Tarazu: An Adaptive End-to-End I/O Load Balancing Framework for Large-Scale Parallel File Systems

IF 2.1 3区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Arnab K. Paul, Sarah Neuwirth, Bharti Wadhwa, Feiyi Wang, Sarp Oral, Ali R. Butt
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引用次数: 0

Abstract

The imbalanced I/O load on large parallel file systems affects the parallel I/O performance of high-performance computing (HPC) applications. One of the main reasons for I/O imbalances is the lack of a global view of system-wide resource consumption. While approaches to address the problem already exist, the diversity of HPC workloads combined with different file striping patterns prevents widespread adoption of these approaches. In addition, load balancing techniques should be transparent to client applications. To address these issues, we propose Tarazu, an end-to-end control plane where clients transparently and adaptively write to a set of selected I/O servers to achieve balanced data placement. Our control plane leverages real-time load statistics for global data placement on distributed storage servers, while our design model employs trace-based optimization techniques to minimize latency for I/O load requests between clients and servers and to handle multiple striping patterns in files. We evaluate our proposed system on an experimental cluster for two common use cases: the synthetic I/O benchmark IOR and the scientific application I/O kernel HACC-I/O. We also use a discrete-time simulator with real HPC application traces from emerging workloads running on the Summit supercomputer to validate the effectiveness and scalability of Tarazu in large-scale storage environments. The results show improvements in load balancing and read performance of up to \(33\% \) and \(43\% \) percent, respectively, compared to the state of the art.

Tarazu:面向大规模并行文件系统的自适应端到端 I/O 负载平衡框架
大型并行文件系统的 I/O 负载不平衡会影响高性能计算(HPC)应用的并行 I/O 性能。造成 I/O 不平衡的主要原因之一是缺乏对全系统资源消耗的全局了解。虽然解决这一问题的方法已经存在,但高性能计算工作负载的多样性以及不同的文件条带模式阻碍了这些方法的广泛采用。此外,负载平衡技术应该对客户端应用程序透明。为了解决这些问题,我们提出了端到端控制平面 Tarazu,在这个控制平面上,客户端可以透明、自适应地向一组选定的 I/O 服务器写入数据,以实现均衡的数据放置。我们的控制平面利用实时负载统计在分布式存储服务器上进行全局数据放置,而我们的设计模型则采用了基于跟踪的优化技术,以最大限度地减少客户端和服务器之间 I/O 负载请求的延迟,并处理文件中的多种条带模式。我们在一个实验集群上对我们提出的系统进行了评估,评估了两种常见的使用情况:合成 I/O 基准 IOR 和科学应用 I/O 内核 HACC-I/O。我们还使用离散时间模拟器和来自 Summit 超级计算机上运行的新兴工作负载的真实 HPC 应用程序跟踪来验证 Tarazu 在大规模存储环境中的有效性和可扩展性。结果显示,与现有技术相比,负载平衡和读取性能分别提高了33%和43%。
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来源期刊
ACM Transactions on Storage
ACM Transactions on Storage COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
4.20
自引率
5.90%
发文量
33
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Storage (TOS) is a new journal with an intent to publish original archival papers in the area of storage and closely related disciplines. Articles that appear in TOS will tend either to present new techniques and concepts or to report novel experiences and experiments with practical systems. Storage is a broad and multidisciplinary area that comprises of network protocols, resource management, data backup, replication, recovery, devices, security, and theory of data coding, densities, and low-power. Potential synergies among these fields are expected to open up new research directions.
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