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首页> 外文期刊>International Journal of Intelligent Systems >Machine learning assisted OSP approach for improved QoS performance on 3D charge-trap based SSDs
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Machine learning assisted OSP approach for improved QoS performance on 3D charge-trap based SSDs

机译:机器学习辅助OSP方法,提高了基于3D充电陷阱的QoS性能

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Three-dimensional (3D) charge-trap based solid-state-drivers (SSDs) have become an emerging storage solution in recent years. One-shot-programming in 3D charge-trap based SSDs could deliver a maximized system input/output (I/O) throughput at the cost of degraded Quality-of-Service (QoS) performance. This paper proposes reinforcement-learning based one-shot-programming (RLOSP), a reinforcement learning based approach to improve the QoS performance for 3D charge-trap based SSDs. By learning the I/O patterns of the workload environments as well as the device internal status, the proposed approach could properly choose requests in the device queue, and allocate physical addresses for these requests during one-shot-programming. In this manner, the storage device could deliver an improved QoS performance. Experimental results reveal that the proposed approach could reduce the worst-case latency at the 99.9th percentile by 37.5%-59.2%, with an optimal system I/O throughput.
机译:基于三维(3D)电荷陷阱的固态驱动器(SSD)近年来已成为新兴的存储解决方案。 3D充电陷阱的SSD中的一次性编程可以以降级的服务质量(QoS)性能提供最大化的系统输入/输出(I / O)吞吐量。 本文提出了基于加强学习的单次编程(RLOSP),基于加强学习的方法,提高了基于3D充电陷阱的SSD QoS性能。 通过学习工作负载环境的I / O模式以及设备内部状态,所提出的方法可以在设备队列中正确选择请求,并在一次拍摄编程期间为这些请求分配物理地址。 以这种方式,存储设备可以提供改进的QoS性能。 实验结果表明,该方法可以在99.9百分位数下减少37.5%-59.2%的最坏情况延迟,具有最佳的系统I / O吞吐量。

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