Ethical Dimensions of Generative AI: Balancing Innovation and Responsibility

Main Article Content

Dr. Kim Kasula

Abstract

The rapid advancements in generative AI have revolutionized industries by enabling the creation of realistic images, videos, and textual content. However, these capabilities raise significant ethical concerns, including misinformation, bias propagation, and copyright infringement. This paper explores the ethical dimensions of generative AI, providing a framework for responsible innovation. It evaluates existing guidelines and proposes actionable strategies for mitigating ethical risks while fostering innovation. The study emphasizes the importance of transparency, accountability, and equitable access to generative AI technologies.

Article Details

How to Cite
Kasula, D. K. (2024). Ethical Dimensions of Generative AI: Balancing Innovation and Responsibility. International Journal of Computer Vision and Computer Science, 6(6). Retrieved from https://ijaisd.com/index.php/IJCVCS/article/view/1
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