How can ethical concerns be balanced with practical safety measures?
Answer Posted / Jatin Kumar
Balancing ethical concerns with practical safety measures requires a thoughtful and nuanced approach. This can involve prioritizing human values, employing explainable AI (XAI) techniques to make the workings of AI systems more understandable, and using transparency to build trust between AI developers and users.
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