A Blind Visual Paradigm for Testing Skill Transfer in Small Models Without Fine-Tuning
The author proposes a cross-domain, blind visual experiment to determine if a large language model can compress its procedural planning into a reusable scaffold that enhances a small model's output without fine-tuning. Using Three.js as the testbed, the study aims to prove that this transfer of skill is genuine and not merely overfitting to the source domain.