Not Ready for Convergence in Data Infrastructures

Author:

Jeffery Keith1,Wittenburg Peter2,Lannom Larry3,Strawn George4,Biniossek Claudia5,Betz Dirk5,Blanchi Christophe6

Affiliation:

1. Keith G Jeffery Consultants, 71 Gilligans Way, Faringdon SN7 7FX, UK

2. Max Planck Computing and Data Facility, Gießenbachstraße 2, 85748 Garching, Germany

3. Corporation for National Research Initiatives (CNRI), Reston, Virginia 20191, USA

4. US National Academy of Sciences, Washington DC 20418, USA

5. GESIS – Leibniz Institute for the Social Sciences, Unter Sachsenhausen 6–8, 50667, Cologne, Germany

6. Corporation for National Research Initiatives, Reston, Virginia 20191, USA

Abstract

Much research is dependent on Information and Communication Technologies (ICT). Researchers in different research domains have set up their own ICT systems (data labs) to support their research, from data collection (observation, experiment, simulation) through analysis (analytics, visualisation) to publication. However, too frequently the Digital Objects (DOs) upon which the research results are based are not curated and thus neither available for reproduction of the research nor utilization for other (e.g., multidisciplinary) research purposes. The key to curation is rich metadata recording not only a description of the DO and the conditions of its use but also the provenance – the trail of actions performed on the DO along the research workflow. There are increasing real-world requirements for multidisciplinary research. With DOs in domain-specific ICT systems (silos), commonly with inadequate metadata, such research is hindered. Despite wide agreement on principles for achieving FAIR (findable, accessible, interoperable, and reusable) utilization of research data, current practices fall short. FAIR DOs offer a way forward. The paradoxes, barriers and possible solutions are examined. The key is persuading the researcher to adopt best practices which implies decreasing the cost (easy to use autonomic tools) and increasing the benefit (incentives such as acknowledgement and citation) while maintaining researcher independence and flexibility.

Publisher

MIT Press - Journals

Subject

General Earth and Planetary Sciences,General Environmental Science

Reference29 articles.

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2. [2] Wilkinson, M., et al. The FAIR guiding principles for scientific data management and stewardship. Scientific Data 3, Article No. 160018 (2016)

3. A framework for distributed digital object services

4. [4] RDA DFT: DFT core terms and model. Available at: http://hdl.handle.net/11304/5d760a3e-991d-11e5-9bb4-2b0aad496318. Accessed 6 January 2021

5. [5] Paris GEDE Workshop on Moving Forward on Data Infrastructure Technology Convergence. Available at: https://github.com/GEDE-RDA-Europe/GEDE/tree/master/FAIR%20Digital%20Objects/Paris-FDO-workshop. Accessed 6 January 2021

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