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feature/is
...
feature/is
| Author | SHA1 | Date | |
|---|---|---|---|
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e3b1ecc572 | ||
| 8acf72b22c | |||
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c95102a0bd | ||
| 0685d62f9c | |||
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78021d4695 | ||
| 3cdd10783b |
@@ -5,6 +5,7 @@ The context tree implements Pillar 2: hierarchical memory management across
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"""
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from src.context.layer import ContextLayer
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from src.context.scheduler import ContextScheduler
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from src.context.store import ContextStore
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__all__ = ["ContextLayer", "ContextStore"]
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__all__ = ["ContextLayer", "ContextScheduler", "ContextStore"]
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@@ -18,52 +18,83 @@ class ContextAggregator:
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self.conn = conn
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self.store = ContextStore(conn)
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def aggregate_daily_from_trades(self, date: str | None = None) -> None:
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def aggregate_daily_from_trades(
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self, date: str | None = None, market: str | None = None
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) -> None:
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"""Aggregate L6 (daily) context from trades table.
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Args:
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date: Date in YYYY-MM-DD format. If None, uses today.
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market: Market code filter (e.g., "KR", "US"). If None, aggregates all markets.
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"""
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if date is None:
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date = datetime.now(UTC).date().isoformat()
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# Calculate daily metrics from trades
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cursor = self.conn.execute(
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"""
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SELECT
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COUNT(*) as trade_count,
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SUM(CASE WHEN action = 'BUY' THEN 1 ELSE 0 END) as buys,
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SUM(CASE WHEN action = 'SELL' THEN 1 ELSE 0 END) as sells,
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SUM(CASE WHEN action = 'HOLD' THEN 1 ELSE 0 END) as holds,
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AVG(confidence) as avg_confidence,
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SUM(pnl) as total_pnl,
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COUNT(DISTINCT stock_code) as unique_stocks,
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SUM(CASE WHEN pnl > 0 THEN 1 ELSE 0 END) as wins,
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SUM(CASE WHEN pnl < 0 THEN 1 ELSE 0 END) as losses
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FROM trades
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WHERE DATE(timestamp) = ?
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""",
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(date,),
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)
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row = cursor.fetchone()
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if row and row[0] > 0: # At least one trade
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trade_count, buys, sells, holds, avg_conf, total_pnl, stocks, wins, losses = row
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# Store daily metrics in L6
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self.store.set_context(ContextLayer.L6_DAILY, date, "trade_count", trade_count)
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self.store.set_context(ContextLayer.L6_DAILY, date, "buys", buys)
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self.store.set_context(ContextLayer.L6_DAILY, date, "sells", sells)
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self.store.set_context(ContextLayer.L6_DAILY, date, "holds", holds)
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self.store.set_context(
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ContextLayer.L6_DAILY, date, "avg_confidence", round(avg_conf, 2)
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if market is None:
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cursor = self.conn.execute(
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"""
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SELECT DISTINCT market
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FROM trades
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WHERE DATE(timestamp) = ?
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""",
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(date,),
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)
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self.store.set_context(
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ContextLayer.L6_DAILY, date, "total_pnl", round(total_pnl, 2)
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markets = [row[0] for row in cursor.fetchall() if row[0]]
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else:
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markets = [market]
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for market_code in markets:
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# Calculate daily metrics from trades for the market
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cursor = self.conn.execute(
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"""
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SELECT
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COUNT(*) as trade_count,
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SUM(CASE WHEN action = 'BUY' THEN 1 ELSE 0 END) as buys,
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SUM(CASE WHEN action = 'SELL' THEN 1 ELSE 0 END) as sells,
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SUM(CASE WHEN action = 'HOLD' THEN 1 ELSE 0 END) as holds,
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AVG(confidence) as avg_confidence,
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SUM(pnl) as total_pnl,
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COUNT(DISTINCT stock_code) as unique_stocks,
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SUM(CASE WHEN pnl > 0 THEN 1 ELSE 0 END) as wins,
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SUM(CASE WHEN pnl < 0 THEN 1 ELSE 0 END) as losses
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FROM trades
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WHERE DATE(timestamp) = ? AND market = ?
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""",
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(date, market_code),
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)
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self.store.set_context(ContextLayer.L6_DAILY, date, "unique_stocks", stocks)
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win_rate = round(wins / max(wins + losses, 1) * 100, 2)
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self.store.set_context(ContextLayer.L6_DAILY, date, "win_rate", win_rate)
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row = cursor.fetchone()
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if row and row[0] > 0: # At least one trade
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trade_count, buys, sells, holds, avg_conf, total_pnl, stocks, wins, losses = row
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key_suffix = f"_{market_code}"
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# Store daily metrics in L6 with market suffix
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self.store.set_context(
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ContextLayer.L6_DAILY, date, f"trade_count{key_suffix}", trade_count
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)
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self.store.set_context(ContextLayer.L6_DAILY, date, f"buys{key_suffix}", buys)
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self.store.set_context(ContextLayer.L6_DAILY, date, f"sells{key_suffix}", sells)
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self.store.set_context(ContextLayer.L6_DAILY, date, f"holds{key_suffix}", holds)
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self.store.set_context(
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ContextLayer.L6_DAILY,
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date,
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f"avg_confidence{key_suffix}",
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round(avg_conf, 2),
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)
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self.store.set_context(
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ContextLayer.L6_DAILY,
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date,
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f"total_pnl{key_suffix}",
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round(total_pnl, 2),
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)
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self.store.set_context(
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ContextLayer.L6_DAILY, date, f"unique_stocks{key_suffix}", stocks
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)
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win_rate = round(wins / max(wins + losses, 1) * 100, 2)
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self.store.set_context(
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ContextLayer.L6_DAILY, date, f"win_rate{key_suffix}", win_rate
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)
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def aggregate_weekly_from_daily(self, week: str | None = None) -> None:
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"""Aggregate L5 (weekly) context from L6 (daily).
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@@ -92,14 +123,25 @@ class ContextAggregator:
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daily_data[row[0]].append(json.loads(row[1]))
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if daily_data:
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# Sum all PnL values
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# Sum all PnL values (market-specific if suffixed)
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if "total_pnl" in daily_data:
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total_pnl = sum(daily_data["total_pnl"])
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self.store.set_context(
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ContextLayer.L5_WEEKLY, week, "weekly_pnl", round(total_pnl, 2)
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)
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# Average all confidence values
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for key, values in daily_data.items():
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if key.startswith("total_pnl_"):
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market_code = key.split("total_pnl_", 1)[1]
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total_pnl = sum(values)
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self.store.set_context(
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ContextLayer.L5_WEEKLY,
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week,
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f"weekly_pnl_{market_code}",
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round(total_pnl, 2),
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)
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# Average all confidence values (market-specific if suffixed)
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if "avg_confidence" in daily_data:
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conf_values = daily_data["avg_confidence"]
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avg_conf = sum(conf_values) / len(conf_values)
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@@ -107,6 +149,17 @@ class ContextAggregator:
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ContextLayer.L5_WEEKLY, week, "avg_confidence", round(avg_conf, 2)
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)
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for key, values in daily_data.items():
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if key.startswith("avg_confidence_"):
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market_code = key.split("avg_confidence_", 1)[1]
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avg_conf = sum(values) / len(values)
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self.store.set_context(
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ContextLayer.L5_WEEKLY,
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week,
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f"avg_confidence_{market_code}",
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round(avg_conf, 2),
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)
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def aggregate_monthly_from_weekly(self, month: str | None = None) -> None:
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"""Aggregate L4 (monthly) context from L5 (weekly).
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@@ -135,8 +188,16 @@ class ContextAggregator:
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if weekly_data:
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# Sum all weekly PnL values
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total_pnl_values: list[float] = []
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if "weekly_pnl" in weekly_data:
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total_pnl = sum(weekly_data["weekly_pnl"])
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total_pnl_values.extend(weekly_data["weekly_pnl"])
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for key, values in weekly_data.items():
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if key.startswith("weekly_pnl_"):
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total_pnl_values.extend(values)
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if total_pnl_values:
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total_pnl = sum(total_pnl_values)
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self.store.set_context(
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ContextLayer.L4_MONTHLY, month, "monthly_pnl", round(total_pnl, 2)
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)
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135
src/context/scheduler.py
Normal file
135
src/context/scheduler.py
Normal file
@@ -0,0 +1,135 @@
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"""Context aggregation scheduler for periodic rollups and cleanup."""
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from __future__ import annotations
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import sqlite3
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from calendar import monthrange
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from dataclasses import dataclass
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from datetime import UTC, datetime
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from src.context.aggregator import ContextAggregator
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from src.context.store import ContextStore
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@dataclass(frozen=True)
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class ScheduleResult:
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"""Represents which scheduled tasks ran."""
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weekly: bool = False
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monthly: bool = False
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quarterly: bool = False
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annual: bool = False
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legacy: bool = False
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cleanup: bool = False
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class ContextScheduler:
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"""Run periodic context aggregations and cleanup when due."""
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def __init__(
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self,
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conn: sqlite3.Connection | None = None,
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aggregator: ContextAggregator | None = None,
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store: ContextStore | None = None,
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) -> None:
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if aggregator is None:
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if conn is None:
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raise ValueError("conn is required when aggregator is not provided")
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aggregator = ContextAggregator(conn)
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self.aggregator = aggregator
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if store is None:
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store = getattr(aggregator, "store", None)
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if store is None:
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if conn is None:
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raise ValueError("conn is required when store is not provided")
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store = ContextStore(conn)
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self.store = store
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self._last_run: dict[str, str] = {}
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def run_if_due(self, now: datetime | None = None) -> ScheduleResult:
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"""Run scheduled aggregations if their schedule is due.
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Args:
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now: Current datetime (UTC). If None, uses current time.
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Returns:
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ScheduleResult indicating which tasks ran.
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"""
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if now is None:
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now = datetime.now(UTC)
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today = now.date().isoformat()
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result = ScheduleResult()
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if self._should_run("cleanup", today):
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self.store.cleanup_expired_contexts()
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result = self._with(result, cleanup=True)
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if self._is_sunday(now) and self._should_run("weekly", today):
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week = now.strftime("%Y-W%V")
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self.aggregator.aggregate_weekly_from_daily(week)
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result = self._with(result, weekly=True)
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if self._is_last_day_of_month(now) and self._should_run("monthly", today):
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month = now.strftime("%Y-%m")
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self.aggregator.aggregate_monthly_from_weekly(month)
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result = self._with(result, monthly=True)
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if self._is_last_day_of_quarter(now) and self._should_run("quarterly", today):
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quarter = self._current_quarter(now)
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self.aggregator.aggregate_quarterly_from_monthly(quarter)
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result = self._with(result, quarterly=True)
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if self._is_last_day_of_year(now) and self._should_run("annual", today):
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year = str(now.year)
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self.aggregator.aggregate_annual_from_quarterly(year)
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result = self._with(result, annual=True)
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# Legacy rollup runs after annual aggregation.
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self.aggregator.aggregate_legacy_from_annual()
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result = self._with(result, legacy=True)
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return result
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def _should_run(self, key: str, date_str: str) -> bool:
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if self._last_run.get(key) == date_str:
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return False
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self._last_run[key] = date_str
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return True
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@staticmethod
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def _is_sunday(now: datetime) -> bool:
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return now.weekday() == 6
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@staticmethod
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def _is_last_day_of_month(now: datetime) -> bool:
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last_day = monthrange(now.year, now.month)[1]
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return now.day == last_day
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@classmethod
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def _is_last_day_of_quarter(cls, now: datetime) -> bool:
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if now.month not in (3, 6, 9, 12):
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return False
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return cls._is_last_day_of_month(now)
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@staticmethod
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def _is_last_day_of_year(now: datetime) -> bool:
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return now.month == 12 and now.day == 31
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@staticmethod
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def _current_quarter(now: datetime) -> str:
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quarter = (now.month - 1) // 3 + 1
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return f"{now.year}-Q{quarter}"
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@staticmethod
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def _with(result: ScheduleResult, **kwargs: bool) -> ScheduleResult:
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return ScheduleResult(
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weekly=kwargs.get("weekly", result.weekly),
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monthly=kwargs.get("monthly", result.monthly),
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quarterly=kwargs.get("quarterly", result.quarterly),
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annual=kwargs.get("annual", result.annual),
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legacy=kwargs.get("legacy", result.legacy),
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cleanup=kwargs.get("cleanup", result.cleanup),
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)
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@@ -7,6 +7,7 @@ from src.evolution.performance_tracker import (
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PerformanceTracker,
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StrategyMetrics,
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)
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from src.evolution.scorecard import DailyScorecard
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__all__ = [
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"EvolutionOptimizer",
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@@ -16,4 +17,5 @@ __all__ = [
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"PerformanceTracker",
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"PerformanceDashboard",
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"StrategyMetrics",
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"DailyScorecard",
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]
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25
src/evolution/scorecard.py
Normal file
25
src/evolution/scorecard.py
Normal file
@@ -0,0 +1,25 @@
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"""Daily scorecard model for end-of-day performance review."""
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from __future__ import annotations
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from dataclasses import dataclass, field
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@dataclass
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class DailyScorecard:
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"""Structured daily performance snapshot for a single market."""
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date: str
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market: str
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total_decisions: int
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buys: int
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sells: int
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holds: int
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total_pnl: float
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win_rate: float
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avg_confidence: float
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scenario_match_rate: float
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top_winners: list[str] = field(default_factory=list)
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top_losers: list[str] = field(default_factory=list)
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lessons: list[str] = field(default_factory=list)
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cross_market_note: str = ""
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@@ -20,6 +20,7 @@ from src.brain.gemini_client import GeminiClient, TradeDecision
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from src.broker.kis_api import KISBroker
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from src.broker.overseas import OverseasBroker
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from src.config import Settings
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from src.context.aggregator import ContextAggregator
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from src.context.layer import ContextLayer
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from src.context.store import ContextStore
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from src.core.criticality import CriticalityAssessor
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@@ -706,6 +707,7 @@ async def run(settings: Settings) -> None:
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db_conn = init_db(settings.DB_PATH)
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decision_logger = DecisionLogger(db_conn)
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context_store = ContextStore(db_conn)
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context_aggregator = ContextAggregator(db_conn)
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# V2 proactive strategy components
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context_selector = ContextSelector(context_store)
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@@ -990,6 +992,13 @@ async def run(settings: Settings) -> None:
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market_info = MARKETS.get(market_code)
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if market_info:
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await telegram.notify_market_close(market_info.name, 0.0)
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market_date = datetime.now(
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market_info.timezone
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).date().isoformat()
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context_aggregator.aggregate_daily_from_trades(
|
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date=market_date,
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market=market_code,
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)
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except Exception as exc:
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logger.warning("Market close notification failed: %s", exc)
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_market_states[market_code] = False
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|
||||
@@ -161,7 +161,7 @@ class TestContextAggregator:
|
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self, aggregator: ContextAggregator, db_conn: sqlite3.Connection
|
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) -> None:
|
||||
"""Test aggregating daily metrics from trades."""
|
||||
date = "2026-02-04"
|
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date = datetime.now(UTC).date().isoformat()
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||||
|
||||
# Create sample trades
|
||||
log_trade(db_conn, "005930", "BUY", 85, "Good signal", quantity=10, price=70000, pnl=500)
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@@ -175,36 +175,44 @@ class TestContextAggregator:
|
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db_conn.commit()
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# Aggregate
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aggregator.aggregate_daily_from_trades(date)
|
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aggregator.aggregate_daily_from_trades(date, market="KR")
|
||||
|
||||
# Verify L6 contexts
|
||||
store = aggregator.store
|
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assert store.get_context(ContextLayer.L6_DAILY, date, "trade_count") == 3
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "buys") == 1
|
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assert store.get_context(ContextLayer.L6_DAILY, date, "sells") == 1
|
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assert store.get_context(ContextLayer.L6_DAILY, date, "holds") == 1
|
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assert store.get_context(ContextLayer.L6_DAILY, date, "total_pnl") == 2000.0
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "unique_stocks") == 3
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "trade_count_KR") == 3
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "buys_KR") == 1
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "sells_KR") == 1
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "holds_KR") == 1
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "total_pnl_KR") == 2000.0
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "unique_stocks_KR") == 3
|
||||
# 2 wins, 0 losses
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "win_rate") == 100.0
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "win_rate_KR") == 100.0
|
||||
|
||||
def test_aggregate_weekly_from_daily(self, aggregator: ContextAggregator) -> None:
|
||||
"""Test aggregating weekly metrics from daily."""
|
||||
week = "2026-W06"
|
||||
|
||||
# Set daily contexts
|
||||
aggregator.store.set_context(ContextLayer.L6_DAILY, "2026-02-02", "total_pnl", 100.0)
|
||||
aggregator.store.set_context(ContextLayer.L6_DAILY, "2026-02-03", "total_pnl", 200.0)
|
||||
aggregator.store.set_context(ContextLayer.L6_DAILY, "2026-02-02", "avg_confidence", 80.0)
|
||||
aggregator.store.set_context(ContextLayer.L6_DAILY, "2026-02-03", "avg_confidence", 85.0)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L6_DAILY, "2026-02-02", "total_pnl_KR", 100.0
|
||||
)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L6_DAILY, "2026-02-03", "total_pnl_KR", 200.0
|
||||
)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L6_DAILY, "2026-02-02", "avg_confidence_KR", 80.0
|
||||
)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L6_DAILY, "2026-02-03", "avg_confidence_KR", 85.0
|
||||
)
|
||||
|
||||
# Aggregate
|
||||
aggregator.aggregate_weekly_from_daily(week)
|
||||
|
||||
# Verify L5 contexts
|
||||
store = aggregator.store
|
||||
weekly_pnl = store.get_context(ContextLayer.L5_WEEKLY, week, "weekly_pnl")
|
||||
avg_conf = store.get_context(ContextLayer.L5_WEEKLY, week, "avg_confidence")
|
||||
weekly_pnl = store.get_context(ContextLayer.L5_WEEKLY, week, "weekly_pnl_KR")
|
||||
avg_conf = store.get_context(ContextLayer.L5_WEEKLY, week, "avg_confidence_KR")
|
||||
|
||||
assert weekly_pnl == 300.0
|
||||
assert avg_conf == 82.5
|
||||
@@ -214,9 +222,15 @@ class TestContextAggregator:
|
||||
month = "2026-02"
|
||||
|
||||
# Set weekly contexts
|
||||
aggregator.store.set_context(ContextLayer.L5_WEEKLY, "2026-W05", "weekly_pnl", 100.0)
|
||||
aggregator.store.set_context(ContextLayer.L5_WEEKLY, "2026-W06", "weekly_pnl", 200.0)
|
||||
aggregator.store.set_context(ContextLayer.L5_WEEKLY, "2026-W07", "weekly_pnl", 150.0)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L5_WEEKLY, "2026-W05", "weekly_pnl_KR", 100.0
|
||||
)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L5_WEEKLY, "2026-W06", "weekly_pnl_KR", 200.0
|
||||
)
|
||||
aggregator.store.set_context(
|
||||
ContextLayer.L5_WEEKLY, "2026-W07", "weekly_pnl_KR", 150.0
|
||||
)
|
||||
|
||||
# Aggregate
|
||||
aggregator.aggregate_monthly_from_weekly(month)
|
||||
@@ -285,7 +299,7 @@ class TestContextAggregator:
|
||||
self, aggregator: ContextAggregator, db_conn: sqlite3.Connection
|
||||
) -> None:
|
||||
"""Test running all aggregations from L7 to L1."""
|
||||
date = "2026-02-04"
|
||||
date = datetime.now(UTC).date().isoformat()
|
||||
|
||||
# Create sample trades
|
||||
log_trade(db_conn, "005930", "BUY", 85, "Good signal", quantity=10, price=70000, pnl=1000)
|
||||
@@ -299,12 +313,12 @@ class TestContextAggregator:
|
||||
|
||||
# Verify data exists in each layer
|
||||
store = aggregator.store
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "total_pnl") == 1000.0
|
||||
assert store.get_context(ContextLayer.L6_DAILY, date, "total_pnl_KR") == 1000.0
|
||||
from datetime import date as date_cls
|
||||
trade_date = date_cls.fromisoformat(date)
|
||||
iso_year, iso_week, _ = trade_date.isocalendar()
|
||||
trade_week = f"{iso_year}-W{iso_week:02d}"
|
||||
assert store.get_context(ContextLayer.L5_WEEKLY, trade_week, "weekly_pnl") is not None
|
||||
assert store.get_context(ContextLayer.L5_WEEKLY, trade_week, "weekly_pnl_KR") is not None
|
||||
trade_month = f"{trade_date.year}-{trade_date.month:02d}"
|
||||
trade_quarter = f"{trade_date.year}-Q{(trade_date.month - 1) // 3 + 1}"
|
||||
trade_year = str(trade_date.year)
|
||||
|
||||
104
tests/test_context_scheduler.py
Normal file
104
tests/test_context_scheduler.py
Normal file
@@ -0,0 +1,104 @@
|
||||
"""Tests for ContextScheduler."""
|
||||
|
||||
from __future__ import annotations
|
||||
|
||||
from dataclasses import dataclass
|
||||
from datetime import UTC, datetime
|
||||
|
||||
from src.context.scheduler import ContextScheduler
|
||||
|
||||
|
||||
@dataclass
|
||||
class StubAggregator:
|
||||
"""Stub aggregator that records calls."""
|
||||
|
||||
weekly_calls: list[str]
|
||||
monthly_calls: list[str]
|
||||
quarterly_calls: list[str]
|
||||
annual_calls: list[str]
|
||||
legacy_calls: int
|
||||
|
||||
def aggregate_weekly_from_daily(self, week: str) -> None:
|
||||
self.weekly_calls.append(week)
|
||||
|
||||
def aggregate_monthly_from_weekly(self, month: str) -> None:
|
||||
self.monthly_calls.append(month)
|
||||
|
||||
def aggregate_quarterly_from_monthly(self, quarter: str) -> None:
|
||||
self.quarterly_calls.append(quarter)
|
||||
|
||||
def aggregate_annual_from_quarterly(self, year: str) -> None:
|
||||
self.annual_calls.append(year)
|
||||
|
||||
def aggregate_legacy_from_annual(self) -> None:
|
||||
self.legacy_calls += 1
|
||||
|
||||
|
||||
@dataclass
|
||||
class StubStore:
|
||||
"""Stub store that records cleanup calls."""
|
||||
|
||||
cleanup_calls: int = 0
|
||||
|
||||
def cleanup_expired_contexts(self) -> None:
|
||||
self.cleanup_calls += 1
|
||||
|
||||
|
||||
def make_scheduler() -> tuple[ContextScheduler, StubAggregator, StubStore]:
|
||||
aggregator = StubAggregator([], [], [], [], 0)
|
||||
store = StubStore()
|
||||
scheduler = ContextScheduler(aggregator=aggregator, store=store)
|
||||
return scheduler, aggregator, store
|
||||
|
||||
|
||||
def test_run_if_due_weekly() -> None:
|
||||
scheduler, aggregator, store = make_scheduler()
|
||||
now = datetime(2026, 2, 8, 10, 0, tzinfo=UTC) # Sunday
|
||||
|
||||
result = scheduler.run_if_due(now)
|
||||
|
||||
assert result.weekly is True
|
||||
assert aggregator.weekly_calls == ["2026-W06"]
|
||||
assert store.cleanup_calls == 1
|
||||
|
||||
|
||||
def test_run_if_due_monthly() -> None:
|
||||
scheduler, aggregator, _store = make_scheduler()
|
||||
now = datetime(2026, 2, 28, 12, 0, tzinfo=UTC) # Last day of month
|
||||
|
||||
result = scheduler.run_if_due(now)
|
||||
|
||||
assert result.monthly is True
|
||||
assert aggregator.monthly_calls == ["2026-02"]
|
||||
|
||||
|
||||
def test_run_if_due_quarterly() -> None:
|
||||
scheduler, aggregator, _store = make_scheduler()
|
||||
now = datetime(2026, 3, 31, 12, 0, tzinfo=UTC) # Last day of Q1
|
||||
|
||||
result = scheduler.run_if_due(now)
|
||||
|
||||
assert result.quarterly is True
|
||||
assert aggregator.quarterly_calls == ["2026-Q1"]
|
||||
|
||||
|
||||
def test_run_if_due_annual_and_legacy() -> None:
|
||||
scheduler, aggregator, _store = make_scheduler()
|
||||
now = datetime(2026, 12, 31, 12, 0, tzinfo=UTC)
|
||||
|
||||
result = scheduler.run_if_due(now)
|
||||
|
||||
assert result.annual is True
|
||||
assert result.legacy is True
|
||||
assert aggregator.annual_calls == ["2026"]
|
||||
assert aggregator.legacy_calls == 1
|
||||
|
||||
|
||||
def test_cleanup_runs_once_per_day() -> None:
|
||||
scheduler, _aggregator, store = make_scheduler()
|
||||
now = datetime(2026, 2, 9, 9, 0, tzinfo=UTC)
|
||||
|
||||
scheduler.run_if_due(now)
|
||||
scheduler.run_if_due(now)
|
||||
|
||||
assert store.cleanup_calls == 1
|
||||
81
tests/test_scorecard.py
Normal file
81
tests/test_scorecard.py
Normal file
@@ -0,0 +1,81 @@
|
||||
"""Tests for DailyScorecard model."""
|
||||
|
||||
from __future__ import annotations
|
||||
|
||||
from src.evolution.scorecard import DailyScorecard
|
||||
|
||||
|
||||
def test_scorecard_initialization() -> None:
|
||||
scorecard = DailyScorecard(
|
||||
date="2026-02-08",
|
||||
market="KR",
|
||||
total_decisions=10,
|
||||
buys=3,
|
||||
sells=2,
|
||||
holds=5,
|
||||
total_pnl=1234.5,
|
||||
win_rate=60.0,
|
||||
avg_confidence=78.5,
|
||||
scenario_match_rate=70.0,
|
||||
top_winners=["005930", "000660"],
|
||||
top_losers=["035420"],
|
||||
lessons=["Avoid chasing breakouts"],
|
||||
cross_market_note="US volatility spillover",
|
||||
)
|
||||
|
||||
assert scorecard.market == "KR"
|
||||
assert scorecard.total_decisions == 10
|
||||
assert scorecard.total_pnl == 1234.5
|
||||
assert scorecard.top_winners == ["005930", "000660"]
|
||||
assert scorecard.lessons == ["Avoid chasing breakouts"]
|
||||
assert scorecard.cross_market_note == "US volatility spillover"
|
||||
|
||||
|
||||
def test_scorecard_defaults() -> None:
|
||||
scorecard = DailyScorecard(
|
||||
date="2026-02-08",
|
||||
market="US",
|
||||
total_decisions=0,
|
||||
buys=0,
|
||||
sells=0,
|
||||
holds=0,
|
||||
total_pnl=0.0,
|
||||
win_rate=0.0,
|
||||
avg_confidence=0.0,
|
||||
scenario_match_rate=0.0,
|
||||
)
|
||||
|
||||
assert scorecard.top_winners == []
|
||||
assert scorecard.top_losers == []
|
||||
assert scorecard.lessons == []
|
||||
assert scorecard.cross_market_note == ""
|
||||
|
||||
|
||||
def test_scorecard_list_isolation() -> None:
|
||||
a = DailyScorecard(
|
||||
date="2026-02-08",
|
||||
market="KR",
|
||||
total_decisions=1,
|
||||
buys=1,
|
||||
sells=0,
|
||||
holds=0,
|
||||
total_pnl=10.0,
|
||||
win_rate=100.0,
|
||||
avg_confidence=90.0,
|
||||
scenario_match_rate=100.0,
|
||||
)
|
||||
b = DailyScorecard(
|
||||
date="2026-02-08",
|
||||
market="US",
|
||||
total_decisions=1,
|
||||
buys=0,
|
||||
sells=1,
|
||||
holds=0,
|
||||
total_pnl=-5.0,
|
||||
win_rate=0.0,
|
||||
avg_confidence=60.0,
|
||||
scenario_match_rate=50.0,
|
||||
)
|
||||
|
||||
a.top_winners.append("005930")
|
||||
assert b.top_winners == []
|
||||
Reference in New Issue
Block a user