Understanding the Impact of Synchronous, Asynchronous, and Hybrid In-Situ Techniques in Computational Fluid Dynamics Applications

Yi Ju, Adalberto Perez, Stefano Markidis, Philipp Schlatter, Erwin Laure
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Abstract

High-Performance Computing (HPC) systems provide input/output (IO) performance growing relatively slowly compared to peak computational performance and have limited storage capacity. Computational Fluid Dynamics (CFD) applications aiming to leverage the full power of Exascale HPC systems, such as the solver Nek5000, will generate massive data for further processing. These data need to be efficiently stored via the IO subsystem. However, limited IO performance and storage capacity may result in performance, and thus scientific discovery, bottlenecks. In comparison to traditional post-processing methods, in-situ techniques can reduce or avoid writing and reading the data through the IO subsystem, promising to be a solution to these problems. In this paper, we study the performance and resource usage of three in-situ use cases: data compression, image generation, and uncertainty quantification. We furthermore analyze three approaches when these in-situ tasks and the simulation are executed synchronously, asynchronously, or in a hybrid manner. In-situ compression can be used to reduce the IO time and storage requirements while maintaining data accuracy. Furthermore, in-situ visualization and analysis can save Terabytes of data from being routed through the IO subsystem to storage. However, the overall efficiency is crucially dependent on the characteristics of both, the in-situ task and the simulation. In some cases, the overhead introduced by the in-situ tasks can be substantial. Therefore, it is essential to choose the proper in-situ approach, synchronous, asynchronous, or hybrid, to minimize overhead and maximize the benefits of concurrent execution.
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了解同步、异步和混合原位技术在计算流体动力学应用中的影响
与峰值计算性能相比,高性能计算(HPC)系统的输入/输出(IO)性能增长相对缓慢,而且存储容量有限。计算流体动力学(CFD)应用旨在充分利用超大规模 HPC 系统的全部功能,例如求解器 Nek5000,将产生大量数据供进一步处理。然而,有限的 IO 性能和存储容量可能会导致性能瓶颈,进而影响科学发现。与传统的后处理方法相比,原位技术可以减少或避免通过 IO 子系统写入和读取数据,有望解决这些问题。在本文中,我们研究了数据压缩、图像生成和不确定性量化这三种原位用例的性能和资源使用情况。此外,我们还分析了同步、异步或混合执行这些原位任务和模拟时的三种方法。此外,原位可视化和分析可节省数 TB 的数据,使其无需通过 IO 子系统传输到存储。然而,整体效率关键取决于原位任务和模拟的特性。在某些情况下,原位任务带来的开销可能很大。因此,必须选择适当的原位方法(同步、异步或混合),以尽量减少开销,最大限度地发挥并发执行的优势。
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