d5dd6f4b72
- altlib.causality_ok(target_fn, tf): online-consistency guard (ricalcola il target su un prefisso, la coda deve combaciare col full). eval_weights shifta la posizione ma non vede una feature non-causale (finestra centrata/shift(-k)/stat full-sample) -> questa sì. - intra_score integra DUE gate prima/dopo lo scoring: causality (leak -> LEAK, squalificato) e day_boundary_robust (ARTIFACT-RISK -> fuori dagli slot). Effetto sul leaderboard intraday: open_drive + weekly_seasonality + overnight -> CAL-ARTIFACT (da soli, niente skeptic); prevday_range_breakout resta (ROBUST). earns_slot 10 -> 8. - +2 test (causal-ok / leak), suite intera verde. Il lab intraday ora auto-becca leak e artefatti-calendario che ieri richiedevano 3 scettici. Chiude la 3a lezione harness dell'onda intraday. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
125 lines
5.9 KiB
Python
125 lines
5.9 KiB
Python
"""intra_score — judge an INTRADAY / short-horizon signal with the HARDENED marginal scorer.
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New axis (2026-06-21): everything post-reset was 1d. We have certified 5m/15m/1h. A module
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defines a CONTINUOUS-position signal:
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def target(df) -> np.array # per-bar position in [-1,1], decided <= close[i]
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# (or target(df, asset) if you need the asset name, e.g. for DVOL)
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This wraps altlib.study_marginal at the chosen TF: it compounds the intraday returns to a
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daily series, scores it vs TP01 with the HARDENED gates (multi-cut persistence, in-sample
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edge >=0.5, hedge-vs-alpha), AND reports the absolute robustness + FEE SWEEP (0.00-0.20% RT)
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+ turnover. Intraday fights fees: a churner dies at 0.20% RT. earns_slot is the bullseye.
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uv run python scripts/research/intraday/intra_score.py --module <path.py> --tf 1h
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uv run python scripts/research/intraday/intra_score.py --all --tf 1h
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"""
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from __future__ import annotations
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import argparse
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import importlib.util
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import json
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import sys
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from pathlib import Path
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HERE = Path(__file__).resolve().parent
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sys.path.insert(0, "/opt/docker/PythagorasGoal/scripts/research/alt")
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import altlib as al # noqa: E402
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AGENTS = HERE / "agents"
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def _target(path: Path):
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spec = importlib.util.spec_from_file_location(path.stem, path)
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mod = importlib.util.module_from_spec(spec)
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spec.loader.exec_module(mod)
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return mod.target
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def score(path: Path, tf: str) -> dict:
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rec = {"name": path.stem, "tf": tf}
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try:
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target = _target(path)
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except Exception as e:
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return {**rec, "error": f"import: {e}", "earns_slot": False}
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# LOOK-AHEAD guard first: eval_weights' shift can't catch a non-causal FEATURE (centered
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# window / shift(-k) / full-sample stat). A leak is disqualified no matter its Sharpe.
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try:
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caus = al.causality_ok(target, tf=tf)
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rec["causal"] = bool(caus["ok"])
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if not caus["ok"]:
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return {**rec, "causality": caus, "marginal_verdict": "LEAK", "earns_slot": False}
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except Exception as e:
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return {**rec, "error": f"causality: {e}", "causal": False, "earns_slot": False}
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try:
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rep = al.study_marginal(path.stem, target, tf=tf)
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except Exception as e:
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import traceback
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return {**rec, "error": f"score: {e}\n{traceback.format_exc()[-300:]}", "earns_slot": False}
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m = rep["marginal"]
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cell = rep["absolute"]["cells"][0]
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# min per-asset turnover/year + worst-case fee Sharpe (0.20% RT)
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turn = max(cell["per_asset"][a]["turnover"] for a in ("BTC", "ETH"))
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fee020 = min(cell["per_asset"][a]["fee_sweep"].get("0.20%RT", -9) for a in ("BTC", "ETH"))
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rec.update(
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abs_grade=rep["abs_grade"], marginal_verdict=rep["marginal_verdict"],
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earns_slot=rep["earns_slot"],
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corr_full=m.get("corr_full"), corr_hold=m.get("corr_hold"),
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uplift_hold=m.get("blends", {}).get("w25", {}).get("uplift_hold"),
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uplift_full=m.get("blends", {}).get("w25", {}).get("uplift_full"),
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cand_insample_sharpe=m.get("cand_insample_sharpe"),
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has_insample_edge=m.get("has_insample_edge"), is_hedge=m.get("is_hedge"),
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robust_oos=m.get("robust_oos"), multicut_persistent=m.get("multicut_persistent"),
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abs_full_sharpe=cell.get("min_asset_full_sharpe"),
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abs_hold_sharpe=cell.get("min_asset_holdout_sharpe"),
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turnover_per_year=round(turn, 1), fee020_full_sharpe=round(fee020, 3),
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fee_survives=cell.get("fee_survives"),
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)
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# calendar-artifact guard: a signal whose marginal uplift INVERTS under a UTC day-boundary
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# shift is a labeling artifact (open_drive), not an intraday effect. INVARIANT (price
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# signal) and ROBUST (genuine calendar effect, e.g. prevday breakout) pass.
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try:
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db = al.day_boundary_robust(target, tf=tf)
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rec["boundary_verdict"] = db["verdict"]
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rec["boundary_spread"] = db["spread"]
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if db["verdict"] == "ARTIFACT-RISK":
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rec["earns_slot"] = False
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except Exception as e:
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rec["boundary_verdict"] = f"err:{e}"
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return rec
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def main():
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ap = argparse.ArgumentParser()
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ap.add_argument("--module"); ap.add_argument("--tf", default="1h")
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ap.add_argument("--all", action="store_true")
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args = ap.parse_args()
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if args.all:
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rows = []
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for p in sorted(AGENTS.glob("agent_*.py")):
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tf = "15m" if "_15m" in p.stem else args.tf
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rows.append(score(p, tf))
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rows.sort(key=lambda r: (r.get("earns_slot", False), r.get("uplift_hold") or -9), reverse=True)
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print(f"\n INTRADAY wave ({len(rows)} signals) — hardened marginal judge + fee sweep")
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print(f" {'name':<26}{'tf':>4} {'verdict':<9}{'absG':>5}{'corrH':>6}{'up_h':>6}"
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f"{'is_sh':>6}{'turn':>6}{'fee.20':>7} slot")
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print(" " + "-" * 92)
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for r in rows:
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if "error" in r:
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print(f" {r['name'][:26]:<26}{r['tf']:>4} ERROR {r['error'][:40]}"); continue
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if r.get("causal") is False:
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print(f" {r['name'][:26]:<26}{r['tf']:>4} LEAK (look-ahead, disqualified) "
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f"max_tail_diff={r.get('causality', {}).get('max_tail_diff')}"); continue
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bflag = " CAL-ARTIFACT" if r.get("boundary_verdict") == "ARTIFACT-RISK" else ""
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print(f" {r['name'][:26]:<26}{r['tf']:>4} {str(r['marginal_verdict']):<9}"
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f"{str(r['abs_grade']):>5}{str(r.get('corr_hold')):>6}{str(r.get('uplift_hold')):>6}"
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f"{str(r.get('cand_insample_sharpe')):>6}{str(r.get('turnover_per_year')):>6}"
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f"{str(r.get('fee020_full_sharpe')):>7} {'<<<' if r.get('earns_slot') else bflag}")
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slots = [r["name"] for r in rows if r.get("earns_slot")]
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print(f"\n EARNS SLOT: {slots or 'NONE'}")
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(HERE / "intra_leaderboard.json").write_text(json.dumps(rows, indent=2, default=str))
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else:
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print(json.dumps(score(Path(args.module), args.tf), indent=2, default=str))
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if __name__ == "__main__":
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main()
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