VAR
V
VAR
Overview :
VAR is a novel visual autoregressive modeling method that surpasses diffusion models, achieving more efficient image generation. It establishes the power-law scaling laws of visual generation and possesses zero-shot generalization capabilities. VAR provides a range of pre-trained models of different sizes for users to explore and utilize.
Target Users :
Primarily used for efficient image generation and synthesis tasks.
Total Visits: 474.6M
Top Region: US(19.34%)
Website Views : 56.0K
Use Cases
Interact with VAR models for generative image creation on the demo website.
Explore the technical details of VAR models in the demo_sample.ipynb.
Leverage VAR to efficiently generate various image types, such as artistic creations and product designs.
Features
Autoregressive Visual Generation
Efficiency surpassing diffusion models
Discovering power-law scaling laws of visual generation
Zero-shot generalization capability
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