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- from __future__ import annotations
- import argparse
- import json
- import sys
- from dataclasses import dataclass
- from pathlib import Path
- import pandas as pd
- sys.path.insert(0, str(Path(__file__).resolve().parents[1]))
- from okx_codex_trader.models import Candle
- from okx_codex_trader.sampled_report import SegmentResult, mark_to_market, trade_equity
- from scripts import explore_ultrashort as explore
- from scripts.search_eth_btc_nextgen_variants import markdown_table, metrics_from_daily_equity, monthly_rows
- OUTPUT_DIR = Path("reports/strategy-expansion")
- PREFIX = "mean-reversion"
- BASE_BAR = "15m"
- YEARS = 10.0
- LEVERAGE = 3
- ROUNDTRIP_TAKER_COST_ON_MARGIN = 0.0004 * 2 * LEVERAGE
- HORIZONS = (
- ("full", None),
- ("3y", pd.DateOffset(years=3)),
- ("1y", pd.DateOffset(years=1)),
- ("6m", pd.DateOffset(months=6)),
- ("3m", pd.DateOffset(months=3)),
- )
- @dataclass(frozen=True)
- class Params:
- family: str
- symbol: str
- bar: str
- side_mode: str
- rsi_length: int
- rsi_entry: float
- rsi_exit: float
- bb_length: int
- bb_mult: float
- kc_mult: float
- squeeze_lookback: int
- vol_lookback: int
- vol_quantile_lookback: int
- vol_quantile: float
- btc_trend_sma: int
- btc_momentum_lookback: int
- btc_min_momentum: float
- exit_midline: bool
- max_hold_bars: int
- stop_loss_pct: float
- cooldown_bars: int
- @property
- def name(self) -> str:
- return (
- f"{self.symbol}-{self.bar}-{self.family}-{self.side_mode}"
- f"-r{self.rsi_length}-{self.rsi_entry:g}-{self.rsi_exit:g}"
- f"-bb{self.bb_length}-{self.bb_mult:g}-kc{self.kc_mult:g}-sq{self.squeeze_lookback}"
- f"-vw{self.vol_lookback}-vq{self.vol_quantile_lookback}-{self.vol_quantile:g}"
- f"-bt{self.btc_trend_sma}-bm{self.btc_momentum_lookback}-{self.btc_min_momentum:g}"
- f"-mid{int(self.exit_midline)}-mh{self.max_hold_bars}-sl{self.stop_loss_pct:g}-cd{self.cooldown_bars}"
- )
- def load_base_candles(symbol: str, years: float) -> list[Candle]:
- candles, _ = explore.load_cached_candles(explore.CANDLE_CACHE_DIR, symbol, BASE_BAR)
- if not candles:
- raise FileNotFoundError(f"missing cached candles for {symbol} {BASE_BAR}")
- requested = explore.history_bars_for_years(BASE_BAR, years)
- return candles[-requested:] if len(candles) > requested else candles
- def resample_candles(candles: list[Candle], bar: str) -> list[Candle]:
- if bar == BASE_BAR:
- return candles
- rule_by_bar = {"1H": "1h", "4H": "4h", "1D": "1D"}
- frame = pd.DataFrame(
- {
- "ts": pd.to_datetime([candle.ts for candle in candles], unit="ms", utc=True),
- "open": [candle.open for candle in candles],
- "high": [candle.high for candle in candles],
- "low": [candle.low for candle in candles],
- "close": [candle.close for candle in candles],
- "volume": [candle.volume for candle in candles],
- }
- ).set_index("ts")
- sampled = frame.resample(rule_by_bar[bar], label="left", closed="left").agg(
- {"open": "first", "high": "max", "low": "min", "close": "last", "volume": "sum"}
- )
- sampled = sampled.dropna(subset=["open", "high", "low", "close"])
- symbol = candles[0].symbol
- return [
- Candle(
- symbol=symbol,
- ts=int(index.timestamp() * 1000),
- open=float(row.open),
- high=float(row.high),
- low=float(row.low),
- close=float(row.close),
- volume=float(row.volume),
- )
- for index, row in sampled.iterrows()
- ]
- def true_range(highs: pd.Series, lows: pd.Series, closes: pd.Series) -> pd.Series:
- prev_close = closes.shift(1)
- return pd.concat([(highs - lows), (highs - prev_close).abs(), (lows - prev_close).abs()], axis=1).max(axis=1)
- def close_position(
- *,
- trades: list[dict[str, object]],
- exits: list[dict[str, object]],
- position: dict[str, object],
- candle: Candle,
- exit_price: float,
- ) -> tuple[float, bool]:
- exit_equity = trade_equity(
- side=str(position["side"]),
- margin_used=float(position["margin_used"]),
- entry_price=float(position["entry_price"]),
- exit_price=exit_price,
- leverage=LEVERAGE,
- )
- pnl = exit_equity - float(position["margin_used"])
- trades.append(
- {
- "side": "Long" if position["side"] == "long" else "Short",
- "entry_time": explore._format_ts(int(position["entry_time"])),
- "exit_time": explore._format_ts(candle.ts),
- "entry_price": round(float(position["entry_price"]), 4),
- "exit_price": round(exit_price, 4),
- "pnl": round(pnl, 4),
- "return_pct": round(pnl / float(position["margin_used"]) * 100.0, 4),
- }
- )
- exits.append({"ts": candle.ts, "price": exit_price, "side": position["side"]})
- return exit_equity, pnl > 0.0
- def risk_allows(side: str, btc_close: float, btc_trend: float, btc_momentum: float, btc_vol: float, vol_cap: float, params: Params) -> bool:
- if btc_vol > vol_cap:
- return False
- if side == "long":
- return btc_close > btc_trend and btc_momentum >= params.btc_min_momentum
- return btc_close < btc_trend and btc_momentum <= -params.btc_min_momentum
- def run_segment(candles: list[Candle], btc_candles: list[Candle], params: Params) -> SegmentResult:
- closes = pd.Series([candle.close for candle in candles], dtype=float)
- highs = pd.Series([candle.high for candle in candles], dtype=float)
- lows = pd.Series([candle.low for candle in candles], dtype=float)
- btc_closes = pd.Series([candle.close for candle in btc_candles], dtype=float)
- returns = closes.pct_change()
- btc_returns = btc_closes.pct_change()
- rsi = explore._compute_rsi(closes, params.rsi_length)
- middle = closes.rolling(params.bb_length).mean()
- stdev = closes.rolling(params.bb_length).std(ddof=0)
- upper = middle + params.bb_mult * stdev
- lower = middle - params.bb_mult * stdev
- atr = true_range(highs, lows, closes).rolling(params.bb_length).mean()
- keltner_upper = middle + params.kc_mult * atr
- keltner_lower = middle - params.kc_mult * atr
- squeeze = ((upper < keltner_upper) & (lower > keltner_lower)).rolling(params.squeeze_lookback).max()
- realized_vol = returns.rolling(params.vol_lookback).std(ddof=1)
- vol_cap = realized_vol.rolling(params.vol_quantile_lookback).quantile(params.vol_quantile)
- btc_trend = btc_closes.rolling(params.btc_trend_sma).mean()
- btc_vol = btc_returns.rolling(params.vol_lookback).std(ddof=1)
- btc_vol_cap = btc_vol.rolling(params.vol_quantile_lookback).quantile(params.vol_quantile)
- warmup_bars = max(
- params.bb_length + params.squeeze_lookback,
- params.vol_lookback + params.vol_quantile_lookback,
- params.btc_trend_sma,
- params.btc_momentum_lookback,
- params.rsi_length + 2,
- )
- equity = explore.INITIAL_EQUITY
- ending_equity = equity
- peak_equity = equity
- max_drawdown = 0.0
- wins = 0
- last_exit_index = -10**9
- pending_side: str | None = None
- pending_exit = False
- position: dict[str, object] | None = None
- trades: list[dict[str, object]] = []
- entries: list[dict[str, object]] = []
- exits: list[dict[str, object]] = []
- equity_curve: list[dict[str, float | int]] = []
- for index in range(warmup_bars, len(candles)):
- candle = candles[index]
- if pending_exit and position is not None:
- equity, won = close_position(trades=trades, exits=exits, position=position, candle=candle, exit_price=candle.open)
- wins += 1 if won else 0
- position = None
- pending_exit = False
- last_exit_index = index
- if pending_side is not None and position is None and equity > 0.0:
- position = {
- "side": pending_side,
- "entry_time": candle.ts,
- "entry_price": candle.open,
- "entry_index": index,
- "margin_used": equity,
- "stop_price": candle.open * (1.0 - params.stop_loss_pct if pending_side == "long" else 1.0 + params.stop_loss_pct),
- }
- entries.append({"ts": candle.ts, "price": candle.open, "side": pending_side})
- pending_side = None
- current_equity = equity
- if position is not None:
- side = str(position["side"])
- stop_hit = (side == "long" and candle.low <= float(position["stop_price"])) or (
- side == "short" and candle.high >= float(position["stop_price"])
- )
- if stop_hit:
- equity, won = close_position(
- trades=trades,
- exits=exits,
- position=position,
- candle=candle,
- exit_price=float(position["stop_price"]),
- )
- wins += 1 if won else 0
- current_equity = equity
- position = None
- last_exit_index = index
- if position is not None:
- current_equity = mark_to_market(
- side=str(position["side"]),
- margin_used=float(position["margin_used"]),
- entry_price=float(position["entry_price"]),
- mark_price=candle.close,
- leverage=LEVERAGE,
- )
- peak_equity = max(peak_equity, current_equity)
- max_drawdown = max(max_drawdown, (peak_equity - current_equity) / peak_equity)
- equity_curve.append({"ts": candle.ts, "equity": current_equity, "close": candle.close})
- ending_equity = current_equity
- if index == len(candles) - 1 or equity <= 0.0:
- continue
- values = [
- rsi[index],
- middle.iloc[index],
- upper.iloc[index],
- lower.iloc[index],
- squeeze.iloc[index],
- realized_vol.iloc[index],
- vol_cap.iloc[index],
- btc_trend.iloc[index],
- btc_vol.iloc[index],
- btc_vol_cap.iloc[index],
- ]
- if any(value != value for value in values):
- continue
- current_rsi = float(rsi[index])
- current_middle = float(middle.iloc[index])
- current_vol = float(realized_vol.iloc[index])
- current_vol_cap = float(vol_cap.iloc[index])
- btc_momentum = btc_candles[index].close / btc_candles[index - params.btc_momentum_lookback].close - 1.0
- if position is not None:
- side = str(position["side"])
- held_bars = index - int(position["entry_index"])
- if side == "long":
- exit_signal = current_rsi >= params.rsi_exit or (params.exit_midline and candle.close >= current_middle)
- else:
- exit_signal = current_rsi <= 100.0 - params.rsi_exit or (params.exit_midline and candle.close <= current_middle)
- if exit_signal or held_bars >= params.max_hold_bars:
- pending_exit = True
- continue
- if index - last_exit_index < params.cooldown_bars or current_vol > current_vol_cap:
- continue
- btc_vol_limit = float(btc_vol_cap.iloc[index])
- long_allowed = params.side_mode in ("long", "both") and risk_allows(
- "long",
- btc_candles[index].close,
- float(btc_trend.iloc[index]),
- btc_momentum,
- float(btc_vol.iloc[index]),
- btc_vol_limit,
- params,
- )
- short_allowed = params.side_mode in ("short", "both") and risk_allows(
- "short",
- btc_candles[index].close,
- float(btc_trend.iloc[index]),
- btc_momentum,
- float(btc_vol.iloc[index]),
- btc_vol_limit,
- params,
- )
- if params.family == "rsi":
- if long_allowed and current_rsi <= params.rsi_entry:
- pending_side = "long"
- elif short_allowed and current_rsi >= 100.0 - params.rsi_entry:
- pending_side = "short"
- elif params.family == "bb_squeeze":
- if long_allowed and bool(squeeze.iloc[index]) and candle.close <= float(lower.iloc[index]) and current_rsi <= params.rsi_exit:
- pending_side = "long"
- elif short_allowed and bool(squeeze.iloc[index]) and candle.close >= float(upper.iloc[index]) and current_rsi >= 100.0 - params.rsi_exit:
- pending_side = "short"
- elif params.family == "range_band":
- if long_allowed and candle.close <= float(lower.iloc[index]) and current_rsi <= params.rsi_exit:
- pending_side = "long"
- elif short_allowed and candle.close >= float(upper.iloc[index]) and current_rsi >= 100.0 - params.rsi_exit:
- pending_side = "short"
- else:
- raise ValueError(f"unknown family {params.family}")
- trade_count = len(trades)
- return SegmentResult(
- trade_count=trade_count,
- total_return=(ending_equity - explore.INITIAL_EQUITY) / explore.INITIAL_EQUITY,
- win_rate=wins / trade_count if trade_count else 0.0,
- max_drawdown=max_drawdown,
- trades=trades,
- open_position=position,
- candles=candles[warmup_bars:],
- equity_curve=equity_curve,
- entries=entries,
- exits=exits,
- )
- def daily_equity(frame: pd.DataFrame, start: pd.Timestamp, end: pd.Timestamp) -> pd.Series:
- series = frame.set_index("ts")["equity"].sort_index()
- start_day = start.normalize()
- end_day = end.normalize()
- series = pd.concat([pd.Series([explore.INITIAL_EQUITY], index=[start_day]), series]).sort_index()
- series = series.groupby(level=0).last()
- index = pd.date_range(start_day, end_day, freq="1D", tz="UTC")
- return series.reindex(index.union(series.index)).sort_index().ffill().reindex(index)
- def trade_stats_for_window(result: SegmentResult, cost: float, start: pd.Timestamp, end: pd.Timestamp) -> dict[str, float | int]:
- returns: list[float] = []
- for trade in result.trades:
- exit_time = pd.to_datetime(str(trade["exit_time"]), utc=True)
- if start <= exit_time <= end:
- returns.append(float(trade["return_pct"]) / 100.0 - cost)
- wins = [value for value in returns if value > 0.0]
- losses = [value for value in returns if value < 0.0]
- avg_win = sum(wins) / len(wins) if wins else 0.0
- avg_loss_abs = abs(sum(losses) / len(losses)) if losses else 0.0
- return {
- "trades": len(returns),
- "win_rate": len(wins) / len(returns) if returns else 0.0,
- "payoff_ratio": avg_win / avg_loss_abs if avg_loss_abs else 0.0,
- }
- def horizon_rows(name: str, result: SegmentResult, cost: float, series: pd.Series) -> list[dict[str, object]]:
- rows: list[dict[str, object]] = []
- end_time = series.index[-1]
- for label, offset in HORIZONS:
- horizon = series if offset is None else series[series.index >= end_time - offset]
- if len(horizon) < 2:
- horizon = series
- rows.append(
- {
- "name": name,
- "horizon": label,
- "horizon_start": horizon.index[0].strftime("%Y-%m-%d"),
- "horizon_end": horizon.index[-1].strftime("%Y-%m-%d"),
- **metrics_from_daily_equity(horizon),
- **trade_stats_for_window(result, cost, horizon.index[0], horizon.index[-1]),
- }
- )
- return rows
- def build_params() -> list[Params]:
- params: list[Params] = []
- for symbol in ("ETH-USDT-SWAP", "BTC-USDT-SWAP"):
- for bar in ("1H", "4H", "1D"):
- hold_by_bar = {"1H": (48,), "4H": (24,), "1D": (10,)}[bar]
- trend_by_bar = {"1H": (200, 400), "4H": (100, 200), "1D": (80, 160)}[bar]
- momentum_by_bar = {"1H": (24,), "4H": (12,), "1D": (10,)}[bar]
- for family in ("rsi", "bb_squeeze", "range_band"):
- for rsi_length in ((2, 4) if family == "rsi" else (4,)):
- for rsi_entry in ((5.0, 8.0, 12.0) if family == "rsi" else (20.0,)):
- for bb_length in ((20, 40) if family != "rsi" else (20,)):
- for bb_mult in ((2.0,) if family != "range_band" else (1.8, 2.2)):
- for kc_mult in ((1.5,) if family == "bb_squeeze" else (1.5,)):
- for btc_trend in trend_by_bar:
- for btc_momentum in momentum_by_bar:
- for max_hold in hold_by_bar:
- params.append(
- Params(
- family=family,
- symbol=symbol,
- bar=bar,
- side_mode="long",
- rsi_length=rsi_length,
- rsi_entry=rsi_entry,
- rsi_exit=55.0,
- bb_length=bb_length,
- bb_mult=bb_mult,
- kc_mult=kc_mult,
- squeeze_lookback=8,
- vol_lookback=24,
- vol_quantile_lookback=240,
- vol_quantile=0.75,
- btc_trend_sma=btc_trend,
- btc_momentum_lookback=btc_momentum,
- btc_min_momentum=0.0,
- exit_midline=family != "rsi",
- max_hold_bars=max_hold,
- stop_loss_pct=0.08 if bar == "1D" else 0.045,
- cooldown_bars=max(2, max_hold // 4),
- )
- )
- return params
- def markdown_report(paths: list[Path], totals: pd.DataFrame, horizon: pd.DataFrame, monthly: pd.DataFrame, command: str) -> str:
- top = totals.head(20)
- top_names = set(top.head(5)["name"])
- selected_horizons = horizon[horizon["name"].isin(top_names)]
- selected_monthly = monthly[monthly["name"].isin(top_names)]
- lines = [
- "# Mean reversion strategy expansion",
- "",
- f"Run command: `{command}`",
- "",
- "Output files:",
- *[f"- `{path}`" for path in paths],
- "",
- "Scope: ETH/BTC 1H/4H/1D mean-reversion search from 15m OKX cache.",
- "Families: RSI2/RSI4 pullback, Bollinger/Keltner squeeze reversal, and range-band reversal.",
- f"Cost: 0.04% single-side taker, roundtrip cost on margin at {LEVERAGE}x = {ROUNDTRIP_TAKER_COST_ON_MARGIN:.6f}.",
- "",
- "## Top candidates",
- "",
- markdown_table(
- top[
- [
- "name",
- "symbol",
- "bar",
- "family",
- "trades",
- "net_total_return",
- "net_annualized_return",
- "net_max_drawdown",
- "net_calmar",
- "win_rate",
- "payoff_ratio",
- "return_3y",
- "return_1y",
- "return_6m",
- "return_3m",
- "worst_month_return",
- ]
- ]
- ),
- "",
- "## Horizon metrics for top five",
- "",
- markdown_table(
- selected_horizons[
- [
- "name",
- "horizon",
- "horizon_start",
- "horizon_end",
- "net_total_return",
- "net_annualized_return",
- "net_max_drawdown",
- "net_calmar",
- "trades",
- "win_rate",
- "payoff_ratio",
- ]
- ]
- ),
- "",
- "## Monthly returns for top five",
- "",
- markdown_table(selected_monthly[["name", "month", "return", "start_equity", "end_equity"]].tail(120)),
- ]
- return "\n".join(lines) + "\n"
- def main() -> int:
- parser = argparse.ArgumentParser()
- parser.add_argument("--years", type=float, default=YEARS)
- parser.add_argument("--output-dir", type=Path, default=OUTPUT_DIR)
- parser.add_argument("--max-candidates", type=int, default=0)
- args = parser.parse_args()
- base_data = {
- symbol: load_base_candles(symbol, args.years)
- for symbol in ("ETH-USDT-SWAP", "BTC-USDT-SWAP")
- }
- data = {
- (symbol, bar): resample_candles(base_data[symbol], bar)
- for symbol in ("ETH-USDT-SWAP", "BTC-USDT-SWAP")
- for bar in ("1H", "4H", "1D")
- }
- params_grid = build_params()
- if args.max_candidates:
- params_grid = params_grid[: args.max_candidates]
- total_rows: list[dict[str, object]] = []
- horizon_output: list[dict[str, object]] = []
- monthly_frames: list[pd.DataFrame] = []
- for index, params in enumerate(params_grid, start=1):
- candles, btc_candles = explore.align_pair_candles(data[(params.symbol, params.bar)], data[("BTC-USDT-SWAP", params.bar)])
- result = run_segment(candles, btc_candles, params)
- if not result.equity_curve:
- continue
- frame = explore.cost_adjusted_trade_equity_frame(result, ROUNDTRIP_TAKER_COST_ON_MARGIN)
- start = pd.to_datetime(result.equity_curve[0]["ts"], unit="ms", utc=True)
- end = pd.to_datetime(result.equity_curve[-1]["ts"], unit="ms", utc=True)
- daily = daily_equity(frame, start, end)
- metrics = metrics_from_daily_equity(daily)
- stats = trade_stats_for_window(result, ROUNDTRIP_TAKER_COST_ON_MARGIN, daily.index[0], daily.index[-1])
- monthly = monthly_rows(params.name, daily)
- current_horizons = horizon_rows(params.name, result, ROUNDTRIP_TAKER_COST_ON_MARGIN, daily)
- horizon_by_label = {str(row["horizon"]): float(row["net_total_return"]) for row in current_horizons}
- row = {
- "name": params.name,
- "symbol": params.symbol,
- "bar": params.bar,
- "family": params.family,
- "eligible_sample": stats["trades"] >= 20,
- "roundtrip_cost_on_margin": ROUNDTRIP_TAKER_COST_ON_MARGIN,
- "first_candle": start.strftime("%Y-%m-%d %H:%M"),
- "last_candle": end.strftime("%Y-%m-%d %H:%M"),
- "years": (end - start).total_seconds() / 86_400 / 365,
- "gross_total_return": result.total_return,
- "gross_max_drawdown_mark_to_market": result.max_drawdown,
- "worst_month_return": float(monthly["return"].min()),
- "return_3y": horizon_by_label.get("3y", 0.0),
- "return_1y": horizon_by_label.get("1y", 0.0),
- "return_6m": horizon_by_label.get("6m", 0.0),
- "return_3m": horizon_by_label.get("3m", 0.0),
- **params.__dict__,
- **stats,
- **metrics,
- }
- total_rows.append(row)
- horizon_output.extend(current_horizons)
- monthly_frames.append(monthly)
- print(f"done {index}/{len(params_grid)} {params.name}", flush=True)
- totals = pd.DataFrame(total_rows)
- totals["eligible_candidate"] = totals["eligible_sample"] & (totals["net_total_return"] > 0.0)
- totals = totals.sort_values(
- ["eligible_candidate", "net_calmar", "net_annualized_return", "net_max_drawdown", "trades"],
- ascending=[False, False, False, True, True],
- )
- horizon = pd.DataFrame(horizon_output)
- horizon["horizon"] = pd.Categorical(horizon["horizon"], categories=["full", "3y", "1y", "6m", "3m"], ordered=True)
- horizon = horizon.sort_values(["name", "horizon"])
- monthly = pd.concat(monthly_frames, ignore_index=True)
- top_names = set(totals.head(25)["name"])
- monthly_top = monthly[monthly["name"].isin(top_names)].sort_values(["name", "month"])
- args.output_dir.mkdir(parents=True, exist_ok=True)
- totals_path = args.output_dir / f"{PREFIX}-totals.csv"
- horizon_path = args.output_dir / f"{PREFIX}-horizons.csv"
- monthly_path = args.output_dir / f"{PREFIX}-monthly-returns.csv"
- best_path = args.output_dir / f"{PREFIX}-best.json"
- report_path = args.output_dir / f"{PREFIX}-report.md"
- totals.to_csv(totals_path, index=False)
- horizon.to_csv(horizon_path, index=False)
- monthly_top.to_csv(monthly_path, index=False)
- best_path.write_text(json.dumps(totals.head(3).to_dict(orient="records"), indent=2), encoding="utf-8")
- paths = [totals_path, horizon_path, monthly_path, best_path, report_path]
- command = f"rtk .venv/bin/python {Path(__file__).as_posix()} --years {args.years}"
- report_path.write_text(markdown_report(paths, totals, horizon, monthly_top, command), encoding="utf-8")
- print(totals.head(10).to_string(index=False))
- return 0
- if __name__ == "__main__":
- raise SystemExit(main())
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