M. Grigorieva, E. Tretyakov, A. Klimentov, D. Golubkov, T. Korchuganova, A. Alekseev, A. Artamonov, T. Galkin
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引用次数: 2
摘要
大型强子对撞机实验产生的科学数据量已达到eb级。这些数据在数百个计算中心进行传输、处理和分析。数据在物理学家个人和大学群体中的流行已经成为有效的数据管理和处理的关键因素之一。实验在LHC Run 1和Run 2期间积极使用它进行中央数据处理,并允许优化数据放置策略,并在现有计算资源上更均匀地分配工作负载。除了中央数据处理,大型强子对撞机实验还为成千上万的用户提供物理分析的存储和计算资源。考虑到高亮度运行(2027 - 2036)对撞机升级后数据量和处理时间的显著增加,基于数据访问模式的智能数据放置比LHC开始时更加重要。在本研究中,我们使用ATLAS数据样本对数据流行度进行了详细的探索。此外,我们还分析了处理数据的计算站点的地理位置,以及进行物理分析的用户所在机构的地理位置。基于这些数据的制图可视化允许将现有数据放置与物理需求相关联,从而更好地了解不同类别用户任务的数据利用情况。
High Energy Physics Data Popularity : ATLAS Datasets Popularity Case Study
The amount of scientific data generated by the LHC experiments has hit the exabyte scale. These data are transferred, processed and analyzed in hundreds of computing centers. The popularity of data among individual physicists and University groups has become one of the key factors of efficient data management and processing. It was actively used during LHC Run 1 and Run 2 by the experiments for the central data processing, and allowed the optimization of data placement policies and to spread the workload more evenly over the existing computing resources. Besides the central data processing, the LHC experiments provide storage and computing resources for physics analysis to thousands of users. Taking into account the significant increase of data volume and processing time after the collider upgrade for the High Luminosity Runs (2027– 2036) an intelligent data placement based on data access pattern becomes even more crucial than at the beginning of LHC. In this study we provide a detailed exploration of data popularity using ATLAS data samples. In addition, we analyze the geolocations of computing sites where the data were processed, and the locality of the home institutes of users carrying out physics analysis. Cartography visualization, based on this data, allows the correlation of existing data placement with physics needs, providing a better understanding of data utilization by different categories of user’s tasks.