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Random Slicing: Efficient and Scalable Data Placement for Large-Scale Storage Systems

机译:随机切片:大型存储系统的高效且可扩展的数据放置

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摘要

The ever-growing amount of data requires highly scalable storage solutions. The most flexible approach is to use storage pools that can be expanded and scaled down by adding or removing storage devices. To make this approach usable, it is necessary to provide a solution to locate data items in such a dynamic environment. This article presents and evaluates the Random Slicing strategy, which incorporates lessons learned from table-based, rule-based, and pseudo-randomized hashing strategies and is able to provide a simple and efficient strategy that scales up to handle exascale data. Random Slicing keeps a small table with information about previous storage system insert and remove operations, drastically reducing the required amount of randomness while delivering a perfect load distribution.
机译:不断增长的数据量要求高度可扩展的存储解决方案。最灵活的方法是使用可以通过添加或删除存储设备来扩展和缩小规模的存储池。为了使这种方法可用,有必要提供一种在这种动态环境中定位数据项的解决方案。本文介绍并评估了随机切片策略,该策略结合了从基于表,基于规则和伪随机哈希策略中汲取的经验教训,并且能够提供一种简单有效的策略,可扩展以处理亿亿级数据。随机切片可保留一张小表,其中包含有关以前的存储系统插入和删除操作的信息,在提供理想的负载分配的同时,大大减少了所需的随机性。

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