Christian Badertscher, Ran Canetti, et al.
TCC 2020
Privacy-preserving machine learning (PPML) solutions often use multi-party computation or client-assisted homomorphic encryption (HE) techniques, which require substantial communication overheads. In contrast, non-interactive solutions are considered slow and are practical for small neural networks or with limited security guarantees.
In this work, we show for the first time that it is possible to evaluate a large HE-friendly SqueezeNet model on large images in a non-interactive setting using HE, with 128-bits security parameters in only 4 minutes when running on a GPU and 6 minutes when running on a CPU.
Christian Badertscher, Ran Canetti, et al.
TCC 2020
Ehud Aharoni, Nir Drucker, et al.
CSCML 2023
Jonathan Bootle, Vadim Lyubashevsky, et al.
ESORICS 2021
Matilda Backendal, Hannah Davis, et al.
CRYPTO 2024