TradingAgents/tradingagents/utils
Youssef Aitousarrah 43bdd6de11 feat: discovery pipeline enhancements with ML signal scanner
Major additions:
- ML win probability scanner: scans ticker universe using trained
  LightGBM/TabPFN model, surfaces candidates with P(WIN) above threshold
- 30-feature engineering pipeline (20 base + 10 interaction features)
  computed from OHLCV data via stockstats + pandas
- Triple-barrier labeling for training data generation
- Dataset builder and training script with calibration analysis
- Discovery enrichment: confluence scoring, short interest extraction,
  earnings estimates, options signal normalization, quant pre-score
- Configurable prompt logging (log_prompts_console flag)
- Enhanced ranker investment thesis (4-6 sentence reasoning)
- Typed DiscoveryConfig dataclass for all discovery settings
- Console price charts for visual ticker analysis

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-09 22:53:42 -08:00
..
llm_factory.py feat: discovery pipeline enhancements with ML signal scanner 2026-02-09 22:53:42 -08:00
logger.py feat: discovery pipeline enhancements with ML signal scanner 2026-02-09 22:53:42 -08:00
structured_output.py feat: discovery pipeline enhancements with ML signal scanner 2026-02-09 22:53:42 -08:00