b941223c88
Three plumbing fixes + one ops doc that close the gaps from the audit. scripts/rescore_v5.py Was overwriting only signal/conf/reasoning/sentiment/relevant/ prefilter_reason/analysis_version. Now also persists target_asset, category, expected_move_pct — without these the bot can't route rescored posts correctly (would silently fall back to BTC). app/schemas.py + app/api/posts.py TrumpPost response model didn't expose target_asset/category/ expected_move_pct, so the frontend had no way to display "this signal will trade SOL". Added the three fields + mapping in _post_to_schema(). Pre-v5 posts return null. No frontend changes yet — display work is a follow-up. app/services/hyperliquid.py HL caps max leverage per asset (BTC/ETH 50×, SOL 20×, memes 3-5×). set_leverage() always tried to push self._leverage — if user set 30× and bot routed to TRUMP, HL rejected the order and the trade silently dropped. Added _get_max_leverage() (queries meta()'s maxLeverage field) and _clip_leverage() that caps to HL's max. set_leverage now returns the effective leverage so callers can use it for notional sizing if needed. deploy/ENCRYPTION_KEY_BACKUP.md Documented mandatory backup procedure for the symmetric key that encrypts every user's HL API key. Lost key = all users' bots dead with no recovery. Includes rotation procedure + quarterly test step + things-not-to-do list. Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
133 lines
4.6 KiB
Python
133 lines
4.6 KiB
Python
import logging
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from typing import List, Optional
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from fastapi import APIRouter, Depends, HTTPException, Query
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from sqlalchemy import select
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from sqlalchemy.ext.asyncio import AsyncSession
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from app.database import get_db
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from app.models import Post, iso_utc
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from app.schemas import PriceImpact, TrumpPost
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router = APIRouter()
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logger = logging.getLogger(__name__)
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def _direction_correct(signal: Optional[str], pct: Optional[float]) -> Optional[bool]:
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if pct is None or signal is None:
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return None
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if signal == "buy":
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return pct > 0
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if signal in ("short", "sell"):
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return pct < 0
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return None # hold has no direction
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def _post_to_schema(post: Post) -> TrumpPost:
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price_impact: Optional[PriceImpact] = None
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if post.price_impact_asset and post.price_at_post is not None:
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# Overlay live rolling peaks for windows that haven't closed yet
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from app.services.price_impact_monitor import get_live_impact
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live = get_live_impact(post.id) or {}
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m5 = live.get("price_impact_m5", post.price_impact_m5)
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m15 = live.get("price_impact_m15", post.price_impact_m15)
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m1h = live.get("price_impact_m1h", post.price_impact_m1h)
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price_impact = PriceImpact(
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asset=post.price_impact_asset,
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m5=m5,
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m15=m15,
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m1h=m1h,
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price_at_post=post.price_at_post,
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correct_m5=_direction_correct(post.signal, m5),
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correct_m15=_direction_correct(post.signal, m15),
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correct_m1h=_direction_correct(post.signal, m1h),
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)
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return TrumpPost(
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id=post.id,
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text=post.text,
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source=post.source,
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published_at=iso_utc(post.published_at),
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sentiment=post.sentiment,
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signal=post.signal,
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ai_confidence=post.ai_confidence,
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ai_reasoning=post.ai_reasoning,
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prefilter_reason=post.prefilter_reason,
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analysis_version=post.analysis_version,
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relevant=post.relevant,
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price_impact=price_impact,
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# v5 routing fields — null for pre-v5 posts
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target_asset=post.target_asset,
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category=post.category,
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expected_move_pct=post.expected_move_pct,
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)
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@router.get("/posts", response_model=List[TrumpPost])
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async def get_posts(
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limit: int = Query(default=20, ge=1, le=500),
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page: int = Query(default=1, ge=1),
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db: AsyncSession = Depends(get_db),
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):
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offset = (page - 1) * limit
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result = await db.execute(
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select(Post).order_by(Post.published_at.desc()).offset(offset).limit(limit)
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)
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posts = result.scalars().all()
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return [_post_to_schema(p) for p in posts]
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@router.get("/signals/accuracy")
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async def signal_accuracy(db: AsyncSession = Depends(get_db)):
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"""Aggregate accuracy of directional signals (buy/sell/short) against realised price moves."""
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result = await db.execute(
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select(Post).where(Post.signal.in_(["buy", "sell", "short"]))
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)
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posts = result.scalars().all()
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def bucket():
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return {"checked": 0, "correct": 0}
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stats = {"m5": bucket(), "m15": bucket(), "m1h": bucket()}
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by_signal: dict[str, dict] = {}
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for p in posts:
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sig = p.signal
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if sig not in by_signal:
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by_signal[sig] = {"m5": bucket(), "m15": bucket(), "m1h": bucket(), "count": 0}
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by_signal[sig]["count"] += 1
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for win, val in (("m5", p.price_impact_m5), ("m15", p.price_impact_m15), ("m1h", p.price_impact_m1h)):
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ok = _direction_correct(sig, val)
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if ok is None:
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continue
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stats[win]["checked"] += 1
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stats[win]["correct"] += int(ok)
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by_signal[sig][win]["checked"] += 1
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by_signal[sig][win]["correct"] += int(ok)
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def pct(b): return round(b["correct"] / b["checked"] * 100, 1) if b["checked"] else None
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return {
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"overall": {k: {**v, "accuracy_pct": pct(v)} for k, v in stats.items()},
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"by_signal": {
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s: {
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"count": d["count"],
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"m5": {**d["m5"], "accuracy_pct": pct(d["m5"])},
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"m15": {**d["m15"], "accuracy_pct": pct(d["m15"])},
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"m1h": {**d["m1h"], "accuracy_pct": pct(d["m1h"])},
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}
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for s, d in by_signal.items()
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},
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"total_directional_signals": len(posts),
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}
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@router.get("/posts/{post_id}", response_model=TrumpPost)
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async def get_post(post_id: int, db: AsyncSession = Depends(get_db)):
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result = await db.execute(select(Post).where(Post.id == post_id))
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post = result.scalar_one_or_none()
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if post is None:
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raise HTTPException(status_code=404, detail="Post not found")
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return _post_to_schema(post)
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