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Diffusion Model

A Diffusion Model is a deep generative architecture that gradually constructs data samples from random noise. It works by learning the denoising process to reverse a mathematical forward diffusion process (which gradually adds random noise to data). Diffusion models have become highly effective for tasks like photorealistic text-to-image generation.

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Updated 2026-05-01

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