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02a72e0f7e
...
feature/is
| Author | SHA1 | Date | |
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0727f28f77 | ||
| 641f3e8811 | |||
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ebd0a0297c | ||
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48b87a79f6 | ||
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ad79082dcc | ||
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11dff9d3e5 |
@@ -170,7 +170,7 @@ Markets auto-detected based on timezone and enabled in `ENABLED_MARKETS` env var
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- `src/core/risk_manager.py` is **READ-ONLY** — changes require human approval
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- Circuit breaker at -3.0% P&L — may only be made **stricter**
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- Fat-finger protection: max 30% of cash per order — always enforced
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- Confidence < 80 → force HOLD — cannot be weakened
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- Confidence 임계값 (market_outlook별, 낮출 수 없음): BEARISH ≥ 90, NEUTRAL/기본 ≥ 80, BULLISH ≥ 75
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- All code changes → corresponding tests → coverage ≥ 80%
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## Contributing
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16
src/db.py
16
src/db.py
@@ -33,12 +33,13 @@ def init_db(db_path: str) -> sqlite3.Connection:
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pnl REAL DEFAULT 0.0,
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market TEXT DEFAULT 'KR',
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exchange_code TEXT DEFAULT 'KRX',
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decision_id TEXT
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decision_id TEXT,
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mode TEXT DEFAULT 'paper'
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)
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"""
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)
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# Migration: Add market and exchange_code columns if they don't exist
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# Migration: Add columns if they don't exist (backward-compatible schema upgrades)
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cursor = conn.execute("PRAGMA table_info(trades)")
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columns = {row[1] for row in cursor.fetchall()}
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@@ -50,6 +51,8 @@ def init_db(db_path: str) -> sqlite3.Connection:
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conn.execute("ALTER TABLE trades ADD COLUMN selection_context TEXT")
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if "decision_id" not in columns:
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conn.execute("ALTER TABLE trades ADD COLUMN decision_id TEXT")
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if "mode" not in columns:
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conn.execute("ALTER TABLE trades ADD COLUMN mode TEXT DEFAULT 'paper'")
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# Context tree tables for multi-layered memory management
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conn.execute(
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@@ -172,6 +175,7 @@ def log_trade(
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exchange_code: str = "KRX",
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selection_context: dict[str, any] | None = None,
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decision_id: str | None = None,
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mode: str = "paper",
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) -> None:
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"""Insert a trade record into the database.
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@@ -187,6 +191,8 @@ def log_trade(
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market: Market code
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exchange_code: Exchange code
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selection_context: Scanner selection data (RSI, volume_ratio, signal, score)
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decision_id: Unique decision identifier for audit linking
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mode: Trading mode ('paper' or 'live') for data separation
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"""
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# Serialize selection context to JSON
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context_json = json.dumps(selection_context) if selection_context else None
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@@ -195,9 +201,10 @@ def log_trade(
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"""
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INSERT INTO trades (
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timestamp, stock_code, action, confidence, rationale,
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quantity, price, pnl, market, exchange_code, selection_context, decision_id
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quantity, price, pnl, market, exchange_code, selection_context, decision_id,
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mode
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)
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VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?)
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VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?)
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""",
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(
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datetime.now(UTC).isoformat(),
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@@ -212,6 +219,7 @@ def log_trade(
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exchange_code,
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context_json,
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decision_id,
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mode,
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),
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)
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conn.commit()
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@@ -828,6 +828,7 @@ async def trading_cycle(
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exchange_code=market.exchange_code,
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selection_context=selection_context,
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decision_id=decision_id,
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mode=settings.MODE if settings else "paper",
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)
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# 7. Latency monitoring
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@@ -1325,6 +1326,7 @@ async def run_daily_session(
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market=market.code,
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exchange_code=market.exchange_code,
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decision_id=decision_id,
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mode=settings.MODE,
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)
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logger.info("Daily trading session completed")
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114
src/strategies/v20260220_210124_evolved.py
Normal file
114
src/strategies/v20260220_210124_evolved.py
Normal file
@@ -0,0 +1,114 @@
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"""Auto-generated strategy: v20260220_210124
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Generated at: 2026-02-20T21:01:24.706847+00:00
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Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
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"""
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from __future__ import annotations
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from typing import Any
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from src.strategies.base import BaseStrategy
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class Strategy_v20260220_210124(BaseStrategy):
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"""Strategy: v20260220_210124"""
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def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
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import datetime
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# --- Strategy Constants ---
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# Minimum price for a stock to be considered for trading (avoids penny stocks)
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MIN_PRICE = 5.0
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# Momentum signal thresholds (stricter than previous failures)
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MOMENTUM_PRICE_CHANGE_THRESHOLD = 7.0 # % price change
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MOMENTUM_VOLUME_RATIO_THRESHOLD = 4.0 # X times average volume
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# Oversold signal thresholds (more conservative)
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OVERSOLD_RSI_THRESHOLD = 25.0 # RSI value (lower means more oversold)
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# Confidence levels
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CONFIDENCE_HOLD = 30
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CONFIDENCE_BUY_OVERSOLD = 65
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CONFIDENCE_BUY_MOMENTUM = 85
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CONFIDENCE_BUY_STRONG_MOMENTUM = 90 # For higher-priced stocks with strong momentum
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# Market hours in UTC (9:30 AM ET to 4:00 PM ET)
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MARKET_OPEN_UTC = datetime.time(14, 30)
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MARKET_CLOSE_UTC = datetime.time(21, 0)
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# Volatile periods within market hours (UTC) to avoid
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# First hour after open (14:30 UTC - 15:30 UTC)
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VOLATILE_OPEN_END_UTC = datetime.time(15, 30)
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# Last 30 minutes before close (20:30 UTC - 21:00 UTC)
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VOLATILE_CLOSE_START_UTC = datetime.time(20, 30)
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current_price = market_data.get('current_price')
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price_change_pct = market_data.get('price_change_pct')
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volume_ratio = market_data.get('volume_ratio') # Assumed pre-computed indicator
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rsi = market_data.get('rsi') # Assumed pre-computed indicator
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timestamp_str = market_data.get('timestamp')
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action = "HOLD"
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confidence = CONFIDENCE_HOLD
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rationale = "Initial HOLD: No clear signal or conditions not met."
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# --- 1. Basic Data Validation ---
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if current_price is None or price_change_pct is None:
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return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
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"rationale": "Insufficient core data (price or price change) to evaluate."}
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# --- 2. Price Filter: Avoid low-priced/penny stocks ---
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if current_price < MIN_PRICE:
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return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
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"rationale": f"Avoiding low-priced stock (${current_price:.2f} < ${MIN_PRICE:.2f})."}
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# --- 3. Time Filter: Only trade during core market hours ---
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if timestamp_str:
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try:
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dt_object = datetime.datetime.fromisoformat(timestamp_str)
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current_time_utc = dt_object.time()
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if not (MARKET_OPEN_UTC <= current_time_utc < MARKET_CLOSE_UTC):
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return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
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"rationale": f"Avoiding trade outside core market hours ({current_time_utc} UTC)."}
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if (MARKET_OPEN_UTC <= current_time_utc < VOLATILE_OPEN_END_UTC) or \
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(VOLATILE_CLOSE_START_UTC <= current_time_utc < MARKET_CLOSE_UTC):
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return {"action": "HOLD", "confidence": CONFIDENCE_HOLD,
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"rationale": f"Avoiding trade during volatile market open/close periods ({current_time_utc} UTC)."}
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except ValueError:
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rationale += " (Warning: Malformed timestamp, time filters skipped)"
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# --- Initialize signal states ---
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has_momentum_buy_signal = False
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has_oversold_buy_signal = False
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# --- 4. Evaluate Enhanced Buy Signals ---
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# Momentum Buy Signal
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if volume_ratio is not None and \
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price_change_pct > MOMENTUM_PRICE_CHANGE_THRESHOLD and \
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volume_ratio > MOMENTUM_VOLUME_RATIO_THRESHOLD:
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has_momentum_buy_signal = True
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rationale = f"Momentum BUY: Price change {price_change_pct:.2f}%, Volume {volume_ratio:.2f}x."
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confidence = CONFIDENCE_BUY_MOMENTUM
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if current_price >= 10.0:
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confidence = CONFIDENCE_BUY_STRONG_MOMENTUM
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# Oversold Buy Signal
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if rsi is not None and rsi < OVERSOLD_RSI_THRESHOLD:
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has_oversold_buy_signal = True
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if not has_momentum_buy_signal:
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rationale = f"Oversold BUY: RSI {rsi:.2f}."
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confidence = CONFIDENCE_BUY_OVERSOLD
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if current_price >= 10.0:
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confidence = min(CONFIDENCE_BUY_OVERSOLD + 5, 80)
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# --- 5. Decision Logic ---
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if has_momentum_buy_signal:
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action = "BUY"
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elif has_oversold_buy_signal:
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action = "BUY"
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return {"action": action, "confidence": confidence, "rationale": rationale}
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97
src/strategies/v20260220_210159_evolved.py
Normal file
97
src/strategies/v20260220_210159_evolved.py
Normal file
@@ -0,0 +1,97 @@
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"""Auto-generated strategy: v20260220_210159
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Generated at: 2026-02-20T21:01:59.391523+00:00
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Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
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"""
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from __future__ import annotations
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from typing import Any
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from src.strategies.base import BaseStrategy
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class Strategy_v20260220_210159(BaseStrategy):
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"""Strategy: v20260220_210159"""
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def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
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import datetime
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current_price = market_data.get('current_price')
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price_change_pct = market_data.get('price_change_pct')
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volume_ratio = market_data.get('volume_ratio')
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rsi = market_data.get('rsi')
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timestamp_str = market_data.get('timestamp')
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market_name = market_data.get('market')
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# Default action
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action = "HOLD"
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confidence = 0
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rationale = "No strong signal or conditions not met."
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# --- FAILURE PATTERN AVOIDANCE ---
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# 1. Avoid low-priced/penny stocks
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MIN_PRICE_THRESHOLD = 5.0 # USD
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if current_price is not None and current_price < MIN_PRICE_THRESHOLD:
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rationale = (
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f"HOLD: Stock price (${current_price:.2f}) is below minimum threshold "
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f"(${MIN_PRICE_THRESHOLD:.2f}). Past failures consistently involved low-priced stocks."
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)
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return {"action": action, "confidence": confidence, "rationale": rationale}
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# 2. Avoid early market hour volatility
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if timestamp_str:
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try:
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dt_obj = datetime.datetime.fromisoformat(timestamp_str)
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utc_hour = dt_obj.hour
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utc_minute = dt_obj.minute
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if (utc_hour == 14 and utc_minute < 45) or (utc_hour == 13 and utc_minute >= 30):
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rationale = (
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f"HOLD: Trading during early market hours (UTC {utc_hour}:{utc_minute}), "
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f"a period identified with past failures due to high volatility."
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)
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return {"action": action, "confidence": confidence, "rationale": rationale}
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except ValueError:
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pass
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# --- IMPROVED BUY STRATEGY ---
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# Momentum BUY signal
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if volume_ratio is not None and price_change_pct is not None:
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if price_change_pct > 7.0 and volume_ratio > 3.0:
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action = "BUY"
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confidence = 70
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rationale = "Improved BUY: Momentum signal with high volume and above price threshold."
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if market_name == 'US_AMEX':
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confidence = max(55, confidence - 5)
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rationale += " (Adjusted lower for AMEX market's higher risk profile)."
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elif market_name == 'US_NASDAQ' and price_change_pct > 20:
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confidence = max(50, confidence - 10)
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rationale += " (Adjusted lower for aggressive NASDAQ momentum volatility)."
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if price_change_pct > 15.0:
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confidence = max(50, confidence - 5)
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rationale += " (Caution: Very high daily price change, potential for reversal)."
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return {"action": action, "confidence": confidence, "rationale": rationale}
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# Oversold BUY signal
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if rsi is not None and price_change_pct is not None:
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if rsi < 30 and price_change_pct < -3.0:
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action = "BUY"
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confidence = 65
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rationale = "Improved BUY: Oversold signal with recent decline and above price threshold."
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if market_name == 'US_AMEX':
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confidence = max(50, confidence - 5)
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rationale += " (Adjusted lower for AMEX market's higher risk on oversold assets)."
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if price_change_pct < -10.0:
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confidence = max(45, confidence - 10)
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rationale += " (Caution: Very steep decline, potential falling knife)."
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return {"action": action, "confidence": confidence, "rationale": rationale}
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# If no specific BUY signal, default to HOLD
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return {"action": action, "confidence": confidence, "rationale": rationale}
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88
src/strategies/v20260220_210244_evolved.py
Normal file
88
src/strategies/v20260220_210244_evolved.py
Normal file
@@ -0,0 +1,88 @@
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"""Auto-generated strategy: v20260220_210244
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Generated at: 2026-02-20T21:02:44.387355+00:00
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Rationale: Auto-evolved from 6 failures. Primary failure markets: ['US_AMEX', 'US_NYSE', 'US_NASDAQ']. Average loss: -194.69
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"""
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from __future__ import annotations
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||||
from typing import Any
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from src.strategies.base import BaseStrategy
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class Strategy_v20260220_210244(BaseStrategy):
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"""Strategy: v20260220_210244"""
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def evaluate(self, market_data: dict[str, Any]) -> dict[str, Any]:
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from datetime import datetime
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# Extract required data points safely
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current_price = market_data.get("current_price")
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price_change_pct = market_data.get("price_change_pct")
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volume_ratio = market_data.get("volume_ratio")
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rsi = market_data.get("rsi")
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timestamp_str = market_data.get("timestamp")
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market_name = market_data.get("market")
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stock_code = market_data.get("stock_code", "UNKNOWN")
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# Default action is HOLD with conservative confidence and rationale
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action = "HOLD"
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confidence = 50
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rationale = f"No strong BUY signal for {stock_code} or awaiting more favorable conditions after avoiding known failure patterns."
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# --- 1. Failure Pattern Avoidance Filters ---
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# A. Avoid low-priced (penny) stocks
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if current_price is not None and current_price < 5.0:
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return {
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"action": "HOLD",
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"confidence": 50,
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"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."
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}
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# B. Avoid initiating BUY trades during identified high-volatility hours
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if timestamp_str:
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try:
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trade_hour = datetime.fromisoformat(timestamp_str).hour
|
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if trade_hour in [14, 20]:
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return {
|
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"action": "HOLD",
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"confidence": 50,
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||||
"rationale": f"AVOID {stock_code}: Trading during historically volatile hour ({trade_hour} UTC) where previous BUYs resulted in losses. Prefer to observe market stability."
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||||
}
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||||
except ValueError:
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pass
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||||
# C. Be cautious with extreme momentum spikes
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||||
if volume_ratio is not None and price_change_pct is not None:
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if volume_ratio >= 9.0 and price_change_pct >= 15.0:
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return {
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"action": "HOLD",
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||||
"confidence": 50,
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"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."
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}
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||||
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||||
# D. Be cautious with "oversold" signals without further confirmation
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if rsi is not None and rsi < 30:
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return {
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"action": "HOLD",
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||||
"confidence": 50,
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||||
"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."
|
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}
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||||
|
||||
# --- 2. Improved BUY Signal Generation ---
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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:
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||||
|
||||
action = "BUY"
|
||||
confidence = 70
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||||
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."
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|
||||
if market_name in ["US_AMEX", "US_NASDAQ"]:
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confidence = max(60, confidence - 5)
|
||||
rationale += f" Adjusted confidence for {market_name} market characteristics."
|
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elif market_name == "US_NYSE":
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confidence = max(65, confidence)
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||||
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||||
confidence = max(50, min(85, confidence))
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||||
|
||||
return {"action": action, "confidence": confidence, "rationale": rationale}
|
||||
@@ -95,3 +95,101 @@ def test_wal_mode_not_applied_to_memory_db() -> None:
|
||||
# In-memory DBs default to 'memory' journal mode
|
||||
assert mode != "wal", "WAL should not be set on in-memory database"
|
||||
conn.close()
|
||||
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# mode column tests (issue #212)
|
||||
# ---------------------------------------------------------------------------
|
||||
|
||||
|
||||
def test_log_trade_stores_mode_paper() -> None:
|
||||
"""log_trade must persist mode='paper' in the trades table."""
|
||||
conn = init_db(":memory:")
|
||||
log_trade(
|
||||
conn=conn,
|
||||
stock_code="005930",
|
||||
action="BUY",
|
||||
confidence=85,
|
||||
rationale="test",
|
||||
mode="paper",
|
||||
)
|
||||
row = conn.execute("SELECT mode FROM trades ORDER BY id DESC LIMIT 1").fetchone()
|
||||
assert row is not None
|
||||
assert row[0] == "paper"
|
||||
|
||||
|
||||
def test_log_trade_stores_mode_live() -> None:
|
||||
"""log_trade must persist mode='live' in the trades table."""
|
||||
conn = init_db(":memory:")
|
||||
log_trade(
|
||||
conn=conn,
|
||||
stock_code="005930",
|
||||
action="BUY",
|
||||
confidence=85,
|
||||
rationale="test",
|
||||
mode="live",
|
||||
)
|
||||
row = conn.execute("SELECT mode FROM trades ORDER BY id DESC LIMIT 1").fetchone()
|
||||
assert row is not None
|
||||
assert row[0] == "live"
|
||||
|
||||
|
||||
def test_log_trade_default_mode_is_paper() -> None:
|
||||
"""log_trade without explicit mode must default to 'paper'."""
|
||||
conn = init_db(":memory:")
|
||||
log_trade(
|
||||
conn=conn,
|
||||
stock_code="005930",
|
||||
action="HOLD",
|
||||
confidence=50,
|
||||
rationale="test",
|
||||
)
|
||||
row = conn.execute("SELECT mode FROM trades ORDER BY id DESC LIMIT 1").fetchone()
|
||||
assert row is not None
|
||||
assert row[0] == "paper"
|
||||
|
||||
|
||||
def test_mode_column_exists_in_schema() -> None:
|
||||
"""trades table must have a mode column after init_db."""
|
||||
conn = init_db(":memory:")
|
||||
cursor = conn.execute("PRAGMA table_info(trades)")
|
||||
columns = {row[1] for row in cursor.fetchall()}
|
||||
assert "mode" in columns
|
||||
|
||||
|
||||
def test_mode_migration_adds_column_to_existing_db() -> None:
|
||||
"""init_db must add mode column to existing DBs that lack it (migration)."""
|
||||
import sqlite3
|
||||
|
||||
with tempfile.NamedTemporaryFile(suffix=".db", delete=False) as f:
|
||||
db_path = f.name
|
||||
try:
|
||||
# Create DB without mode column (simulate old schema)
|
||||
old_conn = sqlite3.connect(db_path)
|
||||
old_conn.execute(
|
||||
"""CREATE TABLE trades (
|
||||
id INTEGER PRIMARY KEY AUTOINCREMENT,
|
||||
timestamp TEXT NOT NULL,
|
||||
stock_code TEXT NOT NULL,
|
||||
action TEXT NOT NULL,
|
||||
confidence INTEGER NOT NULL,
|
||||
rationale TEXT,
|
||||
quantity INTEGER,
|
||||
price REAL,
|
||||
pnl REAL DEFAULT 0.0,
|
||||
market TEXT DEFAULT 'KR',
|
||||
exchange_code TEXT DEFAULT 'KRX',
|
||||
decision_id TEXT
|
||||
)"""
|
||||
)
|
||||
old_conn.commit()
|
||||
old_conn.close()
|
||||
|
||||
# Run init_db — should add mode column via migration
|
||||
conn = init_db(db_path)
|
||||
cursor = conn.execute("PRAGMA table_info(trades)")
|
||||
columns = {row[1] for row in cursor.fetchall()}
|
||||
assert "mode" in columns
|
||||
conn.close()
|
||||
finally:
|
||||
os.unlink(db_path)
|
||||
|
||||
Reference in New Issue
Block a user