Responsible AI in the Global Context: Maturity Model and Survey
Responsible AI (RAI) has emerged as a major focus across industry, policymaking, and academia, aiming to mitigate the risks and maximize the benefits of AI, both on an organizational and societal level. This study explores the global state of RAI through one of the most extensive surveys to date on...
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Zusammenfassung: | Responsible AI (RAI) has emerged as a major focus across industry,
policymaking, and academia, aiming to mitigate the risks and maximize the
benefits of AI, both on an organizational and societal level. This study
explores the global state of RAI through one of the most extensive surveys to
date on the topic, surveying 1000 organizations across 20 industries and 19
geographical regions. We define a conceptual RAI maturity model for
organizations to map how well they implement organizational and operational RAI
measures. Based on this model, the survey assesses the adoption of system-level
measures to mitigate identified risks related to, for example, discrimination,
reliability, or privacy, and also covers key organizational processes
pertaining to governance, risk management, and monitoring and control. The
study highlights the expanding AI risk landscape, emphasizing the need for
comprehensive risk mitigation strategies. The findings also reveal significant
strides towards RAI maturity, but we also identify gaps in RAI implementation
that could lead to increased (public) risks from AI systems. This research
offers a structured approach to assess and improve RAI practices globally and
underscores the critical need for bridging the gap between RAI planning and
execution to ensure AI advancement aligns with human welfare and societal
benefits. |
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DOI: | 10.48550/arxiv.2410.09985 |