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Scalability of Partial Differential Equations Preconditioner Resilient to Soft and Hard Faults

机译:偏微分方程预处理器对软,硬故障具有弹性的可伸缩性

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We present a resilient domain-decomposition preconditioner for partial differential equations (PDEs). The algorithm reformulates the PDE as a sampling problem, followed by a solution update through data manipulation that is resilient to both soft and hard faults. We discuss an implementation based on a server-client model where all state information is held by the servers, while clients are designed solely as computational units. Servers are assumed to be "sandboxed", while no assumption is made on the reliability of the clients. We explore the scalability of the algorithm up to ~12k cores, build an SST/macro skeleton to extrapolate to ~50k cores, and show the resilience under simulated hard and soft faults for a 2D linear Poisson equation.
机译:我们提出了一种针对偏微分方程(PDE)的弹性域分解预处理器。该算法将PDE重新格式化为一个采样问题,然后通过可对软故障和硬故障均具有弹性的数据处理来更新解决方案。我们讨论基于服务器-客户端模型的实现,其中所有状态信息均由服务器保存,而客户端仅设计为计算单元。假定服务器是“沙盒”,但不对客户端的可靠性进行任何假设。我们探索了算法的可扩展性,扩展到约12k核,构建了一个SST /宏框架以外推到约50k核,并显示了二维线性Poisson方程在模拟的硬故障和软故障下的弹性。

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