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Abstract

International Journal of Trends in Emerging Research and Development, 2024;2(4):137-142

Evaluating and implementing AI ethics in practice

Author : Annie Garg and Dr. Dharm Pal Khatri

Abstract

Current advances in research, development and application of artificial intelligence (AI) systems have yielded a far-reaching discourse on AI ethics. In consequence, a number of ethics guidelines have been released in recent years. These guidelines comprise normative principles and recommendations aimed to harness the “disruptive” potentials of new AI technologies. The ethical hazards and concerns brought up by AI, as well as the ethical guidelines and principles provided by various organizations, methodologies for evaluating the ethics of AI, and ways to tackling these difficulties will provide a complete overview of this topic. Furthermore, difficulties in incorporating AI ethics and potential future directions are highlighted. Questions of law, society, and business that have arisen as a result of AI development are the primary focus of this research. The research stops short of delving into the specifics of the algorithms and technology employed in AI. The study's suggestions might be useful for practitioners, lawmakers, and corporate and public sector organizations in their efforts to regulate artificial intelligence (AI) and its uses. Academics, businesses, governments, and citizens alike are beginning to pay more attention to the issue of artificial intelligence ethics. The study of AI's ethical implications has received a lot of attention during the last few decades. The research aims to address two primary questions: first, why regulation of the technology is necessary, and second, how artificial intelligence (AI) interacts with the legal system. The thesis delves at the legal ramifications of technological advancement and the safeguarding of human rights in relation to technology. An effort has been made to identify a possible resolution to the issue.

Keywords

Artificial intelligence, Machine learning, Ethics, Guidelines, Implementation