The Manufacturing Model
How Alpine builds and governs intelligence products — the manufacturing model, validation, and schema governance, without revealing formulas.
The Intelligence Manufacturing Model
Source Discipline
Free public data only. No paywalled sources, no proprietary scrapes.
Ingestion & Normalization
Standardized schemas, timestamp alignment, and unit normalization across all feeds.
Enrichment
Cross-referencing with auxiliary datasets to fill gaps and add context.
Feature Engineering
Transforming raw signals into predictive features through statistical transforms.
Scoring
Assigning conviction scores based on historical accuracy and signal strength.
Driver Decomposition
Breaking down predictions into attributable causal factors and drivers.
Prediction
Generating forward-looking estimates with confidence intervals and uncertainty bounds.
Validation
Beats a naive baseline. No invented metric is sellable until it statistically outperforms simple historical averages.
Versioning
Semantic versioning with additive fields non-breaking; removals/renames = major bump.
Agent-Callable Object (IOM)
Structured, machine-readable output designed for programmatic consumption by AI agents.
Trust Mechanics
How confidence is calculated
How freshness / TTL works
freshness field with ISO timestamp and remaining validity window.
How drivers are attributed
Schema versioning policy
/catalog.json. All version history is publicly auditable.
Data disclaimer
Validated Before We Ship
No invented metric is sellable until it beats a naive baseline.
EWC (Earnings-Window Conviction)
Beats a naive baseline at p<0.05
This is a receipt only — it is NOT a registry product; we do not render a live score card for it.
Data Provenance
IOM 13-Field Contract
Review the Schema
Understand our methodology, validation standards, and schema governance before you build.