Files
PythagorasGoal/scripts/analysis/eth_collar_gate.py
T
Adriano Dal Pastro df8bfbceaa research(mr02eth): ricerca sostituto + integrazione dati opzioni cerbero-bite
Ricerca sostituto/miglioria a MR02/ETH (127 strategie + 18 overlay opzioni,
verifica avversariale, gate PORT06). Esito: miglioria = no-SL (gia' ~catturata
da EXIT-16 live); tail-hedge opzioni NO-GO empirico su prezzi reali.

Infrastruttura opzioni REALE (muro ARGO/GEX caduto):
- options_fetcher.py: importa lo storico per-strike + market_snapshots da
  cerbero-bite -> data/options/ (chain bid/ask/IV/greche/OI + pannello regime
  con net-GEX dealer/gamma-flip/VRP/funding/liquidation).
- options_chain.py: loader + skew_curve/premium_levels (aggregati reali) +
  quote() causale + load_market() (pannello regime).
- option_overlay_lab.py: overlay opzioni BS su DVOL (pricing sintetico).
- mr02eth_port06_gate.py / eth_collar_gate.py: gate swap-sleeve e collar.
- mr02eth_search/options.workflow.js: i 2 workflow.

Numeri reali: skew put 10%OTM ~1.1 (liquido), premio ~1.0%/mese; niente strike
10%OTM a 24h (overlay per-trade infattibile); collar standing paga nei crash ma
net-negativo a PORT06 (alza OOS DD). Diario + CLAUDE.md aggiornati.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-09 07:05:00 +00:00

127 lines
6.1 KiB
Python

"""Gate del CATASTROPHE-CAP auto-finanziato (collar standing) sullo sleeve ETH no-SL.
Tesi: lo sleeve ETH no-SL ha la coda da crash (un long-fade puo' perdere -50/-65% in un
gap). Un COLLAR standing rollato mensilmente — put lunga ~13% OTM finanziata da call corta
~10% OTM — cappa quella coda a premio netto ~zero (validato sui premi REALI di cerbero-bite:
put -13%≈1.0%/m IV55, call +10%≈1.05%/m IV49). Pricing BS calibrato sul reale: skew_put 1.12,
skew_call 1.0. Caveat: il collar aggiunge delta SHORT-ETH con dead-zone -p/+c -> cappa anche
l'upside; nei mesi tranquilli (ETH dentro la banda) costa ~zero. Il gate dice se aiuta netto.
uv run python scripts/analysis/eth_collar_gate.py
"""
from __future__ import annotations
import sys
from pathlib import Path
import numpy as np
import pandas as pd
PROJECT_ROOT = Path(__file__).resolve().parents[2]
sys.path.insert(0, str(PROJECT_ROOT))
from scripts.analysis.explore_lab import get_df
from scripts.analysis.combine_portfolio import IDX, SPLIT, OOS_DATE, metrics, port_returns, _norm
from scripts.analysis.option_overlay_lab import dvol_for, bs_put, bs_call
from scripts.analysis.mr02eth_port06_gate import (
gen_donchian_base, build_trades, build_trades_exit16, daily_equity, port_metrics, CAPS)
from src.portfolio.sleeves import all_sleeve_equities
HY = 24 * 365.0
def collar_daily_returns(df, dvol, p_otm=0.13, c_otm=0.10, skew_put=1.12, skew_call=1.0,
roll_h=24 * 30) -> pd.Series:
"""Collar standing rollato ogni roll_h ore. Ritorna la SERIE di rendimenti GIORNALIERI
(frazione del notional collar): MTM = d(intrinseco) - theta (premio netto amortizzato)."""
c = df["close"].values; ts = pd.to_datetime(df["timestamp"], unit="ms", utc=True)
n = len(c)
val = np.zeros(n) # valore collar (frac notional) marcato a intrinseco - premio residuo
T = roll_h / HY
k = 0
while k < n - 1:
S0 = c[k]; sig = dvol[k] if not np.isnan(dvol[k]) else 0.6
Kp = S0 * (1 - p_otm); Kc = S0 * (1 + c_otm)
prem = bs_put(S0, Kp, T, sig * skew_put) / S0 - bs_call(S0, Kc, T, sig * skew_call) / S0
end = min(k + roll_h, n - 1)
span = end - k
for j in range(k, end + 1):
intr = (max(Kp - c[j], 0.0) - max(c[j] - Kc, 0.0)) / S0
frac_elapsed = (j - k) / span if span else 1.0
val[j] = intr - prem * (1 - frac_elapsed) # premio pagato up-front, amortizzato a 0 a scadenza
k = end
s = pd.Series(val, index=ts)
daily = s.resample("1D").last().reindex(IDX).ffill().bfill()
return daily.diff().fillna(0.0) # rendimento giornaliero (frac notional)
def combine(fade_eq: pd.Series, collar_dr: pd.Series, hedge_frac: float) -> pd.Series:
"""sleeve = fade no-SL + hedge_frac * collar. Combina i rendimenti giornalieri."""
fr = fade_eq.pct_change().fillna(0.0)
return _norm((1 + fr + hedge_frac * collar_dr).cumprod())
def crash_audit(df, dvol, p_otm, c_otm, hedge_frac):
"""P&L del collar nei mesi di crollo ETH peggiori (frac notional)."""
cr = collar_daily_returns(df, dvol, p_otm=p_otm, c_otm=c_otm)
# ETH daily ret mensile
cdf = pd.Series(df["close"].values, index=pd.to_datetime(df["timestamp"], unit="ms", utc=True)).resample("1D").last().reindex(IDX).ffill()
mret = cdf.resample("30D").last().pct_change()
collar_m = (1 + cr).resample("30D").apply(lambda x: x.prod()) - 1
worst = mret.nsmallest(5)
print(f" {'mese (fine)':>12}{'ETH 30g%':>10}{'collar P&L%':>13}")
for t, r in worst.items():
cm = collar_m.reindex([t], method="nearest").iloc[0] * hedge_frac * 100
print(f" {str(t.date()):>12}{r*100:>9.0f}%{cm:>12.1f}%")
def main():
print("=" * 96)
print(f" GATE collar standing (catastrophe-cap) sullo sleeve ETH no-SL | OOS da {OOS_DATE}")
print("=" * 96)
df = get_df("ETH", "1h"); dvol = dvol_for(df, "ETH")
eq = dict(all_sleeve_equities())
ids = [k for k in eq if k in {"MR01_BTC","MR02_BTC","MR07_BTC","MR01_ETH","MR02_ETH","MR07_ETH",
"DIP01_BTC","TR01_basket","ROT02_rot","PR_ETHBTC","PR_LTCETH","PR_ADAETH","PR_BTCLTC","PR_ETHSOL","TSM01","SH_BTC","SH_ETH"}]
base_ents = gen_donchian_base(df, n=20, sl_atr=2.0, trend_max=3.0)
nosl_ents = gen_donchian_base(df, n=20, sl_atr=2.0, trend_max=3.0, use_sl=False)
def pm(ce):
m = dict(eq); m["MR02_ETH"] = ce; return port_metrics(m, ids)
f_l, o_l = pm(daily_equity(build_trades_exit16(base_ents, df, sl_confirm=0.5), df))
fade_nosl = daily_equity(build_trades(nosl_ents, df), df)
f0, o0 = pm(fade_nosl)
print(f"\n {'sleeve ETH':<30s}{'FULL Sh':>8s}{'FULL DD':>8s} |{'OOS Sh':>8s}{'OOS DD':>8s}")
print(" " + "-" * 78)
print(f" {'LIVE EXIT-16 (rif)':<30s}{f_l['sharpe']:>8.2f}{f_l['dd']:>8.2f} |{o_l['sharpe']:>8.2f}{o_l['dd']:>8.2f}")
print(f" {'no-SL nudo':<30s}{f0['sharpe']:>8.2f}{f0['dd']:>8.2f} |{o0['sharpe']:>8.2f}{o0['dd']:>8.2f}")
configs = [
("put13/call10 hf0.45", 0.13, 0.10, 0.45),
("put13/call10 hf0.30", 0.13, 0.10, 0.30),
("put15/call12 hf0.45", 0.15, 0.12, 0.45),
("put20/call15 hf0.45", 0.20, 0.15, 0.45),
("put13/call08 hf0.45", 0.13, 0.08, 0.45),
]
rows = []
for name, p, cc, hf in configs:
cr = collar_daily_returns(df, dvol, p_otm=p, c_otm=cc)
ce = combine(fade_nosl, cr, hf)
f_c, o_c = pm(ce)
rows.append((name, p, cc, hf, f_c, o_c))
print(f" {'no-SL + '+name:<30s}{f_c['sharpe']:>8.2f}{f_c['dd']:>8.2f} |{o_c['sharpe']:>8.2f}{o_c['dd']:>8.2f}")
print("\n " + "=" * 90)
print(f" vs LIVE EXIT-16 (FULL {f_l['sharpe']:.2f}/{f_l['dd']:.2f} OOS {o_l['sharpe']:.2f}/{o_l['dd']:.2f}) e vs no-SL")
print(" " + "-" * 90)
for name, p, cc, hf, f_c, o_c in rows:
print(f" {name:<22s} Δ vsEXIT16 FULL {f_c['sharpe']-f_l['sharpe']:+.2f}/{f_c['dd']-f_l['dd']:+.2f} "
f"OOS {o_c['sharpe']-o_l['sharpe']:+.2f}/{o_c['dd']-o_l['dd']:+.2f} | "
f"Δ vsNoSL DD {f_c['dd']-f0['dd']:+.2f}")
print("\n --- audit crash: P&L collar (hf-scaled) nei 5 mesi ETH peggiori (put13/call10 hf0.45) ---")
crash_audit(df, dvol, 0.13, 0.10, 0.45)
if __name__ == "__main__":
main()