Flexible Data Access in a Cloud Based on Freshness Requirements

L. Voicu, H. Schuldt, Y. Breitbart, H. Schek
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引用次数: 11

Abstract

Data clouds are newly emerging environments in which commercial providers manage large volumes of data with individual quality of service (QoS) guarantees per customer. These guarantees mainly include keeping several replicas of each data item in different distributed data centers for availability purposes. However, as the cost of maintaining several updateable replicas per data object is very high, cloud providers rather offer only a limited number of synchronously updated replicas (i.e., replicas that are always up-to-date) together with several read-only replicas that are updated in a lazy way and thus might hold stale data. QoS agreements may also include the maintenance of dedicated archives (copies of data which are frozen at some point in time). Stale data allow cloud providers to offer a variety of read operations with different semantics, e.g., read the most recent data, read data not older than / not younger than some timestamp t, or read data produced between t1 and t2, or read data exactly as of t. These read operations can be supported by a read-only site using a stale replica. In this paper we present our approach to cloud data management, based on a recent protocol for data grids. We discuss in detail how the refresh of individual replicas is provided in a completely distributed way. Finally, we present the results of a performance evaluation in a data cloud setting.
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基于新鲜度要求的云数据灵活访问
数据云是一种新兴的环境,在这种环境中,商业提供商管理大量数据,并为每个客户提供单独的服务质量(QoS)保证。这些保证主要包括在不同的分布式数据中心保存每个数据项的多个副本,以达到可用性目的。然而,由于维护每个数据对象的几个可更新副本的成本非常高,云提供商只能提供有限数量的同步更新副本(即,始终是最新的副本)以及几个只读副本,这些副本以惰性方式更新,因此可能包含过时的数据。QoS协议还可能包括维护专用档案(在某个时间点冻结的数据副本)。陈旧数据允许云提供商提供各种不同语义的读取操作,例如,读取最近的数据,读取不早于/不小于某个时间戳t的数据,读取t1和t2之间产生的数据,或者读取t的数据。这些读取操作可以由只读站点使用陈旧副本来支持。在本文中,我们提出了基于最新数据网格协议的云数据管理方法。我们将详细讨论如何以完全分布式的方式提供单个副本的刷新。最后,我们给出了在数据云环境下的性能评估结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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