408 lines
14 KiB
Python
408 lines
14 KiB
Python
"""
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=============================================================
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DonkeyCar RL Autoresearch Controller — Phase 1 (Real Training)
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=============================================================
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Uses Gaussian Process + UCB Bayesian optimization to propose
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hyperparameters for REAL PPO/DQN training runs (not random policy).
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Each trial:
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1. GP+UCB proposes next hyperparameters
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2. Launches donkeycar_sb3_runner.py with REAL training
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3. Runner saves a trained model to disk
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4. Controller records result, updates GP, tracks champion
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5. Repeat
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Results go to: outerloop-results/autoresearch_results_phase1.jsonl
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Champion: models/champion/model.zip + manifest.json
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Usage:
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python3 autoresearch_controller.py --trials 50 --explore 2.0 --push-every 10
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Stop at any time with Ctrl+C. Restart and it picks up from existing results.
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=============================================================
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"""
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import os
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import sys
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import json
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import time
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import subprocess
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import re
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import shutil
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import numpy as np
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from datetime import datetime
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# ---- Project Paths ----
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PROJECT_DIR = os.path.dirname(os.path.abspath(__file__))
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RUNNER_SCRIPT = os.path.join(PROJECT_DIR, 'donkeycar_sb3_runner.py')
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RESULTS_DIR = os.path.join(PROJECT_DIR, 'outerloop-results')
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MODELS_DIR = os.path.join(PROJECT_DIR, 'models')
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CHAMPION_DIR = os.path.join(MODELS_DIR, 'champion')
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# Phase 1 uses a separate results file — do NOT mix with random-policy data
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PHASE1_RESULTS = os.path.join(RESULTS_DIR, 'autoresearch_results_phase1.jsonl')
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PHASE1_LOG = os.path.join(RESULTS_DIR, 'autoresearch_phase1_log.txt')
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# Legacy base data (discretization insights, valid for n_steer/n_throttle)
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BASE_DATA_FILE = os.path.join(RESULTS_DIR, 'clean_sweep_results.jsonl')
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os.makedirs(RESULTS_DIR, exist_ok=True)
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os.makedirs(MODELS_DIR, exist_ok=True)
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os.makedirs(CHAMPION_DIR, exist_ok=True)
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# ---- Parameter Space ----
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# These are the parameters GP+UCB will optimize
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PARAM_SPACE = {
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'n_steer': {'type': 'int', 'min': 3, 'max': 9},
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'n_throttle': {'type': 'int', 'min': 2, 'max': 5},
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'learning_rate': {'type': 'float', 'min': 0.00005, 'max': 0.005},
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'timesteps': {'type': 'int', 'min': 5000, 'max': 30000},
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}
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PARAM_KEYS = list(PARAM_SPACE.keys())
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# Fixed params
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FIXED_PARAMS = {
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'agent': 'ppo',
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'eval_episodes': 5,
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'reward_shaping': True,
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}
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N_CANDIDATES = 500
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UCB_KAPPA = 2.0
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MIN_TRIALS_BEFORE_GP = 3
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JOB_TIMEOUT = 600 # 10 minutes per trial (real training takes longer)
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# ---- Logging ----
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def log(msg):
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ts = datetime.now().strftime('%Y-%m-%d %H:%M:%S')
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line = f'[{ts}] {msg}'
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print(line, flush=True)
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with open(PHASE1_LOG, 'a') as f:
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f.write(line + '\n')
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# ---- Parameter Encoding ----
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def encode_params(params):
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vec = []
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for k in PARAM_KEYS:
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if k not in params:
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continue
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spec = PARAM_SPACE[k]
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v = params[k]
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norm = (v - spec['min']) / (spec['max'] - spec['min'])
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vec.append(np.clip(norm, 0.0, 1.0))
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return np.array(vec)
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def decode_params(vec):
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params = {}
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for i, k in enumerate(PARAM_KEYS):
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spec = PARAM_SPACE[k]
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v = float(vec[i]) * (spec['max'] - spec['min']) + spec['min']
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if spec['type'] == 'int':
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v = int(round(v))
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v = max(spec['min'], min(spec['max'], v))
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else:
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v = float(v)
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v = max(spec['min'], min(spec['max'], v))
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params[k] = v
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return params
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def random_candidate():
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return np.random.uniform(0, 1, len(PARAM_KEYS))
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# ---- Gaussian Process Surrogate Model ----
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class TinyGP:
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"""Minimal RBF-kernel Gaussian Process for surrogate modelling."""
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def __init__(self, length_scale=0.3, noise=1e-3):
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self.ls = length_scale
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self.noise = noise
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self.X = None
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self.alpha = None
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self.K_inv = None
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def _rbf(self, X1, X2):
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diff = X1[:, np.newaxis, :] - X2[np.newaxis, :, :]
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sq = np.sum(diff ** 2, axis=-1)
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return np.exp(-sq / (2 * self.ls ** 2))
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def fit(self, X, y):
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self.X = np.array(X)
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n = len(y)
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K = self._rbf(self.X, self.X) + self.noise * np.eye(n)
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try:
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self.K_inv = np.linalg.inv(K)
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except np.linalg.LinAlgError:
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self.K_inv = np.linalg.pinv(K)
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self.alpha = self.K_inv @ np.array(y)
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def predict(self, X_new):
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X_new = np.atleast_2d(X_new)
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K_s = self._rbf(X_new, self.X)
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mu = K_s @ self.alpha
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var = np.maximum(
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1.0 + self.noise - np.sum((K_s @ self.K_inv) * K_s, axis=1),
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1e-9
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)
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return mu, np.sqrt(var)
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# ---- Champion Tracker ----
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class ChampionTracker:
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def __init__(self, champion_dir):
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self.champion_dir = champion_dir
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self.manifest_path = os.path.join(champion_dir, 'manifest.json')
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os.makedirs(champion_dir, exist_ok=True)
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self._best = self._load()
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def _load(self):
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if os.path.exists(self.manifest_path):
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try:
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with open(self.manifest_path) as f:
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return json.load(f)
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except Exception:
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pass
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return {'mean_reward': float('-inf'), 'trial': None}
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@property
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def best_reward(self):
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return self._best.get('mean_reward', float('-inf'))
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def update_if_better(self, mean_reward, params, model_zip_path, trial):
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if mean_reward is None or mean_reward <= self.best_reward:
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return False
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dest = os.path.join(self.champion_dir, 'model.zip')
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if model_zip_path and os.path.exists(model_zip_path):
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try:
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shutil.copy2(model_zip_path, dest)
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except Exception as e:
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log(f'[Champion] WARNING: Could not copy model: {e}')
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dest = model_zip_path
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manifest = {
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'trial': trial,
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'timestamp': datetime.now().isoformat(),
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'params': params,
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'mean_reward': mean_reward,
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'model_path': dest,
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}
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with open(self.manifest_path, 'w') as f:
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json.dump(manifest, f, indent=2)
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self._best = manifest
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log(f'[Champion] 🏆 NEW BEST! Trial {trial}: mean_reward={mean_reward:.4f} params={params}')
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return True
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def summary(self):
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if self._best['trial'] is None:
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return 'No champion yet.'
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return f"Champion: trial={self._best['trial']} mean_reward={self._best['mean_reward']:.4f} params={self._best['params']}"
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# ---- Load Results ----
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def load_phase1_results():
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"""Load Phase 1 results only — no random-policy contamination."""
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results = []
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if not os.path.exists(PHASE1_RESULTS):
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return results
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with open(PHASE1_RESULTS) as f:
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for line in f:
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line = line.strip()
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if not line:
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continue
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try:
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rec = json.loads(line)
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mr = rec.get('mean_reward')
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if mr is not None:
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results.append({'params': rec['params'], 'mean_reward': float(mr)})
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except Exception:
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pass
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return results
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# ---- GP+UCB Proposal ----
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def propose_next_params(results, trial_num, kappa=UCB_KAPPA):
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if len(results) < MIN_TRIALS_BEFORE_GP:
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log(f'[AutoResearch] Only {len(results)} results — using random proposal.')
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return decode_params(random_candidate())
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X = np.array([encode_params(r['params']) for r in results])
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y = np.array([r['mean_reward'] for r in results])
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y_mean, y_std = y.mean(), y.std() if y.std() > 0 else 1.0
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y_norm = (y - y_mean) / y_std
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gp = TinyGP(length_scale=0.3, noise=1e-3)
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gp.fit(X, y_norm)
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candidates = np.random.uniform(0, 1, (N_CANDIDATES, len(PARAM_KEYS)))
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mu, sigma = gp.predict(candidates)
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ucb = mu + kappa * sigma
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top5 = np.argsort(ucb)[-5:][::-1]
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log(f'[AutoResearch] GP UCB top-5 candidates:')
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for idx in top5:
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p = decode_params(candidates[idx])
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log(f' UCB={ucb[idx]:.4f} mu={mu[idx]:.4f} sigma={sigma[idx]:.4f} params={p}')
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return decode_params(candidates[np.argmax(ucb)])
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# ---- Job Launcher ----
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def kill_stale():
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subprocess.run(['pkill', '-9', '-f', 'donkeycar_sb3_runner.py'], check=False)
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time.sleep(2)
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def launch_job(params, trial_num):
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save_dir = os.path.join(MODELS_DIR, f'trial-{trial_num:04d}')
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os.makedirs(save_dir, exist_ok=True)
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cmd = [
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'python3', RUNNER_SCRIPT,
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'--agent', params.get('agent', FIXED_PARAMS['agent']),
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'--env', 'donkey-generated-roads-v0',
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'--timesteps', str(int(params.get('timesteps', 10000))),
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'--eval-episodes', str(FIXED_PARAMS['eval_episodes']),
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'--learning-rate', str(params.get('learning_rate', 0.0003)),
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'--n-steer', str(int(params.get('n_steer', 7))),
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'--n-throttle', str(int(params.get('n_throttle', 3))),
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'--save-dir', save_dir,
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]
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if FIXED_PARAMS.get('reward_shaping'):
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cmd.append('--reward-shaping')
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log(f'[AutoResearch] Launching trial {trial_num}: {params}')
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start = time.time()
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try:
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proc = subprocess.run(cmd, capture_output=True, text=True, timeout=JOB_TIMEOUT)
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elapsed = time.time() - start
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output = proc.stdout + '\n' + proc.stderr
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status = 'ok' if proc.returncode == 0 else 'error'
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log(f'[AutoResearch] Trial {trial_num} finished in {elapsed:.1f}s, returncode={proc.returncode}')
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except subprocess.TimeoutExpired as e:
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elapsed = time.time() - start
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output = f'[TIMEOUT after {elapsed:.1f}s]'
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status = 'timeout'
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log(f'[AutoResearch] Trial {trial_num} TIMED OUT after {elapsed:.1f}s')
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# Print last 2000 chars of output
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print('--- Runner Output (tail) ---', flush=True)
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print(output[-2000:], flush=True)
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print('--- End Runner Output ---', flush=True)
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# Parse results
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mean_reward = None
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std_reward = None
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m = re.search(r'\[SB3 Runner\]\[TEST\] mean_reward=([\d.]+)', output)
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if m:
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mean_reward = float(m.group(1))
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m = re.search(r'\[SB3 Runner\]\[TEST\] std_reward=([\d.]+)', output)
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if m:
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std_reward = float(m.group(1))
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log(f'[AutoResearch] Trial {trial_num}: mean_reward={mean_reward} std_reward={std_reward}')
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model_zip = os.path.join(save_dir, 'model.zip')
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if not os.path.exists(model_zip):
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model_zip = None
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return mean_reward, std_reward, model_zip, output, status, elapsed, save_dir
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# ---- Result Saving ----
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def save_result(trial, params, mean_reward, std_reward, model_path, champion, status, elapsed):
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rec = {
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'trial': trial,
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'timestamp': datetime.now().isoformat(),
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'params': params,
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'mean_reward': mean_reward,
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'std_reward': std_reward,
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'model_path': model_path,
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'champion': champion,
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'run_status': status,
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'elapsed_sec': elapsed,
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}
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with open(PHASE1_RESULTS, 'a') as f:
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f.write(json.dumps(rec) + '\n')
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# ---- Git Push ----
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def git_push(project_root, trial_num):
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try:
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repo_root = os.path.dirname(PROJECT_DIR)
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subprocess.run(['git', '-C', repo_root, 'add', '-A'], check=True, capture_output=True)
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subprocess.run([
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'git', '-C', repo_root, 'commit', '-m',
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f'autoresearch: phase1 trial {trial_num} results\n\nAgent: pi\nTests: N/A\nTests-Added: 0\nTypeScript: N/A'
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], check=True, capture_output=True)
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subprocess.run(['git', '-C', repo_root, 'push'], check=True, capture_output=True)
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log(f'[AutoResearch] Git push complete after trial {trial_num}')
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except subprocess.CalledProcessError as e:
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log(f'[AutoResearch] Git push failed: {e}')
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# ---- Summary ----
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def print_summary(results, champion, trial):
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if not results:
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return
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log(f'[AutoResearch] === Trial {trial} Summary ===')
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log(f' Total Phase 1 runs: {len(results)}')
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log(f' {champion.summary()}')
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sorted_r = sorted(results, key=lambda r: r['mean_reward'], reverse=True)
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log(f' Top 5:')
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for r in sorted_r[:5]:
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log(f' mean_reward={r["mean_reward"]:.4f} params={r["params"]}')
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# ---- Main Loop ----
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def run_autoresearch(max_trials=50, kappa=UCB_KAPPA, push_every=10):
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log('=' * 60)
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log('[AutoResearch] Phase 1 — Real PPO Training + GP+UCB Optimization')
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log(f'[AutoResearch] Max trials: {max_trials} | kappa: {kappa} | push every: {push_every}')
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log(f'[AutoResearch] Results: {PHASE1_RESULTS}')
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log(f'[AutoResearch] Champion: {CHAMPION_DIR}')
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log('=' * 60)
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results = load_phase1_results()
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champion = ChampionTracker(CHAMPION_DIR)
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log(f'[AutoResearch] Loaded {len(results)} existing Phase 1 results.')
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log(f'[AutoResearch] {champion.summary()}')
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for trial in range(1, max_trials + 1):
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log(f'\n[AutoResearch] ========== Trial {trial}/{max_trials} ==========')
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# 1. Propose params
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proposed = propose_next_params(results, trial, kappa=kappa)
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full_params = {**proposed, **FIXED_PARAMS}
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log(f'[AutoResearch] Proposed: {full_params}')
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# 2. Kill stale jobs
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kill_stale()
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# 3. Launch real training job
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mean_reward, std_reward, model_zip, output, status, elapsed, save_dir = launch_job(full_params, trial)
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# 4. Update champion
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is_champion = champion.update_if_better(mean_reward, full_params, model_zip, trial)
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# 5. Save result
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save_result(trial, full_params, mean_reward, std_reward, model_zip, is_champion, status, elapsed)
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# 6. Add to GP data (only successful runs with valid reward)
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if mean_reward is not None:
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results.append({'params': full_params, 'mean_reward': mean_reward})
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# 7. Print summary
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print_summary(results, champion, trial)
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# 8. Git push periodically
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if push_every > 0 and trial % push_every == 0:
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git_push(PROJECT_DIR, trial)
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time.sleep(2)
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log('[AutoResearch] All trials complete!')
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print_summary(results, champion, trial=max_trials)
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# Final push
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git_push(PROJECT_DIR, max_trials)
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if __name__ == '__main__':
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import argparse
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parser = argparse.ArgumentParser(description='Phase 1 Autoresearch: Real PPO training + GP+UCB.')
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parser.add_argument('--trials', type=int, default=50, help='Number of trials (default: 50)')
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parser.add_argument('--explore', type=float, default=2.0, help='UCB kappa (default: 2.0)')
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parser.add_argument('--push-every', type=int, default=10, help='Git push every N trials (0=disabled)')
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args = parser.parse_args()
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run_autoresearch(max_trials=args.trials, kappa=args.explore, push_every=args.push_every)
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