AI RESEARCH

One Model for All Tasks: Leveraging Efficient World Models in Multi-Task Planning

arXiv CS.LG

ArXi:2509.07945v3 Announce Type: replace In heterogeneous multi-task decision-making, tasks not only exhibit diverse observation and action spaces but also vary substantially in their underlying complexities. While conventional multi-task world models like UniZero excel in single-task settings, we find that when handling a broad and diverse suite of tasks, gradient conflicts and the loss of model plasticity often constrain their sample efficiency. In this work, we address these challenges from two complementary perspectives: the single learning iteration and the overall learning process.