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shift-camouflage

pjt222
업데이트됨 2 days ago
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이 스킬은 컨텍스트에 따라 다양한 소비자에게 다른 API나 동작을 동적으로 제공하는 적응형 인터페이스를 구현합니다. 다형적 API, 공격 표면 축소, 기능 플래그 롤아웃, 각 관찰자에게 필요한 기능만 노출하는 데 사용됩니다. 이 접근 방식에는 핵심 시스템 변경 없이 환경 평가, 동적 인터페이스 생성 및 행동 다형성을 포함합니다.

빠른 설치

Claude Code

추천
기본
npx skills add pjt222/agent-almanac -a claude-code
플러그인 명령대체
/plugin add https://github.com/pjt222/agent-almanac
Git 클론대체
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/shift-camouflage

Claude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요

문서

Tarnung wechseln

Implementieren adaptive surface transformation — polymorphic interfaces, context-aware behavior, and dynamic presentation — inspired by cuttlefish chromatophores. The system's surface adapts to its environment while its core remains stable, reducing attack surface and optimizing interaction with diverse observers.

Wann verwenden

  • A system must present different interfaces to different consumers (API versioning, multi-tenant, role-based)
  • Reducing attack surface by exposing only what each observer needs to see
  • Implementing Feature-Flags, progressive rollouts, or A/B testing at die Schnittstelle level
  • A system needs to adapt its behavior to environmental context ohne core changes
  • Protecting internal architecture from external coupling (observers couple to the surface, not the structure)
  • Complementing adapt-architecture when surface change is sufficient and deep transformation is unnecessary

Eingaben

  • Erforderlich: The system whose surface needs adaptation
  • Erforderlich: The observers/consumers and their different interface needs
  • Optional: Current interface design and its limitations
  • Optional: Threat model (what sollte hidden from which observers?)
  • Optional: Feature flag system or progressive rollout infrastructure
  • Optional: Performance constraints (dynamic surface generation has overhead)

Vorgehensweise

Schritt 1: Abbilden the Observer Landscape

Identifizieren who interacts with das System and what each observer needs to see.

  1. Catalog all observers:
    • External users (end users, API consumers, partners)
    • Internal services (microservices, background jobs, admin tools)
    • Adversaries (attackers, scrapers, competitors)
    • Regulators (auditors, compliance checks)
  2. Fuer jede observer, define:
    • What they need to see (required interface surface)
    • What they should not see (hidden surface)
    • What they expect to see (compatibility surface — may differ from what they need)
    • How they interact (protocol, frequency, sensitivity)
  3. Erstellen the observer-surface matrix:
Observer-Surface Matrix:
┌──────────────┬────────────────────────┬─────────────────┬──────────────┐
│ Observer     │ Required Surface       │ Hidden Surface  │ Threat Level │
├──────────────┼────────────────────────┼─────────────────┼──────────────┤
│ End users    │ Public API v2, UI      │ Internal APIs,  │ Low          │
│              │                        │ admin endpoints │              │
├──────────────┼────────────────────────┼─────────────────┼──────────────┤
│ Partner API  │ Partner API, webhooks  │ Internal logic, │ Medium       │
│              │                        │ user data       │              │
├──────────────┼────────────────────────┼─────────────────┼──────────────┤
│ Admin tools  │ Full API, debug        │ Raw data store  │ Low          │
│              │ endpoints              │ access          │              │
├──────────────┼────────────────────────┼─────────────────┼──────────────┤
│ Adversaries  │ Nothing (minimal)      │ Everything      │ High         │
│              │                        │ possible        │              │
└──────────────┴────────────────────────┴─────────────────┴──────────────┘

Erwartet: A complete observer landscape with surface requirements per observer. This drives all subsequent camouflage design.

Bei Fehler: If observer identification is incomplete, start with the two extremes: the most privileged observer (admin) and the most restricted (adversary). Entwerfen surfaces for these two, then interpolate for observers zwischen them.

Schritt 2: Entwerfen Chromatophore Mapping

Erstellen the mapping zwischen observer context and surface presentation — the "chromatophore" layer.

  1. Definieren context signals:
    • Authentication identity → determines privilege level
    • Request origin → geographic, network, or application context
    • Feature flags → enables/disables specific surface elements
    • Time/phase → deployment stage, business hours, maintenance windows
    • Load/health → degraded mode may present reduced surface
  2. Entwerfen the surface generation rules:
    • Fuer jede combination of context signals, define which surface elements are:
      • Visible: included in die Antwort/interface
      • Hidden: excluded entirely (not even Fehlermeldungs reveal their existence)
      • Transformed: present but modified for this observer (different schema, simplified data)
      • Decoy: deliberately misleading surface elements for adversarial contexts
  3. Implementieren the chromatophore layer:
    • A thin middleware/proxy that sits zwischen the core system and observers
    • Evaluates context signals on each request
    • Applies the appropriate surface configuration
    • Never modifies core behavior — only filters and transforms the surface
Chromatophore Architecture:
┌──────────────────────────────────────────────────────┐
│ Observer Request                                      │
│        │                                              │
│        ↓                                              │
│ ┌─────────────────┐                                   │
│ │ Context Extract  │ ← Auth, origin, flags, time      │
│ └────────┬────────┘                                   │
│          ↓                                            │
│ ┌─────────────────┐                                   │
│ │ Surface Select   │ ← Observer-surface matrix lookup  │
│ └────────┬────────┘                                   │
│          ↓                                            │
│ ┌─────────────────┐                                   │
│ │ Core System      │ ← Processes request normally      │
│ └────────┬────────┘                                   │
│          ↓                                            │
│ ┌─────────────────┐                                   │
│ │ Surface Filter   │ ← Remove/transform/add elements   │
│ └────────┬────────┘                                   │
│          ↓                                            │
│ Observer Response (adapted surface)                    │
└──────────────────────────────────────────────────────┘

Erwartet: A chromatophore mapping that translates observer context into surface configuration. The mapping is explicit, auditable, and separate from core logic.

Bei Fehler: If the mapping becomes too complex (too many context combinations), simplify to role-based surfaces: define 3-5 surface profiles (public, partner, admin, internal, minimal) and map every observer to one profile.

Schritt 3: Implementieren Behavioral Polymorphism

Make das System's behavior adapt to context, not just its surface appearance.

  1. Identifizieren context-dependent behaviors:
    • Response detail level (verbose for admin, minimal for public)
    • Rate limiting (generous for partners, strict for unknown callers)
    • Error messages (detailed for internal, generic for external)
    • Data freshness (real-time for premium, cached for standard)
    • Feature availability (full for beta testers, stable-only for general)
  2. Implementieren behavioral variants:
    • Each variant is a complete, tested behavior path
    • Context determines which variant executes
    • Variants share core logic but differ in presentation and policy
  3. Feature flag integration:
    • Feature flags control which behavioral variants are active
    • Progressive rollout: expose new behavior to a percentage of observers, increasing over time
    • Circuit breakers: automatisch revert to safe behavior if the new variant causes errors

Erwartet: The system's behavior adapts to observer context — the same core logic produces appropriate responses for different audiences. Feature flags enable progressive rollout of new behaviors.

Bei Fehler: If behavioral polymorphism creates too many code paths, consolidate to a pipeline model: core logic → policy layer → presentation layer. Polymorphism lives in the policy and presentation layers only, keeping core logic singular.

Schritt 4: Reduzieren Attack Surface

Minimieren what adversaries can observe and interact with.

  1. Anwenden the principle of least surface:
    • Each observer sees only what they need — nothing more
    • Unauthenticated observers see the minimum possible surface
    • Error messages never leak internal structure (no stack traces, no internal paths, no Versionsnummers)
  2. Implementieren active surface reduction:
    • Entfernen default pages, headers, and endpoints that reveal technology stack
    • Randomize non-essential response characteristics (timing jitter, header order)
    • Deaktivieren unused API endpoints entirely (not just hidden — actually off)
  3. Bereitstellen pattern disruption:
    • Vary response characteristics to defeat fingerprinting
    • Introduce controlled unpredictability in non-functional aspects
    • Sicherstellen, dass functional behavior remains deterministic while surface characteristics vary
  4. Ueberwachen for reconnaissance:
    • Detect patterns of requests that probe for hidden surface (enumeration attacks)
    • Alarmieren on repeated access to non-existent endpoints (path fuzzing)
    • Verfolgen and correlate reconnaissance patterns across sessions (see defend-colony)

Erwartet: A minimal attack surface where adversaries cannot easily determine das System's technology stack, internal structure, or hidden capabilities. Reconnaissance attempts are detected and tracked.

Bei Fehler: If surface reduction breaks legitimate consumers, the observer-surface matrix is incomplete — legitimate needs are being hidden. Ueberpruefen Step 1 and update the matrix. If randomization causes issues, reduce randomization to non-functional aspects only (timing, headers) and keep functional responses deterministic.

Schritt 5: Warten Surface Coherence

Sicherstellen, dass the dynamic surface remains consistent, debuggable, and maintainable.

  1. Surface testing:
    • Testen each observer profile explicitly (does admin see admin surface? does public see public surface?)
    • Testen surface transitions (what happens when an observer's context changes mid-session?)
    • Testen surface failure modes (what surface appears if the chromatophore layer fails?)
  2. Surface documentation:
    • Dokumentieren each observer profile and its surface configuration
    • Dokumentieren the context signals and their effects on surface selection
    • Keep documentation in sync with actual behavior (test documentation gegen reality)
  3. Debugging support:
    • Admin/debug mode reveals which surface profile is active and why
    • Logging captures which surface configuration was applied to each request
    • Ability to replay a request durch a specific surface profile for debugging
  4. Surface evolution:
    • Adding new surface elements: add to the appropriate profiles, test, deploy
    • Removing surface elements: deprecation warning period, then removal
    • Changing surface behavior: Feature-Flag controlled, progressive rollout

Erwartet: A maintainable, testable, well-documented surface adaptation system. The dynamic nature doesn't compromise the ability to debug, document, or evolve die Schnittstelles.

Bei Fehler: If the chromatophore layer becomes a debugging nightmare, add transparency: every response includes a trace header (visible only to admin/debug profile) indicating which surface profile was applied and which context signals determined it.

Validierung

  • Observer landscape is mapped with surface requirements per observer
  • Chromatophore mapping translates context to surface configuration
  • Behavioral polymorphism adapts responses to observer context
  • Attack surface is minimized for adversarial observers
  • Each observer profile is explicitly tested
  • Surface failure mode presents a safe default (minimal surface)
  • Debug/admin mode can inspect active surface configuration
  • Surface documentation matches actual behavior

Haeufige Stolperfallen

  • Surface complexity explosion: Too many observer profiles with too many variations. Consolidate to 3-5 profiles maximum. Most observers fit into broad categories
  • Core contamination: Letting surface adaptation logic leak into core business logic. The chromatophore layer muss separate — if you're adding if-statements about observer type in core code, the architecture is wrong
  • Security durch obscurity alone: Surface reduction is a defense-in-depth layer, not a replacement for proper security controls. A hidden endpoint still needs Authentifizierung and Autorisierung
  • Inconsistent surfaces: Observer A sees version 1 of a response and observer B sees version 2 — but they're supposed to see the same thing. Testen surfaces explicitly and keep the observer-surface matrix authoritative
  • Forgetting the failure surface: When the chromatophore layer itself fails, what surface does the observer see? The default muss safe (minimal surface) not open (full surface)

Verwandte Skills

  • assess-form — surface adaptation may resolve pressure identified in form assessment ohne requiring deep transformation
  • adapt-architecture — deep structural change for when surface adaptation is insufficient
  • repair-damage — surface adaptation can mask damage waehrend repair (with caution — don't hide real problems)
  • defend-colony — attack surface reduction is a defense layer; reconnaissance detection feeds into defense
  • coordinate-swarm — context-aware behavior in distributed systems requires coordinated surface adaptation
  • configure-api-gateway — API gateways implement many chromatophore layer functions in der Praxis
  • deploy-to-kubernetes — Kubernetes services and ingress enable network-level surface control

GitHub 저장소

pjt222/agent-almanac
경로: i18n/de/skills/shift-camouflage
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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