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async_agent.py
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#######################################################################
# Copyright (C) 2017 Shangtong Zhang(zhangshangtong.cpp@gmail.com) #
# Permission given to modify the code as long as you keep this #
# declaration at the top #
#######################################################################
from network import *
from policy import *
import numpy as np
import torch.multiprocessing as mp
from task import *
from network import *
from bootstrap import *
import pickle
import os
class AsyncAgent:
def __init__(self,
task_fn,
network_fn,
optimizer_fn,
policy_fn,
bootstrap,
discount,
step_limit,
target_network_update_freq,
n_workers,
update_interval,
test_interval,
test_repetitions,
history_length,
logger):
self.network_fn = network_fn
self.learning_network = network_fn()
self.learning_network.share_memory()
if bootstrap != AdvantageActorCritic:
self.target_network = network_fn()
self.target_network.share_memory()
self.target_network.load_state_dict(self.learning_network.state_dict())
else:
self.target_network = None
self.bootstrap = bootstrap
self.optimizer_fn = optimizer_fn
self.task_fn = task_fn
self.task = self.task_fn()
self.step_limit = step_limit
self.discount = discount
self.optimizer_fn = optimizer_fn
self.target_network_update_freq = target_network_update_freq
self.policy_fn = policy_fn
self.steps_lock = mp.Lock()
self.network_lock = mp.Lock()
self.total_steps = mp.Value('i', 0)
self.stop_signal = mp.Value('i', False)
self.n_workers = n_workers
self.update_interval = update_interval
self.test_interval = test_interval
self.test_repetitions = test_repetitions
self.logger = logger
self.history_length = history_length
self.tag = ''
def deterministic_episode(self, task, network):
state = task.reset()
total_rewards = 0
steps = 0
network.reset(True)
bootstrap = self.bootstrap(self)
while not self.step_limit or steps < self.step_limit:
action = np.argmax(bootstrap.process_state(network, state))
state, reward, terminal, _ = task.step(action)
steps += 1
total_rewards += reward
if terminal:
break
bootstrap.reset()
return total_rewards
def worker(self, id):
optimizer = self.optimizer_fn(self.learning_network.parameters())
worker_network = self.network_fn()
worker_network.load_state_dict(self.learning_network.state_dict())
bootstrap = self.bootstrap(self)
task = self.task_fn()
policy = self.policy_fn()
episode = 0
episode_steps = 0
episode_returns = [0]
state = task.reset()
pending_steps = 0
while True and not self.stop_signal.value:
action = policy.sample(bootstrap.process_state(worker_network, state))
next_state, reward, terminal, _ = task.step(action)
bootstrap.process_interaction(action, reward, next_state)
episode_returns[-1] += reward
episode_steps += 1
if self.step_limit and episode_steps > self.step_limit:
terminal = True
with self.steps_lock:
self.total_steps.value += 1
pending_steps += 1
if terminal or pending_steps >= self.update_interval:
loss = bootstrap.compute_loss(worker_network, terminal)
pending_steps = 0
worker_network.zero_grad()
loss.backward()
nn.utils.clip_grad_norm(worker_network.parameters(), 40)
optimizer.zero_grad()
for param, worker_param in zip(self.learning_network.parameters(), worker_network.parameters()):
param._grad = worker_param.grad.clone().cpu()
optimizer.step()
worker_network.load_state_dict(self.learning_network.state_dict())
worker_network.reset(terminal)
if terminal:
state = task.reset()
episode += 1
if id == 0:
self.logger.info('episode %d, return %f, avg return %f, episode steps %d, total steps %d' % (
episode, episode_returns[-1], np.mean(episode_returns[-100:]), episode_steps, self.total_steps.value))
episode_returns.append(0)
episode_steps = 0
else:
state = next_state
if self.target_network and self.total_steps.value % self.target_network_update_freq == 0:
self.target_network.load_state_dict(self.learning_network.state_dict())
def save(self, file_name):
with open(file_name, 'wb') as f:
pickle.dump(self.learning_network.state_dict(), f)
def run(self):
os.environ['OMP_NUM_THREADS'] = '1'
procs = [mp.Process(target=self.worker, args=(i, )) for i in range(self.n_workers)]
for p in procs: p.start()
test_rewards = []
test_points = []
test_network = self.network_fn()
while True:
steps = self.total_steps.value + 1
if steps % self.test_interval == 0:
test_network.load_state_dict(self.learning_network.state_dict())
self.save('data/%s%s-model-%s.bin' % (self.tag, self.bootstrap.__name__, self.task.name))
rewards = np.zeros(self.test_repetitions)
for i in range(self.test_repetitions):
rewards[i] = self.deterministic_episode(self.task, test_network)
self.logger.info('total steps: %d, averaged return per episode: %f(%f)' %\
(steps, np.mean(rewards), np.std(rewards) / np.sqrt(self.test_repetitions)))
test_rewards.append(np.mean(rewards))
test_points.append(steps)
with open('data/%s%s-statistics-%s.bin' % (
self.tag, self.bootstrap.__name__, self.task.name
), 'wb') as f:
pickle.dump([test_points, test_rewards], f)
if np.mean(rewards) > self.task.success_threshold:
self.stop_signal.value = True
break
for p in procs: p.join()