Generative AI in Creative Industries: A Review of Tools, Techniques, and Ethical Implications
DOI:
https://doi.org/10.5281/zenodo.17239638Keywords:
Automation, Creative Freedom, Innovation, Democratization, AI-driven Tools, Artistic Expression.Abstract
The report discovers the impact of generative AI on creative industries, highlighting its role in content creation, entertainment, healthcare, and software development. It highlights key technologies like Generative Adversarial Networks (GANs), Transformers, and Diffusion Models, which enable human-like text, realistic images, and advanced content. Generative AI boosts productivity, creative freedom, and accessibility, empowering new creators while programming repetitive tasks. Its applications cover visual arts, design, literature, film, and more. However, ethical challenges, including bias, misinformation, privacy, and copyright concerns, demand careful management. The report achieves that balancing technological advancements with ethical considerations is vital for unlocking generative AI's full potential.
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