The recent emergence of Large Language Models (LLMs) has sparked a wave of innovation, and one unexpected area where they are being tested is chess. Researchers are exploring the ability of LLMs to play chess, both against humans and other LLMs. The Outlines package in Python provides a framework for these experiments, utilizing a sampling technique that selects tokens related to legal chess moves. The initial results suggest that while LLMs are capable of playing chess, their performance is still far from exceeding that of dedicated chess engines. However, the potential for LLMs to learn and adapt through reinforcement learning opens up possibilities for future advancements in chess AI.