具有SerDes互连的2×2 CNN加速器芯片集群的高效设计框架

Yajie Wu, Tianze Li, Zhuang Shao, Li Du, Yuan Du
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引用次数: 0

摘要

由于人工智能相关的训练和推理任务不断增加,对具有专用CNN加速器的高性能计算多芯片集成系统的需求很高;然而,许多设计挑战阻碍了它们的大规模应用,例如复杂的多任务调度、高速模对模SerDes (Serializer/Deserializer)链路建模以及详细的通信和计算硬件协同仿真。本文提出了一种基于SerDes链路模型的优化2×2 CNN加速器芯片框架,解决了上述问题。提出了一种设计2×2 CNN加速器芯片框架的方法,并进行了实验。通过计算硬件、SerDes链路和改进调度算法的不同设计参数,对不同设计方案的系统性能进行了比较分析。结果表明,在相同的互连结构和带宽下,一个芯片的计算能力每提高1TFLOPS,执行时间平均减少3.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Design Framework for 2×2 CNN Accelerator Chiplet Cluster with SerDes Interconnects
Multi-Chiplet integrated systems for high-performance computing with dedicated CNN accelerators are highly demanded due to ever-increasing AI-related training and inferencing tasks; however, many design challenges hinder their large-scale applications, such as complicated multi-task scheduling, high-speed die-to-die SerDes (Serializer/Deserializer) link modeling, and detailed communication and computation hardware co-simulation. In this paper, an optimized 2×2 CNN accelerator chiplet framework with a SerDes link model is presented, which addresses the above challenges. A methodology for designing a 2×2 CNN accelerator chiplet framework is also proposed, and several experiments are conducted. The system performances of different designs are compared and analyzed with different design parameters of computation hardware, SerDes links, and improved scheduling algorithms. The results show that with the same interconnection structure and bandwidth, every 1TFLOPS increase in one chiplet’s computing power can bring an average 3.7% execution time reduction.
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