LGAICVNEMLMar 13, 2020

A Privacy-Preserving-Oriented DNN Pruning and Mobile Acceleration Framework

arXiv:2003.06513v222 citations
AI Analysis

This addresses privacy concerns for users deploying DNNs on mobile edge devices, though it is incremental by adding privacy to existing pruning methods.

The paper tackles the problem of compressing deep neural networks for mobile devices while preserving user data privacy, achieving speedups of up to 4.2x over existing frameworks with minimal accuracy loss.

Weight pruning of deep neural networks (DNNs) has been proposed to satisfy the limited storage and computing capability of mobile edge devices. However, previous pruning methods mainly focus on reducing the model size and/or improving performance without considering the privacy of user data. To mitigate this concern, we propose a privacy-preserving-oriented pruning and mobile acceleration framework that does not require the private training dataset. At the algorithm level of the proposed framework, a systematic weight pruning technique based on the alternating direction method of multipliers (ADMM) is designed to iteratively solve the pattern-based pruning problem for each layer with randomly generated synthetic data. In addition, corresponding optimizations at the compiler level are leveraged for inference accelerations on devices. With the proposed framework, users could avoid the time-consuming pruning process for non-experts and directly benefit from compressed models. Experimental results show that the proposed framework outperforms three state-of-art end-to-end DNN frameworks, i.e., TensorFlow-Lite, TVM, and MNN, with speedup up to 4.2X, 2.5X, and 2.0X, respectively, with almost no accuracy loss, while preserving data privacy.

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