journal article Open Access Jan 01, 2024

Improving reproducibility through condition-based sensitivity assessments: application, advancement and prospect

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Abstract
The fluctuating reproducibility of scientific reports presents a well-recognised issue, frequently stemming from insufficient standardisation, transparency and a lack of information in scientific publications.
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Details
Published
Jan 01, 2024
Vol/Issue
15(36)
Pages
14548-14555
License
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Funding
Deutsche Forschungsgemeinschaft Award: SPP 2363-Molecular Machine Learning
H2020 European Research Council Award: 101098156
Cite This Article
Felix Schäfer, Lukas Lückemeier, Frank Glorius (2024). Improving reproducibility through condition-based sensitivity assessments: application, advancement and prospect. Chemical Science, 15(36), 14548-14555. https://doi.org/10.1039/d4sc03017f
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