AI Co-Artist: A LLM-Powered Framework for Interactive GLSL Shader Animation Evolution
Kamer Ali Yuksel, Hassan Sawaf

TL;DR
AI Co-Artist leverages GPT-4 to enable interactive, user-guided evolution of GLSL shaders, making creative digital art more accessible and reducing technical barriers for artists and designers.
Contribution
This work introduces a novel LLM-powered system that allows intuitive, visual-driven shader evolution without requiring programming expertise, expanding creative possibilities in digital art.
Findings
Reduces technical barriers for shader creation.
Enhances creative outcomes with user-guided evolution.
Supports diverse creative domains beyond shaders.
Abstract
Creative coding and real-time shader programming are at the forefront of interactive digital art, enabling artists, designers, and enthusiasts to produce mesmerizing, complex visual effects that respond to real-time stimuli such as sound or user interaction. However, despite the rich potential of tools like GLSL, the steep learning curve and requirement for programming fluency pose substantial barriers for newcomers and even experienced artists who may not have a technical background. In this paper, we present AI Co-Artist, a novel interactive system that harnesses the capabilities of large language models (LLMs), specifically GPT-4, to support the iterative evolution and refinement of GLSL shaders through a user-friendly, visually-driven interface. Drawing inspiration from the user-guided evolutionary principles pioneered by the Picbreeder platform, our system empowers users to evolve…
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Taxonomy
TopicsData Visualization and Analytics · Interactive and Immersive Displays · Art, Technology, and Culture
