14522262e6
Reset del progetto su fondamenta verificate dopo la scoperta che l'intera libreria "validata OOS" era artefatto di feed contaminato (print fantasma del feed Cerbero TESTNET + storico Binance/USDT). - Storico ricostruito da Deribit MAINNET (ccxt pubblico, tokenless) e CERTIFICATO (certify_feed.py): BTC/ETH puliti su TUTTA la storia (mediana 2-6 bps vs Coinbase USD), integrita' OHLC + coerenza resample (maxΔ 0.00) + cross-venue OK. Alt esclusi (illiquidi/divergenti: LTC/DOGE 50-82% barre flat; XRP/BNB non certificabili). - Verdetto sul feed pulito: FADE / PAIRS / XS01 / TSM01 morti (ogni portafoglio Sharpe -2.3..-3.0, DD ~40%); solo SH01 e frammenti HONEST con segnale residuo, da ri-validare in isolamento. - Cleanup "restart pulito": strategie, stack live (src/live, src/portfolio, runner/executor, yml, docker), ~100 script ricerca/gate, waste/games/ portfolios, dati non certificati + cache e 60+ diari -> archiviati in Old/ (preservati, non cancellati). Diario consolidato in un unico documento. - Skeleton ricerca tenuto: Strategy ABC + indicatori + src/fractal + src/backtest/engine + load_data; tool dati certificati (rebuild_history, certify_feed, audit_feed, multi_source_check). - Universo dati ATTIVO: solo BTC/ETH (5m/15m/1h); guardrail fisico (load_data su alt -> FileNotFoundError). Esecuzione DISABILITATA, conto flat. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
196 lines
8.3 KiB
Python
196 lines
8.3 KiB
Python
"""MR01 — Bollinger Fade (mean-reversion).
|
|
|
|
L'UNICA famiglia con edge netto reale dopo l'analisi out-of-sample fee-aware
|
|
(vedi scripts/analysis/strategy_research.py). Contrario della tesi squeeze:
|
|
i breakout RIENTRANO, quindi si fada l'estremo verso la media.
|
|
|
|
Logica:
|
|
1. Bollinger Band (window n, k deviazioni) sul close
|
|
2. ENTRY: close esce sotto la banda inferiore -> long (o sopra la superiore -> short)
|
|
3. EXIT: take-profit alla media mobile (il rientro atteso),
|
|
stop-loss a sl_atr*ATR oltre l'estremo, oppure time-limit max_bars
|
|
4. ingresso a close[i] (eseguibile dal vivo, nessun look-ahead)
|
|
|
|
Validazione (netto, fee 0.10% RT reale Deribit, leva 3x, OOS = ultimo 30%):
|
|
BTC 1h n=50 k=2.5: +201% OOS, DD 15%, ~tutti gli anni positivi
|
|
ETH 1h n=50 k=2.0: +1238% OOS, DD 23%
|
|
Robusto su TUTTA la griglia n in {14,20,30,50} x k in {2.0,2.5,3.0}
|
|
e su tutte le fee 0.00-0.20% RT (margine di sicurezza ampio).
|
|
|
|
NOTA LIVE: usa TP alla media + SL ad ATR + max_bars. Lo StrategyWorker attuale
|
|
esce solo a hold_bars/stop -2% fisso: per tradarla come validata il worker deve
|
|
supportare gli exit TP/SL passati in metadata (vedi metadata di ogni Signal).
|
|
"""
|
|
from __future__ import annotations
|
|
import sys
|
|
sys.path.insert(0, ".")
|
|
|
|
import numpy as np
|
|
import pandas as pd
|
|
|
|
from src.strategies.base import Strategy, Signal, BacktestResult, YearlyStats, TF_MINUTES
|
|
from src.data.downloader import load_data
|
|
from src.strategies.fade_base import hurst_skip_mask
|
|
|
|
|
|
def _atr(df: pd.DataFrame, n: int = 14) -> np.ndarray:
|
|
h, l, c = df["high"].values, df["low"].values, df["close"].values
|
|
pc = np.roll(c, 1); pc[0] = c[0]
|
|
tr = np.maximum(h - l, np.maximum(np.abs(h - pc), np.abs(l - pc)))
|
|
return pd.Series(tr).rolling(n).mean().values
|
|
|
|
|
|
class BollingerFade(Strategy):
|
|
name = "MR01_bollinger_fade"
|
|
description = "Mean-reversion: fada la banda di Bollinger, TP alla media"
|
|
default_assets = ["BTC", "ETH"]
|
|
default_timeframes = ["1h"]
|
|
fee_rt = 0.001 # Deribit perp realistico (taker 0.05%/lato)
|
|
leverage = 3.0
|
|
position_size = 0.15
|
|
initial_capital = 1000.0
|
|
|
|
def generate_signals(self, df: pd.DataFrame, ts: pd.DatetimeIndex,
|
|
**params) -> list[Signal]:
|
|
c = df["close"].values
|
|
n_len = len(c)
|
|
bb_w = params.get("bb_window", 50)
|
|
k = params.get("k", 2.5)
|
|
sl_atr = params.get("sl_atr", 2.0)
|
|
max_bars = params.get("max_bars", 24)
|
|
trend_max = params.get("trend_max") # None = filtro disattivo
|
|
ema_long = params.get("ema_long", 200)
|
|
# Edge minimo: salta i segnali il cui TP (la media) è più vicino dell'entry del
|
|
# costo round-trip -> perdenti garantiti anche colpendo il TP. 0 = off.
|
|
min_tp_frac = params.get("min_tp_frac", 0.0)
|
|
# Loss-guard Hurst: salta in regime persistente/trending (hurst >= soglia). None = off.
|
|
hurst_max = params.get("hurst_max")
|
|
|
|
ma = pd.Series(c).rolling(bb_w).mean().values
|
|
sd = pd.Series(c).rolling(bb_w).std().values
|
|
a = _atr(df, 14)
|
|
up, lo = ma + k * sd, ma - k * sd
|
|
el = pd.Series(c).ewm(span=ema_long, adjust=False).mean().values if trend_max is not None else None
|
|
skip = hurst_skip_mask(df, hurst_max, params.get("hurst_win", 100))
|
|
|
|
signals: list[Signal] = []
|
|
for i in range(bb_w + 14, n_len):
|
|
if np.isnan(up[i]) or np.isnan(a[i]):
|
|
continue
|
|
if skip[i]:
|
|
continue # loss-guard: regime persistente
|
|
if el is not None and (a[i] == 0 or np.isnan(el[i]) or abs(c[i] - el[i]) / a[i] > trend_max):
|
|
continue
|
|
if c[i] < lo[i] and c[i - 1] >= lo[i - 1]:
|
|
d, sl = 1, c[i] - sl_atr * a[i]
|
|
elif c[i] > up[i] and c[i - 1] <= up[i - 1]:
|
|
d, sl = -1, c[i] + sl_atr * a[i]
|
|
else:
|
|
continue
|
|
if min_tp_frac > 0 and abs(ma[i] - c[i]) / c[i] <= min_tp_frac:
|
|
continue # TP entro le fee -> non eseguibile in utile
|
|
signals.append(Signal(
|
|
idx=i, direction=d, entry_price=c[i],
|
|
metadata={"tp": float(ma[i]), "sl": float(sl), "max_bars": max_bars},
|
|
))
|
|
return signals
|
|
|
|
def backtest(self, asset: str, tf: str = "1h", hold: int = 3,
|
|
**params) -> BacktestResult | None:
|
|
"""Backtest fedele: TP alla media / SL ad ATR / time-limit, fee+leva nette."""
|
|
df = load_data(asset, tf)
|
|
ts = pd.to_datetime(df["timestamp"], unit="ms", utc=True)
|
|
signals = self.generate_signals(df, ts, **params)
|
|
if not signals:
|
|
return None
|
|
|
|
h, l, c = df["high"].values, df["low"].values, df["close"].values
|
|
n = len(c)
|
|
# EXIT-16 close-confirm SL (2026-06-04): come in fade_base.FadeStrategy.backtest.
|
|
# None = comportamento storico. Vedi docs/diary/2026-06-04-exit-lab.md.
|
|
sl_confirm = params.get("sl_confirm_atr")
|
|
a14 = _atr(df, 14) if sl_confirm else None
|
|
fee = self.fee_rt * self.leverage
|
|
capital = peak = float(self.initial_capital)
|
|
max_dd = 0.0
|
|
total_bars = 0
|
|
last_exit = -1
|
|
yearly: dict[int, dict] = {}
|
|
|
|
for sig in signals:
|
|
i, d = sig.idx, sig.direction
|
|
if i <= last_exit or i + 1 >= n:
|
|
continue
|
|
entry = c[i]
|
|
tp, sl, mb = sig.metadata["tp"], sig.metadata["sl"], sig.metadata["max_bars"]
|
|
exit_p = c[min(i + mb, n - 1)]
|
|
j = min(i + mb, n - 1)
|
|
for step in range(1, mb + 1):
|
|
j = i + step
|
|
if j >= n:
|
|
j = n - 1; exit_p = c[j]; break
|
|
hit_tp = (d == 1 and h[j] >= tp) or (d == -1 and l[j] <= tp)
|
|
if sl_confirm is None:
|
|
hit_sl = (d == 1 and l[j] <= sl) or (d == -1 and h[j] >= sl)
|
|
if hit_sl:
|
|
exit_p = sl; break
|
|
if hit_tp:
|
|
exit_p = tp; break
|
|
else:
|
|
# close-confirm: TP intrabar al livello; SL valutato sul CLOSE
|
|
if hit_tp:
|
|
exit_p = tp; break
|
|
buf = sl_confirm * a14[j]
|
|
if (d == 1 and c[j] < sl - buf) or (d == -1 and c[j] > sl + buf):
|
|
exit_p = c[j]; break
|
|
if step == mb:
|
|
exit_p = c[j]
|
|
|
|
ret = (exit_p - entry) / entry * d * self.leverage - fee
|
|
capital = max(capital + capital * self.position_size * ret, 10.0)
|
|
if capital > peak:
|
|
peak = capital
|
|
max_dd = max(max_dd, (peak - capital) / peak)
|
|
total_bars += (j - i)
|
|
last_exit = j
|
|
|
|
year = ts.iloc[i].year
|
|
yr = yearly.setdefault(year, {"w": 0, "t": 0, "pnl": 0.0})
|
|
yr["t"] += 1
|
|
if ret > 0:
|
|
yr["w"] += 1
|
|
yr["pnl"] += ret * self.initial_capital
|
|
|
|
all_t = sum(v["t"] for v in yearly.values())
|
|
all_w = sum(v["w"] for v in yearly.values())
|
|
if all_t == 0:
|
|
return None
|
|
|
|
yearly_stats = [YearlyStats(y, v["t"], v["w"], v["pnl"]) for y, v in sorted(yearly.items())]
|
|
return BacktestResult(
|
|
strategy_name=self.name, asset=asset, timeframe=tf, params=params,
|
|
trades=all_t, wins=all_w, pnl=sum(v["pnl"] for v in yearly.values()),
|
|
capital=capital, initial_capital=self.initial_capital,
|
|
max_dd=max_dd * 100, time_in_market_pct=total_bars / n * 100,
|
|
avg_trade_duration_h=total_bars / all_t * TF_MINUTES.get(tf, 60) / 60,
|
|
years_active=len(yearly), yearly=yearly_stats,
|
|
)
|
|
|
|
|
|
if __name__ == "__main__":
|
|
strat = BollingerFade()
|
|
print(f"{'=' * 110}")
|
|
print(f" MR01 BOLLINGER FADE — netto fee {strat.fee_rt*100:.2f}% RT, leva {strat.leverage:.0f}x")
|
|
print(f"{'=' * 110}")
|
|
results = []
|
|
for asset in ["BTC", "ETH"]:
|
|
for k in [2.0, 2.5]:
|
|
r = strat.backtest(asset, "1h", bb_window=50, k=k, sl_atr=2.0, max_bars=24)
|
|
if r:
|
|
r.strategy_name = f"MR01 {asset} 1h n50 k{k}"
|
|
results.append(r)
|
|
for r in results:
|
|
r.print_summary()
|
|
if results:
|
|
results[0].print_yearly()
|