Drop over-progressed setups via live R:R; refresh trades on fetch
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Answers "why does a too-far-progressed setup still show": setups are only
recalculated by the scheduled R:R scan and manual fetch; at creation
entry == current price (0% progress), so over-progression is a
between-scans drift effect and must be judged at read time.

- /trades now attaches current_price (latest close per ticker).
- Qualification drops setups whose R:R recomputed from the current price
  falls below min_rr — i.e. price already ran toward target (reward
  consumed) or through the stop. Reuses the existing min_rr threshold
  instead of a separate progress %; far cleaner (a 3:1 is already ~1:1
  by 33% progress). Skipped for historical setups (no current_price).
- Fix: useFetchSymbolData now invalidates the trades queries, so a fetch/
  recompute actually refreshes confidence/setups in the UI (was the cause
  of the stale 100% confidence lingering after recompute).

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
This commit is contained in:
2026-06-14 14:02:10 +02:00
parent a32f09c8ba
commit da83f027e1
7 changed files with 97 additions and 4 deletions
+1
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@@ -47,4 +47,5 @@ class TradeSetupResponse(BaseModel):
actual_outcome: str | None = None
outcome_date: date | None = None
evaluated_at: datetime | None = None
current_price: float | None = None
recommendation_summary: RecommendationSummaryResponse | None = None
+26
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@@ -20,6 +20,24 @@ def best_target_probability(setup: Any) -> float:
return max(probs, default=0.0)
def live_risk_reward(setup: Any, current_price: float) -> float | None:
"""R:R recomputed from the CURRENT price, not the (possibly stale) entry.
Returns None / a low value when the setup is no longer actionable: price
already at/past the target (no reward left) or through the stop. This is how
over-progressed setups get filtered without a separate 'max progress' knob.
"""
if setup.direction == "long":
reward = setup.target - current_price
risk = current_price - setup.stop_loss
else:
reward = current_price - setup.target
risk = setup.stop_loss - current_price
if reward <= 0 or risk <= 0:
return 0.0
return reward / risk
def setup_qualifies(setup: Any, config: dict) -> bool:
"""Whether a setup clears the activation gate.
@@ -28,6 +46,14 @@ def setup_qualifies(setup: Any, config: dict) -> bool:
"""
if setup.rr_ratio < config["min_rr"]:
return False
# Live R:R from the current price: drops setups whose price has already run
# toward the target (reward consumed) or through the stop. Only applied when
# a current price is attached (live list); skipped for historical setups.
current_price = getattr(setup, "current_price", None)
if current_price is not None:
live_rr = live_risk_reward(setup, float(current_price))
if live_rr is not None and live_rr < config["min_rr"]:
return False
if (setup.confidence_score or 0.0) < config["min_confidence"]:
return False
if config.get("require_high_conviction"):
+35 -4
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@@ -12,10 +12,11 @@ import json
import logging
from datetime import datetime, timezone
from sqlalchemy import select
from sqlalchemy import and_, func, select
from sqlalchemy.ext.asyncio import AsyncSession
from app.exceptions import NotFoundError
from app.models.ohlcv import OHLCVRecord
from app.models.score import CompositeScore, DimensionScore
from app.models.sentiment import SentimentScore
from app.models.sr_level import SRLevel
@@ -308,7 +309,32 @@ async def get_trade_setups(
reverse=True,
)
return [_trade_setup_to_dict(setup, ticker_symbol) for setup, ticker_symbol in latest_rows]
prices = await _latest_closes(db, {s.ticker_id for s, _ in latest_rows})
return [
_trade_setup_to_dict(setup, ticker_symbol, prices.get(setup.ticker_id))
for setup, ticker_symbol in latest_rows
]
async def _latest_closes(db: AsyncSession, ticker_ids: set[int]) -> dict[int, float]:
"""Most recent close per ticker — used to judge a setup's current relevance."""
if not ticker_ids:
return {}
latest = (
select(OHLCVRecord.ticker_id, func.max(OHLCVRecord.date).label("md"))
.where(OHLCVRecord.ticker_id.in_(ticker_ids))
.group_by(OHLCVRecord.ticker_id)
.subquery()
)
stmt = select(OHLCVRecord.ticker_id, OHLCVRecord.close).join(
latest,
and_(
OHLCVRecord.ticker_id == latest.c.ticker_id,
OHLCVRecord.date == latest.c.md,
),
)
result = await db.execute(stmt)
return {tid: float(close) for tid, close in result.all()}
async def get_trade_setup_history(
@@ -325,10 +351,14 @@ async def get_trade_setup_history(
result = await db.execute(stmt)
rows = result.all()
return [_trade_setup_to_dict(setup, ticker_symbol) for setup, ticker_symbol in rows]
prices = await _latest_closes(db, {s.ticker_id for s, _ in rows})
return [
_trade_setup_to_dict(setup, ticker_symbol, prices.get(setup.ticker_id))
for setup, ticker_symbol in rows
]
def _trade_setup_to_dict(setup: TradeSetup, symbol: str) -> dict:
def _trade_setup_to_dict(setup: TradeSetup, symbol: str, current_price: float | None = None) -> dict:
targets: list[dict] = []
conflicts: list[str] = []
@@ -367,4 +397,5 @@ def _trade_setup_to_dict(setup: TradeSetup, symbol: str) -> dict:
"actual_outcome": setup.actual_outcome,
"outcome_date": setup.outcome_date,
"evaluated_at": setup.evaluated_at,
"current_price": current_price,
}
+3
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@@ -40,6 +40,9 @@ export function useFetchSymbolData(options: UseFetchSymbolDataOptions = {}) {
queryClient.invalidateQueries({ queryKey: ['fundamentals', symbol] });
queryClient.invalidateQueries({ queryKey: ['sr-levels', symbol] });
queryClient.invalidateQueries({ queryKey: ['scores', symbol] });
// Fetch re-runs the scanner → setups/confidence change. Refresh both the
// per-ticker trades (['trades', symbol]) and the Overview list (['trades']).
queryClient.invalidateQueries({ queryKey: ['trades'] });
if (invalidatePipelineReadiness) {
queryClient.invalidateQueries({ queryKey: ['admin', 'pipeline-readiness'] });
+13
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@@ -13,12 +13,25 @@ export function primaryTargetProbability(setup: TradeSetup): number | null {
return setup.targets?.length ? bestTargetProbability(setup) : null;
}
/** R:R recomputed from the current price (0 if no reward/risk left). */
export function liveRiskReward(setup: TradeSetup, currentPrice: number): number {
const reward = setup.direction === 'long' ? setup.target - currentPrice : currentPrice - setup.target;
const risk = setup.direction === 'long' ? currentPrice - setup.stop_loss : setup.stop_loss - currentPrice;
if (reward <= 0 || risk <= 0) return 0;
return reward / risk;
}
/**
* Whether a setup clears the activation gate. Mirrors the backend predicate in
* app/services/qualification.py — keep the two in sync.
*/
export function qualifiesSetup(setup: TradeSetup, config: ActivationConfig): boolean {
if (setup.rr_ratio < config.min_rr) return false;
// Live R:R from current price — drops setups whose price has already run
// toward target (reward consumed) or through the stop.
if (setup.current_price != null && liveRiskReward(setup, setup.current_price) < config.min_rr) {
return false;
}
if ((setup.confidence_score ?? 0) < config.min_confidence) return false;
if (config.require_high_conviction && !HIGH_CONVICTION_ACTIONS.has(setup.recommended_action ?? '')) {
return false;
+1
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@@ -130,6 +130,7 @@ export interface TradeSetup {
actual_outcome: string | null;
outcome_date: string | null;
evaluated_at: string | null;
current_price: number | null;
recommendation_summary?: RecommendationSummary;
}
+18
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@@ -56,6 +56,24 @@ class TestSetupQualifies:
def test_no_targets_fails_when_probability_required(self):
assert setup_qualifies(_setup(targets=[]), FULL_GATE) is False
def test_over_progressed_setup_fails_on_live_rr(self):
# long target 120, stop 95; price already at 117 → live R:R ≈ 0.14
s = _setup(direction="long", target=120.0, stop_loss=95.0, current_price=117.0)
assert setup_qualifies(s, FULL_GATE) is False
def test_fresh_setup_passes_live_rr(self):
# price near entry (100): live R:R ≈ 3.2, well above min
s = _setup(direction="long", target=120.0, stop_loss=95.0, current_price=101.0)
assert setup_qualifies(s, FULL_GATE) is True
def test_past_stop_fails_live_rr(self):
s = _setup(direction="long", target=120.0, stop_loss=95.0, current_price=94.0)
assert setup_qualifies(s, FULL_GATE) is False
def test_no_current_price_skips_live_check(self):
# Historical setups have no current_price → live check skipped
assert setup_qualifies(_setup(), FULL_GATE) is True
def test_conviction_filters_can_be_disabled(self):
relaxed = {
"min_rr": 2.0,