| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129 |
- from __future__ import annotations
- import json
- from dataclasses import asdict
- from pathlib import Path
- import pandas as pd
- from dragon_branch_configs import alpha_first_glued_refined_hot_cap_config
- from dragon_indicators import DragonIndicatorConfig, DragonIndicatorEngine
- from dragon_shared import END_DATE, START_DATE, evaluation_years, format_num as _format_num, format_pct as _format_pct, profit_factor
- from dragon_strategy import DragonRuleEngine
- RC_VERSION = "RC1"
- RC_BRANCH = "alpha_first_glued_refined_hot_cap"
- def _max_drawdown(returns: pd.Series) -> tuple[float, int]:
- equity = (1.0 + returns.astype(float)).cumprod()
- peak = equity.cummax()
- dd = equity / peak - 1.0
- max_dd = float(dd.min()) if not dd.empty else float("nan")
- duration = 0
- max_duration = 0
- for value in dd:
- if value < 0:
- duration += 1
- max_duration = max(max_duration, duration)
- else:
- duration = 0
- return max_dd, max_duration
- def _load_indicator_snapshot(base_dir: Path) -> pd.DataFrame:
- path = base_dir / "dragon_indicator_snapshot.csv"
- if path.exists():
- df = pd.read_csv(path, encoding="utf-8-sig")
- df["date"] = pd.to_datetime(df["date"])
- return df.sort_values("date").reset_index(drop=True)
- engine = DragonIndicatorEngine(DragonIndicatorConfig(start_date="2015-01-01", end_date="2026-01-31"))
- df = engine.compute(engine.fetch_daily_data()).reset_index(drop=False).rename(columns={"index": "date"})
- df.to_csv(path, index=False, encoding="utf-8-sig")
- return df
- def main() -> None:
- base_dir = Path(__file__).resolve().parent
- indicators = _load_indicator_snapshot(base_dir)
- indexed = indicators.set_index("date", drop=False)
- config = alpha_first_glued_refined_hot_cap_config()
- engine = DragonRuleEngine(config=config)
- events, trades = engine.run(indexed)
- trades = trades[
- (trades["buy_date"] >= START_DATE)
- & (trades["buy_date"] <= END_DATE)
- & (trades["sell_date"] >= START_DATE)
- & (trades["sell_date"] <= END_DATE)
- ].copy()
- returns = trades["return_pct"].astype(float)
- compounded = float((1.0 + returns).prod() - 1.0)
- years = evaluation_years(START_DATE, END_DATE)
- cagr = float((1.0 + compounded) ** (1.0 / years) - 1.0)
- max_dd, dd_duration = _max_drawdown(returns)
- snapshot = {
- "release_version": RC_VERSION,
- "branch_name": RC_BRANCH,
- "evaluation_window": {"start": START_DATE, "end": END_DATE},
- "trade_count": int(len(trades)),
- "win_rate": float((returns > 0).mean()),
- "avg_return": float(returns.mean()),
- "median_return": float(returns.median()),
- "profit_factor": profit_factor(returns),
- "compounded_return": compounded,
- "cagr": cagr,
- "max_drawdown": max_dd,
- "drawdown_duration_trades": dd_duration,
- "config": {
- **asdict(config),
- "disabled_rules": sorted(config.disabled_rules),
- },
- }
- (base_dir / "dragon_rc1_config_snapshot.json").write_text(
- json.dumps(snapshot, indent=2, ensure_ascii=False) + "\n",
- encoding="utf-8",
- )
- lines = [
- "# Dragon RC1 Release",
- "",
- f"- Release version: `{RC_VERSION}`",
- f"- Strategy branch: `{RC_BRANCH}`",
- f"- Freeze date: `{pd.Timestamp.now().date().isoformat()}`",
- f"- Evaluation window: `{START_DATE}` to `{END_DATE}`",
- "",
- "## Freeze Intent",
- "- `RC1` is the first frozen release candidate of the refined alpha branch.",
- "- Its purpose is not to continue blind optimization, but to serve as the tracked strategy candidate for daily signal production and monitoring.",
- "",
- "## Frozen Headline",
- f"- trades: `{int(len(trades))}`",
- f"- win_rate: `{_format_pct(float((returns > 0).mean()))}`",
- f"- avg_return: `{_format_pct(float(returns.mean()))}`",
- f"- median_return: `{_format_pct(float(returns.median()))}`",
- f"- profit_factor: `{_format_num(profit_factor(returns))}`",
- f"- compounded_return: `{_format_pct(compounded)}`",
- f"- CAGR: `{_format_pct(cagr)}`",
- f"- max_drawdown: `{_format_pct(max_dd)}`",
- f"- drawdown_duration_trades: `{dd_duration}`",
- "",
- "## Operating Rule",
- "- Treat `RC1` as the forward default branch.",
- "- Do not change frozen core parameters inside `RC1` directly.",
- "- Any future core-threshold change must create a new named branch and go through attribution plus execution-aware stress again.",
- "",
- "## Artifacts",
- "- `dragon_rc1_config_snapshot.json`",
- "- `dragon_formal_strategy_governance.md`",
- "- `dragon_parameter_governance.md`",
- "- `dragon_formal_strategy_memo.md`",
- ]
- (base_dir / "dragon_rc1_release.md").write_text("\n".join(lines) + "\n", encoding="utf-8")
- if __name__ == "__main__":
- main()
|