AI RESEARCH

Adaptive Capacity Allocation for Vision Language Action Fine-tuning

arXiv CS.AI

ArXi:2603.07404v1 Announce Type: cross Vision language action models (VLAs) are increasingly used for Physical AI, but deploying a pre-trained VLA model to unseen environments, embodiments, or tasks still requires adaptation. Parameter-efficient fine-tuning (PEFT), especially LoRA, is common for VLA policies, yet the exposed capacity knob, the rank, does not transfer uniformly: robotics transfer exhibits a higher and task-varying intrinsic rank than language fine-tuning.