TRIFL: A Generic Trajectory Index for Flash Storage

Dai Hai Ton That, I. S. Popa, K. Zeitouni
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引用次数: 9

Abstract

Due to several important features, such as high performance, low power consumption, and shock resistance, NAND flash has become a very popular stable storage medium for embedded mobile devices, personal computers, and even enterprise servers. However, the peculiar characteristics of flash memory require redesigning the existing data storage and indexing techniques that were devised for magnetic hard disks. In this article, we propose TRIFL, an efficient and generic TRajectory Index for FLash. TRIFL is designed around the key requirements of trajectory indexing and flash storage. TRIFL is generic in the sense that it is efficient for both simple flash storage devices such as SD cards and more powerful devices such as solid state drives. In addition, TRIFL is supplied with an online self-tuning algorithm that allows adapting the index structure to the workload and the technical specifications of the flash storage device to maximize the index performance. Moreover, TRIFL achieves good performance with relatively low memory requirements, which makes the index appropriate for many application scenarios. The experimental evaluation shows that TRIFL outperforms the representative indexing methods on magnetic disks and flash disks.
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TRIFL:闪存存储的通用轨迹索引
由于具有高性能、低功耗和抗冲击等重要特性,NAND闪存已成为嵌入式移动设备、个人计算机甚至企业服务器非常流行的稳定存储介质。但是,快闪存储器的特殊特性要求重新设计为磁性硬盘设计的现有数据存储和索引技术。在本文中,我们提出了一种高效通用的FLash轨迹索引TRIFL。TRIFL是围绕轨迹索引和闪存存储的关键要求设计的。从某种意义上说,TRIFL是通用的,它对简单的闪存设备(如SD卡)和更强大的设备(如固态驱动器)都是有效的。此外,TRIFL还提供了一个在线自调优算法,该算法允许根据工作负载和闪存存储设备的技术规格调整索引结构,以最大限度地提高索引性能。此外,TRIFL在相对较低的内存需求下实现了良好的性能,这使得该索引适用于许多应用场景。实验结果表明,该方法优于传统的磁盘和闪存索引方法。
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