Files
Bithumb/deepcoin/ops/hybrid_sim_execution.py
dsyoon c6888c9228 40만 원 기준 시뮬·dry-run 정합 및 hybrid 체결 엔진 통합.
초기 자금 GT_INITIAL_CASH_KRW=400000과 원화 한도 비율(알림·LIVE_ORDER·일한도·손실한도)을 맞추고, dry-run/live 체결을 sim_causal_hybrid(replay)와 동일 경로로 통합한다. 시뮬 리포트 갱신, Phase C 슈퍼바이저·매수매도 리허설 스크립트를 추가한다.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-03 11:31:24 +09:00

256 lines
7.7 KiB
Python

"""
시뮬 sim_causal_hybrid 와 동일 체결 엔진 (build_monitor_hybrid_sized_trades).
dry-run·live(06) 모두 발화 이력 → hybrid 배분 → amount_krw·수량 적용.
"""
from __future__ import annotations
from dataclasses import dataclass
from typing import Any
import pandas as pd
from config import GT_INITIAL_CASH_KRW, TRADING_FEE_RATE
from deepcoin.ground_truth.causal_gt_hybrid import build_monitor_hybrid_sized_trades
from deepcoin.ground_truth.hybrid_dd_calibrate import load_hybrid_dd_params
from deepcoin.ops.paper_portfolio import PaperPortfolio
@dataclass
class SimTradeResult:
"""단일 발화에 대한 시뮬 배분·체결 결과."""
hit: dict[str, Any]
amount_krw: float
sell_qty: float
ok: bool
message: str
leg_id: int | None = None
def hit_key(hit: dict[str, Any]) -> tuple[str, str, str]:
"""발화 고유 키 (dt, rule_id, side)."""
return (str(hit["dt"]), str(hit["rule_id"]), str(hit["side"]))
def sort_hits_sim_order(hits: list[dict[str, Any]]) -> list[dict[str, Any]]:
"""
시뮬·allocate 순서: 시각순, 동일 시각이면 buy → sell.
Args:
hits: evaluate_live_rules 발화.
Returns:
정렬된 리스트.
"""
side_rank = {"buy": 0, "sell": 1}
def _key(h: dict[str, Any]) -> tuple:
return (str(h["dt"]), side_rank.get(str(h["side"]), 9), str(h["rule_id"]))
return sorted(hits, key=_key)
def _signals_for_hybrid(
signal_history: list[dict[str, Any]],
*,
approved_buy_rules: set[str] | None,
) -> list[dict[str, Any]]:
"""
hybrid 배분용 신호 목록 (EV/WF 미통과 매수 제외).
Args:
signal_history: {dt, rule_id, side, close}.
approved_buy_rules: 허용 매수 rule_id.
Returns:
시뮬 입력 trade dict 리스트.
"""
out: list[dict[str, Any]] = []
for h in sort_hits_sim_order(signal_history):
side = str(h["side"])
rid = str(h["rule_id"])
if side == "buy" and approved_buy_rules is not None and rid not in approved_buy_rules:
continue
out.append(
{
"dt": str(h["dt"]),
"side": side,
"close": float(h["close"]),
"rule_id": rid,
}
)
return out
def size_monitor_signals(
signal_history: list[dict[str, Any]],
ohlc_df: pd.DataFrame,
*,
approved_buy_rules: set[str] | None = None,
) -> list[dict[str, Any]]:
"""
시뮬과 동일 hybrid tier 배분 (amount_krw·weight·leg_id).
Args:
signal_history: 누적 발화.
ohlc_df: 3m OHLC.
approved_buy_rules: 매수 허용 규칙.
Returns:
sized trade dict 리스트 (시각순).
"""
rows = _signals_for_hybrid(signal_history, approved_buy_rules=approved_buy_rules)
if not rows:
return []
fires = pd.DataFrame(rows)
dd = load_hybrid_dd_params()
sized, _stats = build_monitor_hybrid_sized_trades(
fires,
ohlc_df,
enhanced=False,
initial_cash=float(GT_INITIAL_CASH_KRW),
fee_rate=TRADING_FEE_RATE,
dd_large_pct=dd.get("dd_large_pct"),
dd_medium_pct=dd.get("dd_medium_pct"),
)
return sized
def _find_sized_trade(sized: list[dict[str, Any]], hit: dict[str, Any]) -> dict[str, Any] | None:
"""sized 목록에서 발화 1건 조회."""
dt, rid, side = hit_key(hit)
for t in sized:
action = str(t.get("action", t.get("side", "")))
if str(t.get("dt")) == dt and str(t.get("rule_id", "")) == rid and action == side:
return t
return None
def replay_paper_portfolio(
signal_history: list[dict[str, Any]],
ohlc_df: pd.DataFrame,
*,
approved_buy_rules: set[str] | None = None,
) -> tuple[PaperPortfolio, dict[tuple[str, str, str], SimTradeResult]]:
"""
신호 이력 전체를 시뮬 엔진으로 재생 → 모의 계좌(GT_INITIAL_CASH_KRW) 상태.
Args:
signal_history: Phase C 누적 발화.
ohlc_df: 3m OHLC.
approved_buy_rules: EV/WF 통과 매수 규칙.
Returns:
(portfolio, hit_key → SimTradeResult).
"""
sized = size_monitor_signals(
signal_history, ohlc_df, approved_buy_rules=approved_buy_rules
)
paper = PaperPortfolio()
paper.cash_krw = float(GT_INITIAL_CASH_KRW)
paper.qty = 0.0
paper.qty_by_leg = {}
results: dict[tuple[str, str, str], SimTradeResult] = {}
leg_sell_idxs: dict[int, list[int]] = {}
for i, t in enumerate(sized):
lid = int(t.get("leg_id", 0))
if str(t.get("action", t.get("side"))) == "sell":
leg_sell_idxs.setdefault(lid, []).append(i)
sell_leg: int | None = None
sell_base_qty = 0.0
for i, t in enumerate(sized):
side = str(t.get("action", t.get("side", "")))
price = float(t["price"])
dt = str(t["dt"])
rid = str(t.get("rule_id", ""))
leg_id = int(t.get("leg_id", 0))
hit = {"dt": dt, "rule_id": rid, "side": side, "close": price}
key = hit_key(hit)
amount = float(t.get("amount_krw") or 0)
if side == "buy":
if amount <= 0:
results[key] = SimTradeResult(
hit, 0.0, 0.0, False, "시뮬 매수 스킵(현금·tier)"
)
continue
ok = paper.apply_buy(amount, price, leg_id)
msg = f"paper_buy sim leg={leg_id}{amount:,.0f}" if ok else "paper_buy 실패"
results[key] = SimTradeResult(
hit, amount, 0.0, ok, msg, leg_id=leg_id
)
sell_leg = None
continue
leg_qty = paper.qty_by_leg.get(leg_id, 0.0)
if leg_qty <= 1e-12:
results[key] = SimTradeResult(hit, 0.0, 0.0, False, "모의 보유 없음")
continue
if amount <= 0:
results[key] = SimTradeResult(hit, 0.0, 0.0, False, "시뮬 매도 스킵")
continue
if sell_leg != leg_id:
sell_leg = leg_id
sell_base_qty = leg_qty
rem = [j for j in leg_sell_idxs.get(leg_id, []) if j >= i]
is_last = bool(rem) and i == rem[-1]
sell_qty = leg_qty if is_last else amount / price if price > 0 else 0.0
ok = paper.apply_sell(amount, sell_qty, price, leg_id)
msg = f"paper_sell sim qty={sell_qty:.4f}{amount:,.0f}" if ok else "paper_sell 실패"
results[key] = SimTradeResult(
hit, amount, sell_qty, ok, msg, leg_id=leg_id
)
return paper, results
def plan_live_hit(
signal_history: list[dict[str, Any]],
hit: dict[str, Any],
ohlc_df: pd.DataFrame,
*,
approved_buy_rules: set[str] | None = None,
) -> SimTradeResult:
"""
live: 누적 이력 + 신규 발화 1건 — replay 와 동일 sell_qty·amount.
Args:
signal_history: 기존 이력(신규 hit 미포함).
hit: 이번 발화.
ohlc_df: 3m OHLC.
approved_buy_rules: 매수 허용.
Returns:
SimTradeResult (dry-run replay_paper_portfolio 와 동일).
"""
if ohlc_df is None or getattr(ohlc_df, "empty", True):
return SimTradeResult(hit, 0.0, 0.0, False, "OHLC 없음")
dt, rid, side = hit_key(hit)
hist = list(signal_history)
if not any(
str(s["dt"]) == dt and str(s["rule_id"]) == rid and str(s["side"]) == side
for s in hist
):
hist.append(
{
"dt": dt,
"rule_id": rid,
"side": side,
"close": float(hit["close"]),
}
)
_, results = replay_paper_portfolio(
hist, ohlc_df, approved_buy_rules=approved_buy_rules
)
res = results.get((dt, rid, side))
if res is not None:
return res
return SimTradeResult(hit, 0.0, 0.0, False, "시뮬 배분 없음")