Large Scale Parallelization Using File-Based Communications

C. Byun, J. Kepner, W. Arcand, David Bestor, Bill Bergeron, V. Gadepally, Michael Houle, M. Hubbell, Michael Jones, Anna Klein, P. Michaleas, J. Mullen, Andrew Prout, Antonio Rosa, S. Samsi, Charles Yee, A. Reuther
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引用次数: 6

Abstract

In this paper, we present a novel and new file-based communication architecture using the local filesystem for large scale parallelization. This new approach eliminates the issues with filesystem overload and resource contention when using the central filesystem for large parallel jobs. The new approach incurs additional overhead due to inter-node message file transfers when both the sending and receiving processes are not on the same node. However, even with this additional overhead cost, its benefits are far greater for the overall cluster operation in addition to the performance enhancement in message communications for large scale parallel jobs. For example, when running a 2048-process parallel job, it achieved about 34 times better performance with MPI_Bcast() when using the local filesystem. Furthermore, since the security for transferring message files is handled entirely by using the secure copy protocol (scp) and the file system permissions, no additional security measures or ports are required other than those that are typically required on an HPC system.
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使用基于文件的通信的大规模并行化
本文提出了一种利用本地文件系统实现大规模并行化的基于文件的通信体系结构。这种新方法消除了在将中央文件系统用于大型并行作业时出现的文件系统过载和资源争用问题。当发送和接收进程不在同一节点上时,由于节点间消息文件传输,新方法会产生额外的开销。然而,即使有这些额外的开销成本,除了大规模并行作业的消息通信性能增强之外,它对整个集群操作的好处要大得多。例如,当运行一个2048个进程的并行作业时,在使用本地文件系统时,使用MPI_Bcast()实现了大约34倍的性能提升。此外,由于传输消息文件的安全性完全通过使用安全复制协议(scp)和文件系统权限来处理,因此除了HPC系统上通常需要的安全措施或端口外,不需要其他安全措施或端口。
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