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        <idPurp>This dataset contains food bank service area-level data compiled to support a national analysis of natural disaster risk exposure across the Feeding America network. Each record represents a food bank service region and integrates two primary data sources: county-level food insecurity estimates from Feeding America's Map the Meal Gap (including overall, child, and race/ethnicity-specific food insecurity rates, SNAP eligibility thresholds, and food budget shortfall measures) and hazard exposure data from FEMA's National Risk Index (NRI), including composite and hazard-specific risk scores, expected annual loss estimates, social vulnerability scores, and community resilience ratings. County-level measures were spatially aggregated to food bank service regions using publicly available service area boundaries from Feeding America. This dataset serves as the primary spatial input for an optimization modeling framework designed to prioritize disaster risk-reduction investments across the food bank network. Full variable descriptions are provided in the accompanying data dictionary (https://docs.google.com/spreadsheets/d/14PDTOAT7NFAOhs0B2o5PZnQu8-nRTIP3/edit?usp=sharing&amp;ouid=113271831194980447519&amp;rtpof=true&amp;sd=true). </idPurp>
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