assumption-stress-test
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/assumption-stress-testStress-test assumptions to identify dangerous ones using classification and validation
- Systematically surface and evaluate assumptions for fragility and risk
- Uses assumption-surfacing, vulnerability-classification, and CLR validation SOPs
- Classifies assumptions by load-bearing impact and vulnerability level
- Delivers prioritized list of dangerous assumptions and validation results
SKILL.md
.github/skills/assumption-stress-testView on GitHub ↗
--- name: assumption-stress-test description: Systematic stress testing of assumptions — surface, classify by vulnerability, attack, assess fragility. Combines assumption-surfacing (shared), abp-vulnerability-classification, and clr-validation SOPs. execution: tactic used-by: assumption-audit --- # Assumption Stress Test Systematically stress-test assumptions to find dangerous ones. ## Operations - assumption-surfacing (shared) — extract all implicit assumptions - abp-vulnerability-classification — classify by load-bearing × vulnerable - clr-validation — validate causal logic of critical assumptions ## Available SOPs **Shared:** assumption-surfacing **Subagent:** abp-vulnerability-classification, clr-validation **Import:** paper-research ## Execution Guidance Surface all assumptions (shared SOP). Classify each by load-bearing × vulnerable matrix. Validate causal logic of most critical assumptions (High-Load × High-Vulnerable quadrant). ## Minimum Yield ``` <HARD-GATE> - assumptions surfaced: >= 5 - vulnerability classifications: >= 5 - CLR validations on critical assumptions: >= 2 - dangerous assumptions identified: >= 1 </HARD-GATE> ```
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