Ethical Considerations in AI and Data Science - Addressing Bias, Privacy, and Fairness
Keywords:
Ethical considerations, AI, data science, bias, privacy, fairness, algorithmic decision-makingAbstract
Artificial intelligence (AI) and data science technologies are increasingly integrated into various aspects of society, revolutionizing industries and services. However, the rapid advancement of these technologies raises significant ethical concerns. This paper explores the ethical considerations in AI and data science, focusing on issues such as bias, privacy concerns, and fairness in algorithmic decision-making processes and outcomes.
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References
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