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Author SHA1 Message Date
agentson
24fa22e77b fix: overseas order rt_cd check, limit price premium, paper cash fallback (#151)
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Three fixes for overseas stock trading failures:

1. Price API exchange code mapping:
   - get_overseas_price() now applies _PRICE_EXCHANGE_MAP (NASD→NAS, NYSE→NYS, AMEX→AMS)
   - Price API HHDFS00000300 requires short exchange codes same as ranking API

2. rt_cd check in send_overseas_order():
   - Log WARNING (not INFO) when rt_cd != "0" (e.g., "주문가능금액이 부족합니다")
   - Caller (main.py) checks rt_cd == "0" before calling log_trade()
   - Prevents DB from recording failed orders as successful trades

3. Limit order price premium for BUY:
   - BUY limit price = current_price * 1.005 (0.5% premium)
   - SELL limit price = current_price (no premium)
   - Improves fill probability: KIS VTS only accepts limit orders,
     and last price is typically at or below ask

4. PAPER_OVERSEAS_CASH fallback (config + main.py):
   - New setting: PAPER_OVERSEAS_CASH = 50000.0 (USD)
   - When VTS overseas balance API fails/returns 0, use this as simulated cash
   - Applied in both trading_cycle() and run_daily_session()

5. Candidate price fallback:
   - If price API returns 0, use scanner candidate price as fallback

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-19 05:58:15 +09:00
cd1579058c Merge pull request 'fix: overseas order uses limit price, not hardcoded 0 (#149)' (#150) from feature/issue-149-overseas-limit-order-price into main
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Reviewed-on: #150
2026-02-19 05:50:31 +09:00
45b48fa7cd Merge pull request 'fix: overseas price API exchange code + VTS balance fallback (#147)' (#148) from feature/issue-147-overseas-price-balance-fix into main
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Reviewed-on: #148
2026-02-19 05:49:38 +09:00
agentson
3952a5337b docs: add requirements log entry for overseas limit order fix (#149)
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2026-02-18 23:54:18 +09:00
agentson
ccc97ebaa9 fix: use current_price for overseas limit orders (KIS VTS rejects market orders) (#149)
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KIS VTS (paper trading) rejects overseas market orders with:
  "모의투자 주문처리가 안되었습니다(지정가만 가능한 상품입니다)"

Root cause: send_overseas_order() was called with price=0.0 (market order)
in both trading_cycle() and run_daily_session(), even though current_price
was already computed correctly by Fix #147 (exchange code mapping).

Fix: pass current_price as the limit order price in both call sites.
Domestic broker send_order() keeps price=0 (market orders are fine on KRX).

Adds regression test TestOverseasBalanceParsing::test_overseas_buy_order_uses_limit_price
verifying price=182.5 is passed, not 0.0.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-18 23:53:15 +09:00
agentson
3a54db8948 fix: price API exchange code mapping and VTS overseas balance fallback (#147)
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- Apply _PRICE_EXCHANGE_MAP in get_overseas_price() to send short codes
  (NASD→NAS, NYSE→NYS, AMEX→AMS) required by HHDFS00000300 price API
- Add PAPER_OVERSEAS_CASH config setting (default $50,000) for simulated
  USD balance when VTS overseas balance API returns 0 in paper mode
- Fall back to scan candidate price when live price API returns 0
- Both fixes together resolve "no affordable quantity (cash=0, price=0)"
  which was preventing all overseas trade execution

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-18 23:48:14 +09:00
agentson
96e2ad4f1f fix: use smart rule-based fallback playbook when Gemini fails (issue #145)
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When gemini-2.5-flash quota is exhausted (20 RPD free tier), generate_playbook()
fell back to _defensive_playbook() which only had price_change_pct_below: -3.0 SELL
conditions — no BUY conditions — causing zero trades on US market despite scanner
finding strong momentum/oversold candidates.

Changes:
- Add _smart_fallback_playbook() that uses scanner signals to build BUY conditions:
  - momentum signal: BUY when volume_ratio_above=VOL_MULTIPLIER
  - oversold signal: BUY when rsi_below=RSI_OVERSOLD_THRESHOLD
  - always: SELL stop-loss at price_change_pct_below=-3.0
- Use _smart_fallback_playbook() instead of _defensive_playbook() on Gemini failure
- Add 10 new tests for _smart_fallback_playbook() covering momentum/oversold/empty cases
- Update existing test_gemini_failure_returns_defensive to match new behavior

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-18 22:23:57 +09:00
5 changed files with 445 additions and 6 deletions

View File

@@ -201,3 +201,68 @@
- `tests/test_brain.py`: 3개 테스트 추가 (override 전달, optimization 우회, 미지정 시 기존 동작 유지)
**이슈/PR:** #143
### 미국장 거래 미실행 근본 원인 분석 및 수정 (자율 실행 세션)
**배경:**
- 사용자 요청: "미국장 열면 프로그램 돌려서 거래 한 번도 못 한 거 꼭 원인 찾아서 해결해줘"
- 프로그램을 미국장 개장(9:30 AM EST) 전부터 실행하여 실시간 로그를 분석
**발견된 근본 원인 #1: Defensive Playbook — BUY 조건 없음**
- Gemini free tier (20 RPD) 소진 → `generate_playbook()` 실패 → `_defensive_playbook()` 폴백
- Defensive playbook은 `price_change_pct_below: -3.0 → SELL` 조건만 존재, BUY 조건 없음
- ScenarioEngine이 항상 HOLD 반환 → 거래 0건
**수정 #1 (PR #146, Issue #145):**
- `src/strategy/pre_market_planner.py`: `_smart_fallback_playbook()` 메서드 추가
- 스캐너 signal 기반 BUY 조건 생성: `momentum → volume_ratio_above`, `oversold → rsi_below`
- 기존 defensive stop-loss SELL 조건 유지
- Gemini 실패 시 defensive → smart fallback으로 전환
- 테스트 10개 추가
**발견된 근본 원인 #2: 가격 API 거래소 코드 불일치 + VTS 잔고 API 오류**
실제 로그:
```
Scenario matched for MRNX: BUY (confidence=80) ✓
Decision for EWUS (NYSE American): BUY (confidence=80) ✓
Skip BUY APLZ (NYSE American): no affordable quantity (cash=0.00, price=0.00) ✗
```
- `get_overseas_price()`: `NASD`/`NYSE`/`AMEX` 전송 → API가 `NAS`/`NYS`/`AMS` 기대 → 빈 응답 → `price=0`
- `VTTS3012R` 잔고 API: "ERROR : INPUT INVALID_CHECK_ACNO" → `total_cash=0`
- 결과: `_determine_order_quantity()` 가 0 반환 → 주문 건너뜀
**수정 #2 (PR #148, Issue #147):**
- `src/broker/overseas.py`: `_PRICE_EXCHANGE_MAP = _RANKING_EXCHANGE_MAP` 추가, 가격 API에 매핑 적용
- `src/config.py`: `PAPER_OVERSEAS_CASH: float = Field(default=50000.0)` — paper 모드 시뮬레이션 잔고
- `src/main.py`: 잔고 0일 때 PAPER_OVERSEAS_CASH 폴백, 가격 0일 때 candidate.price 폴백
- 테스트 8개 추가
**효과:**
- BUY 결정 → 실제 주문 전송까지의 파이프라인이 완전히 동작
- Paper 모드에서 KIS VTS 해외 잔고 API 오류에 관계없이 시뮬레이션 거래 가능
**이슈/PR:** #145, #146, #147, #148
### 해외주식 시장가 주문 거부 수정 (Fix #3, 연속 발견)
**배경:**
- Fix #147 적용 후 주문 전송 시작 → KIS VTS가 거부: "지정가만 가능한 상품입니다"
**근본 원인:**
- `trading_cycle()`, `run_daily_session()` 양쪽에서 `send_overseas_order(price=0.0)` 하드코딩
- `price=0``ORD_DVSN="01"` (시장가) 전송 → KIS VTS 거부
- Fix #147에서 이미 `current_price`를 올바르게 계산했으나 주문 시 미사용
**구현 결과:**
- `src/main.py`: 두 곳에서 `price=0.0``price=current_price`/`price=stock_data["current_price"]`
- `tests/test_main.py`: 회귀 테스트 `test_overseas_buy_order_uses_limit_price` 추가
**최종 확인 로그:**
```
Order result: 모의투자 매수주문이 완료 되었습니다. ✓
```
**이슈/PR:** #149, #150

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@@ -263,6 +263,19 @@ async def trading_cycle(
foreigner_net = 0.0 # Not available for overseas
price_change_pct = safe_float(price_data.get("output", {}).get("rate", "0"))
# Price API may return 0/empty for certain VTS exchange codes.
# Fall back to the scanner candidate's price so order sizing still works.
if current_price <= 0:
market_candidates_lookup = scan_candidates.get(market.code, {})
cand_lookup = market_candidates_lookup.get(stock_code)
if cand_lookup and cand_lookup.price > 0:
current_price = cand_lookup.price
logger.debug(
"Price API returned 0 for %s; using scanner price %.4f",
stock_code,
current_price,
)
# Calculate daily P&L %
pnl_pct = (
((total_eval - purchase_total) / purchase_total * 100)
@@ -744,6 +757,16 @@ async def run_daily_session(
price_change_pct = safe_float(
price_data.get("output", {}).get("rate", "0")
)
# Fall back to scanner candidate price if API returns 0.
if current_price <= 0:
cand_lookup = candidate_map.get(stock_code)
if cand_lookup and cand_lookup.price > 0:
current_price = cand_lookup.price
logger.debug(
"Price API returned 0 for %s; using scanner price %.4f",
stock_code,
current_price,
)
stock_data: dict[str, Any] = {
"stock_code": stock_code,
@@ -798,6 +821,10 @@ async def run_daily_session(
if total_cash <= 0 and settings.PAPER_OVERSEAS_CASH > 0:
total_cash = settings.PAPER_OVERSEAS_CASH
# VTS overseas balance API often returns 0; use paper fallback.
if total_cash <= 0 and settings.PAPER_OVERSEAS_CASH > 0:
total_cash = settings.PAPER_OVERSEAS_CASH
# Calculate daily P&L %
pnl_pct = (
((total_eval - purchase_total) / purchase_total * 100)

View File

@@ -1,7 +1,8 @@
"""Pre-market planner — generates DayPlaybook via Gemini before market open.
One Gemini API call per market per day. Candidates come from SmartVolatilityScanner.
On failure, returns a defensive playbook (all HOLD, no trades).
On failure, returns a smart rule-based fallback playbook that uses scanner signals
(momentum/oversold) to generate BUY conditions, avoiding the all-HOLD problem.
"""
from __future__ import annotations
@@ -134,7 +135,7 @@ class PreMarketPlanner:
except Exception:
logger.exception("Playbook generation failed for %s", market)
if self._settings.DEFENSIVE_PLAYBOOK_ON_FAILURE:
return self._defensive_playbook(today, market, candidates)
return self._smart_fallback_playbook(today, market, candidates, self._settings)
return self._empty_playbook(today, market)
def build_cross_market_context(
@@ -470,3 +471,99 @@ class PreMarketPlanner:
),
],
)
@staticmethod
def _smart_fallback_playbook(
today: date,
market: str,
candidates: list[ScanCandidate],
settings: Settings,
) -> DayPlaybook:
"""Rule-based fallback playbook when Gemini is unavailable.
Uses scanner signals (RSI, volume_ratio) to generate meaningful BUY
conditions instead of the all-SELL defensive playbook. Candidates are
already pre-qualified by SmartVolatilityScanner, so we trust their
signals and build actionable scenarios from them.
Scenario logic per candidate:
- momentum signal: BUY when volume_ratio exceeds scanner threshold
- oversold signal: BUY when RSI is below oversold threshold
- always: SELL stop-loss at -3.0% as guard
"""
stock_playbooks = []
for c in candidates:
scenarios: list[StockScenario] = []
if c.signal == "momentum":
scenarios.append(
StockScenario(
condition=StockCondition(
volume_ratio_above=settings.VOL_MULTIPLIER,
),
action=ScenarioAction.BUY,
confidence=80,
allocation_pct=10.0,
stop_loss_pct=-3.0,
take_profit_pct=5.0,
rationale=(
f"Rule-based BUY: momentum signal, "
f"volume={c.volume_ratio:.1f}x (fallback planner)"
),
)
)
elif c.signal == "oversold":
scenarios.append(
StockScenario(
condition=StockCondition(
rsi_below=settings.RSI_OVERSOLD_THRESHOLD,
),
action=ScenarioAction.BUY,
confidence=80,
allocation_pct=10.0,
stop_loss_pct=-3.0,
take_profit_pct=5.0,
rationale=(
f"Rule-based BUY: oversold signal, "
f"RSI={c.rsi:.0f} (fallback planner)"
),
)
)
# Always add stop-loss guard
scenarios.append(
StockScenario(
condition=StockCondition(price_change_pct_below=-3.0),
action=ScenarioAction.SELL,
confidence=90,
stop_loss_pct=-3.0,
rationale="Rule-based stop-loss (fallback planner)",
)
)
stock_playbooks.append(
StockPlaybook(
stock_code=c.stock_code,
scenarios=scenarios,
)
)
logger.info(
"Smart fallback playbook for %s: %d stocks with rule-based BUY/SELL conditions",
market,
len(stock_playbooks),
)
return DayPlaybook(
date=today,
market=market,
market_outlook=MarketOutlook.NEUTRAL,
default_action=ScenarioAction.HOLD,
stock_playbooks=stock_playbooks,
global_rules=[
GlobalRule(
condition="portfolio_pnl_pct < -2.0",
action=ScenarioAction.REDUCE_ALL,
rationale="Defensive: reduce on loss threshold",
),
],
)

View File

@@ -738,6 +738,83 @@ class TestOverseasBalanceParsing:
# Verify price API was called
mock_overseas_broker_with_empty_price.get_overseas_price.assert_called_once()
@pytest.fixture
def mock_overseas_broker_with_buy_scenario(self) -> MagicMock:
"""Create mock overseas broker that returns a valid price for BUY orders."""
broker = MagicMock()
broker.get_overseas_price = AsyncMock(
return_value={"output": {"last": "182.50"}}
)
broker.get_overseas_balance = AsyncMock(
return_value={
"output2": [
{
"frcr_evlu_tota": "100000.00",
"frcr_dncl_amt_2": "50000.00",
"frcr_buy_amt_smtl": "50000.00",
}
]
}
)
broker.send_overseas_order = AsyncMock(return_value={"msg1": "주문접수"})
return broker
@pytest.fixture
def mock_scenario_engine_buy(self) -> MagicMock:
"""Create mock scenario engine that returns BUY."""
engine = MagicMock(spec=ScenarioEngine)
engine.evaluate = MagicMock(return_value=_make_buy_match("AAPL"))
return engine
@pytest.mark.asyncio
async def test_overseas_buy_order_uses_limit_price(
self,
mock_domestic_broker: MagicMock,
mock_overseas_broker_with_buy_scenario: MagicMock,
mock_scenario_engine_buy: MagicMock,
mock_playbook: DayPlaybook,
mock_risk: MagicMock,
mock_db: MagicMock,
mock_decision_logger: MagicMock,
mock_context_store: MagicMock,
mock_criticality_assessor: MagicMock,
mock_telegram: MagicMock,
mock_overseas_market: MagicMock,
) -> None:
"""Overseas BUY order must use current_price (limit), not 0 (market).
KIS VTS rejects market orders for overseas paper trading.
Regression test for issue #149.
"""
mock_telegram.notify_trade_execution = AsyncMock()
with patch("src.main.log_trade"):
await trading_cycle(
broker=mock_domestic_broker,
overseas_broker=mock_overseas_broker_with_buy_scenario,
scenario_engine=mock_scenario_engine_buy,
playbook=mock_playbook,
risk=mock_risk,
db_conn=mock_db,
decision_logger=mock_decision_logger,
context_store=mock_context_store,
criticality_assessor=mock_criticality_assessor,
telegram=mock_telegram,
market=mock_overseas_market,
stock_code="AAPL",
scan_candidates={},
)
# Verify limit order was sent with actual price + 0.5% premium (issue #151), not 0.0
mock_overseas_broker_with_buy_scenario.send_overseas_order.assert_called_once()
call_kwargs = mock_overseas_broker_with_buy_scenario.send_overseas_order.call_args
sent_price = call_kwargs[1].get("price") or call_kwargs[0][4]
expected_price = round(182.5 * 1.005, 4) # 0.5% premium for BUY limit orders
assert sent_price == expected_price, (
f"Expected limit price {expected_price} (182.5 * 1.005) but got {sent_price}. "
"KIS VTS only accepts limit orders; BUY uses 0.5% premium to improve fill rate."
)
class TestScenarioEngineIntegration:
"""Test scenario engine integration in trading_cycle."""

View File

@@ -164,18 +164,23 @@ class TestGeneratePlaybook:
assert pb.market_outlook == MarketOutlook.NEUTRAL
@pytest.mark.asyncio
async def test_gemini_failure_returns_defensive(self) -> None:
async def test_gemini_failure_returns_smart_fallback(self) -> None:
planner = _make_planner()
planner._gemini.decide = AsyncMock(side_effect=RuntimeError("API timeout"))
# oversold candidate (signal="oversold", rsi=28.5)
candidates = [_candidate()]
pb = await planner.generate_playbook("KR", candidates, today=date(2026, 2, 8))
assert pb.default_action == ScenarioAction.HOLD
assert pb.market_outlook == MarketOutlook.NEUTRAL_TO_BEARISH
# Smart fallback uses NEUTRAL outlook (not NEUTRAL_TO_BEARISH)
assert pb.market_outlook == MarketOutlook.NEUTRAL
assert pb.stock_count == 1
# Defensive playbook has stop-loss scenarios
assert pb.stock_playbooks[0].scenarios[0].action == ScenarioAction.SELL
# Oversold candidate → first scenario is BUY, second is SELL stop-loss
scenarios = pb.stock_playbooks[0].scenarios
assert scenarios[0].action == ScenarioAction.BUY
assert scenarios[0].condition.rsi_below == 30
assert scenarios[1].action == ScenarioAction.SELL
@pytest.mark.asyncio
async def test_gemini_failure_empty_when_defensive_disabled(self) -> None:
@@ -657,3 +662,171 @@ class TestDefensivePlaybook:
assert pb.stock_count == 0
assert pb.market == "US"
assert pb.market_outlook == MarketOutlook.NEUTRAL
# ---------------------------------------------------------------------------
# Smart fallback playbook
# ---------------------------------------------------------------------------
class TestSmartFallbackPlaybook:
"""Tests for _smart_fallback_playbook — rule-based BUY/SELL on Gemini failure."""
def _make_settings(self) -> Settings:
return Settings(
KIS_APP_KEY="test",
KIS_APP_SECRET="test",
KIS_ACCOUNT_NO="12345678-01",
GEMINI_API_KEY="test",
RSI_OVERSOLD_THRESHOLD=30,
VOL_MULTIPLIER=2.0,
)
def test_momentum_candidate_gets_buy_on_volume(self) -> None:
candidates = [
_candidate(code="CHOW", signal="momentum", volume_ratio=13.64, rsi=100.0)
]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", candidates, settings
)
assert pb.stock_count == 1
sp = pb.stock_playbooks[0]
assert sp.stock_code == "CHOW"
# First scenario: BUY with volume_ratio_above
buy_sc = sp.scenarios[0]
assert buy_sc.action == ScenarioAction.BUY
assert buy_sc.condition.volume_ratio_above == 2.0
assert buy_sc.condition.rsi_below is None
assert buy_sc.confidence == 80
# Second scenario: stop-loss SELL
sell_sc = sp.scenarios[1]
assert sell_sc.action == ScenarioAction.SELL
assert sell_sc.condition.price_change_pct_below == -3.0
def test_oversold_candidate_gets_buy_on_rsi(self) -> None:
candidates = [
_candidate(code="005930", signal="oversold", rsi=22.0, volume_ratio=3.5)
]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "KR", candidates, settings
)
sp = pb.stock_playbooks[0]
buy_sc = sp.scenarios[0]
assert buy_sc.action == ScenarioAction.BUY
assert buy_sc.condition.rsi_below == 30
assert buy_sc.condition.volume_ratio_above is None
def test_all_candidates_have_stop_loss_sell(self) -> None:
candidates = [
_candidate(code="AAA", signal="momentum", volume_ratio=5.0),
_candidate(code="BBB", signal="oversold", rsi=25.0),
]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_NASDAQ", candidates, settings
)
assert pb.stock_count == 2
for sp in pb.stock_playbooks:
sell_scenarios = [s for s in sp.scenarios if s.action == ScenarioAction.SELL]
assert len(sell_scenarios) == 1
assert sell_scenarios[0].condition.price_change_pct_below == -3.0
assert sell_scenarios[0].condition.price_change_pct_below == -3.0
def test_market_outlook_is_neutral(self) -> None:
candidates = [_candidate(signal="momentum", volume_ratio=5.0)]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", candidates, settings
)
assert pb.market_outlook == MarketOutlook.NEUTRAL
def test_default_action_is_hold(self) -> None:
candidates = [_candidate(signal="momentum", volume_ratio=5.0)]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", candidates, settings
)
assert pb.default_action == ScenarioAction.HOLD
def test_has_global_reduce_all_rule(self) -> None:
candidates = [_candidate(signal="momentum", volume_ratio=5.0)]
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", candidates, settings
)
assert len(pb.global_rules) == 1
rule = pb.global_rules[0]
assert rule.action == ScenarioAction.REDUCE_ALL
assert "portfolio_pnl_pct" in rule.condition
def test_empty_candidates_returns_empty_playbook(self) -> None:
settings = self._make_settings()
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", [], settings
)
assert pb.stock_count == 0
def test_vol_multiplier_applied_from_settings(self) -> None:
"""VOL_MULTIPLIER=3.0 should set volume_ratio_above=3.0 for momentum."""
candidates = [_candidate(signal="momentum", volume_ratio=5.0)]
settings = self._make_settings()
settings = settings.model_copy(update={"VOL_MULTIPLIER": 3.0})
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "US_AMEX", candidates, settings
)
buy_sc = pb.stock_playbooks[0].scenarios[0]
assert buy_sc.condition.volume_ratio_above == 3.0
def test_rsi_oversold_threshold_applied_from_settings(self) -> None:
"""RSI_OVERSOLD_THRESHOLD=25 should set rsi_below=25 for oversold."""
candidates = [_candidate(signal="oversold", rsi=22.0)]
settings = self._make_settings()
settings = settings.model_copy(update={"RSI_OVERSOLD_THRESHOLD": 25})
pb = PreMarketPlanner._smart_fallback_playbook(
date(2026, 2, 17), "KR", candidates, settings
)
buy_sc = pb.stock_playbooks[0].scenarios[0]
assert buy_sc.condition.rsi_below == 25
@pytest.mark.asyncio
async def test_generate_playbook_uses_smart_fallback_on_gemini_error(self) -> None:
"""generate_playbook() should use smart fallback (not defensive) on API failure."""
planner = _make_planner()
planner._gemini.decide = AsyncMock(side_effect=ConnectionError("429 quota exceeded"))
# momentum candidate
candidates = [
_candidate(code="CHOW", signal="momentum", volume_ratio=13.64, rsi=100.0)
]
pb = await planner.generate_playbook(
"US_AMEX", candidates, today=date(2026, 2, 18)
)
# Should NOT be all-SELL defensive; should have BUY for momentum
assert pb.stock_count == 1
buy_scenarios = [
s for s in pb.stock_playbooks[0].scenarios
if s.action == ScenarioAction.BUY
]
assert len(buy_scenarios) == 1
assert buy_scenarios[0].condition.volume_ratio_above == 2.0 # VOL_MULTIPLIER default