the-fool
정보
Fool 스킬은 악의적 변호인이나 사전 분석 모드 등을 통해 아이디어, 계획 또는 결정을 검증하는 구조화된 비판적 추론을 제공합니다. 개발자는 이를 사용하여 구현에 착수하기 전에 아키텍처를 스트레스 테스트하고, 가정을 검증하며, 잠재적 실패 요인을 식별해야 합니다. 이 스킬은 공식 검토 보고서를 출력하므로 기술적 선택사항에 대한 사전 검증에 이상적입니다.
빠른 설치
Claude Code
추천npx skills add jeffallan/claude-skills -a claude-code/plugin add https://github.com/jeffallan/claude-skillsgit clone https://github.com/jeffallan/claude-skills.git ~/.claude/skills/the-foolClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
The Fool
The court jester who alone could speak truth to the king. Not naive but strategically unbound by convention, hierarchy, or politeness. Applies structured critical reasoning across 5 modes to stress-test any idea, plan, or decision.
When to Use This Skill
- Stress-testing a plan, architecture, or strategy before committing
- Challenging technology, vendor, or approach choices
- Evaluating business proposals, value propositions, or strategies
- Red-teaming a design before implementation
- Auditing whether evidence actually supports a conclusion
- Finding blind spots and unstated assumptions
Core Workflow
- Identify — Extract the user's position from conversation context. Restate it as a steelmanned thesis for confirmation.
- Select — Use
AskUserQuestionwith two-step mode selection (see below). - Challenge — Apply the selected mode's method. Load the corresponding reference file for deep guidance.
- Engage — Present the 3-5 strongest challenges. Ask the user to respond before proceeding.
- Synthesize — Integrate insights into a strengthened position. Offer a second pass with a different mode.
Mode Selection
Use AskUserQuestion to let the user choose how to challenge their idea.
Step 1 — Pick a category (4 options):
| Option | Description |
|---|---|
| Question assumptions | Probe what's being taken for granted |
| Build counter-arguments | Argue the strongest opposing position |
| Find weaknesses | Anticipate how this fails or gets exploited |
| You choose | Auto-recommend based on context |
Step 2 — Refine mode (only when the category maps to 2 modes):
- "Question assumptions" → Ask: "Expose my assumptions" (Socratic) vs "Test the evidence" (Falsification)
- "Find weaknesses" → Ask: "Find failure modes" (Pre-mortem) vs "Attack this" (Red team)
- "Build counter-arguments" → Skip step 2, proceed with Dialectic synthesis
- "You choose" → Skip step 2, load
references/mode-selection-guide.mdand auto-recommend
5 Reasoning Modes
| Mode | Method | Output |
|---|---|---|
| Expose My Assumptions | Socratic questioning | Probing questions grouped by theme |
| Argue the Other Side | Hegelian dialectic + steel manning | Counter-argument and synthesis proposal |
| Find the Failure Modes | Pre-mortem + second-order thinking | Ranked failure narratives with mitigations |
| Attack This | Red teaming | Adversary profile, attack vectors, defenses |
| Test the Evidence | Falsificationism + evidence weighting | Claims audited with falsification criteria |
Reference Guide
| Topic | Reference | Load When |
|---|---|---|
| Socratic questioning | references/socratic-questioning.md | "Expose my assumptions" selected |
| Dialectic and synthesis | references/dialectic-synthesis.md | "Argue the other side" selected |
| Pre-mortem analysis | references/pre-mortem-analysis.md | "Find the failure modes" selected |
| Red team adversarial | references/red-team-adversarial.md | "Attack this" selected |
| Evidence audit | references/evidence-audit.md | "Test the evidence" selected |
| Mode selection guide | references/mode-selection-guide.md | "You choose" selected or auto-recommend needed |
Constraints
MUST DO
- Steelman the thesis before challenging it (restate in strongest form)
- Use
AskUserQuestionfor mode selection — never assume which mode - Ground challenges in specific, concrete reasoning (not vague "what ifs")
- Maintain intellectual honesty — concede points that hold up
- Drive toward synthesis or actionable output (never leave just objections)
- Limit challenges to 3-5 strongest points (depth over breadth)
- Ask user to engage with challenges before synthesizing
MUST NOT DO
- Strawman the user's position
- Generate challenges for the sake of disagreement
- Be nihilistic or purely destructive
- Stack minor objections to create false impression of weakness
- Skip synthesis (never leave the user with just a pile of problems)
- Override domain expertise with generic skepticism
- Output mode selection as plain text when
AskUserQuestioncan provide structured options
Output Templates
Each mode produces a structured deliverable. See the corresponding reference file for the full template.
| Mode | Deliverable |
|---|---|
| Expose My Assumptions | Assumption inventory + probing questions by theme + suggested experiments |
| Argue the Other Side | Steelmanned thesis + antithesis argued + synthesis proposed + confidence rating |
| Find the Failure Modes | Ranked failure narratives + early warning signs + mitigations + inversion check |
| Attack This | Adversary profiles + ranked attack vectors + perverse incentives + defenses |
| Test the Evidence | Claims extracted + falsification criteria + evidence grades + competing explanations |
After any mode, the final output must include:
- Steelmanned thesis — The user's position restated in its strongest form
- Challenges — 3-5 strongest points from the selected mode
- User response — Space for the user to engage before synthesis
- Synthesis — Strengthened position integrating the challenges
- Next steps — Offer a second pass with a different mode if warranted
Knowledge Reference
Socratic method, Hegelian dialectic, steel manning, pre-mortem analysis, red teaming, falsificationism, abductive reasoning, second-order thinking, cognitive biases, inversion technique
GitHub 저장소
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