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What is the role of multidisciplinary teams in addressing AI ethics?

Answer Posted / Satyendra Kumar Sharma

Multidisciplinary teams play a crucial role in addressing AI ethics. These teams, consisting of experts from various fields such as computer science, philosophy, law, and sociology, can bring diverse perspectives and ensure that ethical considerations are addressed comprehensively.

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