Files
Benjamin Admin 8510af46eb feat(pipeline): MC Quality Overhaul — 74.5% → 92.8% accuracy, 5.3K → 13.6K MCs
Phase 0: Quality Audit script (Claude Sonnet, 1750 samples)
Phase 1: Object ontology expanded 31 → 74 tokens with descriptions + boundaries
Phase 2: 174K controls re-classified via Haiku (10 batches, $50)
  - Generic tokens removed (documentation, procedure, process)
  - L2 sub-topics added (108K + 64K controls)
  - Bad subtopics fixed (stakeholder_*, escalation fragments)
Phase 3: Re-clustering K=18704 (37K objects → 16.7K groups)
Phase 4: Direct MC generation from canonical tokens (gpre2_direct_mc.py)
Phase 5: Regulation-source split (gpre3, dry-run tested)

New features:
- Tenant-isolated document upload API (rag-service)
- BAuA crawler (Playwright, 131 PDFs downloaded)
- OSHA Technical Manual crawler (23 chapters)
- CE obligation extractor (6141 obligations from Qdrant)

RAG ingestion:
- 126 BAuA PDFs (TRBS/TRGS/ASR): 27,664 chunks
- OSHA Technical Manual: 7,241 chunks
- OSHA 1910 Subpart O (full): 745 chunks
- EuGH C-588/21 P: 216 chunks
- EU 2018/1725: 842 chunks

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-05-10 15:08:15 +02:00

290 lines
11 KiB
Python

#!/usr/bin/env python3
"""
Add L2 sub-topics to broad tokens. Instead of just "incident",
produces "incident:response", "incident:detection", etc.
Only processes tokens with >500 controls AND <90% audit accuracy.
Usage:
python3 /app/scripts/gpre0_add_subtopics.py --dry-run
python3 /app/scripts/gpre0_add_subtopics.py
"""
import argparse
import json
import logging
import os
import time
from collections import defaultdict
from pathlib import Path
import httpx
from sqlalchemy import create_engine, text
logging.basicConfig(
level=logging.INFO, format="%(asctime)s [%(levelname)s] %(message)s"
)
logger = logging.getLogger("gpre0-subtopics")
DB_URL = os.getenv(
"DATABASE_URL",
"postgresql://breakpilot:breakpilot123@postgres:5432/breakpilot_db",
)
ANTHROPIC_API_KEY = os.getenv("ANTHROPIC_API_KEY", "")
ANTHROPIC_MODEL = "claude-haiku-4-5-20251001"
ANTHROPIC_URL = "https://api.anthropic.com/v1/messages"
CHECKPOINT_DIR = Path("/tmp/gpre0_subtopic_checkpoints")
# Tokens that are too broad — need L2 sub-topics
BROAD_TOKENS = {
# Round 1 (already done)
"risk_management", "policy", "audit_logging", "incident",
"access_control", "compliance_audit", "asset_management",
"key_management", "third_party_management", "monitoring",
"financial_reporting", "data_classification", "change_management",
"alerting", "multi_factor_auth", "api_security",
"certificate_management", "human_resources_security",
"training", "data_processing_agreement", "data_processing_register",
"consumer_protection", "input_validation", "vulnerability",
"dpia", "data_breach_notification", "backup",
"supply_chain_due_diligence", "awareness",
"privacy_by_design", "credentials", "logging_configuration",
# Round 2 (remaining large tokens)
"supervisory_authority", "certification", "secure_development",
"product_safety", "personal_data", "data_subject_rights", "consent",
"ai_system", "encryption", "data_retention", "disaster_recovery",
"data_transfer", "aml", "transport_encryption", "network_security",
"physical_security", "medical_device", "patch_management",
"cookie_consent", "video_surveillance", "network_segmentation",
"telecommunications", "privileged_access", "session_management",
"password_policy", "governance", "whistleblowing", "payment_services",
"health_data", "sensitive_data", "ecommerce", "sustainability_reporting",
"critical_infrastructure", "regulatory",
}
SYSTEM_PROMPT = """Du bist ein Compliance-Spezialist. Jeder Control hat bereits ein Hauptthema (L1 Token).
Deine Aufgabe: Bestimme ein SPEZIFISCHES Sub-Thema (L2) innerhalb des Hauptthemas.
Das L2 Sub-Thema soll den KONKRETEN Aspekt beschreiben. Verwende kurze, klare englische Bezeichnungen.
Beispiele:
- L1=incident, Titel="Incident Response Plan erstellen" → L2="response_plan"
- L1=incident, Titel="Sicherheitsvorfälle erkennen" → L2="detection"
- L1=incident, Titel="Recovery nach Vorfall dokumentieren" → L2="recovery"
- L1=incident, Titel="Forensische Analyse durchführen" → L2="forensics"
- L1=risk_management, Titel="Risikobewertung durchführen" → L2="assessment"
- L1=risk_management, Titel="Risikominderungsmaßnahmen umsetzen" → L2="treatment"
- L1=risk_management, Titel="Restrisiko akzeptieren" → L2="acceptance"
- L1=access_control, Titel="Rollenbasierte Zugriffskontrolle" → L2="rbac"
- L1=access_control, Titel="Zugriffsrechte regelmäßig prüfen" → L2="access_review"
- L1=access_control, Titel="Identitätsmanagement implementieren" → L2="identity_management"
- L1=monitoring, Titel="Systemverfügbarkeit überwachen" → L2="availability"
- L1=monitoring, Titel="Sicherheitsereignisse überwachen" → L2="security_events"
- L1=policy, Titel="Datenschutzrichtlinie erstellen" → L2="data_protection"
- L1=policy, Titel="Acceptable Use Policy definieren" → L2="acceptable_use"
- L1=policy, Titel="Passwortrichtlinie festlegen" → L2="password"
- L1=financial_reporting, Titel="Jahresabschluss erstellen" → L2="annual_accounts"
- L1=financial_reporting, Titel="Steuererklärung einreichen" → L2="tax"
- L1=alerting, Titel="Datenpanne an Behörde melden" → L2="breach_notification"
- L1=alerting, Titel="Sicherheitswarnung eskalieren" → L2="escalation"
REGELN:
- L2 soll 1-3 Wörter sein, snake_case
- L2 soll SPEZIFISCH sein (nicht das L1 wiederholen)
- Verwende konsistente L2-Bezeichnungen für ähnliche Controls
Antworte NUR als JSON-Array: [{"id":"...","l2":"subtopic"}, ...]"""
def call_claude(controls_batch: list[dict]) -> tuple[list[dict], dict]:
"""Send batch to Claude for L2 sub-topic assignment."""
items = []
for c in controls_batch:
items.append(
f'- id="{c["control_id"]}" '
f'L1="{c["current_object"]}" '
f't="{c["title"]}" '
f'o="{c["objective"][:80]}"'
)
prompt = "Bestimme L2 Sub-Topics:\n" + "\n".join(items)
headers = {
"x-api-key": ANTHROPIC_API_KEY,
"anthropic-version": "2023-06-01",
"content-type": "application/json",
}
payload = {
"model": ANTHROPIC_MODEL,
"max_tokens": 1500,
"temperature": 0.0,
"system": SYSTEM_PROMPT,
"messages": [{"role": "user", "content": prompt}],
}
try:
resp = httpx.post(
ANTHROPIC_URL, headers=headers, json=payload, timeout=45.0
)
resp.raise_for_status()
data = resp.json()
content = data.get("content", [{}])[0].get("text", "")
usage = data.get("usage", {})
start = content.find("[")
end = content.rfind("]") + 1
if start >= 0 and end > start:
return json.loads(content[start:end]), usage
return [], usage
except httpx.TimeoutException:
logger.error("TIMEOUT — skipping")
return [], {}
except httpx.HTTPStatusError as e:
if e.response.status_code == 429:
logger.warning("Rate limited — waiting 60s")
time.sleep(60)
else:
logger.error("API error %d", e.response.status_code)
return [], {}
except Exception as e:
logger.error("Failed: %s", e)
return [], {}
def main():
parser = argparse.ArgumentParser()
parser.add_argument("--batch-size", type=int, default=20)
parser.add_argument("--dry-run", action="store_true")
args = parser.parse_args()
engine = create_engine(
DB_URL, connect_args={"options": "-c search_path=compliance,public"}
)
# Build LIKE patterns for broad tokens
like_clauses = " OR ".join(
f"cc.generation_metadata->>'merge_group_hint' LIKE '%:{tok}:%'"
for tok in BROAD_TOKENS
)
with engine.connect() as c:
rows = c.execute(text(f"""
SELECT cc.id, cc.control_id, cc.title,
COALESCE(cc.objective, '') as objective,
cc.generation_metadata->>'merge_group_hint' as hint
FROM canonical_controls cc
WHERE cc.generation_metadata->>'merge_group_hint' IS NOT NULL
AND cc.release_state NOT IN ('deprecated', 'rejected')
AND ({like_clauses})
""")).fetchall()
controls = []
for uuid, cid, title, objective, hint in rows:
parts = hint.split(":", 2) if hint else []
obj = parts[1] if len(parts) > 1 else ""
if obj in BROAD_TOKENS:
controls.append({
"uuid": str(uuid), "control_id": cid,
"title": title or "", "objective": objective or "",
"current_hint": hint, "current_object": obj,
})
logger.info("Found %d controls in broad tokens to add L2 sub-topics", len(controls))
# Process
total_tagged = 0
total_skipped = 0
total_input_tokens = 0
total_output_tokens = 0
corrections = []
l2_stats: dict[str, dict[str, int]] = defaultdict(lambda: defaultdict(int))
for i in range(0, len(controls), args.batch_size):
batch = controls[i:i + args.batch_size]
results, usage = call_claude(batch)
total_input_tokens += usage.get("input_tokens", 0)
total_output_tokens += usage.get("output_tokens", 0)
if not results:
total_skipped += len(batch)
continue
result_map = {r.get("id", ""): r for r in results}
for ctrl in batch:
r = result_map.get(ctrl["control_id"], {})
l2 = r.get("l2", "")
if not l2:
total_skipped += 1
continue
total_tagged += 1
old_hint = ctrl["current_hint"]
parts = old_hint.split(":", 2)
action = parts[0] if parts else "implement"
l1 = parts[1] if len(parts) > 1 else "unknown"
phase = parts[2] if len(parts) > 2 else "implementation"
# New format: action:L1_L2:phase
new_obj = f"{l1}_{l2}"
new_hint = f"{action}:{new_obj}:{phase}"
corrections.append({
"uuid": ctrl["uuid"],
"old_hint": old_hint,
"new_hint": new_hint,
})
l2_stats[l1][l2] += 1
processed = min(i + args.batch_size, len(controls))
if processed % 5000 < args.batch_size or processed >= len(controls):
logger.info(
"Progress: %d/%d (tagged=%d skip=%d)",
processed, len(controls), total_tagged, total_skipped,
)
time.sleep(0.3)
# Report
cost_in = total_input_tokens / 1_000_000 * 0.80
cost_out = total_output_tokens / 1_000_000 * 4.00
logger.info("\n" + "=" * 60)
logger.info("SUBTOPIC REPORT")
logger.info("=" * 60)
logger.info("Total: %d | Tagged: %d | Skipped: %d", len(controls), total_tagged, total_skipped)
logger.info("Cost: $%.2f (Haiku)", cost_in + cost_out)
# Show L2 distribution per L1
for l1, subs in sorted(l2_stats.items()):
top_subs = sorted(subs.items(), key=lambda x: -x[1])[:10]
logger.info("\n%s (%d unique L2):", l1, len(subs))
for l2, cnt in top_subs:
logger.info(" %4d %s_%s", cnt, l1, l2)
# Save corrections
CHECKPOINT_DIR.mkdir(parents=True, exist_ok=True)
corr_file = CHECKPOINT_DIR / "corrections_subtopics.json"
corr_file.write_text(json.dumps(corrections))
logger.info("\nSaved %d corrections to %s", len(corrections), corr_file)
if args.dry_run:
logger.info("DRY RUN — not updating DB")
return
if corrections:
logger.info("Applying %d corrections...", len(corrections))
with engine.begin() as c:
c.execute(text("SET search_path TO compliance, public"))
for corr in corrections:
c.execute(text("""
UPDATE canonical_controls
SET generation_metadata = jsonb_set(
generation_metadata,
'{merge_group_hint}',
to_jsonb(CAST(:new_hint AS text))
)
WHERE id = CAST(:uuid AS uuid)
"""), {"uuid": corr["uuid"], "new_hint": corr["new_hint"]})
logger.info("Done. %d hints updated.", len(corrections))
if __name__ == "__main__":
main()