Siirry päänavigointiin Siirry hakuun Siirry pääsisältöön

Laminator: Verifiable ML Property Cards using Hardware-assisted Attestations

Tutkimustuotos: Artikkeli kirjassa/konferenssijulkaisussaConference article in proceedingsScientificvertaisarvioitu

1 Sitaatiot (Scopus)
28 Lataukset (Pure)

Abstrakti

Regulations increasingly call for various assurances from machine learning (ML) model providers about their training data, training process, and model behavior. For better transparency, industry (e.g., Huggingface and Google) has adopted model cards and datasheets to describe various properties of training datasets and models. In the same vein, we introduce the notion of inference cards to describe the properties of a given inference (e.g., binding of the output to the model and its corresponding input). We coin the term ML property cards to collectively refer to these various types of cards. To prevent a malicious model provider from including false information in ML property cards, they need to be verifiable. We show how to construct verifiable ML property cards using property attestation, technical mechanisms by which a prover (e.g., a model provider) can attest to various ML properties to a verifier (e.g., an auditor). Since prior attestation mechanisms based purely on cryptography are often narrowly focused (lacking versatility) and inefficient, we need an efficient mechanism to attest different types of properties across the entire ML model pipeline. Emerging widespread support for confidential computing has made it possible to run and even train models inside hardware-assisted trusted execution environments (TEEs), which provide highly efficient attestation mechanisms. We propose Laminator, which uses TEEs to provide the first framework for verifiable ML property cards via hardware-assisted ML property attestations. Laminator is efficient in terms of overhead, scalable to large numbers of verifiers, and versatile with respect to the properties it can prove during training or inference.

AlkuperäiskieliEnglanti
OtsikkoCODASPY 2025 - Proceedings of the 15th ACM Conference on Data and Application Security and Privacy
KustantajaACM
Sivut317-328
Sivumäärä12
ISBN (elektroninen)9798400714764
DOI - pysyväislinkit
TilaJulkaistu - 4 kesäk. 2025
OKM-julkaisutyyppiA4 Artikkeli konferenssijulkaisussa
TapahtumaACM Conference on Data and Application Security and Privacy - Pittsburgh, Yhdysvallat
Kesto: 4 kesäk. 20256 kesäk. 2025
Konferenssinumero: 15

Conference

ConferenceACM Conference on Data and Application Security and Privacy
LyhennettäCODASPY
Maa/AlueYhdysvallat
KaupunkiPittsburgh
Ajanjakso04/06/202506/06/2025

YK:n kestävän kehityksen tavoitteet

Tämä tuotos edistää seuraavia kestävän kehityksen tavoitteita:

  1. SDG 9 – Teollisuus, innovaatiot ja infrastruktuuri
    SDG 9 – Teollisuus, innovaatiot ja infrastruktuuri

Sormenjälki

Sukella tutkimusaiheisiin 'Laminator: Verifiable ML Property Cards using Hardware-assisted Attestations'. Ne muodostavat yhdessä ainutlaatuisen sormenjäljen.

Siteeraa tätä