探索基于amr应用的功率预算调度机会和权衡

Yubo Qin, I. Rodero, P. Subedi, M. Parashar, S. Rigo
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引用次数: 0

摘要

计算需求给高级网络基础设施(ACI)体系结构带来了重大变化。现在可以更快地运行科学模拟并获得更准确的结果。然而,电力和能源已成为关键问题。此外,目前新一代ACI的路线图包括功率预算作为主要限制之一。目前的研究工作主要是研究功率和性能的权衡以及如何平衡它们(例如,使用动态电压和频率缩放(DVFS)和功率封顶来满足可能影响性能的功率限制)。但是,应用程序可能无法容忍性能的下降,因此需要探索其他折衷方案以满足功率预算(例如,让应用程序参与制定能源-性能-质量折衷决策)。本文提出利用基于amr算法的特性(例如,结合功率封顶技术动态调整模拟的分辨率)来调度或重新分配功率预算。它特别探讨了使用检查点作为概念验证用例实现这种方法的机会,并提供了使用自适应网格细化(AMR)方法的代表性应用程序集的特征,包括低马赫数燃烧(LMC)应用程序。它还探讨了利用功率封顶的潜力,通过模拟来理解功率质量权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Power Budget Scheduling Opportunities and Tradeoffs for AMR-Based Applications
Computational demand has brought major changes to Advanced Cyber-Infrastructure (ACI) architectures. It is now possible to run scientific simulations faster and obtain more accurate results. However, power and energy have become critical concerns. Also, the current roadmap toward the new generation of ACI includes power budget as one of the main constraints. Current research efforts have studied power and performance tradeoffs and how to balance these (e.g., using Dynamic Voltage and Frequency Scaling (DVFS) and power capping for meeting power constraints, which can impact performance). However, applications may not tolerate degradation in performance, and other tradeoffs need to be explored to meet power budgets (e.g., involving the application in making energy-performance-quality tradeoff decisions). This paper proposes using the properties of AMR-based algorithms (e.g., dynamically adjusting the resolution of a simulation in combination with power capping techniques) to schedule or re-distribute the power budget. It specifically explores the opportunities to realize such an approach using checkpointing as a proof-of-concept use case and provides a characterization of a representative set of applications that use Adaptive Mesh Refinement (AMR) methods, including a Low-Mach-Number Combustion (LMC) application. It also explores the potential of utilizing power capping to understand power-quality tradeoffs via simulation.
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