Democratizing Diplomacy: A Harness for Evaluating Any Large Language Model on Full-Press Diplomacy

Authors

  • Alexander Duffy Good Start Labs
  • Samuel J Paech Independent Researcher
  • Ishana Shastri Independent Researcher
  • Elizabeth Karpinski Independent Researcher
  • Baptiste Alloui-Cros University of Oxford
  • Tyler Marques Good Start Labs
  • Matthew Lyle Olson Oracle

DOI:

https://doi.org/10.1609/aaai.v40i44.41067

Abstract

We present the first evaluation harness that enables any out-of-the-box, local, Large Language Models (LLMs) to play full-press Diplomacy without fine-tuning or specialized training. Previous work required frontier LLMs, or fine-tuning, due to the high complexity and information density of Diplomacy's game state. Combined with the high variance of matches, these factors made Diplomacy prohibitive for study. In this work, we used data-driven iteration to optimize a textual game state representation such that a 24B model can reliably complete matches without any fine tuning. We develop tooling to facilitate hypothesis testing and statistical analysis, and we present case studies on persuasion, aggressive playstyles, and performance across a range of models. We conduct a variety of experiments across many popular LLMs, finding the larger models perform the best, but the smaller models still play adequately. We also introduce Critical State Analysis: an experimental protocol for rapidly iterating and analyzing key moments in a game at depth. Our harness democratizes the evaluation of strategic reasoning in LLMs by eliminating the need for fine-tuning, and it provides insights into how these capabilities emerge from widely used LLMs.

Published

2026-03-14

How to Cite

Duffy, A., Paech, S. J., Shastri, I., Karpinski, E., Alloui-Cros, B., Marques, T., & Olson, M. L. (2026). Democratizing Diplomacy: A Harness for Evaluating Any Large Language Model on Full-Press Diplomacy. Proceedings of the AAAI Conference on Artificial Intelligence, 40(44), 37350–37359. https://doi.org/10.1609/aaai.v40i44.41067

Issue

Section

AAAI Special Track on AI Alignment