Qwen-Image-Flash: Beyond Objective Design

· HF Daily Papers ·

Qwen-Image-Flash applies few-step distillation recipes to accelerate Qwen-Image-2.0 for text-to-image generation and image editing.

Categories: Model Releases, Research

Excerpt

Tianhe Wu, Kun Yan, Zikai Zhou, Lihan Jiang, Jiahao Li — Few-step distillation has become an effective strategy for accelerating advanced visual generative models, yet prior work has largely focused on distillation objectives. In this work, we revisit few-step distillation from a complementary perspective, focusing on the training recipe that critically shapes student performance. Using Qwen-Image-2.0 as a representative case, we systematically investigate three factors in unified text-to-image generation and instruction-guided image editing distillation: data composition, teacher guidance, and task mixture. Our empirical analysis reveals several non-obvious behaviors, which motivate the development of Qwen-Image-Flash. Overall, our results suggest that effective few-step distillation requires not only carefully designed objectives, but also principled organization of the broader training pipeline.