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Data Platform/Evidence Query
EVIDENCE QUERY · DEMO · BETA

Ask the data. Get the evidence trail.

Natural-language questions about U.S. healthcare-provider supply, answered with the source URL, last-checked timestamp, methodology version, and per-claim limitations attached. The auditor can verify every claim independently.

Or try one of these:

Why this is different from generic NLQ

Generic natural-language-to-SQL vendors return a number. The buyer's compliance team then asks where did this come from, and the vendor either escalates to support or shrugs. Evidence Query returns the number plus the per-claim provenance the auditor needs: source URL, refresh date, methodology version, confidence score, and the explicit limitations attached to that field.

That contract only works because the underlying data was built provenance-first. The Audit Pack, the per-dataset methodology pages, and the per-field provenance API are the substrate; Evidence Query is the natural-language surface on top.

What the demo will refuse

  • Predictions / forecasts.“How many derm will there be in 2030?” Fonteum surfaces source-truth, not extrapolations.
  • Provider payment, claims, or revenue data. Out of scope. For NPI-level public-source lookup see /api/v1/providers/[npi].
  • Vendor / competitor comparisons. Audit-grade-trust positioning is documented at /b2b/healthtech; not generated here.
  • Single-named-provider PII fishing. Aggregate questions only — single-provider lookup goes through the authenticated /api/v1/providers/[npi] endpoint.
  • Prompt-injection / role-rewrite. Heuristic pre-flight rejects instruction-injection signatures before the classifier sees the input.

How it works

  1. Pre-flight filters. Banned-pattern + injection-signature checks run before any LLM call.
  2. Structured classification. Anthropic Sonnet maps the question to a strict whitelist intent (dataset slug + state code + intent kind). Output is runtime-validated; the LLM never produces SQL.
  3. Typed resolver.The classifier's structured intent dispatches to hand-written, type-safe data accessors (per-state aggregates, audit-pack registry, refresh layer). No LLM-produced string ever touches a query.
  4. Evidence assembly. Per data point, the per-field provenance from the audit-pack registry is attached: source name + tier, source URL, last-checked timestamp, confidence score, methodology URL + version, and limitations.
  5. Answer synthesis.A second LLM call writes a 1-2 sentence summary constrained to the resolver's exact numbers. Falls back to a deterministic template when the API is unavailable.

Full pipeline architecture and SQL-injection containment review: /docs/api#tag/Evidence-Query.

Ready for unlimited authenticated queries?

The demo is rate-limited to 10 queries / 24h per IP. Request an API key for unlimited use, full per-key rate limits, and the complete documented contract.

Request an API key →Read the developer docs →

Compliance posture

Methodology · Corrections log · Editorial policy

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