feat: Exp 13 — generated_track, v4 reward, back to basics (no extra heuristics)
Return to Wave 4 setup that produced Trial 9 (2000/2000 on generated_track). v4 reward: base x efficiency x speed. Circles give ~0 reward naturally. No StuckTerminationWrapper, no CTE patience, no progress terminator. Just ThrottleClamp + V4Reward. Lap-based stopping criterion.
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"""
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Exp 13: Single track — generated_track, v4 reward, back to basics.
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This is a DELIBERATE return to the setup that worked in Wave 4 Trial 9.
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What Wave 4 used (from git history at commit 7534527):
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- v4 reward: base × efficiency × speed_bonus
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- Circles give ~0 reward naturally (efficiency → 0)
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- No extra termination heuristics needed
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- wrap_env: ThrottleClampWrapper + SpeedRewardWrapper ONLY
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- No StuckTerminationWrapper in the gym wrapper chain
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- Stuck detection was a PPO callback (HealthCheckCallback)
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- throttle_min=0.2, lr=0.000725
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- Single track
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We have been overcomplicating this with efficiency gates, progress
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terminators, CTE patience, wall-clock timeouts etc. Wave 4 Trial 9
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drove generated_track 2000/2000 without any of that. Going back.
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Stopping criterion: eval every 5k steps, stop when 3 laps achieved.
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"""
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import sys, os, time
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sys.path.insert(0, '/home/paulh/projects/donkeycar-rl-autoresearch/agent')
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from donkeycar_sb3_runner import ThrottleClampWrapper
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from stable_baselines3 import PPO
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from stable_baselines3.common.vec_env import DummyVecEnv, VecTransposeImage
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from stable_baselines3.common.callbacks import BaseCallback
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import gymnasium as gym
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import numpy as np
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HOST = '10.0.0.55'
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PORT = 9091
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TRACK_ID = 'donkey-generated-track-v0'
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TRACK_NAME = 'generated_track'
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THROTTLE_MIN = 0.2
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SPEED_SCALE = 0.1
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LR = 0.000725
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MAX_STEPS = 300000
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EVAL_EVERY = 5000
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LAP_STOP = 3 # stop when eval achieves this many laps
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SAVE_DIR = '/home/paulh/projects/donkeycar-rl-autoresearch/agent/models/exp13-gentrack-v4'
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os.makedirs(SAVE_DIR, exist_ok=True)
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# ---- v4 reward (inline — same formula as Wave 4) ----
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import gymnasium as gym_mod
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from collections import deque
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class V4RewardWrapper(gym_mod.Wrapper):
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"""
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v4 reward: base × efficiency × speed_bonus.
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Exactly as used during Wave 4 successful training.
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Circles give ~0 reward (efficiency → 0). No extra termination needed.
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"""
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def __init__(self, env, speed_scale=0.1, window_size=60,
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min_efficiency=0.05, max_cte=8.0):
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super().__init__(env)
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self.speed_scale = speed_scale
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self.min_efficiency = min_efficiency
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self.max_cte = max_cte
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self._pos_history = deque(maxlen=window_size + 1)
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def reset(self, **kwargs):
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self._pos_history.clear()
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return self.env.reset(**kwargs)
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def step(self, action):
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result = self.env.step(action)
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if len(result) == 5:
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obs, _sim_r, terminated, truncated, info = result
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done = terminated or truncated
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else:
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obs, _sim_r, done, info = result
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terminated, truncated = done, False
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reward = self._compute_reward(done, info)
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if len(result) == 5:
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return obs, reward, terminated, truncated, info
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return obs, reward, done, info
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def _compute_reward(self, done, info):
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if done:
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return -1.0
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pos = info.get('pos', None)
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if pos is not None:
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try:
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self._pos_history.append(np.array(list(pos)[:3], dtype=np.float64))
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except (TypeError, ValueError):
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pass
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try:
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cte = float(info.get('cte', 0.0) or 0.0)
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except (TypeError, ValueError):
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cte = 0.0
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base = 1.0 - min(abs(cte) / self.max_cte, 1.0)
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efficiency = self._compute_efficiency()
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eff = max(0.0, (efficiency - self.min_efficiency) / (1.0 - self.min_efficiency))
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try:
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speed = max(0.0, float(info.get('speed', 0.0) or 0.0))
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except (TypeError, ValueError):
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speed = 0.0
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return base * eff * (1.0 + self.speed_scale * speed)
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def _compute_efficiency(self):
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if len(self._pos_history) < 3:
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return 1.0
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positions = list(self._pos_history)
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net = np.linalg.norm(positions[-1] - positions[0])
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total = sum(np.linalg.norm(positions[i+1] - positions[i])
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for i in range(len(positions) - 1))
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return float(net / total) if total > 1e-6 else 1.0
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def log(msg):
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from datetime import datetime
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print(f'[{datetime.now().strftime("%H:%M:%S")}] {msg}', flush=True)
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def make_env():
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def _init():
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raw = gym.make(TRACK_ID, conf={'host': HOST, 'port': PORT})
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env = ThrottleClampWrapper(raw, throttle_min=THROTTLE_MIN)
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env = V4RewardWrapper(env, speed_scale=SPEED_SCALE)
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return env
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return _init
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log('='*60)
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log(f'Exp 13: {TRACK_NAME}, v4 reward, back to basics')
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log(f' Host: {HOST}:{PORT}')
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log(f' throttle_min={THROTTLE_MIN}, lr={LR}')
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log(f' Reward: v4 (base × efficiency × speed) — same as Wave 4')
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log(f' Wrappers: ThrottleClamp + V4Reward ONLY (no extra terminators)')
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log(f' Stop: eval every {EVAL_EVERY:,} steps, stop at {LAP_STOP} laps')
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log('='*60)
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env = VecTransposeImage(DummyVecEnv([make_env()]))
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model = PPO('CnnPolicy', env, learning_rate=LR, verbose=1, device='cpu')
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log('PPO created. Training...')
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best_reward = float('-inf')
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best_laps = 0
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steps_done = 0
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while steps_done < MAX_STEPS:
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seg = min(EVAL_EVERY, MAX_STEPS - steps_done)
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model.learn(total_timesteps=seg, reset_num_timesteps=False)
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steps_done += seg
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ckpt = os.path.join(SAVE_DIR, f'checkpoint_{steps_done:07d}')
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model.save(ckpt)
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model.save(os.path.join(SAVE_DIR, 'model'))
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# Eval: one deterministic episode, count laps
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try:
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obs = env.reset()
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ep_r = 0.0
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ep_steps = 0
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laps = 0
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prev_lc = 0
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for _ in range(2000):
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action, _ = model.predict(obs, deterministic=True)
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obs, r, d, info = env.step(action)
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ep_r += float(r[0])
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ep_steps += 1
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try:
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lc = int((info[0] if isinstance(info, (list, tuple)) else info)
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.get('lap_count', 0) or 0)
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if lc > prev_lc:
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laps = lc
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prev_lc = lc
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except Exception:
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pass
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if bool(d[0]):
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break
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status = '✅' if ep_steps >= 2000 else f'❌@{ep_steps}'
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log(f'[{steps_done:,}] reward={ep_r:.1f} steps={ep_steps} '
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f'laps={laps} {status}')
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if ep_r > best_reward:
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best_reward = ep_r
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model.save(os.path.join(SAVE_DIR, 'best_model'))
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log(f' ⭐ NEW BEST: {best_reward:.1f}')
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if laps > best_laps:
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best_laps = laps
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log(f' 🏆 BEST LAPS: {best_laps}')
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if laps >= LAP_STOP:
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log(f' 🎯 {laps} laps achieved at {steps_done:,} steps — STOPPING')
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break
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except Exception as e:
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log(f' Eval error: {e}')
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env.close()
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time.sleep(3)
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log(f'\nDone. best_laps={best_laps} best_reward={best_reward:.1f}')
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log(f'Best model: {SAVE_DIR}/best_model.zip')
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log('=== Exp 13 COMPLETE ===')
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