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Memory Optimization for Energy-Efficient Differentially Private Deep Learning

机译:节能型差异化专用深度学习的内存优化

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摘要

With the advent of Internet of Things (IoT) technologies and availability of a large amount of data, deep learning has been applied in a variety of artificial intelligence (AI) applications. However, sharing personal data using IoT edge devices carries inherent risks to individual privacy. Meanwhile, the energy and memory resources needed during the inference process become a constraint to the resource-limited IoT edge devices. This article brings memory hardware optimization to meet the tight power budget in IoT edge devices by considering the privacy, accuracy, and power efficiency tradeoff in differentially efficient deep learning systems. Based on a detailed analysis on these characteristics, an integer linear programs (ILP) model is developed to minimize mean square error (MSE), thereby enabling optimal input data memory design. Our simulation results in 45-nm CMOS technology show that the proposed technique can enable near-threshold energy-efficient memory operation for different privacy requirements, with less than 1 degradation in classification accuracy.
机译:随着物联网(IoT)技术的出现和大量数据的可用性,深度学习已应用于各种人工智能(AI)应用程序中。但是,使用IoT边缘设备共享个人数据会给个人隐私带来固有的风险。同时,推理过程中所需的能源和内存资源成为资源受限的IoT边缘设备的约束。本文通过考虑效率差的深度学习系统中的隐私性,准确性和功率效率的权衡,对内存硬件进行优化,以满足IoT边缘设备中紧张的功率预算。基于对这些特性的详细分析,开发了整数线性程序(ILP)模型以最小化均方误差(MSE),从而实现最佳的输入数据存储器设计。我们在45纳米CMOS技术中的仿真结果表明,所提出的技术可以针对不同的隐私要求实现接近阈值的节能存储操作,并且分类精度降低不到1个。

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