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The ups and downs of knowledge infrastructures in science: Implications for data management

机译:科学知识基础架构的兴衰:对数据管理的启示

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The promise of technology-enabled, data-intensive scholarship is predicated upon access to knowledge infrastructures that are not yet in place. Scientific data management requires expertise in the scientific domain and in organizing and retrieving complex research objects. The Knowledge Infrastructures project compares data management activities of four large, distributed, multidisciplinary scientific endeavors as they ramp their activities up or down; two are big science and two are small science. Research questions address digital library solutions, knowledge infrastructure concerns, issues specific to individual domains, and common problems across domains. Findings are based on interviews (n=113 to date), ethnography, and other analyses of these four cases, studied since 2002. Based on initial comparisons, we conclude that the roles of digital libraries in scientific data management often depend upon the scale of data, the scientific goals, and the temporal scale of the research projects being supported. Digital libraries serve immediate data management purposes in some projects and long-term stewardship in others. In small science projects, data management tools are selected, designed, and used by the same individuals. In the multi-decade time scale of some big science research, data management technologies, policies, and practices are designed for anticipated future uses and users. The need for library, archival, and digital library expertise is apparent throughout all four of these cases. Managing research data is a knowledge infrastructure problem beyond the scope of individual researchers or projects. The real challenges lie in designing digital libraries to assist in the capture, management, interpretation, use, reuse, and stewardship of research data.
机译:基于技术的数据密集型奖学金的前景取决于对尚未到位的知识基础架构的访问。科学数据管理需要科学领域以及组织和检索复杂研究对象的专业知识。知识基础设施项目比较了四个大型,分布式,多学科科学活动在数据管理活动上的增加或减少;二是大科学,二是小科学。研究问题涉及数字图书馆解决方案,知识基础结构问题,特定于特定领域的问题以及跨领域的常见问题。调查结果基于2002年以来对这四个案例的访谈(迄今为止共113例),人种志和其他分析得出。基于初步比较,我们得出结论,数字图书馆在科学数据管理中的作用通常取决于规模数据,科学目标和所支持研究项目的时间规模。数字图书馆在某些项目中具有直接的数据管理目的,而在另一些项目中则具有长期管理作用。在小型科学项目中,数据管理工具是由同一个人选择,设计和使用的。在一些大型科学研究的数十年时间范围内,数据管理技术,策略和实践是为预期的未来用途和用户而设计的。在这四个案例中,显然都需要图书馆,档案馆和数字图书馆专业知识。管理研究数据是一个知识基础架构问题,超出了单个研究人员或项目的范围。真正的挑战在于设计数字图书馆以协助研究数据的捕获,管理,解释,使用,重用和管理。

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