Every HuggingFace model — verified.
Map any HF model card to the compliance frameworks your audit scope requires. EU AI Act Art. 13 readiness, ISO 42001 documentation evidence, NIST AI RMF measurement coverage, GDPR Art. 30 training-data provenance — deterministic, signed, evidence-pack-ready.
Powered by the same Code Constitution engine that runs on your code — extended to the artefacts your code depends on.
Findings trend across model evaluations
Sample distribution showing fail / warn / ok per evaluation window as a tenant tightens its HF model-card disclosures. Real per-tenant numbers in the customer dashboard.
HF model-card · 12 evaluation windows
Framework coverage on day one
Each crosswalk edge cites a published primary source. No fabrication — every reference traces to an Article, Annex, Common Criterion, or Subcategory in the source authority text.
Art. 10 / 13 / 15 / 25 / 51 / 53 / 555.2 / 6.3 / 8.1-8.4MAP-3.1 / MEASURE-2.3 / 2.6 / 2.7 / MANAGE-1.3Art. 13 / 30§164.514 (de-identification)Art. 28 (ICT third-party risk)Art. 21 (essential-entity risk mgmt)A.5.36AAOIFI / IFSB (Shariah-permissibility overlay for Islamic-finance consumers) lands in the next release.
How it works
One engine, every registry
The /hf section is the first of many. Same engine, same crosswalk pattern — adding a registry means adding a parser, not a new product. Sibling sections planned for /kaggle, /modelscope, /replicate, /civitai, /mlflow, /gh-releases.
/hflive/kaggleplanned/modelscopeplanned/replicateplanned/civitaiplanned/mlflowplanned/gh-releasesplannedTry it on a model you know
Paste any HuggingFace URL.