Merge pull request 'fix: 진화 전략 파일 3개 IndentationError 수정 (#215)' (#224) from feature/issue-215-evolved-strategy-syntax into main
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Reviewed-on: #224
This commit was merged in pull request #224.
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2026-02-23 14:59:51 +09:00
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"""Auto-generated strategy: v20260220_210124
Generated at: 2026-02-20T21:01:24.706847+00:00
Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
"""
from __future__ import annotations
from typing import Any
from src.strategies.base import BaseStrategy
class Strategy_v20260220_210124(BaseStrategy):
"""Strategy: v20260220_210124"""
def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
import datetime
# --- Strategy Constants ---
# Minimum price for a stock to be considered for trading (avoids penny stocks)
MIN_PRICE = 5.0
# Momentum signal thresholds (stricter than previous failures)
MOMENTUM_PRICE_CHANGE_THRESHOLD = 7.0 # % price change
MOMENTUM_VOLUME_RATIO_THRESHOLD = 4.0 # X times average volume
# Oversold signal thresholds (more conservative)
OVERSOLD_RSI_THRESHOLD = 25.0 # RSI value (lower means more oversold)
# Confidence levels
CONFIDENCE_HOLD = 30
CONFIDENCE_BUY_OVERSOLD = 65
CONFIDENCE_BUY_MOMENTUM = 85
CONFIDENCE_BUY_STRONG_MOMENTUM = 90 # For higher-priced stocks with strong momentum
# Market hours in UTC (9:30 AM ET to 4:00 PM ET)
MARKET_OPEN_UTC = datetime.time(14, 30)
MARKET_CLOSE_UTC = datetime.time(21, 0)
# Volatile periods within market hours (UTC) to avoid
# First hour after open (14:30 UTC - 15:30 UTC)
VOLATILE_OPEN_END_UTC = datetime.time(15, 30)
# Last 30 minutes before close (20:30 UTC - 21:00 UTC)
VOLATILE_CLOSE_START_UTC = datetime.time(20, 30)
current_price = market_data.get('current_price')
price_change_pct = market_data.get('price_change_pct')
volume_ratio = market_data.get('volume_ratio') # Assumed pre-computed indicator
rsi = market_data.get('rsi') # Assumed pre-computed indicator
timestamp_str = market_data.get('timestamp')
action = "HOLD"
confidence = CONFIDENCE_HOLD
rationale = "Initial HOLD: No clear signal or conditions not met."
# --- 1. Basic Data Validation ---
if current_price is None or price_change_pct is None:
return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
"rationale": "Insufficient core data (price or price change) to evaluate."}
# --- 2. Price Filter: Avoid low-priced/penny stocks ---
if current_price < MIN_PRICE:
return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
"rationale": f"Avoiding low-priced stock (${current_price:.2f} < ${MIN_PRICE:.2f})."}
# --- 3. Time Filter: Only trade during core market hours ---
if timestamp_str:
try:
dt_object = datetime.datetime.fromisoformat(timestamp_str)
current_time_utc = dt_object.time()
if not (MARKET_OPEN_UTC <= current_time_utc < MARKET_CLOSE_UTC):
return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
"rationale": f"Avoiding trade outside core market hours ({current_time_utc} UTC)."}
if (MARKET_OPEN_UTC <= current_time_utc < VOLATILE_OPEN_END_UTC) or \
(VOLATILE_CLOSE_START_UTC <= current_time_utc < MARKET_CLOSE_UTC):
return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
"rationale": f"Avoiding trade during volatile market open/close periods ({current_time_utc} UTC)."}
except ValueError:
rationale += " (Warning: Malformed timestamp, time filters skipped)"
# --- Initialize signal states ---
has_momentum_buy_signal = False
has_oversold_buy_signal = False
# --- 4. Evaluate Enhanced Buy Signals ---
# Momentum Buy Signal
if volume_ratio is not None and \
price_change_pct > MOMENTUM_PRICE_CHANGE_THRESHOLD and \
volume_ratio > MOMENTUM_VOLUME_RATIO_THRESHOLD:
has_momentum_buy_signal = True
rationale = f"Momentum BUY: Price change {price_change_pct:.2f}%, Volume {volume_ratio:.2f}x."
confidence = CONFIDENCE_BUY_MOMENTUM
if current_price >= 10.0:
confidence = CONFIDENCE_BUY_STRONG_MOMENTUM
# Oversold Buy Signal
if rsi is not None and rsi < OVERSOLD_RSI_THRESHOLD:
has_oversold_buy_signal = True
if not has_momentum_buy_signal:
rationale = f"Oversold BUY: RSI {rsi:.2f}."
confidence = CONFIDENCE_BUY_OVERSOLD
if current_price >= 10.0:
confidence = min(CONFIDENCE_BUY_OVERSOLD + 5, 80)
# --- 5. Decision Logic ---
if has_momentum_buy_signal:
action = "BUY"
elif has_oversold_buy_signal:
action = "BUY"
return {"action": action, "confidence": confidence, "rationale": rationale}

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"""Auto-generated strategy: v20260220_210159
Generated at: 2026-02-20T21:01:59.391523+00:00
Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
"""
from __future__ import annotations
from typing import Any
from src.strategies.base import BaseStrategy
class Strategy_v20260220_210159(BaseStrategy):
"""Strategy: v20260220_210159"""
def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
import datetime
current_price = market_data.get('current_price')
price_change_pct = market_data.get('price_change_pct')
volume_ratio = market_data.get('volume_ratio')
rsi = market_data.get('rsi')
timestamp_str = market_data.get('timestamp')
market_name = market_data.get('market')
# Default action
action = "HOLD"
confidence = 0
rationale = "No strong signal or conditions not met."
# --- FAILURE PATTERN AVOIDANCE ---
# 1. Avoid low-priced/penny stocks
MIN_PRICE_THRESHOLD = 5.0 # USD
if current_price is not None and current_price < MIN_PRICE_THRESHOLD:
rationale = (
f"HOLD: Stock price (${current_price:.2f}) is below minimum threshold "
f"(${MIN_PRICE_THRESHOLD:.2f}). Past failures consistently involved low-priced stocks."
)
return {"action": action, "confidence": confidence, "rationale": rationale}
# 2. Avoid early market hour volatility
if timestamp_str:
try:
dt_obj = datetime.datetime.fromisoformat(timestamp_str)
utc_hour = dt_obj.hour
utc_minute = dt_obj.minute
if (utc_hour == 14 and utc_minute < 45) or (utc_hour == 13 and utc_minute >= 30):
rationale = (
f"HOLD: Trading during early market hours (UTC {utc_hour}:{utc_minute}), "
f"a period identified with past failures due to high volatility."
)
return {"action": action, "confidence": confidence, "rationale": rationale}
except ValueError:
pass
# --- IMPROVED BUY STRATEGY ---
# Momentum BUY signal
if volume_ratio is not None and price_change_pct is not None:
if price_change_pct > 7.0 and volume_ratio > 3.0:
action = "BUY"
confidence = 70
rationale = "Improved BUY: Momentum signal with high volume and above price threshold."
if market_name == 'US_AMEX':
confidence = max(55, confidence - 5)
rationale += " (Adjusted lower for AMEX market's higher risk profile)."
elif market_name == 'US_NASDAQ' and price_change_pct > 20:
confidence = max(50, confidence - 10)
rationale += " (Adjusted lower for aggressive NASDAQ momentum volatility)."
if price_change_pct > 15.0:
confidence = max(50, confidence - 5)
rationale += " (Caution: Very high daily price change, potential for reversal)."
return {"action": action, "confidence": confidence, "rationale": rationale}
# Oversold BUY signal
if rsi is not None and price_change_pct is not None:
if rsi < 30 and price_change_pct < -3.0:
action = "BUY"
confidence = 65
rationale = "Improved BUY: Oversold signal with recent decline and above price threshold."
if market_name == 'US_AMEX':
confidence = max(50, confidence - 5)
rationale += " (Adjusted lower for AMEX market's higher risk on oversold assets)."
if price_change_pct < -10.0:
confidence = max(45, confidence - 10)
rationale += " (Caution: Very steep decline, potential falling knife)."
return {"action": action, "confidence": confidence, "rationale": rationale}
# If no specific BUY signal, default to HOLD
return {"action": action, "confidence": confidence, "rationale": rationale}

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"""Auto-generated strategy: v20260220_210244
Generated at: 2026-02-20T21:02:44.387355+00:00
Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
"""
from __future__ import annotations
from typing import Any
from src.strategies.base import BaseStrategy
class Strategy_v20260220_210244(BaseStrategy):
"""Strategy: v20260220_210244"""
def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
from datetime import datetime
# Extract required data points safely
current_price = market_data.get("current_price")
price_change_pct = market_data.get("price_change_pct")
volume_ratio = market_data.get("volume_ratio")
rsi = market_data.get("rsi")
timestamp_str = market_data.get("timestamp")
market_name = market_data.get("market")
stock_code = market_data.get("stock_code", "UNKNOWN")
# Default action is HOLD with conservative confidence and rationale
action = "HOLD"
confidence = 50
rationale = f"No strong BUY signal for {stock_code} or awaiting more favorable conditions after avoiding known failure patterns."
# --- 1. Failure Pattern Avoidance Filters ---
# A. Avoid low-priced (penny) stocks
if current_price is not None and current_price < 5.0:
return {
"action": "HOLD",
"confidence": 50,
"rationale": f"AVOID {stock_code}: Stock price (${current_price:.2f}) is below minimum threshold ($5.00) for BUY action. Identified past failures on highly volatile, low-priced stocks."
}
# B. Avoid initiating BUY trades during identified high-volatility hours
if timestamp_str:
try:
trade_hour = datetime.fromisoformat(timestamp_str).hour
if trade_hour in [14, 20]:
return {
"action": "HOLD",
"confidence": 50,
"rationale": f"AVOID {stock_code}: Trading during historically volatile hour ({trade_hour} UTC) where previous BUYs resulted in losses. Prefer to observe market stability."
}
except ValueError:
pass
# C. Be cautious with extreme momentum spikes
if volume_ratio is not None and price_change_pct is not None:
if volume_ratio >= 9.0 and price_change_pct >= 15.0:
return {
"action": "HOLD",
"confidence": 50,
"rationale": f"AVOID {stock_code}: Extreme short-term momentum detected (price change: +{price_change_pct:.2f}%, volume ratio: {volume_ratio:.1f}x). Historical failures indicate buying into such rapid spikes often leads to reversals."
}
# D. Be cautious with "oversold" signals without further confirmation
if rsi is not None and rsi < 30:
return {
"action": "HOLD",
"confidence": 50,
"rationale": f"AVOID {stock_code}: Oversold signal (RSI={rsi:.1f}) detected. While often a BUY signal, historical failures on similar 'oversold' trades suggest waiting for stronger confirmation."
}
# --- 2. Improved BUY Signal Generation ---
if volume_ratio is not None and 2.0 <= volume_ratio < 9.0 and \
price_change_pct is not None and 2.0 <= price_change_pct < 15.0:
action = "BUY"
confidence = 70
rationale = f"BUY {stock_code}: Moderate momentum detected (price change: +{price_change_pct:.2f}%, volume ratio: {volume_ratio:.1f}x). Passed filters for price and extreme momentum, avoiding past failure patterns."
if market_name in ["US_AMEX", "US_NASDAQ"]:
confidence = max(60, confidence - 5)
rationale += f" Adjusted confidence for {market_name} market characteristics."
elif market_name == "US_NYSE":
confidence = max(65, confidence)
confidence = max(50, min(85, confidence))
return {"action": action, "confidence": confidence, "rationale": rationale}