Computational Reproducibility: A Practical Framework for Data Curators

Sawchuk, Sandra L. and Khair, Shahira (2021) Computational Reproducibility: A Practical Framework for Data Curators. Journal of eScience Librarianship, 10 (3). ISSN 21613974

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Abstract

Introduction: This paper presents concrete and actionable steps to guide researchers, data curators, and data managers in improving their understanding and practice of computational reproducibility.

Objectives: Focusing on incremental progress rather than prescriptive rules, researchers and curators can build their knowledge and skills as the need arises. This paper presents a framework of incremental curation for reproducibility to support open science objectives.

Methods: A computational reproducibility framework developed for the Canadian Data Curation Forum serves as the model for this approach. This framework combines learning about reproducibility with recommended steps to improving reproducibility.

Conclusion: Computational reproducibility leads to more transparent and accurate research. The authors warn that fear of a crisis and focus on perfection should not prevent curation that may be ‘good enough.’

Item Type: Article
Subjects: Open Digi Academic > Multidisciplinary
Depositing User: Unnamed user with email support@opendigiacademic.com
Date Deposited: 31 Jan 2023 10:51
Last Modified: 22 Aug 2024 12:56
URI: http://publications.journalstm.com/id/eprint/182

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