CRLGMSMay 10, 2021

SIRNN: A Math Library for Secure RNN Inference

arXiv:2105.04236v1158 citations
Originality Incremental advance
AI Analysis

This work addresses performance bottlenecks in secure inference for RNNs, which is crucial for privacy-preserving applications like sensor data, speech processing, and image analysis, though it is incremental as it builds on existing 2PC frameworks.

The paper tackled the problem of high communication overhead in secure two-party computation (2PC) for machine learning inference, particularly for recurrent neural networks (RNNs), by developing specialized 2PC protocols for math functions that reduce communication by up to 423x and achieve up to three orders of magnitude performance improvement compared to prior work.

Complex machine learning (ML) inference algorithms like recurrent neural networks (RNNs) use standard functions from math libraries like exponentiation, sigmoid, tanh, and reciprocal of square root. Although prior work on secure 2-party inference provides specialized protocols for convolutional neural networks (CNNs), existing secure implementations of these math operators rely on generic 2-party computation (2PC) protocols that suffer from high communication. We provide new specialized 2PC protocols for math functions that crucially rely on lookup-tables and mixed-bitwidths to address this performance overhead; our protocols for math functions communicate up to 423x less data than prior work. Some of the mixed bitwidth operations used by our math implementations are (zero and signed) extensions, different forms of truncations, multiplication of operands of mixed-bitwidths, and digit decomposition (a generalization of bit decomposition to larger digits). For each of these primitive operations, we construct specialized 2PC protocols that are more communication efficient than generic 2PC, and can be of independent interest. Furthermore, our math implementations are numerically precise, which ensures that the secure implementations preserve model accuracy of cleartext. We build on top of our novel protocols to build SIRNN, a library for end-to-end secure 2-party DNN inference, that provides the first secure implementations of an RNN operating on time series sensor data, an RNN operating on speech data, and a state-of-the-art ML architecture that combines CNNs and RNNs for identifying all heads present in images. Our evaluation shows that SIRNN achieves up to three orders of magnitude of performance improvement when compared to inference of these models using an existing state-of-the-art 2PC framework.

Code Implementations1 repo
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