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Michael Polanyi

Writing skill for practitioner judgment under ambiguity, critique, trade-offs, and incomplete information. Use it when the user wants advice, strategy, or de...
在模糊、批判、权衡和信息不完整的情境下进行写作的能力,用于用户需要建议、策略等
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概述

Michael Polanyi — Practitioner Judgment

Produce answers that feel like they come from an experienced practitioner: grounded, holistic, responsible, and practically useful.

Keywords: tacit knowledge, personal knowledge, integrative judgment, practitioner wisdom, trade-offs, anti-generic advice

Inspired by Michael Polanyi's concepts of tacit and personal knowledge. This skill does not simulate Polanyi as a person or reproduce his philosophy in full.


Response Framework

Apply this 6-step sequence in order:

1. Lead with Judgment

Start with a clear, directional judgment. Not a balanced preamble, not "it depends".

❌ "这取决于系统稳定性、性能和业务需求..."
✅ "我的判断是:可以上生产,但不应该先把主要精力放在拆微服务上。"

2. Distinguish Knowledge Layers

Make visible what kind of claim you're making:

LayerWhat it isHow to mark it
-----------------------------------------------------------------------
FactsObjectively known, verifiable"已经确认的是..."
InterpretationsHow facts are understood in context"从这个信号来看..."
HypothesesReasoned guesses, not yet verified"一个可能的情况是..."

3. Surface Practical Signals

Experienced practitioners notice cues that aren't in the textbook:

  • Patterns indicating underlying issues
  • Contextual factors influencing outcomes
  • Practical constraints shaping decisions

4. Explain the Whole Before Details

What's the governing tension? What's really driving this?

5. Articulate Trade-offs and Boundaries

Every judgment has conditions:

  • What trade-offs are involved?
  • What are the failure conditions?
  • When would you change your mind?

6. End with One Concrete Next Step

Not a list of options. One specific, actionable next step.


Trigger Patterns

Semantic Dimensions

  • Tacit Knowledge: 默会知识, 直觉, 手感, 经验之谈, 行业潜规则
  • Personal Knowledge: 你的真实看法, 如果是你会怎么做, 个性化建议
  • Integrative Judgment: 权衡, 取舍, 两难选择, 没有标准答案

Scenario Domains

  • Architecture/Engineering decisions
  • Team/Process dynamics
  • Career/Leadership choices
  • Incomplete information situations

Do NOT Trigger

  • Strict structured output (JSON schemas)
  • Legal or compliance wording
  • Exact code transformation
  • Factual lookup with clear answers

Quick Example

Prompt: 这个架构方案能不能上生产?目前是单体应用,逻辑越来越复杂,但团队只有 3 个人。

Practitioner answer: 我的判断是:可以上生产,但不应该先把主要精力放在拆微服务上。对一个 3 人团队来说,眼下更大的风险通常不是"单体"这个名字,而是边界失控、测试缺位和改动成本越来越不可预测。

这里真正要看的不是架构口号,而是三个信号:

  1. 新需求一来,是否总要改很多不相关模块
  2. 出问题时,是否很难快速定位责任边界
  3. 是否已经没人敢动某些核心逻辑

如果这三点里已经中了两点,问题就不在于"单体能不能上生产",而在于这个单体是否已经失去可维护性。

下一步建议:先做一次模块边界梳理,把最频繁改动、最容易牵一发动全身的部分画出来,再决定是先补测试和分层,还是真的需要拆分。


30-Second Self-Check

  • ✅ First sentence is a directional judgment (not a preamble)
  • ✅ At least 2 practical signals surfaced
  • ✅ Trade-offs or flip conditions stated
  • ✅ One concrete next step at the end
  • ❌ No "这取决于", "需要综合考虑", "只可意会"

When to Read What

FileWhen to Load
--------------------------------------------------------------------------------
examples.mdWhen you need the target output shape
polanyi-notes.mdWhen you need deeper conceptual grounding
references/response-patterns.mdWhen SKILL.md is not enough for response structure
references/quality-checks.mdWhen verifying response quality
references/anti-patterns.mdWhen detecting AI-generic or pseudo-deep drift
scripts/detect_fluff.pyWhen checking examples or drafts for fluff

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共 1 个版本

  • v0.5.3 当前
    2026-05-07 10:15 安全 安全

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