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collect_data.py
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import warnings
warnings.filterwarnings('ignore', category=DeprecationWarning)
import os
os.environ['MKL_SERVICE_FORCE_INTEL'] = '1'
from pathlib import Path
import hydra
import numpy as np
import torch
import wandb
from dm_env import specs
import tools.utils as utils
from tools.logger import Logger
from tools.replay import ReplayBuffer, make_replay_loader
torch.backends.cudnn.benchmark = True
# os.environ['WANDB_API_KEY'] = 'local-1b6c1e2a2fd8d4c98b8c049eb2914dbceccd4b7c' # local-1b6c1e2a2fd8d4c98b8c049eb2914dbceccd4b7c
# os.environ['WANDB_BASE_URL'] = 'https://192.168.170.90:443'
# os.environ['REQUESTS_CA_BUNDLE'] = '/etc/ssl/certs/ca-certificates.crt'
def make_agent(obs_type, obs_spec, action_spec, num_expl_steps, cfg):
cfg.obs_type = obs_type
cfg.obs_shape = obs_spec.shape
cfg.action_shape = action_spec.shape
cfg.num_expl_steps = num_expl_steps
return hydra.utils.instantiate(cfg)
def make_dreamer_agent(obs_space, action_spec, cur_config, cfg):
from copy import deepcopy
cur_config = deepcopy(cur_config)
del cur_config.agent
return hydra.utils.instantiate(cfg, cfg=cur_config, obs_space=obs_space, act_spec=action_spec)
class Workspace:
def __init__(self, cfg, savedir=None, workdir=None):
self.workdir = Path.cwd() if workdir is None else workdir
print(f'workspace: {self.workdir}')
self.cfg = cfg
utils.set_seed_everywhere(cfg.seed)
self.device = torch.device(cfg.device)
# create logger
self.logger = Logger(self.workdir,
use_tb=cfg.use_tb,
use_wandb=cfg.use_wandb)
# create envs
self.task = task = cfg.task
img_size = cfg.img_size
import envs.main as envs
self.train_env = envs.make(task, cfg.obs_type, cfg.action_repeat, cfg.seed, img_size=img_size, viclip_encode=cfg.viclip_encode, clip_hd_rendering=cfg.clip_hd_rendering)
# # create agent
self.agent = make_dreamer_agent(self.train_env.obs_space, self.train_env.act_space['action'], cfg, cfg.agent)
# get meta specs
meta_specs = self.agent.get_meta_specs()
# create replay buffer
data_specs = (self.train_env.obs_space,
self.train_env.act_space,
specs.Array((1,), np.float32, 'reward'),
specs.Array((1,), np.float32, 'discount'))
# create data storage
self.replay_storage = ReplayBuffer(data_specs, meta_specs,
self.workdir / 'buffer',
length=cfg.batch_length, **cfg.replay,
device=cfg.device)
# create replay buffer
self.replay_loader = make_replay_loader(self.replay_storage,
cfg.batch_size,)
self._replay_iter = None
self.timer = utils.Timer()
self._global_step = 0
self._global_episode = 0
@property
def global_step(self):
return self._global_step
@property
def global_episode(self):
return self._global_episode
@property
def global_frame(self):
return self.global_step * self.cfg.action_repeat
@property
def replay_iter(self):
if self._replay_iter is None:
self._replay_iter = iter(self.replay_loader)
return self._replay_iter
def eval(self):
import envs.main as envs
eval_env = envs.make(self.task, self.cfg.obs_type, self.cfg.action_repeat, self.cfg.seed, img_size=64,)
step, episode, total_reward = 0, 0, 0
eval_until_episode = utils.Until(self.cfg.num_eval_episodes)
meta = self.agent.init_meta()
while eval_until_episode(episode):
time_step, dreamer_obs = eval_env.reset()
agent_state = None
while not time_step.last():
with torch.no_grad(), utils.eval_mode(self.agent):
action, agent_state = self.agent.act(dreamer_obs,
meta,
self.global_step,
eval_mode=True,
state=agent_state)
time_step, dreamer_obs = eval_env.step(action)
total_reward += time_step.reward
step += 1
episode += 1
with self.logger.log_and_dump_ctx(self.global_frame, ty='eval') as log:
log('episode_reward', total_reward / episode)
log('episode_length', step * self.cfg.action_repeat / episode)
log('episode', self.global_episode)
log('step', self.global_step)
def eval_imag_behavior(self,):
self.agent._backup_acting_behavior = self.agent._acting_behavior
self.agent._acting_behavior = self.agent._imag_behavior
self.eval()
self.agent._acting_behavior = self.agent._backup_acting_behavior
def train(self):
# predicates
train_until_step = utils.Until(self.cfg.num_train_frames, self.cfg.action_repeat)
seed_until_step = utils.Until(self.cfg.num_seed_frames, self.cfg.action_repeat)
eval_every_step = utils.Every(self.cfg.eval_every_frames, self.cfg.action_repeat)
train_every_n_steps = max(self.cfg.train_every_actions // self.cfg.action_repeat, 1)
should_train_step = utils.Every(train_every_n_steps * self.cfg.action_repeat, self.cfg.action_repeat)
should_log_scalars = utils.Every(self.cfg.log_every_frames, self.cfg.action_repeat)
should_log_visual = utils.Every(self.cfg.visual_every_frames, self.cfg.action_repeat)
should_save_model = utils.Every(self.cfg.save_every_frames, self.cfg.action_repeat)
episode_step, episode_reward = 0, 0
time_step, dreamer_obs = self.train_env.reset()
agent_state = None
meta = self.agent.init_meta()
data = dreamer_obs
self.replay_storage.add(data, meta)
metrics = None
while train_until_step(self.global_step):
if time_step.last():
self._global_episode += 1
# wait until all the metrics schema is populated
if metrics is not None:
# log stats
elapsed_time, total_time = self.timer.reset()
episode_frame = episode_step * self.cfg.action_repeat
with self.logger.log_and_dump_ctx(self.global_frame,
ty='train') as log:
log('fps', episode_frame / elapsed_time)
log('total_time', total_time)
log('episode_reward', episode_reward)
log('episode_length', episode_frame)
log('episode', self.global_episode)
log('buffer_size', len(self.replay_storage))
log('step', self.global_step)
if should_save_model(self.global_step):
# save last model
self.save_last_model()
# reset env
time_step, dreamer_obs = self.train_env.reset()
# Updating agent
agent_state = None # Resetting agent's latent state
meta = self.agent.init_meta()
data = dreamer_obs
self.replay_storage.add(data, meta)
episode_step = 0
episode_reward = 0
# try to evaluate
if eval_every_step(self.global_step):
if self.cfg.eval_modality == 'task':
self.eval()
if self.cfg.eval_modality == 'task_imag':
self.eval_imag_behavior()
if self.cfg.eval_modality == 'from_text':
self.logger.log('eval_total_time', self.timer.total_time(),
self.global_frame)
self.eval_from_text()
meta = self.agent.update_meta(meta, self.global_step, time_step)
# sample action
with torch.no_grad(), utils.eval_mode(self.agent):
if seed_until_step(self.global_step):
action = self.train_env.act_space['action'].sample()
if getattr(self.cfg, 'discrete_actions', False):
action = (action == np.max(action)).astype(np.float32) # one-hot
else:
action, agent_state = self.agent.act(dreamer_obs, # time_step.observation
meta,
self.global_step,
eval_mode=False,
state=agent_state)
# try to update the agent
if not seed_until_step(self.global_step):
if should_train_step(self.global_step):
# prof.step()
# Sampling data
batch_data = next(self.replay_iter)
if hasattr(self.agent, ' update_wm'):
state, outputs, metrics = self.agent.update_wm(batch_data, self.global_step)
if hasattr(self.agent, "update_acting_behavior"):
metrics = self.agent.update_acting_behavior(state=state, outputs=outputs, metrics=metrics, data=batch_data)[1]
if hasattr(self.agent, "update_imag_behavior"):
metrics.update(self.agent.update_imag_behavior(state=state, outputs=outputs, metrics=metrics, seq_data=batch_data,)[1])
else:
outputs, metrics = self.agent.update(batch_data, self.global_step)
if should_log_scalars(self.global_step):
self.logger.log_metrics(metrics, self.global_frame, ty='train')
if self.global_step > 0 and should_log_visual(self.global_step):
if hasattr(self.agent, 'report'):
with torch.no_grad(), utils.eval_mode(self.agent):
videos = self.agent.report(next(self.replay_iter))
self.logger.log_visual(videos, self.global_frame)
# take env step
time_step, dreamer_obs = self.train_env.step(action)
episode_reward += time_step.reward
data = dreamer_obs
if time_step.last():
if getattr(self.train_env, "accumulate", False):
assert not self.replay_storage._ongoing
# NOTE: this is ok as it comes right after adding to the repl
accumulated_data, accumulated_key = self.train_env.process_accumulate()
data[accumulated_key] = accumulated_data[-1]
self.replay_storage._ongoing_eps[0][accumulated_key][-len(accumulated_data[:-1]):] = accumulated_data[:-1]
self.replay_storage.add(data, meta)
episode_step += 1
self._global_step += 1
@utils.retry
def save_snapshot(self):
snapshot = self.get_snapshot_dir() / f'snapshot_{self.global_frame}.pt'
keys_to_save = ['agent', '_global_step', '_global_episode']
payload = {k: self.__dict__[k] for k in keys_to_save}
with snapshot.open('wb') as f:
torch.save(payload, f)
def setup_wandb(self):
cfg = self.cfg
exp_name = '_'.join([
cfg.experiment, cfg.agent.name, cfg.task, cfg.obs_type,
str(cfg.seed)
])
wandb.init(project=cfg.project_name, group=cfg.agent.name, name=exp_name)
flat_cfg = utils.flatten_dict(cfg)
wandb.config.update(flat_cfg)
self.wandb_run_id = wandb.run.id
@utils.retry
def save_last_model(self):
snapshot = self.root_dir / 'last_snapshot.pt'
if snapshot.is_file():
temp = Path(str(snapshot).replace("last_snapshot.pt", "second_last_snapshot.pt"))
os.replace(snapshot, temp)
keys_to_save = ['agent', '_global_step', '_global_episode']
if self.cfg.use_wandb:
keys_to_save.append('wandb_run_id')
payload = {k: self.__dict__[k] for k in keys_to_save}
with snapshot.open('wb') as f:
torch.save(payload, f)
def load_snapshot(self, snapshot_dir):
try:
snapshot = snapshot_dir / 'last_snapshot.pt'
with snapshot.open('rb') as f:
payload = torch.load(f)
except:
snapshot = snapshot_dir / 'second_last_snapshot.pt'
with snapshot.open('rb') as f:
payload = torch.load(f)
for k,v in payload.items():
setattr(self, k, v)
if k == 'wandb_run_id':
assert wandb.run is None
cfg = self.cfg
exp_name = '_'.join([
cfg.experiment, cfg.agent.name, cfg.task, cfg.obs_type,
str(cfg.seed)
])
wandb.init(project=cfg.project_name, group=cfg.agent.name, name=exp_name, id=v, resume="must")
def get_snapshot_dir(self):
snap_dir = self.cfg.snapshot_dir
snapshot_dir = self.workdir / Path(snap_dir)
snapshot_dir.mkdir(exist_ok=True, parents=True)
return snapshot_dir
@hydra.main(config_path='.', config_name='collect_data')
def main(cfg):
from collect_data import Workspace as W
root_dir = Path.cwd()
cfg.workdir = str(root_dir)
workspace = W(cfg)
workspace.root_dir = root_dir
snapshot = workspace.root_dir / 'last_snapshot.pt'
if snapshot.exists():
print(f'resuming: {snapshot}')
workspace.load_snapshot(workspace.root_dir)
if cfg.use_wandb and wandb.run is None:
# otherwise it was resumed
workspace.setup_wandb()
workspace.train()
if __name__ == '__main__':
main()