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Work-in-Progress: A Deep Learning Strategy for I/O Scheduling in Storage Systems

机译:进行中的工作:存储系统中I / O调度的深度学习策略

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Under the big data era, there is a crucial need to improve the performance of storage systems for data-intensive applications. Data-intensive applications tend to behave in a predictable manner, which can be exploited for improving the performance of the storage system. At the storage level, we propose a deep recurrent neural network that learns the patterns of I/O requests and predicts the upcoming ones, such that memory contents can be pre-loaded at the right time to prevent cache/memory misses. Preliminary experimental results, on two real-world I/O logs of storage systems (from financial and web search), are reported-they partially demonstrate the effectiveness of the proposed method.
机译:在大数据时代下,迫切需要为数据密集型应用程序提高存储系统的性能。数据密集型应用程序倾向于以可预测的方式运行,可以利用它来提高存储系统的性能。在存储级别,我们提出了一个深度递归神经网络,该神经网络可以学习I / O请求的模式并预测即将到来的请求,以便可以在正确的时间预加载内存内容,以防止发生高速缓存/内存丢失。在存储系统的两个实际I / O日志(来自财务和Web搜索)上的初步实验结果得到了报告,它们部分证明了该方法的有效性。

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