fix(onboarding): apply hypothesis/vocabulary review decisions (ISO13485, patch-policy rationale, summary)
Two reviewed knowledge decisions (2026-06-28) + the deferred cosmetic counter, before #59. 1. ISO13485 removed from the incident_management hypothesis. ISO 13485 CAPA / quality-safety incident handling is NOT security incident management — the mapping was too broad and would seed false hypotheses for the empirical loop. A dedicated manage_quality_and_safety_incidents capability can come later IF a target needs it; not forced now. (ISO27001/TISAX/IEC62443 keep incident_management.) 2. patch_policy_doc -> secure_signed_update_distribution stays `partial`, but the curated rationale is sharpened: "indicates update governance, does not evidence signed distribution" (a patch policy is not proof of SIGNED distribution). New optional SignalMapping.rationale field carries the curated note. (github_actions_ci -> SDL and dependency_scanning -> vuln-mgmt reviewed and APPROVED as-is.) 3. Cosmetic (folded in since we touched the file): the silent-intake summary now counts detected and indications SEPARATELY ("N automatisch erkannt, M Indikation(en)") instead of lumping partial signals into "automatisch erkannt" — consistent with the three-state model just shipped. Tests: ISO13485 no longer resolves to incident_management; summary counts split correctly. 29 onboarding tests pass, mypy --strict clean, demo runs, check-loc 0. Runtime-visible (hypothesis resolution + summary text) -> deploy + smoke.
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@@ -41,6 +41,7 @@ class SignalMapping(BaseModel):
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evidence: Optional[str] = None # the artifact found (already in hand -> no upload needed)
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product_fact: Optional[str] = None # e.g. "connected_to_internet"
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fact_value: str = "true"
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rationale: str = "" # curated note: WHY only indicative (esp. for partial mappings)
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class DetectedCapability(BaseModel):
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@@ -111,10 +112,12 @@ def silent_intake(
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detected = [caps[k] for k in sorted(caps)]
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product_facts = [facts[k] for k in sorted(facts)]
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requirements_seen = sorted(requirements)
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n_detected = sum(1 for d in detected if d.relationship == "detected") # concrete artifacts -> auto-detected
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n_indication = len(detected) - n_detected # partial -> indication, still asked
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summary = (
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"Stille Vorbefüllung: %d Fähigkeit(en) automatisch erkannt, %d Produktfakt(en), %d Nachweis(e) "
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"bereits vorhanden, %d Anforderung(en) erkannt (nicht als vorhanden gewertet)."
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% (len(detected), len(product_facts), len(evidence), len(requirements_seen))
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"Stille Vorbefüllung: %d Fähigkeit(en) automatisch erkannt, %d Indikation(en), %d Produktfakt(en), "
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"%d Nachweis(e) bereits vorhanden, %d Anforderung(en) erkannt (nicht als vorhanden gewertet)."
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% (n_detected, n_indication, len(product_facts), len(evidence), len(requirements_seen))
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)
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return SilentIntakeResult(
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detected_capabilities=detected, product_facts=product_facts,
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