitions in context batch.
        embedding_mini_batch_size (int): Number of transitions in mini context
            batch; should be same as embedding_batch_size for non-recurrent
            encoder.
        max_path_length (int): Maximum path length.
        reward_scale (int): Reward scale.
        use_gpu (bool): Whether or not to use GPU for training.

    """
    set_seed(seed)
    encoder_hidden_sizes = (encoder_hidden_size, encoder_hidden_size,
                            encoder_hidden_size)
    # create multi-task environment and sample tasks
    env_sampler = SetTaskSampler(
        lambda: GarageEnv(normalize(HalfCheetahVelEnv())))
    env = env_sampler.sample(num_train_tasks)
    test_env_sampler = SetTaskSampler(
        lambda: GarageEnv(normalize(HalfCheetahVelEnv())))

    runner = LocalRunner(ctxt)

    # instantiate networks
    augmented_env = PEARL.augment_env_spec(env[0](), latent_size)
    qf = ContinuousMLPQFunction(env_spec=augmented_env,
                                hidden_sizes=[net_size, net_size, net_size])

    vf_env = PEARL.get_env_spec(env[0](), latent_size, 'vf')
    vf = ContinuousMLPQFunction(env_spec=vf_env,
                                hidden_sizes=[net_size, net_size, net_size])

    inner_policy = TanhGaussianMLPPolicy(
        env_spec=augmented_env, hidden_sizes=[net_size, net_size, net_size])

    pearl = PEARL(
        env=env,
        policy_class=ContextConditionedPolicy,
        encoder_class=MLPEncoder,
        inner_policy=inner_policy,
        qf=qf,
        vf=vf,
        num_train_tasks=num_train_tasks,
        num_test_tasks=num_test_tasks,
        latent_dim=latent_size,
        encoder_hidden_sizes=encoder_hidden_sizes,
        test_env_sampler=test_env_sampler,
        meta_batch_size=meta_batch_size,
        num_steps_per_epoch=num_steps_per_epoch,
        num_initial_steps=num_initial_steps,
        num_tasks_sample=num_tasks_sample,
        num_steps_prior=num_steps_prior,
        num_extra_rl_steps_posterior=num_extra_rl_steps_posterior,
        batch_size=batch_size,
        embedding_batch_size=embedding_batch_size,
        embedding_mini_batch_size=embedding_mini_batch_size,
        max_path_length=max_path_length,
        reward_scale=reward_scale,
    )

    set_gpu_mode(use_gpu, gpu_id=0)
    if use_gpu:
        pearl.to()

    runner.setup(algo=pearl,
                 env=env[0](),
                 sampler_cls=LocalSampler,
                 sampler_args=dict(max_path_length=max_path_length),
                 n_workers=1,
                 worker_class=PEARLWorker)

    runner.train(n_epochs=num_epochs, batch_size=batch_size)
Esempio n. 8
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    def test_pearl_ml1_push(self):
        """Test PEARL with ML1 Push environment."""
        params = dict(seed=1,
                      num_epochs=1,
                      num_train_tasks=5,
                      num_test_tasks=1,
                      latent_size=7,
                      encoder_hidden_sizes=[10, 10, 10],
                      net_size=30,
                      meta_batch_size=16,
                      num_steps_per_epoch=40,
                      num_initial_steps=40,
                      num_tasks_sample=15,
                      num_steps_prior=15,
                      num_extra_rl_steps_posterior=15,
                      batch_size=256,
                      embedding_batch_size=8,
                      embedding_mini_batch_size=8,
                      max_path_length=50,
                      reward_scale=10.,
                      use_information_bottleneck=True,
                      use_next_obs_in_context=False,
                      use_gpu=False)

        net_size = params['net_size']
        set_seed(params['seed'])
        env_sampler = SetTaskSampler(
            lambda: GarageEnv(normalize(ML1.get_train_tasks('push-v1'))))
        env = env_sampler.sample(params['num_train_tasks'])

        test_env_sampler = SetTaskSampler(
            lambda: GarageEnv(normalize(ML1.get_test_tasks('push-v1'))))

        augmented_env = PEARL.augment_env_spec(env[0](), params['latent_size'])
        qf = ContinuousMLPQFunction(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        vf_env = PEARL.get_env_spec(env[0](), params['latent_size'], 'vf')
        vf = ContinuousMLPQFunction(
            env_spec=vf_env, hidden_sizes=[net_size, net_size, net_size])

        inner_policy = TanhGaussianMLPPolicy(
            env_spec=augmented_env,
            hidden_sizes=[net_size, net_size, net_size])

        pearl = PEARL(
            env=env,
            policy_class=ContextConditionedPolicy,
            encoder_class=MLPEncoder,
            inner_policy=inner_policy,
            qf=qf,
            vf=vf,
            num_train_tasks=params['num_train_tasks'],
            num_test_tasks=params['num_test_tasks'],
            latent_dim=params['latent_size'],
            encoder_hidden_sizes=params['encoder_hidden_sizes'],
            meta_batch_size=params['meta_batch_size'],
            num_steps_per_epoch=params['num_steps_per_epoch'],
            num_initial_steps=params['num_initial_steps'],
            num_tasks_sample=params['num_tasks_sample'],
            num_steps_prior=params['num_steps_prior'],
            num_extra_rl_steps_posterior=params[
                'num_extra_rl_steps_posterior'],
            batch_size=params['batch_size'],
            embedding_batch_size=params['embedding_batch_size'],
            embedding_mini_batch_size=params['embedding_mini_batch_size'],
            max_path_length=params['max_path_length'],
            reward_scale=params['reward_scale'],
        )

        tu.set_gpu_mode(params['use_gpu'], gpu_id=0)
        if params['use_gpu']:
            pearl.to()

        runner = LocalRunner(snapshot_config)
        runner.setup(
            algo=pearl,
            env=env[0](),
            sampler_cls=LocalSampler,
            sampler_args=dict(max_path_length=params['max_path_length']),
            n_workers=1,
            worker_class=PEARLWorker)

        worker_args = dict(deterministic=True, accum_context=True)
        meta_evaluator = MetaEvaluator(
            test_task_sampler=test_env_sampler,
            max_path_length=params['max_path_length'],
            worker_class=PEARLWorker,
            worker_args=worker_args,
            n_test_tasks=params['num_test_tasks'])
        pearl.evaluator = meta_evaluator
        runner.train(n_epochs=params['num_epochs'],
                     batch_size=params['batch_size'])