A NeurIPS 2025 competition advancing AI decision-making through Pokémon. Featuring competitive battling and RPG speedrunning tracks to unify research in reinforcement learning and large language models.
The PokéAgent Challenge positions Pokémon as an ideal testbed for artificial intelligence research, offering two complementary tracks that address fundamental challenges in decision-making.
This competition addresses critical frontiers in AI research at the intersection of reinforcement learning, game theory, planning, and language models. It creates a standardized benchmark for opponent modeling under partial observability and long-horizon reasoning—two capabilities essential for advancing AI beyond controlled environments.
Join the PokéAgent Challenge Discord server to register and connect with other participants!
Join Our Discord ServerPrinceton University
UT Austin
Carnegie Mellon University
Google DeepMind
UT Austin
Carnegie Mellon University
UT Austin
Princeton University