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signal-platform/app/models/regime_snapshot.py
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dennisthiessen ebff19940b
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feat: add standalone AI/Tech regime-change monitor tab
A new /regime tab scoring how far the AI/Tech bull regime has deteriorated
toward a re-rating as a single 0-100 index with per-signal breakdown and a
7/30-day trend. Intentionally decoupled: nothing reads its output to gate or
score trades — the daily-pipeline membership is scheduling only.

- regime_monitor_service: price sub-scores (P1-P6 via Alpaca, like
  market_regime), VIX + HY credit spreads via a small FRED helper, weighted
  aggregation over available signals (missing source -> n/a, dropped from the
  denominator), one snapshot row/day, and a ~90-day history backfill by
  replaying the already-fetched series as-of each past day.
- F1/F3 fundamentals proposed by the configured grounded LLM (reuses
  sentiment_provider_service config resolution), with a manual override + lock.
- regime_snapshots table (migration 011); endpoints on the existing market
  router; admin-editable weights/threshold; standalone /regime page.

Data needs: prices via Alpaca, VIX/credit via FRED (optional key — signals show
n/a without it). No LLM needed for history.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-26 11:51:45 +02:00

27 lines
1.1 KiB
Python

from datetime import date as date_type
from datetime import datetime
from sqlalchemy import Date, DateTime, Float, String, Text
from sqlalchemy.orm import Mapped, mapped_column
from app.database import Base
class RegimeSnapshot(Base):
"""Daily snapshot of the AI/Tech regime-change index.
One row per calendar date (unique). ``breakdown_json`` holds the full
per-signal breakdown plus the raw inputs, so reads need no recomputation and
the 7/30-day trend is just a query over ``total_score``. Decoupled from the
rest of the platform: nothing reads this to gate or score trades.
"""
__tablename__ = "regime_snapshots"
id: Mapped[int] = mapped_column(primary_key=True)
date: Mapped[date_type] = mapped_column(Date, nullable=False, unique=True, index=True)
total_score: Mapped[float] = mapped_column(Float, nullable=False)
band: Mapped[str] = mapped_column(String(20), nullable=False)
breakdown_json: Mapped[str] = mapped_column(Text, nullable=False)
created_at: Mapped[datetime] = mapped_column(DateTime(timezone=True), nullable=False)