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RFTL: improving performance of selective caching-based page-level FTL through replication

机译:RFTL:通过复制提高基于选择性缓存的页面级FTL的性能

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摘要

The internal nature of flash memory technology, makes its performance highly dependent on workload characteristics causing poor performance on random writes. To solve this, Demand-based Flash Translation Layer (DFTL) which selectively caches page-level address mappings, was proposed. DFTL exploits temporal locality in workloads and when low, high cache miss rates are experienced. In this paper, we propose a replication based DFTL, called RFTL, which aims at minimizing the overhead caused by miss penalty from the cached mapping table in SRAM. We developed an analytical model for studying the range of performance for RFTL. We extended EagleTree simulator to implement RFTL. Our experimental evaluation with synthetic workloads endorses the utility of RFTL showing improved performance over DFTL especially for read-dominant workloads. With 80% read dominant workload, RFTL's cumulative distribution function shows a 20% improvement and under 80% write dominant workload, it outperforms DFTL by 10% on I/O throughput.
机译:闪存技术的内部性质,使其性能高度依赖于工作量特性,导致随机写入的性能差。为了解决这个问题,提出了基于需求的闪光翻译层(DFTL),其选择性地缓存了页面级地址映射。 DFTL利用工作负载中的时间位置,并且当经验很低时,高高的高速缓存未命中率。在本文中,我们提出了一种被称为RFTL的基于复制的DFTL,其旨在最大限度地减少由SRAM中的缓存映射表中的Miss Pargy引起的开销。我们开发了一种用于研究RFTL性能范围的分析模型。我们扩展了Eagletree模拟器来实现RFTL。我们使用合成工作负载的实验评估赞助RFTL的效用显示,表现出对DFTL的改进性能,特别是对于读取主导的工作量。凭借80%读取优势工作负载,RFTL的累积分配功能显示出20%的改进,并且在80%下写出主导工作量,在I / O吞吐量上占DFTL 10%。

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