Welcome from DSAA 2014 chairs

Philip S. Yu, M. Kitsuregawa, H. Motoda, Bart Goethals, M. Guo, Longbing Cao, G. Karypis, Irwin King, Wei Wang
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Abstract

Data driven scientific discovery approach has already been agreed to be an important emerging paradigm for computing in areas including social, service, Internet of Things (or sensor networks), and cloud. Under this paradigm, Big Data is the core that drives new researches in many areas, from environmental to social. There are many new scientific challenges when facing this big data phenomenon, ranging from capture, creation, storage, search, sharing, analysis, and visualization. The complication here is not just the storage, I/O, query, and performance, but also the integration across heterogeneous, interdependent complex data resources for real-time decision-making, collaboration, and ultimately value co-creation. Data sciences encompass the larger areas of data analytics, machine learning and managing big data. Advanced data analytics has become essential to glean a deep understanding of large data sets and to convert data into actionable intelligence. With the rapid growth in the volumes of data available to enterprises, Government and on the web, automated techniques for analyzing the data have become essential.
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数据驱动的科学发现方法已经被认为是社交、服务、物联网(或传感器网络)和云计算等领域计算的重要新兴范式。在这种范式下,从环境到社会,大数据是推动许多领域新研究的核心。面对这种大数据现象,有许多新的科学挑战,包括捕获、创建、存储、搜索、共享、分析和可视化。这里的复杂性不仅在于存储、I/O、查询和性能,还在于跨异构、相互依赖的复杂数据资源的集成,以实现实时决策、协作和最终的价值共同创造。数据科学包括数据分析、机器学习和大数据管理等更大的领域。高级数据分析对于收集对大型数据集的深刻理解并将数据转换为可操作的情报至关重要。随着企业、政府和网络上可用数据量的快速增长,分析数据的自动化技术已经变得必不可少。
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