mmdf:在eSoC协作环境中管理大规模异构数据的综合框架

Jiazao Lin, Zhili Zhao, Lei Liu, Huarong Sun, Shoubo Li, Caihong Li, Li Liu, Lian Li
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引用次数: 0

摘要

计算化学作为一种数据密集型应用,涉及从非常大的测量或计算数据集合中提取地理上分散的复杂数据信息。来自不同领域的化学家必须共同努力来探索、查询、分析、可视化和处理大规模异构数据集。因此,为了应对这些挑战,我们提出并设计了一个全面的框架海量数据管理框架(MDMF),其中包括三个关键模块。它集成了CGSP和GOS的数据管理,甚至实现了在分布式环境下处理大规模数据的互操作。并提供了一个易于使用的图形化化学数据可视化管理工具,不仅提供了常用的数据库功能,还提供了多种化学元素的显示和编辑功能。此外,它甚至提供了一个用户友好的数据管理客户端工具,它是一个统一的数据查看器,可以访问和管理网格环境中的底层数据管理。最后,我们在eSoC系统中进行了一些应用,结果表明该框架是一种有效的计算化学研究数据管理方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MDMF: A comprehensive framework for managing large-scale heterogeneous data in eSoC collaborative environment
Computational Chemistry as a data-intensive application involves the geographically dispersed extraction of complex data information from very large collections of measured or computed data. And many chemists from different domains have to work together to explore, query, analyze, visualize and process large-scale heterogeneous data sets. Therefore, in order to address these challenges, we present and design a comprehensive framework Massive Data Management Framework (MDMF), which comprises three critical modules. It integrates the data management of CGSP and GOS, and even implements the interoperation to handle large scale data in distributed environment. And it also provides an easy-to-use graphical Chemical Data Visual Management Tool, which affords not only common database functions but also the functions of displaying and editing many types of chemical elements. Furthermore, it even offers a user-friendly Data Management Client Tool which is a uniform data viewer to access and manage the underlying data management in grid environment. Finally, we demonstrate several applications in eSoC system and the results indicate that the framework is an effective data management way to research on computational chemistry.
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