Institutional Adaptation Speed Model
institutional-adaptation-speedanalysisPath: /knowledge-base/models/institutional-adaptation-speed/
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"llmSummary": "Analyzes institutional adaptation rates to AI, finding institutions change at 10-30% of needed rate per year while AI creates 50-200% annual gaps. Historical regulatory lag spans 15-70 years; quantitative model shows crisis-driven national regulation achieves 7.5% annual progress (10-15 years to adequacy) versus business-as-usual 0.26% (200+ years), with coordination costs and opposition being most sensitive parameters.",
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}External Links
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Backlinks (2)
| id | title | type | relationship |
|---|---|---|---|
| regulatory-capacity-threshold | AI Regulatory Capacity Threshold Model | analysis | related |
| post-incident-recovery | Post-Incident Recovery Model | analysis | — |