JobViewer: Graph-based Visualization for Monitoring High-Performance Computing System

2022 IEEE/ACM International Conference on Big Data Computing, Applications and Technologies (BDCAT)(2022)

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摘要
Visualization aims to strengthen data exploration and analysis, especially for complex and high-dimensional data. High-performance computing (HPC) systems are typically large and complicated instruments that generate massive performance and operation time series. Monitoring HPC systems’ performance is a daunting task for HPC admins and researchers due to their dynamic natures. This work proposes a visual design using the bipartite graph’s idea to visualize HPC clusters’ structure, metrics, and job scheduling data. We built a web-based prototype, called JobViewer, that integrates advanced methods in visualization and human-computer interaction (HCI) to demonstrate the benefits of visualization in real-time monitoring HPC centers. We also showed real use cases and a user study to validate the efficiency and highlight the current approach’s drawbacks.
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关键词
High-Performance Computing Cente,Job Schedulin,Radar Chart,Time-Series Data Analysi,Multidimensional Data Visualizatio
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