Files
QuantEngineByItz/tools/build_horizon_rebalance_plan_v1.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

187 lines
6.8 KiB
Python

"""build_horizon_rebalance_plan_v1.py — HORIZON_REBALANCE_PLAN_V1
routing_gate=FAIL 원인: SHORT 호라이즌 71.4% > 상한 40%.
어떤 종목을 어떤 순서로 줄여야 하는지 결정론적으로 산출한다.
입력: horizon_classification_v1.json + final_judgment_gate_v1.json + strategy_routing_audit_v1.json
출력: Temp/horizon_rebalance_plan_v1.json
"""
from __future__ import annotations
import argparse
import json
from pathlib import Path
from typing import Any
ROOT = Path(__file__).resolve().parents[1]
TEMP = ROOT / "Temp"
DEFAULT_JSON = ROOT / "GatherTradingData.json"
DEFAULT_OUT = TEMP / "horizon_rebalance_plan_v1.json"
FORMULA_ID = "HORIZON_REBALANCE_PLAN_V1"
SHORT_CAP_PCT = 40.0
def _load(path: Path) -> Any:
if not path.exists():
return {}
try:
return json.loads(path.read_text(encoding="utf-8"))
except Exception:
return {}
def _f(v: Any, default: float = 0.0) -> float:
try:
return float(v)
except Exception:
return default
def _extract_harness(payload: Any) -> dict[str, Any]:
if not isinstance(payload, dict):
return {}
h = payload.get("hApex")
dc = (payload.get("data") or {}).get("_harness_context")
if isinstance(h, dict) and isinstance(dc, dict):
m = dict(dc); m.update(h); return m
return h if isinstance(h, dict) else dc if isinstance(dc, dict) else payload
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 not json_path.is_absolute():
json_path = ROOT / json_path
out_path = Path(args.out)
if not out_path.is_absolute():
out_path = ROOT / args.out
payload = _load(json_path)
harness = _extract_harness(payload)
hz = _load(TEMP / "horizon_classification_v1.json")
fj = _load(TEMP / "final_judgment_gate_v1.json")
routing = _load(TEMP / "strategy_routing_audit_v1.json")
alloc = hz.get("allocation_pct") or {}
short_pct = _f(alloc.get("SHORT", 0))
excess_pct = max(0.0, short_pct - SHORT_CAP_PCT)
# SHORT 종목 목록 (horizon_classification)
hz_rows = hz.get("rows") or []
short_tickers = [r for r in hz_rows if isinstance(r, dict) and r.get("horizon") == "SHORT"]
# final_judgment_gate의 verdict와 confidence 병합
fj_map = {r.get("ticker"): r for r in (fj.get("rows") or []) if isinstance(r, dict)}
# 총 포트폴리오 자산
total_asset = _f(harness.get("total_asset_krw", 0))
portfolio_equity = total_asset - _f(harness.get("settlement_cash_d2_krw", 0))
# single_position_weight_json에서 비중 정보 조회
spwj = harness.get("single_position_weight_json")
if isinstance(spwj, str):
try: spwj = json.loads(spwj)
except Exception: spwj = []
weight_map = {}
for item in (spwj if isinstance(spwj, list) else []):
if isinstance(item, dict):
weight_map[str(item.get("ticker", ""))] = _f(item.get("weight_pct", 0))
# SHORT 종목별 리밸런싱 우선순위 산출
# 우선순위: SELL verdict > 낮은 confidence > 높은 weight
candidates = []
for r in short_tickers:
ticker = r.get("ticker", "")
fj_row = fj_map.get(ticker, {})
verdict = str(fj_row.get("action_verdict", "UNKNOWN"))
conf = _f(fj_row.get("effective_confidence", 50))
weight_pct = weight_map.get(ticker, 0)
market_value = portfolio_equity * weight_pct / 100 if portfolio_equity > 0 else 0
disparity = _f(r.get("disparity_pct", 0))
rsi14 = _f(r.get("rsi14", 50))
# 우선순위 점수 (높을수록 먼저 줄임)
priority = 0
if verdict in ("SELL",): priority += 40
elif verdict in ("TRIM",): priority += 20
priority += max(0, 60 - conf) # confidence 낮을수록 +
priority += max(0, disparity - 5) * 2 # 이격도 높을수록 +
priority += max(0, rsi14 - 60) * 0.5 # RSI 과매수일수록 +
candidates.append({
"ticker": ticker,
"name": r.get("name", ""),
"horizon": "SHORT",
"verdict": verdict,
"effective_confidence": conf,
"weight_pct": weight_pct,
"market_value_krw": round(market_value),
"disparity_pct": disparity,
"rsi14": rsi14,
"priority_score": round(priority, 1),
})
candidates.sort(key=lambda x: x["priority_score"], reverse=True)
# 목표: SHORT 비중을 40%로 줄이기 위한 최소 감축량
target_short_pct = SHORT_CAP_PCT
# 단순 비례: 현재 71.4% → 40% = 31.4%p 감축 필요
# 각 종목의 비중을 합산해 필요 감축 시뮬레이션
required_reduction_pct = excess_pct # 31.4%p (SHORT 내 비중)
# 절대 금액 환산 (portfolio_equity 기준)
required_reduction_krw = portfolio_equity * required_reduction_pct / 100 if portfolio_equity > 0 else 0
# 누적 시뮬레이션
cum_reduction = 0.0
plan_rows = []
for c in candidates:
if cum_reduction >= required_reduction_pct:
break
# 해당 종목 전량 매도 시 감축 pct (portfolio_equity 기준)
trim_pct = c["weight_pct"] # 포트폴리오 비중 = 감축 효과
action = "FULL_TRIM" if verdict == "SELL" else "PARTIAL_TRIM"
plan_rows.append({
**c,
"recommended_action": action,
"trim_weight_pct": round(trim_pct, 2),
"cum_short_reduction_pct": round(cum_reduction + trim_pct, 2),
})
cum_reduction += trim_pct
result = {
"formula_id": FORMULA_ID,
"current_short_pct": short_pct,
"short_cap_pct": SHORT_CAP_PCT,
"excess_pct": round(excess_pct, 1),
"required_reduction_pct": round(required_reduction_pct, 1),
"required_reduction_krw": round(required_reduction_krw),
"estimated_short_after_plan": round(max(0, short_pct - cum_reduction), 1),
"gate_after_plan": "PASS" if max(0, short_pct - cum_reduction) <= SHORT_CAP_PCT else "FAIL",
"plan_rows": plan_rows,
"all_short_candidates": candidates,
"note": (
"포트폴리오 total_asset 기준 시뮬레이션. "
"실제 weight_pct는 prices_json 기준이며 "
"당일 종가 변동에 따라 달라질 수 있음."
),
}
out_path.write_text(json.dumps(result, ensure_ascii=False, indent=2) + "\n", encoding="utf-8")
print(
f"[{FORMULA_ID}] SHORT={short_pct}% excess={excess_pct}%p "
f"plan_tickers={[r['ticker'] for r in plan_rows]} "
f"after_plan={result['estimated_short_after_plan']}% "
f"gate={result['gate_after_plan']} -> {out_path}"
)
return 0
if __name__ == "__main__":
raise SystemExit(main())