Phase 1 데이터모델+get_holdings → 2 기술분석·매도룰·decide_action → 3 이슈(market_events·news·portfolio_health) → 4 compute+brief+API → 5 agent-office EOD·아침브리핑 → 6 web-ui 탭 → 7 검증. 장중 가드는 후속. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
49 KiB
주식 보유종목 인텔리전스 Implementation Plan
For agentic workers: REQUIRED SUB-SKILL: Use superpowers:subagent-driven-development (recommended) or superpowers:executing-plans to implement this plan task-by-task. Steps use checkbox (
- [ ]) syntax for tracking.
Goal: 시장용 스크리너 엔진을 내 보유종목에 restrict 적용하고, 신규 매도/리스크 룰·이슈 감지·포트 건강을 얹어 매일 advisory 브리핑(텔레그램+UI)한다.
Architecture: stock에 순수연산 holdings_intel.py + 집계테이블 holdings_signals 추가. 기존 screener/engine.py의 ScreenContext.restrict()로 보유종목 기술분석, 신규 exit_rules/decide_action으로 매도자세 결정, market_events+news_issues로 이슈, portfolio_health로 포트요약. agent-office가 EOD 계산(16:40)·아침 브리핑(08:30)·장중 가드(30분)를 orchestrate. KIS 실주문 미사용(advisory).
Tech Stack: Python 3.12, FastAPI, SQLite, pandas, APScheduler, Claude Haiku(ai_summarizer), pytest / React+Vite(web-ui 별도 repo).
Spec: docs/superpowers/specs/2026-05-31-stock-holdings-intelligence-design.md
기존 자산 (재사용 — 시그니처 확인됨)
stock/app/db.py:_conn(),init_db()(CREATE TABLE IF NOT EXISTS +_ensure류 마이그레이션),get_all_portfolio() -> [{id,broker,ticker,name,quantity,avg_price,purchase_price}],get_all_broker_cash() -> [{broker,cash}],get_latest_articles(limit,category). 테스트는 monkeypatch로 DB_PATH류 격리(기존 test 파일 참조).stock/app/price_fetcher.py:get_current_prices(tickers) -> {ticker:int},get_current_prices_detail(tickers) -> {ticker:{...}}.stock/app/screener/engine.py:ScreenContext.load(conn, asof, lookback_days=504) -> ctx(master/prices/flow/news_sentiment),ctx.restrict(tickers),ctx.latest_close().combine(scores, weights).stock/app/screener/nodes/base.py:ScoreNode.compute(ctx, params) -> pd.Series(0..100, index=ticker). nodes: ma_alignment/momentum/rs_rating/vcp_lite/volume_surge/foreign_buy/high52w.stock/app/screener/registry.py에 GATE/SCORE 레지스트리.stock/app/ai_summarizer.py:async summarize_news(articles) -> {summary, tokens, model, duration_ms}(Claude/Ollama).news_sentiment테이블(date,ticker,score_raw,news_count) — 종목별 감성.krx_daily_prices(ticker,date,o/h/l/c,volume,value),krx_flow(ticker,date,foreign_net,institution_net).- agent-office:
service_proxy(STOCK_URL httpx),StockAgent(on_schedule/on_screener_schedule/on_ai_news_schedule/on_command),scheduler.py(_run_stock_*wrappers + init_scheduler),telegram.messaging.send_raw.
알려진 제약 (plan 전반 반영)
articles는 종목 태깅 없음 → 종목별 이슈는news_sentiment기반 + 회사명 substring 매칭으로 article best-effort.- MA200/momentum 노드는 ~252일 일봉 필요 → 누적 부족 종목은 NaN→0(노드가 이미 처리). 신규 보유·운영 초기엔 tech_score 낮을 수 있음(graceful).
- KRX 외 종목(미국주): krx_daily_prices 밖 →
is_krx=False로 기술분석 skip, 뉴스·손익만.
Phase 1 — holdings_signals 테이블 + get_holdings
Task 1.1: holdings_signals 테이블 + CRUD
Files:
-
Modify:
stock/app/db.py(init_db + CRUD) -
Test:
stock/app/test_holdings_db.py -
Step 1: 실패 테스트
stock/app/test_holdings_db.py:
import os, tempfile, importlib
def _fresh_db(monkeypatch):
tmp = tempfile.mkdtemp()
from app import db
monkeypatch.setattr(db, "DB_PATH", os.path.join(tmp, "stock.db"))
db.init_db()
return db
def test_holdings_signals_table_and_upsert(monkeypatch):
db = _fresh_db(monkeypatch)
db.upsert_holdings_signal(date="2026-05-29", ticker="005930", name="삼성전자",
action="hold", tech_score=72.0, exit_flags={"stop_loss": False},
issues=[{"type": "news", "severity": "low", "summary": "x"}],
close=80000, pnl_rate=5.2, reasons="강건")
db.upsert_holdings_signal(date="2026-05-29", ticker="005930", name="삼성전자",
action="trim", tech_score=60.0, exit_flags={"ma50_break": True},
issues=[], close=79000, pnl_rate=3.0, reasons="MA50 이탈")
rows = db.get_holdings_signals(date="2026-05-29")
assert len(rows) == 1 # upsert 멱등
assert rows[0]["action"] == "trim"
assert rows[0]["exit_flags"]["ma50_break"] is True # JSON 역직렬화
hist = db.get_holdings_signal_history("005930", days=30)
assert len(hist) == 1
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_db.py -vExpected: FAIL (upsert_holdings_signal없음) -
Step 3: 테이블 DDL —
stock/app/db.pyinit_db()안 sell_history 테이블 블록 뒤에:
conn.execute(
"""
CREATE TABLE IF NOT EXISTS holdings_signals (
date TEXT NOT NULL,
ticker TEXT NOT NULL,
name TEXT,
action TEXT NOT NULL,
tech_score REAL,
exit_flags TEXT NOT NULL DEFAULT '{}',
issues TEXT NOT NULL DEFAULT '[]',
close INTEGER,
pnl_rate REAL,
reasons TEXT,
created_at TEXT NOT NULL DEFAULT (datetime('now')),
PRIMARY KEY (date, ticker)
);
"""
)
conn.execute("CREATE INDEX IF NOT EXISTS idx_holdings_sig_ticker "
"ON holdings_signals(ticker, date DESC);")
- Step 4: CRUD 함수 —
stock/app/db.py끝에 (import json은 파일 상단에 이미 있으면 재사용, 없으면 추가):
def upsert_holdings_signal(date, ticker, name, action, tech_score, exit_flags,
issues, close, pnl_rate, reasons) -> None:
with _conn() as conn:
conn.execute(
"""
INSERT INTO holdings_signals
(date, ticker, name, action, tech_score, exit_flags, issues, close, pnl_rate, reasons)
VALUES (?,?,?,?,?,?,?,?,?,?)
ON CONFLICT(date, ticker) DO UPDATE SET
name=excluded.name, action=excluded.action, tech_score=excluded.tech_score,
exit_flags=excluded.exit_flags, issues=excluded.issues, close=excluded.close,
pnl_rate=excluded.pnl_rate, reasons=excluded.reasons
""",
(date, ticker, name, action, tech_score,
json.dumps(exit_flags, ensure_ascii=False),
json.dumps(issues, ensure_ascii=False), close, pnl_rate, reasons),
)
def _row_to_signal(r) -> dict:
d = dict(r)
d["exit_flags"] = json.loads(d.get("exit_flags") or "{}")
d["issues"] = json.loads(d.get("issues") or "[]")
return d
def get_holdings_signals(date: str) -> list:
with _conn() as conn:
rows = conn.execute(
"SELECT * FROM holdings_signals WHERE date=? ORDER BY ticker", (date,)).fetchall()
return [_row_to_signal(r) for r in rows]
def get_latest_holdings_date() -> str | None:
with _conn() as conn:
r = conn.execute("SELECT MAX(date) AS d FROM holdings_signals").fetchone()
return r["d"] if r and r["d"] else None
def get_holdings_signal_history(ticker: str, days: int = 30) -> list:
with _conn() as conn:
rows = conn.execute(
"SELECT * FROM holdings_signals WHERE ticker=? ORDER BY date DESC LIMIT ?",
(ticker, days)).fetchall()
return [_row_to_signal(r) for r in rows]
_conn()row_factory가sqlite3.Row인지 확인(기존 db.py 패턴). 아니면 dict 변환 보장.
-
Step 5: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_db.py -vExpected: PASS -
Step 6: Commit
git add stock/app/db.py stock/app/test_holdings_db.py
git commit -m "feat(stock): holdings_signals 테이블 + CRUD"
Task 1.2: get_holdings — 보유종목 + 현재가 + 손익 + KRX 판별
Files:
-
Create:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트
stock/app/test_holdings_intel.py:
from app import holdings_intel as hi
def test_get_holdings_merges_price_and_pnl(monkeypatch):
monkeypatch.setattr(hi.db, "get_all_portfolio", lambda: [
{"id": 1, "broker": "kis", "ticker": "005930", "name": "삼성전자",
"quantity": 10, "avg_price": 70000, "purchase_price": 70000},
{"id": 2, "broker": "kis", "ticker": "AAPL", "name": "Apple",
"quantity": 5, "avg_price": 200, "purchase_price": 200},
])
monkeypatch.setattr(hi.price_fetcher, "get_current_prices",
lambda tickers: {"005930": 77000}) # AAPL 미조회(비KRX)
monkeypatch.setattr(hi, "_krx_tickers", lambda: {"005930"})
hs = hi.get_holdings()
s = {h["ticker"]: h for h in hs}
assert s["005930"]["is_krx"] is True
assert round(s["005930"]["pnl_rate"], 1) == 10.0 # (77000-70000)/70000
assert s["AAPL"]["is_krx"] is False # KRX 외
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_get_holdings_merges_price_and_pnl -vExpected: FAIL -
Step 3: 구현 —
stock/app/holdings_intel.py:
"""보유종목 인텔리전스 — 순수연산 중심 (advisory). KIS 실주문 미사용."""
from __future__ import annotations
import datetime as dt
from typing import Any, Optional
from . import db
from . import price_fetcher
def _krx_tickers() -> set:
"""krx_master에 존재하는 ticker 집합 (KRX 판별용)."""
with db._conn() as conn:
try:
rows = conn.execute("SELECT ticker FROM krx_master").fetchall()
except Exception:
return set()
return {r["ticker"] for r in rows}
def get_holdings() -> list[dict]:
"""portfolio + 현재가 + pnl_rate + is_krx."""
items = db.get_all_portfolio()
tickers = [it["ticker"] for it in items]
prices = price_fetcher.get_current_prices(tickers) if tickers else {}
krx = _krx_tickers()
out = []
for it in items:
cur = prices.get(it["ticker"])
avg = it["avg_price"]
pnl = ((cur - avg) / avg * 100.0) if (cur and avg) else None
out.append({
**it,
"current_price": cur,
"pnl_rate": pnl,
"is_krx": it["ticker"] in krx,
})
return out
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): get_holdings (현재가·손익·KRX판별)"
Phase 2 — 기술분석 + 매도룰 + 액션 결정 (핵심 신규 로직)
Task 2.1: technical_posture — 스크리너 노드를 보유종목에 적용
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: registry 확인 — Run:
cd stock && python -c "from app.screener import registry; print(dir(registry))"로 SCORE 노드 레지스트리/기본 weights 접근법 확인. (예:registry.SCORE_REGISTRYdict[name->NodeClass],registry.DEFAULT_WEIGHTS. 실제 이름은 registry.py를 읽어 확인.) -
Step 2: 실패 테스트 —
test_holdings_intel.py에 추가:
import datetime as dt
import pandas as pd
def _toy_ctx(tickers=("005930",), n=300):
# 결정적 일봉으로 ScreenContext 유사 객체 구성
from app.screener.engine import ScreenContext
rows = []
base = dt.date(2025, 1, 1)
for t in tickers:
price = 1000
for i in range(n):
price = int(price * 1.002) # 완만한 상승 → 정배열
d = (base + dt.timedelta(days=i)).isoformat()
rows.append({"ticker": t, "date": d, "open": price, "high": price,
"low": price, "close": price, "volume": 1000, "value": price*1000})
prices = pd.DataFrame(rows)
master = pd.DataFrame({"name": [f"n{t}" for t in tickers],
"market": ["KOSPI"]*len(tickers),
"market_cap": [1e12]*len(tickers)},
index=pd.Index(tickers, name="ticker"))
flow = pd.DataFrame(columns=["ticker","date","foreign_net","institution_net"])
return ScreenContext(master=master, prices=prices, flow=flow,
kospi=pd.Series(dtype=float), asof=base+dt.timedelta(days=n-1))
def test_technical_posture_returns_scores():
ctx = _toy_ctx(("005930",))
scores = hi.technical_posture(ctx, ["005930"])
assert "005930" in scores
assert 0.0 <= scores["005930"] <= 100.0 # 상승추세 → 양수 점수
-
Step 3: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_technical_posture_returns_scores -vExpected: FAIL -
Step 4: 구현 —
holdings_intel.py에 추가 (registry의 실제 SCORE 노드/weights 이름은 Step 1에서 확인한 것을 사용):
from .screener.engine import combine
# 보유종목 매수강도에 쓸 score 노드 (registry에서 인스턴스화).
# registry.py 실제 구조에 맞춰 import — 아래는 직접 인스턴스화 예시.
def _score_nodes_and_weights():
# NODE_REGISTRY(검증됨): {"momentum": Momentum20, "rs_rating": RsRating, "ma_alignment": MaAlignment, ...}
from .screener.registry import NODE_REGISTRY
weights = {"ma_alignment": 0.4, "momentum": 0.3, "rs_rating": 0.3}
nodes = [NODE_REGISTRY[k]() for k in weights]
return nodes, weights
def technical_posture(ctx, tickers: list[str]) -> dict[str, float]:
"""보유종목 restrict 후 score 노드 → 매수강도(0~100)."""
scoped = ctx.restrict(tickers)
if scoped.prices.empty:
return {}
nodes, weights = _score_nodes_and_weights()
scores = {}
for n in nodes:
try:
scores[n.name] = n.compute(scoped, {})
except Exception:
scores[n.name] = pd.Series(0.0, index=scoped.master.index)
total = combine(scores, weights)
return {t: float(total.get(t, 0.0)) for t in tickers if t in total.index}
Step 1에서 확인한 노드 클래스명/모듈경로/
Momentum·RsRating실제 이름에 맞춰 import 수정.compute가 빈 params 허용하는지 확인(MaAlignment는 default_params 사용 →{}OK).
-
Step 5: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py -vExpected: PASS -
Step 6: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): technical_posture (스크리너 노드 보유종목 적용)"
Task 2.2: exit_rules — 손절·MA이탈·익절·클라이맥스 (가격 기반 flag)
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 —
test_holdings_intel.py에 추가:
def _ticker_prices(closes, vols=None):
n = len(closes)
base = dt.date(2025, 1, 1)
vols = vols or [1000]*n
return pd.DataFrame({
"ticker": ["005930"]*n,
"date": [(base+dt.timedelta(days=i)).isoformat() for i in range(n)],
"open": closes, "high": closes, "low": closes, "close": closes, "volume": vols,
})
DEFAULT_EXIT = {"stop_pct": 0.08, "take_pct": 0.25, "climax_vol_x": 3.0}
def test_exit_rules_stop_and_ma():
closes = [1000]*60 + [1100]*200 # 충분한 길이, 최근 평탄
df = _ticker_prices(closes)
# 현재가가 평단(2000) 대비 -45% → stop_loss
flags = hi.exit_rules({"avg_price": 2000, "current_price": 1100}, df, DEFAULT_EXIT)
assert flags["stop_loss"] is True
# 종가 1100 > MA50≈1100, MA200은 더 낮음 → ma 이탈 아님
assert flags["ma200_break"] is False
def test_exit_rules_take_profit():
df = _ticker_prices([1000]*260)
flags = hi.exit_rules({"avg_price": 1000, "current_price": 1300}, df, DEFAULT_EXIT)
assert flags["take_profit"] is True # +30% ≥ 25%
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py -k exit_rules -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
def _ma(closes: "pd.Series", window: int) -> Optional[float]:
if len(closes) < window:
return None
return float(closes.rolling(window).mean().iloc[-1])
def exit_rules(holding: dict, ticker_prices: "pd.DataFrame", params: dict) -> dict:
"""가격 기반 청산/리스크 flag. (momentum_loss는 compute 단계에서 합산.)"""
flags = {"stop_loss": False, "ma50_break": False, "ma200_break": False,
"take_profit": False, "climax": False}
avg = holding.get("avg_price")
cur = holding.get("current_price")
if ticker_prices is None or ticker_prices.empty:
closes = pd.Series(dtype=float)
else:
closes = ticker_prices.sort_values("date")["close"].astype(float).reset_index(drop=True)
last_close = float(closes.iloc[-1]) if len(closes) else cur
if cur is None:
cur = last_close
if cur and avg:
if cur < avg * (1 - params["stop_pct"]):
flags["stop_loss"] = True
if (cur - avg) / avg >= params["take_pct"]:
flags["take_profit"] = True
ma50 = _ma(closes, 50)
ma200 = _ma(closes, 200)
if ma50 is not None and last_close is not None and last_close < ma50:
flags["ma50_break"] = True
if ma200 is not None and last_close is not None and last_close < ma200:
flags["ma200_break"] = True
# climax: 최근 거래량이 20일 평균의 climax_vol_x배 이상 + 종가가 당일 고점 대비 하단(상단꼬리)
if ticker_prices is not None and not ticker_prices.empty and len(ticker_prices) >= 21:
tp = ticker_prices.sort_values("date")
vol = tp["volume"].astype(float).reset_index(drop=True)
avg_vol = vol.iloc[-21:-1].mean()
last_vol = vol.iloc[-1]
hi_ = float(tp["high"].astype(float).iloc[-1])
cl_ = float(tp["close"].astype(float).iloc[-1])
if avg_vol and last_vol >= avg_vol * params["climax_vol_x"] and hi_ > 0 and cl_ < hi_ * 0.97:
flags["climax"] = True
return flags
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py -k exit_rules -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): exit_rules (손절·MA이탈·익절·클라이맥스)"
Task 2.3: decide_action — 매수강도+flag → 액션 매트릭스
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 — 추가:
def test_decide_action_matrix():
# 강건 + 이탈 없음 + 높은 강도 → add
a, r = hi.decide_action(tech_score=80, exit_flags={}, pnl=5)
assert a == "add"
# ma200 이탈 → sell
a, r = hi.decide_action(70, {"ma200_break": True}, 2)
assert a == "sell"
# stop_loss → sell
a, _ = hi.decide_action(70, {"stop_loss": True}, -10)
assert a == "sell"
# ma50 이탈만 → trim
a, _ = hi.decide_action(60, {"ma50_break": True}, 3)
assert a == "trim"
# 이탈 없음 보통 강도 → hold
a, _ = hi.decide_action(50, {}, 1)
assert a == "hold"
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_decide_action_matrix -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
ADD_SCORE = 70.0 # 이 이상이면 추가매수 후보
def decide_action(tech_score: float, exit_flags: dict, pnl: float | None) -> tuple[str, str]:
"""우선순위: sell > trim > add > hold. 근거 텍스트 동봉."""
reasons = []
# 청산 (최우선)
if exit_flags.get("stop_loss"):
reasons.append("손절선 이탈")
if exit_flags.get("ma200_break"):
reasons.append("MA200 이탈")
if reasons:
return "sell", " · ".join(reasons)
# 축소
if exit_flags.get("ma50_break"):
reasons.append("MA50 이탈")
if exit_flags.get("momentum_loss"):
reasons.append("모멘텀 소멸")
if exit_flags.get("take_profit"):
reasons.append(f"목표 수익 도달(+{pnl:.0f}%)" if pnl is not None else "목표 수익 도달")
if exit_flags.get("climax"):
reasons.append("거래량 급증 분산 의심")
if reasons:
return "trim", " · ".join(reasons)
# 추가매수
if tech_score is not None and tech_score >= ADD_SCORE:
return "add", f"기술적 강도 양호({tech_score:.0f})"
return "hold", "특이 신호 없음"
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_decide_action_matrix -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): decide_action 매트릭스 (sell>trim>add>hold)"
Phase 3 — 이슈 감지 + 포트 건강
Task 3.1: market_events — 급변·거래량·외인 (기존 데이터)
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 — 추가:
DEFAULT_EVENT = {"move_pct": 7.0, "vol_z": 2.5}
def test_market_events_detects_move_and_volume():
closes = [1000]*30 + [1100] # 마지막날 +10%
vols = [1000]*30 + [10000] # 거래량 급증
df = _ticker_prices(closes, vols)
evts = hi.market_events("005930", df, None, DEFAULT_EVENT)
types = {e["type"] for e in evts}
assert "price_move" in types
assert "volume_surge" in types
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_market_events_detects_move_and_volume -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
def market_events(ticker: str, ticker_prices: "pd.DataFrame",
ticker_flow: "pd.DataFrame | None", params: dict) -> list[dict]:
"""일봉/flow 기반 시장 이벤트 (급변·거래량 Z·외인 순매도)."""
events = []
if ticker_prices is None or ticker_prices.empty or len(ticker_prices) < 2:
return events
tp = ticker_prices.sort_values("date").reset_index(drop=True)
close = tp["close"].astype(float)
pct = (close.iloc[-1] - close.iloc[-2]) / close.iloc[-2] * 100.0 if close.iloc[-2] else 0.0
if abs(pct) >= params["move_pct"]:
events.append({"type": "price_move", "severity": "high" if abs(pct) >= params["move_pct"]*1.5 else "med",
"summary": f"전일 대비 {pct:+.1f}%"})
vol = tp["volume"].astype(float)
if len(vol) >= 21:
base = vol.iloc[-21:-1]
mu, sd = base.mean(), base.std(ddof=0)
if sd and (vol.iloc[-1] - mu) / sd >= params["vol_z"]:
events.append({"type": "volume_surge", "severity": "med",
"summary": f"거래량 평소 대비 급증(Z={ (vol.iloc[-1]-mu)/sd:.1f })"})
if ticker_flow is not None and not ticker_flow.empty:
tf = ticker_flow.sort_values("date")
recent = tf["foreign_net"].astype(float).iloc[-3:]
if len(recent) >= 3 and (recent < 0).all():
events.append({"type": "foreign_selling", "severity": "med",
"summary": "외국인 3일 연속 순매도"})
return events
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_market_events_detects_move_and_volume -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): market_events (급변·거래량Z·외인순매도)"
Task 3.2: news_issues — news_sentiment 기반 악재 flag (+LLM best-effort)
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 — 추가:
def test_news_issues_flags_negative_sentiment(monkeypatch):
# news_sentiment: 005930 음수 점수 → 악재 flag
monkeypatch.setattr(hi, "_news_sentiment_map", lambda date: {
"005930": {"score_raw": -0.6, "news_count": 8}})
issues = hi.news_issues(["005930"], date="2026-05-29", use_llm=False)
assert "005930" in issues
assert issues["005930"][0]["type"] == "news"
assert issues["005930"][0]["severity"] in ("med", "high")
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_news_issues_flags_negative_sentiment -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
NEG_SENTIMENT = -0.3 # 이하면 악재 후보
def _news_sentiment_map(date: str) -> dict:
with db._conn() as conn:
try:
rows = conn.execute(
"SELECT ticker, score_raw, news_count FROM news_sentiment WHERE date=?",
(date,)).fetchall()
except Exception:
return {}
return {r["ticker"]: {"score_raw": r["score_raw"], "news_count": r["news_count"]} for r in rows}
def news_issues(tickers: list[str], date: str, use_llm: bool = True) -> dict[str, list]:
"""news_sentiment 음수 → 악재 flag. (LLM 요약은 best-effort, 기본 비활성 테스트.)"""
senti = _news_sentiment_map(date)
out: dict[str, list] = {}
for t in tickers:
s = senti.get(t)
if not s or s["score_raw"] is None:
continue
if s["score_raw"] <= NEG_SENTIMENT:
sev = "high" if s["score_raw"] <= NEG_SENTIMENT * 2 else "med"
out.setdefault(t, []).append({
"type": "news", "severity": sev,
"summary": f"부정 뉴스 감성({s['score_raw']:+.2f}, {s.get('news_count',0)}건)",
})
return out
LLM 요약(
use_llm=True)은 후속 — articles가 종목 태깅이 없어 회사명 substring 매칭이 필요. v1은 sentiment 기반 flag로 충분(spec §3). LLM 통합은 Phase 4 compute에서 옵션으로 호출하되 실패 graceful.
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_news_issues_flags_negative_sentiment -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): news_issues (감성 기반 악재 flag)"
Task 3.3: portfolio_health — 집중도·시장mix·현금·손익
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 — 추가:
def test_portfolio_health():
holdings = [
{"ticker": "005930", "quantity": 10, "avg_price": 70000, "current_price": 77000,
"is_krx": True},
{"ticker": "000660", "quantity": 5, "avg_price": 100000, "current_price": 90000,
"is_krx": True},
]
h = hi.portfolio_health(holdings, total_cash=1000000)
assert h["positions"] == 2
assert 0 <= h["max_weight"] <= 1.0
assert "total_eval" in h and "total_pnl" in h and "cash_ratio" in h
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_portfolio_health -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
def portfolio_health(holdings: list[dict], total_cash: int = 0) -> dict:
"""비중 집중도(최대비중·HHI) + 시장 mix + 현금비중 + 총손익."""
evals, buys = [], []
for h in holdings:
cur = h.get("current_price") or h.get("avg_price") or 0
ev = cur * h.get("quantity", 0)
bu = (h.get("avg_price") or 0) * h.get("quantity", 0)
evals.append(ev); buys.append(bu)
total_eval = sum(evals)
total_buy = sum(buys)
weights = [e / total_eval for e in evals] if total_eval else []
hhi = sum(w*w for w in weights)
total_assets = total_eval + (total_cash or 0)
return {
"positions": len(holdings),
"total_eval": total_eval,
"total_buy": total_buy,
"total_pnl": total_eval - total_buy,
"total_pnl_rate": ((total_eval - total_buy) / total_buy * 100.0) if total_buy else 0.0,
"max_weight": max(weights) if weights else 0.0,
"hhi": round(hhi, 4),
"cash_ratio": ((total_cash or 0) / total_assets) if total_assets else 0.0,
}
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_portfolio_health -vExpected: PASS -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): portfolio_health (집중도·현금·손익)"
Phase 4 — compute_and_store + 브리핑 조립 + API
Task 4.1: compute_and_store + build_holdings_brief
Files:
-
Modify:
stock/app/holdings_intel.py -
Test:
stock/app/test_holdings_intel.py -
Step 1: 실패 테스트 — 추가 (DB + ctx 통합; monkeypatch로 ScreenContext.load·get_holdings·news를 결정적으로):
def test_compute_and_store_and_brief(monkeypatch):
import os, tempfile
from app import db
monkeypatch.setattr(db, "DB_PATH", os.path.join(tempfile.mkdtemp(), "stock.db"))
db.init_db()
monkeypatch.setattr(hi, "get_holdings", lambda: [
{"ticker": "005930", "name": "삼성전자", "quantity": 10, "avg_price": 1000,
"current_price": 1100, "pnl_rate": 10.0, "is_krx": True}])
ctx = _toy_ctx(("005930",))
monkeypatch.setattr(hi, "_load_ctx", lambda asof: ctx)
monkeypatch.setattr(hi, "_news_sentiment_map", lambda date: {})
monkeypatch.setattr(hi.db, "get_all_broker_cash", lambda: [{"broker":"kis","cash":500000}])
res = hi.compute_and_store(asof=ctx.asof, use_llm=False)
assert res["stored"] == 1
brief = hi.build_holdings_brief()
assert brief["holdings"][0]["ticker"] == "005930"
assert "portfolio_health" in brief
assert brief["holdings"][0]["action"] in ("add","hold","trim","sell")
-
Step 2: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py::test_compute_and_store_and_brief -vExpected: FAIL -
Step 3: 구현 —
holdings_intel.py에 추가:
DEFAULT_PARAMS = {"stop_pct": 0.08, "take_pct": 0.25, "climax_vol_x": 3.0,
"move_pct": 7.0, "vol_z": 2.5, "momentum_drop": 15.0, "momentum_low": 35.0}
def _load_ctx(asof: dt.date):
from .screener.engine import ScreenContext
with db._conn() as conn:
return ScreenContext.load(conn, asof)
def _today_kst() -> dt.date:
return (dt.datetime.utcnow() + dt.timedelta(hours=9)).date()
def compute_and_store(asof: Optional[dt.date] = None, use_llm: bool = True,
params: dict | None = None) -> dict:
"""보유종목 시그널 계산 → holdings_signals upsert (멱등)."""
asof = asof or _today_kst()
p = {**DEFAULT_PARAMS, **(params or {})}
holdings = get_holdings()
if not holdings:
return {"stored": 0, "reason": "no_holdings"}
krx = [h for h in holdings if h.get("is_krx")]
ctx = _load_ctx(asof)
posture = technical_posture(ctx, [h["ticker"] for h in krx]) if krx else {}
issues_map = news_issues([h["ticker"] for h in holdings], asof.isoformat(), use_llm=use_llm)
date_iso = asof.isoformat()
stored = 0
for h in holdings:
t = h["ticker"]
tp = ctx.prices[ctx.prices["ticker"] == t] if h.get("is_krx") else None
tf = ctx.flow[ctx.flow["ticker"] == t] if h.get("is_krx") else None
flags = exit_rules(h, tp, p) if h.get("is_krx") else {}
tech = posture.get(t)
# momentum_loss: 직전 저장 시그널 대비 하락 or 낮은 강도
prev = db.get_holdings_signal_history(t, days=2)
prev_score = next((r["tech_score"] for r in prev if r["date"] != date_iso), None)
if tech is not None and ((prev_score is not None and tech < prev_score - p["momentum_drop"])
or tech < p["momentum_low"]):
flags["momentum_loss"] = True
evts = market_events(t, tp, tf, p) if h.get("is_krx") else []
issues = list(issues_map.get(t, [])) + evts
action, reasons = decide_action(tech if tech is not None else 0.0, flags, h.get("pnl_rate"))
db.upsert_holdings_signal(
date=date_iso, ticker=t, name=h.get("name"), action=action,
tech_score=tech, exit_flags=flags, issues=issues,
close=h.get("current_price"), pnl_rate=h.get("pnl_rate"), reasons=reasons)
stored += 1
return {"stored": stored, "date": date_iso}
def build_holdings_brief(date: Optional[str] = None) -> dict:
"""최신 시그널 + 포트 건강 조립 (브리핑/UI payload)."""
date = date or db.get_latest_holdings_date()
if not date:
return {"date": None, "holdings": [], "portfolio_health": {}}
signals = db.get_holdings_signals(date)
holdings = get_holdings()
hmap = {h["ticker"]: h for h in holdings}
total_cash = sum(c.get("cash", 0) for c in db.get_all_broker_cash())
health = portfolio_health(holdings, total_cash=total_cash)
return {"date": date, "holdings": signals, "portfolio_health": health}
-
Step 4: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_intel.py -vExpected: PASS (전체) -
Step 5: Commit
git add stock/app/holdings_intel.py stock/app/test_holdings_intel.py
git commit -m "feat(stock): compute_and_store + build_holdings_brief"
Task 4.2: API 라우터 + main 등록
Files:
-
Modify:
stock/app/main.py -
Test:
stock/app/test_holdings_api.py -
Step 1: main.py 라우팅 패턴 확인 — Run:
cd stock && grep -nE "@app.(get|post)|include_router|FastAPI\(" app/main.py | head로 stock이@app.get직접 정의인지 라우터인지 확인. (stock/main.py는 직접@app.get패턴으로 보임 — 그에 맞춰 엔드포인트 추가.) -
Step 2: 실패 테스트
stock/app/test_holdings_api.py:
import os, tempfile, sys
from fastapi.testclient import TestClient
def _client(monkeypatch):
sys.path.insert(0, os.path.dirname(os.path.dirname(os.path.dirname(os.path.abspath(__file__)))))
from app import db
monkeypatch.setattr(db, "DB_PATH", os.path.join(tempfile.mkdtemp(), "stock.db"))
db.init_db()
from app.main import app
return TestClient(app)
def test_holdings_intel_endpoint(monkeypatch):
client = _client(monkeypatch)
r = client.get("/api/stock/holdings/intel")
assert r.status_code == 200
body = r.json()
assert "holdings" in body and "portfolio_health" in body
-
Step 3: 실패 확인 — Run:
cd stock && python -m pytest app/test_holdings_api.py -vExpected: FAIL (404) -
Step 4: 엔드포인트 추가 —
stock/app/main.py에 (from . import holdings_intelimport 추가, 기존@app.get패턴 사용):
from . import holdings_intel
@app.get("/api/stock/holdings/intel")
def holdings_intel_brief():
return holdings_intel.build_holdings_brief()
@app.get("/api/stock/holdings/intel/history")
def holdings_intel_history(ticker: str, days: int = 30):
from . import db
return {"ticker": ticker, "history": db.get_holdings_signal_history(ticker, days)}
@app.post("/api/stock/holdings/intel/run")
def holdings_intel_run(background_tasks: BackgroundTasks, use_llm: bool = True):
background_tasks.add_task(holdings_intel.compute_and_store, None, use_llm)
return {"ok": True, "queued": True}
확인됨: main.py의 기존 import는
from fastapi import FastAPI, Query, Header, Depends, HTTPException로BackgroundTasks가 없음 → 그 줄에, BackgroundTasks를 추가할 것.holdings_intel.compute_and_store(None, use_llm)은 첫 인자 asof=None(오늘) 의미.
-
Step 5: 통과 확인 — Run:
cd stock && python -m pytest app/test_holdings_api.py -vExpected: PASS -
Step 6: Commit
git add stock/app/main.py stock/app/test_holdings_api.py
git commit -m "feat(stock): holdings intel API (intel/history/run)"
Phase 5 — agent-office (EOD 계산·아침 브리핑·장중 가드)
Task 5.1: service_proxy 호출
Files:
-
Modify:
agent-office/app/service_proxy.py -
Step 1: 함수 추가 — stock 섹션에:
async def stock_holdings_run() -> Dict[str, Any]:
async with httpx.AsyncClient(timeout=120) as client:
resp = await client.post(f"{STOCK_URL}/api/stock/holdings/intel/run", params={"use_llm": True})
resp.raise_for_status()
return resp.json()
async def stock_holdings_brief() -> Dict[str, Any]:
resp = await _client.get(f"{STOCK_URL}/api/stock/holdings/intel")
resp.raise_for_status()
return resp.json()
파일 상단 httpx import /
_client패턴 확인 후 일치시킬 것.
- Step 2: import 확인 — Run:
cd agent-office && python -c "from app import service_proxy"Expected: 에러 없음 - Step 3: Commit
git add agent-office/app/service_proxy.py
git commit -m "feat(agent-office): stock holdings run/brief 프록시"
Task 5.2: 브리핑 텔레그램 포매터
Files:
-
Create:
agent-office/app/notifiers/telegram_stock.py(없으면 생성; 있으면 함수 추가) -
Test:
agent-office/tests/test_holdings_brief_format.py -
Step 1: 실패 테스트
agent-office/tests/test_holdings_brief_format.py:
from app.notifiers import telegram_stock as ts
def test_format_holdings_brief():
payload = {
"date": "2026-05-29",
"holdings": [
{"ticker": "005930", "name": "삼성전자", "action": "trim", "tech_score": 60.0,
"exit_flags": {"ma50_break": True}, "issues": [{"type":"news","severity":"high","summary":"악재"}],
"pnl_rate": 5.2, "reasons": "MA50 이탈"},
{"ticker": "000660", "name": "SK하이닉스", "action": "hold", "tech_score": 75.0,
"exit_flags": {}, "issues": [], "pnl_rate": -2.0, "reasons": "특이 신호 없음"},
],
"portfolio_health": {"positions": 2, "total_pnl_rate": 3.1, "max_weight": 0.6, "cash_ratio": 0.2},
}
txt = ts.format_holdings_brief(payload)
assert "삼성전자" in txt
assert "축소" in txt or "trim" in txt
assert "%" in txt
-
Step 2: 실패 확인 — Run:
cd agent-office && python -m pytest tests/test_holdings_brief_format.py -vExpected: FAIL -
Step 3: 구현 —
agent-office/app/notifiers/telegram_stock.py:
"""보유종목 인텔리전스 텔레그램 포매터 (advisory)."""
import logging
from typing import Any, Dict
logger = logging.getLogger("agent-office")
_ACTION_KR = {"add": "🟢 추가매수", "hold": "⚪ 보유", "trim": "🟡 축소", "sell": "🔴 매도"}
_SEV = {"high": "🔴", "med": "🟠", "low": "🟡"}
def format_holdings_brief(payload: Dict[str, Any]) -> str:
date = payload.get("date") or "?"
lines = [f"📊 <b>보유종목 인텔리전스</b> ({date})", ""]
ph = payload.get("portfolio_health") or {}
if ph:
lines.append(f"포트 손익 {ph.get('total_pnl_rate',0):+.1f}% · "
f"종목 {ph.get('positions',0)} · 최대비중 {ph.get('max_weight',0)*100:.0f}% · "
f"현금 {ph.get('cash_ratio',0)*100:.0f}%")
lines.append("")
for h in payload.get("holdings", []):
act = _ACTION_KR.get(h.get("action"), h.get("action", "?"))
pnl = h.get("pnl_rate")
pnl_txt = f"{pnl:+.1f}%" if pnl is not None else "—"
line = f"{act} <b>{h.get('name') or h.get('ticker')}</b> ({pnl_txt})"
if h.get("reasons"):
line += f" — {h['reasons']}"
lines.append(line)
for iss in (h.get("issues") or [])[:3]:
lines.append(f" {_SEV.get(iss.get('severity'),'•')} {iss.get('summary','')}")
lines.append("")
lines.append("ℹ️ 투자 판단 보조용 제안입니다(자동매매 아님).")
return "\n".join(lines)
async def send_holdings_brief(payload: Dict[str, Any]) -> None:
from ..telegram.messaging import send_raw
text = format_holdings_brief(payload)
try:
await send_raw(text)
except Exception as e:
logger.warning(f"[telegram_stock] holdings brief send failed: {e}")
-
Step 4: 통과 확인 — Run:
cd agent-office && python -m pytest tests/test_holdings_brief_format.py -vExpected: PASS -
Step 5: Commit
git add agent-office/app/notifiers/telegram_stock.py agent-office/tests/test_holdings_brief_format.py
git commit -m "feat(agent-office): 보유종목 브리핑 텔레그램 포매터"
Task 5.3: StockAgent 메서드 + 장중 가드 + scheduler cron
Files:
-
Modify:
agent-office/app/agents/stock.py -
Modify:
agent-office/app/scheduler.py -
Step 1: StockAgent 메서드 추가 —
agents/stock.pyStockAgent에:
async def run_holdings_eod(self) -> dict:
"""평일 16:40 — 보유종목 시그널 계산·저장."""
from ..service_proxy import stock_holdings_run
from ..db import create_task, update_task_status, add_log
task_id = create_task(self.agent_id, "holdings_eod", {})
try:
res = await stock_holdings_run()
update_task_status(task_id, "succeeded", res)
add_log(self.agent_id, f"holdings_eod: {res}", "info", task_id)
return {"ok": True, **res}
except Exception as e:
update_task_status(task_id, "failed", {"error": str(e)})
add_log(self.agent_id, f"holdings_eod 실패: {e}", "error", task_id)
return {"ok": False, "message": str(e)}
async def run_holdings_brief(self) -> dict:
"""평일 08:30 — 저장된 시그널 브리핑 텔레그램."""
from ..service_proxy import stock_holdings_brief
from ..notifiers.telegram_stock import send_holdings_brief
from ..db import create_task, update_task_status, add_log
task_id = create_task(self.agent_id, "holdings_brief", {})
try:
payload = await stock_holdings_brief()
await send_holdings_brief(payload)
update_task_status(task_id, "succeeded", {"date": payload.get("date"),
"count": len(payload.get("holdings", []))})
add_log(self.agent_id, f"holdings_brief 발송: {payload.get('date')}", "info", task_id)
return {"ok": True}
except Exception as e:
update_task_status(task_id, "failed", {"error": str(e)})
add_log(self.agent_id, f"holdings_brief 실패: {e}", "error", task_id)
return {"ok": False, "message": str(e)}
그리고 on_command에 분기 추가:
if command == "holdings_eod":
return await self.run_holdings_eod()
if command == "holdings_brief":
return await self.run_holdings_brief()
- Step 2: scheduler cron —
agent-office/app/scheduler.py에 wrapper + 등록:
async def _run_stock_holdings_eod():
agent = AGENT_REGISTRY.get("stock")
if agent:
await agent.run_holdings_eod()
async def _run_stock_holdings_brief():
agent = AGENT_REGISTRY.get("stock")
if agent:
await agent.run_holdings_brief()
init_scheduler() stock cron 그룹에:
scheduler.add_job(_run_stock_holdings_eod, "cron", day_of_week="mon-fri", hour=16, minute=40, id="stock_holdings_eod")
scheduler.add_job(_run_stock_holdings_brief, "cron", day_of_week="mon-fri", hour=8, minute=30, id="stock_holdings_brief")
장중 경량 가드(30분 간격 손절·급변 alert)는 후속 슬라이스로 분리 — 본 plan은 EOD 계산 + 아침 브리핑까지. (가드는 holdings_signals의 exit_flags + 현재가 비교가 필요해 별도 설계가 깔끔; spec §4.3은 다음 사이클로 명시.)
-
Step 3: import 확인 — Run:
cd agent-office && python -c "from app import scheduler; from app.agents.stock import StockAgent; from app.notifiers import telegram_stock"Expected: 에러 없음 -
Step 4: Commit
git add agent-office/app/agents/stock.py agent-office/app/scheduler.py
git commit -m "feat(agent-office): StockAgent holdings EOD(16:40)+브리핑(08:30) cron"
Note (장중 가드 분리): spec §4.3의 장중 경량 가드는 별도 후속 슬라이스로 미룬다(throttle/cap 설계가 로또 시그널 수준의 별도 작업). 본 plan은 EOD+아침브리핑으로 완결된 advisory 루프를 제공.
Phase 6 — web-ui 보유종목 인텔리전스 탭 (별도 repo: web-ui)
주의: web-ui는 별도 Git 저장소. 커밋은
web-ui/에서(feedback-commit-repo). 배포npm run release:nas수동. 먼저 feature 브랜치 생성.
Task 6.1: api.js 헬퍼
Files: Modify web-ui/src/api.js
- Step 1: 헬퍼 추가 — 기존
apiGet패턴 사용(확인됨):
export const stockHoldingsIntel = () => apiGet('/api/stock/holdings/intel');
export const stockHoldingsHistory = (ticker, days = 30) =>
apiGet(`/api/stock/holdings/intel/history?ticker=${ticker}&days=${days}`);
- Step 2: Commit (web-ui repo, feature 브랜치)
cd ../web-ui && git checkout -b feat/stock-holdings-ui && git add src/api.js && git commit -m "feat: 보유종목 인텔리전스 API 헬퍼"
Task 6.2: HoldingsIntel 컴포넌트 + 포트폴리오 페이지 통합
Files:
-
Create:
web-ui/src/pages/stock/HoldingsIntel.jsx(경로는 Step 1 확인 결과에 맞춤) -
Modify: stock/포트폴리오 페이지 컨테이너
-
Step 1: 페이지 구조 확인 — Run:
cd ../web-ui && ls src/pages/stock/ 2>/dev/null; grep -rln "portfolio\|Portfolio\|포트폴리오" src/pages/ | head로 포트폴리오 페이지 + 탭 패턴 + 기존 카드 컴포넌트 스타일 확인. -
Step 2: HoldingsIntel 컴포넌트 — 기존 카드/탭 컨벤션에 맞춰 작성 (액션별 색상, 이슈 severity 뱃지, 포트 건강 요약). 예시 골격:
import { useEffect, useState } from 'react';
import { stockHoldingsIntel } from '../../api';
const ACTION = { add: ['추가매수', '#22c55e'], hold: ['보유', '#94a3b8'],
trim: ['축소', '#f59e0b'], sell: ['매도', '#ef4444'] };
export default function HoldingsIntel() {
const [data, setData] = useState(null);
useEffect(() => { stockHoldingsIntel().then(setData).catch(() => {}); }, []);
if (!data) return null;
const ph = data.portfolio_health || {};
return (
<div className="holdings-intel">
<div className="hi-health">
손익 {(ph.total_pnl_rate ?? 0).toFixed(1)}% · 종목 {ph.positions ?? 0} ·
최대비중 {((ph.max_weight ?? 0) * 100).toFixed(0)}% · 현금 {((ph.cash_ratio ?? 0) * 100).toFixed(0)}%
</div>
{(data.holdings || []).map((h) => {
const [label, color] = ACTION[h.action] || [h.action, '#94a3b8'];
return (
<div key={h.ticker} className="hi-card">
<span className="hi-action" style={{ color }}>{label}</span>
<b>{h.name || h.ticker}</b>
<span>{h.pnl_rate != null ? `${h.pnl_rate.toFixed(1)}%` : '—'}</span>
<div className="hi-reasons">{h.reasons}</div>
{(h.issues || []).slice(0, 3).map((iss, i) => (
<div key={i} className={`hi-issue sev-${iss.severity}`}>{iss.summary}</div>
))}
</div>
);
})}
</div>
);
}
실제 디자인 토큰·CSS 클래스·탭 통합 지점은 Step 1에서 확인한 기존 포트폴리오 페이지 컨벤션에 맞춰 조정. 신규 라우트보다 기존 페이지 탭 통합 선호(feedback-new-page-or-tab).
-
Step 3: 페이지 통합 — Step 1에서 찾은 포트폴리오 페이지에 탭/섹션으로
<HoldingsIntel />추가. -
Step 4: 빌드 확인 — Run:
cd ../web-ui && npm run buildExpected: exit 0 -
Step 5: Commit (web-ui)
git add src/ && git commit -m "feat: 보유종목 인텔리전스 탭 (액션·이슈·포트건강)"
Phase 7 — 통합 검증
Task 7.1: 전체 회귀
- Step 1: stock 테스트 — Run:
cd stock && python -m pytest app/ -qExpected: 신규 통과 + 기존 회귀 없음(사전 실패가 있으면 별도 식별) - Step 2: agent-office 테스트 — Run:
cd agent-office && python -m pytest -qExpected: 신규 통과 + 기존 회귀 없음 - Step 3: 배포 후 수동 트리거 안내 — NAS 배포 후
POST /api/stock/holdings/intel/run으로 첫 시그널 생성,GET /api/stock/holdings/intel로 확인. 평일 EOD/아침 cron이 이후 자동 운영.
Self-Review 체크리스트 결과
- Spec 커버리지: 데이터모델(1.1) / get_holdings(1.2) / technical_posture(2.1) / 매도룰(2.2) / decide_action(2.3) / market_events(3.1) / news_issues(3.2) / portfolio_health(3.3) / compute+brief(4.1) / API(4.2) / agent-office(5.x) / UI(6.x). 장중 가드(spec §4.3)는 Phase 5 Note에서 후속 슬라이스로 명시 분리(스코프 관리).
- Placeholder: 모든 코드 step에 실제 코드. registry 노드명·main.py 라우팅 패턴·web-ui 컨벤션은 "Step에서 확인 후 맞춤" 명시(코드베이스 의존, 합리적).
- 타입 일관성: exit_flags dict 키(stop_loss/ma50_break/ma200_break/momentum_loss/take_profit/climax)가 exit_rules·decide_action·compute·포매터에서 일치. holdings_signals 컬럼 ↔ upsert ↔ build_brief ↔ telegram_stock 키 일치. action 값(add/hold/trim/sell) 전 구간 일치.