REIMAGINING MODERN ART: AI-DRIVEN PREDICTION AND EMERGING POSSIBILITIES
Abstract
Abstract
The rapid growth of artificial intelligence (AI) is transforming how creative work is produced and understood. This development is profoundly influencing modern art. This paper critically examines the growing relationship between modern art and artificial intelligence, focusing on how AI technologies are reshaping artistic creation, authorship, and aesthetic experience. Rather than viewing AI merely as a digital tool, this study positions it as an active collaborator in the creative process. Using a conceptual and analytical approach, the paper draws insights from visual arts, digital humanities, and computational creativity to explore future possibilities for AI-driven art. Attention is given to areas such as AI-assisted image-making, data-based aesthetics, and the changing role of the artist in an era when humans and machines work together. The study also discusses important concerns raised by this collaboration, including questions of originality, creativity, ethical responsibility, and cultural ownership. By proposing predictive frameworks, this paper explores possible future directions for modern art as artificial intelligence continues to evolve. The study concludes that artificial intelligence does not replace human creativity but expands it, opening new spaces for artistic expression and critical reflection.
Keywords: Reimagining, Modern Art, AI-Driven Creativity, Prediction
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