AI RESEARCH

SWAN: World-Aware Adaptive Multimodal Networks for Runtime Variations

arXiv CS.LG

ArXi:2604.26181v1 Announce Type: new Multimodal deep neural networks deployed in realistic environments must contend with runtime variations: changes in modality quality, overall input complexity, and available platform resources. Current networks struggle with such fluctuations -- adaptive networks cannot adhere to a strict compute budget, controller-based networks neglect to consider input complexity, and statically provisioned networks fail at all the above. Consequently, they do not extract maximum utility from the expended computational resources.