SSD-HDD混合存储服务器缓冲控制hdd写入的探索与利用

Shucheng Wang, Ziyi Lu, Q. Cao, Hong Jiang, Jie Yao, Yuanyuan Dong, Puyuan Yang, Changsheng Xie
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引用次数: 4

摘要

混合存储服务器结合了固态驱动器(ssd)和硬盘驱动器(hdd),为应用程序提供了成本效益和μs级的响应能力。然而,从云存储系统Pangu的观察显示,hdd经常未被充分利用,而ssd则被过度使用,特别是在密集写入的情况下。这会导致ssd的快速损耗和高尾延迟。另一方面,我们的实验研究表明,对HDD的一系列顺序和连续写入表现出周期性的阶梯形写入延迟模式,即低(例如,35 μs),中(例如,55 μs)和高延迟(例如,12 ms),这是由HDD控制器内的缓冲写入造成的。这启发我们探索和利用hdd潜在的μs级IO延迟来吸收过多的SSD写而不降低性能。我们首先建立了一个用于描述楼梯行为的HDD写入模型,并设计了一个分析过程来初始化和动态重新校准模型参数。然后,我们提出一种缓冲控制写方法(BCW)来主动控制缓冲写,以便用应用程序数据调度低延迟期和中延迟期,并用填充的数据填充高延迟期。利用BCW,我们设计了一个混合IO调度器(MIOS),以自适应地将传入数据引导到ssd和hdd。多hdd调度被进一步设计为最小化hdd写入延迟。我们在生产工作负载和基准下执行广泛的评估。结果表明,MIOS删除了多达93%的写入ssd的数据量,将混合服务器的平均和99百分位延迟分别减少了65%和85%。
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Exploration and Exploitation for Buffer-Controlled HDD-Writes for SSD-HDD Hybrid Storage Server
Hybrid storage servers combining solid-state drives (SSDs) and hard-drive disks (HDDs) provide cost-effectiveness and μs-level responsiveness for applications. However, observations from cloud storage system Pangu manifest that HDDs are often underutilized while SSDs are overused, especially under intensive writes. It leads to fast wear-out and high tail latency to SSDs. On the other hand, our experimental study reveals that a series of sequential and continuous writes to HDDs exhibit a periodic, staircase-shaped pattern of write latency, i.e., low (e.g., 35 μs), middle (e.g., 55 μs), and high latency (e.g., 12 ms), resulting from buffered writes within HDD’s controller. It inspires us to explore and exploit the potential μs-level IO delay of HDDs to absorb excessive SSD writes without performance degradation. We first build an HDD writing model for describing the staircase behavior and design a profiling process to initialize and dynamically recalibrate the model parameters. Then, we propose a Buffer-Controlled Write approach (BCW) to proactively control buffered writes so that low- and mid-latency periods are scheduled with application data and high-latency periods are filled with padded data. Leveraging BCW, we design a mixed IO scheduler (MIOS) to adaptively steer incoming data to SSDs and HDDs. A multi-HDD scheduling is further designed to minimize HDD-write latency. We perform extensive evaluations under production workloads and benchmarks. The results show that MIOS removes up to 93% amount of data written to SSDs, reduces average and 99th-percentile latencies of the hybrid server by 65% and 85%, respectively.
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