March 14, 2024, 1 p.m. | Mohammad Asjad

MarkTechPost www.marktechpost.com

Diffusion models have gained prominence in image, video, and audio generation, but their sampling process is computationally expensive compared to training. Consistency Models offer faster sampling but sacrifice image quality, with Consistency Training (CT) and Consistency Distillation (CD) being the variants. TRACT focuses on distillation, dividing the diffusion trajectory into stages to enhance performance. However, […]


The post Google DeepMind Researchers Unveil Multistep Consistency Models: A Machine Learning Approach that Balances Speed and Quality in AI Sampling appeared first on …

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