405rar May 2026

RAR is an autoregressive (AR) image generator designed to be fully compatible with standard language modeling frameworks. It aims to bridge the gap between traditional AR models and more flexible bidirectional models like diffusion or masked transformers.

The search for "paper: 405rar" refers to , a recent paper published in November 2024 that introduces a new state-of-the-art model for image generation. Overview of RAR 405rar

: A suite released in April 2024 to evaluate how well retrieval models can perform reasoning tasks typically reserved for Large Language Models (LLMs). RAR is an autoregressive (AR) image generator designed

: The paper and its associated codebase are available through platforms like arXiv and GitHub . Related Benchmarks & Agents Overview of RAR : A suite released in

: On the ImageNet-256 benchmark, RAR achieved a FID score of 1.48 , which is a significant improvement over previous autoregressive generators and even outperforms many top-tier diffusion-based and masked transformer models.

It is important to distinguish the image generation model from other similarly named research: