import datetime as dt import sqlite3 import pytest from unittest.mock import AsyncMock, MagicMock, patch from app.screener.ai_news import pipeline from app.screener.schema import ensure_screener_schema @pytest.fixture def conn(): c = sqlite3.connect(":memory:") c.row_factory = sqlite3.Row ensure_screener_schema(c) # 시총 상위 3종목 시드 c.execute("INSERT INTO krx_master (ticker, name, market, market_cap, updated_at) " "VALUES (?, ?, 'KOSPI', ?, datetime('now'))", ("005930", "삼성전자", 9_000_000)) c.execute("INSERT INTO krx_master (ticker, name, market, market_cap, updated_at) " "VALUES (?, ?, 'KOSPI', ?, datetime('now'))", ("000660", "SK하이닉스", 8_000_000)) c.execute("INSERT INTO krx_master (ticker, name, market, market_cap, updated_at) " "VALUES (?, ?, 'KOSPI', ?, datetime('now'))", ("373220", "LG에너지솔루션", 7_000_000)) c.commit() yield c c.close() @pytest.mark.asyncio async def test_refresh_daily_happy_path(conn): """3종목 mini integration — 각 종목별로 scraper/analyzer mock.""" asof = dt.date(2026, 5, 13) fake_news = [{"title": "헤드라인"}] async def fake_fetch(client, ticker, n): return fake_news scores_by_ticker = { "005930": 7.5, "000660": 4.0, "373220": -6.0, } async def fake_score(llm, ticker, news, *, name=None, model="m"): return { "ticker": ticker, "score_raw": scores_by_ticker[ticker], "reason": f"r{ticker}", "news_count": 1, "tokens_input": 100, "tokens_output": 20, "model": model, } with patch.object(pipeline, "_scraper") as ms, \ patch.object(pipeline, "_analyzer") as ma, \ patch.object(pipeline, "_make_llm") as ml, \ patch.object(pipeline, "_make_http") as mh: ms.fetch_news = fake_fetch ma.score_sentiment = fake_score ml.return_value.__aenter__.return_value = AsyncMock() ml.return_value.__aexit__.return_value = None mh.return_value.__aenter__.return_value = AsyncMock() mh.return_value.__aexit__.return_value = None result = await pipeline.refresh_daily(conn, asof, concurrency=3, rate_limit_sec=0) assert result["asof"] == "2026-05-13" assert result["updated"] == 3 assert result["failures"] == [] assert len(result["top_pos"]) == 3 assert result["top_pos"][0]["ticker"] == "005930" # 가장 큰 점수 assert result["top_neg"][0]["ticker"] == "373220" # 가장 작은 점수 assert result["tokens_input"] == 300 assert result["tokens_output"] == 60 # DB upsert 확인 rows = conn.execute("SELECT ticker, score_raw FROM news_sentiment WHERE date=?", ("2026-05-13",)).fetchall() assert len(rows) == 3 by_ticker = {r["ticker"]: r["score_raw"] for r in rows} assert by_ticker["005930"] == 7.5 assert by_ticker["373220"] == -6.0 @pytest.mark.asyncio async def test_refresh_daily_failures_isolated(conn): """한 종목이 예외 던져도 나머지 종목은 정상 처리.""" asof = dt.date(2026, 5, 13) async def fake_fetch(client, ticker, n): return [{"title": "h"}] async def fake_score(llm, ticker, news, *, name=None, model="m"): if ticker == "000660": raise RuntimeError("llm exploded") return { "ticker": ticker, "score_raw": 5.0, "reason": "r", "news_count": 1, "tokens_input": 100, "tokens_output": 20, "model": model, } with patch.object(pipeline, "_scraper") as ms, \ patch.object(pipeline, "_analyzer") as ma, \ patch.object(pipeline, "_make_llm") as ml, \ patch.object(pipeline, "_make_http") as mh: ms.fetch_news = fake_fetch ma.score_sentiment = fake_score ml.return_value.__aenter__.return_value = AsyncMock() ml.return_value.__aexit__.return_value = None mh.return_value.__aenter__.return_value = AsyncMock() mh.return_value.__aexit__.return_value = None result = await pipeline.refresh_daily(conn, asof, concurrency=3, rate_limit_sec=0) assert result["updated"] == 2 assert len(result["failures"]) == 1 def test_top_market_cap_tickers(conn): out = pipeline._top_market_cap_tickers(conn, n=2) assert out == ["005930", "000660"]