Section 01
Introduction: OST Framework—An Optimized New Solution for Data Selection in Multimodal Models
This article introduces the One-Step-Train (OST) framework, which redefines data selection as an incremental optimization utility ranking problem. By simulating a single-step update on a lightweight proxy model to estimate the marginal utility of each sample, OST reduces training costs by 43% while outperforming the LLM-as-a-Judge baseline by 1.8 points, providing an efficient and interpretable new solution for multimodal model training.