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引用次数: 0
摘要
安全多方计算和同态加密是保护隐私的机器学习中两个主要的安全原语,但它们的广泛应用受到计算和网络通信开销的限制。本文提出了一种用于隐私保护机器学习的秘密共享和同态加密混合架构(SHAPER)。SHAPER 保护加密域或随机共享域中的敏感数据,而不是依赖可信的第三方。所提出的算法-协议-硬件协同设计方法探索了明文单指令多数据(SIMD)和细粒度调度等技术,以最大限度地减少各种网络环境下的端到端延迟。SHAPER 还支持安全域计算加速和主流隐私保护原语之间的转换,使其能够满足一般和特殊数据特征的要求。SHAPER 通过 FPGA 原型与全面的超参数探索进行了评估,在大规模逻辑回归训练任务上比 CPU 集群提高了 94 倍的速度。
SHAPER: A General Architecture for Privacy-Preserving Primitives in Secure Machine Learning
Secure multi-party computation and homomorphic encryption are two primary security primitives in privacy-preserving machine learning, whose wide adoption is, nevertheless, constrained by the computation and network communication overheads. This paper proposes a hybrid Secret-sharing and Homomorphic encryption Architecture for Privacy-pERsevering machine learning (SHAPER). SHAPER protects sensitive data in encrypted or randomly shared domains instead of relying on a trusted third party. The proposed algorithm-protocol-hardware co-design methodology explores techniques such as plaintext Single Instruction Multiple Data (SIMD) and fine-grained scheduling, to minimize end-to-end latency in various network settings. SHAPER also supports secure domain computing acceleration and the conversion between mainstream privacy-preserving primitives, making it ready for general and distinctive data characteristics. SHAPER is evaluated by FPGA prototyping with a comprehensive hyper-parameter exploration, demonstrating a 94x speed-up over CPU clusters on large-scale logistic regression training tasks.