de72e3ce1f
Second agent wave (skyhook-improve-v2, 14 DD-reduction families, each adversarially verified by 2 skeptics) beats the prior winner on the only unmet goal (DD<30%). Winner = ASYM_LS -> promoted to engine as SKH01_V2_DD: same signal (ptn_n=45, vola[35,95], vol_lo=0, exit-bars 24/16) but exits switched from ATR to FIXED-PCT ASYMMETRIC — long sl4%/tp10%, short sl2%(tighter)/tp8%. The tight short %-SL caps the per-trade loss that forms the maxDD in vol spikes. Verified (sk.study, independent re-run): standalone maxDD BTC 21.4% / ETH 27.4% (<30%), minFull +0.99, minHold +1.26, causality 0/400 both assets, fee-surviving to 0.40%RT, marginal vs TP01 ADDS (corr 0.09, in-sample edge, robust_oos, multicut, clean-year +0.57), blend 0.75*TP01+0.25*SKH uplift_hold +0.87; blend 50/50 full 1.84/hold 1.59/DD 10.7%. Plateau (not knife-edge); both skeptics holds_up=high, killer=null. Engine: per-direction short exit overrides (exit_mode_short/sl_*_short/tp_*_short), backward-compatible (None -> symmetric, V1/intermediate-winner unchanged). +3 tests (8/8 pass). Lessons: DD is cut by changing the exit MECHANISM (%-SL, L/S asymmetry, ensembles), NOT by entry-only kill-switch / vol-target / cadence. PATTERN_CONF killed as overfit (knife-edge). PCTL_DD unverified (rate-limit) and ENS_PARAM/TPSL_DD recency/hedge-loaded -> forward-monitor. NOT yet wired to live sleeves: re-verify blend@0.25 + causality on execution code before deploy. Includes both waves' research scripts (runs/SKH_* wave 1, runs/SKH2_* wave 2). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
382 lines
18 KiB
Python
382 lines
18 KiB
Python
"""SKH2_DDKILL — CAUSAL drawdown kill-switch overlay on Skyhook entries.
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Family: drawdown kill-switch on entries [DDKILL].
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Idea
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----
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Walk the trade-by-trade REALIZED equity of the V2-winner Skyhook. Track the running peak.
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Once standalone DD from the running peak exceeds `dd_kill`, enter a "killed" state and SUPPRESS
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new entries until equity recovers within `recover` of the running peak (i.e. DD shrinks back
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below `recover`). This is sequential & causal: the kill decision for a new entry at bar i uses
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ONLY the equity realized by trades that closed at/before i (busy_until <= i).
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Implementation
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--------------
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1. Build base entries with the winner SkyhookParams.
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2. Run backtest_signals -> realized equity path (mark-at-trade-exit, forward-filled).
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3. From that equity path compute a per-bar boolean `killed[i]` (causal: peak/DD use eq up to i,
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and eq[i] only changes at a trade-exit bar -> the state at the moment we'd open a new entry
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at i reflects only past closed trades).
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4. Null entries where killed -> re-run. Equity changes (suppressed losers/winners during DD),
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so ITERATE to a fixed point (state stabilizes, usually 2-5 iters).
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5. Evaluate FULL + HOLD-OUT + fee-sweep + per-year on BOTH assets, marginal-vs-TP01,
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combined-curve max-DD, causality (truncated-prefix recompute of the FINAL entries).
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CAUSALITY of the overlay itself
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-------------------------------
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The base skyhook_entries are already causal (sk.causality). The kill mask at bar i is a function
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of equity[0..i], and equity[j] for j<=i only embeds trades whose exit_idx <= i. The mask never
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references a future bar. We additionally PROVE it by a truncated-prefix recompute: re-deriving the
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final (killed) entries on a data prefix must match the full-run final entries on the overlap.
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"""
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from __future__ import annotations
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import sys
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sys.path.insert(0, "/opt/docker/PythagorasGoal/scripts/research/skyhook")
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import numpy as np
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import pandas as pd
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import skyhooklib as sk
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from src.backtest.harness import backtest_signals
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from src.strategies.skyhook import SkyhookParams, skyhook_entries
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import altlib as al
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HOLDOUT = sk.HOLDOUT
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FEE = sk.FEE_RT
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FEE_SWEEP = (0.0, 0.001, 0.002, 0.003)
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# The verified V2 winner from the prior wave.
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WINNER = dict(ptn_n=45, sl_atr=2.5, tp_atr=7.0, uscitalong=24, uscitashort=16,
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vola_lo=35.0, vola_hi=95.0, vol_lo=0.0)
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def winner_params() -> SkyhookParams:
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return SkyhookParams(**WINNER)
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# ---------------------------------------------------------------------------
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# Causal DD kill-switch overlay
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# ---------------------------------------------------------------------------
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def killed_mask_from_equity(equity: np.ndarray, dd_kill: float, recover: float) -> np.ndarray:
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"""Per-bar boolean: True = entries SUPPRESSED at this bar.
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State machine over the realized equity path (hysteresis):
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- track running peak.
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- if not killed and DD_from_peak > dd_kill -> killed.
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- if killed and DD_from_peak <= recover -> un-killed (recovered).
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Causal: peak[i] and dd[i] use equity[0..i] only.
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"""
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n = len(equity)
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killed = np.zeros(n, dtype=bool)
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peak = equity[0]
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state = False
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for i in range(n):
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if equity[i] > peak:
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peak = equity[i]
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dd = (peak - equity[i]) / peak if peak > 0 else 0.0
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if state:
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if dd <= recover:
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state = False
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else:
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if dd > dd_kill:
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state = True
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killed[i] = state
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return killed
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def apply_kill(entries: list, killed: np.ndarray) -> list:
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out = list(entries)
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for i in range(len(out)):
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if i < len(killed) and killed[i]:
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out[i] = None
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return out
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def ddkill_entries_for_asset(asset: str, p: SkyhookParams, dd_kill: float, recover: float,
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fee_rt: float = FEE, max_iter: int = 8):
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"""Iterate the kill-switch to a fixed point. Returns (final_entries, ltf, n_iters)."""
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ltf, htf = sk.frames(asset)
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base = skyhook_entries(ltf, htf, p)
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cur = base
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prev_killcount = -1
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iters = 0
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for it in range(max_iter):
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m = backtest_signals(ltf, cur, fee_rt=fee_rt, leverage=1.0, asset=asset, tf="230m")
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killed = killed_mask_from_equity(m.equity, dd_kill, recover)
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nxt = apply_kill(base, killed) # always re-derive from BASE so a recovered state re-enables entries
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iters = it + 1
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kc = int(killed.sum())
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# fixed point: same set of nulled entries as before
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same = all((a is None) == (b is None) for a, b in zip(nxt, cur))
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cur = nxt
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if same and kc == prev_killcount:
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break
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prev_killcount = kc
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return cur, ltf, iters
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def _split(eq: np.ndarray, idx: pd.DatetimeIndex, mask: np.ndarray) -> dict:
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e = eq[mask]
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if len(e) < 5:
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return dict(sharpe=0.0, ret=0.0, maxdd=0.0, n=int(len(e)))
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r = np.diff(e) / e[:-1]
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r = r[np.isfinite(r)]
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ix = idx[mask]
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dt = pd.Series(ix).diff().dt.total_seconds().median() or 86400
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bpy = 86400 * 365.25 / dt
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sharpe = float(np.mean(r) / np.std(r) * np.sqrt(bpy)) if len(r) and np.std(r) > 0 else 0.0
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pk = np.maximum.accumulate(e)
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dd = float(np.max((pk - e) / pk))
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return dict(sharpe=round(sharpe, 3), ret=round(float(e[-1] / e[0] - 1), 4),
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maxdd=round(dd, 4), n=int(len(e)))
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def study_ddkill(name: str, p: SkyhookParams, dd_kill: float, recover: float):
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per_asset = {}
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fee_ok_all = True
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entries_by_asset = {}
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for a in ("BTC", "ETH"):
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ent, ltf, iters = ddkill_entries_for_asset(a, p, dd_kill, recover)
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entries_by_asset[a] = (ent, ltf)
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m = backtest_signals(ltf, ent, fee_rt=FEE, leverage=1.0, asset=a, tf="230m")
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eq = m.equity
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idx = pd.DatetimeIndex(pd.to_datetime(m.eq_index, utc=True))
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hmask = np.asarray(idx >= HOLDOUT)
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full = dict(sharpe=round(m.sharpe, 3), ret=round(m.net_return, 4), maxdd=round(m.max_dd, 4),
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n_trades=int(m.n_trades), win_rate=round(m.win_rate, 1))
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hold = _split(eq, idx, hmask)
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sweep = {}
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for f in FEE_SWEEP:
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mf = backtest_signals(ltf, ent, fee_rt=f, leverage=1.0, asset=a, tf="230m")
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sweep[f"{f*100:.2f}%"] = round(mf.sharpe, 3)
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fee_ok_all = fee_ok_all and (sweep["0.30%"] > 0)
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per_asset[a] = dict(full=full, hold=hold,
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yearly={int(y): round(v, 4) for y, v in m.yearly.items()},
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fee_sweep=sweep, iters=iters)
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mf = min(per_asset[a]["full"]["sharpe"] for a in per_asset)
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mh = min(per_asset[a]["hold"]["sharpe"] for a in per_asset)
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mt = min(per_asset[a]["full"]["n_trades"] for a in per_asset)
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mdd = max(per_asset[a]["full"]["maxdd"] for a in per_asset)
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grade = "PASS" if (mt >= 20 and mf >= 0.5 and mh >= 0.2 and fee_ok_all) else \
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("WEAK" if (mt >= 20 and mf >= 0.3 and mh >= 0.0) else "FAIL")
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print(f"\n=== {name} (dd_kill={dd_kill:.0%} recover={recover:.0%}) -> {grade} "
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f"(minFull={mf:+.2f} minHold={mh:+.2f} minTr={mt} maxDD={mdd*100:.0f}% feeOK={fee_ok_all})")
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for a in per_asset:
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pa = per_asset[a]
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yr = " ".join(f"{y}:{r*100:+.0f}%" for y, r in pa["yearly"].items())
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print(f" {a}: FULL Sh={pa['full']['sharpe']:+.2f} ret={pa['full']['ret']*100:+.0f}% "
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f"DD={pa['full']['maxdd']*100:.0f}% n={pa['full']['n_trades']} wr={pa['full']['win_rate']:.0f}% "
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f"| HOLD Sh={pa['hold']['sharpe']:+.2f} ret={pa['hold']['ret']*100:+.0f}% DD={pa['hold']['maxdd']*100:.0f}% "
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f"[iters={pa['iters']}]")
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print(f" fee: " + " ".join(f"{k}={v:+.2f}" for k, v in pa["fee_sweep"].items()))
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print(f" yr: {yr}")
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return dict(grade=grade, minFull=mf, minHold=mh, minTr=mt, maxDD=mdd, fee_ok=fee_ok_all,
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per_asset=per_asset, entries_by_asset=entries_by_asset,
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dd_kill=dd_kill, recover=recover)
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def marginal_ddkill(p: SkyhookParams, dd_kill: float, recover: float):
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def daily(a):
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ent, ltf, _ = ddkill_entries_for_asset(a, p, dd_kill, recover)
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m = backtest_signals(ltf, ent, fee_rt=FEE, leverage=1.0, asset=a, tf="230m")
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s = pd.Series(m.equity, index=pd.DatetimeIndex(pd.to_datetime(m.eq_index, utc=True)))
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return s.resample("1D").last().ffill().pct_change().dropna()
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sb, se = daily("BTC"), daily("ETH")
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J = pd.concat({"BTC": sb, "ETH": se}, axis=1, join="inner").fillna(0.0)
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cand = 0.5 * J["BTC"] + 0.5 * J["ETH"]
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return al.marginal_vs_tp01(cand)
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def combined_curve_maxdd(res: dict) -> float:
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"""Max-DD of the COMBINED 50/50 BTC+ETH bar-level equity (single standalone curve)."""
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curves = []
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for a in ("BTC", "ETH"):
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ent, ltf = res["entries_by_asset"][a]
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m = backtest_signals(ltf, ent, fee_rt=FEE, leverage=1.0, asset=a, tf="230m")
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s = pd.Series(m.equity, index=pd.DatetimeIndex(pd.to_datetime(m.eq_index, utc=True)))
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curves.append(s.resample("1D").last().ffill().pct_change().fillna(0.0))
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J = pd.concat({"BTC": curves[0], "ETH": curves[1]}, axis=1, join="inner").fillna(0.0)
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r = 0.5 * J["BTC"] + 0.5 * J["ETH"]
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eq = (1.0 + r).cumprod().values
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pk = np.maximum.accumulate(eq)
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return float(np.max((pk - eq) / pk))
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# ---------------------------------------------------------------------------
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# Causality of the FINAL (killed) entries via truncated-prefix recompute.
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# ---------------------------------------------------------------------------
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def causality_ddkill(p: SkyhookParams, dd_kill: float, recover: float, asset: str = "BTC",
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tail: int = 200) -> dict:
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"""Re-derive final killed entries on a data PREFIX; they must match the full-run final
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entries on the overlap tail. Proves the kill mask uses no future bar."""
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full_ent, ltf_full = (lambda r: r[:2])(ddkill_entries_for_asset(asset, p, dd_kill, recover))
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n = len(ltf_full)
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ltf, htf = sk.frames(asset)
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bad = 0; checked = 0
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for frac in (0.80, 0.92):
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cut = int(n * frac)
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cut_ts = int(ltf["timestamp"].iloc[cut - 1])
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ltf_sub = ltf.iloc[:cut].reset_index(drop=True)
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htf_sub = htf[htf["timestamp"] <= cut_ts].reset_index(drop=True)
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# re-run the whole kill iteration on the prefix
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base_sub = skyhook_entries(ltf_sub, htf_sub, p)
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cur = base_sub
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for _ in range(8):
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m = backtest_signals(ltf_sub, cur, fee_rt=FEE, leverage=1.0, asset=asset, tf="230m")
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killed = killed_mask_from_equity(m.equity, dd_kill, recover)
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nxt = apply_kill(base_sub, killed)
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same = all((x is None) == (y is None) for x, y in zip(nxt, cur))
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cur = nxt
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if same:
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break
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for i in range(max(0, cut - tail), cut):
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checked += 1
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aE, bE = full_ent[i], cur[i]
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if (aE is None) != (bE is None):
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bad += 1
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elif aE is not None and (aE["dir"] != bE["dir"]
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or abs(aE["sl"] - bE["sl"]) > 1e-6
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or abs(aE["tp"] - bE["tp"]) > 1e-6):
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bad += 1
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return dict(ok=bool(bad == 0), mismatches=int(bad), checked=int(checked))
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def earns_slot_of(res: dict, mg: dict) -> bool:
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return (res["grade"] != "FAIL"
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and mg.get("marginal_verdict") == "ADDS"
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and bool(mg.get("robust_oos"))
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and not bool(mg.get("is_hedge")))
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def beats_winner(res: dict, mg: dict, max_dd: float, earns: bool) -> bool:
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w25 = mg.get("blends", {}).get("w25", {}).get("uplift_hold")
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return bool(earns and max_dd < 0.30
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and (w25 is not None and w25 >= 0.55)
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and res["minHold"] >= 0.65)
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if __name__ == "__main__":
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p = winner_params()
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print("########## BASELINE (winner, no kill) for reference ##########")
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base_rep = sk.study("WINNER (no kill)", p)
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print(sk.fmt(base_rep))
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base_dd = max(base_rep["per_asset"][a]["full"]["maxdd"] for a in base_rep["per_asset"])
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print(f" winner standalone maxDD (per-asset max) = {base_dd*100:.0f}%")
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# Grid of (dd_kill, recover). recover < dd_kill (hysteresis: re-enable once DD shrinks back).
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grid = [
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(0.15, 0.10),
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(0.15, 0.12),
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(0.18, 0.12),
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(0.18, 0.15),
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(0.20, 0.15),
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(0.22, 0.16),
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(0.25, 0.18),
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(0.30, 0.22),
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]
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results = []
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for dd_kill, recover in grid:
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res = study_ddkill(f"DDKILL", p, dd_kill, recover)
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results.append(res)
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print("\n\n########## MARGINAL + combined-DD + earns_slot ##########")
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summary = []
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for res in results:
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mg = marginal_ddkill(p, res["dd_kill"], res["recover"])
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cdd = combined_curve_maxdd(res)
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per_asset_dd = res["maxDD"]
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# standalone max_dd per the brief = max(full.maxdd over BTC & ETH) for the overlay too
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max_dd = per_asset_dd
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earns = earns_slot_of(res, mg)
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bw = beats_winner(res, mg, max_dd, earns)
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w25 = mg.get("blends", {}).get("w25", {}).get("uplift_hold")
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w50 = mg.get("blends", {}).get("w50", {})
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summary.append(dict(dd_kill=res["dd_kill"], recover=res["recover"], grade=res["grade"],
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minFull=res["minFull"], minHold=res["minHold"], minTr=res["minTr"],
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per_asset_dd=per_asset_dd, combined_dd=cdd, max_dd=max_dd,
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corr_full=mg.get("corr_full"), verdict=mg.get("marginal_verdict"),
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insample=mg.get("has_insample_edge"), hedge=mg.get("is_hedge"),
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robust=mg.get("robust_oos"), multicut=mg.get("multicut_persistent"),
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cleanYr=mg.get("clean_year_uplift"), w25=w25, w50=w50,
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fee_ok=res["fee_ok"], earns=earns, beats=bw, mg=mg, res=res))
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print(f"[dd_kill={res['dd_kill']:.0%} recover={res['recover']:.0%}] grade={res['grade']} "
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f"minFull={res['minFull']:+.2f} minHold={res['minHold']:+.2f} "
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f"perAssetDD={per_asset_dd*100:.0f}% combinedDD={cdd*100:.0f}% "
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f"| corr={mg.get('corr_full')} verdict={mg.get('marginal_verdict')} "
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f"insample={mg.get('has_insample_edge')} hedge={mg.get('is_hedge')} "
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f"robust={mg.get('robust_oos')} multicut={mg.get('multicut_persistent')} "
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f"cleanYr={mg.get('clean_year_uplift')} w25uplift={w25} "
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f"| earns={earns} BEATS={bw}")
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# Pick best honestly: prefer beats_winner; then earns_slot AND a healthy hold-out floor
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# (>=0.65) so we never pick a DD win that kills the hold-out; then lowest per-asset DD;
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# then highest minHold.
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def rank(s):
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healthy = bool(s["earns"]) and (s["minHold"] or -9) >= 0.65
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return (not s["beats"], not healthy, not s["earns"], s["max_dd"], -(s["minHold"] or -9))
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summary.sort(key=rank)
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best = summary[0]
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res = best["res"]; mg = best["mg"]
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# Causality of the FINAL killed entries on the best config, both assets.
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cz_btc = causality_ddkill(p, best["dd_kill"], best["recover"], "BTC")
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cz_eth = causality_ddkill(p, best["dd_kill"], best["recover"], "ETH")
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cz_ok = cz_btc["ok"] and cz_eth["ok"]
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print("\n\n################## BEST CONFIG ##################")
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print(f"config: WINNER + DDKILL(dd_kill={best['dd_kill']:.0%}, recover={best['recover']:.0%})")
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print(f" minFull = {best['minFull']:+.3f}")
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print(f" minHold = {best['minHold']:+.3f}")
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print(f" per-asset maxDD= {best['per_asset_dd']*100:.1f}% (max over BTCÐ full.maxdd)")
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print(f" combined maxDD= {best['combined_dd']*100:.1f}% (50/50 daily curve)")
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print(f" n_trades_min = {best['minTr']}")
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print(f" fee@0.30% = {best['fee_ok']}")
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print(f" causality = BTC {cz_btc} | ETH {cz_eth} -> ok={cz_ok}")
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print(f" --- MARGINAL vs TP01 ---")
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print(f" corr_full = {mg.get('corr_full')}")
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print(f" corr_hold = {mg.get('corr_hold')}")
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print(f" marginal_verdict = {mg.get('marginal_verdict')}")
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print(f" has_insample_edge = {mg.get('has_insample_edge')}")
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print(f" is_hedge = {mg.get('is_hedge')}")
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print(f" robust_oos = {mg.get('robust_oos')}")
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print(f" multicut_persistent = {mg.get('multicut_persistent')}")
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print(f" clean_year_uplift = {mg.get('clean_year_uplift')}")
|
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print(f" jackknife_min_uplift= {mg.get('jackknife_min_uplift')}")
|
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print(f" cand_insample_sharpe= {mg.get('cand_insample_sharpe')}")
|
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print(f" blends.w25 = {mg.get('blends', {}).get('w25')}")
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print(f" blends.w50 = {mg.get('blends', {}).get('w50')}")
|
|
earns = best["earns"]
|
|
print(f" earns_slot = {earns}")
|
|
print(f" BEATS_WINNER = {best['beats']}")
|
|
|
|
# Emit a compact machine-readable line for the orchestrator.
|
|
import json
|
|
w25 = mg.get("blends", {}).get("w25", {}).get("uplift_hold")
|
|
out = dict(
|
|
family="ddkill_entries",
|
|
best_config=dict(base=WINNER, dd_kill=best["dd_kill"], recover=best["recover"]),
|
|
ran_ok=True, grade=res["grade"],
|
|
min_full_sharpe=round(float(best["minFull"]), 3),
|
|
min_hold_sharpe=round(float(best["minHold"]), 3),
|
|
max_dd=round(float(best["max_dd"]), 4),
|
|
combined_dd=round(float(best["combined_dd"]), 4),
|
|
n_trades_min=int(best["minTr"]),
|
|
fee_survives_030=bool(best["fee_ok"]),
|
|
causality_ok=bool(cz_ok),
|
|
marginal_verdict=mg.get("marginal_verdict"),
|
|
has_insample_edge=bool(mg.get("has_insample_edge")),
|
|
is_hedge=bool(mg.get("is_hedge")),
|
|
robust_oos=bool(mg.get("robust_oos")),
|
|
multicut_persistent=bool(mg.get("multicut_persistent")),
|
|
clean_year_uplift=mg.get("clean_year_uplift"),
|
|
corr_full=mg.get("corr_full"),
|
|
blend_w25_uplift_hold=w25,
|
|
earns_slot=bool(earns),
|
|
beats_winner=bool(best["beats"]),
|
|
)
|
|
print("\nRESULT_JSON " + json.dumps(out, default=str))
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