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

About

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. To address these two challenges, we propose Composite Reward Assisted Fine-Tuning (CRAFT), a lightweight yet powerful fine-tuning paradigm that requires significantly reduced training data while maintaining computational efficiency. It first leverages a Composite Reward Filtering (CRF) technique to construct a high-quality and consistent training dataset and then perform an enhanced variant of SFT. We also theoretically prove that CRAFT actually optimizes the lower bound of group-based reinforcement learning, establishing a principled connection between SFT with selected data and reinforcement learning. Our extensive empirical results demonstrate that CRAFT with only 100 samples can easily outperform recent SOTA preference optimization methods with thousands of preference-paired samples. Moreover, CRAFT can even achieve 11-220$\times$ faster convergences than the baseline preference optimization methods, highlighting its extremely high efficiency.

Zening Sun, Zhengpeng Xie, Lichen Bai, Shitong Shao, Shuo Yang, Zeke Xie• 2026

Related benchmarks

TaskDatasetResultRank
Text-to-Image GenerationGenEval
Overall Score57.97
391
Text-to-Image GenerationGenEval (test)
Two Obj. Acc47.22
221
Text-to-Image GenerationT2I-CompBench
Shape Fidelity44.6
185
Text-to-Image GenerationPick-a-Pic
ImageReward1.308
107
Text-to-Image GenerationPartiPrompts
ImageReward80.7
67
Text-to-Image GenerationHPD v2 (test)
HPSv232.67
25
Diffusion Model Fine-tuningSDXL
GPU Hours4
8
Diffusion Model Fine-tuningSD 1.5
GPU Hours1.9
8
Image GenerationParti-Prompt (test)
HPSv2.131.1
6
Image GenerationPick-a-Pic (test)
HPSv2.132.18
6
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