-
Notifications
You must be signed in to change notification settings - Fork 0
/
logger.py
105 lines (91 loc) · 3.84 KB
/
logger.py
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
import numpy as np
import time, datetime
import matplotlib.pyplot as plt
class MetricLogger:
def __init__(self, save_dir):
self.save_log = save_dir / "log"
with open(self.save_log, "w") as f:
f.write(
f"{'Episode':>8}{'Step':>8}{'Epsilon':>10}{'MeanReward':>15}"
f"{'MeanLength':>15}{'MeanLoss':>15}{'MeanQValue':>15}"
f"{'TimeDelta':>15}{'Time':>20}\n"
)
self.ep_rewards_plot = save_dir / "reward_plot.jpg"
self.ep_lengths_plot = save_dir / "length_plot.jpg"
self.ep_avg_losses_plot = save_dir / "loss_plot.jpg"
self.ep_avg_qs_plot = save_dir / "q_plot.jpg"
# History metrics
self.ep_rewards = []
self.ep_lengths = []
self.ep_avg_losses = []
self.ep_avg_qs = []
# Moving averages, added for every call to record()
self.moving_avg_ep_rewards = []
self.moving_avg_ep_lengths = []
self.moving_avg_ep_avg_losses = []
self.moving_avg_ep_avg_qs = []
# Current episode metric
self.init_episode()
# Timing
self.record_time = time.time()
def log_step(self, reward, loss, q):
self.curr_ep_reward += reward
self.curr_ep_length += 1
if loss:
self.curr_ep_loss += loss
self.curr_ep_q += q
self.curr_ep_loss_length += 1
def log_episode(self):
"Mark end of episode"
self.ep_rewards.append(self.curr_ep_reward)
self.ep_lengths.append(self.curr_ep_length)
if self.curr_ep_loss_length == 0:
ep_avg_loss = 0
ep_avg_q = 0
else:
ep_avg_loss = np.round(self.curr_ep_loss / self.curr_ep_loss_length, 5)
ep_avg_q = np.round(self.curr_ep_q / self.curr_ep_loss_length, 5)
self.ep_avg_losses.append(ep_avg_loss)
self.ep_avg_qs.append(ep_avg_q)
self.init_episode()
def init_episode(self):
self.curr_ep_reward = 0.0
self.curr_ep_length = 0
self.curr_ep_loss = 0.0
self.curr_ep_q = 0.0
self.curr_ep_loss_length = 0
def record(self, episode, epsilon, step):
mean_ep_reward = np.round(np.mean(self.ep_rewards[-100:]), 3)
mean_ep_length = np.round(np.mean(self.ep_lengths[-100:]), 3)
mean_ep_loss = np.round(np.mean(self.ep_avg_losses[-100:]), 3)
mean_ep_q = np.round(np.mean(self.ep_avg_qs[-100:]), 3)
self.moving_avg_ep_rewards.append(mean_ep_reward)
self.moving_avg_ep_lengths.append(mean_ep_length)
self.moving_avg_ep_avg_losses.append(mean_ep_loss)
self.moving_avg_ep_avg_qs.append(mean_ep_q)
last_record_time = self.record_time
self.record_time = time.time()
time_since_last_record = np.round(self.record_time - last_record_time, 3)
print(
f"Episode {episode} - "
f"Step {step} - "
f"Epsilon {epsilon} - "
f"Mean Reward {mean_ep_reward} - "
f"Mean Length {mean_ep_length} - "
f"Mean Loss {mean_ep_loss} - "
f"Mean Q Value {mean_ep_q} - "
f"Time Delta {time_since_last_record} - "
f"Time {datetime.datetime.now().strftime('%Y-%m-%dT%H:%M:%S')}"
)
with open(self.save_log, "a") as f:
f.write(
f"{episode:8d}{step:8d}{epsilon:10.3f}"
f"{mean_ep_reward:15.3f}{mean_ep_length:15.3f}{mean_ep_loss:15.3f}{mean_ep_q:15.3f}"
f"{time_since_last_record:15.3f}"
f"{datetime.datetime.now().strftime('%Y-%m-%dT%H:%M:%S'):>20}\n"
)
for metric in ["ep_rewards", "ep_lengths", "ep_avg_losses", "ep_avg_qs"]:
plt.plot(getattr(self, f"moving_avg_{metric}"))
plt.title(metric)
plt.savefig(getattr(self, f"{metric}_plot"))
plt.clf()