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mikonos

Interview Analysis

by mikonos · GitHub ↗ · v1.0.0
cross-platform ✓ Security Clean
2498
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2
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14
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1
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Install in OpenClaw
/install interview-analysis
Description
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.
README (SKILL.md)

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:

  1. Identify core competency domain: Product/Engineering/Operations/Design/Sales/Data Science/...
  2. Match top domain thinkers: Recognized methodology masters or practitioners in the field
  3. 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.
  • Insight (Deep Analysis):
    • Template path: templates/insight_template.md
    • Purpose: Deep dive into specific domains (e.g., AI Capability, Product Strategy).
  • Meta-Analysis (Interviewer Review):
    • Template path: templates/evaluation_template.md
    • Purpose: Evaluate interviewer performance and organizational recommendations.
  • Structure Note (Hub Document):
    • Template path: templates/structure_note_template.md
    • Purpose: Serves as hub connecting all analysis cards above, forming decision closure.

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."
Usage Guidance
This skill appears coherent and low-risk from a supply-chain/privilege perspective. Before installing, consider: 1) Privacy: the tool writes analysis and may process interview transcripts (personal data). Ensure you have candidate consent and appropriate storage/retention policies. 2) File location and permissions: confirm people/{candidate_name}/analysis/ is acceptable and that sensitive data won't be world-readable or backed up to unintended locations. 3) External sharing: the skill does not declare any external endpoints, but verify your agent runtime won't automatically sync or upload generated files to third-party services. 4) Bias & accuracy: the skill uses named expert frameworks — review outputs for overreliance on particular heuristics. If you need higher assurance, run the skill on non-sensitive sample data first.
Capability Analysis
Type: OpenClaw Skill Name: interview-analysis Version: 1.0.0 The skill bundle is designed for interview analysis, guiding the AI agent through expert selection, analytical steps, and structured output generation. The extensive use of markdown instructions (prompt injection) in `SKILL.md` and the `templates/*.md` files is solely to define and control the skill's intended behavior, such as dynamically selecting expert models and writing analysis cards to `people/{candidate_name}/analysis/`. There is no evidence of malicious intent, such as data exfiltration, unauthorized command execution, persistence mechanisms, or attempts to subvert the agent for harmful purposes.
Capability Assessment
Purpose & Capability
Name/description promise (deep interview analysis, expert-driven evaluation) aligns with the instructions and templates provided. The skill only requires reading its own templates and interview content and producing Markdown analysis cards; no unrelated services, binaries, or credentials are requested.
Instruction Scope
Instructions direct the agent to perform timeline reconstruction, STAR-case analysis, interviewer meta-review, and to write Markdown cards under people/{candidate_name}/analysis/. This is consistent with the purpose. Note: the skill instructs the agent to read its template files and to write candidate files to disk — verify that storing interview transcripts/PII locally is acceptable for your environment.
Install Mechanism
Instruction-only skill with no install spec and no code files to execute. This minimizes risk from arbitrary code/downloads.
Credentials
No environment variables, credentials, or external config paths are requested. The required access (reading templates and writing analysis files) is proportional to the described functionality.
Persistence & Privilege
Skill is not forced-always, and allows normal model invocation. It writes analysis artifacts to a candidate-specific local path (its own workspace), which is expected for its purpose and does not change other skills' configs or request system-wide privileges.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install interview-analysis
  3. After installation, invoke the skill by name or use /interview-analysis
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release: dynamic expert routing for candidate assessment
Metadata
Slug interview-analysis
Version 1.0.0
License
All-time Installs 14
Active Installs 14
Total Versions 1
Frequently Asked Questions

What is Interview Analysis?

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. It is an AI Agent Skill for Claude Code / OpenClaw, with 2498 downloads so far.

How do I install Interview Analysis?

Run "/install interview-analysis" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Interview Analysis free?

Yes, Interview Analysis is completely free (open-source). You can download, install and use it at no cost.

Which platforms does Interview Analysis support?

Interview Analysis is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Interview Analysis?

It is built and maintained by mikonos (@mikonos); the current version is v1.0.0.

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