Commit Graph

2 Commits

Author SHA1 Message Date
Paul Huliganga 4ca5304a71 wave3: add multi-track autoresearch system (83 tests passing)
New files:
- agent/multitrack_runner.py: trains PPO round-robin across generated_road,
  generated_track, mountain_track; zero-shot evaluates on mini_monaco + warren
- agent/wave3_controller.py: GP+UCB outer loop optimising combined test score
- tests/test_wave3.py: 30 new tests (83 total)

Track classification (from visual analysis of all 10 screenshots):
  Training  : generated_road, generated_track, mountain_track
  Test (ZSL): mini_monaco, warren (pseudo-outdoor — proper road markings)
  Skip      : warehouse, robo_racing_league, waveshare, circuit_launch (indoor floor)
              avc_sparkfun (orange markings — different visual domain)

Key design decisions:
  ADR-010: Warren = pseudo-outdoor track (proper road lines, not floor marks)
  ADR-011: Test tracks NEVER used in training; GP optimises test score only
  ADR-012: All trials warm-start from Phase 2 champion model
  Switching: env.close() + send_exit_scene_raw() + 4s wait + gym.make()

Pre-Wave-3 baseline: 1/10 tracks drivable (0/2 held-out test tracks)
Wave 3 goal: 2/2 test tracks drivable (mini_monaco + warren)

Agent: pi
Tests: 83 passed
Tests-Added: 30
TypeScript: N/A
2026-04-14 12:47:12 -04:00
Paul Huliganga c804189dd0 feat: Wave 1 complete — real PPO training, model save, GP+UCB autoresearch, 37 tests passing
- Rebuilt donkeycar_sb3_runner.py: real PPO/DQN model.learn() + evaluate_policy() + model.save()
- Added SpeedRewardWrapper: reward = speed * (1 - |cte|/max_cte)
- Added ChampionTracker: tracks best model across all trials, writes manifest.json
- Rebuilt autoresearch_controller.py: Phase 1 results separated from random-policy data
- Added timesteps to GP search space
- Added --push-every N for automatic git push
- Added 37 passing tests: discretize_action, reward_wrapper, autoresearch_controller, runner_integration
- Scaffolded project with agent harness (large mode): PROJECT-SPEC, DECISIONS, IMPLEMENTATION_PLAN, EXECUTION_MASTER
- Fixed: model.save() never called before model is defined (was root cause of all prior NameError crashes)
- Fixed: random policy replaced with real trained policy evaluation

Agent: pi/claude-sonnet
Tests: 37/37 passing
Tests-Added: +37
TypeScript: N/A
2026-04-13 10:03:15 -04:00