PHANES: ReRAM-based photonic accelerator for deep neural networks

Yinyi Liu, Jiaqi Liu, Yuxiang Fu, Shixi Chen, Jiaxu Zhang, Jiang Xu
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Abstract

Resistive random access memory (ReRAM) has demonstrated great promises of in-situ matrix-vector multiplications to accelerate deep neural networks. However, subject to the intrinsic properties of analog processing, most of the proposed ReRAM-based accelerators require excessive costly ADC/DAC to avoid distortion of electronic analog signals during inter-tile transmission. Moreover, due to bit-shifting before addition, prior works require longer cycles to serially calculate partial sum compared to multiplications, which dramatically restricts the throughput and is more likely to stall the pipeline between layers of deep neural networks. In this paper, we present a novel ReRAM-based photonic accelerator (PHANES) architecture, which calculates multiplications in ReRAM and parallel weighted accumulations during optical transmission. Such photonic paradigm also serves as high-fidelity analog-analog links to further reduce ADC/DAC. To circumvent the memory wall problem, we further propose a progressive bit-depth technique. Evaluations show that PHANES improves the energy efficiency by 6.09x and throughput density by 14.7x compared to state-of-the-art designs. Our photonic architecture also has great potentials for scalability towards very-large-scale accelerators.
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PHANES:基于reram的深度神经网络光子加速器
电阻式随机存取存储器(ReRAM)已经证明了原位矩阵向量乘法在加速深度神经网络方面的巨大前景。然而,由于模拟处理的固有特性,大多数基于reram的加速器都需要昂贵的ADC/DAC来避免电子模拟信号在片间传输过程中的失真。此外,由于在加法之前进行了位移位,与乘法相比,先前的工作需要更长的周期来连续计算部分和,这极大地限制了吞吐量,并且更有可能使深度神经网络层之间的管道停滞。在本文中,我们提出了一种新的基于ReRAM的光子加速器(PHANES)架构,该架构可以计算ReRAM中的乘法和光传输过程中的并行加权积累。这种光子模式也可以作为高保真的模拟链路,进一步减少ADC/DAC。为了规避内存墙问题,我们进一步提出了一种渐进式位深度技术。评估表明,与最先进的设计相比,PHANES的能源效率提高了6.09倍,吞吐量密度提高了14.7倍。我们的光子架构也有很大的潜力可扩展到非常大规模的加速器。
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