
Sign up to save your podcasts
Or
MeanFlow models introduce the concept of average velocity to fundamentally reformulate one-step generative modeling. Unlike Flow Matching, which focuses on instantaneous velocity, MeanFlow directly models the displacement over a time interval. This approach allows for highly efficient one-step or few-step generation using a single network evaluation. MeanFlow is built on a principled mathematical identity between average and instantaneous velocities, guiding network training without requiring pre-training, distillation, or curriculum learning. It achieves state-of-the-art performance for one-step generation, significantly narrowing the gap with multi-step models.
5
22 ratings
MeanFlow models introduce the concept of average velocity to fundamentally reformulate one-step generative modeling. Unlike Flow Matching, which focuses on instantaneous velocity, MeanFlow directly models the displacement over a time interval. This approach allows for highly efficient one-step or few-step generation using a single network evaluation. MeanFlow is built on a principled mathematical identity between average and instantaneous velocities, guiding network training without requiring pre-training, distillation, or curriculum learning. It achieves state-of-the-art performance for one-step generation, significantly narrowing the gap with multi-step models.
272 Listeners
441 Listeners
298 Listeners
331 Listeners
217 Listeners
156 Listeners
192 Listeners
9,170 Listeners
409 Listeners
121 Listeners
75 Listeners
479 Listeners
94 Listeners
31 Listeners
43 Listeners