利用联合学习进行超级计算机节点异常检测

IF 6.2 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
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引用次数: 0

摘要

高性能计算(HPC)系统是现代社会的重要组成部分,凭借其无与伦比的计算能力,在从经济到科学研究等各个领域都产生了重大影响。因此,全球高性能计算系统的安装量呈急剧上升趋势,而且没有任何放缓的迹象。然而,这些机器非常复杂,由数百万个异构组件组成,难以有效管理,而且成本非常高昂(包括经济投资和能源消耗)。因此,最大限度地提高它们的生产率至关重要。例如,由于难以及时发现异常和故障,可能会导致大量停机时间,因为阻碍计算节点正常运行的潜在问题来源很多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing federated learning for anomaly detection in supercomputer nodes

High-performance computing (HPC) systems are a crucial component of modern society, with a significant impact in areas ranging from economics to scientific research, thanks to their unrivaled computational capabilities. For this reason, the worldwide HPC installation is steeply trending upwards, with no sign of slowing down. However, these machines are both complex, comprising millions of heterogeneous components, hard to effectively manage, and very costly (both in terms of economic investment and of energy consumption). Therefore, maximizing their productivity is of paramount importance. For instance, anomalies and faults can generate significant downtime due to the difficulty of promptly detecting them, as there are potentially many sources of issues preventing the correct functioning of computing nodes.

In recent years, several data-driven methods have been proposed to automatically detect anomalies in HPC systems, exploiting the fact that modern supercomputers are typically endowed with fine-grained monitoring infrastructures, collecting data that can be used to characterize the system behavior. Thus, it is possible to teach Machine Learning (ML) models to distinguish normal and anomalous states automatically. In this paper, we contribute to this line of research with a novel intuition, namely exploiting Federated Learning (FL) to improve the accuracy of anomaly detection models for HPC nodes. Although FL is not typically exploited in the HPC context, we show that FL can boost several types of underlying ML models, from supervised to unsupervised ones. We demonstrate our approach on a production Tier-0 supercomputer hosted in Italy. Applying FL to anomaly detection improves the average f-score from 0.46 to 0.87. Our research also shows FL can reduce the data collection time required to develop a representation data set, facilitating faster deployment of anomaly detection models. ML models need 5 months of training data for efficient anomaly detection performance while using FL reduces the training set by 15 times to 1.25 weeks.

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来源期刊
CiteScore
19.90
自引率
2.70%
发文量
376
审稿时长
10.6 months
期刊介绍: Computing infrastructures and systems are constantly evolving, resulting in increasingly complex and collaborative scientific applications. To cope with these advancements, there is a growing need for collaborative tools that can effectively map, control, and execute these applications. Furthermore, with the explosion of Big Data, there is a requirement for innovative methods and infrastructures to collect, analyze, and derive meaningful insights from the vast amount of data generated. This necessitates the integration of computational and storage capabilities, databases, sensors, and human collaboration. Future Generation Computer Systems aims to pioneer advancements in distributed systems, collaborative environments, high-performance computing, and Big Data analytics. It strives to stay at the forefront of developments in grids, clouds, and the Internet of Things (IoT) to effectively address the challenges posed by these wide-area, fully distributed sensing and computing systems.
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