/install interview-analysis
Interview Analysis Skill
Core Mission: Transform interview transcripts into deep insights. Core Logic: Don't listen to what candidates "say" (Methodology Recitation), observe what they've "done" (Battle Scars) and "how they think" (First Principles).
1. Dynamic Expert Activation (Expert Routing)
Core Principle
Based on role type and evaluation dimensions, automatically select the best minds combination for that domain:
Three-Step Expert Selection:
- Identify core competency domain: Product/Engineering/Operations/Design/Sales/Data Science/...
- Match top domain thinkers: Recognized methodology masters or practitioners in the field
- Combine hiring experts: Geoff Smart (fact-checking) + Lou Adler (competency validation)
Common Role-Expert Mapping (Non-Exhaustive)
| Role Type | Domain Expert (Methodology) | Hiring Expert (Validation) | Rationale |
|---|---|---|---|
| Product Manager | Marty Cagan / Julie Zhuo | Geoff Smart | Product Sense + Fact Check |
| Software Engineer | Linus Torvalds / John Carmack | Lou Adler | Engineering Judgment + Results Validation |
| Growth Hacker | Sean Ellis / Brian Balfour | Geoff Smart | Growth Methodology + Metrics Verification |
| UX Designer | Don Norman / Jony Ive | Lou Adler | UX Principles + Portfolio Validation |
| Data Scientist | Andrew Ng / DJ Patil | Geoff Smart | Technical Depth + Project Verification |
| Operations | Sheryl Sandberg / Reid Hoffman | Lou Adler | Scale Operations + Results Focus |
| Sales/BD | Aaron Ross / Jill Konrath | Geoff Smart | Sales Methodology + Performance Verification |
[!IMPORTANT] Flexibility Principle: The table above is for reference only. Flexibly select the most appropriate expert combination based on specific role and candidate background.
Encourage Innovation: If you believe a non-mainstream expert is better suited to evaluate this candidate, make that choice and explain your rationale.
Core Question: "Who can best identify imposters in this role? Whose framework best validates core competencies?"
2. Execution Workflow
Step 1: Fact Reconstruction & Red Flag Scan
- Timeline Reconstruction: Connect experiences scattered across multiple interview rounds, checking for logical gaps.
- Consistency Verification: Compare different versions of the same story told to different interviewers (e.g., reasons for leaving, project failures).
- Red Flag Annotation: Mark all vague titles (e.g., SPM), exaggerated data, and attribution fallacies ("it was all market/technology's fault").
Step 2: Deep Decoding - STAR Episodes
- Tactic: Select 1-2 core cases (e.g., startup project, most challenging project) for microscopic analysis.
- Truth Extraction:
- Methodology Check: Is the candidate reciting SOPs (MECE, SWOT) or applying first principles?
- Solution Bias Check: Did they jump straight to "add features," or first conduct "value validation"?
- Technical Boundary Check: For technical challenges, did they "deflect blame" or "anticipate"?
Step 3: Interviewer Meta-Analysis
- Subject: Evaluate interviewer (you/colleagues) performance.
- Dimensions:
- Depth: Did they probe at critical moments? Or let it pass?
- Bias: Did they draw conclusions too early or ask leading questions?
- Bar: Did they maintain A Player standards?
Step 4: Card-based Output (Zettelkasten Output)
Generate Markdown cards using the following standard templates, saved to people/{candidate_name}/analysis/. Be sure to read template content before filling in analysis results.
- Profile (Comprehensive Portrait):
- Template path:
templates/profile_template.md - Purpose: Fact checking, red flag scanning, core competency assessment.
- Template path:
- Insight (Deep Analysis):
- Template path:
templates/insight_template.md - Purpose: Deep dive into specific domains (e.g., AI Capability, Product Strategy).
- Template path:
- Meta-Analysis (Interviewer Review):
- Template path:
templates/evaluation_template.md - Purpose: Evaluate interviewer performance and organizational recommendations.
- Template path:
- Structure Note (Hub Document):
- Template path:
templates/structure_note_template.md - Purpose: Serves as hub connecting all analysis cards above, forming decision closure.
- Template path:
3. Usage Examples
- "Analyze Li Yashuang's three interview rounds, focusing on AI capabilities."
- "Review this interview to see where we interviewers did well and where we missed opportunities."
- "Use Marty Cagan's perspective to analyze this candidate's product thinking."
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install interview-analysis - 安装完成后,直接呼叫该 Skill 的名称或使用
/interview-analysis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
Interview Analysis 是什么?
Deep interview analysis using dynamic expert routing. Automatically selects top domain thinkers based on role type to distinguish genuine capability from performance, identifying Battle Scars over Methodology Recitation. Applicable to any professional position including product management, engineering, design, operations, sales, and data science. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 2498 次。
如何安装 Interview Analysis?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install interview-analysis」即可一键安装,无需额外配置。
Interview Analysis 是免费的吗?
是的,Interview Analysis 完全免费(开源免费),可自由下载、安装和使用。
Interview Analysis 支持哪些平台?
Interview 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 Interview Analysis?
由 mikonos(@mikonos)开发并维护,当前版本 v1.0.0。