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HuggingFace Paper

VideoAR: Autoregressive Video Generation via Next-Frame & Scale Prediction

Longbin Ji, Xiaoxiong Liu, Junyuan Shang +4January 9, 2026

Summary

VideoAR builds a large visual autoregressive model that predicts videos frame by frame across multiple scales. It narrows the quality gap with diffusion models while needing far fewer steps, which makes long video generation cheaper to run.

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