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Provide Proactive Reproducible Analysis Transparency with Every Publication

Authors :
Meijer, Paul
Howard, Nicole
Liang, Jessica
Kelsey, Autumn
Subramanian, Sathya
Johnson, Ed
Mariz, Paul
Harvey, James
Ambrose, Madeline
Tereshchenko, Vitalii
Beaubien, Aldan
Inala, Neelima
Aggoune, Yousef
Pister, Stark
Vetto, Anne
Kinsey, Melissa
Bumol, Tom
Goldrath, Ananda
Li, Xiaojun
Torgerson, Troy
Skene, Peter
Okada, Lauren
La France, Christian
Thomson, Zach
Graybuck, Lucas
Publication Year :
2024

Abstract

The high incidence of irreproducible research has led to urgent appeals for transparency and equitable practices in open science. For the scientific disciplines that rely on computationally intensive analyses of large data sets, a granular understanding of the analysis methodology is an essential component of reproducibility. This paper discusses the guiding principles of a computational reproducibility framework that enables a scientist to proactively generate a complete reproducible trace as analysis unfolds, and share data, methods and executable tools as part of a scientific publication, allowing other researchers to verify results and easily re-execute the steps of the scientific investigation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.09103
Document Type :
Working Paper