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gracezhao1997/Awesome-Video-World-Models-with-AR-Diffusion

A Curated List of Awesome Video World Models with AR Diffusion: Covering Algorithms, Applications, and Infrastructure, Aimed at Serving as a Comprehensive Resource for Researchers, Practitioners, and Enthusiasts.

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What it does

This is a regularly updated, community-maintained directory of research papers and resources focused on a cutting-edge approach to AI video generation — teaching AI systems to build realistic, interactive simulations of the world from video, similar to what powers immersive game environments or advanced robotics training. Think of it as a living encyclopedia for one of the hottest areas in AI: systems that can generate and predict video in a way that's consistent, controllable, and scalable.

Why it matters

Video world models are becoming foundational technology for next-generation products in gaming, robotics, autonomous vehicles, and AI assistants — any product that needs an AI to understand or simulate physical reality. Builders and investors tracking where AI is heading should watch this space closely, as companies like Google (with Genie 3) are already betting on this paradigm as a core platform shift.

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On the radar — signal detected

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617
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Contributors
15
Language
TeX

Score updated May 8, 2026

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