mit einem Klick
scan-design-system
[Documentation] Use when scanning design tokens, component inventory, and app-to-doc design system mappings.
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[Documentation] Use when scanning design tokens, component inventory, and app-to-doc design system mappings.
[Documentation] Use when you need initialize, update, or refactor CLAUDE markdown from project-config JSON and codebase scan results.
[Codex] Use when you need to run full Codex mirror sync (migrate → hooks → context → verify) standalone, no npm/package JSON needed.
[Git] Use when asked to "commit", "stage and commit", "save changes", or after completing implementation tasks.
[Fix & Debug] Use when bugfix workflow reaches debug step.
[Documentation] Use when you need orchestrate all reference doc scans in parallel.
[Documentation] Use when scanning backend code to refresh repository, CQRS, validation, entity, event, and migration guidance.
| name | scan-design-system |
| description | [Documentation] Use when scanning design tokens, component inventory, and app-to-doc design system mappings. |
Codex compatibility note:
- Invoke repository skills with
$skill-namein Codex; this mirrored copy rewrites legacy Claude/skill-namereferences.- Task tracker mandate: BEFORE executing any workflow or skill step, create/update task tracking for all steps and keep it synchronized as progress changes.
- User-question prompts mean to ask the user directly in Codex.
- Ignore Claude-specific mode-switch instructions when they appear.
- Strict execution contract: when a user explicitly invokes a skill, execute that skill protocol as written.
- Subagent authorization: when a skill is user-invoked or AI-detected and its protocol requires subagents, that skill activation authorizes use of the required
spawn_agentsubagent(s) for that task.- Do not skip, reorder, or merge protocol steps unless the user explicitly approves the deviation first.
- For workflow skills, execute each listed child-skill step explicitly and report step-by-step evidence.
- If a required step/tool cannot run in this environment, stop and ask the user before adapting.
Codex does not receive Claude hook-based doc injection. When coding, planning, debugging, testing, or reviewing, open project docs explicitly using this routing.
Always read:
docs/project-config.json (project-specific paths, commands, modules, and workflow/test settings)docs/project-reference/docs-index-reference.md (routes to the full docs/project-reference/* catalog)docs/project-reference/lessons.md (always-on guardrails and anti-patterns)Missing-file hard stop: If docs/project-config.json, the docs index, lessons.md, or any task-required reference doc is missing, stop immediately and ask the user to run $project-config and $scan-all.
Situation-based docs:
backend-patterns-reference.md, domain-entities-reference.md, project-structure-reference.mdfrontend-patterns-reference.md, scss-styling-guide.md, design-system/README.mdfeature-docs-reference.mdintegration-test-reference.mde2e-test-reference.mdcode-review-rules.md plus domain docs above based on changed filesDo not read all docs blindly. Start from docs-index-reference.md, then open only relevant files for the task.
Goal: Scan project for design system artifacts → populate docs/project-reference/design-system/README.md with overview, app-to-documentation mapping, design token inventory, and component catalog. (read directly when relevant; do not rely on hook-injected conversation text)
Workflow:
Key Rules:
Before any other step, run in parallel:
Read docs/project-reference/design-system/README.md
Detect design system type:
| Signal | Type | Agent Emphasis |
|---|---|---|
Token files (design-tokens.json, tokens.scss, Style Dictionary config) | Token-first | Prioritize Agent 3 (token discovery) |
Storybook config (.storybook/, *.stories.ts) | Component-library | Prioritize Agent 2 (component inventory) |
Figma token exports or figma-tokens.json | Figma-driven | Prioritize Agent 3 (token import chain) |
| Only component directories, no token files | Ad-hoc/CSS-only | Prioritize Agent 1 (structure) |
| Mix of above | Hybrid | Run all 3 agents with equal weight |
Resolve config-driven paths from docs/project-config.json:
designSystem.canonicalDoc — single source of truth for new codedesignSystem.tokenFiles — drop-in token filesCheck for app-specific design docs in the same directory
Evidence gate: Confidence <60% on design system type → report uncertainty, proceed with Agent 1 (structure) only.
Create task tracking entries for each sub-agent and each verification step. Do not start Phase 2 without tasks created.
Launch 3 general-purpose sub-agents in parallel. Each MUST:
file:line for every findingAll findings → plans/reports/scan-design-system-{YYMMDD}-{HHMM}-report.md
Think: How is the design system organized? What's the canonical doc? What's the token chain? Which apps have design docs and which don't?
docs/project-reference/design-system/** to map all design docs*.stories.ts, *.stories.tsx, *.stories.mdx){docsPath}/{canonicalDoc} has expected sections. Flag missing sections.{docsPath}/{tokenFiles[i]} exist and contain variable declarations. Flag empty/missing.Think: What dimensions define a complete component inventory? Consider: Discoverability (can I find it?), Categorization (what type?), Variant coverage (size/color/state?), Accessibility (ARIA/keyboard?), Documentation completeness (JSDoc/README/Storybook?), Icon/asset library coverage.
For each dimension, derive the specific grep/glob patterns from what the project actually uses — do NOT hardcode Angular/React/Vue-specific patterns unless confirmed.
Think: What design tokens actually exist in source code (not just what's documented)? Which are declarations (authoritative) vs usages (derived)?
Source scope (whitelist, not full repo):
src/**/styles/**/*.{scss,css}, src/**/themes/**/*.{scss,css}, src/**/tokens/**/*.{scss,css}src/**/*.scss ONLY when path contains theme, token, palette, design, style-guide, or variablesnode_modules, dist, .nx, coverage, component-local stylesDiscovery rules (declarations only, NOT usages):
--[a-zA-Z][a-zA-Z0-9_-]*\s*: — capture LHS only, dedupe^\s*\$[a-zA-Z][a-zA-Z0-9_-]*\s*: — anchor to start-of-line(padding|margin|gap)\s*:\s*[\d.]+(px|rem|em) — extract values, dedupe(font-family|font-size|font-weight)\s*: — extract RHS, dedupe@media[^{]*\((min|max)-width:\s*[\d.]+(px|em|rem)\) — extract widths, dedupeCategorise: Colors / Typography / Spacing / Breakpoints / Z-Index / Elevation / Component-prefixes / Other. Persist incrementally — append to report after each category. Quality gate: If a category has <3 unique entries OR >200 entries, log "scope too narrow/broad — manual refinement required".
Read report. Build target sections.
Round 1 (main agent): Build section drafts from report findings.
Round 2 (fresh sub-agent, zero memory): Independently verifies:
| Section | Content |
|---|---|
| Design System Overview | High-level description — type, tools, organization |
| App Documentation Map | Table: App name, Design doc path, Token source, Component library |
| Design Tokens | Token categories, file locations, naming convention — values from declarations |
| Component Inventory | Table: Component name, Category, Variants, Path, Has docs? |
| Gap Analysis | Missing docs, zero-adoption tokens, undocumented components |
| Icon & Asset Library | Icon set source, asset directory paths, usage patterns |
| Storybook | Setup (if exists), story organization, how to add new stories |
| Usage Guidelines | How to consume tokens and components in application code |
When init mode detected (canonical doc missing or placeholder):
{docsPath}/{canonicalDoc} from Agent 3 findings:
<!-- Generated by $scan-design-system on YYYY-MM-DD; refine sections manually -->{docsPath}/{tokenFiles[i]} from grouped declarations:
PLACEHOLDER_MARKER_SCSS sentinel before writing real tokens.scss: SCSS variable block per category + CSS custom property mirrors in :root {}<!-- Last scanned: YYYY-MM-DD --> at top{docsPath}/{canonicalDoc} and every {docsPath}/{tokenFiles[i]}MUST ATTENTION after the doc is written and verified, create a REQUIRED final todo task and run $prompt-enhance docs/project-reference/design-system/README.md — why: this reference doc is injected into AI context; attention-anchoring (top/bottom Final Purpose, inline READ summaries, token density) directly raises downstream AI output quality. A scan is NOT complete until its doc is prompt-enhanced.
task tracking (required, last task): Run $prompt-enhance docs/project-reference/design-system/README.md on the scanned doc
[IMPORTANT] Use task tracking to break ALL work into small tasks BEFORE starting — including tasks per file read. Prevents context loss from long files. Simple tasks: ask user whether to skip.
Prerequisites: MUST ATTENTION READ before executing:
Critical Thinking Mindset — Every claim needs traced proof, confidence >80% to act. Anti-hallucination: Never present guess as fact — cite sources, admit uncertainty, self-check output, cross-reference independently. Certainty without evidence = root of all hallucination.
Scan & Update Reference Doc — Surgical updates only, NEVER full rewrite.
- Read existing doc first — understand structure and manual annotations
- Detect mode: Placeholder (headings only) → Init. Has content → Sync.
- Scan codebase (grep/glob) for current patterns
- Diff findings vs doc — identify stale sections only
- Update ONLY diverged sections. Preserve manual annotations.
- Update metadata (date, version) in frontmatter/header
- NEVER rewrite entire doc. NEVER remove sections without evidence obsolete.
Output Quality — Token efficiency without sacrificing quality.
- No inventories/counts — stale instantly
- No directory trees — use 1-line path conventions
- No TOCs — AI reads linearly
- One example per pattern — only if non-obvious
- Lead with answer, not reasoning
- Sacrifice grammar for concision in reports
- Unresolved questions at end
AI Mistake Prevention — Failure modes to avoid on every task:
Check downstream references before deleting. Deleting components causes documentation and code staleness cascades. Map all referencing files before removal. Verify AI-generated content against actual code. AI hallucinates APIs, class names, and method signatures. Always grep to confirm existence before documenting or referencing. Trace full dependency chain after edits. Changing a definition misses downstream variables and consumers derived from it. Always trace the full chain. Trace ALL code paths when verifying correctness. Confirming code exists is not confirming it executes. Always trace early exits, error branches, and conditional skips — not just happy path. When debugging, ask "whose responsibility?" before fixing. Trace whether bug is in caller (wrong data) or callee (wrong handling). Fix at responsible layer — never patch symptom site. Assume existing values are intentional — ask WHY before changing. Before changing any constant, limit, flag, or pattern: read comments, check git blame, examine surrounding code. Verify ALL affected outputs, not just the first. Changes touching multiple stacks require verifying EVERY output. One green check is not all green checks. Holistic-first debugging — resist nearest-attention trap. When investigating any failure, list EVERY precondition first (config, env vars, DB names, endpoints, DI registrations, data preconditions), then verify each against evidence before forming any code-layer hypothesis. Surgical changes — apply the diff test. Bug fix: every changed line must trace directly to the bug. Don't restyle or improve adjacent code. Enhancement task: implement improvements AND announce them explicitly. Surface ambiguity before coding — don't pick silently. If request has multiple interpretations, present each with effort estimate and ask. Never assume all-records, file-based, or more complex path. Keep domain concepts out of generic/shared/infrastructure layers. A reusable layer (shared library, framework, infra module) must reference NO consumer-specific domain concept — tenant/customer/product IDs, business entities, feature rules. The leak compiles and runs, so it passes review silently while coupling the "reusable" layer to one consumer. Push domain fields/logic down into the consumer via subclass or composition.
IMPORTANT MUST ATTENTION read existing doc first, scan codebase, diff, surgical update only. Never rewrite entire doc.
IMPORTANT MUST ATTENTION output quality: no counts/trees/TOCs, 1 example per pattern, lead with answer.
MUST ATTENTION apply critical thinking — every claim needs traced proof, confidence >80% to act. Anti-hallucination: never present guess as fact.
MUST ATTENTION apply AI mistake prevention — holistic-first debugging, fix at responsible layer, surface ambiguity before coding, re-read files after compaction.
IMPORTANT MUST ATTENTION Final Step: run $prompt-enhance docs/project-reference/design-system/README.md as the REQUIRED last todo task — never end the scan without enhancing the doc it just wrote.
IMPORTANT MUST ATTENTION break work into small task tracking tasks BEFORE starting
IMPORTANT MUST ATTENTION detect design system TYPE in Phase 0 — agent emphasis depends on it
IMPORTANT MUST ATTENTION NEVER invent variable values, hex colors, or mixin signatures — Grep to confirm
IMPORTANT MUST ATTENTION sub-agents write findings incrementally after each category — NEVER batch at end
IMPORTANT MUST ATTENTION Gap Analysis section is mandatory — document what's missing, not just what exists
IMPORTANT MUST ATTENTION when Round 1 finds issues, Round 2 fresh-eyes after fixing validates paths and token values. Clean Round 1 ENDS the scan.
Anti-Rationalization:
| Evasion | Rebuttal |
|---|---|
| "Design system type obvious, skip Phase 0 detection" | Phase 0 is BLOCKING — agent emphasis depends on detected type |
| "Only 2 agents needed, skip token discovery agent" | Token discovery is separate from component inventory — NEVER merge |
| "Token values look correct" | Grep-verify ALL token values against declarations — "looks correct" ≠ verified |
| "Gap Analysis not needed" | Gap Analysis is a required section — documents what's missing for future work |
| "Skip Round 2 even when Round 1 found issues" | Clean Round 1 (zero issues) does end the scan. But when issues exist, fresh-eyes is mandatory after fixing — main agent rationalizes own mistakes. |
| "Verified 3 paths, that's enough" | Glob-verify ALL paths in inventory — spot-check is insufficient |
[TASK-PLANNING] Before acting, analyze task scope and break into small todo tasks and sub-tasks using task tracking.
Source: .claude/hooks/lib/prompt-injections.cjs + .claude/.ck.json
Generic portability boundary: Reusable skills and protocol text stay project-neutral; project-specific conventions are discovered from docs/project-config.json and docs/project-reference/. Apply shared AI-SDD from shared/sdd-artifact-contract.md. Read docs/project-config.json and docs/project-reference/docs-index-reference.md, then open the project reference docs named there. If either file or a required reference doc is missing, stop immediately and ask the user to run the project-config and scan-all skills. Any supported AI tool may execute when this shared context and local docs are available.
$workflow-start <workflowId> for standard; sequence custom steps manuallyBreak work into small tasks (task tracking) before starting. Add final task: "Analyze AI mistakes & lessons learned".
Extract lessons — ROOT CAUSE ONLY, not symptom fixes:
$learn.$code-review/$code-simplifier/$security/$lint catch this?" — Yes → improve review skill instead.$learn.
[TASK-PLANNING] [MANDATORY] BEFORE executing any workflow or skill step, create/update task tracking for all planned steps, then keep it synchronized as each step starts/completes.