Evaluation of Emerging Energy-Efficient Heterogeneous Computing Platforms for Biomolecular and Cellular Simulation Workloads.

John E Stone, Michael J Hallock, James C Phillips, Joseph R Peterson, Zaida Luthey-Schulten, Klaus Schulten
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引用次数: 20

Abstract

Many of the continuing scientific advances achieved through computational biology are predicated on the availability of ongoing increases in computational power required for detailed simulation and analysis of cellular processes on biologically-relevant timescales. A critical challenge facing the development of future exascale supercomputer systems is the development of new computing hardware and associated scientific applications that dramatically improve upon the energy efficiency of existing solutions, while providing increased simulation, analysis, and visualization performance. Mobile computing platforms have recently become powerful enough to support interactive molecular visualization tasks that were previously only possible on laptops and workstations, creating future opportunities for their convenient use for meetings, remote collaboration, and as head mounted displays for immersive stereoscopic viewing. We describe early experiences adapting several biomolecular simulation and analysis applications for emerging heterogeneous computing platforms that combine power-efficient system-on-chip multi-core CPUs with high-performance massively parallel GPUs. We present low-cost power monitoring instrumentation that provides sufficient temporal resolution to evaluate the power consumption of individual CPU algorithms and GPU kernels. We compare the performance and energy efficiency of scientific applications running on emerging platforms with results obtained on traditional platforms, identify hardware and algorithmic performance bottlenecks that affect the usability of these platforms, and describe avenues for improving both the hardware and applications in pursuit of the needs of molecular modeling tasks on mobile devices and future exascale computers.

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生物分子和细胞模拟工作负载的新兴节能异构计算平台的评估。
通过计算生物学取得的许多持续的科学进步,都是建立在计算能力不断提高的基础上的,而计算能力的提高需要在生物相关的时间尺度上对细胞过程进行详细的模拟和分析。未来百亿亿次超级计算机系统的发展面临的一个关键挑战是开发新的计算硬件和相关的科学应用程序,这些应用程序可以显著提高现有解决方案的能源效率,同时提供更高的模拟、分析和可视化性能。移动计算平台最近变得足够强大,可以支持以前只能在笔记本电脑和工作站上实现的交互式分子可视化任务,为它们在会议、远程协作和作为沉浸式立体观看的头戴式显示器创造了未来的机会。我们描述了将几种生物分子模拟和分析应用程序应用于新兴异构计算平台的早期经验,这些平台结合了节能的片上系统多核cpu和高性能大规模并行gpu。我们提出了低成本的功耗监测仪器,提供足够的时间分辨率来评估单个CPU算法和GPU内核的功耗。我们比较了在新兴平台上运行的科学应用程序与在传统平台上获得的结果的性能和能源效率,确定了影响这些平台可用性的硬件和算法性能瓶颈,并描述了改进硬件和应用程序的途径,以满足移动设备和未来百亿亿次计算机上分子建模任务的需求。
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