2022
DOI: 10.56553/popets-2022-0109
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LLAMA: A Low Latency Math Library for Secure Inference

Abstract: Secure machine learning (ML) inference can provide meaningful privacy guarantees to both the client (holding sensitive input) and the server (holding sensitive weights of the ML model) while realizing inferenceas-a-service. Although many specialized protocols exist for this task, including those in the preprocessing model (where a majority of the overheads are moved to an input independent offline phase), they all still suffer from large online complexity. Specifically, the protocol phase that executes once th… Show more

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Cited by 19 publications
(1 citation statement)
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“…Implementation of math functions using cryptographic primitives. Using secret sharing techniques, there is a large body of work on how to compute math functions such as square roots, logarithms and trigonometric [1,4,25,32,32,37]. However they usually rely on splines or other approximation techniques that approximate functions by splitting the domain and using low-degree polynomials for each part.…”
Section: Related Workmentioning
confidence: 99%
“…Implementation of math functions using cryptographic primitives. Using secret sharing techniques, there is a large body of work on how to compute math functions such as square roots, logarithms and trigonometric [1,4,25,32,32,37]. However they usually rely on splines or other approximation techniques that approximate functions by splitting the domain and using low-degree polynomials for each part.…”
Section: Related Workmentioning
confidence: 99%