2022
DOI: 10.48550/arxiv.2207.09298
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Magpie: Automatically Tuning Static Parameters for Distributed File Systems using Deep Reinforcement Learning

Abstract: Distributed file systems are widely used nowadays, yet using their default configurations is often not optimal. At the same time, tuning configuration parameters is typically challenging and time-consuming. It demands expertise and tuning operations can also be expensive. This is especially the case for static parameters, where changes take effect only after a restart of the system or workloads.We propose a novel approach, Magpie, which utilizes deep reinforcement learning to tune static parameters by strategi… Show more

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