Patterns for a New Generation: AI and Agents
Abstract
Design patterns have been used in various fields of inquiry and endeavour to externalize procedural knowledge in a form that supports human reasoning and coordination. In this paper, we show that contemporary Large Language Model (LLM)-based systems can also read, generate, and reason with design patterns written in a structured template. We describe an experimental workflow in which patterns function as shared priors for action selection, reflection, and revision in hybrid human/agent settings. Drawing on the Active Inference Framework, we illustrate how patterns can guide agent behavior without fully prescribing it. This provides a proof of concept that pattern-capable agents can be created using now-standard software tools. We discuss implications for software development, education, business, and AI governance.
Cite
@article{arxiv.2506.09696,
title = {Patterns for a New Generation: AI and Agents},
author = {Joseph Corneli and Charles J. Danoff and Raymond S. Puzio and Sridevi Ayloo and Sergio Belich and Andre Wilkinson and Mary Tedeschi and Pauline Mosley},
journal= {arXiv preprint arXiv:2506.09696},
year = {2026}
}
Comments
10 pages with 4 page appendix; to appear in Proceedings of Pattern Languages of Programs 2025