AI RESEARCH

From monoliths to modules: Decomposing transducers for efficient world modelling

arXiv CS.AI

ArXi:2512.02193v2 Announce Type: replace World models have been recently proposed as sandbox environments in which AI agents can be trained and evaluated before deployment. While realistic world models often have high computational demands, this can often be alleviated by exploiting the fact that real-world scenarios tend to involve subcomponents that interact in a modular manner. In this paper, we explore this idea by developing a framework for decomposing complex world models represented by transducers, a class of models generalising POMDPs.