First Principles Analysis
/install davinci-first-principles
First Principles Analysis
Perform rigorous first-principles analysis on any topic. The goal is to reach ground truth by decomposing inherited assumptions, then rebuild understanding from only what survives scrutiny.
Trigger
Activate on /firstprinciples \x3Ctopic> or when the user explicitly requests first-principles thinking.
Process
Follow these phases in order. Each phase must be thorough — do not rush to conclusions.
Phase 1: Assumption Extraction
Identify every assumption people commonly make about the topic. Cast a wide net:
- Consensus assumptions — what "everyone knows" (often wrong)
- Hidden assumptions — embedded in language, framing, or defaults people never question
- Authority assumptions — believed because an expert/institution said so, not because they were verified
- Temporal assumptions — true in the past, assumed to still hold
- Correlation assumptions — two things co-occur, assumed to be causal
- Scale assumptions — works at one scale, assumed to work at another
- Survivorship assumptions — conclusions drawn from visible successes, ignoring invisible failures
Present each assumption clearly. Number them for reference.
Phase 2: Assumption Stress Test
For each assumption, apply these tests:
- Provability: Can this be proven from first principles, or is it inherited belief?
- Inversion: What if the opposite were true? What evidence would support that?
- Boundary conditions: Under what conditions does this assumption break?
- Source audit: Where did this assumption originate? Is the source still valid?
- Incentive check: Who benefits from this assumption being believed?
Classify each assumption:
- ✅ Survives — provably true from fundamentals
- ⚠️ Conditional — true only under specific conditions (state them)
- ❌ Fails — not provably true, inherited thinking, or demonstrably false
Phase 3: Ground Truth Foundation
List only what remains after stripping away failed assumptions. These are the atomic truths — the smallest provable building blocks. State each as a falsifiable claim.
Phase 4: Reconstruction
Rebuild understanding of the topic using only ground truths from Phase 3. Show how the rebuilt model differs from conventional thinking. Highlight:
- What changes — conclusions that shift when you remove inherited thinking
- What stays — conventional wisdom that actually survives scrutiny (and why)
- New insights — things that become visible only after clearing assumptions
- Contrarian implications — where ground truth leads somewhere uncomfortable or non-obvious
Phase 5: Decision Framework
If the topic involves a decision or strategy, provide:
- What to do differently based on the rebuilt model
- What to stop doing that was based on failed assumptions
- Key risks — where the rebuilt model might be wrong (epistemic humility)
- What to monitor — leading indicators that would invalidate the rebuilt model
Output Format
Use clear headers for each phase. Be direct and specific — no hedging, no "it depends" without stating what it depends on. Number assumptions for cross-referencing. Use the ✅/⚠️/❌ classification system.
Calibration Example
Topic: "You need a college degree to succeed in tech"
- Assumption: Degree = competence signal → ⚠️ Conditional (true for visa sponsorship, false for demonstrated skill via portfolio)
- Assumption: Top companies require degrees → ❌ Fails (Google, Apple, IBM dropped degree requirements 2018-2023)
- Ground truth: Employers need confidence in capability. Degrees are ONE signal, not the only one.
- Reconstruction: The degree is a risk-reduction proxy, not a competence proof. Alternative signals (open source contributions, shipped products, certifications) can substitute — but only in markets where employers have adopted alternative evaluation. Geography and industry vertical matter.
- Non-obvious insight: The degree's real value may be the network and credential signaling for non-technical stakeholders (investors, enterprise buyers), not the education itself.
Use this density and specificity as the quality bar.
Quality Standards
- Every assumption must be testable, not vague
- "Conventional wisdom says X" requires stating specifically who says it and why
- The reconstruction must produce at least one non-obvious insight — if it just confirms conventional wisdom, dig deeper
- Distinguish between "I don't know if this is true" (uncertainty) and "this is false" (disproven) — they are not the same
- When the analysis reveals that conventional wisdom is actually correct, say so — contrarianism for its own sake is not the goal
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install davinci-first-principles - 安装完成后,直接呼叫该 Skill 的名称或使用
/davinci-first-principles触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
First Principles Analysis 是什么?
Deep first-principles analysis of any topic, decision, strategy, or assumption. Strips inherited thinking, identifies what is provably true, and rebuilds fro... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 154 次。
如何安装 First Principles Analysis?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install davinci-first-principles」即可一键安装,无需额外配置。
First Principles Analysis 是免费的吗?
是的,First Principles Analysis 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
First Principles Analysis 支持哪些平台?
First Principles Analysis 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 First Principles Analysis?
由 RunByDaVinci(@clawdiri-ai)开发并维护,当前版本 v1.0.0。