compliance-readiness
$
npx mdskill add alirezarezvani/claude-skills/compliance-readinessPressure-tests compliance programs with six critical questions
- Evaluates readiness before adopting new frameworks or audits
- Leverages framework_selector.py and cross_framework tools
- Identifies overlaps and gaps across multiple compliance standards
- Delivers actionable insights for audit planning and certification
SKILL.md
.github/skills/compliance-readinessView on GitHub ↗
--- name: "compliance-readiness" description: "/cs:compliance-readiness <program> — Multi-framework compliance officer 6-question forcing interrogation of any compliance program. Use before starting a new framework, planning the annual audit calendar, or preparing for certification stage 1." --- # /cs:compliance-readiness — Compliance Officer Forcing Questions **Command:** `/cs:compliance-readiness <program>` The multi-framework compliance officer pressure-tests any compliance program. Six questions before any new-framework commitment, audit cycle planning, or certification readiness sign-off. ## When to Run - Before adopting a new compliance framework - Before annual audit calendar finalization - Before certification stage 1 readiness sign-off - Before management review (Clause 9.3 across frameworks) - When evidence-collection effort has grown 50%+ year-over-year (a smell) - When an audit produced > 15% critical findings ## The Six Compliance Officer Questions ### 1. Have you named every applicable framework? **No framework selector run, no defensible scope.** - Run `framework_selector.py` with company profile - Forgetting a framework means rebuilding the audit program later - Pay attention to industry-specific overlays (financial: NYDFS, FINMA; healthcare: HIPAA, ISO 13485; AI: ISO 42001 + EU AI Act) ### 2. Where do the frameworks overlap, and what's the reuse leverage? **Single evidence -> N controls = the cornerstone of multi-framework efficiency.** - Run `cross_framework_mapper.py` with enabled frameworks - HIGH-confidence mappings: same evidence; MEDIUM: existing + overlay; LOW: new artefact - Without overlap analysis, you'll collect the same access-review records 3 times ### 3. Who owns each artefact, and what's the reuse-leverage score? **Joint ownership without accountability is the most common cause of stale evidence.** - Run `evidence_pool_generator.py` for the artefact inventory - HIGH-leverage artefacts (≥ 5 mappings) get built first - Each artefact needs one accountable owner - Stale evidence is an effective gap — even if the artefact existed historically ### 4. What's the audit calendar, and is auditor independence respected? **Surveillance audits stacking in the same week is a smell.** - Use per-framework audit-plan tools (aims_audit_scheduler, isms_audit_scheduler, audit_schedule_optimizer) - Auditor cannot audit their own work (Clause 9.2 across all ISO standards) - For small teams: rotate auditors + occasional external auditor ### 5. What does a mock audit produce, and is the severity distribution healthy? **No mock audit, no readiness signal.** - Run `audit_simulator.py` with framework + scope - Healthy distribution: ≥ 40% observation, ≤ 15% critical - All-critical findings = destructive audit OR genuinely failing program - All-observation findings = audit too superficial ### 6. What's the management review cadence across frameworks? **Each framework wants its own management review; an integrated review (per Annex SL) saves 5x exec time.** - Schedule one quarterly cross-framework review covering all enabled frameworks' Clause 9.3 inputs - Inputs: risk register changes, open nonconformities, audit findings, incidents, drift, KPIs - Outputs: action items, resource decisions, scope adjustments ## Workflow ```bash # 1. Framework selection python ../../skills/compliance-os/scripts/framework_selector.py profile.json # 2. Cross-framework overlap python ../../skills/compliance-os/scripts/cross_framework_mapper.py program.json # 3. Evidence pool consolidation python ../../skills/compliance-os/scripts/evidence_pool_generator.py program.json # 4. Mock audit (per framework) python ../../skills/compliance-os/scripts/audit_simulator.py scope.json ``` ## Output Format ```markdown # Compliance Readiness: <program> **Date:** YYYY-MM-DD ## The Decision Being Made [framework-set | audit-calendar | certification-readiness | evidence-consolidation] ## Framework Set - Applicable: <list> - Binding (regulations): <count> - Certifiable: <count> - Missing dependencies: <list> ## Cross-Framework Overlap - Total merged controls in scope: N - High-leverage artefacts (≥ 5 mappings): M - Top reuse opportunities: <top 5 artefacts> ## Evidence Pool - Artefacts in catalog: N - High-leverage count: M - Stale evidence rate: X% - Unowned artefacts: K ## Audit Calendar - Frameworks scheduled this year: <list> - Auditor independence respected: Y/N - Conflicts: <list> ## Mock Audit Results (per framework) - <framework>: total findings N, critical X%, observation Y%, healthy distribution: Y/N ## Verdict 🟢 READY | 🟡 STAGE-2-CANDIDATE | 🔴 NOT-READY ## Top 3 Actions [3 concrete next steps with owners + dates] ``` ## Routing - `/cs:aims-audit` — for ISO 42001-specific forcing questions - `/cs:ai-act-readiness` — for EU AI Act-specific forcing questions - `/cs:ciso-review` — for cybersecurity strategy - `/cs:caio-review` — for executive AI strategy - `/cs:gc-review` — for novel-case legal review - `/cs:decide` — to log the verdict - `/cs:freeze 30` — on certification commitments (multi-year financial impact) ## Related - Agent: [`cs-compliance-officer`](../../agents/cs-compliance-officer.md) - Skill: [`compliance-os`](../compliance-os/SKILL.md) - Adjacent: `ra-qm-team/skills/iso42001-specialist/`, `ra-qm-team/skills/eu-ai-act-specialist/`, `ra-qm-team/skills/information-security-manager-iso27001/`, `ra-qm-team/skills/soc2-compliance/`, `ra-qm-team/skills/gdpr-dsgvo-expert/` --- **Version:** 1.0.0
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