AI RESEARCH

CRAFT: Aligning Diffusion Models with Fine-Tuning Is Easier Than You Think

arXiv CS.LG

ArXi:2603.18991v1 Announce Type: cross Aligning Diffusion models has achieved remarkable breakthroughs in generating high-quality, human preference-aligned images. Existing techniques, such as supervised fine-tuning (SFT) and DPO-style preference optimization, have become principled tools for fine-tuning diffusion models. However, SFT relies on high-quality images that are costly to obtain, while DPO-style methods depend on large-scale preference datasets, which are often inconsistent in quality. Beyond data dependency, these methods are further constrained by computational inefficiency.