首页> 外文会议>Conference on advanced information systems engineering >Enhancing Big Data Warehousing for Efficient, Integrated and Advanced Analytics Visionary Paper
【24h】

Enhancing Big Data Warehousing for Efficient, Integrated and Advanced Analytics Visionary Paper

机译:增强大数据仓库以实现高效,集成和高级分析

获取原文

摘要

The existing capacity to collect, store, process and analyze huge amounts of data that is rapidly generated, i.e., Big Data, is characterized by fast technological developments and by a limited set of conceptual advances that guide researchers and practitioners in the implementation of Big Data systems. New data stores or processing tools frequently appear, proposing new (and usually more efficient) ways to store and query data (like SQL-on-Hadoop). Although very relevant, the lack of common methodological guidelines or practices has motivated the implementation of Big Data systems based on use-case driven approaches. This is also the case for one of the most valuable organizational data assets, the Data Warehouse, which needs to be rethought in the way it is designed, modeled, implemented, managed and monitored. This paper addresses some of the research challenges in Big Data Warehousing systems, proposing a vision that looks into: (ⅰ) the integration of new business processes and data sources; (ⅱ) the proper way to achieve this integration; (ⅲ) the management of these complex data systems and the enhancement of their performance; (ⅳ) the automation of some of their analytical capabilities with Complex Event Processing and Machine Learning; and, (ⅴ) the flexible and highly customizable visualization of their data, providing an advanced decisionmaking support environment.
机译:现有的收集,存储,处理和分析快速生成的大量数据(即大数据)的能力的特征在于技术的快速发展和指导研究人员和从业人员实施大数据的有限的概念进展系统。新的数据存储或处理工具经常出现,提出了新的(通常是更有效的)存储和查询数据的方式(例如SQL-on-Hadoop)。尽管非常相关,但缺乏通用的方法论准则或实践促使基于用例驱动方法的大数据系统的实施。最有价值的组织数据资产之一数据仓库也是如此,它需要以设计,建模,实施,管理和监视的方式进行重新思考。本文针对大数据仓库系统中的一些研究挑战,提出了一种展望:(ⅰ)新业务流程和数据源的集成; (ⅱ)实现这种整合的正确方法; (ⅲ)这些复杂数据系统的管理及其性能的提高; (ⅳ)通过复杂事件处理和机器学习实现其某些分析功能的自动化; (ⅴ)数据的灵活且高度可定制的可视化,提供了高级的决策支持环境。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号