In this work, we propose Causal Autoregressive Diffusion (CARD), a novel framework that unifies the training efficiency of ARMs with the high-throughput inference of diffusion models. CARD reformulates the diffusion process within a strictly causal attention mask, enabling dense, per-token supervision in a single forward pass. To address the optimization instability of causal diffusion, we introduce a soft-tailed masking schema to preserve local context and a context-aware reweighting mechanism derived from signal-to-noise principles. This design enables dynamic parallel decoding, where the model leverages KV-caching to adaptively generate variable-length token sequences based on confidence. Empirically, CARD outperforms existing discrete diffusion baselines while reducing training latency by 3 × compared to block diffusion methods. Our results demonstrate that CARD achieves ARM-level data efficiency while unlocking the latency benefits of parallel generation, establishing a robust paradigm for next-generation efficient LLMs.
@article{arxiv.2601.22031,
title = {Causal Autoregressive Diffusion Language Model},
author = {Junhao Ruan and Bei Li and Yongjing Yin and Pengcheng Huang and Xin Chen and Jingang Wang and Xunliang Cai and Tong Xiao and JingBo Zhu},
journal= {arXiv preprint arXiv:2601.22031},
year = {2026}
}