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Curriculum Development for FAIR Data Stewardship
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作者 Francisca Oladipo Sakinat Folorunso +2 位作者 Ezekiel Ogundepo Obinna Osigwe Akinyinka Tosin Akindele 《Data Intelligence》 EI 2022年第4期991-1012,1033,共23页
The FAIR Guidelines attempts to make digital data Findable, Accessible, Interoperable, and Reusable(FAIR). To prepare FAIR data, a new data science discipline known as data stewardship is emerging and, as the FAIR Gui... The FAIR Guidelines attempts to make digital data Findable, Accessible, Interoperable, and Reusable(FAIR). To prepare FAIR data, a new data science discipline known as data stewardship is emerging and, as the FAIR Guidelines gain more acceptance, an increase in the demand for data stewards is expected. Consequently, there is a need to develop curricula to foster professional skills in data stewardship through effective knowledge communication. There have been a number of initiatives aimed at bridging the gap in FAIR data management training through both formal and informal programmes. This article describes the experience of developing a digital initiative for FAIR data management training under the Digital Innovations and Skills Hub(DISH) project. The FAIR Data Management course offers 6 short on-demand certificate modules over 12 weeks. The modules are divided into two sets: FAIR data and data science. The core subjects cover elementary topics in data science, regulatory frameworks, FAIR data management, intermediate to advanced topics in FAIR Data Point installation, and FAIR data in the management of healthcare and semantic data. Each week, participants are required to devote 7–8 hours of self-study to the modules, based on the resources provided. Once they have satisfied all requirements, students are certified as FAIR data scientists and qualified to serve as both FAIR data stewards and analysts. It is expected that in-depth and focused curricula development with diverse participants will build a core of FAIR data scientists for Data Competence Centres and encourage the rapid adoption of the FAIR Guidelines for research and development. 展开更多
关键词 data steward data science FAIR Guidelines FAIR Digital technology FDP installation FAIR data Trains Semantic web Personal Health Train
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全面数据质量管理框架在电网行业中的应用 被引量:1
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作者 赵宏伟 冯涛 于海涛 《信息技术与标准化》 2018年第7期62-65,共4页
围绕数据多头管理、数据质量评价标准不一致等电网行业数据质量管理面临的挑战,对国际数据质量管理模式进行研究;以天津市电力公司数据质量管理为例,分析全面数据质量管理框架在国内电网公司的落地情况,总结应用过程中的经验教训。
关键词 大数据 数据资产 数据治理 数据质量 数据认责
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