Visual Autoregressive Models Beat Diffusion Models on Inference Time Scaling

arXiv — cs.CVTuesday, October 28, 2025 at 4:00:00 AM
Recent advancements in visual autoregressive models have shown promising results in image generation, outperforming traditional diffusion models in terms of inference time scaling. This breakthrough is significant as it highlights the potential for more efficient image generation techniques, which could enhance various applications in technology and art. By leveraging the discrete and sequential nature of these models, researchers are paving the way for faster and more effective image creation, making it an exciting development in the field.
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