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"""Walk-forward backtest for ML signals (local).

Goal: produce *measurable* evidence for whether ML outputs are usable.
This script:
- fetches historical prices via `data.stock_data_api.get_stock_data_for_api`
- runs a walk-forward training/prediction loop (time-series safe)
- optionally computes deterministic technical gates (required_ok / technical_signal)
- simulates a simple long-only strategy

It is intentionally conservative and auditable.
"""

from __future__ import annotations

import argparse
from dataclasses import dataclass
from datetime import datetime
from pathlib import Path
from typing import Any, Dict, List, Optional, Tuple

import numpy as np
import pandas as pd
from sklearn.ensemble import (
    GradientBoostingClassifier,
    GradientBoostingRegressor,
    RandomForestClassifier,
    RandomForestRegressor,
)
from sklearn.metrics import accuracy_score, mean_absolute_error, r2_score
from sklearn.preprocessing import StandardScaler

from data.stock_data_api import get_stock_data_for_api
from ai.predictions_api import _apply_shrinkage, _compute_confidence, _signal_from_change
from analysis.scan_signals_api import compute_scan_signals_for_df
from ai.enhanced_features import (
    engineer_enhanced_features, ENHANCED_FEATURES, ALL_FEATURES,
    add_macro_features, flag_corp_action_days,
)
from trading.broker_base import SlippageModel
from trading.market_registry import DEFAULT_MARKET_ID


def _parse_date(s: str) -> pd.Timestamp:
    return pd.to_datetime(str(s).strip()).tz_localize(None)


def _to_iso(d: Any) -> str:
    try:
        return pd.to_datetime(d).strftime("%Y-%m-%d")
    except Exception:
        return str(d)


def _normalize_signal(x: Any) -> str:
    s = str(x or "").strip().upper()
    return s if s in {"BUY", "SELL", "HOLD"} else "HOLD"


def _combine_signals(ml_signal: str, tech_signal: str, required_ok: bool) -> str:
    """Combine ML + tech gate signals. Tech gate must confirm ML BUY.

    Rules:
    - SELL from either side → SELL (unless conflicting → HOLD)
    - ML BUY + Tech BUY → BUY
    - ML BUY + Tech HOLD → HOLD (gate not confirmed)
    - Tech BUY + required_ok + ML HOLD → HOLD (ML must agree)
    - Anything else → HOLD
    """
    ml = _normalize_signal(ml_signal)
    tech = _normalize_signal(tech_signal)

    if ml == "SELL" or tech == "SELL":
        if (ml == "SELL" and tech == "BUY") or (ml == "BUY" and tech == "SELL"):
            return "HOLD"
        return "SELL"

    # Both must agree for BUY — no bypass
    if ml == "BUY" and (tech == "BUY" or required_ok):
        return "BUY"
    return "HOLD"


# Old local _engineer_features replaced by ai.enhanced_features module
# See ai/enhanced_features.py for the 37 scale-invariant features + 5 macro
FEATURES = ALL_FEATURES

# Module-level cache for benchmark index data (avoids re-fetching per stock)
_BENCHMARK_CACHE: Dict[str, pd.DataFrame] = {}


def _get_market_benchmark_data(market_id: str = DEFAULT_MARKET_ID) -> Optional[pd.DataFrame]:
    """Fetch a market benchmark once and cache it per market."""
    benchmark_map = {
        "bist": "XU100.IS",
        "us": "SPY",
    }
    benchmark_symbol = benchmark_map.get(str(market_id or DEFAULT_MARKET_ID).strip().lower())
    if not benchmark_symbol:
        return None
    if benchmark_symbol in _BENCHMARK_CACHE:
        return _BENCHMARK_CACHE[benchmark_symbol]
    try:
        benchmark_df = get_stock_data_for_api(benchmark_symbol, period="5y", interval="1d", market_id=market_id)
        if benchmark_df is not None and not benchmark_df.empty:
            benchmark_df = benchmark_df.sort_index()
            benchmark_df.index = pd.to_datetime(benchmark_df.index).tz_localize(None)
            _BENCHMARK_CACHE[benchmark_symbol] = benchmark_df
            return _BENCHMARK_CACHE[benchmark_symbol]
    except Exception:
        pass
    return None


@dataclass
class Trade:
    date: str
    type: str
    price: float
    shares: int
    capital: float
    reason: str = ""


def _max_drawdown(equity: pd.Series) -> float:
    if equity is None or equity.empty:
        return 0.0
    running_max = equity.cummax()
    dd = (equity / running_max) - 1.0
    return float(abs(dd.min()) * 100.0)


def _sharpe(daily_returns: pd.Series) -> float:
    if daily_returns is None or daily_returns.empty:
        return 0.0
    r = daily_returns.dropna()
    if len(r) < 2:
        return 0.0
    mean_r = float(r.mean())
    std_r = float(r.std())
    if std_r <= 0:
        return 0.0
    return float((mean_r / std_r) * np.sqrt(252.0))


def _cagr_pct(initial_capital: float, final_capital: float, years: float) -> float:
    if years <= 0 or initial_capital <= 0:
        return 0.0
    if final_capital <= 0:
        return -100.0
    return float(((final_capital / initial_capital) ** (1.0 / years) - 1.0) * 100.0)


def _years_between(start_iso: str, end_iso: str) -> float:
    try:
        a = pd.to_datetime(start_iso)
        b = pd.to_datetime(end_iso)
        days = float((b - a).days)
        return max(0.0, days / 365.25)
    except Exception:
        return 0.0


def _turnover(total_trade_value: float, avg_equity: float, years: float) -> Dict[str, float]:
    if avg_equity <= 0:
        return {"turnover": 0.0, "turnover_annualized": 0.0}
    t = float(total_trade_value / avg_equity)
    ann = float(t / years) if years > 0 else 0.0
    return {"turnover": t, "turnover_annualized": ann}


def _parse_optional_int(x: Any) -> Optional[int]:
    try:
        if x is None:
            return None
        v = int(x)
        return v if v > 0 else None
    except Exception:
        return None


def _clamp01(x: float) -> float:
    try:
        return float(max(0.0, min(1.0, float(x))))
    except Exception:
        return 0.0


def _position_size_shares(
    equity: float,
    price: float,
    max_position_pct: float,
    max_risk_per_trade_pct: float,
    stop_loss_pct: Optional[float],
) -> int:
    """Compute position size given equity, price and risk constraints.

    - Max allocation cap: `max_position_pct` of equity.
    - Risk cap (if stop-loss is provided): loss at stop <= `max_risk_per_trade_pct` of equity.

    Returns shares (integer >= 0).
    """
    if equity <= 0 or price <= 0:
        return 0

    max_position_pct = _clamp01(max_position_pct)
    max_risk_per_trade_pct = _clamp01(max_risk_per_trade_pct)

    alloc_cap_value = equity * max_position_pct
    shares_by_alloc = int(alloc_cap_value // price)
    if shares_by_alloc <= 0:
        return 0

    if stop_loss_pct is None or stop_loss_pct <= 0:
        return shares_by_alloc

    risk_cap_value = equity * max_risk_per_trade_pct
    loss_per_share = price * float(stop_loss_pct)
    if loss_per_share <= 0:
        return shares_by_alloc

    shares_by_risk = int(risk_cap_value // loss_per_share)
    return max(0, min(shares_by_alloc, shares_by_risk))


def _get_vol_data(df_feat: pd.DataFrame, pos: int) -> Tuple[float, float]:
    """Get 20-day average volume and daily volatility (%) at position."""
    try:
        vol = float(df_feat["_avg_vol_20d"].iloc[pos])
        if not (np.isfinite(vol) and vol > 0):
            vol = float(df_feat["Volume"].iloc[pos])
    except Exception:
        vol = 0.0
    try:
        vol_pct = float(df_feat["vol_20d"].iloc[pos]) * 100.0
        vol_pct = vol_pct if np.isfinite(vol_pct) else 2.0
    except Exception:
        vol_pct = 2.0
    return vol, vol_pct


def _dynamic_trade_cost_frac(
    slippage_model: SlippageModel,
    close_px: float,
    shares: int,
    daily_volume: float,
    daily_vol_pct: float,
) -> float:
    """One-way trade cost as fraction of notional (commission + slippage).

    Uses Almgren-Chriss-like impact model from broker_base.SlippageModel.
    Returns e.g. 0.0025 for 25 bps total cost.
    """
    comm_frac = slippage_model.commission_rate * (1.0 + slippage_model.bsmv_rate)
    slip_bps = slippage_model.estimate_slippage_bps(daily_volume, shares, daily_vol_pct)
    return comm_frac + slip_bps / 10_000.0


def walk_forward_backtest(
    symbol: str,
    start_date: str,
    end_date: str,
    market_id: str = DEFAULT_MARKET_ID,
    days_ahead: int = 7,
    train_window: int = 504,
    model_type: str = "rf",
    use_technical_gate: bool = True,
    initial_capital: float = 100_000.0,
    commission_bps: float = 10.0,
    slippage_bps: float = 10.0,
    exit_rule: str = "signal",
    max_hold_days: Optional[int] = None,
    stop_loss_pct: Optional[float] = None,
    take_profit_pct: Optional[float] = None,
    trailing_stop_pct: Optional[float] = None,
    max_position_pct: float = 1.0,
    max_risk_per_trade_pct: float = 1.0,
) -> Tuple[pd.DataFrame, Dict[str, Any]]:
    sym = str(symbol).strip().upper()
    if not sym:
        raise ValueError("symbol is required")

    df = get_stock_data_for_api(sym, period="5y", interval="1d", market_id=market_id)
    if df is None or df.empty:
        raise RuntimeError(f"No data for {sym}")

    df = df.sort_index()
    df.index = pd.to_datetime(df.index).tz_localize(None)

    start_dt = _parse_date(start_date)
    end_dt = _parse_date(end_date)

    df = df[(df.index >= start_dt) & (df.index <= end_dt)].copy()
    if df.empty or len(df) < (train_window + days_ahead + 50):
        raise RuntimeError("Not enough data in selected range for walk-forward")

    df_feat = engineer_enhanced_features(df)
    df_feat = add_macro_features(df_feat)
    df_feat["target_return"] = (df_feat["Close"].shift(-days_ahead) / df_feat["Close"] - 1) * 100.0

    # Target clipping: cap extreme returns to prevent outlier-driven training
    _target_clip = 3.5 * float(np.sqrt(max(1, days_ahead)))  # ~9% for 7 days
    _extreme_mask = df_feat["target_return"].abs() > _target_clip
    df_feat.loc[_extreme_mask, "target_return"] = np.clip(
        df_feat.loc[_extreme_mask, "target_return"], -_target_clip, _target_clip,
    )

    # Corporate action filter: poison target_return around suspected artifact days
    # so the model never trains on contaminated bedelsiz/bedelli/temettu data.
    _ca_suspect = flag_corp_action_days(df)
    _ca_suspect = _ca_suspect.reindex(df_feat.index).fillna(False)
    _ca_expanded = _ca_suspect.copy()
    for _shift in range(-days_ahead, days_ahead + 1):
        _ca_expanded = _ca_expanded | _ca_suspect.shift(_shift).fillna(False).astype(bool)
    _n_poisoned = int(_ca_expanded.sum())
    if _n_poisoned > 0:
        df_feat.loc[_ca_expanded, "target_return"] = np.nan
        import logging as _log
        _log.getLogger("walk_forward").info(
            "%s: poisoned %d target rows around %d corp-action suspect days",
            sym, _n_poisoned, int(_ca_suspect.sum()),
        )

    # Compute ATR for dynamic stops and conviction-based sizing
    _hl = df_feat["High"] - df_feat["Low"]
    _hc = (df_feat["High"] - df_feat["Close"].shift(1)).abs()
    _lc = (df_feat["Low"] - df_feat["Close"].shift(1)).abs()
    df_feat["_atr_14"] = pd.concat([_hl, _hc, _lc], axis=1).max(axis=1).rolling(14).mean()

    # Average daily volume for realistic slippage estimation
    df_feat["_avg_vol_20d"] = df_feat["Volume"].rolling(20).mean().fillna(df_feat["Volume"])

    # Market regime filter: use cached XU100 index for regime detection
    _market_uptrend = pd.Series(True, index=df_feat.index)  # default: allow
    benchmark_df = _get_market_benchmark_data(market_id)
    if benchmark_df is not None:
        _xu100_close = benchmark_df["Close"].reindex(df_feat.index, method="ffill")
        _xu100_sma50 = _xu100_close.rolling(50).mean()
        _xu100_sma200 = _xu100_close.rolling(200).mean()
        # Market uptrend: price above SMA50, or SMA50 above SMA200
        _market_uptrend = (_xu100_close >= _xu100_sma50) | (_xu100_sma50 >= _xu100_sma200)
        _market_uptrend = _market_uptrend.fillna(True)

    # We will predict on each day in the evaluation segment.
    records: List[Dict[str, Any]] = []

    # Strategy state
    capital = float(initial_capital)
    shares = 0
    position = False
    entry_price: Optional[float] = None
    entry_date: Optional[str] = None
    days_in_position = 0
    max_close_since_entry: Optional[float] = None
    trades: List[Trade] = []
    total_trade_value = 0.0
    _rolling_accuracies: List[float] = []  # Track model quality over time
    _current_prob_up: float = 0.5          # For conviction-based sizing
    entry_atr: Optional[float] = None      # ATR at entry for dynamic stops

    # Dynamic cost model: Almgren-Chriss slippage + BSMV commission
    _slippage_model = SlippageModel(
        commission_rate=commission_bps / 10_000.0,
        bsmv_rate=0.05,
        min_slippage_bps=max(slippage_bps, 5.0),
        vol_slippage_coeff=0.3,
    )

    # Iterate over dates where we can build a lookahead-safe training set
    for pos_t in range(train_window, len(df_feat) - days_ahead):
        date_t = df_feat.index[pos_t]

        # Require finite feature row for prediction
        row_t = df_feat.iloc[pos_t]
        if not np.all(np.isfinite(row_t[FEATURES].to_numpy(dtype=float))):
            continue

        train_end = pos_t - days_ahead
        train_start = max(0, train_end - train_window + 1)

        train_slice = df_feat.iloc[train_start : train_end + 1]
        X_all = train_slice[FEATURES].to_numpy(dtype=float)
        y_all = train_slice["target_return"].to_numpy(dtype=float)

        finite_mask = np.isfinite(y_all) & np.all(np.isfinite(X_all), axis=1)
        X_all = X_all[finite_mask]
        y_all = y_all[finite_mask]

        if len(y_all) < 120:
            continue

        # Time-series split: last 20% for validation WITH purge gap
        split_idx = int(len(y_all) * 0.8)
        val_start = split_idx + days_ahead  # purge gap to prevent target leakage
        if split_idx < 60 or val_start >= len(y_all) or (len(y_all) - val_start) < 10:
            continue

        X_train, X_test = X_all[:split_idx], X_all[val_start:]
        y_train, y_test = y_all[:split_idx], y_all[val_start:]

        scaler = StandardScaler()
        X_train_s = scaler.fit_transform(np.nan_to_num(X_train, nan=0.0, posinf=0.0, neginf=0.0))
        X_test_s = scaler.transform(np.nan_to_num(X_test, nan=0.0, posinf=0.0, neginf=0.0))

        # --- Feature importance selection: train quick RF, keep top features ---
        _sel_rf = RandomForestRegressor(
            n_estimators=50, max_depth=4, min_samples_leaf=5,
            max_features='sqrt', random_state=42, n_jobs=-1,
        )
        _sel_rf.fit(X_train_s, y_train)
        importances = _sel_rf.feature_importances_
        n_keep = min(10, len(FEATURES))
        top_idx = np.argsort(importances)[-n_keep:]
        X_train_s = X_train_s[:, top_idx]
        X_test_s = X_test_s[:, top_idx]

        # --- Sample weighting: exponential recency (recent data 3x more important) ---
        n_train = len(X_train_s)
        sample_weights = np.exp(np.linspace(-1.0, 0.0, n_train))  # oldest=0.37, newest=1.0

        # --- Classification target: UP (return > 0) vs DOWN ---
        y_train_cls = (y_train > 0).astype(int)
        y_test_cls = (y_test > 0).astype(int)

        # --- Ensemble of classifiers ---
        clf_rf = RandomForestClassifier(
            n_estimators=200, max_depth=3, min_samples_split=10,
            min_samples_leaf=5, max_features='sqrt',
            random_state=42, n_jobs=-1, class_weight="balanced",
        )
        clf_gb = GradientBoostingClassifier(
            n_estimators=200, max_depth=3, learning_rate=0.03,
            subsample=0.8, min_samples_split=10,
            random_state=42,
        )
        clf_rf.fit(X_train_s, y_train_cls, sample_weight=sample_weights)
        clf_gb.fit(X_train_s, y_train_cls, sample_weight=sample_weights)

        # Ensemble probability: average of both classifiers
        prob_rf = clf_rf.predict_proba(X_test_s)[:, 1] if len(clf_rf.classes_) == 2 else np.full(len(X_test_s), 0.5)
        prob_gb = clf_gb.predict_proba(X_test_s)[:, 1] if len(clf_gb.classes_) == 2 else np.full(len(X_test_s), 0.5)
        prob_test = 0.5 * prob_rf + 0.5 * prob_gb
        y_pred_cls = (prob_test > 0.5).astype(int)

        direction_correct = float(accuracy_score(y_test_cls, y_pred_cls))

        # Track rolling model quality
        _rolling_accuracies.append(direction_correct)

        # Also train regression model for magnitude estimate
        reg_model: Any
        if str(model_type).lower() == "rf":
            reg_model = RandomForestRegressor(
                n_estimators=200, max_depth=3, min_samples_split=10,
                min_samples_leaf=5, max_features='sqrt',
                random_state=42, n_jobs=-1,
            )
        else:
            reg_model = GradientBoostingRegressor(
                n_estimators=200, max_depth=3, learning_rate=0.03,
                subsample=0.8, min_samples_split=10,
                random_state=42,
            )
        reg_model.fit(X_train_s, y_train, sample_weight=sample_weights)
        y_pred_reg = np.asarray(reg_model.predict(X_test_s), dtype=float)
        r2 = float(r2_score(y_test, y_pred_reg))
        mae = float(mean_absolute_error(y_test, y_pred_reg))

        confidence_pct = float(_compute_confidence(r2, direction_correct))

        # --- Rolling quality check: if last 5 windows averaged below 52%, force HOLD ---
        _rolling_avg_bad = (
            len(_rolling_accuracies) >= 5
            and float(np.mean(_rolling_accuracies[-5:])) < 0.52
        )

        # --- Skip low-quality windows: if val accuracy < 55% OR rolling avg bad ---
        if direction_correct < 0.55 or _rolling_avg_bad:
            # Still record the prediction but force HOLD
            X_pred_row = scaler.transform(np.nan_to_num(row_t[FEATURES].to_numpy(dtype=float).reshape(1, -1), nan=0.0, posinf=0.0, neginf=0.0))
            X_pred_sel = X_pred_row[:, top_idx]
            reg_pred = float(np.asarray(reg_model.predict(X_pred_sel), dtype=float).ravel()[0])
            reg_pred *= 0.30  # Base shrinkage: 70% toward zero
            predicted_change = float(_apply_shrinkage(reg_pred, confidence_pct, days_ahead))
            ml_signal = "HOLD"  # Model not confident enough
            _current_prob_up = 0.5
        else:
            X_pred_row = scaler.transform(np.nan_to_num(row_t[FEATURES].to_numpy(dtype=float).reshape(1, -1), nan=0.0, posinf=0.0, neginf=0.0))
            X_pred_sel = X_pred_row[:, top_idx]

            # Classification probability for direction
            p_rf = clf_rf.predict_proba(X_pred_sel)[:, 1][0] if len(clf_rf.classes_) == 2 else 0.5
            p_gb = clf_gb.predict_proba(X_pred_sel)[:, 1][0] if len(clf_gb.classes_) == 2 else 0.5
            prob_up = 0.5 * p_rf + 0.5 * p_gb
            _current_prob_up = prob_up

            # Regression for magnitude
            reg_pred = float(np.asarray(reg_model.predict(X_pred_sel), dtype=float).ravel()[0])
            reg_pred *= 0.30  # Base shrinkage: 70% toward zero
            predicted_change = float(_apply_shrinkage(reg_pred, confidence_pct, days_ahead))

            # Signal from classification probability — RAISED thresholds for higher conviction
            if prob_up >= 0.62:  # Strong UP conviction (was 0.58)
                ml_signal = "BUY"
            elif prob_up <= 0.38:  # Strong DOWN conviction (was 0.42)
                ml_signal = "SELL"
            else:
                ml_signal = "HOLD"

        tech_signal = "HOLD"
        required_ok = False
        gate_failed = False
        if use_technical_gate:
            # Use only recent history; scan-signals uses up to ~200 bars.
            try:
                hist = df.iloc[max(0, pos_t - 600) : pos_t + 1]
                scan = compute_scan_signals_for_df(sym, hist)
                tech_signal = _normalize_signal(scan.technical_signal)
                required_ok = bool((scan.gates or {}).get("required_ok"))
            except Exception:
                # Gate bypass protection: if scan fails, block BUY
                tech_signal = "HOLD"
                required_ok = False
                gate_failed = True

        final_signal = _combine_signals(ml_signal, tech_signal, required_ok) if use_technical_gate else ml_signal
        # Gate bypass protection: if gate computation failed, never allow BUY
        if gate_failed and final_signal == "BUY":
            final_signal = "HOLD"

        # Market regime filter: block BUY in persistent downtrend
        if final_signal == "BUY":
            try:
                _mkt_up = bool(_market_uptrend.iloc[pos_t])
            except Exception:
                _mkt_up = True
            if not _mkt_up:
                final_signal = "HOLD"

        close_px = float(df_feat["Close"].iloc[pos_t])

        # Determine exit conditions (all evaluated on close; simplified but explicit)
        exit_reason = ""

        if position and shares > 0:
            days_in_position += 1
            max_close_since_entry = close_px if max_close_since_entry is None else max(max_close_since_entry, close_px)

            sl = None
            tp = None
            tr = None

            # ATR-based dynamic stops: use entry_atr if available
            _atr_val = entry_atr if entry_atr is not None else 0.0
            _atr_sl_pct = (_atr_val * 2.0 / entry_price) if (entry_price and _atr_val > 0) else 0.0
            _atr_tp_pct = (_atr_val * 3.5 / entry_price) if (entry_price and _atr_val > 0) else 0.0
            _atr_tr_pct = (_atr_val * 2.5 / entry_price) if (entry_price and _atr_val > 0) else 0.0

            # Use ATR-based or fixed stops — whichever is tighter
            effective_sl = stop_loss_pct
            if _atr_sl_pct > 0 and (effective_sl is None or _atr_sl_pct < effective_sl):
                effective_sl = _atr_sl_pct
            effective_tp = take_profit_pct
            if _atr_tp_pct > 0:
                effective_tp = _atr_tp_pct if effective_tp is None else max(effective_tp, _atr_tp_pct)
            effective_tr = trailing_stop_pct
            if _atr_tr_pct > 0 and (effective_tr is None or effective_tr <= 0):
                effective_tr = _atr_tr_pct

            if entry_price is not None and effective_sl is not None and effective_sl > 0:
                sl = entry_price * (1.0 - float(effective_sl))
            if entry_price is not None and effective_tp is not None and effective_tp > 0:
                tp = entry_price * (1.0 + float(effective_tp))
            if effective_tr is not None and effective_tr > 0 and max_close_since_entry is not None:
                tr = max_close_since_entry * (1.0 - float(effective_tr))

            # Exit rule: signal / fixed / signal_or_fixed
            if str(exit_rule).lower() in {"fixed", "signal_or_fixed"}:
                hold_limit = _parse_optional_int(max_hold_days) or int(days_ahead)
                if days_in_position >= hold_limit:
                    exit_reason = "time_exit"

            if str(exit_rule).lower() in {"signal", "signal_or_fixed"} and not exit_reason:
                if final_signal == "SELL":
                    exit_reason = "signal_sell"

            # Stops override if hit
            if not exit_reason and sl is not None and close_px <= sl:
                exit_reason = "stop_loss"
            if not exit_reason and tp is not None and close_px >= tp:
                exit_reason = "take_profit"
            if not exit_reason and tr is not None and close_px <= tr:
                exit_reason = "trailing_stop"

        # Execute trades at close
        if (final_signal == "BUY") and (not position):
            equity_now = capital + (shares * close_px if shares > 0 else 0.0)

            # Dynamic cost: volume/volatility-dependent slippage
            _dv, _dvp = _get_vol_data(df_feat, pos_t)
            _est_shares = int(capital // close_px) if close_px > 0 else 0
            cost_in = _dynamic_trade_cost_frac(_slippage_model, close_px, _est_shares, _dv, _dvp)
            buy_px = close_px * (1.0 + cost_in)

            # Conviction-based position sizing: scale by model confidence
            conviction = max(0.0, (_current_prob_up - 0.5) * 2.0)  # 0..1 range
            adjusted_position_pct = max_position_pct * (0.3 + 0.7 * conviction)  # 30% base + 70% conviction

            new_shares = _position_size_shares(
                equity=equity_now,
                price=buy_px,
                max_position_pct=adjusted_position_pct,
                max_risk_per_trade_pct=max_risk_per_trade_pct,
                stop_loss_pct=stop_loss_pct,
            )
            # Don't exceed available free capital
            new_shares = int(min(new_shares, capital // buy_px))

            if new_shares > 0:
                trade_value = float(new_shares * buy_px)
                capital -= trade_value
                total_trade_value += trade_value
                shares = new_shares
                position = True
                entry_price = float(buy_px)
                entry_date = _to_iso(date_t)
                days_in_position = 0
                max_close_since_entry = close_px
                # Store ATR at entry for dynamic stops
                _raw_atr = df_feat["_atr_14"].iloc[pos_t]
                entry_atr = float(_raw_atr) if np.isfinite(_raw_atr) else None
                trades.append(
                    Trade(date=_to_iso(date_t), type="BUY", price=float(buy_px), shares=shares, capital=float(capital), reason="signal_buy")
                )

        if exit_reason and position and shares > 0:
            _dv, _dvp = _get_vol_data(df_feat, pos_t)
            cost_out = _dynamic_trade_cost_frac(_slippage_model, close_px, shares, _dv, _dvp)
            sell_px = close_px * (1.0 - cost_out)
            trade_value = float(shares * sell_px)
            capital += trade_value
            total_trade_value += trade_value
            trades.append(
                Trade(date=_to_iso(date_t), type="SELL", price=float(sell_px), shares=shares, capital=float(capital), reason=exit_reason)
            )
            shares = 0
            position = False
            entry_price = None
            entry_date = None
            days_in_position = 0
            max_close_since_entry = None
            entry_atr = None

        # Mark-to-market equity
        equity = capital + (shares * close_px if shares > 0 else 0.0)

        actual_change = float(df_feat["target_return"].iloc[pos_t]) if np.isfinite(df_feat["target_return"].iloc[pos_t]) else np.nan

        # Snapshot levels for audit
        sl_level = (entry_price * (1.0 - float(stop_loss_pct))) if (position and entry_price is not None and stop_loss_pct is not None and stop_loss_pct > 0) else np.nan
        tp_level = (entry_price * (1.0 + float(take_profit_pct))) if (position and entry_price is not None and take_profit_pct is not None and take_profit_pct > 0) else np.nan
        tr_level = (
            (max_close_since_entry * (1.0 - float(trailing_stop_pct)))
            if (position and max_close_since_entry is not None and trailing_stop_pct is not None and trailing_stop_pct > 0)
            else np.nan
        )

        records.append(
            {
                "date": _to_iso(date_t),
                "close": close_px,
                "predicted_change_pct": predicted_change,
                "actual_change_pct": actual_change,
                "confidence": confidence_pct,
                "r2": r2,
                "mae": mae,
                "ml_signal": ml_signal,
                "technical_signal": tech_signal,
                "required_ok": required_ok,
                "final_signal": final_signal,
                "position": int(position),
                "shares": int(shares),
                "entry_date": entry_date,
                "entry_price": float(entry_price) if entry_price is not None else np.nan,
                "days_in_position": int(days_in_position) if position else 0,
                "stop_loss_level": sl_level,
                "take_profit_level": tp_level,
                "trailing_stop_level": tr_level,
                "equity": float(equity),
            }
        )

    df_out = pd.DataFrame.from_records(records)
    if df_out.empty:
        raise RuntimeError("No walk-forward records produced (insufficient clean windows)")

    # Close any open position at the end
    if position and shares > 0:
        last_close = float(df_out["close"].iloc[-1])
        _dv_end, _dvp_end = _get_vol_data(df_feat, min(pos_t, len(df_feat) - 1))
        cost_out_end = _dynamic_trade_cost_frac(_slippage_model, last_close, shares, _dv_end, _dvp_end)
        capital += shares * last_close * (1.0 - cost_out_end)
        trade_value = float(shares * last_close * (1.0 - cost_out_end))
        total_trade_value += trade_value
        trades.append(
            Trade(
                date=str(df_out["date"].iloc[-1]),
                type="SELL",
                price=float(last_close),
                shares=shares,
                capital=float(capital),
                reason="end_of_period",
            )
        )
        shares = 0
        position = False
        df_out.loc[df_out.index[-1], "equity"] = float(capital)

    # Metrics
    valid_eval = df_out[np.isfinite(df_out["actual_change_pct"])].copy()
    _nz = (valid_eval["predicted_change_pct"] != 0) | (valid_eval["actual_change_pct"] != 0)
    dir_acc = float(np.mean(np.sign(valid_eval.loc[_nz, "predicted_change_pct"]) == np.sign(valid_eval.loc[_nz, "actual_change_pct"]))) if _nz.sum() > 0 else 0.5
    pred_mae = float(np.mean(np.abs(valid_eval["predicted_change_pct"] - valid_eval["actual_change_pct"])))

    equity_series = df_out["equity"].astype(float)
    daily_ret = equity_series.pct_change().dropna()

    start_iso = str(df_out["date"].iloc[0])
    end_iso = str(df_out["date"].iloc[-1])
    years = _years_between(start_iso, end_iso)
    avg_equity = float(equity_series.mean()) if len(equity_series) else float(initial_capital)
    turnover_metrics = _turnover(total_trade_value=total_trade_value, avg_equity=avg_equity, years=years)

    metrics: Dict[str, Any] = {
        "symbol": sym,
        "market_id": market_id,
        "days_ahead": int(days_ahead),
        "train_window": int(train_window),
        "model_type": str(model_type),
        "use_technical_gate": bool(use_technical_gate),
        "exit_rule": str(exit_rule),
        "max_hold_days": _parse_optional_int(max_hold_days),
        "stop_loss_pct": float(stop_loss_pct) if stop_loss_pct is not None else None,
        "take_profit_pct": float(take_profit_pct) if take_profit_pct is not None else None,
        "trailing_stop_pct": float(trailing_stop_pct) if trailing_stop_pct is not None else None,
        "max_position_pct": float(max_position_pct),
        "max_risk_per_trade_pct": float(max_risk_per_trade_pct),
        "cost_model": "dynamic_almgren_chriss",
        "records": int(len(df_out)),
        "direction_accuracy": dir_acc,
        "prediction_mae_pct": pred_mae,
        "final_capital": float(equity_series.iloc[-1]),
        "total_return_pct": float((equity_series.iloc[-1] / float(initial_capital) - 1.0) * 100.0),
        "cagr_pct": _cagr_pct(float(initial_capital), float(equity_series.iloc[-1]), years),
        "max_drawdown_pct": _max_drawdown(equity_series),
        "sharpe": _sharpe(daily_ret),
        "trades_count": int(len(trades)),
        "total_trade_value": float(total_trade_value),
        "avg_equity": float(avg_equity),
        **turnover_metrics,
    }

    # Win-rate (SELL higher than BUY price)
    wins = 0
    buy_prices: List[float] = []
    for t in trades:
        if t.type == "BUY":
            buy_prices.append(t.price)
        elif t.type == "SELL" and buy_prices:
            bp = buy_prices.pop(0)
            if t.price > bp:
                wins += 1
    hit_rate = float((wins / max(1, len([t for t in trades if t.type == "SELL"])) * 100.0))
    metrics["win_rate_pct"] = hit_rate
    metrics["hit_rate_pct"] = hit_rate

    metrics["trades"] = [t.__dict__ for t in trades]

    return df_out, metrics


def main() -> int:
    p = argparse.ArgumentParser()
    p.add_argument("--symbol", required=True)
    p.add_argument("--market", choices=["bist", "us"], default=DEFAULT_MARKET_ID)
    p.add_argument("--start", required=True, help="YYYY-MM-DD")
    p.add_argument("--end", required=True, help="YYYY-MM-DD")
    p.add_argument("--days-ahead", type=int, default=7)
    p.add_argument("--train-window", type=int, default=504)
    p.add_argument("--model", choices=["rf", "gbr"], default="rf")
    p.add_argument("--no-tech-gate", action="store_true")
    p.add_argument("--initial", type=float, default=100000.0)
    p.add_argument("--commission-bps", type=float, default=10.0)
    p.add_argument("--slippage-bps", type=float, default=10.0)
    p.add_argument("--exit-rule", choices=["signal", "fixed", "signal_or_fixed"], default="signal")
    p.add_argument("--max-hold-days", type=int, default=0, help="If >0, used by fixed exits; default uses days_ahead")
    p.add_argument("--stop-loss-pct", type=float, default=0.0, help="e.g. 0.05 for 5%%")
    p.add_argument("--take-profit-pct", type=float, default=0.0, help="e.g. 0.10 for 10%%")
    p.add_argument("--trailing-stop-pct", type=float, default=0.0, help="e.g. 0.07 for 7%%")
    p.add_argument("--max-position-pct", type=float, default=1.0, help="Max allocation fraction of equity, 0..1")
    p.add_argument("--max-risk-per-trade-pct", type=float, default=1.0, help="Max stop-loss risk fraction of equity, 0..1")
    p.add_argument("--out", default="walk_forward_out")

    args = p.parse_args()

    out_dir = Path(args.out)
    out_dir.mkdir(parents=True, exist_ok=True)

    df_out, metrics = walk_forward_backtest(
        symbol=args.symbol,
        start_date=args.start,
        end_date=args.end,
        market_id=args.market,
        days_ahead=args.days_ahead,
        train_window=args.train_window,
        model_type=args.model,
        use_technical_gate=not args.no_tech_gate,
        initial_capital=args.initial,
        commission_bps=args.commission_bps,
        slippage_bps=args.slippage_bps,
        exit_rule=args.exit_rule,
        max_hold_days=_parse_optional_int(args.max_hold_days),
        stop_loss_pct=(args.stop_loss_pct if args.stop_loss_pct and args.stop_loss_pct > 0 else None),
        take_profit_pct=(args.take_profit_pct if args.take_profit_pct and args.take_profit_pct > 0 else None),
        trailing_stop_pct=(args.trailing_stop_pct if args.trailing_stop_pct and args.trailing_stop_pct > 0 else None),
        max_position_pct=args.max_position_pct,
        max_risk_per_trade_pct=args.max_risk_per_trade_pct,
    )

    stamp = datetime.utcnow().strftime("%Y%m%d_%H%M%S")
    base = f"{args.symbol.upper()}_{args.days_ahead}d_{stamp}"

    df_path = out_dir / f"{base}_records.csv"
    df_out.to_csv(df_path, index=False)

    trades_path = out_dir / f"{base}_trades.csv"
    pd.DataFrame.from_records(metrics.get("trades") or []).to_csv(trades_path, index=False)

    # Print a concise summary
    print("=== Walk-forward ML backtest ===")
    for k in [
        "symbol",
        "days_ahead",
        "train_window",
        "model_type",
        "use_technical_gate",
        "exit_rule",
        "max_hold_days",
        "stop_loss_pct",
        "take_profit_pct",
        "trailing_stop_pct",
        "max_position_pct",
        "max_risk_per_trade_pct",
        "records",
        "direction_accuracy",
        "prediction_mae_pct",
        "total_return_pct",
        "cagr_pct",
        "max_drawdown_pct",
        "sharpe",
        "trades_count",
        "hit_rate_pct",
        "turnover",
        "turnover_annualized",
    ]:
        print(f"{k}: {metrics.get(k)}")

    print(f"records_csv: {df_path}")
    print(f"trades_csv: {trades_path}")

    return 0


if __name__ == "__main__":
    raise SystemExit(main())