异构多核系统的混合片上通信架构

Biresh Kumar Joardar, J. Doppa, P. Pande, Diana Marculescu, R. Marculescu
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引用次数: 9

摘要

大数据的广泛应用促使人们寻找高性能、低功耗的计算平台。新兴的异构多核处理平台由CPU和GPU内核以及各种类型的加速器组成,为运行这些应用程序提供了功耗和面积效率的权衡。然而,异构多核架构需要满足传统的片上网络(NoC)架构无法有效处理的各种计算元素的通信和内存需求。此外,随着系统尺寸和异构程度的增加,快速探索大型设计空间并建立适当的设计权衡变得困难。为了解决这些挑战,机器学习启发的异构多核系统设计是一个有前途的研究方向。在本文中,我们强调了由新兴互连技术和机器学习技术实现的异构多核架构的各种显著特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid On-Chip Communication Architectures for Heterogeneous Manycore Systems
The widespread adoption of big data has led to the search for highperformance and low-power computational platforms. Emerging heterogeneous manycore processing platforms consisting of CPU and GPU cores along with various types of accelerators offer power and area-efficient trade-offs for running these applications. However, heterogeneous manycore architectures need to satisfy the communication and memory requirements of the diverse computing elements that conventional Network-on-Chip (NoC) architectures are unable to handle effectively. Further, with increasing system sizes and level of heterogeneity, it becomes difficult to quickly explore the large design space and establish the appropriate design trade-offs. To address these challenges, machine learning-inspired heterogeneous manycore system design is a promising research direction to pursue. In this paper, we highlight various salient features of heterogeneous manycore architectures enabled by emerging interconnect technologies and machine learning techniques.
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