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breakpilot-compliance/backend-compliance/reference_scenarios/onboarding_advisor_demo.py
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Benjamin Admin 3ba90f49cf feat: Smart Onboarding Advisor — make the knowledge usable in onboarding (ADR-012)
The user-named "right next runtime step": stop building knowledge, start using it automatically in
onboarding — no sales training, no regulation picking. compliance/onboarding/ is an ORCHESTRATOR (not
a new engine) wiring Company 2A -> RS-005 -> optimization -> completeness:

  advisor_start(input, cert_hypotheses, target_requirements, ...) -> AdvisorResult

From (company + products + certifications + target) it returns inferred_assumptions, rejected_
assumptions, next_best_questions (<=5, ranked by information_gain + leverage + unknown_high_risk +
evidence_missing, each self-explaining), capability_delta, top_measures, evidence_requests,
unsupported_domains, completeness_summary. apply_answer() updates the profile (delta shrinks).

Welt-1 throughout: certificates REDUCE questions but satisfy nothing automatically (verification_
required); relevance(evidence,target) keeps ISO 14001 out of the CRA result. Certificate->capability
hypotheses + target requirements are INJECTED (curated knowledge, outsourced; not in code).

All 7 acceptance criteria pass; mypy --strict clean. First app-caller wiring the engines into a
product flow — still no endpoint/persistence, so 0 runtime effect -> no deploy yet (deploys when
POST /onboarding/advisor-start + frontend are wired). check-loc 0.
2026-06-28 12:45:49 +02:00

73 lines
3.6 KiB
Python

# ruff: noqa
# mypy: ignore-errors
"""Smart Onboarding Advisor demo — what the frontend shows, automatically (no sales interpretation).
The user types company + products + certifications + target. The Advisor orchestrates the existing
engines and returns the next best questions, assumptions and measures. Sales sees only the result.
Synthetic, no real names. Non-runtime demo of a runtime step.
Run: cd backend-compliance && PYTHONPATH=. python3 reference_scenarios/onboarding_advisor_demo.py
"""
from __future__ import annotations
import os
import yaml
from compliance.onboarding import OnboardingInput, advisor_start
from compliance.transition_reasoning import TargetRequirement
OUT = []
def w(s=""):
OUT.append(s)
CRA = yaml.safe_load(open(os.path.join(os.path.dirname(__file__), "..", "knowledge", "transition_patterns",
"transition_pattern_iso27001_to_cra_maschinenvo_v1.yaml"), encoding="utf-8"))
infosec = [a["capability"] for a in CRA["likely_covered"]]
req = [TargetRequirement(capability_id=a["capability"]) for a in CRA["likely_covered"]]
req += [TargetRequirement(capability_id=d["capability"], question_intent=d.get("needed_information", "verify_existence"),
expected_evidence=d.get("expected_evidence", [])) for d in CRA["delta_requirements"]]
covers = {d["capability"]: d.get("covers_targets", []) for d in CRA["delta_requirements"]}
hyp = {"ISO27001": infosec, "TISAX": infosec,
"ISO9001": ["ce_conformity_assessment_and_technical_documentation"],
"ISO14001": ["environmental_management_documentation"]}
inp = OnboardingInput(company="synthetisch", industry="machine_builder",
products=["Parkschein-/Schrankensystem"], markets=["EU", "DE"],
certifications=["ISO9001", "ISO27001", "ISO14001", "TISAX"],
known_evidence=["CE process"], target=["CRA"])
res = advisor_start(inp, hyp, req, target_id="CRA", covers_targets=covers, corpus_status={"CRA": "validated"})
w("# Smart Onboarding Advisor — was der Nutzer sieht (automatisch, ohne Vertrieb)")
w("")
w("_Eingabe: Unternehmen + Produkte + Zertifizierungen + Ziel. Den Rest macht die Orchestrierung über die bestehenden Engines (Company 2A · RS-005 · Optimization · Completeness). Synthetisch, keine echten Namen._")
w("")
w("## Eingabe")
w("> Zertifizierungen: **%s** · Produkt: **%s** · Ziel: **%s**" % (", ".join(inp.certifications), inp.products[0], ", ".join(inp.target)))
w("")
w("## Was wir erkannt haben")
w("> %s" % res.headline)
w("")
w("**Aus Ihren Zertifizierungen abgeleitet (zu bestätigen, nicht automatisch erfüllt):**")
for a in res.inferred_assumptions:
w("- %s" % a.statement)
for r in res.rejected_assumptions:
w("- _%s%s_" % (r.statement, r.reason))
w("")
w("## Die wenigen offenen Punkte — nur die nächsten besten Fragen")
for n, q in enumerate(res.next_best_questions, 1):
w("**Frage %d von %d** _(Informationswert %.0f)_" % (n, len(res.next_best_questions), q.information_value))
w("> %s? — _Warum fragen wir das: %s_" % (q.capability_id.replace("_", " "), q.why))
w("")
w("## Womit zuerst anfangen (größter Hebel)")
for m in res.top_measures[:5]:
w("- `%s` — schließt %d Anforderung(en): %s" % (m.capability_id, m.leverage, ", ".join(m.closes) or "—"))
w("")
w("## Vollständigkeit (ehrlich)")
w("> %s" % res.completeness_summary)
w("")
w("---")
w("_Der Vertrieb wählt KEIN Regelwerk und interpretiert nichts — er sieht nur dieses Ergebnis. Jede beantwortete Frage aktualisiert das Capability Profile und verkleinert das Delta._")
print("\n".join(OUT))