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path: root/services/strategy-engine/strategies/rsi_strategy.py
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from collections import deque
from decimal import Decimal

import pandas as pd

from shared.models import Candle, Signal, OrderSide
from strategies.base import BaseStrategy


def _compute_rsi(series: pd.Series, period: int) -> float | None:
    """Compute RSI using Wilder's smoothing (EMA-based)."""
    if len(series) < period + 1:
        return None
    delta = series.diff()
    gain = delta.clip(lower=0)
    loss = -delta.clip(upper=0)
    avg_gain = gain.ewm(com=period - 1, min_periods=period).mean()
    avg_loss = loss.ewm(com=period - 1, min_periods=period).mean()
    rs = avg_gain / avg_loss.replace(0, float("nan"))
    rsi = 100 - (100 / (1 + rs))
    value = rsi.iloc[-1]
    if pd.isna(value):
        return None
    return float(value)


class RsiStrategy(BaseStrategy):
    name: str = "rsi"

    def __init__(self) -> None:
        super().__init__()
        self._closes: deque[float] = deque(maxlen=200)
        self._period: int = 14
        self._oversold: float = 30.0
        self._overbought: float = 70.0
        self._quantity: Decimal = Decimal("0.01")
        # Divergence detection state
        self._price_lows: deque[float] = deque(maxlen=5)
        self._price_highs: deque[float] = deque(maxlen=5)
        self._rsi_at_lows: deque[float] = deque(maxlen=5)
        self._rsi_at_highs: deque[float] = deque(maxlen=5)
        self._prev_close: float | None = None
        self._prev_prev_close: float | None = None
        self._prev_rsi: float | None = None

    @property
    def warmup_period(self) -> int:
        return self._period + 1

    def configure(self, params: dict) -> None:
        self._period = int(params.get("period", 14))
        self._oversold = float(params.get("oversold", 30))
        self._overbought = float(params.get("overbought", 70))
        self._quantity = Decimal(str(params.get("quantity", "0.01")))

        if self._period < 2:
            raise ValueError(f"RSI period must be >= 2, got {self._period}")
        if not (0 < self._oversold < self._overbought < 100):
            raise ValueError(
                f"RSI thresholds must be 0 < oversold < overbought < 100, "
                f"got oversold={self._oversold}, overbought={self._overbought}"
            )
        if self._quantity <= 0:
            raise ValueError(f"Quantity must be positive, got {self._quantity}")

        self._init_filters(
            require_trend=False,
            adx_threshold=float(params.get("adx_threshold", 25.0)),
            min_volume_ratio=float(params.get("min_volume_ratio", 0.5)),
            atr_stop_multiplier=float(params.get("atr_stop_multiplier", 2.0)),
            atr_tp_multiplier=float(params.get("atr_tp_multiplier", 3.0)),
        )

    def reset(self) -> None:
        self._closes.clear()
        self._price_lows.clear()
        self._price_highs.clear()
        self._rsi_at_lows.clear()
        self._rsi_at_highs.clear()
        self._prev_close = None
        self._prev_prev_close = None
        self._prev_rsi = None

    def _rsi_conviction(self, rsi_value: float) -> float:
        """Map RSI value to conviction strength (0.0-1.0).

        For BUY (oversold): lower RSI = higher conviction.
        For SELL (overbought): higher RSI = higher conviction.
        Linear scale from the threshold to the extreme (0 or 100).
        """
        if rsi_value < self._oversold:
            # RSI 0 -> 1.0, RSI at oversold threshold -> 0.0
            return min(1.0, max(0.1, (self._oversold - rsi_value) / self._oversold))
        elif rsi_value > self._overbought:
            # RSI 100 -> 1.0, RSI at overbought threshold -> 0.0
            return min(1.0, max(0.1, (rsi_value - self._overbought) / (100.0 - self._overbought)))
        return 0.0

    def on_candle(self, candle: Candle) -> Signal | None:
        self._update_filter_data(candle)
        self._closes.append(float(candle.close))

        if len(self._closes) < self._period + 1:
            self._prev_prev_close = self._prev_close
            self._prev_close = float(candle.close)
            return None

        series = pd.Series(list(self._closes))
        rsi_value = _compute_rsi(series, self._period)

        if rsi_value is None:
            self._prev_prev_close = self._prev_close
            self._prev_close = float(candle.close)
            return None

        close = float(candle.close)

        # Detect swing points for divergence
        if self._prev_close is not None and self._prev_prev_close is not None:
            # Swing low: prev_close < both neighbors
            if self._prev_close < self._prev_prev_close and self._prev_close < close:
                self._price_lows.append(self._prev_close)
                self._rsi_at_lows.append(
                    self._prev_rsi if self._prev_rsi is not None else rsi_value
                )
            # Swing high: prev_close > both neighbors
            if self._prev_close > self._prev_prev_close and self._prev_close > close:
                self._price_highs.append(self._prev_close)
                self._rsi_at_highs.append(
                    self._prev_rsi if self._prev_rsi is not None else rsi_value
                )

        # Check bullish divergence: price lower low, RSI higher low
        if len(self._price_lows) >= 2:
            if (
                self._price_lows[-1] < self._price_lows[-2]
                and self._rsi_at_lows[-1] > self._rsi_at_lows[-2]
            ):
                signal = Signal(
                    strategy=self.name,
                    symbol=candle.symbol,
                    side=OrderSide.BUY,
                    price=candle.close,
                    quantity=self._quantity,
                    conviction=0.9,
                    reason="RSI bullish divergence",
                )
                self._prev_rsi = rsi_value
                self._prev_prev_close = self._prev_close
                self._prev_close = close
                return self._apply_filters(signal)

        # Check bearish divergence: price higher high, RSI lower high
        if len(self._price_highs) >= 2:
            if (
                self._price_highs[-1] > self._price_highs[-2]
                and self._rsi_at_highs[-1] < self._rsi_at_highs[-2]
            ):
                signal = Signal(
                    strategy=self.name,
                    symbol=candle.symbol,
                    side=OrderSide.SELL,
                    price=candle.close,
                    quantity=self._quantity,
                    conviction=0.9,
                    reason="RSI bearish divergence",
                )
                self._prev_rsi = rsi_value
                self._prev_prev_close = self._prev_close
                self._prev_close = close
                return self._apply_filters(signal)

        # Existing oversold/overbought logic (secondary signals)
        if rsi_value < self._oversold:
            signal = Signal(
                strategy=self.name,
                symbol=candle.symbol,
                side=OrderSide.BUY,
                price=candle.close,
                quantity=self._quantity,
                conviction=self._rsi_conviction(rsi_value),
                reason=f"RSI {rsi_value:.2f} below oversold threshold {self._oversold}",
            )
            self._prev_rsi = rsi_value
            self._prev_prev_close = self._prev_close
            self._prev_close = close
            return self._apply_filters(signal)
        elif rsi_value > self._overbought:
            signal = Signal(
                strategy=self.name,
                symbol=candle.symbol,
                side=OrderSide.SELL,
                price=candle.close,
                quantity=self._quantity,
                conviction=self._rsi_conviction(rsi_value),
                reason=f"RSI {rsi_value:.2f} above overbought threshold {self._overbought}",
            )
            self._prev_rsi = rsi_value
            self._prev_prev_close = self._prev_close
            self._prev_close = close
            return self._apply_filters(signal)

        self._prev_rsi = rsi_value
        self._prev_prev_close = self._prev_close
        self._prev_close = close
        return None