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train_finetuning.py
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import os
import numpy as np
import tqdm
from absl import app, flags
from ml_collections import config_flags
from tensorboardX import SummaryWriter
from jaxrl.agents import AWACLearner, SACLearner
from jaxrl.datasets import ReplayBuffer
from jaxrl.datasets.dataset_utils import make_env_and_dataset
from jaxrl.evaluation import evaluate
from jaxrl.utils import make_env
FLAGS = flags.FLAGS
flags.DEFINE_string('env_name', 'HalfCheetah-v2', 'Environment name.')
flags.DEFINE_enum('dataset_name', 'awac', ['d4rl', 'awac'], 'Dataset name.')
flags.DEFINE_string('save_dir', './tmp/', 'Tensorboard logging dir.')
flags.DEFINE_integer('seed', 42, 'Random seed.')
flags.DEFINE_integer('eval_episodes', 10,
'Number of episodes used for evaluation.')
flags.DEFINE_integer('log_interval', 1000, 'Logging interval.')
flags.DEFINE_integer('eval_interval', 10000, 'Eval interval.')
flags.DEFINE_integer('batch_size', 1024, 'Mini batch size.')
flags.DEFINE_integer('max_steps', int(1e6), 'Number of training steps.')
flags.DEFINE_integer(
'init_dataset_size', None,
'Number of samples from the dataset to initialize the replay buffer.')
flags.DEFINE_integer('num_pretraining_steps', int(5e4),
'Number of pretraining steps.')
flags.DEFINE_boolean('tqdm', True, 'Use tqdm progress bar.')
flags.DEFINE_boolean('save_video', False, 'Save videos during evaluation.')
config_flags.DEFINE_config_file(
'config',
'configs/awac_default.py',
'File path to the training hyperparameter configuration.',
lock_config=False)
def main(_):
summary_writer = SummaryWriter(
os.path.join(FLAGS.save_dir, 'tb', str(FLAGS.seed)))
if FLAGS.save_video:
video_train_folder = os.path.join(FLAGS.save_dir, 'video', 'train')
video_eval_folder = os.path.join(FLAGS.save_dir, 'video', 'eval')
else:
video_train_folder = None
video_eval_folder = None
env, dataset = make_env_and_dataset(FLAGS.env_name, FLAGS.seed,
FLAGS.dataset_name, video_train_folder)
eval_env = make_env(FLAGS.env_name, FLAGS.seed + 42, video_eval_folder)
np.random.seed(FLAGS.seed)
kwargs = dict(FLAGS.config)
algo = kwargs.pop('algo')
replay_buffer_size = kwargs.pop('replay_buffer_size')
if algo == 'sac':
agent = SACLearner(FLAGS.seed,
env.observation_space.sample()[np.newaxis],
env.action_space.sample()[np.newaxis], **kwargs)
elif algo == 'awac':
agent = AWACLearner(FLAGS.seed,
env.observation_space.sample()[np.newaxis],
env.action_space.sample()[np.newaxis], **kwargs)
else:
raise NotImplementedError()
replay_buffer = ReplayBuffer(env.observation_space, env.action_space,
replay_buffer_size or FLAGS.max_steps)
replay_buffer.initialize_with_dataset(dataset, FLAGS.init_dataset_size)
eval_returns = []
observation, done = env.reset(), False
# Use negative indices for pretraining steps.
for i in tqdm.tqdm(range(1 - FLAGS.num_pretraining_steps,
FLAGS.max_steps + 1),
smoothing=0.1,
disable=not FLAGS.tqdm):
if i >= 1:
action = agent.sample_actions(observation)
next_observation, reward, done, info = env.step(action)
if not done or 'TimeLimit.truncated' in info:
mask = 1.0
else:
mask = 0.0
replay_buffer.insert(observation, action, reward, mask,
float(done), next_observation)
observation = next_observation
if done:
observation, done = env.reset(), False
for k, v in info['episode'].items():
summary_writer.add_scalar(f'training/{k}', v,
info['total']['timesteps'])
else:
info = {}
info['total'] = {'timesteps': i}
batch = replay_buffer.sample(FLAGS.batch_size)
update_info = agent.update(batch)
if i % FLAGS.log_interval == 0:
for k, v in update_info.items():
summary_writer.add_scalar(f'training/{k}', v, i)
summary_writer.flush()
if i % FLAGS.eval_interval == 0:
eval_stats = evaluate(agent, eval_env, FLAGS.eval_episodes)
for k, v in eval_stats.items():
summary_writer.add_scalar(f'evaluation/average_{k}s', v,
info['total']['timesteps'])
summary_writer.flush()
eval_returns.append(
(info['total']['timesteps'], eval_stats['return']))
np.savetxt(os.path.join(FLAGS.save_dir, f'{FLAGS.seed}.txt'),
eval_returns,
fmt=['%d', '%.1f'])
if __name__ == '__main__':
app.run(main)