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Hybrid Performance Modeling and Prediction of Large-Scale Computing Systems

机译:大规模计算系统的混合性能建模与预测

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Performance is a key feature of large-scale computing systems. However, the achieved performance when a certain program is executed is significantly lower than the maximal theoretical performance of the large-scale computing system. The model-based performance evaluation may be used to support the performance-oriented program development for large-scale computing systems. In this paper we present a hybrid approach for performance modeling and prediction of parallel and distributed computing systems, which combines mathematical modeling and discrete-event simulation. We use mathematical modeling to develop parameterized performance models for components of the system. Thereafter, we use discrete-event simulation to describe the structure of system and the interaction among its components. As a result, we obtain a high-level performance model, which combines the evaluation speed of mathematical models with the structure awareness and fidelity of the simulation model. We evaluate empirically our approach with a real-world material science program that comprises more than 15,000 lines of code.
机译:性能是大规模计算系统的关键特征。然而,在执行某个程序时实现的性能显着低于大规模计算系统的最大理论性能。基于模型的性能评估可用于支持大型计算系统的性能导向的程序开发。本文介绍了一种混合方法,用于平行和分布式计算系统的性能建模和预测,其结合了数学建模和离散事件仿真。我们使用数学建模来为系统的组件开发参数化性能模型。此后,我们使用离散事件仿真来描述系统的结构和其组件之间的交互。结果,我们获得了一种高级性能模型,它将数学模型的评估速度与模拟模型的结构意识和保真合并。我们用现实世界的物质科学计划验证我们的方法,这些方法包括超过15,000行代码。

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