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引用次数: 90
摘要
越来越多的人担心I/O系统将难以满足未来领导级机器的需求。即使是当前的机器,对于某些应用程序也会出现I/O限制。在本文中,我们确定了目前部署在几个领先计算设施的IBM Blue Gene/P (BG/P)超级计算机上I/O数据移动的现有性能瓶颈。我们通过利用BG/P的网络拓扑来提高I/O性能,利用应用程序的数据语义并结合异步数据分段。我们展示了我们的方法在领导计算系统上的综合基准实验和大规模应用级基准测试的有效性。
Topology-aware data movement and staging for I/O acceleration on Blue Gene/P supercomputing systems
There is growing concern that I/O systems will be hard pressed to satisfy the requirements of future leadership-class machines. Even current machines are found to be I/O bound for some applications. In this paper, we identify existing performance bottlenecks in data movement for I/O on the IBM Blue Gene/P (BG/P) supercomputer currently deployed at several leadership computing facilities. We improve the I/O performance by exploiting the network topology of BG/P for collective I/O, leveraging data semantics of applications and incorporating asynchronous data staging. We demonstrate the efficacy of our approaches for synthetic benchmark experiments and for application-level benchmarks at scale on leadership computing systems.