[Privacy Enhancing Computing] HEPIC: Private Inference over Homomorphic Encryption with Client Intervention, ASPLOS 2026

HEPIC: Private Inference over Homomorphic Encryption with Client Intervention

Kevin Nam, Seungjin Ha, Youyeon Joo, Hyungon Moon*, Yunheung Paek*

The ACM International Conference on Architectural Support for Programming Languages and Operating Systems, 2026 (ASPLOS 2026)

∗ : Correspondence should be addressed to H. Moon and Y. Peak

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International Papers

Privacy Enhancing Computing HEPIC: Private Inference over Homomorphic Encryption with Client Intervention, ASPLOS 2026 New
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