边缘:基于随机优化的企业ssd均匀分布垃圾收集

Shuyi Pei, Jing Yang, Bin Li
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引用次数: 0

摘要

固态驱动器(ssd)由于其相对于硬盘驱动器(hdd)的显著优势而被广泛应用于各种计算系统中。阻碍其在企业系统中进一步采用的一个关键挑战是解决由垃圾收集(GC)进程释放包含无效数据的闪存所引起的性能可变性问题。为了克服这一挑战,我们制定了一个随机优化模型,该模型表征了GC过程的性质,并考虑了总GC计数和GC随时间的分布。基于优化模型,我们提出了一种创新的自适应GC策略Edges,该策略可以均匀地分布企业ssd的GC。edge背后的关键观点是,与空闲块的数量相比,无效页面的数量是触发gc的细粒度指标。通过测试实际应用中的各种痕迹,我们表明,与最先进的GC算法相比,Edges能够将总GC计数减少高达70.17%,GC方差减少高达57.29%。
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Edges: Evenly Distributing Garbage-Collections for Enterprise SSDs via Stochastic Optimization
Solid-state drives (SSDs) have been widely used in various computing systems owing to their significant advantages over hard disk drives (HDDs). One critical challenge that hinders its further adoption in enterprise systems is to resolve the performance variability issue caused by the garbage collection (GC) process that frees flash memory containing invalid data. To overcome this challenge, we formulate a stochastic optimization model that characterizes the nature of the GC process and considers both total GC count and GC distribution over time. Based on the optimization model, we propose Edges, an innovative self-adaptive GC strategy that evenly distributes GCs for enterprise SSDs. The key insight behind Edges is that the number of invalid pages is a finer-grained metric of triggering GCs than the number of free blocks. By testing various traces from practical applications, we show that Edges is able to reduce the total GC counts by as high as 70.17% and GC variance by up to 57.29%, compared to the state-of-the-art GC algorithm.
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