Google Research Football
Google Research Football (GRF) is a simulated soccer environment used to advance research in multi-agent reinforcement learning (MARL) and related machine learning techniques. Current research focuses on developing sophisticated models, including transformers, graph neural networks, and convolutional neural networks, to improve agent performance in increasingly complex scenarios (e.g., 11-vs-11 matches), often incorporating techniques like reward shaping and active learning to enhance training efficiency and strategy diversity. This research contributes to a deeper understanding of MARL algorithms and their application to complex, dynamic systems, with potential implications for sports analytics, game AI, and broader applications of AI in strategic decision-making.
Papers
RisingBALLER: A player is a token, a match is a sentence, A path towards a foundational model for football players data analytics
Akedjou Achraff Adjileye
Modeling and Prediction of the UEFA EURO 2024 via Combined Statistical Learning Approaches
Andreas Groll, Lars M. Hvattum, Christophe Ley, Jonas Sternemann, Gunther Schauberger, Achim Zeileis