Overview
- Skill Key
- caoyumin97/structure-thinking
- Author
- caoyumin97
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/caoyumin97/structure-thinking
- Latest Commit SHA
- 55e37afceafdafd6104a08ae3eeceb591fcc3be5
Structured problem analysis and communication using system mapping and hierarchical logic. Use when a request involves messy, multi-factor problems, root-cause analysis, intervention design, feedback loops or delays, or when a clear top-line recommendation with logically grouped support is required.
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直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 structure-thinking 技能。 若已安装,则直接安装 structure-thinking 技能。
# Structure Thinking ## Overview Use this skill to turn a messy situation into a clear decision path. You will model the system to find real levers, then build a compact argument that enables action. The focus is practical: define the decision, diagnose the system behavior, choose interventions, and communicate a decisive recommendation. ## Preferred Inputs - Decision owner and deadline. - Success definition (metric, threshold, or observable change). - Constraints (budget, time, policy, technical limits). - Behavior over time (trend, seasonality, oscillation). If any are missing and the user wants an answer now, proceed with explicit assumptions and mark them as `Assumed`. ## Workflow ### 1) Define the Decision and Question Goal: one clear governing question and a provisional answer. Do: - Write a one-sentence decision statement: “Decide whether to X by date Y to achieve Z.” - Capture `Situation`, `Complication`, `Question`, `Answer`. - List assumptions and unknowns explicitly. Output: - Governing question. - Provisional answer in one sentence. ### 2) Describe Behavior Over Time Goal: pin the problem to a trend, not a feeling. Do: - Summarize how the key metric changes over time. - Note seasonality, spikes, or oscillations. - State the time horizon that matters. Output: - Behavior-over-time summary (2-4 bullets). ### 3) Model the System Goal: explain why the behavior persists. Do: - Define system boundary and stakeholders. - Identify 1-3 critical stocks and their flows. - Draw reinforcing and balancing loops. - Mark delays and missing information. Output: - System map notes: stocks, flows, loops, delays. ### 4) Generate Hypotheses (MECE) Goal: create testable explanations or options. Do: - Build an issue tree with 3-5 MECE branches. - Label each branch as an assertion (not a topic). - Rank branches by impact and evidence availability. Output: - Issue tree with ranked branches. ### 5) Select Leverage Points and Interventions Goal: choose a small set...
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