Sheep training flock _ improver

This commit is contained in:
Johnny Fernandes
2026-04-25 13:30:37 +01:00
parent 438fa1be1d
commit 9bbef28515
+37 -2
View File
@@ -27,10 +27,40 @@ from copy import deepcopy
import numpy as np
from stable_baselines3 import PPO
from stable_baselines3.common.callbacks import BaseCallback
from stable_baselines3.common.vec_env import SubprocVecEnv, DummyVecEnv, VecNormalize
from herding_env import HerdingEnv
class ProgressCallback(BaseCallback):
"""Print a one-line trial-progress summary every `freq` env steps."""
def __init__(self, trial_id: int, stage_label: str, freq: int = 50_000):
super().__init__()
self.trial_id = trial_id
self.stage_label = stage_label
self.freq = freq
self._last = 0
self._ep_returns = [] # rolling list of completed-episode returns
def _on_step(self) -> bool:
for info, done in zip(self.locals.get("infos", []),
self.locals.get("dones", [])):
if done and "episode" in info:
self._ep_returns.append(info["episode"]["r"])
if len(self._ep_returns) > 50:
self._ep_returns.pop(0)
if self.num_timesteps - self._last >= self.freq:
self._last = self.num_timesteps
mean_r = (float(np.mean(self._ep_returns))
if self._ep_returns else float("nan"))
n_eps = len(self._ep_returns)
print(f" ... [trial {self.trial_id+1} | {self.stage_label} | "
f"{self.num_timesteps:>7,} steps | "
f"ep_return(last {n_eps})={mean_r:+.2f}]",
flush=True)
return True
# ---------------------------------------------------------------------------
# Search space — reward weights + a couple of hyperparams
# ---------------------------------------------------------------------------
@@ -128,12 +158,17 @@ def run_trial(trial_id: int, cfg: dict, log_path: str) -> dict:
)
try:
model.learn(total_timesteps=TRAIN_STAGE1_STEPS, reset_num_timesteps=True)
model.learn(total_timesteps=TRAIN_STAGE1_STEPS,
reset_num_timesteps=True,
callback=ProgressCallback(trial_id, "1 sheep"))
vn.env_method("set_n_sheep", 2)
model.learn(total_timesteps=TRAIN_STAGE2_STEPS, reset_num_timesteps=False)
model.learn(total_timesteps=TRAIN_STAGE2_STEPS,
reset_num_timesteps=False,
callback=ProgressCallback(trial_id, "2 sheep"))
per_sheep = {}
for n in EVAL_NSHEEP:
print(f" ... [trial {trial_id+1} | eval n={n}]", flush=True)
per_sheep[n] = evaluate(model, vn, n, EVAL_EPISODES, MAX_STEPS, rcfg)
finally:
try: vn.close()