igorcheb's picture
Create training.py
ef32598
raw
history blame
3.77 kB
import torch
from agent_class import ParameterisedPolicy
def create_cum_rewards(rewards, discount=DISCOUNT):
new_rews = [0]
for el in rewards[::-1]:
val = el + discount * new_rews[-1]
new_rews.append(val)
return torch.tensor(new_rews[1:][::-1], dtype=torch.float32)
def play_game(env, model, n_steps=500, render=False):
observation = env.reset()
rewards, logits = [], []
# for _ in range(n_steps):
while True:
if render:
env.render()
(mus, sigmas) = model(torch.tensor(observation, dtype=torch.float32))
m = torch.distributions.normal.Normal(mus, sigmas)
action = m.sample()
logit = m.log_prob(action)
observation, reward, done, info = env.step(action.detach().numpy())
rewards.append(reward)
logits.append(m.log_prob(action).sum())
if done:
break
env.close()
return rewards, logits
def draw_gradients_rewards(model, rewards, ep_lengths, ave_over_steps):
fig, axs = plt.subplot_mosaic([['1', '1', '2', '2'], ['3', '4', '5', '6']],
constrained_layout=False, figsize=(20, 9))
axs['1'].plot(np.array(rewards[:ave_over_steps*(len(rewards)//ave_over_steps)])\
.reshape(-1, ave_over_steps).mean(axis=-1))
axs['1'].set_title('Sum rewards per episode')
axs['1'].hlines(200, 0, len(rewards)/ave_over_steps, colors='red')
axs['1'].hlines(150, 0, len(rewards)/ave_over_steps, colors='orange')
axs['1'].hlines(0, 0, len(rewards)/ave_over_steps, colors='green')
axs['2'].plot(np.array(ep_lengths[:ave_over_steps*(len(ep_lengths)//ave_over_steps)])\
.reshape(-1, ave_over_steps).mean(axis=-1))
axs['2'].set_title('Episode length')
axs['3'].hist(model.lin_1.weight.grad.flatten().detach().numpy(), bins=50);
axs['3'].set_xlabel('Grads in dense layer 1')
axs['4'].hist(model.lin_2.weight.grad.flatten().detach().numpy(), bins=50);
axs['4'].set_xlabel('Grads in dense layer 2')
axs['5'].hist(model.lin_3.weight.grad.flatten().detach().numpy(), bins=50);
axs['5'].set_xlabel('Grads in dense layer 3')
axs['6'].hist(model.lin_4.weight.grad.flatten().detach().numpy(), bins=50);
axs['6'].set_xlabel('Grads in dense layer 4')
model = ParameterisedPolicy()
opt = torch.optim.Adam(model.parameters(), lr=0.0008)
lr_scheduler = torch.optim.lr_scheduler.StepLR(opt, step_size=4000, gamma=0.7)
rews, ep_lengths = [], []
last_max_score = 50
env = gym.make(env_name)
for _ in range(int(10e3)):
rewards, logits = play_game(env, model, render=False)
cum_rewards = create_cum_rewards(rewards, discount=DISCOUNT)
stacked_logits = torch.stack(logits).flatten()
loss = -(stacked_logits * cum_rewards).mean()
rews.append(np.sum(rewards))
ep_lengths.append(len(rewards))
opt.zero_grad()
loss.backward()
torch.nn.utils.clip_grad_norm_(model.parameters(), 50)
opt.step()
lr_scheduler.step()
if _%40 == 0:
if _ > 1:
clear_output()
draw_gradients_rewards(model, rewards=rews,
ep_lengths=ep_lengths, ave_over_steps=40)
plt.show()
if len(rews) > 40:
agg_rews = np.array(rews[-40*(len(rews)//40):])\
.reshape(-1, 40).mean(axis=-1)
if (agg_rews[-1] > last_max_score):
last_max_score = agg_rews[-1]
print('NEW BEST MODEL, STEP:', _, 'SCORE: ', last_max_score)
save_path = f'best_models/best_reinforce_lunar_lander_cont_model_{round(last_max_score,3)}.pt'
torch.save(model, save_path)