Leveraging Generative AI to Create Lightweight Simulations for Far-Future Autonomous Teammates
Christopher Flathmann, Christian Ihekweazu, Beau G. Schelble
Proceedings of the Human Factors and Ergonomics Society Annual Meeting (2025)
Abstract
As the domain of AI advances, the design and capability of human-AI teams are becoming increasingly complex. Unfortunately, this complexity has increased the pace at which research needs to be performed. On the one hand, low-fidelity survey-based experiments have provided an opportunity for rapid human-AI teaming research. High-fidelity research studies that use full-fledged simulations remain relevant, but their development overhead often slows the pace of research. This article proposes a system design that splits the difference to explore human-AI teams at a medium fidelity that allows for rapid prototyping from researchers and interaction from participants. The proposed platform consists of a predictive simulation engine that uses generative AI to ingest, modify, and predict simulation states. Researchers can describe teammate capabilities, environments, and goals, which can be stored in a traditional JSON game state. The proposed simulation provides an interactive opportunity to explore modern and far-future HATs.
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BibTeX
@inproceedings{flathmann2025leveraging,
title = {Leveraging Generative AI to Create Lightweight Simulations for Far-Future Autonomous Teammates},
author = {Flathmann, Christopher and Ihekweazu, Christian and Schelble, Beau G.},
year = {2025},
booktitle = {Proceedings of the Human Factors and Ergonomics Society Annual Meeting},
doi = {10.1177/10711813251357885}
}Topics
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