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Design framework for an energy-efficient binary convolutional neural network accelerator based on nonvolatile logic

机译:基于非易失性逻辑的节能二元卷积神经网络加速器的设计框架

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Convolutional neural network (CNN) accelerators, particularly binarized CNN (BCNN) accelerators have proven to be effective for several artificial-intelligence-oriented several applications; however, their energy efficiency should be further improved for edge applications. In this paper, a design framework for an energy-efficient BCNN accelerator based on nonvolatile logic is presented. Designing BCNN accelerators using nonvolatile logic allows for the accelerators to exhibit a massively parallel and ultra-low standby power capability. Thus, a new design can be realized for accelerators that is different from that of conventional accelerators based solely on CMOS. Considering this, we discuss a concrete design considerations of nonvolatile BCNN accelerators. In fact, a systematic design flow of the nonvolatile BCNN is established by combining Vivado HLS and standard electronic design automation tools. As a typical design example, a BCNN accelerator for inferring 32 × 32 pixel MNIST dataset is designed using a 65-nm CMOS technology. By the logic-synthesis result, the proposed BCNN accelerator is estimated to consume 94.2% lower power than that of a conventional BCNN accelerator when the frame rate is 30 frames per second.
机译:卷积神经网络(CNN)加速器,特别是二值化CNN(BCNN)加速器已被证明对几种以人工智能为导向的几种应用有效;但是,对于边缘应用,应进一步改善它们的能效。本文介绍了基于非易失性逻辑的节能BCNN加速器的设计框架。使用非易失性逻辑设计BCNN加速器允许加速器表现出大量平行和超低的待机功率能力。因此,可以实现新的设计,用于基于CMOS的传统加速器的加速器。考虑到这一点,我们讨论了非易失性BCNN加速器的具体设计考虑因素。实际上,通过组合Vivado HLS和标准电子设计自动化工具来建立非易失性BCNN的系统设计流程。作为典型的设计示例,使用65nm CMOS技术设计用于推断32×32像素MNIST数据集的BCNN加速器。通过逻辑合成结果,当帧速率为每秒30帧30帧时,估计所提出的BCNN加速器比传统BCNN加速器的功率降低94.2%。

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