da0e1b0f7e
매크로·실적·펀더멘털·공매도수급·호가미시구조·대내외 변수 5개 독립 팩터군의 confluence(최소 3/5 합의) 없이는 매도 트리거를 금지하는 정성적 매도판단 엔진과, 보유종목 제외 위성후보 추천 로직을 추가한다. - 단일 팩터 임계값 돌파만으로는 매도 신호를 생성하지 않음 (mechanical_sell_prohibited=true) - 데이터 결측 시 항상 DATA_MISSING/INSUFFICIENT_DATA_NO_ACTION — 추정값으로 채우지 않음 - KIS 호가10단계·공매도거래비중 + Naver 시세/수급 스크래핑 입력 연동 - SQLite 시계열 저장 + 사후 적중률 자체평가 (evaluate_qualitative_sell_strategy_accuracy_v1) - Gitea 일일 스케줄(장마감 후) + 파이프라인 계약 검증 게이트
71 lines
2.5 KiB
Python
71 lines
2.5 KiB
Python
from __future__ import annotations
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import sys
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from pathlib import Path
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ROOT = Path(__file__).resolve().parents[2]
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if str(ROOT) not in sys.path:
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sys.path.insert(0, str(ROOT))
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from src.quant_engine.qualitative_sell_strategy_store_v1 import (
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QualitativeSellStoreSpec,
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fetch_recent_sell_strategy_results,
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insert_satellite_recommendation,
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insert_sell_strategy_result,
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resolve_store_path,
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)
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def test_insert_and_fetch_sell_strategy_result(tmp_path):
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db_path = tmp_path / "test.db"
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result = {
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"code": "005930",
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"generated_at": "2026-06-21T12:00:00+09:00",
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"decision": {
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"action": "TRIM_REVIEW_PARTIAL",
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"conviction": "MEDIUM",
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"market_regime": "TECHNICAL_MARKET",
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"composite_score": 0.42,
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"rationale": "test rationale",
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},
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}
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insert_sell_strategy_result(db_path, result)
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rows = fetch_recent_sell_strategy_results(db_path, "005930")
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assert len(rows) == 1
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assert rows[0]["action"] == "TRIM_REVIEW_PARTIAL"
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assert rows[0]["composite_score"] == 0.42
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def test_fetch_returns_empty_list_when_db_missing(tmp_path):
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rows = fetch_recent_sell_strategy_results(tmp_path / "nonexistent.db", "005930")
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assert rows == []
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def test_multiple_inserts_ordered_by_generated_at_desc(tmp_path):
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db_path = tmp_path / "test.db"
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for ts in ("2026-06-19T12:00:00", "2026-06-21T12:00:00", "2026-06-20T12:00:00"):
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insert_sell_strategy_result(db_path, {
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"code": "005930", "generated_at": ts,
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"decision": {"action": "HOLD_NO_CONFLUENCE"},
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})
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rows = fetch_recent_sell_strategy_results(db_path, "005930")
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assert [r["generated_at"] for r in rows] == ["2026-06-21T12:00:00", "2026-06-20T12:00:00", "2026-06-19T12:00:00"]
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def test_insert_satellite_recommendation(tmp_path):
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db_path = tmp_path / "test.db"
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insert_satellite_recommendation(db_path, "2026-06-21T12:00:00+09:00", {
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"ticker": "042700",
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"score": {"satellite_action": "BUY_CANDIDATE", "attractiveness_score": 0.6, "market_regime": "PERFORMANCE_MARKET"},
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})
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import sqlite3
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conn = sqlite3.connect(db_path)
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row = conn.execute("SELECT ticker, satellite_action, attractiveness_score FROM satellite_recommendations").fetchone()
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conn.close()
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assert row == ("042700", "BUY_CANDIDATE", 0.6)
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def test_resolve_store_path_supports_sqlite(tmp_path):
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db_path = resolve_store_path(QualitativeSellStoreSpec(location=tmp_path / "qualitative.db"), ROOT)
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assert str(db_path).endswith("qualitative.db")
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