Live Data Migration for Reducing SLA Violations in Multi-tiered Storage Systems

Jianzhe Tai, B. Sheng, Yi Yao, N. Mi
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引用次数: 19

Abstract

Today, the volume of data in the world has been tremendously increased. Large-scaled and diverse data sets are raising new big challenges of storage, process, and query. Tiered storage architectures combining solid-state drives (SSDs) with hard disk drives (HDDs), become attractive in enterprise data centers for achieving high performance and large capacity simultaneously. However, how to best use these storage resources and efficiently manage massive data for providing high quality of service (QoS) is still a core and difficult problem. In this paper, we present a new approach for automated data movement in multi-tiered storage systems, which lively migrates the data across different tiers, aiming to support multiple service level agreements (SLAs) for applications with dynamic workloads at the minimal cost. Trace-driven simulations show that compared to the no migration policy, LMsT significantly improves average I/O response times, I/O violation ratios and I/O violation times, with only slight degradation (e.g., up to 6% increase in SLA violation ratio) on the performance of high priority applications.
数据热迁移,减少多层存储系统SLA违规
今天,世界上的数据量已经大大增加。大规模和多样化的数据集对存储、处理和查询提出了新的巨大挑战。将ssd (solid-state drives)与hdd (hard - disk drives)相结合的分级存储体系结构在企业数据中心中越来越具有吸引力,可以同时实现高性能和大容量。然而,如何充分利用这些存储资源,高效地管理海量数据,提供高质量的服务,仍然是一个核心和难点问题。在本文中,我们提出了一种在多层存储系统中实现数据自动迁移的新方法,该方法在不同层之间动态迁移数据,旨在以最小的成本支持具有动态工作负载的应用程序的多个服务水平协议(sla)。跟踪驱动的模拟表明,与无迁移策略相比,LMsT显著提高了平均I/O响应时间、I/O违例率和I/O违例次数,而高优先级应用的性能仅略有下降(例如,SLA违例率增加了6%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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