AI RESEARCH

Prime Once, then Reprogram Locally: An Efficient Alternative to Black-Box Service Model Adaptation

arXiv CS.LG

ArXi:2604.01474v1 Announce Type: cross Adapting closed-box service models (i.e., APIs) for target tasks typically relies on reprogramming via Zeroth-Order Optimization (ZOO). However, this standard strategy is known for extensive, costly API calls and often suffers from slow, unstable optimization. Furthermore, we observe that this paradigm faces new challenges with modern APIs (e.g., GPT-4o). These models can be less sensitive to the input perturbations ZOO relies on, thereby hindering performance gains.