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sawyer_door.py
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sawyer_door.py
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import os.path as osp
import multiworld.envs.mujoco as mwmj
import rlkit.util.hyperparameter as hyp
from multiworld.envs.mujoco.cameras import sawyer_door_env_camera_v0
from rlkit.launchers.launcher_util import run_experiment
import rlkit.torch.vae.vae_schedules as vae_schedules
from rlkit.launchers.skewfit_experiments import \
skewfit_full_experiment
from rlkit.torch.vae.conv_vae import imsize48_default_architecture
if __name__ == "__main__":
variant = dict(
algorithm='Skew-Fit-SAC',
double_algo=False,
online_vae_exploration=False,
imsize=48,
env_id='SawyerDoorHookResetFreeEnv-v1',
init_camera=sawyer_door_env_camera_v0,
skewfit_variant=dict(
save_video=True,
custom_goal_sampler='replay_buffer',
online_vae_trainer_kwargs=dict(
beta=20,
lr=1e-3,
),
save_video_period=50,
qf_kwargs=dict(hidden_sizes=[400, 300], ),
policy_kwargs=dict(hidden_sizes=[400, 300], ),
twin_sac_trainer_kwargs=dict(
reward_scale=1,
discount=0.99,
soft_target_tau=1e-3,
target_update_period=1,
use_automatic_entropy_tuning=True,
),
max_path_length=100,
algo_kwargs=dict(
batch_size=1024,
num_epochs=170,
num_eval_steps_per_epoch=500,
num_expl_steps_per_train_loop=500,
num_trains_per_train_loop=1000,
min_num_steps_before_training=10000,
vae_training_schedule=vae_schedules.custom_schedule,
oracle_data=False,
vae_save_period=50,
parallel_vae_train=False,
),
replay_buffer_kwargs=dict(
start_skew_epoch=10,
max_size=int(100000),
fraction_goals_rollout_goals=0.2,
fraction_goals_env_goals=0.5,
exploration_rewards_type='None',
vae_priority_type='vae_prob',
priority_function_kwargs=dict(
sampling_method='importance_sampling',
decoder_distribution='gaussian_identity_variance',
num_latents_to_sample=10,
),
power=-0.5,
relabeling_goal_sampling_mode='custom_goal_sampler',
),
exploration_goal_sampling_mode='custom_goal_sampler',
evaluation_goal_sampling_mode='presampled',
training_mode='train',
testing_mode='test',
reward_params=dict(type='latent_distance', ),
observation_key='latent_observation',
desired_goal_key='latent_desired_goal',
presampled_goals_path=osp.join(
osp.dirname(mwmj.__file__),
"goals",
"door_goals.npy",
),
presample_goals=True,
vae_wrapped_env_kwargs=dict(sample_from_true_prior=True, ),
),
train_vae_variant=dict(
representation_size=16,
beta=20,
num_epochs=0,
dump_skew_debug_plots=False,
decoder_activation='gaussian',
generate_vae_dataset_kwargs=dict(
N=2,
test_p=.9,
use_cached=True,
show=False,
oracle_dataset=False,
n_random_steps=1,
non_presampled_goal_img_is_garbage=True,
),
vae_kwargs=dict(
decoder_distribution='gaussian_identity_variance',
input_channels=3,
architecture=imsize48_default_architecture,
),
algo_kwargs=dict(lr=1e-3, ),
save_period=1,
),
)
search_space = {}
sweeper = hyp.DeterministicHyperparameterSweeper(
search_space,
default_parameters=variant,
)
n_seeds = 1
mode = 'local'
exp_prefix = 'dev-{}'.format(__file__.replace('/', '-').replace('_', '-').split('.')[0])
for exp_id, variant in enumerate(sweeper.iterate_hyperparameters()):
for _ in range(n_seeds):
run_experiment(
skewfit_full_experiment,
exp_prefix=exp_prefix,
mode=mode,
variant=variant,
use_gpu=True,
)