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a2c.py
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a2c.py
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import gym
import torch
import torch.nn as nn
import torch.nn.functional as F
import torch.optim as optim
from torch.distributions import Categorical
import torch.multiprocessing as mp
import numpy as np
# Hyperparameters
n_train_processes = 3
learning_rate = 0.0002
update_interval = 5
gamma = 0.98
max_train_steps = 60000
PRINT_INTERVAL = update_interval * 100
class ActorCritic(nn.Module):
def __init__(self):
super(ActorCritic, self).__init__()
self.fc1 = nn.Linear(4, 256)
self.fc_pi = nn.Linear(256, 2)
self.fc_v = nn.Linear(256, 1)
def pi(self, x, softmax_dim=1):
x = F.relu(self.fc1(x))
x = self.fc_pi(x)
prob = F.softmax(x, dim=softmax_dim)
return prob
def v(self, x):
x = F.relu(self.fc1(x))
v = self.fc_v(x)
return v
def worker(worker_id, master_end, worker_end):
master_end.close() # Forbid worker to use the master end for messaging
env = gym.make('CartPole-v1')
env.seed(worker_id)
while True:
cmd, data = worker_end.recv()
if cmd == 'step':
ob, reward, done, info = env.step(data)
if done:
ob = env.reset()
worker_end.send((ob, reward, done, info))
elif cmd == 'reset':
ob = env.reset()
worker_end.send(ob)
elif cmd == 'reset_task':
ob = env.reset_task()
worker_end.send(ob)
elif cmd == 'close':
worker_end.close()
break
elif cmd == 'get_spaces':
worker_end.send((env.observation_space, env.action_space))
else:
raise NotImplementedError
class ParallelEnv:
def __init__(self, n_train_processes):
self.nenvs = n_train_processes
self.waiting = False
self.closed = False
self.workers = list()
master_ends, worker_ends = zip(*[mp.Pipe() for _ in range(self.nenvs)])
self.master_ends, self.worker_ends = master_ends, worker_ends
for worker_id, (master_end, worker_end) in enumerate(zip(master_ends, worker_ends)):
p = mp.Process(target=worker,
args=(worker_id, master_end, worker_end))
p.daemon = True
p.start()
self.workers.append(p)
# Forbid master to use the worker end for messaging
for worker_end in worker_ends:
worker_end.close()
def step_async(self, actions):
for master_end, action in zip(self.master_ends, actions):
master_end.send(('step', action))
self.waiting = True
def step_wait(self):
results = [master_end.recv() for master_end in self.master_ends]
self.waiting = False
obs, rews, dones, infos = zip(*results)
return np.stack(obs), np.stack(rews), np.stack(dones), infos
def reset(self):
for master_end in self.master_ends:
master_end.send(('reset', None))
return np.stack([master_end.recv() for master_end in self.master_ends])
def step(self, actions):
self.step_async(actions)
return self.step_wait()
def close(self): # For clean up resources
if self.closed:
return
if self.waiting:
[master_end.recv() for master_end in self.master_ends]
for master_end in self.master_ends:
master_end.send(('close', None))
for worker in self.workers:
worker.join()
self.closed = True
def test(step_idx, model):
env = gym.make('CartPole-v1')
score = 0.0
done = False
num_test = 10
for _ in range(num_test):
s = env.reset()
while not done:
prob = model.pi(torch.from_numpy(s).float(), softmax_dim=0)
a = Categorical(prob).sample().numpy()
s_prime, r, done, info = env.step(a)
s = s_prime
score += r
done = False
print(f"Step # :{step_idx}, avg score : {score/num_test:.1f}")
env.close()
def compute_target(v_final, r_lst, mask_lst):
G = v_final.reshape(-1)
td_target = list()
for r, mask in zip(r_lst[::-1], mask_lst[::-1]):
G = r + gamma * G * mask
td_target.append(G)
return torch.tensor(td_target[::-1]).float()
if __name__ == '__main__':
envs = ParallelEnv(n_train_processes)
model = ActorCritic()
optimizer = optim.Adam(model.parameters(), lr=learning_rate)
step_idx = 0
s = envs.reset()
while step_idx < max_train_steps:
s_lst, a_lst, r_lst, mask_lst = list(), list(), list(), list()
for _ in range(update_interval):
prob = model.pi(torch.from_numpy(s).float())
a = Categorical(prob).sample().numpy()
s_prime, r, done, info = envs.step(a)
s_lst.append(s)
a_lst.append(a)
r_lst.append(r/100.0)
mask_lst.append(1 - done)
s = s_prime
step_idx += 1
s_final = torch.from_numpy(s_prime).float()
v_final = model.v(s_final).detach().clone().numpy()
td_target = compute_target(v_final, r_lst, mask_lst)
td_target_vec = td_target.reshape(-1)
s_vec = torch.tensor(s_lst).float().reshape(-1, 4) # 4 == Dimension of state
a_vec = torch.tensor(a_lst).reshape(-1).unsqueeze(1)
advantage = td_target_vec - model.v(s_vec).reshape(-1)
pi = model.pi(s_vec, softmax_dim=1)
pi_a = pi.gather(1, a_vec).reshape(-1)
loss = -(torch.log(pi_a) * advantage.detach()).mean() +\
F.smooth_l1_loss(model.v(s_vec).reshape(-1), td_target_vec)
optimizer.zero_grad()
loss.backward()
optimizer.step()
if step_idx % PRINT_INTERVAL == 0:
test(step_idx, model)
envs.close()