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>
259 lines
11 KiB
Python
259 lines
11 KiB
Python
"""Ricerca strategie fee-aware, OOS, oltre la famiglia squeeze.
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Lezioni apprese (squeeze breakout = nessun edge):
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- le FEE sono vincolo di prim'ordine -> default fee realistica Deribit 0.10% RT
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(taker 0.05%/lato, maker ~0%); poche operazioni meglio di molte
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- i breakout RIENTRANO -> si esplora mean-reversion, non continuation
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- ogni numero e' NETTO dopo fee+leva, su finestra held-out + per anno
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Engine realistico: ingresso a close[i] (eseguibile), uscita su TP/SL intrabar
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(high/low) o time-limit, una posizione per volta (non-overlap), capitale composto.
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"""
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from __future__ import annotations
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import sys
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from pathlib import Path
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import numpy as np
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import pandas as pd
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PROJECT_ROOT = Path(__file__).resolve().parents[2]
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sys.path.insert(0, str(PROJECT_ROOT))
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from src.data.downloader import load_data
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FEE_RT = 0.001 # Deribit perp realistico: taker 0.05%/lato
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LEV = 3.0
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POS = 0.15
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OOS_FRAC = 0.30
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BARS_PER_YEAR = {"15m": 35040, "1h": 8760, "4h": 2190, "1d": 365}
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# ----------------------------- dati -----------------------------
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def get_df(asset: str, tf: str) -> pd.DataFrame:
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"""tf nativo (15m,1h) o resample da 1h (4h,1d)."""
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if tf in ("15m", "1h"):
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return load_data(asset, tf).reset_index(drop=True)
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base = load_data(asset, "1h").copy()
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base["dt"] = pd.to_datetime(base["timestamp"], unit="ms", utc=True)
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base = base.set_index("dt")
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rule = {"4h": "4h", "1d": "1D"}[tf]
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agg = base.resample(rule).agg(
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{"open": "first", "high": "max", "low": "min", "close": "last", "volume": "sum"}
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).dropna()
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agg["timestamp"] = agg.index.asi8 // 10**6
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return agg.reset_index(drop=True)
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# --------------------------- indicatori ---------------------------
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def atr(df: pd.DataFrame, n: int = 14) -> np.ndarray:
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h, l, c = df["high"].values, df["low"].values, df["close"].values
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pc = np.roll(c, 1); pc[0] = c[0]
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tr = np.maximum(h - l, np.maximum(np.abs(h - pc), np.abs(l - pc)))
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return pd.Series(tr).rolling(n).mean().values
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def rsi(close: np.ndarray, n: int = 14) -> np.ndarray:
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d = np.diff(close, prepend=close[0])
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up = pd.Series(np.where(d > 0, d, 0.0)).ewm(alpha=1/n, adjust=False).mean()
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dn = pd.Series(np.where(d < 0, -d, 0.0)).ewm(alpha=1/n, adjust=False).mean()
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rs = up / dn.replace(0, np.nan)
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return (100 - 100 / (1 + rs)).values
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# --------------------------- engine ---------------------------
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def simulate(entries: list[dict], df: pd.DataFrame, fee_rt: float = FEE_RT,
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lev: float = LEV, pos: float = POS) -> dict:
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"""entries: dict con i(idx), d(+1/-1), tp(prezzo), sl(prezzo), max_bars."""
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h, l, c = df["high"].values, df["low"].values, df["close"].values
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n = len(c)
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cap = peak = 1000.0
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max_dd = 0.0
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fee = fee_rt * lev
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trades = wins = 0
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last_exit = -1
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bars_in = 0
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ts = pd.to_datetime(df["timestamp"], unit="ms", utc=True)
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yearly: dict[int, float] = {}
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for e in entries:
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i, d = e["i"], e["d"]
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if i <= last_exit or i + 1 >= n:
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continue
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entry = c[i]
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tp, sl, mb = e["tp"], e["sl"], e["max_bars"]
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exit_p = c[min(i + mb, n - 1)]
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for k in range(1, mb + 1):
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j = i + k
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if j >= n:
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exit_p = c[n - 1]; break
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hit_sl = (d == 1 and l[j] <= sl) or (d == -1 and h[j] >= sl)
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hit_tp = (d == 1 and h[j] >= tp) or (d == -1 and l[j] <= tp)
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if hit_sl: # conservativo: SL prima del TP nello stesso bar
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exit_p = sl; break
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if hit_tp:
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exit_p = tp; break
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if k == mb:
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exit_p = c[j]
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ret = (exit_p - entry) / entry * d * lev - fee
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cb = cap
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cap = max(cb + cb * pos * ret, 10.0)
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peak = max(peak, cap); max_dd = max(max_dd, (peak - cap) / peak)
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trades += 1; wins += ret > 0; bars_in += min(mb, j - i)
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last_exit = j
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yearly[ts.iloc[i].year] = yearly.get(ts.iloc[i].year, 0.0) + ret * 100
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return {
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"trades": trades,
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"win": wins / trades * 100 if trades else 0.0,
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"ret": (cap / 1000 - 1) * 100,
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"dd": max_dd * 100,
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"yearly": yearly,
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"exposure": bars_in / n * 100,
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}
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# --------------------------- strategie ---------------------------
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def bollinger_fade(df, n=20, k=2.0, sl_atr=2.0, max_bars=24):
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"""Mean-reversion: fada il close oltre la banda, TP alla media, SL = k_atr*ATR."""
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c = df["close"].values
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ma = pd.Series(c).rolling(n).mean().values
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sd = pd.Series(c).rolling(n).std().values
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a = atr(df, 14)
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up, lo = ma + k * sd, ma - k * sd
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ents = []
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for i in range(n + 14, len(c)):
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if np.isnan(up[i]) or np.isnan(a[i]):
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continue
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if c[i] < lo[i] and c[i - 1] >= lo[i - 1]: # appena sotto la banda
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ents.append({"i": i, "d": 1, "tp": ma[i], "sl": c[i] - sl_atr * a[i], "max_bars": max_bars})
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elif c[i] > up[i] and c[i - 1] <= up[i - 1]:
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ents.append({"i": i, "d": -1, "tp": ma[i], "sl": c[i] + sl_atr * a[i], "max_bars": max_bars})
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return ents
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def rsi_revert(df, n=14, lo=30, hi=70, sl_atr=2.0, max_bars=24, ma_n=20):
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"""RSI mean-reversion: long su RSI<lo che risale, TP alla media mobile."""
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c = df["close"].values
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r = rsi(c, n)
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ma = pd.Series(c).rolling(ma_n).mean().values
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a = atr(df, 14)
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ents = []
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for i in range(max(n, ma_n) + 1, len(c)):
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if np.isnan(r[i]) or np.isnan(ma[i]) or np.isnan(a[i]):
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continue
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if r[i - 1] < lo <= r[i]:
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ents.append({"i": i, "d": 1, "tp": ma[i], "sl": c[i] - sl_atr * a[i], "max_bars": max_bars})
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elif r[i - 1] > hi >= r[i]:
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ents.append({"i": i, "d": -1, "tp": ma[i], "sl": c[i] + sl_atr * a[i], "max_bars": max_bars})
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return ents
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def donchian_trend(df, n=20, sl_atr=2.0, tp_atr=6.0, max_bars=120):
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"""Trend-following: breakout canale Donchian, TP/SL in multipli di ATR."""
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h, l, c = df["high"].values, df["low"].values, df["close"].values
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hh = pd.Series(h).rolling(n).max().shift(1).values
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ll = pd.Series(l).rolling(n).min().shift(1).values
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a = atr(df, 14)
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ents = []
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for i in range(n + 14, len(c)):
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if np.isnan(hh[i]) or np.isnan(a[i]):
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continue
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if c[i] > hh[i]:
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ents.append({"i": i, "d": 1, "tp": c[i] + tp_atr * a[i], "sl": c[i] - sl_atr * a[i], "max_bars": max_bars})
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elif c[i] < ll[i]:
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ents.append({"i": i, "d": -1, "tp": c[i] - tp_atr * a[i], "sl": c[i] + sl_atr * a[i], "max_bars": max_bars})
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return ents
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STRATS = {
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"BOLL_fade k2 m24": (bollinger_fade, dict(n=20, k=2.0, sl_atr=2.0, max_bars=24)),
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"BOLL_fade k2.5 m24": (bollinger_fade, dict(n=20, k=2.5, sl_atr=2.0, max_bars=24)),
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"RSI_revert 30/70": (rsi_revert, dict(n=14, lo=30, hi=70, sl_atr=2.0, max_bars=24)),
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"RSI_revert 25/75": (rsi_revert, dict(n=14, lo=25, hi=75, sl_atr=2.0, max_bars=24)),
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"DONCH_trend n20": (donchian_trend, dict(n=20, sl_atr=2.0, tp_atr=6.0, max_bars=120)),
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"DONCH_trend n50": (donchian_trend, dict(n=50, sl_atr=2.0, tp_atr=8.0, max_bars=200)),
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}
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def deep_dive():
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print("\n" + "#" * 120)
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print(" APPROFONDIMENTO BOLLINGER FADE (mean-reversion) — l'unica famiglia con edge netto")
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print("#" * 120)
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cases = [("BTC", "1h"), ("ETH", "1h"), ("BTC", "4h"), ("ETH", "4h")]
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base = dict(n=20, k=2.5, sl_atr=2.0, max_bars=24)
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# --- per anno (config base k2.5/n20) ---
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print(f"\n [1] PnL NETTO per anno — n=20 k=2.5 sl=2ATR | fee {FEE_RT*100:.2f}% RT")
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all_years = sorted({y for a, tf in cases for y in simulate(bollinger_fade(get_df(a, tf), **base), get_df(a, tf))["yearly"]})
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print(f" {'Asset/TF':<10s}" + "".join(f"{y:>8d}" for y in all_years) + f"{'TOT%':>9s}{'DD%':>6s}")
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for a, tf in cases:
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df = get_df(a, tf)
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r = simulate(bollinger_fade(df, **base), df)
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row = "".join(f"{r['yearly'].get(y, 0):>+8.0f}" for y in all_years)
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print(f" {a+' '+tf:<10s}{row}{r['ret']:>+9.0f}{r['dd']:>6.0f}")
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# --- sensibilita' fee ---
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print(f"\n [2] SENSIBILITA' FEE — Ret% FULL / OOS (n=20 k=2.5)")
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fees = [0.0, 0.0005, 0.001, 0.002]
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print(f" {'Asset/TF':<10s}" + "".join(f"{f'{f*100:.2f}%RT':>22s}" for f in fees))
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print(f" {'':<10s}" + "".join(f"{'full':>11s}{'oos':>11s}" for _ in fees))
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for a, tf in cases:
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df = get_df(a, tf)
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ents = bollinger_fade(df, **base)
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split = int(len(df) * (1 - OOS_FRAC))
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oents = [e for e in ents if e["i"] >= split]
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cells = ""
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for f in fees:
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cells += f"{simulate(ents, df, fee_rt=f)['ret']:>+11.0f}{simulate(oents, df, fee_rt=f)['ret']:>+11.0f}"
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print(f" {a+' '+tf:<10s}{cells}")
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# --- griglia parametri (robustezza) su BTC/ETH 1h ---
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print(f"\n [3] GRIGLIA PARAMETRI — Ret%OOS (DD%) | fee {FEE_RT*100:.2f}% RT, deve essere stabile")
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for a in ["BTC", "ETH"]:
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df = get_df(a, "1h")
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split = int(len(df) * (1 - OOS_FRAC))
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print(f"\n {a} 1h " + "".join(f"{f'k={k}':>16s}" for k in [2.0, 2.5, 3.0]))
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for n in [14, 20, 30, 50]:
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cells = ""
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for k in [2.0, 2.5, 3.0]:
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ents = [e for e in bollinger_fade(df, n=n, k=k, sl_atr=2.0, max_bars=24) if e["i"] >= split]
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r = simulate(ents, df)
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cell = f"{r['ret']:+.0f}({r['dd']:.0f})"
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cells += f"{cell:>16s}"
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print(f" n={n:<4d}{cells}")
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def main():
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print("=" * 120)
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print(f" RICERCA STRATEGIE — NETTO dopo fee {FEE_RT*100:.2f}% RT | leva {LEV:.0f}x | pos {POS*100:.0f}% "
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f"| OOS = ultimo {int(OOS_FRAC*100)}%")
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print("=" * 120)
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print(f" {'Strategia':<20s}{'Asset':>5s}{'TF':>5s}{'Trd':>6s}{'Tr/yr':>7s}{'Win%':>7s}"
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f"{'Ret%FULL':>10s}{'Ret%OOS':>10s}{'DD%':>7s}{'Exp%':>7s}{'AnniPos':>9s}")
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print(" " + "-" * 116)
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for label, (fn, params) in STRATS.items():
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for asset in ["BTC", "ETH"]:
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for tf in ["1h", "4h"]:
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df = get_df(asset, tf)
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ents = fn(df, **params)
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full = simulate(ents, df)
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split = int(len(df) * (1 - OOS_FRAC))
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oos = simulate([e for e in ents if e["i"] >= split], df)
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yrs = full["yearly"]
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pos_yrs = sum(1 for v in yrs.values() if v > 0)
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tr_yr = full["trades"] / max(len(yrs), 1)
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flag = " <<<" if oos["ret"] > 0 and full["ret"] > 0 and pos_yrs >= max(len(yrs) - 1, 1) else ""
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print(f" {label:<20s}{asset:>5s}{tf:>5s}{full['trades']:>6d}{tr_yr:>7.0f}{full['win']:>7.1f}"
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f"{full['ret']:>+10.1f}{oos['ret']:>+10.1f}{full['dd']:>7.1f}{full['exposure']:>7.1f}"
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f"{f'{pos_yrs}/{len(yrs)}':>9s}{flag}")
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print(" " + "-" * 116)
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print(" Ret%FULL/OOS = ritorno NETTO composto su €1000. AnniPos = anni con PnL netto>0.")
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print(" <<< = positivo full+OOS e robusto (quasi tutti gli anni positivi).")
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deep_dive()
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if __name__ == "__main__":
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main()
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