Files
PythagorasGoal/Old/scripts/waste/REF_11_volatility_breakout.py
Adriano Dal Pastro 14522262e6 chore(reset): v2.0.0 — storico certificato Deribit mainnet, ripartenza pulita
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>
2026-06-19 15:20:59 +00:00

224 lines
8.1 KiB
Python

"""Strategia 11: Volatility compression → breakout.
Approccio diverso: non predire la direzione direttamente.
1. Identifica momenti di COMPRESSIONE (Bollinger squeeze, ATR basso, bassa fractal dim)
2. Quando la volatilità ESPLODE dopo compressione, segui la direzione del breakout
3. Alta precisione perché il breakout DOPO compressione ha forte momentum
Target: pochi trade molto precisi, con leva.
"""
from __future__ import annotations
import sys
sys.path.insert(0, ".")
import numpy as np
import pandas as pd
from src.data.downloader import load_data
from src.fractal.indicators import volatility_ratio
FEE_PCT = 0.001
LEVERAGE = 3
INITIAL_CAPITAL = 1000
def bollinger_bandwidth(close: np.ndarray, window: int = 20) -> np.ndarray:
"""Bandwidth = (upper - lower) / middle."""
result = np.full(len(close), np.nan)
for i in range(window, len(close)):
w = close[i - window : i]
ma = np.mean(w)
std = np.std(w)
if ma > 0:
result[i] = (2 * 2 * std) / ma
return result
def keltner_channel_ratio(close: np.ndarray, high: np.ndarray, low: np.ndarray, window: int = 20) -> np.ndarray:
"""Ratio of Bollinger to Keltner — squeeze when < 1."""
result = np.full(len(close), np.nan)
for i in range(window, len(close)):
w_c = close[i - window : i]
w_h = high[i - window : i]
w_l = low[i - window : i]
ma = np.mean(w_c)
bb_std = np.std(w_c)
bb_upper = ma + 2 * bb_std
bb_lower = ma - 2 * bb_std
tr = np.maximum(w_h - w_l, np.maximum(np.abs(w_h - np.roll(w_c, 1)), np.abs(w_l - np.roll(w_c, 1))))
atr = np.mean(tr[1:])
kc_upper = ma + 1.5 * atr
kc_lower = ma - 1.5 * atr
kc_range = kc_upper - kc_lower
bb_range = bb_upper - bb_lower
if kc_range > 0:
result[i] = bb_range / kc_range
return result
def detect_squeeze_release(
close: np.ndarray,
high: np.ndarray,
low: np.ndarray,
volume: np.ndarray,
bb_window: int = 20,
squeeze_threshold: float = 0.8,
breakout_bars: int = 3,
volume_mult: float = 1.5,
) -> list[dict]:
"""Detect squeeze → breakout events."""
bw = bollinger_bandwidth(close, bb_window)
kcr = keltner_channel_ratio(close, high, low, bb_window)
events = []
in_squeeze = False
squeeze_start = 0
for i in range(bb_window + 1, len(close)):
if np.isnan(kcr[i]):
continue
is_squeeze = kcr[i] < squeeze_threshold
if is_squeeze and not in_squeeze:
in_squeeze = True
squeeze_start = i
elif not is_squeeze and in_squeeze:
in_squeeze = False
squeeze_duration = i - squeeze_start
if squeeze_duration < 5:
continue
# Check breakout direction using next few bars
if i + breakout_bars >= len(close):
continue
breakout_ret = (close[i + breakout_bars - 1] - close[i - 1]) / close[i - 1]
# Volume confirmation
avg_vol = np.mean(volume[squeeze_start:i])
breakout_vol = np.mean(volume[i:i + breakout_bars])
vol_confirmed = breakout_vol > avg_vol * volume_mult if avg_vol > 0 else False
# Momentum confirmation
mom_3 = (close[i + 2] - close[i - 1]) / close[i - 1] if i + 2 < len(close) else 0
events.append({
"idx": i,
"squeeze_duration": squeeze_duration,
"breakout_ret": breakout_ret,
"vol_confirmed": vol_confirmed,
"mom_3": mom_3,
"bb_expansion": bw[i] / bw[squeeze_start] if bw[squeeze_start] > 0 else 1,
})
return events
def run_squeeze_strategy(asset: str, tf: str = "1h"):
print(f"\n{'#'*60}")
print(f" {asset} {tf} — VOLATILITY SQUEEZE BREAKOUT")
print(f"{'#'*60}")
df = load_data(asset, tf)
close = df["close"].values
high = df["high"].values
low = df["low"].values
volume = df["volume"].values
n = len(df)
split_idx = int(n * 0.7)
for bb_w in [14, 20, 30]:
for sq_thr in [0.7, 0.8, 0.9]:
for brk_bars in [3, 6]:
events = detect_squeeze_release(close, high, low, volume,
bb_window=bb_w, squeeze_threshold=sq_thr,
breakout_bars=brk_bars, volume_mult=1.3)
test_events = [e for e in events if e["idx"] >= split_idx]
if len(test_events) < 10:
continue
# Strategy: follow breakout direction, with volume confirmation
capital = float(INITIAL_CAPITAL)
correct = 0
total = 0
for e in test_events:
i = e["idx"]
if i + brk_bars * 2 >= n:
continue
# First 1-bar direction as signal
first_bar_ret = (close[i] - close[i - 1]) / close[i - 1]
if abs(first_bar_ret) < 0.001:
continue
direction = "long" if first_bar_ret > 0 else "short"
# Actual result after holding for brk_bars more
actual_ret = (close[i + brk_bars - 1] - close[i - 1]) / close[i - 1]
is_correct = (direction == "long" and actual_ret > 0) or (direction == "short" and actual_ret < 0)
total += 1
if is_correct:
correct += 1
trade_ret = actual_ret if direction == "long" else -actual_ret
net = trade_ret * LEVERAGE - FEE_PCT * 2 * LEVERAGE
capital += capital * 0.2 * net
capital = max(capital, 0)
# Enhanced: volume-confirmed only
if total > 0:
acc = correct / total * 100
ret = (capital - INITIAL_CAPITAL) / INITIAL_CAPITAL * 100
test_candles = n - split_idx
test_years = test_candles / (24 * 365.25)
ann = ((capital / INITIAL_CAPITAL) ** (1 / test_years) - 1) * 100 if test_years > 0 and capital > 0 else -100
if acc >= 55 and total >= 15:
print(f" BBw={bb_w:2d} sqThr={sq_thr:.1f} brk={brk_bars}: trades={total:4d} acc={acc:.1f}% ret={ret:+.1f}% ann={ann:+.1f}%")
# Volume-confirmed only
cap_vc = float(INITIAL_CAPITAL)
correct_vc = 0
total_vc = 0
for e in test_events:
if not e["vol_confirmed"]:
continue
i = e["idx"]
if i + brk_bars * 2 >= n:
continue
first_bar_ret = (close[i] - close[i - 1]) / close[i - 1]
if abs(first_bar_ret) < 0.001:
continue
direction = "long" if first_bar_ret > 0 else "short"
actual_ret = (close[i + brk_bars - 1] - close[i - 1]) / close[i - 1]
is_correct = (direction == "long" and actual_ret > 0) or (direction == "short" and actual_ret < 0)
total_vc += 1
if is_correct:
correct_vc += 1
trade_ret = actual_ret if direction == "long" else -actual_ret
net = trade_ret * LEVERAGE - FEE_PCT * 2 * LEVERAGE
cap_vc += cap_vc * 0.2 * net
cap_vc = max(cap_vc, 0)
if total_vc >= 10:
acc_vc = correct_vc / total_vc * 100
ret_vc = (cap_vc - INITIAL_CAPITAL) / INITIAL_CAPITAL * 100
ann_vc = ((cap_vc / INITIAL_CAPITAL) ** (1 / (test_candles/(24*365.25))) - 1) * 100 if cap_vc > 0 else -100
if acc_vc >= 55:
print(f" +VOL BBw={bb_w:2d} sqThr={sq_thr:.1f} brk={brk_bars}: trades={total_vc:4d} acc={acc_vc:.1f}% ret={ret_vc:+.1f}% ann={ann_vc:+.1f}%")
for asset in ["BTC", "ETH"]:
for tf in ["1h", "15m"]:
run_squeeze_strategy(asset, tf)