秘银:为缓存预取挖掘零星关联

Juncheng Yang, Reza Karimi, Trausti Sæmundsson, Avani Wildani, Ymir Vigfusson
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引用次数: 17

摘要

云应用程序可伸缩性的压力越来越大,这使得存储性能成为一个关键瓶颈。尽管缓存替换算法已经得到了广泛的研究,但是缓存预取——通过在实际请求之前检索条目来减少延迟——仍然是一个未被充分研究的领域。特别是,现有的基于历史的预取方法为实际系统提供的好处太少了。我们提出了Mithril,一个预取层,可以有效地利用缓存请求关联中的历史模式。Mithril受零星关联规则挖掘的启发,仅依赖于请求的时间戳。通过对135个块存储轨迹的评估,我们表明Mithril是有效的,在合理的成本下,比LRU和概率图平均提高55%的命中率,比Amp提高36%的命中率。最后,我们演示了Mithril能够捕获中频块的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mithril: mining sporadic associations for cache prefetching
The growing pressure on cloud application scalability has accentuated storage performance as a critical bottleneck. Although cache replacement algorithms have been extensively studied, cache prefetching - reducing latency by retrieving items before they are actually requested - remains an underexplored area. Existing approaches to history-based prefetching, in particular, provide too few benefits for real systems for the resources they cost. We propose Mithril, a prefetching layer that efficiently exploits historical patterns in cache request associations. Mithril is inspired by sporadic association rule mining and only relies on the timestamps of requests. Through evaluation of 135 block-storage traces, we show that Mithril is effective, giving an average of a 55% hit ratio increase over LRU and Probability Graph, and a 36% hit ratio gain over Amp at reasonable cost. Finally, we demonstrate the improvement comes from Mithril being able to capture mid-frequency blocks.
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