📈 Live history is activating for this object — the automated backfill is in progress.
⌁ mcp.call("adw-307") v1.0 What is the obesity prevalence and national ranking for this ZIP / city / county?
📈 Live history is activating for this object — the automated backfill is in progress.
⌁ mcp.call("adw-307") v1.0 ECDF percentile rank of CDC PLACES OBESITY measure (age-adjusted, BMI ≥ 30) within universe per grain.
Version 1.0 · validated to beat a naive baseline · benchmark: No free equivalent agent-callable; CDC PLACES exposes raw data but not a normalized cross-grain index.
One call returns the answer with its reasoning attached — the live Intelligence Object for ADW-307.
{} Every product conforms to the Intelligence Object Model — typed, versioned, and discoverable.
Dashboard
Read the score + drivers in the console.
REST API
/v1/obesity/{zip|city/{name}|county/{name}}
MCP tool
adw.obesity_risk
Marketplace
Discoverable by any MCP agent via the MCP registry.
White-label
Embed under your own brand (Platinum).
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Enables employers and insurers to proactively deploy mental health interventions and telehealth resources to employees in regions experiencing seasonal light deprivation.
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How healthy is the US population?
Method: composite z-score 0-100