"""Regulatory Completeness — auditable knowledge coverage, not confidence. An internal quality machine: for an assessment it reports identified vs assessed regulations and justifies every open or excluded domain (corpus gap -> future_corpus; applicability uncertain -> query_required). The metric is counts, never a single percentage. The product never claims full coverage — it makes its own knowledge state transparent and auditable. Deterministic, no LLM, no new corpus/meta-model class (freeze v1.0). """ from __future__ import annotations from .engine import assess_completeness from .schemas import ( Assumption, CompletenessReport, CorpusStatus, DomainCoverage, Exclusion, ) __all__ = [ "assess_completeness", "CompletenessReport", "CorpusStatus", "DomainCoverage", "Exclusion", "Assumption", ]