Monolithic 3D IC designs for low-power deep neural networks targeting speech recognition

Kyungwook Chang, Deepak Kadetotad, Yu Cao, Jae-sun Seo, S. Lim
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引用次数: 10

Abstract

In recent years, deep learning has become widespread for various real-world recognition tasks. In addition to recognition accuracy, energy efficiency is another grand challenge to enable local intelligence in edge devices. In this paper, we investigate the adoption of monolithic 3D IC (M3D) technology for deep learning hardware design, using speech recognition as a test vehicle. M3D has recently proven to be one of the leading contenders to address the power, performance and area (PPA) scaling challenges in advanced technology nodes. Our study encompasses the influence of key parameters in DNN hardware implementations towards energy efficiency, including DNN architectural choices, underlying workloads, and tier partitioning choices in M3D. Our post-layout M3D designs, together with hardware-efficient sparse algorithms, produce power savings beyond what can be achieved using conventional 2D ICs. Experimental results show that M3D offers 22.3% iso-performance power saving, convincingly demonstrating its entitlement as a solution for DNN ASICs. We further present architectural guidelines for M3D DNNs to maximize the power saving.
针对语音识别的低功耗深度神经网络的单片3D集成电路设计
近年来,深度学习已经广泛应用于各种现实世界的识别任务。除了识别准确性之外,能源效率是在边缘设备中实现本地智能的另一个重大挑战。在本文中,我们研究了采用单片3D集成电路(M3D)技术进行深度学习硬件设计,并以语音识别作为测试工具。M3D最近被证明是解决先进技术节点中功率、性能和面积(PPA)扩展挑战的领先竞争者之一。我们的研究涵盖了DNN硬件实现中关键参数对能源效率的影响,包括DNN架构选择、底层工作负载和M3D中的层划分选择。我们的布局后M3D设计,加上硬件高效的稀疏算法,产生的功耗节省超过了使用传统2D ic所能实现的。实验结果表明,M3D可提供22.3%的等性能节能,令人信服地证明了其作为DNN asic解决方案的权利。我们进一步提出了M3D dnn的架构指南,以最大限度地节省电力。
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