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codex/add-
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6fdf318d79 |
@@ -40,6 +40,10 @@ class OAuthTokenMonitoringTask(Base):
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# Scheduling
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next_check = Column(DateTime, nullable=True, index=True) # Next scheduled check time
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next_retry_at = Column(DateTime, nullable=True, index=True) # Backoff retry schedule for refresh failures
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refresh_attempts = Column(Integer, default=0) # Current retry attempt count for refresh workflow
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terminal_failure_reason = Column(Text, nullable=True) # Permanent failure reason requiring user action
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channel_status = Column(String(32), default='connected') # connected, degraded, disconnected
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# Metadata
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created_at = Column(DateTime, default=datetime.utcnow)
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@@ -97,4 +101,3 @@ class OAuthTokenExecutionLog(Base):
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def __repr__(self):
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return f"<OAuthTokenExecutionLog(id={self.id}, task_id={self.task_id}, status={self.status}, execution_date={self.execution_date})>"
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@@ -101,7 +101,6 @@ class AgentContextVFS:
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"/steps/integrations": AgentFlatContextStore.STEP5_FILENAME,
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}
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HIGH_SIGNAL_MARKERS = ("agent_summary", "high_signal_terms", "quick_facts", "context_type")
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LOW_CONFIDENCE_MARKER = "low_confidence"
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def __init__(self, user_id: str, project_id: Optional[str] = None):
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self.user_id = user_id
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@@ -295,101 +294,6 @@ class AgentContextVFS:
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)
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return ranked[: max(1, top_k)]
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@staticmethod
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def _mnemonic_token(result: Dict[str, Any], rank: int) -> str:
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"""Create compressed mnemonic token with source reference."""
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path = str(result.get("path") or "unknown")
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reason = str(result.get("reason") or "match")
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confidence = float(result.get("confidence") or 0.0)
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low_flag = "!" if result.get(AgentContextVFS.LOW_CONFIDENCE_MARKER) else ""
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src = path.replace(".json", "").replace("_", "-")[:28]
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hint = reason.replace(" ", "-")[:20]
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return f"M{rank}:{src}|{hint}|c{confidence:.2f}{low_flag}"
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@staticmethod
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def _detect_contradictions(results: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
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"""Detect contradictory learnings by path with conflicting reasons/relevance classes."""
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by_path: Dict[str, List[Dict[str, Any]]] = {}
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for item in results:
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p = str(item.get("path") or "")
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by_path.setdefault(p, []).append(item)
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contradictions: List[Dict[str, Any]] = []
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for path, rows in by_path.items():
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reasons = {str(r.get("reason") or "").strip().lower() for r in rows}
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relevance = {str(r.get("relevance") or "").strip().lower() for r in rows}
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# contradictory if both high/supported or mixed summary/body signals in same source cluster
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if len(reasons) > 1 and len(relevance) > 1:
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contradictions.append(
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{
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"path": path,
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"reason_variants": sorted([r for r in reasons if r]),
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"relevance_variants": sorted([r for r in relevance if r]),
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"count": len(rows),
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}
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)
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return contradictions
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def _run_synthesis_pipeline(
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self, ranked_results: List[Dict[str, Any]], *, char_budget: int = 1200, top_k: int = 5
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) -> Dict[str, Any]:
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"""
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Flat-context synthesis pipeline:
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1) Compress telemetry into mnemonic tokens with source references
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2) Detect contradictions and mark low-confidence heuristics
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3) Select top-ranked, budget-fitting tokens for prompt injection
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4) Persist synthesis + source lineage for explainability
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"""
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contradictions = self._detect_contradictions(ranked_results)
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contradiction_paths = {c["path"] for c in contradictions}
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normalized: List[Dict[str, Any]] = []
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for idx, item in enumerate(ranked_results, start=1):
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row = dict(item)
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low_conf = bool(row.get("low_probability")) or (str(row.get("path") or "") in contradiction_paths)
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row[self.LOW_CONFIDENCE_MARKER] = low_conf
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if low_conf:
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row["confidence"] = round(max(0.05, float(row.get("confidence", 0.0)) * 0.7), 3)
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row["mnemonic_token"] = self._mnemonic_token(row, idx)
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normalized.append(row)
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chosen: List[Dict[str, Any]] = []
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used = 0
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for row in normalized[: max(1, top_k * 3)]:
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token = str(row.get("mnemonic_token") or "")
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cost = len(token) + 8
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if chosen and used + cost > char_budget:
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continue
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chosen.append(row)
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used += cost
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if len(chosen) >= top_k:
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break
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synthesis = {
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"created_at": datetime.now(timezone.utc).isoformat(),
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"top_k": top_k,
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"char_budget": char_budget,
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"char_budget_used": used,
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"selected_mnemonics": [c.get("mnemonic_token") for c in chosen],
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"source_lineage": [
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{
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"mnemonic_token": c.get("mnemonic_token"),
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"path": c.get("path"),
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"reason": c.get("reason"),
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"confidence": c.get("confidence"),
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"low_confidence": c.get(self.LOW_CONFIDENCE_MARKER, False),
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}
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for c in chosen
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],
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"contradictions": contradictions,
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}
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self.append_activity_log(
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event_type="flat_context_synthesis",
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actor="agent_context_vfs",
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details=synthesis,
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)
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return {"ranked_results": normalized, "synthesis": synthesis}
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@staticmethod
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def _resolve_json_path(data: Any, path_query: str) -> Any:
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"""Resolve dot/bracket JSON path such as 'data.seo_audit.recommendations[0]'."""
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@@ -614,26 +518,15 @@ class AgentContextVFS:
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bounded_results.append(r)
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used += cost
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synthesis_bundle = self._run_synthesis_pipeline(
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self._static_triage(bounded_results, normalized),
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char_budget=1200,
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top_k=5,
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)
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triaged_results = synthesis_bundle["ranked_results"]
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synthesis = synthesis_bundle["synthesis"]
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result = {
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"query": normalized,
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"attempted_queries": attempted_queries,
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"matched_files_count": len(matched_files),
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"results": triaged_results,
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"results": self._static_triage(bounded_results, normalized),
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"notice": notice,
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"char_budget_used": used,
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"can_answer": bool(bounded_results),
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"synthesis": synthesis,
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"prompt_context_mnemonics": synthesis.get("selected_mnemonics", []),
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}
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# Top-ranked, budget-fitting mnemonic tokens are the only ones intended for prompt context injection.
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result["triage_top5"] = self._llm_router_stub(result["results"], top_k=5)
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logger.info(
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f"[vfs_audit] user={self.store.safe_user_id} action=search_context query={normalized!r} results={len(result['results'])}"
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@@ -26,7 +26,10 @@ from .executors.advertools_executor import AdvertoolsExecutor
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from .executors.sif_indexing_executor import SIFIndexingExecutor
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from .executors.market_trends_executor import MarketTrendsExecutor
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from .utils.task_loader import load_due_monitoring_tasks
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from .utils.oauth_token_task_loader import load_due_oauth_token_monitoring_tasks
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from .utils.oauth_token_task_loader import (
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load_due_oauth_token_monitoring_tasks,
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load_near_expiry_oauth_token_tasks
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)
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from .utils.website_analysis_task_loader import load_due_website_analysis_tasks
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from .utils.onboarding_full_website_analysis_task_loader import load_due_onboarding_full_website_analysis_tasks
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from .utils.deep_competitor_analysis_task_loader import load_due_deep_competitor_analysis_tasks
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@@ -70,6 +73,11 @@ def get_scheduler() -> TaskScheduler:
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oauth_token_executor,
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load_due_oauth_token_monitoring_tasks
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)
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_scheduler_instance.register_executor(
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'oauth_token_refresh',
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oauth_token_executor,
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load_near_expiry_oauth_token_tasks
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)
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# Register website analysis executor
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website_analysis_executor = WebsiteAnalysisExecutor()
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@@ -42,6 +42,8 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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self.exception_handler = SchedulerExceptionHandler()
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# Expiration warning window (7 days before expiration)
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self.expiration_warning_days = 7
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self.max_refresh_retries = 3
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self.base_retry_backoff_minutes = 15
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async def execute_task(self, task: OAuthTokenMonitoringTask, db: Session) -> TaskExecutionResult:
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"""
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@@ -93,6 +95,10 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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task.last_success = datetime.utcnow()
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task.status = 'active'
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task.failure_reason = None
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task.terminal_failure_reason = None
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task.channel_status = 'connected'
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task.refresh_attempts = 0
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task.next_retry_at = None
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# Reset failure tracking on success
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task.consecutive_failures = 0
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task.failure_pattern = None
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@@ -112,6 +118,7 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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task.last_failure = datetime.utcnow()
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task.failure_reason = result.error_message
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task.refresh_attempts = (task.refresh_attempts or 0) + 1
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if pattern and pattern.should_cool_off:
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# Mark task for human intervention
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@@ -126,6 +133,9 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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}
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# Clear next_check - task won't run automatically
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task.next_check = None
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task.next_retry_at = None
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task.channel_status = "disconnected"
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task.terminal_failure_reason = result.error_message
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self.logger.warning(
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f"Task {task.id} marked for human intervention: "
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@@ -133,10 +143,17 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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f"reason: {pattern.failure_reason.value}"
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)
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else:
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# Normal failure handling
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task.status = 'failed'
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task.consecutive_failures = (task.consecutive_failures or 0) + 1
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# Do NOT update next_check - wait for manual trigger
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if task.refresh_attempts >= self.max_refresh_retries:
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task.status = 'failed'
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task.channel_status = 'disconnected'
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task.terminal_failure_reason = result.error_message
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task.next_retry_at = None
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else:
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task.status = 'degraded'
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task.channel_status = 'degraded'
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delay_minutes = self.base_retry_backoff_minutes * (2 ** (task.refresh_attempts - 1))
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task.next_retry_at = datetime.utcnow() + timedelta(minutes=delay_minutes)
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self.logger.warning(
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f"OAuth token refresh failed for user {user_id}, platform {platform}. "
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@@ -144,7 +161,7 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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)
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# Create UsageAlert notification for the user
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self._create_failure_alert(user_id, platform, result.error_message, result.result_data, db)
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self._create_failure_alert(user_id, platform, result.error_message, result.result_data, db, task)
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task.updated_at = datetime.utcnow()
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db.commit()
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@@ -193,12 +210,14 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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task.last_failure = datetime.utcnow()
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task.failure_reason = str(e)
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task.status = 'failed'
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task.channel_status = 'disconnected'
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task.terminal_failure_reason = str(e)
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task.last_check = datetime.utcnow()
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task.updated_at = datetime.utcnow()
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# Do NOT update next_check - wait for manual trigger
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task.next_retry_at = None
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# Create UsageAlert notification for the user
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self._create_failure_alert(user_id, task.platform, str(e), None, db)
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self._create_failure_alert(user_id, task.platform, str(e), None, db, task)
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db.commit()
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except Exception as commit_error:
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@@ -651,7 +670,8 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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platform: str,
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error_message: str,
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result_data: Optional[Dict[str, Any]],
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db: Session
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db: Session,
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task: Optional[OAuthTokenMonitoringTask] = None
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):
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"""
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Create a UsageAlert notification when OAuth token refresh fails.
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@@ -723,6 +743,20 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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# Get current billing period (YYYY-MM format)
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from datetime import datetime
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billing_period = datetime.utcnow().strftime("%Y-%m")
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alert_payload = {
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"requires_user_action": True,
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"platform": platform,
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"channel_status": getattr(task, "channel_status", "disconnected"),
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"terminal_failure_reason": getattr(task, "terminal_failure_reason", error_message),
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"next_retry_at": (
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task.next_retry_at.isoformat() if task and task.next_retry_at else None
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),
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"refresh_attempts": getattr(task, "refresh_attempts", 0),
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"max_refresh_retries": self.max_refresh_retries,
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}
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message = f"{message} [ALERT_PAYLOAD] {alert_payload}"
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# Create UsageAlert
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alert = UsageAlert(
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@@ -786,4 +820,3 @@ class OAuthTokenMonitoringExecutor(TaskExecutor):
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f"Defaulting to Weekly (7 days)."
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)
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return last_execution + timedelta(days=7)
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@@ -3,7 +3,7 @@ OAuth Token Monitoring Task Loader
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Functions to load due OAuth token monitoring tasks from database.
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"""
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from datetime import datetime
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from datetime import datetime, timedelta
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from typing import List, Optional, Union
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from sqlalchemy.orm import Session
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from sqlalchemy import and_, or_
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@@ -52,3 +52,34 @@ def load_due_oauth_token_monitoring_tasks(
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return query.all()
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def load_near_expiry_oauth_token_tasks(
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db: Session,
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refresh_horizon_hours: int = 24,
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user_id: Optional[Union[str, int]] = None
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) -> List[OAuthTokenMonitoringTask]:
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"""
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Load OAuth tasks that should run token refresh logic soon.
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Includes:
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- tasks with a scheduled retry now due (next_retry_at <= now)
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- tasks whose routine check is inside the near-expiry horizon window
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"""
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now = datetime.utcnow()
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horizon = now + timedelta(hours=max(refresh_horizon_hours, 1))
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query = db.query(OAuthTokenMonitoringTask).filter(
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and_(
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OAuthTokenMonitoringTask.status.in_(['active', 'failed', 'degraded']),
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or_(
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OAuthTokenMonitoringTask.next_retry_at <= now,
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OAuthTokenMonitoringTask.next_check <= horizon,
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OAuthTokenMonitoringTask.next_check.is_(None)
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)
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)
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)
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if user_id is not None:
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query = query.filter(OAuthTokenMonitoringTask.user_id == str(user_id))
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return query.all()
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Reference in New Issue
Block a user