网络内数据缓存科学数据共享模式分析

Elizabeth Copps, Huiyi Zhang, A. Sim, Kesheng Wu, I. Monga, C. Guok, F. Würthwein, Diego Davila, E. Hernandez
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引用次数: 4

摘要

随着新的科学实验和模拟,通过网络传输的数据量也在增加。为了在特定的时间范围内传输数据,网络带宽需求也会成比例地增加。我们观察到,由于各种原因,流行数据集的很大一部分被多次传输给不同的用户以及同一用户。共享数据的网络内数据缓存已被证明可以减少冗余数据传输,从而节省网络流量。此外,使用网络内缓存可以提高应用程序的整体性能,因为访问本地缓存的数据可以降低延迟。本文展示了在研究期间共享了多少数据,因此节省了多少网络流量,以及临时网络内缓存提高了多少科学应用程序性能。本文还分析了应用程序中的数据访问模式以及缓存节点对区域数据存储库的影响。从结果中,我们观察到,在研究期间,网络带宽需求减少了近3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Scientific Data Sharing Patterns for In-network Data Caching
The volume of data moving through a network increases with new scientific experiments and simulations. Network bandwidth requirements also increase proportionally to deliver data within a certain time frame. We observe that a significant portion of the popular dataset is transferred multiple times to different users as well as to the same user for various reasons. In-network data caching for the shared data has shown to reduce the redundant data transfers and consequently save network traffic volume. In addition, overall application performance is expected to improve with in-network caching because access to the locally cached data results in lower latency. This paper shows how much data was shared over the study period, how much network traffic volume was consequently saved, and how much the temporary in-network caching increased the scientific application performance. It also analyzes data access patterns in applications and the impacts of caching nodes on the regional data repository. From the results, we observed that the network bandwidth demand was reduced by nearly a factor of 3 over the study period.
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