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A change to make diffusion models 80% faster

A change to make diffusion models 80% faster

New discovery: leaner, meaner diffusion

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Apr 09, 2024
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A change to make diffusion models 80% faster
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“I am speed” - Sanic, while running a diffusion model 80% faster than before

There's no shortage of excitement around diffusion models like DALL-E 2 and Stable Diffusion, and for good reason. These AI systems can generate stunning images from mere text descriptions, enabling everything from digital art to computer-aided design. But beneath the surface, there's a dirty secret: diffusion models are notoriously slow and computationally intensive.

Examples and results table from the paper

It sounds too good to be true, but that's exactly what a team from Oxford, Cambridge, Imperial College London, and King's College London are claiming in their latest paper. By completely rethinking a core component of diffusion models, they've achieved a seemingly impossible trifecta: faster, lighter, and better. They claim they can make models up to 80% faster while using 75% fewer parameters and a fraction of the memory.

If their approach pans out, it could be a watershed moment for diffusion models. Suddenly, the most powerful image and video synthesis models would be practical for a much wider range of applications, from mobile apps to real-time creative tools to robotic movement planning (yep!). And that's just the beginning.

By the way, if you find technical news interesting, you should consider becoming a subscriber. You'll get access to my complete analysis on trending papers like this one, where I break down the technical details, explore the strengths and limitations of the approach, and ponder the potential ripple effects on the field of generative AI.

Trust me, if you're at all interested in the technical details of the AI revolution, you won't want to miss this deep dive.

And if you know anyone else who geeks out about breakthroughs in deep learning, please share this post with them. The more minds we have buzzing over the implications of this research, the better.

Now, let’s dig in…

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