DSCRAug 16, 2016

Optimization of Bootstrapping in Circuits

arXiv:1608.04535v123 citations
Originality Incremental advance
AI Analysis

This addresses a critical performance bottleneck in FHE for cloud computing applications, though it is incremental as it builds on existing optimization methods.

The paper tackles the problem of minimizing bootstrapping operations in Fully Homomorphic Encryption circuits to control noise levels, achieving a polynomial-time L-approximation algorithm and proving matching hardness results.

In 2009, Gentry proposed the first Fully Homomorphic Encryption (FHE) scheme, an extremely powerful cryptographic primitive that enables to perform computations, i.e., to evaluate circuits, on encrypted data without decrypting them first. This has many applications, in particular in cloud computing. In all currently known FHE schemes, encryptions are associated to some (non-negative integer) noise level, and at each evaluation of an AND gate, the noise level increases. This is problematic because decryption can only work if the noise level stays below some maximum level $L$ at every gate of the circuit. To ensure that property, it is possible to perform an operation called \emph{bootstrapping} to reduce the noise level. However, bootstrapping is time-consuming and has been identified as a critical operation. This motivates a new problem in discrete optimization, that of choosing where in the circuit to perform bootstrapping operations so as to control the noise level; the goal is to minimize the number of bootstrappings in circuits. In this paper, we formally define the \emph{bootstrap problem}, we design a polynomial-time $L$-approximation algorithm using a novel method of rounding of a linear program, and we show a matching hardness result: $(L-ε)$-inapproximability for any $ε>0$.

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