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train_sac_ma.py
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train_sac_ma.py
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import argparse
import copy
import datetime
import os
import time
import gym
import numpy as np
import rsoccer_gym
import torch
import torch.multiprocessing as mp
import torch.nn.functional as F
import torch.optim as optim
import wandb
from agents.sac import (SACHP, GaussianPolicy, QNetwork, TargetCritic,
data_func, loss_sac)
from agents.utils import ReplayBuffer, save_checkpoint
if __name__ == "__main__":
mp.set_start_method('spawn')
os.environ['OMP_NUM_THREADS'] = "1"
parser = argparse.ArgumentParser()
parser.add_argument("--cuda", default=False,
action="store_true", help="Enable cuda")
parser.add_argument("-n", "--name", required=True,
help="Name of the run")
parser.add_argument("-e", "--env", required=True,
help="Name of the gym environment")
args = parser.parse_args()
device = "cuda" if args.cuda else "cpu"
# Input Experiment Hyperparameters
hp = SACHP(
EXP_NAME=args.name,
DEVICE=device,
ENV_NAME=args.env,
N_ROLLOUT_PROCESSES=3,
LEARNING_RATE=0.0001,
EXP_GRAD_RATIO=10,
BATCH_SIZE=256,
GAMMA=0.95,
REWARD_STEPS=3,
ALPHA=0.015,
LOG_SIG_MAX=2,
LOG_SIG_MIN=-20,
EPSILON=1e-6,
REPLAY_SIZE=1000000,
REPLAY_INITIAL=100000,
SAVE_FREQUENCY=100000,
GIF_FREQUENCY=10000,
TOTAL_GRAD_STEPS=2000000,
MULTI_AGENT=True
)
wandb.init(project='RoboCIn-RL', name=hp.EXP_NAME, config=hp.to_dict())
current_time = datetime.datetime.now().strftime('%b-%d_%H-%M-%S')
tb_path = os.path.join('runs', current_time + '_'
+ hp.ENV_NAME + '_' + hp.EXP_NAME)
# Actor-Critic
pi = GaussianPolicy(hp.N_OBS, hp.N_ACTS,
hp.LOG_SIG_MIN,
hp.LOG_SIG_MAX, hp.EPSILON).to(device)
Q = QNetwork(hp.N_OBS, hp.N_ACTS).to(device)
# Entropy
alpha = hp.ALPHA
target_entropy = -torch.prod(torch.Tensor(hp.N_ACTS).to(device)).item()
log_alpha = torch.zeros(1, requires_grad=True, device=device)
# Playing
pi.share_memory()
exp_queue = mp.Queue(maxsize=hp.EXP_GRAD_RATIO)
finish_event = mp.Event()
gif_req_m = mp.Value('i', -1)
data_proc_list = []
for _ in range(hp.N_ROLLOUT_PROCESSES):
data_proc = mp.Process(
target=data_func,
args=(
pi,
device,
exp_queue,
finish_event,
gif_req_m,
hp
)
)
data_proc.start()
data_proc_list.append(data_proc)
# Training
tgt_Q = TargetCritic(Q)
pi_opt = optim.Adam(pi.parameters(), lr=hp.LEARNING_RATE)
Q_opt = optim.Adam(Q.parameters(), lr=hp.LEARNING_RATE)
alpha_optim = optim.Adam([log_alpha], lr=hp.LEARNING_RATE)
buffer = ReplayBuffer(buffer_size=hp.REPLAY_SIZE,
observation_space=hp.observation_space,
action_space=hp.action_space,
device=hp.DEVICE
)
n_grads = 0
n_samples = 0
n_episodes = 0
best_reward = None
last_gif = None
try:
while n_grads < hp.TOTAL_GRAD_STEPS:
metrics = {}
ep_infos = list()
st_time = time.perf_counter()
# Collect EXP_GRAD_RATIO sample for each grad step
new_samples = 0
while new_samples < hp.EXP_GRAD_RATIO:
exp = exp_queue.get()
if exp is None:
raise Exception # got None value in queue
safe_exp = copy.deepcopy(exp)
del(exp)
# Dict is returned with end of episode info
if isinstance(safe_exp, dict):
logs = {"ep_info/"+key: value for key,
value in safe_exp.items() if 'truncated' not in key}
ep_infos.append(logs)
n_episodes += 1
else:
for exp in safe_exp:
if exp.last_state is not None:
last_state = exp.last_state
else:
last_state = exp.state
buffer.add(
obs=exp.state,
next_obs=last_state,
action=exp.action,
reward=exp.reward,
done=False if exp.last_state is not None else True
)
new_samples += 1
n_samples += new_samples
sample_time = time.perf_counter()
# Only start training after buffer is larger than initial value
if buffer.size() < hp.REPLAY_INITIAL:
continue
# Sample a batch and load it as a tensor on device
batch = buffer.sample(hp.BATCH_SIZE)
pi_loss, Q_loss1, Q_loss2, log_pi = loss_sac(alpha,
hp.GAMMA**hp.REWARD_STEPS,
batch, Q, pi,
tgt_Q, device)
# train Entropy parameter
alpha_loss = -(log_alpha * (log_pi + target_entropy).detach())
alpha_loss = alpha_loss.mean()
alpha_optim.zero_grad()
alpha_loss.backward()
alpha_optim.step()
alpha = log_alpha.exp()
alpha_tlogs = alpha.clone()
metrics["train/loss_alpha"] = alpha_loss.cpu().detach().numpy()
metrics["train/alpha"] = alpha.cpu().detach().numpy()
# train actor - Maximize Q value received over every S
pi_opt.zero_grad()
pi_loss.backward()
pi_opt.step()
metrics["train/loss_pi"] = pi_loss.cpu().detach().numpy()
# train critic
Q_loss = Q_loss1 + Q_loss2
Q_opt.zero_grad()
Q_loss.backward()
Q_opt.step()
metrics["train/loss_Q1"] = Q_loss1.cpu().detach().numpy()
metrics["train/loss_Q2"] = Q_loss2.cpu().detach().numpy()
# Sync target networks
tgt_Q.sync(alpha=1 - 1e-3)
n_grads += 1
grad_time = time.perf_counter()
metrics['speed/samples'] = new_samples/(sample_time - st_time)
metrics['speed/grad'] = 1/(grad_time - sample_time)
metrics['speed/total'] = 1/(grad_time - st_time)
metrics['counters/samples'] = n_samples
metrics['counters/grads'] = n_grads
metrics['counters/episodes'] = n_episodes
metrics["counters/buffer_len"] = buffer.size()
if ep_infos:
for key in ep_infos[0].keys():
if isinstance(ep_infos[0][key], dict):
for i in range(hp.N_AGENTS):
for inner_key in ep_infos[0][key].keys():
metrics[f"ep_info/agent_{i}/{inner_key}"] = np.mean(
[info[key][inner_key] for info in ep_infos])
else:
metrics[key] = np.mean([info[key] for info in ep_infos])
# Log metrics
wandb.log(metrics)
if hp.SAVE_FREQUENCY and n_grads % hp.SAVE_FREQUENCY == 0:
save_checkpoint(
hp=hp,
metrics={
'alpha': alpha,
'n_samples': n_samples,
'n_grads': n_grads,
'n_episodes': n_episodes
},
pi=pi,
Q=Q,
pi_opt=pi_opt,
Q_opt=Q_opt
)
if hp.GIF_FREQUENCY and n_grads % hp.GIF_FREQUENCY == 0:
gif_req_m.value = n_grads
except KeyboardInterrupt:
print("...Finishing...")
finish_event.set()
finally:
if exp_queue:
while exp_queue.qsize() > 0:
exp_queue.get()
print('queue is empty')
print("Waiting for threads to finish...")
for p in data_proc_list:
p.terminate()
p.join()
del(exp_queue)
del(pi)
finish_event.set()