System Safety and Artificial Intelligence
Roel I.J. Dobbe

TL;DR
This paper applies system safety principles to AI, emphasizing end-to-end hazard analysis, socio-technical considerations, and multidisciplinary approaches to prevent harm in AI systems across societal domains.
Contribution
It introduces seven lessons from system safety for AI safety, highlighting the importance of context, stakeholder involvement, and comprehensive hazard analysis.
Findings
AI hazards require socio-technical safety measures
End-to-end hazard analysis is essential for AI safety
Concrete tools for AI safety governance are provided
Abstract
This chapter formulates seven lessons for preventing harm in artificial intelligence (AI) systems based on insights from the field of system safety for software-based automation in safety-critical domains. New applications of AI across societal domains and public organizations and infrastructures come with new hazards, which lead to new forms of harm, both grave and pernicious. The text addresses the lack of consensus for diagnosing and eliminating new AI system hazards. For decades, the field of system safety has dealt with accidents and harm in safety-critical systems governed by varying degrees of software-based automation and decision-making. This field embraces the core assumption of systems and control that AI systems cannot be safeguarded by technical design choices on the model or algorithm alone, instead requiring an end-to-end hazard analysis and design frame that includes the…
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Taxonomy
TopicsEthics and Social Impacts of AI
