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ppo-lstm.py
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ppo-lstm.py
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#PPO-LSTM
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 time
import numpy as np
#Hyperparameters
learning_rate = 0.0005
gamma = 0.98
lmbda = 0.95
eps_clip = 0.1
K_epoch = 2
T_horizon = 20
class PPO(nn.Module):
def __init__(self):
super(PPO, self).__init__()
self.data = []
self.fc1 = nn.Linear(4,64)
self.lstm = nn.LSTM(64,32)
self.fc_pi = nn.Linear(32,2)
self.fc_v = nn.Linear(32,1)
self.optimizer = optim.Adam(self.parameters(), lr=learning_rate)
def pi(self, x, hidden):
x = F.relu(self.fc1(x))
x = x.view(-1, 1, 64)
x, lstm_hidden = self.lstm(x, hidden)
x = self.fc_pi(x)
prob = F.softmax(x, dim=2)
return prob, lstm_hidden
def v(self, x, hidden):
x = F.relu(self.fc1(x))
x = x.view(-1, 1, 64)
x, lstm_hidden = self.lstm(x, hidden)
v = self.fc_v(x)
return v
def put_data(self, transition):
self.data.append(transition)
def make_batch(self):
s_lst, a_lst, r_lst, s_prime_lst, prob_a_lst, hidden_lst, done_lst = [], [], [], [], [], [], []
for transition in self.data:
s, a, r, s_prime, prob_a, hidden, done = transition
s_lst.append(s)
a_lst.append([a])
r_lst.append([r])
s_prime_lst.append(s_prime)
prob_a_lst.append([prob_a])
hidden_lst.append(hidden)
done_mask = 0 if done else 1
done_lst.append([done_mask])
s,a,r,s_prime,done_mask,prob_a = torch.tensor(s_lst, dtype=torch.float), torch.tensor(a_lst), \
torch.tensor(r_lst), torch.tensor(s_prime_lst, dtype=torch.float), \
torch.tensor(done_lst, dtype=torch.float), torch.tensor(prob_a_lst)
self.data = []
return s,a,r,s_prime, done_mask, prob_a, hidden_lst[0]
def train_net(self):
s,a,r,s_prime,done_mask, prob_a, (h1,h2) = self.make_batch()
first_hidden = (h1.detach(), h2.detach())
for i in range(K_epoch):
v_prime = self.v(s_prime, first_hidden).squeeze(1)
td_target = r + gamma * v_prime * done_mask
v_s = self.v(s, first_hidden).squeeze(1)
delta = td_target - v_s
delta = delta.detach().numpy()
advantage_lst = []
advantage = 0.0
for item in delta[::-1]:
advantage = gamma * lmbda * advantage + item[0]
advantage_lst.append([advantage])
advantage_lst.reverse()
advantage = torch.tensor(advantage_lst, dtype=torch.float)
pi, _ = self.pi(s, first_hidden)
pi_a = pi.squeeze(1).gather(1,a)
ratio = torch.exp(torch.log(pi_a) - torch.log(prob_a)) # a/b == log(exp(a)-exp(b))
surr1 = ratio * advantage
surr2 = torch.clamp(ratio, 1-eps_clip, 1+eps_clip) * advantage
loss = -torch.min(surr1, surr2) + F.smooth_l1_loss(td_target.detach(), v_s)
self.optimizer.zero_grad()
loss.mean().backward(retain_graph=True)
self.optimizer.step()
def main():
env = gym.make('CartPole-v1')
model = PPO()
score = 0.0
print_interval = 20
for n_epi in range(10000):
hidden = (torch.zeros([1, 1, 32], dtype=torch.float), torch.zeros([1, 1, 32], dtype=torch.float))
s = env.reset()
done = False
while not done:
for t in range(T_horizon):
s_tensor = torch.from_numpy(s).float()
prob, hidden = model.pi(s_tensor, hidden)
prob = prob.view(-1)
m = Categorical(prob)
a = m.sample().item()
s_prime, r, done, info = env.step(a)
model.put_data((s, a, r/100.0, s_prime, prob[a].item(), hidden, done))
s = s_prime
score += r
if done:
break
model.train_net()
if n_epi%print_interval==0 and n_epi!=0:
print("# of episode :{}, avg score : {:.1f}".format(n_epi, score/print_interval))
score = 0.0
env.close()
if __name__ == '__main__':
main()