A DNN Compression Framework for SOT-MRAM-based Processing-In-Memory Engine

Geng Yuan, Xiaolong Ma, Sheng Lin, Zhengang Li, Jieren Deng, Caiwen Ding
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引用次数: 3

Abstract

The computing wall and data movement challenges of deep neural networks (DNNs) have exposed the limitations of conventional CMOS-based DNN accelerators. Furthermore, the deep structure and large model size will make DNNs prohibitive to embedded systems and IoT devices, where low power consumption is required. To address these challenges, spin-orbit torque magnetic random-access memory (SOT-MRAM) and SOT-MRAM based Processing-In-Memory (PIM) engines have been used to reduce the power consumption of DNNs since SOT-MRAM has the characteristic of near-zero standby power, high density, non-volatile. However, the drawbacks of SOT-MRAM based PIM engines such as high writing latency and requiring low bit-width data decrease its popularity as a favorable energy-efficient DNN accelerator. To mitigate these drawbacks, we propose an ultra-energy-efficient framework by using model compression techniques including weight pruning and quantization from the software level considering the architecture of SOT-MRAM PIM. And we incorporate the alternating direction method of multipliers (ADMM) into the training phase to further guarantee the solution feasibility and satisfy SOT-MRAM hardware constraints. Thus, the footprint and power consumption of SOT-MRAM PIM can be reduced, while increasing the overall system performance rate (frame per second) in the meantime, making our proposed ADMM-based SOT-MRAM PIM more energy efficient and suitable for embedded systems or IoT devices. Our experimental results show the accuracy and compression rate of our proposed framework is consistently outperforming the reference works, while the efficiency (area & power) and performance rate of SOT-MRAM PIM engine is significantly improved.
基于sot - mram的内存处理引擎的DNN压缩框架
深度神经网络(DNN)的计算墙和数据移动挑战暴露了传统基于cmos的深度神经网络加速器的局限性。此外,深层结构和大模型尺寸将使深度神经网络无法用于需要低功耗的嵌入式系统和物联网设备。为了应对这些挑战,自旋轨道转矩磁随机存取存储器(SOT-MRAM)和基于SOT-MRAM的内存中处理(PIM)发动机已被用于降低dnn的功耗,因为SOT-MRAM具有接近零待机功率、高密度、非易失性的特点。然而,基于SOT-MRAM的PIM引擎的缺点,如高写入延迟和需要低位宽数据,降低了它作为一个有利的节能DNN加速器的受欢迎程度。为了减轻这些缺点,我们提出了一个超节能的框架,通过使用模型压缩技术,包括权值修剪和量化从软件层面考虑SOT-MRAM PIM的架构。并将乘法器的交替方向法(ADMM)引入到训练阶段,进一步保证了方案的可行性,同时满足了SOT-MRAM的硬件约束。因此,可以减少SOT-MRAM PIM的占地面积和功耗,同时提高整体系统性能速率(每秒帧数),使我们提出的基于admm的SOT-MRAM PIM更加节能,适合嵌入式系统或物联网设备。实验结果表明,我们提出的框架的精度和压缩率始终优于参考作品,而SOT-MRAM PIM引擎的效率(面积和功率)和性能率显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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