一种实现成本节约和QoE的新型自动分层存储体系结构

Ryo Irie, Shuuichirou Murata, Ying-Feng Hsu, Morito Matsuoka
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引用次数: 5

摘要

随着来自ICT设备的数据呈指数级增长,以及低成本存储技术的不断发展,数据的规模和数量在许多领域不断增加,并在整个云中移动。然而,它们中的大多数很少被访问。数据温度描述了数据访问的频率:热存储专门用于存储访问频率高的数据,冷存储专门用于存储访问频率低的数据。在本文中,我们提出并实现了一个自动分级存储系统的架构,以优化数据中心的数据分配。我们建议的方法对服务提供者和最终用户都有利。用户不需要考虑他们想要保存哪种存储介质,访问和服务提供商不需要分析数据访问或手动分类数据。通过成功地预测不经常访问的数据并将它们移动到冷存储中,我们获得了显著的成本节约。在节省存储成本的同时,我们还通过预测热数据的正确性来确保体验的质量。云存储服务提供商的运营策略各不相同,因此,我们描述了不同的场景并提供定制的最佳解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Automated Tiered Storage Architecture for Achieving Both Cost Saving and QoE
With the exponential growth of data from ICT equipment and the continued development of low-cost storage technology, the scale and amount of data are continually increasing in many areas and moving throughout the cloud. However, most of them are infrequently accessed. Data temperature describes the frequency of data access: hot storage is dedicated to storing frequently accessed data, while cold storage is designed for infrequently accessed data. In this paper, we propose and implement an architecture of an automated tiered storage system that optimizes data allocation in data centers. Our proposed approach brings mutual benefits to both service providers and end users. Users do not need to consider which storage media they want to save, and access and service providers do not need to analyze data access or manually classify data. By successfully predicting infrequently accessed data and moving them to the cold storage, we obtain significant cost saving. While having the benefit of storage cost savings, we also ensure a quality of experience through the correctness of the predicted hot data. The operational strategy varies among cloud storage service providers, and as a result, we characterize different scenarios and provide customized optimal solutions.
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