基于多层存储的云环境下的自适应数据迁移

Gong Zhang, Lawrence Chiu, Ling Liu
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引用次数: 65

摘要

由于SSD技术在IO方面的显著改进,如今的多层存储系统在传统的旋转硬盘之上集成了固态硬盘(SSD),以提高性能。SSD和HDD之间的数据自动迁移是实现SSD与多层存储系统有效集成的关键。此外,有效的数据迁移必须考虑特定于应用程序的工作负载特征、截止日期和IO配置文件。如何在保证迁移期限的同时充分释放数据迁移的力量,是实现支持ssd的多层存储系统性能最大化的关键,这是在多层存储系统中实现自动数据迁移的一个重要而有趣的挑战。在本文中,我们提出了一个自适应的前瞻性数据迁移模型,该模型可以结合应用程序特定的特征和I/O配置文件以及工作负载截止日期。我们的自适应数据迁移模型有三个独特的特性。首先,在我们的正式模型开发中,它包含了一组可能影响前瞻性迁移效率性能的关键因素。其次,我们的数据迁移模型可以根据多个参数自适应确定最优的预判窗口大小,以优化预判迁移的有效性。第三,我们正式和实验表明,自适应数据迁移模型可以在满足工作负载期限的同时提高整体系统性能和资源利用率。通过跟踪驱动的实验研究,将自适应前瞻迁移方法与基本迁移模型进行了比较,结果表明自适应迁移模型对于多层存储系统的性能和可扩展性的持续改进和调优是有效的。
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Adaptive Data Migration in Multi-tiered Storage Based Cloud Environment
Multi-tiered storage systems today are integrating Solid State Disks (SSD) on top of traditional rotational hard disks for performance enhancement due to the significant IO improvements in SSD technology. It is widely recognized that automated data migration between SSD and HDD plays a critical role in effective integration of SSD into multi-tiered storage systems. Furthermore, effective data migration has to take into account of application specific workload characteristics, deadlines, and IO profiles. An important and interesting challenge for automated data migration in multi-tiered storage systems is how to fully release the power of data migration while guaranteeing the migration deadline is critical to maximizing the performance of SSD-enabled multi-tiered storage system. In this paper, we present an adaptive look ahead data migration model that can incorporate application specific characteristics and I/O profiles as well as workload deadlines. Our adaptive data migration model has three unique features. First, it incorporates a set of key factors that may impact on the performance of look ahead migration efficiency in our formal model develop. Second, our data migration model can adaptively determine the optimal look ahead window size, based on several parameters, to optimize the effectiveness of look ahead migration. Third, we formally and experimentally show that the adaptive data migration model can improve overall system performance and resource utilization while meeting workload deadlines. Through our trace driven experimental study, we compare the adaptive look ahead migration approach with the basic migration model and show that the adaptive migration model is effective and efficient for continuously improving and tuning of the performance and scalability of multi-tier storage systems.
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