

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.
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
Featured AI Tools
Chinese Picks

Capcut Dreamina
CapCut Dreamina is an AIGC tool under Douyin. Users can generate creative images based on text content, supporting image resizing, aspect ratio adjustment, and template type selection. It will be used for content creation in Douyin's text or short videos in the future to enrich Douyin's AI creation content library.
AI image generation
9.0M

Outfit Anyone
Outfit Anyone is an ultra-high quality virtual try-on product that allows users to try different fashion styles without physically trying on clothes. Using a two-stream conditional diffusion model, Outfit Anyone can flexibly handle clothing deformation, generating more realistic results. It boasts extensibility, allowing adjustments for poses and body shapes, making it suitable for images ranging from anime characters to real people. Outfit Anyone's performance across various scenarios highlights its practicality and readiness for real-world applications.
AI image generation
5.3M