科学数据网内缓存的访问趋势

Ruize Han, A. Sim, K. Wu, I. Monga, C. Guok, F. Würthwein, Diego Davila, J. Balcas, Harvey Newman
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引用次数: 2

摘要

科学合作的工作越来越依赖于大量数据,其中许多合作采用分层系统将数据复制到其全球用户社区。社区中的每个用户经常为他们的分析任务选择不同的数据子集;然而,研究小组的成员经常从事需要类似数据对象的相关研究课题。因此,有可能实现大量的数据共享。在这项工作中,我们研究了一个被称为南加州pb级缓存的联邦存储缓存的访问轨迹。通过研究这种缓存系统的访问模式和减少网络流量的潜力,我们的目标是探索缓存使用的可预测性和更通用的网络内数据缓存的潜力。我们的研究表明,在部分研究期间,这种分布式存储缓存能够将网络流量减少2.35倍。我们进一步表明,机器学习模型可以以0.88的精度预测缓存利用率。这表明这种缓存使用是可预测的,这对于管理复杂的网络资源(如网络内缓存)可能很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Access Trends of In-network Cache for Scientific Data
Scientific collaborations are increasingly relying on large volumes of data for their work and many of them employ tiered systems to replicate the data to their worldwide user communities. Each user in the community often selects a different subset of data for their analysis tasks; however, members of a research group often are working on related research topics that require similar data objects. Thus, there is a significant amount of data sharing possible. In this work, we study the access traces of a federated storage cache known as the Southern California Petabyte Scale Cache. By studying the access patterns and potential for network traffic reduction by this caching system, we aim to explore the predictability of the cache uses and the potential for a more general in-network data caching. Our study shows that this distributed storage cache is able to reduce the network traffic volume by a factor of 2.35 during a part of the study period. We further show that machine learning models could predict cache utilization with an accuracy of 0.88. This demonstrates that such cache usage is predictable, which could be useful for managing complex networking resources such as in-network caching.
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