Kai Kugler, K. Chard, Simon Caton, O. Rana, D. Katz
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引用次数: 8
摘要
研究数据规模的增加和向公民科学的转变(日常用户提供数据和分析)导致了研究数据的泛滥。研究人员现在必须仔细决定如何在协作环境中存储、传输和分析“大数据”。当考虑到数据存储和访问的预算和位置限制时,这项任务甚至更加复杂。在本文中,我们研究了基于研究者之间存在的社交网络构建社交内容分发网络(S-CDN)的可能性。S-CDN模型建立在特定科学社区内协作研究人员的激励基础上,以协作和可靠的环境解决他们的数据挑战。在本文中,我们提出了一个S-CDN的原型实现,并研究了数据传输机制的性能(使用Glob us Online)和这种方法的潜在成本优势。
Constructing a Social Content Delivery Network for eScience
Increases in the size of research data and the move towards citizen science, in which everyday users contribute data and analyses, have resulted in a research data deluge. Researchers must now carefully determine how to store, transfer and analyze "Big Data" in collaborative environments. This task is even more complicated when considering budget and locality constraints on data storage and access. In this paper we investigate the potential to construct a Social Content Delivery Network (S-CDN) based upon the social networks that exist between researchers. The S-CDN model builds upon the incentives of collaborative researchers within a given scientific community to address their data challenges collaboratively and in proven trusted settings. In this paper we present a prototype implementation of a S-CDN and investigate the performance of the data transfer mechanisms (using Glob us Online) and the potential cost advantages of this approach.