2022
DOI: 10.3389/fcomp.2022.1068361
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Challenges and best practices in corporate AI governance: Lessons from the biopharmaceutical industry

Abstract: While the use of artificial intelligence (AI) systems promises to bring significant economic and social benefits, it is also coupled with ethical, legal, and technical challenges. Business leaders thus face the question of how to best reap the benefits of automation whilst managing the associated risks. As a first step, many companies have committed themselves to various sets of ethics principles aimed at guiding the design and use of AI systems. So far so good. But how can well-intentioned ethical principles … Show more

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Cited by 13 publications
(10 citation statements)
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References 27 publications
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“…In the literature, there is ample evidence of what constitutes biosafety and biosafety governance best practice ( Perkins et al, 2019 ; Wang and Zhang, 2019 ; Li et al, 2021 ; Mökander et al, 2022 ; Sandbrink, 2023b ) and the emphasis is on a mix of specific training and, relatedly, developing a safety and responsibility work culture. In previous decades, the few advanced labs that existed were “compliant” biocontainment actors, for which acceptable systems were in place.…”
Section: Resultsmentioning
confidence: 99%
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“…In the literature, there is ample evidence of what constitutes biosafety and biosafety governance best practice ( Perkins et al, 2019 ; Wang and Zhang, 2019 ; Li et al, 2021 ; Mökander et al, 2022 ; Sandbrink, 2023b ) and the emphasis is on a mix of specific training and, relatedly, developing a safety and responsibility work culture. In previous decades, the few advanced labs that existed were “compliant” biocontainment actors, for which acceptable systems were in place.…”
Section: Resultsmentioning
confidence: 99%
“…Newer tools, such as machine learning-based topic models, enable spotting trends across a wide set of biosafety research publications ( Guan et al, 2022 ). AI-synbio governance ( Achim and Zhang, 2022 ; Mökander et al, 2022 ; Grinbaum and Adomaitis, 2023 ; Holland et al, 2024 ) is expected to be more of the above, but also requires AI skills and perspectives that go far beyond wet lab practices and will require updates to biosafety laws, regulation, governance, standardization ( Pei et al, 2022 ). It will change the role of the state ( Djeffal et al, 2022 ) as it will no longer be the primary norm setter or enforcer of responsibility.…”
Section: Resultsmentioning
confidence: 99%
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“…This is because implementing corporate AI governance in practice requires the active participation of a wide range of staff across an organisation, including people who lack technical training and skills(Mökander et al, 2022a). 9 According toWeber (1904), an ideal type is formed by the one-sided accentuation of one or more points of view, according to which concrete individual phenomena are arranged into a unified analytical construct.…”
mentioning
confidence: 99%
“…For example, checklists (e.g., AI HLEG, 2020; Algorithm Watch, 2021b ), impact assessments (e.g., Ada Lovelace Institute, AI Now, and Open Government Partnership, 2021 ); or technical tools (e.g., Vakkuri et al, 2021 ; Felländer et al, 2022 ) are often proposed. They are encouraged to “build on existing policies and governance structures, use pragmatic and action-oriented terminology, focus on risk management in development and procurement, and empower employees through continuous education and change management” ( Mökander et al, 2022 ).…”
Section: Accountability and Risk Governance In The Context Of Aimentioning
confidence: 99%