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Performance prediction of large-scale parallel discrete event models of physical systems

机译:物理系统大规模并行离散事件模型的性能预测

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A virtualization system is presented that is designed to help predict the performance of parallel/distributed discrete event simulations on massively parallel (supercomputing) platforms. It is intended to be useful in experimenting with and understanding the effects of execution parameters, such as different load balancing schemes and mixtures of model fidelity. A case study of the virtualization system is presented in the context of plasma physics simulations, highlighting important virtualization challenges and issues, such as reentrancy and synchronization in the virtual plane, and our corresponding solution approaches. A trace-based prediction methodology is presented, and is evaluated with a 1-D hybrid collisionless shock model simulation, with the predicted performance being validated against one obtained in actual simulation. Predicted performance measurements show excellent agreement with actual performance measurements on parallel platforms containing up to 512 CPUs.
机译:提出了一种虚拟化系统,旨在帮助预测大规模并行(超级计算)平台上并行/分布式离散事件模拟的性能。它旨在用于试验和理解执行参数的效果,例如不同的负载平衡方案和模型保真度的混合。在等离子物理模拟的背景下,对虚拟化系统进行了案例研究,重点介绍了重要的虚拟化挑战和问题,例如虚拟平面中的重新进入和同步,以及我们相应的解决方案。提出了一种基于轨迹的预测方法,并通过一维混合无碰撞冲击模型仿真对其进行了评估,并针对实际仿真中获得的预测性能进行了验证。预测的性能测量结果与包含多达512个CPU的并行平台上的实际性能测量结果非常吻合。

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