MapPro: Proactive Runtime Mapping for Dynamic Workloads by Quantifying Ripple Effect of Applications on Networks-on-Chip

M. Haghbayan, A. Kanduri, A. Rahmani, P. Liljeberg, A. Jantsch, H. Tenhunen
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引用次数: 36

Abstract

Increasing dynamic workloads running on NoC-based many-core systems necessitates efficient runtime mapping strategies. With an unpredictable nature of application profiles, selecting a rational region to map an incoming application is an NP-hard problem in view of minimizing congestion and maximizing performance. In this paper, we propose a proactive region selection strategy which prioritizes nodes that offer lower congestion and dispersion. Our proposed strategy, MapPro, quantitatively represents the propagated impact of spatial availability and dispersion on the network with every new mapped application. This allows us to identify a suitable region to accommodate an incoming application that results in minimal congestion and dispersion. We cluster the network into squares of different radii to suit applications of different sizes and proactively select a suitable square for a new application, eliminating the overhead caused with typical reactive mapping approaches. We evaluated our proposed strategy over different traffic patterns and observed gains of up to 41% in energy efficiency, 28% in congestion and 21% dispersion when compared to the state-of-the-art region selection methods.
MapPro:通过量化片上网络应用程序的涟漪效应来实现动态工作负载的主动运行时映射
增加在基于noc的多核系统上运行的动态工作负载需要高效的运行时映射策略。由于应用程序概要具有不可预测的性质,因此从最小化拥塞和最大化性能的角度出发,选择一个合理的区域来映射传入的应用程序是一个np难题。在本文中,我们提出了一种主动区域选择策略,该策略优先考虑具有较低拥塞和分散的节点。我们提出的策略,MapPro,定量地表示空间可用性和网络上的分散对每个新映射应用程序的传播影响。这使我们能够确定一个合适的区域来容纳传入的应用程序,从而减少拥塞和分散。我们将网络聚类成不同半径的正方形,以适应不同规模的应用程序,并主动为新应用程序选择合适的正方形,从而消除了典型的响应式映射方法带来的开销。我们在不同的交通模式下评估了我们提出的策略,并观察到与最先进的区域选择方法相比,能源效率提高了41%,拥堵率提高了28%,分散率提高了21%。
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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