Towards AI-Assisted Generation of Military Training Scenarios
Soham Hans, Volkan Ustun, Benjamin Nye, James Sterrett, Matthew Green

TL;DR
This paper presents a multi-agent, multi-modal reasoning framework using Large Language Models to automate the creation of complex, adaptable military training scenarios, significantly reducing manual effort and increasing flexibility.
Contribution
It introduces a novel multi-agent, hierarchical framework leveraging LLMs for automated, adaptable scenario generation in military training, overcoming prior limitations of AI tools.
Findings
Successfully generated a scheme of maneuver and movement section of an OPORD
Demonstrated the framework's ability to produce coherent, nuanced documents
Validated the approach's feasibility and accuracy in scenario generation
Abstract
Achieving expert-level performance in simulation-based training relies on the creation of complex, adaptable scenarios, a traditionally laborious and resource intensive process. Although prior research explored scenario generation for military training, pre-LLM AI tools struggled to generate sufficiently complex or adaptable scenarios. This paper introduces a multi-agent, multi-modal reasoning framework that leverages Large Language Models (LLMs) to generate critical training artifacts, such as Operations Orders (OPORDs). We structure our framework by decomposing scenario generation into a hierarchy of subproblems, and for each one, defining the role of the AI tool: (1) generating options for a human author to select from, (2) producing a candidate product for human approval or modification, or (3) generating textual artifacts fully automatically. Our framework employs specialized…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Topic Modeling · Multi-Agent Systems and Negotiation
