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- from __future__ import annotations
- from pathlib import Path
- import pandas as pd
- from dragon_branch_configs import alpha_first_glued_refined_hot_cap_config
- from dragon_rc1_golden_baseline import _load_indicator_snapshot
- from dragon_shared import END_DATE, START_DATE, format_num, format_pct, profit_factor
- from dragon_strategy import DragonRuleEngine
- def _summary(frame: pd.DataFrame, group_cols: list[str]) -> pd.DataFrame:
- grouped = frame.groupby(group_cols, dropna=False)
- rows: list[dict[str, object]] = []
- for keys, group in grouped:
- if not isinstance(keys, tuple):
- keys = (keys,)
- returns = group["return_pct"].astype(float)
- row = {group_cols[i]: keys[i] for i in range(len(group_cols))}
- row.update(
- {
- "trades": int(len(group)),
- "win_rate": float((returns > 0).mean()),
- "avg_return": float(returns.mean()),
- "median_return": float(returns.median()),
- "compounded_return": float((1.0 + returns).prod() - 1.0),
- "profit_factor": profit_factor(returns),
- }
- )
- rows.append(row)
- return pd.DataFrame(rows).sort_values("trades", ascending=False).reset_index(drop=True)
- def main() -> None:
- base_dir = Path(__file__).resolve().parent
- indexed, source = _load_indicator_snapshot(base_dir)
- engine = DragonRuleEngine(config=alpha_first_glued_refined_hot_cap_config())
- _, 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()
- layer_summary = _summary(trades, ["buy_reason_layer", "sell_reason_layer"])
- family_summary = _summary(trades, ["buy_reason_family", "sell_reason_family"])
- entry_summary = _summary(trades, ["buy_reason_layer", "buy_reason_family"])
- exit_summary = _summary(trades, ["sell_reason_layer", "sell_reason_family"])
- layer_summary.to_csv(base_dir / "dragon_layered_pnl_attribution.csv", index=False, encoding="utf-8-sig")
- family_summary.to_csv(base_dir / "dragon_layered_family_pnl_attribution.csv", index=False, encoding="utf-8-sig")
- entry_summary.to_csv(base_dir / "dragon_layered_entry_pnl_attribution.csv", index=False, encoding="utf-8-sig")
- exit_summary.to_csv(base_dir / "dragon_layered_exit_pnl_attribution.csv", index=False, encoding="utf-8-sig")
- lines: list[str] = [
- "# Dragon Layered PnL Attribution",
- "",
- f"- window: `{START_DATE} -> {END_DATE}`",
- "- branch: `alpha_first_glued_refined_hot_cap` (RC1)",
- f"- indicator source: `{source}`",
- f"- trades: `{int(len(trades))}`",
- "",
- "## Entry-Layer x Exit-Layer",
- ]
- for _, row in layer_summary.iterrows():
- lines.append(
- "- "
- f"{row['buy_reason_layer']} -> {row['sell_reason_layer']}: "
- f"trades `{int(row['trades'])}`, "
- f"win_rate `{format_pct(float(row['win_rate']))}`, "
- f"avg_return `{format_pct(float(row['avg_return']))}`, "
- f"PF `{format_num(float(row['profit_factor']))}`"
- )
- lines.extend(
- [
- "",
- "## Top Entry Families",
- ]
- )
- for _, row in entry_summary.head(10).iterrows():
- lines.append(
- "- "
- f"{row['buy_reason_layer']} / {row['buy_reason_family']}: "
- f"trades `{int(row['trades'])}`, "
- f"avg_return `{format_pct(float(row['avg_return']))}`, "
- f"PF `{format_num(float(row['profit_factor']))}`"
- )
- lines.extend(
- [
- "",
- "## Top Exit Families",
- ]
- )
- for _, row in exit_summary.head(10).iterrows():
- lines.append(
- "- "
- f"{row['sell_reason_layer']} / {row['sell_reason_family']}: "
- f"trades `{int(row['trades'])}`, "
- f"avg_return `{format_pct(float(row['avg_return']))}`, "
- f"PF `{format_num(float(row['profit_factor']))}`"
- )
- (base_dir / "dragon_layered_pnl_attribution.md").write_text("\n".join(lines) + "\n", encoding="utf-8")
- if __name__ == "__main__":
- main()
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