Automatic generation of behavioral hard disk drive access time models

A. Crume, C. Maltzahn, L. Ward, Thomas M. Kroeger, M. Curry
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引用次数: 3

Abstract

Predicting access times is a crucial part of predicting hard disk drive performance. Existing approaches use white-box modeling and require intimate knowledge of the internal layout of the drive, which can take months to extract. Automatically learning this behavior is a much more desirable approach, requiring less expert knowledge, fewer assumptions, and less time. While previous research has created black-box models of hard disk drive performance, none have shown low per-request errors. A barrier to machine learning of access times has been the existence of periodic behavior with high, unknown frequencies. We identify these high frequencies with Fourier analysis and include them explicitly as input to the model. In this paper we focus on the simulation of access times for random read workloads within a single zone. We are able to automatically generate and tune request-level access time models with mean absolute error less than 0.15 ms. To our knowledge this is the first time such a fidelity has been achieved with modern disk drives using machine learning. We are confident that our approach forms the core for automatic generation of access time models that include other workloads and span across entire disk drives, but more work remains.
自动生成行为硬盘驱动器访问时间模型
预测访问时间是预测硬盘驱动器性能的关键部分。现有的方法使用白盒建模,并且需要对驱动器的内部布局有深入的了解,这可能需要几个月的时间来提取。自动学习这种行为是一种更可取的方法,它需要更少的专家知识、更少的假设和更少的时间。虽然以前的研究已经创建了硬盘驱动器性能的黑盒模型,但没有一个显示出低的每次请求错误。机器学习访问时间的一个障碍是存在高频率、未知频率的周期性行为。我们用傅里叶分析识别这些高频,并将它们明确地作为模型的输入。在本文中,我们重点研究了单个区域内随机读工作负载的访问时间模拟。我们能够自动生成和调优请求级访问时间模型,平均绝对误差小于0.15 ms。据我们所知,这是第一次使用机器学习在现代磁盘驱动器上实现这样的保真度。我们相信,我们的方法构成了自动生成访问时间模型的核心,包括其他工作负载和跨整个磁盘驱动器的访问时间模型,但还有更多的工作要做。
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