feat(*): Update training to use episodes

This commit is contained in:
Josh Creek
2023-09-27 18:15:52 +01:00
parent e67ef5f5e5
commit 4122853d88
+59 -17
View File
@@ -2,17 +2,23 @@ import os
import rlgym
from stable_baselines3.ppo import PPO
from stable_baselines3.common.callbacks import EvalCallback
from stable_baselines3.common.logger import TensorBoardOutputFormat, configure
from torch.utils.tensorboard import SummaryWriter
from rlgym_tools.sb3_utils import SB3SingleInstanceEnv
from rlgym.utils.reward_functions.common_rewards import VelocityBallToGoalReward
from rlgym.utils.reward_functions.common_rewards import BallYCoordinateReward
from rlgym.utils.obs_builders import AdvancedObs
from rlgym.utils.terminal_conditions.common_conditions import (
TimeoutCondition,
GoalScoredCondition,
)
# from observationBuilders.CustomObsBuilderBluePerspective import (
# CustomObsBuilderBluePerspective,
# )
# set up the folders
model_name = "PPO-rl4"
# Set up the folders
model_name = "PPO-rl6"
models_dir = f"models/{model_name}"
logdir = "logs"
@@ -22,21 +28,25 @@ if not os.path.exists(models_dir):
if not os.path.exists(logdir):
os.makedirs(logdir)
# set up the RLGym environment
# Set up the RLGym environment
gym_env = rlgym.make(
use_injector=True,
self_play=True,
reward_fn=VelocityBallToGoalReward(),
reward_fn=BallYCoordinateReward(),
obs_builder=AdvancedObs(),
# obs_builder=CustomObsBuilderBluePerspective(),
terminal_conditions=(TimeoutCondition(225), GoalScoredCondition()),
)
# wrap the RLGym environment with the single instance wrapper
# Wrap the RLGym environment with the single instance wrapper
env = SB3SingleInstanceEnv(gym_env)
# create a PPO instance and start learning
# Create a PPO instance
learner = PPO(policy="MlpPolicy", env=env, verbose=1, tensorboard_log=logdir)
# Configure TensorBoard for custom logging
tb_log_name = f"logs/{model_name}"
tensorboard_writer = SummaryWriter(log_dir=tb_log_name)
# Define a callback to log rewards to TensorBoard
eval_callback = EvalCallback(
env,
@@ -48,13 +58,45 @@ eval_callback = EvalCallback(
)
TIMESTEPS = 10000
iters = 0
for i in range(1, 30):
learner.learn(
total_timesteps=TIMESTEPS,
reset_num_timesteps=False,
tb_log_name=model_name,
callback=eval_callback,
)
learner.save(f"{models_dir}/{TIMESTEPS*i}")
# Custom callback for saving the model every 100 episodes
def custom_callback(locals, globals):
if num_episodes % 100 == 0:
model_save_path = f"{models_dir}/episode_{num_episodes}"
locals["self"].save(model_save_path)
# Training loop
EPISODES = 1000 # Set the total number of episodes
num_episodes = 0
while num_episodes < EPISODES:
obs = env.reset()
episode_reward = 0
episode_length = 0
while True:
action, _ = learner.predict(obs)
obs, reward, done, _ = env.step(action)
episode_reward += sum(reward)
episode_length += 1
print(done)
if done.any(): # Check if any element in 'done' is True
num_episodes += 1 # Increment the episode count
break
# Calculate the average reward per episode
avg_episode_reward = episode_reward / episode_length
# Log custom episode-related information to TensorBoard
print(episode_reward)
tensorboard_writer.add_scalar("Episode/Reward", float(episode_reward), num_episodes)
tensorboard_writer.add_scalar("Episode/Length", episode_length, num_episodes)
# Run the evaluation callback
if num_episodes % 50 == 0:
eval_callback.on_epoch_end()
# Use the custom callback for saving the model
custom_callback(locals(), globals())