- 판정 기준을 Raw PF → fees_only PF로 변경 (Raw PF는 비현실적) - LONG/SHORT 대칭성 체크 추가 (양쪽 PF >= 0.8) - MTF OOS 최종 결과: FAIL 폐기 (30건, fees_only PF 0.84, SHORT PF 0.56) Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
362 lines
13 KiB
Python
362 lines
13 KiB
Python
"""
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MTF Pullback Bot — OOS Dry-run 평가 스크립트
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─────────────────────────────────────────────
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프로덕션 서버에서 JSONL 거래 기록을 가져와
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승률·PF·누적PnL·평균보유시간을 계산하고 LIVE 배포 판정을 출력한다.
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비용 모델(수수료·슬리피지·펀딩)을 사후보정으로 적용하여
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fees_only / realistic / pessimistic 3개 시나리오 결과를 출력한다.
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Usage:
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python scripts/evaluate_oos.py
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python scripts/evaluate_oos.py --symbol xrpusdt
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python scripts/evaluate_oos.py --local # 로컬 파일만 사용 (서버 fetch 스킵)
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python scripts/evaluate_oos.py --local --scenario all
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python scripts/evaluate_oos.py --local --scenario fees_only
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"""
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import argparse
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import subprocess
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import sys
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from pathlib import Path
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import pandas as pd
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# ── 비용 모델 import ─────────────────────────────────────────────
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sys.path.insert(0, str(Path(__file__).resolve().parent.parent))
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from src.config import COST_MODEL, COST_SCENARIOS # noqa: E402
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# ── 설정 ──────────────────────────────────────────────────────────
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PROD_HOST = "root@10.1.10.24"
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REMOTE_DIR = "/root/cointrader/data/trade_history"
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LOCAL_DIR = Path("data/trade_history")
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# ── 판정 기준 ─────────────────────────────────────────────────────
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MIN_TRADES = 5
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MIN_PF = 1.0
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def fetch_from_prod(filename: str) -> Path:
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"""프로덕션 서버에서 JSONL 파일을 scp로 가져온다."""
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LOCAL_DIR.mkdir(parents=True, exist_ok=True)
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remote_path = f"{PROD_HOST}:{REMOTE_DIR}/{filename}"
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local_path = LOCAL_DIR / filename
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print(f"[Fetch] {remote_path} → {local_path}")
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result = subprocess.run(
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["scp", remote_path, str(local_path)],
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capture_output=True, text=True,
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)
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if result.returncode != 0:
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print(f"[Fetch] scp 실패: {result.stderr.strip()}")
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if local_path.exists():
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print(f"[Fetch] 로컬 캐시 사용: {local_path}")
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else:
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print("[Fetch] 로컬 캐시도 없음. 종료.")
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sys.exit(1)
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else:
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print(f"[Fetch] 완료 ({local_path.stat().st_size:,} bytes)")
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return local_path
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def load_trades(path: Path) -> pd.DataFrame:
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"""JSONL 파일을 DataFrame으로 로드."""
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df = pd.read_json(path, lines=True)
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if df.empty:
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print("[Load] 거래 기록이 비어있습니다.")
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sys.exit(1)
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df["entry_ts"] = pd.to_datetime(df["entry_ts"], utc=True)
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df["exit_ts"] = pd.to_datetime(df["exit_ts"], utc=True)
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df["duration_min"] = (df["exit_ts"] - df["entry_ts"]).dt.total_seconds() / 60
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print(f"[Load] {len(df)}건 로드 완료 ({df['entry_ts'].min():%Y-%m-%d} ~ {df['exit_ts'].max():%Y-%m-%d})")
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return df
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def count_funding_events(entry_ts, exit_ts) -> int:
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"""
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Binance USDⓈ-M Futures 펀딩 스냅샷 시각(00/08/16 UTC)이
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[entry_ts, exit_ts] 구간에 몇 번 포함되는지 카운트.
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"""
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start = entry_ts.ceil("h")
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end = exit_ts.floor("h")
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if start > end:
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return 0
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hours = pd.date_range(start, end, freq="1h", inclusive="both")
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return sum(1 for h in hours if h.hour % 8 == 0)
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def _get_fee_bps(order_type: str) -> float:
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"""주문 타입에 따른 수수료 bps 반환."""
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if order_type == "taker":
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return COST_MODEL["taker_fee_bps"]
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return COST_MODEL["maker_fee_bps"]
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def calc_trade_cost(row, scenario: dict) -> float:
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"""개별 거래의 총 비용(bps)을 계산."""
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# 1) Fee: entry + exit
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entry_fee = _get_fee_bps(COST_MODEL["entry_order_type"])
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# exit order type: SL 히트면 sl_order_type, TP 히트면 tp_order_type
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reason = row.get("reason", "")
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if "SL" in reason:
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exit_fee = _get_fee_bps(COST_MODEL["sl_order_type"])
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else:
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exit_fee = _get_fee_bps(COST_MODEL["tp_order_type"])
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fee = entry_fee + exit_fee
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# 2) Slippage: 왕복
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slippage = scenario["slippage_bps_per_side"] * 2
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# 3) Funding: 경계 교차 카운트
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funding_count = count_funding_events(row["entry_ts"], row["exit_ts"])
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funding = funding_count * scenario["funding_bps_per_8h"]
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return fee + slippage + funding
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def apply_cost_model(df: pd.DataFrame, scenario_name: str) -> pd.DataFrame:
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"""DataFrame에 비용을 적용하여 adjusted_pnl_bps 컬럼 추가."""
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scenario = COST_SCENARIOS[scenario_name]
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result = df.copy()
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result["cost_bps"] = result.apply(lambda row: calc_trade_cost(row, scenario), axis=1)
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result["adjusted_pnl_bps"] = result["pnl_bps"] - result["cost_bps"]
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return result
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def calc_metrics(df: pd.DataFrame, pnl_col: str = "pnl_bps") -> dict:
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"""핵심 지표 계산. 빈 DataFrame이면 안전한 기본값 반환."""
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n = len(df)
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if n == 0:
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return {"trades": 0, "win_rate": 0.0, "pf": 0.0, "cum_pnl": 0.0, "avg_pnl": 0.0, "avg_dur": 0.0}
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wins = df[df[pnl_col] > 0]
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losses = df[df[pnl_col] < 0]
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win_rate = len(wins) / n * 100
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gross_profit = wins[pnl_col].sum() if len(wins) > 0 else 0.0
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gross_loss = abs(losses[pnl_col].sum()) if len(losses) > 0 else 0.0
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pf = gross_profit / gross_loss if gross_loss > 0 else float("inf")
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cum_pnl = df[pnl_col].sum()
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avg_pnl = cum_pnl / n
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avg_dur = df["duration_min"].mean()
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return {
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"trades": n,
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"win_rate": round(win_rate, 1),
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"pf": round(pf, 2),
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"cum_pnl": round(cum_pnl, 1),
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"avg_pnl": round(avg_pnl, 2),
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"avg_dur": round(avg_dur, 1),
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}
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def print_report(df: pd.DataFrame):
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"""성적표 출력 (raw, 비용 미반영)."""
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total = calc_metrics(df)
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longs = calc_metrics(df[df["side"] == "LONG"])
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shorts = calc_metrics(df[df["side"] == "SHORT"])
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header = f"{'':>10} {'Trades':>8} {'WinRate':>9} {'PF':>8} {'CumPnL':>10} {'AvgDur':>10}"
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sep = "\u2500" * 60
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print()
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print(sep)
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print(" MTF Pullback Bot \u2014 OOS Dry-run \uc131\uc801\ud45c")
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print(sep)
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print(header)
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print(sep)
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for label, m in [("Total", total), ("LONG", longs), ("SHORT", shorts)]:
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pf_str = f"{m['pf']:.2f}" if m["pf"] != float("inf") else "\u221e"
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dur_str = f"{m['avg_dur']:.0f}m" if m["trades"] > 0 else "-"
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print(
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f"{label:>10} {m['trades']:>8d} {m['win_rate']:>8.1f}% {pf_str:>8} "
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f"{m['cum_pnl']:>+10.1f} {dur_str:>10}"
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)
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print(sep)
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# ── 개별 거래 내역 ──
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print()
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print(" 거래 내역")
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print(sep)
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print(f"{'#':>3} {'Side':>6} {'Entry':>10} {'Exit':>10} {'PnL(bps)':>10} {'Dur':>8} {'Reason'}")
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print(sep)
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for i, row in df.iterrows():
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dur = f"{row['duration_min']:.0f}m"
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reason = row.get("reason", "")
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if len(reason) > 25:
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reason = reason[:25] + "\u2026"
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print(
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f"{i+1:>3} {row['side']:>6} {row['entry_price']:>10.4f} {row['exit_price']:>10.4f} "
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f"{row['pnl_bps']:>+10.1f} {dur:>8} {reason}"
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)
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print(sep)
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# ── 최종 판정 (비용 반영 기준) ──
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# Raw PF는 비현실적 — fees_only 기준으로 판정
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cost_df = apply_cost_model(df, "fees_only")
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cost_total = calc_metrics(cost_df, pnl_col="adjusted_pnl_bps")
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cost_long = calc_metrics(cost_df[cost_df["side"] == "LONG"], pnl_col="adjusted_pnl_bps")
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cost_short = calc_metrics(cost_df[cost_df["side"] == "SHORT"], pnl_col="adjusted_pnl_bps")
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# 대칭성 체크: LONG/SHORT 양쪽 모두 PF >= 0.8 이상이어야 함
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symmetry_ok = True
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if cost_long["trades"] >= 5 and cost_short["trades"] >= 5:
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symmetry_ok = cost_long["pf"] >= 0.8 and cost_short["pf"] >= 0.8
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print()
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if cost_total["trades"] >= MIN_TRADES and cost_total["pf"] >= MIN_PF and symmetry_ok:
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print(f" [\ud310\uc815: \ud1b5\uacfc] \uc5e3\uc9c0\uac00 \uc99d\uba85\ub418\uc5c8\uc2b5\ub2c8\ub2e4. LIVE \ubc30\ud3ec(\uc790\uae08 \ud22c\uc785)\ub97c \uad8c\uc7a5\ud569\ub2c8\ub2e4.")
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print(f" (\uac70\ub798\uc218 {cost_total['trades']} >= {MIN_TRADES}, fees_only PF {cost_total['pf']:.2f} >= {MIN_PF:.1f})")
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else:
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reasons = []
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if cost_total["trades"] < MIN_TRADES:
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reasons.append(f"\uac70\ub798\uc218 {cost_total['trades']} < {MIN_TRADES}")
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if cost_total["pf"] < MIN_PF:
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reasons.append(f"fees_only PF {cost_total['pf']:.2f} < {MIN_PF:.1f}")
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if not symmetry_ok:
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reasons.append(f"LONG/SHORT \ube44\ub300\uce6d (L:{cost_long['pf']:.2f} / S:{cost_short['pf']:.2f})")
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print(f" [\ud310\uc815: \uc2e4\ud328] OOS \uac80\uc99d \uc2e4\ud328. \uc2e4\uc804 \ud22c\uc785 \ubd88\uac00.")
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print(f" ({', '.join(reasons)})")
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print()
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def print_cost_report(df: pd.DataFrame, scenario_names: list[str]):
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"""비용 보정 시나리오별 성적표 출력."""
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sep = "\u2500" * 61
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# 시나리오별 데이터 준비
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scenario_dfs = {}
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for name in scenario_names:
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scenario_dfs[name] = apply_cost_model(df, name)
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print()
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print(sep)
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print(" MTF Pullback Bot \u2014 OOS Cost-Adjusted Results")
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print(sep)
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# 헤더
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header = f"{'Scenario:':>16}"
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for name in scenario_names:
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header += f" {name:>14}"
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print(header)
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print(sep)
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# Total / LONG / SHORT 각각
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for section_label, filter_fn in [
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("Total", lambda d: d),
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("LONG", lambda d: d[d["side"] == "LONG"]),
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("SHORT", lambda d: d[d["side"] == "SHORT"]),
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]:
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print(section_label)
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# 각 시나리오에 대해 metrics 계산
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metrics_list = []
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for name in scenario_names:
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sdf = filter_fn(scenario_dfs[name])
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m = calc_metrics(sdf, pnl_col="adjusted_pnl_bps")
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metrics_list.append(m)
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# Trades
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line = f"{'Trades:':>16}"
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for m in metrics_list:
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line += f" {m['trades']:>14d}"
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print(line)
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# WinRate
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line = f"{'WinRate:':>16}"
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for m in metrics_list:
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line += f" {m['win_rate']:>13.1f}%"
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print(line)
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# PF
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line = f"{'PF:':>16}"
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for m in metrics_list:
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pf_str = f"{m['pf']:.2f}" if m["pf"] != float("inf") else "\u221e"
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line += f" {pf_str:>14}"
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print(line)
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# CumPnL(bps)
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line = f"{'CumPnL(bps):':>16}"
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for m in metrics_list:
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line += f" {m['cum_pnl']:>+14.1f}"
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print(line)
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# AvgPnL(bps)
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line = f"{'AvgPnL(bps):':>16}"
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for m in metrics_list:
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line += f" {m['avg_pnl']:>+14.2f}"
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print(line)
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# AvgDur
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line = f"{'AvgDur:':>16}"
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for m in metrics_list:
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dur_str = f"{m['avg_dur']:.0f}m" if m["trades"] > 0 else "-"
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line += f" {dur_str:>14}"
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print(line)
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print(sep)
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# Raw 참고
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raw_total = calc_metrics(df)
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print(f"Raw (\ube44\uc6a9 \ubbf8\ubc18\uc601, \ucc38\uace0\uc6a9):")
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pf_str = f"{raw_total['pf']:.2f}" if raw_total["pf"] != float("inf") else "\u221e"
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print(f" Total PF: {pf_str}, CumPnL: {raw_total['cum_pnl']:+.1f} bps")
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print(sep)
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print()
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def main():
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parser = argparse.ArgumentParser(description="MTF OOS Dry-run \ud3c9\uac00")
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parser.add_argument("--symbol", default="xrpusdt", help="\uc2ec\ubcfc (\ud30c\uc77c\uba85 \uc18c\ubb38\uc790, \uae30\ubcf8: xrpusdt)")
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parser.add_argument("--local", action="store_true", help="\ub85c\uceec \ud30c\uc77c\ub9cc \uc0ac\uc6a9 (\uc11c\ubc84 fetch \uc2a4\ud0b5)")
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parser.add_argument(
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"--scenario",
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choices=["fees_only", "realistic", "pessimistic", "all"],
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default="all",
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help="\ube44\uc6a9 \ubcf4\uc815 \uc2dc\ub098\ub9ac\uc624 (\uae30\ubcf8: all)",
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)
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args = parser.parse_args()
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# MTF bot은 ccxt 심볼(XRP/USDT:USDT)에서 /,:를 제거하여 파일명 생성
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# → mtf_xrpusdtusdt.jsonl (심볼 인자 xrpusdt → xrpusdtusdt 변환)
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raw = args.symbol.lower()
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if not raw.endswith("usdt"):
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raw = raw + "usdt"
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# xrpusdt → xrpusdtusdt (ccxt 포맷 XRP/USDT:USDT 의 슬래시·콜론 제거 결과)
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if raw.endswith("usdt") and not raw.endswith("usdtusdt"):
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raw = raw + "usdt"
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filename = f"mtf_{raw}.jsonl"
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if args.local:
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local_path = LOCAL_DIR / filename
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if not local_path.exists():
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print(f"[Error] \ub85c\uceec \ud30c\uc77c \uc5c6\uc74c: {local_path}")
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sys.exit(1)
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else:
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local_path = fetch_from_prod(filename)
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df = load_trades(local_path)
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# 비용 보정 리포트 출력
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if args.scenario == "all":
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scenario_names = ["fees_only", "realistic", "pessimistic"]
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else:
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scenario_names = [args.scenario]
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print_cost_report(df, scenario_names)
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# raw 리포트도 하단에 유지
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print_report(df)
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if __name__ == "__main__":
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main()
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