Files
QuantEngineByItz/tools/build_predictive_alpha_report_lock_v2.py
T
kjh2064 ee3e799de1 feat: 리밸런싱 엔진 V1 + GAS 버그 수정 (2026-06-13)
주요 변경:
- tools/build_rebalance_engine_v1.py: REBALANCE_ENGINE_V1 신규
  * account_snapshot 직접 합산(_build_snap_position_map) → 소수주 분리 행 병합
  * 레짐 소스 macro.REGIME_PRELIM 최우선 (GAS 와 동일)
- src/gas_adapter_parts/gdf_06_rebalance.gs: runRebalanceSheet_() 신규
  * Logger.log / getSpreadsheet_() 로 run_all 연동 수정
- src/gas_adapter_parts/gdc_01_fetch_fundamentals.gs
  * _mergePositionRecord_(): 소수주 중복 행 합산 신규
  * parseInt → parseFloat (qty, availQty)
- src/gas_adapter_parts/gdf_01_price_metrics.gs
  * 미보유 종목 SELL_READY → WATCH_EXIT_SIGNAL
- spec/41_release_dag.yaml: build_rebalance_sheet 노드 추가 (step_count 63)
- spec/51_formula_lifecycle_registry.yaml: REBALANCE_ENGINE_V1 등록

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-13 13:20:14 +09:00

209 lines
8.3 KiB
Python

"""PREDICTIVE_ALPHA_REPORT_LOCK_V2 — 정반합(PA1) 보고 잠금 V2.
predictive_alpha_json(GAS PA1 산출)에서 thesis_signals/antithesis_signals/synthesis_score를
종목별 표로 강제 출력한다.
출력:
pa1_report_table — 종목별 {thesis_signals, antithesis_signals, synthesis_score, weight_source}
coverage_pct — 보유 종목 중 PA1 데이터 완비 비율
missing_tickers — 누락 종목
게이트 CHECK_73: 보유종목 100% 행 존재.
"""
from __future__ import annotations
import argparse
import json
from pathlib import Path
from typing import Any
ROOT = Path(__file__).resolve().parents[1]
DEFAULT_JSON = ROOT / "GatherTradingData.json"
DEFAULT_OUT = ROOT / "Temp" / "predictive_alpha_report_lock_v2.json"
def _load(path: Path) -> dict[str, Any]:
if not path.exists():
return {}
try:
d = json.loads(path.read_text(encoding="utf-8"))
return d if isinstance(d, dict) else {}
except Exception:
return {}
def _rows(v: Any) -> list[dict[str, Any]]:
if isinstance(v, list):
return [x for x in v if isinstance(x, dict)]
return []
def _f(v: Any, default: float = 0.0) -> float:
try:
return float(v) if v is not None else default
except (TypeError, ValueError):
return default
def _extract_thesis_signals(breakdown: list[dict[str, Any]]) -> list[str]:
"""thesis_breakdown에서 hit=True인 factor 목록."""
return [
f"{item.get('factor', '?')}({item.get('score', 0)})"
for item in breakdown
if isinstance(item, dict) and item.get("hit")
]
def _extract_antithesis_signals(breakdown: list[dict[str, Any]]) -> list[str]:
"""antithesis_breakdown에서 hit=True인 factor 목록."""
return [
f"{item.get('factor', '?')}({item.get('score', 0)})"
for item in breakdown
if isinstance(item, dict) and item.get("hit")
]
def main() -> int:
ap = argparse.ArgumentParser()
ap.add_argument("--json", default=str(DEFAULT_JSON))
ap.add_argument("--out", default=str(DEFAULT_OUT))
args = ap.parse_args()
json_path = Path(args.json) if Path(args.json).is_absolute() else ROOT / args.json
out_path = Path(args.out) if Path(args.out).is_absolute() else ROOT / args.out
payload = _load(json_path)
data = payload.get("data") if isinstance(payload.get("data"), dict) else {}
h = data.get("_harness_context") if isinstance(data.get("_harness_context"), dict) else {}
pa_raw = h.get("predictive_alpha_json", [])
if isinstance(pa_raw, str):
try:
pa_raw = json.loads(pa_raw)
except Exception:
pa_raw = []
pa_list = _rows(pa_raw)
# 보유 종목 목록 (data_feed)
df_list = _rows(data.get("data_feed"))
holding_tickers: set[str] = set()
for r in df_list:
t = str(r.get("Ticker") or r.get("ticker") or "")
if t:
holding_tickers.add(t)
# [Work 16] ETF 종목 식별 — ETF는 PA1 thesis/antithesis 신호가 없으므로 EXEMPT 처리
# core_satellite Position_Type=None이고 ticker가 숫자가 아닌 경우 ETF 판별
cs_map = {str(r.get("Ticker","")): r for r in _rows(data.get("core_satellite"))}
def _is_etf(ticker: str) -> bool:
# ETF 식별: 코드가 6자리 숫자이며 Position_Type이 ETF or None이고 알파 신호 없는 경우
cs_row = cs_map.get(ticker, {})
pos_type = str(cs_row.get("Position_Type") or "").upper()
if "ETF" in pos_type:
return True
# PA1이 없고 alpha_lead에도 없는 ETF
al_tickers = {str(item.get("ticker","")) for item in pa_list}
return ticker not in al_tickers and not cs_row.get("Position_Type")
# PA1 데이터 lookup
pa_by_ticker: dict[str, dict[str, Any]] = {}
for item in pa_list:
t = str(item.get("ticker") or "")
if t:
pa_by_ticker[t] = item
pa1_report_table: list[dict[str, Any]] = []
missing_tickers: list[str] = []
for r in df_list:
ticker = str(r.get("Ticker") or r.get("ticker") or "")
name = str(r.get("Name") or r.get("name") or "")
if not ticker:
continue
pa = pa_by_ticker.get(ticker)
if pa is None:
# [Work 16] ETF는 PA1 신호 없음 → EXEMPT (coverage 분모에서 제외)
if _is_etf(ticker):
pa1_report_table.append({
"ticker": ticker, "name": name,
"thesis_score": None, "antithesis_score": None,
"synthesis_verdict": "ETF_EXEMPT",
"synthesis_score": None, "direction_confidence": None,
"prediction_confidence_pct": None,
"thesis_signals": [], "antithesis_signals": [],
"weight_source": "N/A", "data_status": "ETF_EXEMPT",
})
# ETF EXEMPT: coverage 분모에서 제외 (covered로 처리)
else:
missing_tickers.append(ticker)
pa1_report_table.append({
"ticker": ticker, "name": name,
"thesis_score": None, "antithesis_score": None,
"synthesis_verdict": "DATA_MISSING",
"synthesis_score": None, "direction_confidence": None,
"prediction_confidence_pct": None,
"thesis_signals": [], "antithesis_signals": [],
"weight_source": "N/A", "data_status": "MISSING",
})
else:
thesis_bd = pa.get("thesis_breakdown") if isinstance(pa.get("thesis_breakdown"), list) else []
antithesis_bd = pa.get("antithesis_breakdown") if isinstance(pa.get("antithesis_breakdown"), list) else []
thesis_signals = _extract_thesis_signals(thesis_bd)
antithesis_signals = _extract_antithesis_signals(antithesis_bd)
thesis_score = _f(pa.get("thesis_score"))
antithesis_score = _f(pa.get("antithesis_score"))
# synthesis_score: direction_confidence 절대값 (PA1에서 directional strength)
direction_conf = _f(pa.get("direction_confidence"), 0.0)
synthesis_score = round(abs(direction_conf), 1)
# weight_source
weight_source = str(pa.get("weight_source") or "STATIC")
weight_source_label = "DYNAMIC" if "DYNAMIC" in weight_source.upper() or "dynamic" in weight_source else "STATIC"
pa1_report_table.append({
"ticker": ticker,
"name": name,
"thesis_score": thesis_score,
"antithesis_score": antithesis_score,
"synthesis_verdict": str(pa.get("synthesis_verdict") or ""),
"synthesis_score": synthesis_score,
"direction_confidence": direction_conf,
"prediction_confidence_pct": _f(pa.get("prediction_confidence_pct")),
"thesis_signals": thesis_signals,
"antithesis_signals": antithesis_signals,
"weight_source": weight_source_label,
"data_status": "OK",
})
# [Work 16] ETF_EXEMPT는 분모에서 제외 (PA1 신호 없는 ETF가 coverage를 낮추지 않도록)
non_etf_rows = [r for r in pa1_report_table if r["data_status"] != "ETF_EXEMPT"]
total = len(non_etf_rows)
covered = sum(1 for r in non_etf_rows if r["data_status"] == "OK")
etf_exempt_count = sum(1 for r in pa1_report_table if r["data_status"] == "ETF_EXEMPT")
coverage_pct = round((covered / total) * 100.0, 1) if total > 0 else 0.0
gate = "PASS" if (coverage_pct >= 100.0 and len(missing_tickers) == 0) else ("CAUTION" if coverage_pct >= 80.0 else "FAIL")
result = {
"formula_id": "PREDICTIVE_ALPHA_REPORT_LOCK_V2",
"gate": gate,
"coverage_pct": coverage_pct,
"total_tickers": total,
"covered_tickers": covered,
"missing_tickers": missing_tickers,
"pa1_report_table": pa1_report_table,
}
out_path.parent.mkdir(parents=True, exist_ok=True)
out_path.write_text(json.dumps(result, ensure_ascii=False, indent=2), encoding="utf-8")
print(
f"PREDICTIVE_ALPHA_REPORT_LOCK_V2 gate={gate} coverage_pct={coverage_pct} "
f"covered={covered}/{total} missing={missing_tickers}"
)
return 0
if __name__ == "__main__":
raise SystemExit(main())