Faktencheck-Deduplizierung und Auto-Resolve implementiert
3-Ebenen-System gegen Duplikate: 1. Pre-Dedup: LLM-Antwort wird vor DB-Insert dedupliziert (deduplicate_new_facts) 2. Auto-Resolve: Bestaetigte Fakten loesen automatisch stale developing/unconfirmed Fakten auf 3. Periodische Konsolidierung: Haiku clustert alle 6h semantische Duplikate und entfernt sie Verbessertes Claim-Matching: SequenceMatcher (70%) + Jaccard-Keyword-Overlap (30%) statt reinem SequenceMatcher. Threshold von 0.7 auf 0.75 erhoeht. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
Dieser Commit ist enthalten in:
@@ -168,49 +168,120 @@ Jedes Element hat:
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Antworte NUR mit dem JSON-Array."""
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# --- Stopwords fuer Keyword-Extraktion ---
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_STOPWORDS = frozenset({
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"der", "die", "das", "ein", "eine", "und", "oder", "von", "nach", "bei", "mit",
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"wurde", "wird", "haben", "sein", "dass", "ist", "sind", "hat", "vor", "fuer",
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"den", "dem", "des", "sich", "auf", "als", "auch", "noch", "nicht", "aber",
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"ueber", "durch", "einer", "einem", "eines", "werden", "wurde", "waren",
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"the", "and", "was", "has", "been", "have", "that", "with", "from", "for",
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"are", "were", "this", "which", "into", "their", "than", "about",
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})
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STATUS_PRIORITY = {
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"confirmed": 5, "established": 5,
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"contradicted": 4, "disputed": 4,
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"unconfirmed": 3, "unverified": 3,
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"developing": 1,
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}
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def normalize_claim(claim: str) -> str:
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"""Normalisiert einen Claim für Ähnlichkeitsvergleich."""
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"""Normalisiert einen Claim fuer Aehnlichkeitsvergleich."""
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c = claim.lower().strip()
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# Umlaute normalisieren
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c = c.replace("ä", "ae").replace("ö", "oe").replace("ü", "ue").replace("ß", "ss")
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c = c.replace("\u00e4", "ae").replace("\u00f6", "oe").replace("\u00fc", "ue").replace("\u00df", "ss")
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c = re.sub(r'[^\w\s]', '', c)
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c = re.sub(r'\s+', ' ', c).strip()
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return c
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def find_matching_claim(new_claim: str, existing_claims: list[dict], threshold: float = 0.7) -> dict | None:
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"""Findet den besten passenden bestehenden Claim per Fuzzy-Matching.
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def _keyword_set(text: str) -> set[str]:
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"""Extrahiert signifikante Woerter fuer Overlap-Vergleich."""
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words = set(normalize_claim(text).split())
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return {w for w in words if len(w) >= 4 and w not in _STOPWORDS}
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Args:
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new_claim: Der neue Claim-Text
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existing_claims: Liste von Dicts mit mindestens {"id", "claim", "status"}
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threshold: Mindest-Ähnlichkeit (0.0-1.0), Standard 0.7
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Returns:
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Das passende Dict oder None wenn kein Match über dem Schwellwert
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def find_matching_claim(new_claim: str, existing_claims: list[dict], threshold: float = 0.75) -> dict | None:
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"""Findet den besten passenden bestehenden Claim per kombiniertem Scoring.
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Verwendet SequenceMatcher (70%) + Jaccard-Keyword-Overlap (30%) fuer robusteres Matching.
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"""
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norm_new = normalize_claim(new_claim)
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if not norm_new:
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return None
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kw_new = _keyword_set(new_claim)
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best_match = None
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best_ratio = 0.0
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best_score = 0.0
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for existing in existing_claims:
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norm_existing = normalize_claim(existing.get("claim", ""))
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if not norm_existing:
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continue
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ratio = SequenceMatcher(None, norm_new, norm_existing).ratio()
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if ratio > best_ratio:
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best_ratio = ratio
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# Fruehzeitiger Abbruch bei grossem Laengenunterschied
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len_ratio = len(norm_new) / len(norm_existing) if norm_existing else 0
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if len_ratio > 2.5 or len_ratio < 0.4:
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continue
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seq_ratio = SequenceMatcher(None, norm_new, norm_existing).ratio()
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kw_existing = _keyword_set(existing.get("claim", ""))
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kw_union = kw_new | kw_existing
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jaccard = len(kw_new & kw_existing) / len(kw_union) if kw_union else 0.0
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combined = 0.7 * seq_ratio + 0.3 * jaccard
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if combined > best_score:
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best_score = combined
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best_match = existing
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if best_ratio >= threshold:
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logger.debug(f"Claim-Match ({best_ratio:.2f}): '{new_claim[:50]}...' → '{best_match['claim'][:50]}...'")
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if best_score >= threshold:
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logger.debug(
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f"Claim-Match ({best_score:.2f}): "
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f"'{new_claim[:50]}...' -> '{best_match['claim'][:50]}...'"
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)
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return best_match
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return None
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def deduplicate_new_facts(facts: list[dict], threshold: float = 0.70) -> list[dict]:
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"""Dedupliziert Fakten aus einer einzelnen LLM-Antwort vor dem DB-Insert.
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Clustert aehnliche Claims und behaelt pro Cluster den mit dem
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hoechsten Status und den meisten Quellen.
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"""
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if not facts:
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return []
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clusters: list[list[dict]] = []
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for fact in facts:
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matched_cluster = None
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for cluster in clusters:
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if find_matching_claim(fact.get("claim", ""), cluster, threshold=threshold):
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matched_cluster = cluster
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break
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if matched_cluster is not None:
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matched_cluster.append(fact)
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else:
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clusters.append([fact])
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result = []
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for cluster in clusters:
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best = max(cluster, key=lambda f: (
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STATUS_PRIORITY.get(f.get("status", "developing"), 0),
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f.get("sources_count", 0),
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))
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result.append(best)
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if len(result) < len(facts):
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logger.info(
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f"Fakten-Dedup: {len(facts)} -> {len(result)} "
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f"(-{len(facts) - len(result)} Duplikate)"
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)
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return result
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class FactCheckerAgent:
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"""Prüft Fakten über Claude CLI gegen unabhängige Quellen."""
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@@ -9,7 +9,7 @@ from typing import Optional
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from urllib.parse import urlparse, urlunparse
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from agents.claude_client import UsageAccumulator
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from agents.factchecker import find_matching_claim
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from agents.factchecker import find_matching_claim, deduplicate_new_facts
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from source_rules import (
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_detect_category,
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_extract_domain,
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@@ -890,6 +890,9 @@ class AgentOrchestrator:
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all_articles_for_fc = [dict(row) for row in await cursor.fetchall()]
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fact_checks, fc_usage = await factchecker.check(title, all_articles_for_fc, incident_type)
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# Pre-Dedup: Duplikate aus LLM-Antwort entfernen
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fact_checks = deduplicate_new_facts(fact_checks)
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if fc_usage:
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usage_acc.add(fc_usage)
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@@ -21,6 +21,7 @@ from auth import decode_token
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from agents.orchestrator import orchestrator
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from services.source_health import run_health_checks, get_health_summary
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from services.source_suggester import generate_suggestions
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from services.fact_consolidation import consolidate_fact_checks
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# Logging
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os.makedirs(LOG_DIR, exist_ok=True)
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243
src/services/fact_consolidation.py
Normale Datei
243
src/services/fact_consolidation.py
Normale Datei
@@ -0,0 +1,243 @@
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"""Periodische Faktencheck-Konsolidierung via Haiku.
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Erkennt und merged semantische Duplikate unter Faktenchecks.
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Laeuft als Scheduler-Job alle 6 Stunden.
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"""
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import json
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import logging
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import re
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from datetime import datetime
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from config import CLAUDE_MODEL_FAST, TIMEZONE
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from database import get_db
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from agents.claude_client import call_claude
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logger = logging.getLogger("osint.fact_consolidation")
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STATUS_PRIORITY = {
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"confirmed": 5, "established": 5,
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"contradicted": 4, "disputed": 4,
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"unconfirmed": 3, "unverified": 3,
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"developing": 1,
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}
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CONSOLIDATION_PROMPT = (
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"Du bist ein Deduplizierungs-Agent. Du bekommst eine Liste von Faktenchecks (ID + Claim + Status).\n"
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"Finde Gruppen von Fakten, die inhaltlich DASSELBE aussagen (auch bei unterschiedlicher Formulierung).\n\n"
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"REGELN:\n"
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'- Gleicher Sachverhalt = gleiche Gruppe (z.B. "Khamenei wurde getoetet" und "Chamenei bei Angriff ums Leben gekommen")\n'
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"- Unterschiedliche Detailtiefe zum SELBEN Fakt = gleiche Gruppe\n"
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'- VERSCHIEDENE Sachverhalte = verschiedene Gruppen (z.B. "Angriff auf Isfahan" vs "Angriff auf Teheran")\n'
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"- Eine Gruppe muss mindestens 2 Eintraege haben\n\n"
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"Antworte NUR als JSON-Array von Gruppen. Jede Gruppe ist ein Array von IDs:\n"
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"[[1,5,12], [3,8], [20,25,30]]\n\n"
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"Wenn keine Duplikate: antworte mit []\n\n"
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"FAKTEN:\n{facts_text}"
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)
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async def _ask_haiku_for_clusters(facts: list[dict]) -> list[list[int]]:
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"""Fragt Haiku welche Fakten semantische Duplikate sind."""
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facts_text = "\n".join(
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f'ID={f["id"]} [{f["status"]}]: {f["claim"]}'
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for f in facts
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)
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prompt = CONSOLIDATION_PROMPT.format(facts_text=facts_text)
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try:
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result, usage = await call_claude(prompt, tools=None, model=CLAUDE_MODEL_FAST)
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data = json.loads(result)
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if isinstance(data, list) and all(isinstance(g, list) for g in data):
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return data
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except json.JSONDecodeError:
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match = re.search(r'\[.*\]', result, re.DOTALL)
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if match:
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try:
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data = json.loads(match.group())
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if isinstance(data, list):
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return data
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except json.JSONDecodeError:
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pass
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except Exception as e:
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logger.error(f"Haiku-Cluster-Anfrage fehlgeschlagen: {e}")
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return []
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async def consolidate_fact_checks(max_per_incident: int = 25):
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"""Konsolidiert doppelte Faktenchecks via Haiku-Clustering."""
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db = await get_db()
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try:
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cursor = await db.execute(
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"SELECT incident_id, COUNT(*) as cnt FROM fact_checks "
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"GROUP BY incident_id HAVING cnt > ?",
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(max_per_incident,),
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)
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bloated = [dict(row) for row in await cursor.fetchall()]
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if not bloated:
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logger.info("Faktencheck-Konsolidierung: keine aufgeblaehten Incidents gefunden")
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return 0
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total_removed = 0
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for row in bloated:
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incident_id = row["incident_id"]
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# Pruefe ob gerade ein Refresh laeuft
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cursor_rl = await db.execute(
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"SELECT COUNT(*) as cnt FROM refresh_log "
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"WHERE incident_id = ? AND status = 'running'",
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(incident_id,),
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)
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rl_row = await cursor_rl.fetchone()
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if rl_row and rl_row["cnt"] > 0:
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logger.info(
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f"Incident {incident_id} hat laufenden Refresh, ueberspringe"
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)
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continue
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cursor2 = await db.execute(
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"SELECT id, claim, status, sources_count, evidence, "
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"checked_at, status_history "
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"FROM fact_checks WHERE incident_id = ? "
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"ORDER BY checked_at DESC",
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(incident_id,),
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)
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all_facts = [dict(r) for r in await cursor2.fetchall()]
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if len(all_facts) <= max_per_incident:
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continue
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# Haiku in Batches fragen
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all_clusters = []
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batch_size = 80
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for i in range(0, len(all_facts), batch_size):
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batch = all_facts[i:i + batch_size]
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clusters = await _ask_haiku_for_clusters(batch)
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all_clusters.extend(clusters)
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# Pro Cluster: besten behalten, Rest loeschen
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ids_to_delete = []
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facts_by_id = {f["id"]: f for f in all_facts}
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for cluster_ids in all_clusters:
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valid_ids = [cid for cid in cluster_ids if cid in facts_by_id]
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if len(valid_ids) <= 1:
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continue
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cluster_facts = [facts_by_id[cid] for cid in valid_ids]
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best = max(cluster_facts, key=lambda f: (
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STATUS_PRIORITY.get(f["status"], 0),
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f.get("sources_count", 0),
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f.get("checked_at", ""),
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))
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for fact in cluster_facts:
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if fact["id"] != best["id"]:
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ids_to_delete.append(fact["id"])
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if ids_to_delete:
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unique_ids = list(set(ids_to_delete))
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placeholders = ",".join("?" * len(unique_ids))
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await db.execute(
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f"DELETE FROM fact_checks WHERE id IN ({placeholders})",
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unique_ids,
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)
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total_removed += len(unique_ids)
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logger.info(
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f"Incident {incident_id}: {len(unique_ids)} Duplikate entfernt, "
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f"{len(all_facts) - len(unique_ids)} verbleiben"
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)
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await db.commit()
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if total_removed > 0:
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logger.info(
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f"Faktencheck-Konsolidierung: {total_removed} Duplikate entfernt"
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)
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return total_removed
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except Exception as e:
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logger.error(
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f"Faktencheck-Konsolidierung Fehler: {e}", exc_info=True
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)
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return 0
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finally:
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await db.close()
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async def auto_resolve_stale_facts(incident_id: int, confirmed_claims: list[dict], db):
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"""Loest veraltete developing/unconfirmed Fakten automatisch auf,
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wenn ein bestaetigter Match gefunden wird.
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Wird vom Orchestrator nach jedem Faktencheck aufgerufen.
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"""
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if not confirmed_claims:
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return 0
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from agents.factchecker import find_matching_claim
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now = datetime.now(TIMEZONE).strftime('%Y-%m-%d %H:%M:%S')
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cursor = await db.execute(
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"SELECT id, claim, status, status_history FROM fact_checks "
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"WHERE incident_id = ? "
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"AND status IN ('developing', 'unconfirmed', 'unverified')",
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(incident_id,),
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)
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stale_facts = [dict(row) for row in await cursor.fetchall()]
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if not stale_facts:
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return 0
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resolved_count = 0
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resolved_ids = set()
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for confirmed_fc in confirmed_claims:
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confirmed_claim_text = confirmed_fc.get("claim", "")
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for stale in stale_facts:
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if stale["id"] in resolved_ids:
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continue
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# Niedrigerer Threshold (0.65) fuer aggressiveres Auto-Resolve
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if find_matching_claim(
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confirmed_claim_text, [stale], threshold=0.65
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):
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try:
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history = json.loads(
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stale.get("status_history") or "[]"
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)
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except (ValueError, TypeError):
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history = []
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new_status = (
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"confirmed"
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if confirmed_fc.get("status") == "confirmed"
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else "established"
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)
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history.append({
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"status": new_status,
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"at": now,
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"reason": "auto-resolved",
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})
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await db.execute(
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"UPDATE fact_checks SET status = ?, "
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"evidence = COALESCE(evidence, '') "
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"|| ' [Auto-aufgeloest: uebereinstimmender Fakt bestaetigt]', "
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"status_history = ?, checked_at = ? WHERE id = ?",
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(new_status, json.dumps(history), now, stale["id"]),
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)
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resolved_ids.add(stale["id"])
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resolved_count += 1
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logger.info(
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f"Auto-resolved Fakt #{stale['id']}: "
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f"'{stale['claim'][:60]}...' -> {new_status}"
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)
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if resolved_count > 0:
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logger.info(
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f"Auto-Resolve: {resolved_count} veraltete Fakten "
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f"fuer Incident {incident_id} aufgeloest"
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)
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return resolved_count
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