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@ARTICLE{Wittenburg:906811,
author = {Wittenburg, Peter and Hardisty, Alex and Franc, Yann Le and
Mozaffari, Amirpasha and Peer, Limor and Skvortsov, Nikolay
A. and Zhao, Zhiming and Spinuso, Alessandro},
title = {{C}anonical {W}orkflows to {M}ake {D}ata {FAIR}},
journal = {Data Intelligence},
volume = {4},
number = {2},
issn = {2096-7004},
address = {Cambridge, MA},
publisher = {MIT Press},
reportid = {FZJ-2022-01708},
pages = {286–305},
year = {2022},
abstract = {The FAIR principles have been accepted globally as
guidelines for improving data-driven science and data
management practices, yet the incentives for researchers to
change their practices are presently weak. In addition,
data-driven science has been slow to embrace workflow
technology despite clear evidence of recurring practices. To
overcome these challenges, the Canonical Workflow Frameworks
for Research (CWFR) initiative suggests a large-scale
introduction of self-documenting workflow scripts to
automate recurring processes or fragments thereof. This
standardised approach, with FAIR Digital Objects as anchors,
will be a significant milestone in the transition to FAIR
data without adding additional load onto the researchers who
stand to benefit most from it. This paper describes the CWFR
approach and the activities of the CWFR initiative over the
course of the last year or so, highlights several projects
that hold promise for the CWFR approaches, including Galaxy,
Jupyter Notebook, and RO Crate, and concludes with an
assessment of the state of the field and the challenges
ahead.},
cin = {JSC},
ddc = {020},
cid = {I:(DE-Juel1)JSC-20090406},
pnm = {5111 - Domain-Specific Simulation $\&$ Data Life Cycle Labs
(SDLs) and Research Groups (POF4-511) / IntelliAQ -
Artificial Intelligence for Air Quality (787576) /
Verbundprojekt DeepRain: Effiziente Lokale
Niederschlagsvorhersage durch Maschinelles Lernen
(01IS18047A) / Earth System Data Exploration (ESDE) / Earth
System Data Exploration (ESDE)},
pid = {G:(DE-HGF)POF4-5111 / G:(EU-Grant)787576 /
G:(BMBF)01IS18047A / G:(DE-Juel-1)ESDE / G:(DE-Juel-1)ESDE},
typ = {PUB:(DE-HGF)16},
UT = {WOS:000850893200011},
doi = {10.1162/dint_a_00132},
url = {https://juser.fz-juelich.de/record/906811},
}