Abstract

Over the course of the past few years, the convergence of artificial intelligence (AI) and creativity has emerged as a central focus of study and innovation. An investigation into the dynamic interaction that exists between machine learning algorithms and the sphere of artistic production is presented in this study. This article investigates the ways in which artificial intelligence systems are being utilised to enhance and augment human creativity across a variety of artistic domains, such as the visual arts, music composition, literature, and other areas. Recurrent neural networks and Generative Adversarial Networks (GANs) are two examples of generative algorithms that can be used to generate artistic content. This type of content blurs the lines between human and machine creation. This paper analyses the concept of style transfer, which is the process by which artificial intelligence systems can imbue artworks with the aesthetics of well-known artists or artistic movements, thereby enabling newly developed forms of expression.

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