A quantization technique for diffusion models that aligns sampling trajectories to preserve high-order sampler performance under quantization noise.
Generative adversarial network: An overview of theory and applications.International Journal of Information Manage- ment Data Insights, 1(1):100004, 2021
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Sampling-Aware Quantization for Diffusion Models
A quantization technique for diffusion models that aligns sampling trajectories to preserve high-order sampler performance under quantization noise.