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CoDA: Coding LM via Diffusion Adaptation
Episode 1241

CoDA: Coding LM via Diffusion Adaptation

Daily Paper Cast

October 9, 202522m 12s

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Show Notes

🤗 Upvotes: 25 | cs.LG, cs.AI, I.2.7

Authors:
Haolin Chen, Shiyu Wang, Can Qin, Bo Pang, Zuxin Liu, Jielin Qiu, Jianguo Zhang, Yingbo Zhou, Zeyuan Chen, Ran Xu, Shelby Heinecke, Silvio Savarese, Caiming Xiong, Huan Wang, Weiran Yao

Title:
CoDA: Coding LM via Diffusion Adaptation

Arxiv:
http://arxiv.org/abs/2510.03270v1

Abstract:
Diffusion language models promise bidirectional context and infilling capabilities that autoregressive coders lack, yet practical systems remain heavyweight. We introduce CoDA, a 1.7B-parameter diffusion coder trained on TPU with a fully open-source training pipeline. CoDA pairs large-scale diffusion pre-training with code-centric mid-training and instruction tuning, enabling confidence-guided sampling that keeps inference latency competitive. On Humaneval, MBPP, and EvalPlus, CoDA-1.7B-Instruct matches or surpasses diffusion models up to 7B parameters. Our release includes model checkpoints, evaluation harnesses, and TPU training pipelines to accelerate research on lightweight diffusion-based coding assistants.