Serve live recommendation context on trade setup APIs and alerts
Stored TradeSetup rows are point-in-time snapshots from the RR scan, so
the ticker page could show stale confidence/reasoning/composite (e.g.
sentiment=neutral in the setup card while the sentiment panel showed
bullish). Overlay current score/sentiment context onto the API payload
for GET /trades and GET /trades/{symbol}, gate and format Telegram
qualified-setup alerts on the same live values, and apply the
min_confidence/recommended_action filters after the overlay so they
judge what the caller actually sees. Stored setups stay frozen for
outcome analysis and backtests.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
This commit is contained in:
@@ -34,6 +34,7 @@ async def list_trade_setups(
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direction=direction,
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min_confidence=min_confidence,
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recommended_action=recommended_action,
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live_recommendation=True,
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)
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data = []
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@@ -92,7 +93,12 @@ async def get_ticker_trade_setups(
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_user=Depends(require_access),
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db: AsyncSession = Depends(get_db),
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) -> APIEnvelope:
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rows = await get_trade_setups(db, symbol=symbol)
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rows = await get_trade_setups(
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db,
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symbol=symbol,
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live_recommendation=True,
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recompute_scores=True,
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)
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data = []
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for row in rows:
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summary = RecommendationSummaryResponse(
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@@ -254,7 +254,9 @@ async def _watchlist_tickers(db: AsyncSession) -> list[tuple[int, str]]:
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async def _qualified_setups(db: AsyncSession) -> list[dict]:
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setups = await get_trade_setups(db)
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# live_recommendation: gate and format on current score/sentiment context,
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# not the values frozen into the setup at scan time.
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setups = await get_trade_setups(db, live_recommendation=True)
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config = await get_activation_config(db)
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return [s for s in setups if setup_qualifies(SimpleNamespace(**s), config)]
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@@ -524,6 +524,56 @@ def _build_reasoning(
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)
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def build_recommendation_snapshot(
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dimension_scores: dict[str, float],
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sentiment_classification: str | None,
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config: dict[str, float],
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available_directions: set[str] | None = None,
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) -> dict[str, Any]:
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"""Build the ticker-level recommendation from the supplied live context."""
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conflicts = signal_conflict_detector.detect_conflicts(
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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config=config,
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)
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long_confidence = direction_analyzer.calculate_confidence(
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direction="long",
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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conflicts=conflicts,
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)
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short_confidence = direction_analyzer.calculate_confidence(
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direction="short",
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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conflicts=conflicts,
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)
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action = _choose_recommended_action(
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long_confidence, short_confidence, config, available_directions
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)
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reasoning = _build_reasoning(
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action=action,
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long_confidence=long_confidence,
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short_confidence=short_confidence,
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conflicts=conflicts,
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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config=config,
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available_directions=available_directions,
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)
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return {
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"action": action,
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"reasoning": reasoning,
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"risk_level": _risk_level_from_conflicts(conflicts),
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"long_confidence": long_confidence,
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"short_confidence": short_confidence,
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"conflicts": conflicts,
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}
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PRIMARY_TARGET_MIN_RR = 1.5
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@@ -559,24 +609,15 @@ async def enhance_trade_setup(
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) -> TradeSetup:
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config = await get_recommendation_config(db)
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conflicts = signal_conflict_detector.detect_conflicts(
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snapshot = build_recommendation_snapshot(
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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config=config,
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available_directions=available_directions,
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)
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long_confidence = direction_analyzer.calculate_confidence(
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direction="long",
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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conflicts=conflicts,
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)
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short_confidence = direction_analyzer.calculate_confidence(
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direction="short",
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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conflicts=conflicts,
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)
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conflicts = list(snapshot["conflicts"])
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long_confidence = float(snapshot["long_confidence"])
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short_confidence = float(snapshot["short_confidence"])
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direction = setup.direction.lower()
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confidence = long_confidence if direction == "long" else short_confidence
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@@ -622,19 +663,8 @@ async def enhance_trade_setup(
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# Action and reasoning are ticker-level: they consider both directions and
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# which directions are actually tradeable, and are identical on every setup.
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action = _choose_recommended_action(
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long_confidence, short_confidence, config, available_directions
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)
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reasoning = _build_reasoning(
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action=action,
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long_confidence=long_confidence,
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short_confidence=short_confidence,
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conflicts=conflicts,
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment_classification,
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config=config,
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available_directions=available_directions,
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)
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action = str(snapshot["action"])
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reasoning = str(snapshot["reasoning"])
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setup.confidence_score = round(confidence, 2)
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setup.targets_json = json.dumps(targets)
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@@ -27,7 +27,11 @@ from app.models.ticker import Ticker
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from app.models.trade_setup import TradeSetup
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from app.services.indicator_service import _extract_ohlcv, compute_atr
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from app.services.price_service import query_ohlcv
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from app.services.recommendation_service import enhance_trade_setup
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from app.services.recommendation_service import (
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build_recommendation_snapshot,
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enhance_trade_setup,
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get_recommendation_config,
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)
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logger = logging.getLogger(__name__)
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@@ -80,6 +84,110 @@ async def _get_latest_sentiment(db: AsyncSession, ticker_id: int) -> str | None:
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return row.classification if row else None
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async def _refresh_score_context_for_symbols(
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db: AsyncSession,
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symbols: set[str],
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) -> None:
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"""Refresh provider-free scores so live recommendation summaries match the page."""
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if not symbols:
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return
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from app.services import scoring_service
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refreshed = False
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for symbol in sorted(symbols):
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try:
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await scoring_service.compute_all_dimensions(db, symbol)
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await scoring_service.compute_composite_score(db, symbol)
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refreshed = True
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except Exception:
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logger.exception("Error refreshing live score context for %s", symbol)
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if refreshed:
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await db.commit()
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async def _apply_live_recommendation_context(
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db: AsyncSession,
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setup_rows: list[tuple[TradeSetup, str]],
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rows: list[dict],
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) -> list[dict]:
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"""Decorate latest setup rows with current score/sentiment recommendation data.
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This intentionally updates only the API payload. Stored trade setups and
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history remain point-in-time records for outcome analysis.
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"""
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if not rows or not setup_rows:
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return rows
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ticker_ids = {setup.ticker_id for setup, _ in setup_rows}
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setups_by_id = {setup.id: setup for setup, _ in setup_rows}
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directions_by_ticker: dict[int, set[str]] = {}
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for setup, _ in setup_rows:
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directions_by_ticker.setdefault(setup.ticker_id, set()).add(setup.direction.lower())
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dim_result = await db.execute(
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select(DimensionScore).where(DimensionScore.ticker_id.in_(ticker_ids))
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)
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dims_by_ticker: dict[int, dict[str, float]] = {}
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for ds in dim_result.scalars().all():
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dims_by_ticker.setdefault(ds.ticker_id, {})[ds.dimension] = float(ds.score)
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comp_result = await db.execute(
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select(CompositeScore)
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.where(CompositeScore.ticker_id.in_(ticker_ids))
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.order_by(CompositeScore.ticker_id, CompositeScore.computed_at.desc())
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)
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composites: dict[int, CompositeScore] = {}
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for comp in comp_result.scalars().all():
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composites.setdefault(comp.ticker_id, comp)
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sent_result = await db.execute(
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select(SentimentScore)
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.where(SentimentScore.ticker_id.in_(ticker_ids))
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.order_by(SentimentScore.ticker_id, SentimentScore.timestamp.desc())
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)
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sentiments: dict[int, SentimentScore] = {}
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for sent in sent_result.scalars().all():
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sentiments.setdefault(sent.ticker_id, sent)
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config = await get_recommendation_config(db)
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live_rows: list[dict] = []
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for row in rows:
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setup = setups_by_id.get(row["id"])
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if setup is None:
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live_rows.append(row)
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continue
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ticker_id = setup.ticker_id
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live_row = dict(row)
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comp = composites.get(ticker_id)
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if comp is not None:
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live_row["composite_score"] = float(comp.score)
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dimension_scores = dims_by_ticker.get(ticker_id)
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if dimension_scores:
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sentiment = sentiments.get(ticker_id)
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snapshot = build_recommendation_snapshot(
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dimension_scores=dimension_scores,
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sentiment_classification=sentiment.classification if sentiment else None,
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config=config,
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available_directions=directions_by_ticker.get(ticker_id),
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)
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direction = setup.direction.lower()
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confidence_key = "long_confidence" if direction == "long" else "short_confidence"
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live_row["confidence_score"] = round(float(snapshot[confidence_key]), 2)
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live_row["recommended_action"] = snapshot["action"]
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live_row["reasoning"] = snapshot["reasoning"]
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live_row["risk_level"] = snapshot["risk_level"]
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live_rows.append(live_row)
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return live_rows
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def _json_default(value):
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if isinstance(value, (datetime, date)):
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return value.isoformat()
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@@ -441,6 +549,8 @@ async def get_trade_setups(
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min_confidence: float | None = None,
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recommended_action: str | None = None,
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symbol: str | None = None,
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live_recommendation: bool = False,
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recompute_scores: bool = False,
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) -> list[dict]:
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"""Get latest stored trade setups, optionally filtered."""
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stmt = (
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@@ -451,9 +561,11 @@ async def get_trade_setups(
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stmt = stmt.where(TradeSetup.direction == direction.lower())
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if symbol is not None:
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stmt = stmt.where(Ticker.symbol == symbol.strip().upper())
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if min_confidence is not None:
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# With live_recommendation these fields are overlaid with current values
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# below, so filtering happens there instead of against the stored columns.
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if min_confidence is not None and not live_recommendation:
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stmt = stmt.where(TradeSetup.confidence_score >= min_confidence)
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if recommended_action is not None:
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if recommended_action is not None and not live_recommendation:
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stmt = stmt.where(TradeSetup.recommended_action == recommended_action)
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stmt = stmt.order_by(TradeSetup.detected_at.desc(), TradeSetup.id.desc())
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@@ -477,11 +589,38 @@ async def get_trade_setups(
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reverse=True,
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)
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if recompute_scores:
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await _refresh_score_context_for_symbols(
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db, {ticker_symbol for _, ticker_symbol in latest_rows}
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)
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prices = await _latest_closes(db, {s.ticker_id for s, _ in latest_rows})
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return [
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rows_out = [
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_trade_setup_to_dict(setup, ticker_symbol, prices.get(setup.ticker_id))
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for setup, ticker_symbol in latest_rows
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]
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if live_recommendation:
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rows_out = await _apply_live_recommendation_context(db, latest_rows, rows_out)
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if min_confidence is not None:
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rows_out = [
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row for row in rows_out
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if row["confidence_score"] is not None
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and row["confidence_score"] >= min_confidence
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]
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if recommended_action is not None:
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rows_out = [
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row for row in rows_out
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if row["recommended_action"] == recommended_action
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]
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rows_out.sort(
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key=lambda row: (
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row["confidence_score"] if row["confidence_score"] is not None else -1.0,
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row["rr_ratio"],
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row["composite_score"],
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),
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reverse=True,
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)
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return rows_out
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async def _latest_closes(db: AsyncSession, ticker_ids: set[int]) -> dict[int, float]:
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