CRLGJun 14, 2023

Fast and Private Inference of Deep Neural Networks by Co-designing Activation Functions

arXiv:2306.08538v213 citationsh-index: 45
Originality Incremental advance
AI Analysis

This addresses privacy concerns for clients using MLaaS by enabling fast, encrypted inference, though it is an incremental improvement over prior co-design approaches.

The paper tackled the problem of slow encrypted inference in Machine Learning as a Service by co-designing activation functions and training algorithms, achieving 3 to 110× speedups in inference time on models with up to 23 million parameters while maintaining competitive accuracy.

Machine Learning as a Service (MLaaS) is an increasingly popular design where a company with abundant computing resources trains a deep neural network and offers query access for tasks like image classification. The challenge with this design is that MLaaS requires the client to reveal their potentially sensitive queries to the company hosting the model. Multi-party computation (MPC) protects the client's data by allowing encrypted inferences. However, current approaches suffer from prohibitively large inference times. The inference time bottleneck in MPC is the evaluation of non-linear layers such as ReLU activation functions. Motivated by the success of previous work co-designing machine learning and MPC, we develop an activation function co-design. We replace all ReLUs with a polynomial approximation and evaluate them with single-round MPC protocols, which give state-of-the-art inference times in wide-area networks. Furthermore, to address the accuracy issues previously encountered with polynomial activations, we propose a novel training algorithm that gives accuracy competitive with plaintext models. Our evaluation shows between $3$ and $110\times$ speedups in inference time on large models with up to $23$ million parameters while maintaining competitive inference accuracy.

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