Virtual astronomy, information technology, and the new scientific methodology

S. Djorgovski
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引用次数: 27

Abstract

All sciences, including astronomy, are now entering the era of information abundance. The exponentially increasing volume and complexity of modern data sets promises to transform the scientific practice, but also poses a number of common technological challenges. The virtual observatory concept is the astronomical community's response to these challenges: it aims to harness the progress in information technology in the service of astronomy, and at the same time provide a valuable testbed for information technology and applied computer science. Challenges broadly fall into two categories: data handling (or "data farming"), including issues such as archives, intelligent storage, databases, interoperability, fast networks, etc., and data mining, data understanding, and knowledge discovery, which include issues such as automated clustering and classification, multivariate correlation searches, pattern recognition, visualization in highly hyperdimensional parameter spaces, etc., as well as various applications of machine learning in these contexts. Such techniques are forming a methodological foundation for science with massive and complex data sets in general, and are likely to have a much broader impact on the modern society, commerce, information economy, security, etc. There is a powerful emerging synergy between the computationally enabled science and the science-driven computing, which will drive the progress in science, scholarship, and many other venues in the 21st century.
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虚拟天文学、信息技术和新的科学方法论
包括天文学在内的所有科学现在都进入了信息丰富的时代。现代数据集的数量和复杂性呈指数级增长,有望改变科学实践,但也带来了一些常见的技术挑战。虚拟天文台的概念是天文学界对这些挑战的回应:它旨在利用信息技术的进步为天文学服务,同时为信息技术和应用计算机科学提供一个有价值的测试平台。挑战大致分为两类:数据处理(或“数据农场”),包括档案、智能存储、数据库、互操作性、快速网络等问题;数据挖掘、数据理解和知识发现,包括自动聚类和分类、多元相关搜索、模式识别、高维参数空间的可视化等问题,以及机器学习在这些环境中的各种应用。一般来说,这些技术正在形成具有大量复杂数据集的科学的方法论基础,并可能对现代社会、商业、信息经济、安全等产生更广泛的影响。计算驱动的科学和科学驱动的计算之间正在形成一种强大的协同作用,这将推动21世纪科学、学术和许多其他领域的进步。
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