How do ethical concerns differ between general-purpose AI and domain-specific AI?
Answer Posted / Kranti Kumar
Ethical concerns can differ between general-purpose AI (GP-AI) and domain-specific AI (DS-AI). GP-AI, which aims to perform a wide range of tasks, may face broader ethical considerations such as fairness, accountability, transparency, and privacy. On the other hand, DS-AI, which is designed for specific tasks, may have more targeted ethical concerns related to that domain (e.g., medical AI might focus on patient consent, data accuracy, and confidentiality). However, both types of AI should adhere to fundamental ethical principles.
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