多/多核心领域的并行化、建模和性能预测:系统文献综述

Markus Frank, Marcus Hilbrich, Sebastian Lehrig, Steffen Becker
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引用次数: 11

摘要

背景:软件开发人员面临复杂的、相互关联的大型软件项目。这种系统的开发涉及到直接影响软件质量的设计决策。对于早期的决策制定,软件开发人员可以使用基于模型的(非)功能质量属性预测方法。不幸的是,这些方法的准确性受到了新引入的硬件特性的挑战,比如单个CPU内的多核(多核)以及它们对共享内存和其他共享资源的依赖。目标:我们的目标是了解现有的基于模型的性能预测方法是否以及如何面对这一挑战。我们计划使用获得的见解作为基础,丰富现有的预测方法,使其具有预测在多核上运行的系统的能力。方法:我们进行了系统文献综述(SLR),以确定当前在多核环境下基于模型的预测方法。结果:我们的SLR涵盖了软件工程、嵌入式系统、高性能计算和软件性能工程领域,我们详细检查了34个来源。我们发现了各种性能预测方法,这些方法试图通过将共享内存设计纳入预测模型来提高多核系统的预测精度。结论:然而,我们的研究结果表明,记忆设计模型仅处于初始阶段。需要做进一步的研究来改进缓存、内存和内存带宽模型,并包括自动调谐器支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallelization, Modeling, and Performance Prediction in the Multi-/Many Core Area: A Systematic Literature Review
Context: Software developers face complex, connected, and large software projects. The development of such systems involves design decisions that directly impact the quality of the software. For an early decision making, software developers can use model-based prediction approaches for (non-)functional quality properties. Unfortunately, the accuracy of these approaches is challenged by newly introduced hardware features like multiple cores within a single CPU (multicores) and their dependence on shared memory and other shared resources. Objectives: Our goal is to understand whether and how existing model-based performance prediction approaches face this challenge. We plan to use gained insights as foundation for enriching existing prediction approaches with capabilities to predict systems running on multicores. Methods: We perform a Systematic Literature Review (SLR) to identify current model-based prediction approaches in the context of multicores. Results: Our SLR covers the software engineering, embedded systems, High Performance Computing, and Software Performance Engineering domains for which we examined 34 sources in detail. We found various performance prediction approaches which tries to increase prediction accuracy for multicore systems by including shared memory designs to the prediction models. Conclusion: However, our results show that the memory designs models are only in an initial phase. Further research has to be done to improve cache, memory, and memory bandwidth model as well as to include auto tuner support.
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