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An Analytical Study of Generative Artificial Intelligence: Models, Uses, and Ethical Challenges
0
Zitationen
2
Autoren
2026
Jahr
Abstract
Abstract Generative Artificial Intelligence represents a rapidly evolving branch of Artificial Intelligence (AI) which focuses on creating new data which includes real-world patterns, including text, images, audio, and synthetic datasets. This research paper provides an analytical overview of the core generative models—such as Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and recent Diffusion Models—and a proper architectural foundations, capabilities, and practical applications across industries. The study highlights how Generative AI is transforming the data, content creation, automating complex tasks, and producing the extra data which is trained by machine learning (ML). However, it also brings challenges such as fake information, privacy issues, and biased outputs. This paper discusses these issues and suggests future improvements to make Generative AI more safe, transparent, and reliable. Overall, the paper gives a clear understanding of how Generative AI works and why it is becoming important in many industries.
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