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Reimagining Diffusion Models: Autoregressive Priors for Efficient Initialization

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Author(s): Shenggang Li Originally published on Towards AI. Exploring a Novel Approach to Diffusion Initialization with Intuitive Illustrations, Applications This member-only story is on us. Upgrade to access all of Medium. Photo by Gary Fultz on Unsplash Diffusion models have become a cornerstone of modern AI, especially in generative tasks like creating realistic images or high-quality audio. They’re like digital artists, transforming random noise into stunningly detailed outputs step-by-step. This meticulous approach has made diffusion models a game-changer in the AI world. Typically, these models begin their work with pure Gaussian noise, which acts as the blank canvas. While effective, this starting point doesn’t take advantage of prior knowledge about the data structure, potentially slowing down the process and affecting sample quality. Imagine if we could give these models a smarter head start. That’s where Autoregressive Priors (ARPs) come in. I introduce a new approach that integrates Autoregressive Models (ARMs) at the start of the diffusion process, adding structure instead of relying on pure Gaussian noise. This speeds up generation and enhances sample quality. I will explore how ARPs improve diffusion models, break down their mechanics, and compare them with traditional methods. Imagine restoring a faded photograph: you begin with a nearly blank canvas (random noise) and repeatedly refine it, eventually recovering the original image. Diffusion models operate similarly — they start from random… Read the full blog for free on Medium. Join thousands of data leaders on the AI newsletter. Join over 80,000 subscribers and keep up to date with the latest developments in AI. From research to projects and ideas. If you are building an AI startup, an AI-related product, or a service, we invite you to consider becoming a sponsor. Published via Towards AI

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