Jan. 18, 2024, 10 p.m. | Adnan Hassan

MarkTechPost www.marktechpost.com

Diffusion models are at the forefront of generative model research. These models, essential in replicating complex data distributions, have shown remarkable success in various applications, notably in generating intricate and realistic images. They establish a stochastic process that progressively adds noise to data, followed by a learned reversal of this process to create new data […]


The post This Machine Learning Research from Stanford and Microsoft Advances the Understanding of Generalization in Diffusion Models appeared first on MarkTechPost.

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