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>
192 lines
8.4 KiB
Python
192 lines
8.4 KiB
Python
"""LADDER SEARCH — harness per la caccia multi-agente a strategie Price Ladder (griglia).
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Goal 2026-06-18 (branch price_ladder_research): "decine di agenti a cercare strategie
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Price Ladder". CONTESTO: il gioco "Grid Traders" trovo' gia' una griglia ETH asimmetrica
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fortissima standalone (FULL Sharpe 5.61, OOS 4.21, plateau 16/16) ma BOCCIATA al gate
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PORT06 -- ridondante con le fade ETH (corr +0.40 con MR02_ETH): full-size alza FULL ma
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abbassa OOS 10.86->10.47. Quindi la ricerca NON e' "trovare un edge griglia" (gia' fatto)
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ma trovarne uno che PASSI IL GATE = aggiunga DIVERSIFICAZIONE. Leve nuove:
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- ASSET diverso da ETH (BTC: meno ridondante con la reversione ETH);
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- REGIME-GATE: deployare la griglia SOLO in regime di range (non trend) -- il doc
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STRATEGIA_GRIGLIA.md dice che la griglia muore in trend; gateare i deploy concentra
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l'edge dove funziona E riduce la correlazione coi trend-follower;
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- STRUTTURA: livelli, range asimmetrico, sl/tp buffer, max_bars, tf.
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Motore = grid_mtm (mark-to-market ONESTO: SL gap-aware, flat-skip, fee 0.10% RT) di
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grid_game_gate.py, esteso con deploy_mask per il regime-gate (retro-compatibile).
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Tutto NETTO, OOS held-out, leva 3x. Il giudizio che CONTA e' il gate PORT06.
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CLI (JSON):
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uv run python scripts/analysis/ladder_search.py eval ETH 15m 0.171 0.046 4 0.124 0.048 2143
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uv run python scripts/analysis/ladder_search.py eval BTC 1h 0.13 0.05 4 0.12 0.05 1500 range 2.0
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"""
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from __future__ import annotations
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import json
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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 scripts.analysis.grid_game_gate import grid_mtm, std, _load
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from scripts.analysis.combine_portfolio import port_returns, metrics, SPLIT, IDX
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from scripts.portfolios._defs import PORTFOLIOS
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from src.portfolio import weighting as W
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_BASE = None
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def _baseline():
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global _BASE
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if _BASE is None:
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from src.portfolio.sleeves import all_sleeve_equities
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_BASE = dict(all_sleeve_equities())
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return _BASE
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def _atr(df, n=14):
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h, l, c = df["high"].to_numpy(float), df["low"].to_numpy(float), df["close"].to_numpy(float)
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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().to_numpy()
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def regime_mask(asset, tf, ema_n=200, trend_max=2.0):
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"""Mask CAUSALE 'range-bound' allineata alle righe di _load(asset,tf):
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True dove |close - EMA(ema_n)| / ATR(14) < trend_max (prezzo vicino al trend =
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regime di range -> la griglia puo' deployare). Decisione a close[j] con dati <= j."""
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df = _load(asset, tf)
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c = df["close"].to_numpy(float)
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ema = pd.Series(c).ewm(span=ema_n, adjust=False).mean().to_numpy()
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a = _atr(df, 14)
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with np.errstate(invalid="ignore", divide="ignore"):
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dist = np.abs(c - ema) / np.where(a == 0, np.nan, a)
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m = dist < trend_max
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m[~np.isfinite(dist)] = False # warmup / ATR nan -> niente deploy
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return m
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def _gate(grid_eq):
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"""Gate PORT06 (stesso metodo di grid_game_gate): baseline vs +LADDER full/half.
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Ritorna metriche base/full/half + max corr coi 19 sleeve (segnale ridondanza)."""
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p = PORTFOLIOS["PORT06"]
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base = _baseline()
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def port_m(extra):
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members = dict(base); ids = list(p.sleeve_ids)
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if extra is not None:
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members["LADDER"] = extra; ids = ids + ["LADDER"]
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dr = pd.DataFrame({i: members[i].reindex(IDX).ffill().bfill()
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.pct_change().fillna(0.0) for i in ids})
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w = W.weight_vector(p.weighting, ids, dr, weights=p.weights,
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caps=p.caps, clusters=p.clusters, lookback=p.vol_lookback)
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drp = port_returns({i: members[i].reindex(IDX).ffill().bfill() for i in ids}, w)
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return metrics(drp), metrics(drp, lo=SPLIT)
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fb, ob = port_m(None)
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gr = grid_eq.reindex(IDX).ffill().bfill().pct_change().fillna(0.0)
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maxcorr = max(abs(gr.corr(e.reindex(IDX).ffill().bfill().pct_change().fillna(0.0)))
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for e in base.values())
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half = (1 + 0.5 * gr).cumprod()
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ff, of = port_m(grid_eq)
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fh, oh = port_m(half)
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def ok(f, o):
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return bool(o["sharpe"] >= ob["sharpe"] - 0.02 and o["dd"] <= ob["dd"] + 1e-9
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and f["sharpe"] >= fb["sharpe"] - 0.02)
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return {
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"base_full_sh": round(fb["sharpe"], 2), "base_full_dd": round(fb["dd"], 2),
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"base_oos_sh": round(ob["sharpe"], 2), "base_oos_dd": round(ob["dd"], 2),
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"full_oos_sh": round(of["sharpe"], 2), "full_oos_dd": round(of["dd"], 2),
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"full_full_sh": round(ff["sharpe"], 2), "full_full_dd": round(ff["dd"], 2),
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"half_oos_sh": round(oh["sharpe"], 2), "half_oos_dd": round(oh["dd"], 2),
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"half_full_sh": round(fh["sharpe"], 2), "half_full_dd": round(fh["dd"], 2),
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"max_corr_existing": round(float(maxcorr), 3),
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"verdict_full": "PROMOSSO" if ok(ff, of) else "bocciato",
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"verdict_half": "PROMOSSO" if ok(fh, oh) else "bocciato",
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}
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def evaluate(asset, tf, rd, ru, levels, sl_buf, tp_buf, max_bars,
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regime="none", trend_max=2.0, ema_n=200, do_gate=True, do_fee2x=True,
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flat_skip=True, close_only=False) -> dict:
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mask = regime_mask(asset, tf, ema_n=ema_n, trend_max=trend_max) if regime == "range" else None
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cfg = dict(tf=tf, range_down=rd, range_up=ru, levels=levels,
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sl_buf=sl_buf, tp_buf=tp_buf, max_bars=max_bars)
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try:
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eqd, st = grid_mtm(asset, **cfg, deploy_mask=mask, flat_skip=flat_skip, close_only=close_only)
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except ValueError as e:
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return {"asset": asset, "tf": tf, "regime": regime, "error": str(e)}
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f, o = std(eqd)
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row = {
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"asset": asset, "tf": tf, "regime": regime, "trend_max": trend_max,
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"rd": rd, "ru": ru, "levels": levels, "sl_buf": sl_buf, "tp_buf": tp_buf, "max_bars": max_bars,
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"trades": st["trades"], "win": round(st["win"], 1), "stops": st["stops"],
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"full_sh": round(f["sharpe"], 2), "full_dd": round(f["dd"], 2), "full_ret": round(f["ret"], 0),
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"oos_sh": round(o["sharpe"], 2), "oos_dd": round(o["dd"], 2),
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}
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if do_fee2x:
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eq2, _ = grid_mtm(asset, **cfg, fee_side=0.001, deploy_mask=mask, flat_skip=flat_skip)
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row["fee2x_oos_sh"] = round(std(eq2)[1]["sharpe"], 2)
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if do_gate:
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row.update(_gate(eqd))
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return row
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# griglia di struttura coarse per lo scan (range asimmetrico favorito, come il vincitore)
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SCAN_RD = [0.08, 0.12, 0.16, 0.20]
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SCAN_RU = [0.04, 0.06]
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SCAN_LEVELS = [3, 4, 6]
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SCAN_SLB = [0.12]
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SCAN_TP = 0.05
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MAXBARS_TF = {"15m": 2880, "30m": 1440, "1h": 720} # ~30 giorni di episodio
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def scan(asset, tf, regime="none", trend_max=2.0, top=10) -> list:
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"""Sweep coarse della struttura (rd x ru x levels) col gate PORT06, baseline
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cachata (una load per processo). Ritorna le top-`top` celle per qualita' di gate."""
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mb = MAXBARS_TF.get(tf, 720)
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rows = []
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for rd in SCAN_RD:
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for ru in SCAN_RU:
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for lv in SCAN_LEVELS:
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for slb in SCAN_SLB:
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r = evaluate(asset, tf, rd, ru, lv, slb, SCAN_TP, mb,
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regime=regime, trend_max=trend_max,
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do_gate=True, do_fee2x=False)
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if "error" not in r:
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rows.append(r)
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# score: PROMOSSO half/full premiati; poi OOS migliorato col candidato; penalita' FULL DD del portafoglio
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def score(r):
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promo = (r.get("verdict_half") == "PROMOSSO") + (r.get("verdict_full") == "PROMOSSO")
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return (promo, r.get("half_oos_sh", 0) - 0.1 * r.get("full_full_dd", 99))
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rows.sort(key=score, reverse=True)
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return rows[:top]
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def main():
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a = sys.argv
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if len(a) >= 2 and a[1] == "scan":
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asset, tf = a[2], a[3]
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regime = a[4] if len(a) > 4 else "none"
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trend_max = float(a[5]) if len(a) > 5 else 2.0
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print(json.dumps(scan(asset, tf, regime=regime, trend_max=trend_max)))
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return
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if len(a) < 2 or a[1] != "eval":
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print(__doc__); return
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asset, tf = a[2], a[3]
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rd, ru = float(a[4]), float(a[5])
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levels = int(a[6]); sl_buf, tp_buf = float(a[7]), float(a[8]); max_bars = int(a[9])
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regime = a[10] if len(a) > 10 else "none"
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trend_max = float(a[11]) if len(a) > 11 else 2.0
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print(json.dumps(evaluate(asset, tf, rd, ru, levels, sl_buf, tp_buf, max_bars,
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regime=regime, trend_max=trend_max)))
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if __name__ == "__main__":
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main()
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