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imitate_episodes.py
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imitate_episodes.py
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import torch
import numpy as np
import os
import pickle
import argparse
import matplotlib.pyplot as plt
from copy import deepcopy
from itertools import repeat
from tqdm import tqdm
from einops import rearrange
import wandb
import time
from torchvision import transforms
from constants import FPS
from constants import PUPPET_GRIPPER_JOINT_OPEN
from utils import load_data # data functions
from utils import sample_box_pose, sample_insertion_pose # robot functions
from utils import compute_dict_mean, set_seed, detach_dict, calibrate_linear_vel, postprocess_base_action # helper functions
from policy import ACTPolicy, CNNMLPPolicy, DiffusionPolicy
from visualize_episodes import save_videos
from detr.models.latent_model import Latent_Model_Transformer
from sim_env import BOX_POSE
import IPython
e = IPython.embed
def get_auto_index(dataset_dir):
max_idx = 1000
for i in range(max_idx+1):
if not os.path.isfile(os.path.join(dataset_dir, f'qpos_{i}.npy')):
return i
raise Exception(f"Error getting auto index, or more than {max_idx} episodes")
def main(args):
set_seed(1)
# command line parameters
is_eval = args['eval']
ckpt_dir = args['ckpt_dir']
policy_class = args['policy_class']
onscreen_render = args['onscreen_render']
task_name = args['task_name']
batch_size_train = args['batch_size']
batch_size_val = args['batch_size']
num_steps = args['num_steps']
eval_every = args['eval_every']
validate_every = args['validate_every']
save_every = args['save_every']
resume_ckpt_path = args['resume_ckpt_path']
# get task parameters
is_sim = task_name[:4] == 'sim_'
if is_sim or task_name == 'all':
from constants import SIM_TASK_CONFIGS
task_config = SIM_TASK_CONFIGS[task_name]
else:
from aloha_scripts.constants import TASK_CONFIGS
task_config = TASK_CONFIGS[task_name]
dataset_dir = task_config['dataset_dir']
# num_episodes = task_config['num_episodes']
episode_len = task_config['episode_len']
camera_names = task_config['camera_names']
stats_dir = task_config.get('stats_dir', None)
sample_weights = task_config.get('sample_weights', None)
train_ratio = task_config.get('train_ratio', 0.99)
name_filter = task_config.get('name_filter', lambda n: True)
# fixed parameters
state_dim = 14
lr_backbone = 1e-5
backbone = 'resnet18'
if policy_class == 'ACT':
enc_layers = 4
dec_layers = 7
nheads = 8
policy_config = {'lr': args['lr'],
'num_queries': args['chunk_size'],
'kl_weight': args['kl_weight'],
'hidden_dim': args['hidden_dim'],
'dim_feedforward': args['dim_feedforward'],
'lr_backbone': lr_backbone,
'backbone': backbone,
'enc_layers': enc_layers,
'dec_layers': dec_layers,
'nheads': nheads,
'camera_names': camera_names,
'vq': args['use_vq'],
'vq_class': args['vq_class'],
'vq_dim': args['vq_dim'],
'action_dim': 16,
'no_encoder': args['no_encoder'],
}
elif policy_class == 'Diffusion':
policy_config = {'lr': args['lr'],
'camera_names': camera_names,
'action_dim': 16,
'observation_horizon': 1,
'action_horizon': 8,
'prediction_horizon': args['chunk_size'],
'num_queries': args['chunk_size'],
'num_inference_timesteps': 10,
'ema_power': 0.75,
'vq': False,
}
elif policy_class == 'CNNMLP':
policy_config = {'lr': args['lr'], 'lr_backbone': lr_backbone, 'backbone' : backbone, 'num_queries': 1,
'camera_names': camera_names,}
else:
raise NotImplementedError
actuator_config = {
'actuator_network_dir': args['actuator_network_dir'],
'history_len': args['history_len'],
'future_len': args['future_len'],
'prediction_len': args['prediction_len'],
}
config = {
'num_steps': num_steps,
'eval_every': eval_every,
'validate_every': validate_every,
'save_every': save_every,
'ckpt_dir': ckpt_dir,
'resume_ckpt_path': resume_ckpt_path,
'episode_len': episode_len,
'state_dim': state_dim,
'lr': args['lr'],
'policy_class': policy_class,
'onscreen_render': onscreen_render,
'policy_config': policy_config,
'task_name': task_name,
'seed': args['seed'],
'temporal_agg': args['temporal_agg'],
'camera_names': camera_names,
'real_robot': not is_sim,
'load_pretrain': args['load_pretrain'],
'actuator_config': actuator_config,
}
if not os.path.isdir(ckpt_dir):
os.makedirs(ckpt_dir)
config_path = os.path.join(ckpt_dir, 'config.pkl')
expr_name = ckpt_dir.split('/')[-1]
if not is_eval:
wandb.init(project="mobile-aloha2", reinit=True, entity="mobile-aloha2", name=expr_name)
wandb.config.update(config)
with open(config_path, 'wb') as f:
pickle.dump(config, f)
if is_eval:
ckpt_names = [f'policy_last.ckpt']
results = []
for ckpt_name in ckpt_names:
success_rate, avg_return = eval_bc(config, ckpt_name, save_episode=True, num_rollouts=10)
# wandb.log({'success_rate': success_rate, 'avg_return': avg_return})
results.append([ckpt_name, success_rate, avg_return])
for ckpt_name, success_rate, avg_return in results:
print(f'{ckpt_name}: {success_rate=} {avg_return=}')
print()
exit()
train_dataloader, val_dataloader, stats, _ = load_data(dataset_dir, name_filter, camera_names, batch_size_train, batch_size_val, args['chunk_size'], args['skip_mirrored_data'], config['load_pretrain'], policy_class, stats_dir_l=stats_dir, sample_weights=sample_weights, train_ratio=train_ratio)
# save dataset stats
stats_path = os.path.join(ckpt_dir, f'dataset_stats.pkl')
with open(stats_path, 'wb') as f:
pickle.dump(stats, f)
best_ckpt_info = train_bc(train_dataloader, val_dataloader, config)
best_step, min_val_loss, best_state_dict = best_ckpt_info
# save best checkpoint
ckpt_path = os.path.join(ckpt_dir, f'policy_best.ckpt')
torch.save(best_state_dict, ckpt_path)
print(f'Best ckpt, val loss {min_val_loss:.6f} @ step{best_step}')
wandb.finish()
def make_policy(policy_class, policy_config):
if policy_class == 'ACT':
policy = ACTPolicy(policy_config)
elif policy_class == 'CNNMLP':
policy = CNNMLPPolicy(policy_config)
elif policy_class == 'Diffusion':
policy = DiffusionPolicy(policy_config)
else:
raise NotImplementedError
return policy
def make_optimizer(policy_class, policy):
if policy_class == 'ACT':
optimizer = policy.configure_optimizers()
elif policy_class == 'CNNMLP':
optimizer = policy.configure_optimizers()
elif policy_class == 'Diffusion':
optimizer = policy.configure_optimizers()
else:
raise NotImplementedError
return optimizer
def get_image(ts, camera_names, rand_crop_resize=False):
curr_images = []
for cam_name in camera_names:
curr_image = rearrange(ts.observation['images'][cam_name], 'h w c -> c h w')
curr_images.append(curr_image)
curr_image = np.stack(curr_images, axis=0)
curr_image = torch.from_numpy(curr_image / 255.0).float().cuda().unsqueeze(0)
if rand_crop_resize:
print('rand crop resize is used!')
original_size = curr_image.shape[-2:]
ratio = 0.95
curr_image = curr_image[..., int(original_size[0] * (1 - ratio) / 2): int(original_size[0] * (1 + ratio) / 2),
int(original_size[1] * (1 - ratio) / 2): int(original_size[1] * (1 + ratio) / 2)]
curr_image = curr_image.squeeze(0)
resize_transform = transforms.Resize(original_size, antialias=True)
curr_image = resize_transform(curr_image)
curr_image = curr_image.unsqueeze(0)
return curr_image
def eval_bc(config, ckpt_name, save_episode=True, num_rollouts=50):
set_seed(1000)
ckpt_dir = config['ckpt_dir']
state_dim = config['state_dim']
real_robot = config['real_robot']
policy_class = config['policy_class']
onscreen_render = config['onscreen_render']
policy_config = config['policy_config']
camera_names = config['camera_names']
max_timesteps = config['episode_len']
task_name = config['task_name']
temporal_agg = config['temporal_agg']
onscreen_cam = 'angle'
vq = config['policy_config']['vq']
actuator_config = config['actuator_config']
use_actuator_net = actuator_config['actuator_network_dir'] is not None
# load policy and stats
ckpt_path = os.path.join(ckpt_dir, ckpt_name)
policy = make_policy(policy_class, policy_config)
loading_status = policy.deserialize(torch.load(ckpt_path))
print(loading_status)
policy.cuda()
policy.eval()
if vq:
vq_dim = config['policy_config']['vq_dim']
vq_class = config['policy_config']['vq_class']
latent_model = Latent_Model_Transformer(vq_dim, vq_dim, vq_class)
latent_model_ckpt_path = os.path.join(ckpt_dir, 'latent_model_last.ckpt')
latent_model.deserialize(torch.load(latent_model_ckpt_path))
latent_model.eval()
latent_model.cuda()
print(f'Loaded policy from: {ckpt_path}, latent model from: {latent_model_ckpt_path}')
else:
print(f'Loaded: {ckpt_path}')
stats_path = os.path.join(ckpt_dir, f'dataset_stats.pkl')
with open(stats_path, 'rb') as f:
stats = pickle.load(f)
# if use_actuator_net:
# prediction_len = actuator_config['prediction_len']
# future_len = actuator_config['future_len']
# history_len = actuator_config['history_len']
# actuator_network_dir = actuator_config['actuator_network_dir']
# from act.train_actuator_network import ActuatorNetwork
# actuator_network = ActuatorNetwork(prediction_len)
# actuator_network_path = os.path.join(actuator_network_dir, 'actuator_net_last.ckpt')
# loading_status = actuator_network.load_state_dict(torch.load(actuator_network_path))
# actuator_network.eval()
# actuator_network.cuda()
# print(f'Loaded actuator network from: {actuator_network_path}, {loading_status}')
# actuator_stats_path = os.path.join(actuator_network_dir, 'actuator_net_stats.pkl')
# with open(actuator_stats_path, 'rb') as f:
# actuator_stats = pickle.load(f)
# actuator_unnorm = lambda x: x * actuator_stats['commanded_speed_std'] + actuator_stats['commanded_speed_std']
# actuator_norm = lambda x: (x - actuator_stats['observed_speed_mean']) / actuator_stats['observed_speed_mean']
# def collect_base_action(all_actions, norm_episode_all_base_actions):
# post_processed_actions = post_process(all_actions.squeeze(0).cpu().numpy())
# norm_episode_all_base_actions += actuator_norm(post_processed_actions[:, -2:]).tolist()
pre_process = lambda s_qpos: (s_qpos - stats['qpos_mean']) / stats['qpos_std']
if policy_class == 'Diffusion':
post_process = lambda a: ((a + 1) / 2) * (stats['action_max'] - stats['action_min']) + stats['action_min']
else:
post_process = lambda a: a * stats['action_std'] + stats['action_mean']
# load environment
if real_robot:
from aloha_scripts.robot_utils import move_grippers # requires aloha
from aloha_scripts.real_env import make_real_env # requires aloha
env = make_real_env(init_node=True, setup_robots=True, setup_base=True)
env_max_reward = 0
else:
from sim_env import make_sim_env
env = make_sim_env(task_name)
env_max_reward = env.task.max_reward
query_frequency = policy_config['num_queries']
if temporal_agg:
query_frequency = 1
num_queries = policy_config['num_queries']
if real_robot:
BASE_DELAY = 13
query_frequency -= BASE_DELAY
max_timesteps = int(max_timesteps * 1) # may increase for real-world tasks
episode_returns = []
highest_rewards = []
for rollout_id in range(num_rollouts):
if real_robot:
e()
rollout_id += 0
### set task
if 'sim_transfer_cube' in task_name:
BOX_POSE[0] = sample_box_pose() # used in sim reset
elif 'sim_insertion' in task_name:
BOX_POSE[0] = np.concatenate(sample_insertion_pose()) # used in sim reset
ts = env.reset()
### onscreen render
if onscreen_render:
ax = plt.subplot()
plt_img = ax.imshow(env._physics.render(height=480, width=640, camera_id=onscreen_cam))
plt.ion()
### evaluation loop
if temporal_agg:
all_time_actions = torch.zeros([max_timesteps, max_timesteps+num_queries, 16]).cuda()
# qpos_history = torch.zeros((1, max_timesteps, state_dim)).cuda()
qpos_history_raw = np.zeros((max_timesteps, state_dim))
image_list = [] # for visualization
qpos_list = []
target_qpos_list = []
rewards = []
# if use_actuator_net:
# norm_episode_all_base_actions = [actuator_norm(np.zeros(history_len, 2)).tolist()]
with torch.inference_mode():
time0 = time.time()
DT = 1 / FPS
culmulated_delay = 0
for t in range(max_timesteps):
time1 = time.time()
### update onscreen render and wait for DT
if onscreen_render:
image = env._physics.render(height=480, width=640, camera_id=onscreen_cam)
plt_img.set_data(image)
plt.pause(DT)
### process previous timestep to get qpos and image_list
time2 = time.time()
obs = ts.observation
if 'images' in obs:
image_list.append(obs['images'])
else:
image_list.append({'main': obs['image']})
qpos_numpy = np.array(obs['qpos'])
qpos_history_raw[t] = qpos_numpy
qpos = pre_process(qpos_numpy)
qpos = torch.from_numpy(qpos).float().cuda().unsqueeze(0)
# qpos_history[:, t] = qpos
if t % query_frequency == 0:
curr_image = get_image(ts, camera_names, rand_crop_resize=(config['policy_class'] == 'Diffusion'))
# print('get image: ', time.time() - time2)
if t == 0:
# warm up
for _ in range(10):
policy(qpos, curr_image)
print('network warm up done')
time1 = time.time()
### query policy
time3 = time.time()
if config['policy_class'] == "ACT":
if t % query_frequency == 0:
if vq:
if rollout_id == 0:
for _ in range(10):
vq_sample = latent_model.generate(1, temperature=1, x=None)
print(torch.nonzero(vq_sample[0])[:, 1].cpu().numpy())
vq_sample = latent_model.generate(1, temperature=1, x=None)
all_actions = policy(qpos, curr_image, vq_sample=vq_sample)
else:
# e()
all_actions = policy(qpos, curr_image)
# if use_actuator_net:
# collect_base_action(all_actions, norm_episode_all_base_actions)
if real_robot:
all_actions = torch.cat([all_actions[:, :-BASE_DELAY, :-2], all_actions[:, BASE_DELAY:, -2:]], dim=2)
if temporal_agg:
all_time_actions[[t], t:t+num_queries] = all_actions
actions_for_curr_step = all_time_actions[:, t]
actions_populated = torch.all(actions_for_curr_step != 0, axis=1)
actions_for_curr_step = actions_for_curr_step[actions_populated]
k = 0.01
exp_weights = np.exp(-k * np.arange(len(actions_for_curr_step)))
exp_weights = exp_weights / exp_weights.sum()
exp_weights = torch.from_numpy(exp_weights).cuda().unsqueeze(dim=1)
raw_action = (actions_for_curr_step * exp_weights).sum(dim=0, keepdim=True)
else:
raw_action = all_actions[:, t % query_frequency]
# if t % query_frequency == query_frequency - 1:
# # zero out base actions to avoid overshooting
# raw_action[0, -2:] = 0
elif config['policy_class'] == "Diffusion":
if t % query_frequency == 0:
all_actions = policy(qpos, curr_image)
# if use_actuator_net:
# collect_base_action(all_actions, norm_episode_all_base_actions)
if real_robot:
all_actions = torch.cat([all_actions[:, :-BASE_DELAY, :-2], all_actions[:, BASE_DELAY:, -2:]], dim=2)
raw_action = all_actions[:, t % query_frequency]
elif config['policy_class'] == "CNNMLP":
raw_action = policy(qpos, curr_image)
all_actions = raw_action.unsqueeze(0)
# if use_actuator_net:
# collect_base_action(all_actions, norm_episode_all_base_actions)
else:
raise NotImplementedError
# print('query policy: ', time.time() - time3)
### post-process actions
time4 = time.time()
raw_action = raw_action.squeeze(0).cpu().numpy()
action = post_process(raw_action)
target_qpos = action[:-2]
# if use_actuator_net:
# assert(not temporal_agg)
# if t % prediction_len == 0:
# offset_start_ts = t + history_len
# actuator_net_in = np.array(norm_episode_all_base_actions[offset_start_ts - history_len: offset_start_ts + future_len])
# actuator_net_in = torch.from_numpy(actuator_net_in).float().unsqueeze(dim=0).cuda()
# pred = actuator_network(actuator_net_in)
# base_action_chunk = actuator_unnorm(pred.detach().cpu().numpy()[0])
# base_action = base_action_chunk[t % prediction_len]
# else:
base_action = action[-2:]
# base_action = calibrate_linear_vel(base_action, c=0.19)
# base_action = postprocess_base_action(base_action)
# print('post process: ', time.time() - time4)
### step the environment
time5 = time.time()
if real_robot:
ts = env.step(target_qpos, base_action)
else:
ts = env.step(target_qpos)
# print('step env: ', time.time() - time5)
### for visualization
qpos_list.append(qpos_numpy)
target_qpos_list.append(target_qpos)
rewards.append(ts.reward)
duration = time.time() - time1
sleep_time = max(0, DT - duration)
# print(sleep_time)
time.sleep(sleep_time)
# time.sleep(max(0, DT - duration - culmulated_delay))
if duration >= DT:
culmulated_delay += (duration - DT)
print(f'Warning: step duration: {duration:.3f} s at step {t} longer than DT: {DT} s, culmulated delay: {culmulated_delay:.3f} s')
# else:
# culmulated_delay = max(0, culmulated_delay - (DT - duration))
print(f'Avg fps {max_timesteps / (time.time() - time0)}')
plt.close()
if real_robot:
move_grippers([env.puppet_bot_left, env.puppet_bot_right], [PUPPET_GRIPPER_JOINT_OPEN] * 2, move_time=0.5) # open
# save qpos_history_raw
log_id = get_auto_index(ckpt_dir)
np.save(os.path.join(ckpt_dir, f'qpos_{log_id}.npy'), qpos_history_raw)
plt.figure(figsize=(10, 20))
# plot qpos_history_raw for each qpos dim using subplots
for i in range(state_dim):
plt.subplot(state_dim, 1, i+1)
plt.plot(qpos_history_raw[:, i])
# remove x axis
if i != state_dim - 1:
plt.xticks([])
plt.tight_layout()
plt.savefig(os.path.join(ckpt_dir, f'qpos_{log_id}.png'))
plt.close()
rewards = np.array(rewards)
episode_return = np.sum(rewards[rewards!=None])
episode_returns.append(episode_return)
episode_highest_reward = np.max(rewards)
highest_rewards.append(episode_highest_reward)
print(f'Rollout {rollout_id}\n{episode_return=}, {episode_highest_reward=}, {env_max_reward=}, Success: {episode_highest_reward==env_max_reward}')
# if save_episode:
# save_videos(image_list, DT, video_path=os.path.join(ckpt_dir, f'video{rollout_id}.mp4'))
success_rate = np.mean(np.array(highest_rewards) == env_max_reward)
avg_return = np.mean(episode_returns)
summary_str = f'\nSuccess rate: {success_rate}\nAverage return: {avg_return}\n\n'
for r in range(env_max_reward+1):
more_or_equal_r = (np.array(highest_rewards) >= r).sum()
more_or_equal_r_rate = more_or_equal_r / num_rollouts
summary_str += f'Reward >= {r}: {more_or_equal_r}/{num_rollouts} = {more_or_equal_r_rate*100}%\n'
print(summary_str)
# save success rate to txt
result_file_name = 'result_' + ckpt_name.split('.')[0] + '.txt'
with open(os.path.join(ckpt_dir, result_file_name), 'w') as f:
f.write(summary_str)
f.write(repr(episode_returns))
f.write('\n\n')
f.write(repr(highest_rewards))
return success_rate, avg_return
def forward_pass(data, policy):
image_data, qpos_data, action_data, is_pad = data
image_data, qpos_data, action_data, is_pad = image_data.cuda(), qpos_data.cuda(), action_data.cuda(), is_pad.cuda()
return policy(qpos_data, image_data, action_data, is_pad) # TODO remove None
def train_bc(train_dataloader, val_dataloader, config):
num_steps = config['num_steps']
ckpt_dir = config['ckpt_dir']
seed = config['seed']
policy_class = config['policy_class']
policy_config = config['policy_config']
eval_every = config['eval_every']
validate_every = config['validate_every']
save_every = config['save_every']
set_seed(seed)
policy = make_policy(policy_class, policy_config)
if config['load_pretrain']:
loading_status = policy.deserialize(torch.load(os.path.join('/home/zfu/interbotix_ws/src/act/ckpts/pretrain_all', 'policy_step_50000_seed_0.ckpt')))
print(f'loaded! {loading_status}')
if config['resume_ckpt_path'] is not None:
loading_status = policy.deserialize(torch.load(config['resume_ckpt_path']))
print(f'Resume policy from: {config["resume_ckpt_path"]}, Status: {loading_status}')
policy.cuda()
optimizer = make_optimizer(policy_class, policy)
min_val_loss = np.inf
best_ckpt_info = None
train_dataloader = repeater(train_dataloader)
for step in tqdm(range(num_steps+1)):
# validation
if step % validate_every == 0:
print('validating')
with torch.inference_mode():
policy.eval()
validation_dicts = []
for batch_idx, data in enumerate(val_dataloader):
forward_dict = forward_pass(data, policy)
validation_dicts.append(forward_dict)
if batch_idx > 50:
break
validation_summary = compute_dict_mean(validation_dicts)
epoch_val_loss = validation_summary['loss']
if epoch_val_loss < min_val_loss:
min_val_loss = epoch_val_loss
best_ckpt_info = (step, min_val_loss, deepcopy(policy.serialize()))
for k in list(validation_summary.keys()):
validation_summary[f'val_{k}'] = validation_summary.pop(k)
wandb.log(validation_summary, step=step)
print(f'Val loss: {epoch_val_loss:.5f}')
summary_string = ''
for k, v in validation_summary.items():
summary_string += f'{k}: {v.item():.3f} '
print(summary_string)
# evaluation
if (step > 0) and (step % eval_every == 0):
# first save then eval
ckpt_name = f'policy_step_{step}_seed_{seed}.ckpt'
ckpt_path = os.path.join(ckpt_dir, ckpt_name)
torch.save(policy.serialize(), ckpt_path)
success, _ = eval_bc(config, ckpt_name, save_episode=True, num_rollouts=10)
wandb.log({'success': success}, step=step)
# training
policy.train()
optimizer.zero_grad()
data = next(train_dataloader)
forward_dict = forward_pass(data, policy)
# backward
loss = forward_dict['loss']
loss.backward()
optimizer.step()
wandb.log(forward_dict, step=step) # not great, make training 1-2% slower
if step % save_every == 0:
ckpt_path = os.path.join(ckpt_dir, f'policy_step_{step}_seed_{seed}.ckpt')
torch.save(policy.serialize(), ckpt_path)
ckpt_path = os.path.join(ckpt_dir, f'policy_last.ckpt')
torch.save(policy.serialize(), ckpt_path)
best_step, min_val_loss, best_state_dict = best_ckpt_info
ckpt_path = os.path.join(ckpt_dir, f'policy_step_{best_step}_seed_{seed}.ckpt')
torch.save(best_state_dict, ckpt_path)
print(f'Training finished:\nSeed {seed}, val loss {min_val_loss:.6f} at step {best_step}')
return best_ckpt_info
def repeater(data_loader):
epoch = 0
for loader in repeat(data_loader):
for data in loader:
yield data
print(f'Epoch {epoch} done')
epoch += 1
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument('--eval', action='store_true')
parser.add_argument('--onscreen_render', action='store_true')
parser.add_argument('--ckpt_dir', action='store', type=str, help='ckpt_dir', required=True)
parser.add_argument('--policy_class', action='store', type=str, help='policy_class, capitalize', required=True)
parser.add_argument('--task_name', action='store', type=str, help='task_name', required=True)
parser.add_argument('--batch_size', action='store', type=int, help='batch_size', required=True)
parser.add_argument('--seed', action='store', type=int, help='seed', required=True)
parser.add_argument('--num_steps', action='store', type=int, help='num_steps', required=True)
parser.add_argument('--lr', action='store', type=float, help='lr', required=True)
parser.add_argument('--load_pretrain', action='store_true', default=False)
parser.add_argument('--eval_every', action='store', type=int, default=500, help='eval_every', required=False)
parser.add_argument('--validate_every', action='store', type=int, default=500, help='validate_every', required=False)
parser.add_argument('--save_every', action='store', type=int, default=500, help='save_every', required=False)
parser.add_argument('--resume_ckpt_path', action='store', type=str, help='resume_ckpt_path', required=False)
parser.add_argument('--skip_mirrored_data', action='store_true')
parser.add_argument('--actuator_network_dir', action='store', type=str, help='actuator_network_dir', required=False)
parser.add_argument('--history_len', action='store', type=int)
parser.add_argument('--future_len', action='store', type=int)
parser.add_argument('--prediction_len', action='store', type=int)
# for ACT
parser.add_argument('--kl_weight', action='store', type=int, help='KL Weight', required=False)
parser.add_argument('--chunk_size', action='store', type=int, help='chunk_size', required=False)
parser.add_argument('--hidden_dim', action='store', type=int, help='hidden_dim', required=False)
parser.add_argument('--dim_feedforward', action='store', type=int, help='dim_feedforward', required=False)
parser.add_argument('--temporal_agg', action='store_true')
parser.add_argument('--use_vq', action='store_true')
parser.add_argument('--vq_class', action='store', type=int, help='vq_class')
parser.add_argument('--vq_dim', action='store', type=int, help='vq_dim')
parser.add_argument('--no_encoder', action='store_true')
main(vars(parser.parse_args()))