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@iScienceLuvr

Consistency Trajectory Models: Learning Probability Flow ODE Trajectory of Diffusion abs: https://t.co/0G5YNA5typ To perform distillation, train a model to predict anywhere in the diffusion model trajectory from any starting point. Introduces γ-sampling to perform inference. Perform adversarial training to improve performance. Combines standard diffusion distillation and consistency models into a single framework.

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