AI RESEARCH

Neural Operators for Multi-Task Control and Adaptation

arXiv CS.LG

ArXi:2604.03449v1 Announce Type: new Neural operator methods have emerged as powerful tools for learning mappings between infinite-dimensional function spaces, yet their potential in optimal control remains largely unexplored. We focus on multi-task control problems, whose solution is a mapping from task description (e.g., cost or dynamics functions) to optimal control law (e.g., feedback policy). We approximate these solution operators using a permutation-invariant neural operator architecture.