Transfer Learning based Failure Prediction for Minority Disks in Large Data Centers of Heterogeneous Disk Systems

Ji Zhang, Ke Zhou, Ping Huang, Xubin He, Zhili Xiao, Bin Cheng, Yongguang Ji, Yinhu Wang
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引用次数: 15

Abstract

The storage system in large scale data centers is typically built upon thousands or even millions of disks, where disk failures constantly happen. A disk failure could lead to serious data loss and thus system unavailability or even catastrophic consequences if the lost data cannot be recovered. While replication and erasure coding techniques have been widely deployed to guarantee storage availability and reliability, disk failure prediction is gaining popularity as it has the potential to prevent disk failures from occurring in the first place. Recent trends have turned toward applying machine learning approaches based on disk SMART attributes for disk failure predictions. However, traditional machine learning (ML) approaches require a large set of training data in order to deliver good predictive performance. In large-scale storage systems, new disks enter gradually to augment the storage capacity or to replace failed disks, leading storage systems to consist of small amounts of new disks from different vendors and/or different models from the same vendor as time goes on. We refer to this relatively small amount of disks as minority disks. Due to the lack of sufficient training data, traditional ML approaches fail to deliver satisfactory predictive performance in evolving storage systems which consist of heterogeneous minority disks. To address this challenge and improve the predictive performance for minority disks in large data centers, we propose a minority disk failure prediction model named TLDFP based on a transfer learning approach. Our evaluation results on two realistic datasets have demonstrated that TLDFP can deliver much more precise results, compared to four popular prediction models based on traditional ML algorithms and two state-of-the-art transfer learning methods.
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基于迁移学习的大型数据中心异构磁盘系统少数派磁盘故障预测
大型数据中心的存储系统通常建立在数千甚至数百万个磁盘上,磁盘故障经常发生。磁盘故障可能导致严重的数据丢失,从而导致系统不可用,如果丢失的数据无法恢复,甚至可能导致灾难性的后果。虽然复制和擦除编码技术已被广泛部署以保证存储可用性和可靠性,但磁盘故障预测也越来越受欢迎,因为它有可能从一开始就防止磁盘故障的发生。最近的趋势转向应用基于磁盘SMART属性的机器学习方法进行磁盘故障预测。然而,传统的机器学习(ML)方法需要大量的训练数据才能提供良好的预测性能。在大型存储系统中,由于扩容或更换故障硬盘的需要,新硬盘逐渐进入存储系统,导致随着时间的推移,存储系统中会出现少量不同厂商、不同型号的新硬盘。我们将这种数量相对较少的磁盘称为少数磁盘。由于缺乏足够的训练数据,传统的机器学习方法无法在由异构少数磁盘组成的不断发展的存储系统中提供令人满意的预测性能。为了解决这一挑战并提高大型数据中心中少数磁盘的预测性能,我们提出了一种基于迁移学习方法的少数磁盘故障预测模型TLDFP。我们在两个现实数据集上的评估结果表明,与基于传统ML算法的四种流行预测模型和两种最先进的迁移学习方法相比,TLDFP可以提供更精确的结果。
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