Mithril: mining sporadic associations for cache prefetching
Proceedings of the 2017 Symposium on Cloud Computing, 2017•dl.acm.org
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 …
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 …
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.
ACM Digital Library
以上显示的是最相近的搜索结果。 查看全部搜索结果