Ethical Implications of Autonomous Decision-Making in AI Systems
Abstract
This paper explores the ethical challenges posed by autonomous AI systems, particularly in high-stakes environments such as healthcare, autonomous vehicles, and military applications. It examines the moral frameworks used in programming AI decision-making algorithms and the potential consequences of these decisions. The paper discusses the trade-offs between machine efficiency and human ethical considerations, proposing a set of guidelines for responsible AI development that balances autonomy with accountability.
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