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TOWARDS EXASCALE DISTRIBUTED DATA MANAGEMENT

机译:迈向大规模分布式数据管理

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摘要

"Exascale eScience infrastructures" will face important and critical challenges, both from computational and data perspectives. Increasingly complex and parallel scientific codes will lead to the production of a huge amount of data. The large volume of data and the time needed to locate, access, analyze and visualize data will greatly impact on the scientific productivity of scientists and researchers in several domains. Significant improvements in the data management field will increase research productivity in solving complex scientific problems. Next-generation eSci-ence infrastructures will start from the assumption that exascale high-performance computing (HPC) applications (running on million of cores) will generate data at a very high rate (terabytes/s). Hundreds of exabytes of data (distributed across several centers) are expected, by 2020, to be available through heterogeneous storage resources for access, analysis, post-processing and other scientific activities.
机译:从计算和数据的角度来看,“亿亿级电子科学基础架构”都将面临重要的挑战。越来越复杂和并行的科学法规将导致产生大量数据。大量数据以及查找,访问,分析和可视化数据所需的时间将极大地影响多个领域的科学家和研究人员的科学生产力。数据管理领域的重大改进将提高解决复杂科学问题的研究效率。下一代电子科学基础架构将从这样的假设开始:百亿亿次高性能计算(HPC)应用程序(运行在数百万个内核上)将以非常高的速率(TB / s)生成数据。预计到2020年,可通过异构存储资源获得数百EB的数据(分布在多个中心),以进行访问,分析,后处理和其他科学活动。

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