Generative AI Unleashed: The Intersection of Latent Spaces and Creative Outcomes

Authors

  • Karan Dev Mehra Department of Information Technology, SKN Sinhgad Institute of Technology and Science, Lonavala, Maharashtra, India Author

DOI:

https://doi.org/10.15680/IJCTECE.2018.0102002

Keywords:

Generative AI, Latent Spaces, Creative Outcomes, GANs, VAEs, AI and Creativity, Artificial Intelligence, Machine Learning, Creativity Enhancement, Ethical AI

Abstract

This paper explores the intersection of generative artificial intelligence (AI), latent spaces, and creative outcomes, emphasizing how AI models such as GANs (Generative Adversarial Networks), VAEs (Variational Autoencoders), and transformers have revolutionized creative industries. By leveraging latent spaces — high-dimensional spaces that capture the essential features of data — AI systems can generate novel artistic creations, from visual art to music, text, and even design. We examine how these systems work, how they are trained, and their potential to enhance human creativity in various domains. The paper also explores ethical considerations and challenges surrounding the use of generative AI, including issues related to authorship, copyright, and the impact on traditional creative processes. By analyzing the latest advancements in AI models and their creative outputs, this paper seeks to present a comprehensive overview of how AI is reshaping creativity and pushing the boundaries of human imagination.

References

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Published

2018-11-01

How to Cite

Generative AI Unleashed: The Intersection of Latent Spaces and Creative Outcomes. (2018). International Journal of Computer Technology and Electronics Communication, 1(2), 326-328. https://doi.org/10.15680/IJCTECE.2018.0102002