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Frontiers in Art Research, 2025, 7(5); doi: 10.25236/FAR.2025.070507.

Multi-Agent Systems for Collaborative Art Creation

Author(s)

Yi Luo

Corresponding Author:
Yi Luo
Affiliation(s)

The Baldwin School, 701 Montgomery Avenue Bryn Mawr, PA, 19010, US

Abstract

The field of AI-driven art and content generation has witnessed significant advancements. However, existing models typically operate as monolithic systems, lacking the nuanced colaboration, cross-domain capabilities, and iterative refinement necessary to meet complex user needs. This paper introduces the Multi-Agent System for Collaborative creation (MASC) framework, a novel approach integrating the collaborative, routing, and evaluative strengths of Multi-Agent Systems (MAS) with state-of-the-art generative models, such as Denoising Diffusion Probabilistic Models (DDPMs) and Diffusion Transformers (DiTs) for image synthesis. MASC leverages a team of specialized agents/modules (Task Agent, Domain Analysis Agent, Deepthink Module, Generator Module, Reflection Module) interacting through defined protocols and iterative loops. This enables the system to understand user intent, enrich creative prompts, generate multi-domain content (text, images, video, etc.), and perform evaluation-driven optimization. We elaborate on the MASC architecture, component roles, communication mechanisms, and its integration with core generative processes. Experimental results suggest MASC holds advantages in enhancing the detail richness and user intent alignment of generated content, opening new avenues for exploring more complex, cross-domain, and conceptually driven AI content creation.

Keywords

Multi-Agent, Artistic Creation, Diffusion Models, Large Language Models

Cite This Paper

Yi Luo. Multi-Agent Systems for Collaborative Art Creation. Frontiers in Art Research (2025), Vol. 7, Issue 5: 48-52. https://doi.org/10.25236/FAR.2025.070507.

References

[1] Ian J Goodfellow et al. “Generative adversarial nets”. In: Advances in neural information processing systems 27 (2014). 

[2] Jonathan Ho, Ajay Jain, and Pieter Abbeel. “Denoising diffusion probabilistic models”. In: Advances in neural information processing systems 33 (2020), pp. 6840–6851. 

[3] Naomi Imasato et al. “Creative Agents: Simulating the Systems Model of Creativity with Generative Agents”. In: arXiv preprint arXiv:2411.17065 (2024). 

[4] Joon Sung Park et al. “Generative agents: Interactive simulacra of human behavior”. In: Proceedings of the 36th annual acm symposium on user interface software and technology. 2023 pp. 1–22. 

[5] William Peebles and Saining Xie. “Scalable diffusion models with transformers”. In: Proceedings of the IEEE/CVF international conference on computer vision. 2023, pp. 4195–4205. 

[6] Michael Wooldridge. An introduction to multiagent systems. John wiley & sons, 2009.