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Recent advances in robotics and machine learning have revived the idea of police robots – machines that could patrol public spaces, conduct traffic stops, and interact with citizens with near-human competence. Proponents emphasize potential gains in officer safety, operational efficiency, and consistent rule enforcement, and international policy discussions increasingly treat AI and robotics for law enforcement as an emerging reality rather than science fiction. This paper offers a philosophically grounded argument for a strong infeasibility thesis: police robots that are like humans or almost like humans in the core social dimensions of open-ended policing cannot be built. The claim is not that robots cannot assist police work, or even replace officers in some narrowly specified tasks, but that they cannot become role-equivalent agents in situations requiring socially heterogeneous interaction, discretionary norm application, and accountable coercive authority. We draw here on our work on the limits of Artificial Intelligence documented in Landgrebe and Smith (2025; hereafter L they violate inherent limits to both stochastic and neurosymbolic AI models, and they also expose structural gaps in data, modeling, and responsibility attribution that would persist even under optimistic assumptions about future AI.
Szocik et al. (Tue,) studied this question.