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sb3_simple.py
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sb3_simple.py
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""" Optuna example that optimizes the hyperparameters of
a reinforcement learning agent using A2C implementation from Stable-Baselines3
on a OpenAI Gym environment.
This is a simplified version of what can be found in https://github.com/DLR-RM/rl-baselines3-zoo.
You can run this example as follows:
$ python sb3_simple.py
"""
from typing import Any
from typing import Dict
import gym
import optuna
from optuna.pruners import MedianPruner
from optuna.samplers import TPESampler
from stable_baselines3 import A2C
from stable_baselines3.common.callbacks import EvalCallback
import torch
import torch.nn as nn
N_TRIALS = 100
N_STARTUP_TRIALS = 5
N_EVALUATIONS = 2
N_TIMESTEPS = int(2e4)
EVAL_FREQ = int(N_TIMESTEPS / N_EVALUATIONS)
N_EVAL_EPISODES = 3
ENV_ID = "CartPole-v1"
DEFAULT_HYPERPARAMS = {
"policy": "MlpPolicy",
"env": ENV_ID,
}
def sample_a2c_params(trial: optuna.Trial) -> Dict[str, Any]:
"""Sampler for A2C hyperparameters."""
gamma = 1.0 - trial.suggest_float("gamma", 0.0001, 0.1, log=True)
max_grad_norm = trial.suggest_float("max_grad_norm", 0.3, 5.0, log=True)
gae_lambda = 1.0 - trial.suggest_float("gae_lambda", 0.001, 0.2, log=True)
n_steps = 2 ** trial.suggest_int("exponent_n_steps", 3, 10)
learning_rate = trial.suggest_float("lr", 1e-5, 1, log=True)
ent_coef = trial.suggest_float("ent_coef", 0.00000001, 0.1, log=True)
ortho_init = trial.suggest_categorical("ortho_init", [False, True])
net_arch = trial.suggest_categorical("net_arch", ["tiny", "small"])
activation_fn = trial.suggest_categorical("activation_fn", ["tanh", "relu"])
# Display true values
trial.set_user_attr("gamma_", gamma)
trial.set_user_attr("gae_lambda_", gae_lambda)
trial.set_user_attr("n_steps", n_steps)
net_arch = [
{"pi": [64], "vf": [64]} if net_arch == "tiny" else {"pi": [64, 64], "vf": [64, 64]}
]
activation_fn = {"tanh": nn.Tanh, "relu": nn.ReLU}[activation_fn]
return {
"n_steps": n_steps,
"gamma": gamma,
"gae_lambda": gae_lambda,
"learning_rate": learning_rate,
"ent_coef": ent_coef,
"max_grad_norm": max_grad_norm,
"policy_kwargs": {
"net_arch": net_arch,
"activation_fn": activation_fn,
"ortho_init": ortho_init,
},
}
class TrialEvalCallback(EvalCallback):
"""Callback used for evaluating and reporting a trial."""
def __init__(
self,
eval_env: gym.Env,
trial: optuna.Trial,
n_eval_episodes: int = 5,
eval_freq: int = 10000,
deterministic: bool = True,
verbose: int = 0,
):
super().__init__(
eval_env=eval_env,
n_eval_episodes=n_eval_episodes,
eval_freq=eval_freq,
deterministic=deterministic,
verbose=verbose,
)
self.trial = trial
self.eval_idx = 0
self.is_pruned = False
def _on_step(self) -> bool:
if self.eval_freq > 0 and self.n_calls % self.eval_freq == 0:
super()._on_step()
self.eval_idx += 1
self.trial.report(self.last_mean_reward, self.eval_idx)
# Prune trial if need
if self.trial.should_prune():
self.is_pruned = True
return False
return True
def objective(trial: optuna.Trial) -> float:
kwargs = DEFAULT_HYPERPARAMS.copy()
# Sample hyperparameters
kwargs.update(sample_a2c_params(trial))
# Create the RL model
model = A2C(**kwargs)
# Create env used for evaluation
eval_env = gym.make(ENV_ID)
# Create the callback that will periodically evaluate
# and report the performance
eval_callback = TrialEvalCallback(
eval_env, trial, n_eval_episodes=N_EVAL_EPISODES, eval_freq=EVAL_FREQ, deterministic=True
)
nan_encountered = False
try:
model.learn(N_TIMESTEPS, callback=eval_callback)
except AssertionError as e:
# Sometimes, random hyperparams can generate NaN
print(e)
nan_encountered = True
finally:
# Free memory
model.env.close()
eval_env.close()
# Tell the optimizer that the trial failed
if nan_encountered:
return float("nan")
if eval_callback.is_pruned:
raise optuna.exceptions.TrialPruned()
return eval_callback.last_mean_reward
if __name__ == "__main__":
# Set pytorch num threads to 1 for faster training
torch.set_num_threads(1)
sampler = TPESampler(n_startup_trials=N_STARTUP_TRIALS)
# Do not prune before 1/3 of the max budget is used
pruner = MedianPruner(n_startup_trials=N_STARTUP_TRIALS, n_warmup_steps=N_EVALUATIONS // 3)
study = optuna.create_study(sampler=sampler, pruner=pruner, direction="maximize")
try:
study.optimize(objective, n_trials=N_TRIALS, timeout=600)
except KeyboardInterrupt:
pass
print("Number of finished trials: ", len(study.trials))
print("Best trial:")
trial = study.best_trial
print(" Value: ", trial.value)
print(" Params: ")
for key, value in trial.params.items():
print(" {}: {}".format(key, value))
print(" User attrs:")
for key, value in trial.user_attrs.items():
print(" {}: {}".format(key, value))