Ethical Challenges in AI Development: A Framework for Responsible Innovation

Dr. Prakash Kour

Abstract


The rapid advancement of artificial intelligence (AI) has introduced significant ethical challenges, including biases, privacy concerns, and accountability issues. This paper presents a comprehensive framework for responsible AI innovation, emphasizing the integration of ethical considerations throughout the AI lifecycle. By analyzing case studies and exploring global regulatory trends, we propose actionable guidelines to ensure fairness, transparency, and societal benefit. The framework aims to serve as a foundation for developers, policymakers, and researchers to navigate the complex ethical landscape of AI technologies.

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