SuperSIM: A comprehensive benchmarking framework for neural networks using superconductor josephson devices

Guangxian Zhu, Yirong Kan, Renyuan Zhang, Yasuhiko Nakashima, Wenhui Luo, N. Takeuchi, Nobuyuki Yoshikawa, O. Chen
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引用次数: 0

Abstract

This paper introduces SuperSIM, a benchmarking framework tailored for neural networks using superconducting Josephson devices, specifically focusing on Adiabatic Quantum Flux Parametron (AQFP) based Processing-in-Memory (PIM) architectures. Our framework offers in-depth architecture-level simulations and performance assessments to enhance AQFP PIM chip development. It supports single and multi-bit PIM designs, various AQFP memory cell types, and diverse clocking methods. Additionally, it integrates circuit-level models for precise energy, delay, and area measurements, ensuring accurate performance evaluation. The framework includes application, device, and architectural layers for versatile configurations and cycle-accurate energy, latency, and area simulations. Experiments validate our framework, with case studies on algorithm and architecture-level features, examining data precision, crossbar size, operating frequency and clocking scheme impacts on computational accuracy, energy use, overall latency and hardware cost.
SuperSIM:使用超导体约瑟夫森器件的神经网络综合基准框架
本文介绍了 SuperSIM,这是一个为使用超导约瑟夫森器件的神经网络量身定制的基准测试框架,尤其侧重于基于绝热量子通量 Parametron(AQFP)的内存处理(PIM)架构。我们的框架提供深入的架构级仿真和性能评估,以加强 AQFP PIM 芯片的开发。它支持单位和多位 PIM 设计、各种 AQFP 存储单元类型和不同的时钟方法。此外,它还集成了用于精确测量能量、延迟和面积的电路级模型,确保了准确的性能评估。该框架包括应用层、器件层和架构层,可进行多种配置和周期精确的能量、延迟和面积模拟。实验验证了我们的框架,对算法和架构级功能进行了案例研究,检查了数据精度、横条尺寸、工作频率和时钟方案对计算精度、能耗、总体延迟和硬件成本的影响。
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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