Re-executes BayesianStrategy.evaluate() over the R0 archive and stores results in replay_runs/replay_decisions, tagged with git sha + a hash of the strategy constants (same hash vs archive = determinism check, different hash = counterfactual run). - bayesian.py: optional as_of param on evaluate()/_days_to_resolution() (clock injection; default None = wall clock, prod behavior unchanged — the only touch to frozen code, purely additive) - bot/replay.py: replay engine + CLI (python -m bot.replay --from --to); ReplayNews feeds archived sentiment back (GNews never called, per-cycle budget bypassed — archived sentiment already encodes it); manifold/db not wired (observational-only in prod); recorded-vs-replayed compare at 1e-9 tolerance - schema.sql: replay_runs + replay_decisions (+ indexes), idempotent - db.py: 6 replay accessors/writers - tests: 19 new round-trip fidelity tests (104 total green) Validated against a real prod cycle (2026-07-02T14:03:15Z, 46 markets, 4 skip paths incl. the Georgia confidence record): 46/46 matched, max float delta 0.0. Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
395 lines
14 KiB
Python
395 lines
14 KiB
Python
"""
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Replay R1 — replay core.
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Re-executes BayesianStrategy.evaluate() over the R0 archive (signals +
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ext_snapshots + markets) and stores the outcome in replay_runs /
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replay_decisions.
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Determinism contract: evaluate() is a pure function of
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(market, ext, occupied_families, as_of) plus the news client, so a replay
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rebuilds exactly those four inputs from the archive:
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market — metadata from `markets`, per-cycle price/volume from `signals`
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ext — the cycle's `ext_snapshots` row
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families — a family-skipped row replays with its own family_key occupied;
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every other row replays with no occupancy (the recorded
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skip_reason already reflects the original portfolio state)
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as_of — the archived cycle_ts (clock injection, Replay R1)
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GNews is never called: ReplayNews feeds back the archived news_sentiment.
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The per-cycle query budget is bypassed (reset before every market) because
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the archived sentiment already encodes the budget's effect — a
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budget-skipped market was recorded with sentiment 0.0.
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Manifold and the DB are not wired into the replayed strategy (manifold=None,
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db=None): the signal is observational-only in production (feat_mfld_lo is
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always 0.0 in the archive), so the replay reproduces decisions without
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touching cooldowns or audit tables. If MANIFOLD_SIGNAL_ENABLED is ever
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turned on, replayed decisions will diverge from recorded ones and the
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matched/mismatch_field columns will say so.
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Run tagging: every run stores the git sha and a hash of the strategy
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constants. Same config_hash vs the archive = determinism check (expect 0
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mismatches, modulo UTC-day-boundary crossings between cycle_ts and the
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original wall-clock). Different config_hash = counterfactual run.
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CLI:
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python -m bot.replay --from 2026-07-02T00:00:00Z --to 2026-07-03 --note "..."
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"""
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import argparse
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import asyncio
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import hashlib
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import json
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import logging
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import os
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import subprocess
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import uuid
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from collections import Counter
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from datetime import datetime, timedelta, timezone
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from typing import Optional
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import bot.strategy.bayesian as bayesian
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from bot.data.db import Database
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from bot.data.external import ExternalSignals
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from bot.data.polymarket import Market
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from bot.strategy.bayesian import BayesianStrategy
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log = logging.getLogger(__name__)
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# Absolute float tolerance for recorded-vs-replayed comparison. Archived
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# values are float8 (exact IEEE-754 round-trip of Python floats), so any real
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# divergence is far larger than this.
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FLOAT_TOL = 1e-9
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# Strategy constants that define a replay configuration. Hashed into
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# replay_runs.config_hash; read from the module at call time so a
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# counterfactual run can monkeypatch them and be tagged distinctly.
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CONFIG_KEYS = (
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"SPREAD_ESTIMATE",
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"COMMISSION_RATE",
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"MIN_CONFIDENCE",
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"NEWS_LOGODDS_WEIGHT",
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"MANIFOLD_LOGODDS_WEIGHT",
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"MANIFOLD_SIGNAL_ENABLED",
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"NEWS_GUARDRAIL_ENABLED",
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"MAX_NEWS_ONLY_PROB_SHIFT",
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"NEWS_MATERIAL_LOGODDS_THRESHOLD",
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"MAX_NEWS_QUERIES_PER_CYCLE",
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)
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# Rows recorded outside evaluate() (via record_skip) carry no decision fields;
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# the replay still re-evaluates them for calibration but cannot compare.
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NON_COMPARABLE_SKIPS = {"reentry_guard"}
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def strategy_config() -> dict:
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return {k: getattr(bayesian, k) for k in CONFIG_KEYS}
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def strategy_config_hash() -> str:
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blob = json.dumps(strategy_config(), sort_keys=True)
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return hashlib.sha256(blob.encode()).hexdigest()[:12]
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def _git_sha() -> str:
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sha = os.getenv("GIT_SHA", "")
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if sha:
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return sha
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try:
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return subprocess.run(
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["git", "rev-parse", "--short", "HEAD"],
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capture_output=True, text=True, timeout=5,
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).stdout.strip() or "unknown"
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except (OSError, subprocess.SubprocessError):
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return "unknown"
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class ReplayNews:
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"""NewsClient stand-in that feeds archived sentiment back into evaluate().
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No HTTP, no cache: the engine sets `sentiment` to the archived value
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before each evaluate() call. Values below evaluate()'s 0.05 materiality
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threshold were archived as 0.0, so the round-trip is exact.
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"""
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enabled = True
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def __init__(self) -> None:
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self.sentiment: float = 0.0
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async def get_sentiment(self, question: str) -> float:
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return self.sentiment
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def get_freshness(self, question: str) -> float:
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return 1.0 # only used by gnews_priority(), which replay never calls
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def build_ext(snapshot: dict) -> ExternalSignals:
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"""Rebuild the ExternalSignals a cycle was evaluated against."""
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return ExternalSignals(
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btc_price=snapshot["btc_price"],
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btc_change_24h=snapshot["btc_change_24h"],
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eth_price=snapshot["eth_price"],
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eth_change_24h=snapshot["eth_change_24h"],
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btc_dominance=snapshot["btc_dominance"],
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fear_greed_index=snapshot["fear_greed_index"],
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fear_greed_label=snapshot["fear_greed_label"],
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total_market_cap_change=snapshot["total_market_cap_change"],
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valid=snapshot["valid"],
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)
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def build_market(market_row: dict, signal_row: dict) -> Market:
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"""Rebuild a Market: metadata from `markets`, per-cycle state from `signals`.
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Token ids are irrelevant to evaluate() and left empty; no_price is the
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YES complement (evaluate() never reads it either).
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"""
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yes_price = signal_row["polymarket_price"]
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return Market(
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id=market_row["id"],
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condition_id=market_row["condition_id"] or "",
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question=market_row["question"],
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yes_token_id="",
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no_token_id="",
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yes_price=yes_price,
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no_price=1.0 - yes_price,
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volume_24h=signal_row["volume_24h"] or 0.0,
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end_date=market_row["end_date"] or "",
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active=True,
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category=signal_row["category"] or (market_row["category"] or ""),
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)
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def _compare(recorded: dict, replayed: dict) -> Optional[str]:
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"""Return the first field where replayed diverges from recorded, or None."""
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if recorded["skip_reason"] != replayed["skip_reason"]:
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return "skip_reason"
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for field in ("prior_prob", "estimated_prob", "raw_final_prob",
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"edge_net", "confidence"):
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a, b = recorded[field], replayed[field]
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if a is None and b is None:
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continue
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if a is None or b is None or abs(a - b) > FLOAT_TOL:
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return field
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if recorded["direction"] != replayed["direction"]:
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return "direction"
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return None
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async def replay_cycle(
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cycle_ts: datetime,
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snapshot: dict,
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signal_rows: list[dict],
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market_rows: dict[str, dict],
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) -> list[dict]:
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"""Re-evaluate one archived cycle; returns one decision dict per row.
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Pure with respect to the DB — everything it needs is passed in, so tests
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can drive it with synthetic rows.
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"""
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news = ReplayNews()
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strategy = BayesianStrategy(news=news, manifold=None, db=None)
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ext = build_ext(snapshot)
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decisions: list[dict] = []
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for row in signal_rows:
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recorded_skip = row["skip_reason"]
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decision = {
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"cycle_ts": cycle_ts,
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"market_id": row["market_id"],
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"skip_reason": None,
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"prior_prob": None,
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"estimated_prob": None,
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"raw_final_prob": None,
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"edge_gross": None,
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"edge_net": None,
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"regime_min_edge": None,
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"days_to_resolution": None,
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"confidence": None,
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"direction": None,
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"would_trade": None,
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"recorded_skip_reason": recorded_skip,
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"matched": None,
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"mismatch_field": None,
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}
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market_row = market_rows.get(row["market_id"])
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if market_row is None:
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# Should not happen (R0 upserts markets every cycle) — record the
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# gap instead of crashing the run.
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decision["matched"] = False
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decision["mismatch_field"] = "market_missing"
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decisions.append(decision)
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continue
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market = build_market(market_row, row)
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# A family-skipped row replays against its own occupied family; all
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# other rows replay unoccupied — their recorded skip_reason already
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# reflects whatever portfolio state existed, and evaluate() checks
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# the family gate before anything portfolio-dependent.
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families = (
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{row["family_key"]}
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if recorded_skip == "family" and row["family_key"]
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else set()
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)
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news.sentiment = row["news_sentiment"] or 0.0
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# Bypass the per-cycle GNews budget: archived sentiment already
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# encodes it (budget-skipped markets were recorded with 0.0).
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strategy._news_queries_this_cycle = 0
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signal = await strategy.evaluate(market, ext, families, as_of=cycle_ts)
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rec = strategy.drain_cycle_records()[-1]
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decision.update(
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skip_reason=rec["skip_reason"],
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prior_prob=rec["prior_prob"],
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estimated_prob=rec["estimated_prob"],
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raw_final_prob=rec["raw_final_prob"],
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edge_gross=rec["edge_gross"],
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edge_net=rec["edge_net"],
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regime_min_edge=rec["regime_min_edge"],
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days_to_resolution=rec["days_to_resolution"],
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confidence=rec["confidence"],
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direction=rec["direction"],
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would_trade=signal is not None,
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)
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if recorded_skip in NON_COMPARABLE_SKIPS:
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decision["matched"] = None # re-evaluated for calibration only
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else:
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mismatch = _compare(row, rec)
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decision["matched"] = mismatch is None
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decision["mismatch_field"] = mismatch
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decisions.append(decision)
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return decisions
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async def run_replay(
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db: Database,
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from_ts: datetime,
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to_ts: datetime,
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note: str = "",
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limit_cycles: Optional[int] = None,
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) -> dict:
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"""Replay every archived cycle in [from_ts, to_ts) and persist the run.
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Returns the replay_runs row (plus a mismatch_fields Counter) for reporting.
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"""
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run_id = str(uuid.uuid4())
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cycles = await db.get_replay_cycles(from_ts, to_ts)
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if limit_cycles:
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cycles = cycles[:limit_cycles]
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decisions_total = 0
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matched = 0
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mismatched = 0
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mismatch_fields: Counter = Counter()
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skipped_cycles = 0
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for cycle_ts in cycles:
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snapshot = await db.get_ext_snapshot(cycle_ts)
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if snapshot is None:
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skipped_cycles += 1
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log.warning("Replay: no ext_snapshot for cycle %s — skipped", cycle_ts)
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continue
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signal_rows = await db.get_cycle_signal_rows(cycle_ts)
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market_rows = await db.get_markets_by_ids(
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[r["market_id"] for r in signal_rows]
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)
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decisions = await replay_cycle(cycle_ts, snapshot, signal_rows, market_rows)
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await db.save_replay_decisions(run_id, decisions)
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decisions_total += len(decisions)
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for d in decisions:
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if d["matched"] is True:
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matched += 1
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elif d["matched"] is False:
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mismatched += 1
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mismatch_fields[d["mismatch_field"]] += 1
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run = {
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"run_id": run_id,
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"git_sha": _git_sha(),
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"config_hash": strategy_config_hash(),
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"config_json": json.dumps(strategy_config(), sort_keys=True),
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"from_ts": from_ts,
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"to_ts": to_ts,
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"cycles": len(cycles) - skipped_cycles,
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"decisions": decisions_total,
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"matched": matched,
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"mismatched": mismatched,
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"note": note,
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}
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await db.save_replay_run(run)
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run["mismatch_fields"] = dict(mismatch_fields)
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run["skipped_cycles"] = skipped_cycles
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return run
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def _parse_ts(value: str) -> datetime:
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dt = datetime.fromisoformat(value.replace("Z", "+00:00"))
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if dt.tzinfo is None:
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dt = dt.replace(tzinfo=timezone.utc)
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return dt
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async def _amain(args: argparse.Namespace) -> None:
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db = Database()
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await db.connect()
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try:
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run = await run_replay(
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db,
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from_ts=args.from_ts,
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to_ts=args.to_ts,
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note=args.note,
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limit_cycles=args.limit_cycles,
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)
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finally:
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await db.disconnect()
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comparable = run["matched"] + run["mismatched"]
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print(f"run_id : {run['run_id']}")
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print(f"git_sha : {run['git_sha']} config_hash: {run['config_hash']}")
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print(f"window : {run['from_ts'].isoformat()} → {run['to_ts'].isoformat()}")
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print(f"cycles : {run['cycles']} (skipped: {run['skipped_cycles']})")
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print(f"decisions : {run['decisions']} ({comparable} comparable)")
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print(f"matched : {run['matched']}")
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print(f"mismatched : {run['mismatched']}")
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if run["mismatch_fields"]:
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for field, count in sorted(run["mismatch_fields"].items(), key=lambda x: -x[1]):
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print(f" {field}: {count}")
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def main() -> None:
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parser = argparse.ArgumentParser(
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prog="python -m bot.replay",
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description="Replay archived trading cycles through the current strategy.",
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)
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now = datetime.now(timezone.utc)
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parser.add_argument(
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"--from", dest="from_ts", type=_parse_ts,
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default=now - timedelta(hours=24),
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help="window start, ISO-8601 (default: 24h ago)",
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)
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parser.add_argument(
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"--to", dest="to_ts", type=_parse_ts, default=now,
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help="window end, ISO-8601, exclusive (default: now)",
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)
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parser.add_argument("--note", default="", help="free-text tag for replay_runs")
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parser.add_argument(
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"--limit-cycles", type=int, default=None,
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help="replay at most N cycles (smoke runs)",
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)
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args = parser.parse_args()
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logging.basicConfig(
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level=logging.INFO,
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format="%(asctime)s [%(levelname)s] %(name)s: %(message)s",
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)
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# evaluate() logs one INFO line per market — thousands per replay window.
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logging.getLogger("bot.strategy.bayesian").setLevel(logging.WARNING)
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asyncio.run(_amain(args))
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if __name__ == "__main__":
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main()
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