Controlled Vocabulary for Longtermist Analysis
controlled-vocabularyPath: /internal/reports/controlled-vocabulary/
E744Entity ID (EID)
Page Recorddatabase.json — merged from MDX frontmatter + Entity YAML + computed metrics at build time
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}External Links
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