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arxiv:2512.02892

Fast-Decoding Diffusion Language Models via Progress-Aware Confidence Schedules

Published on Dec 2
· Submitted by Amr Mohamed on Dec 11

Abstract

SchED, a training-free early-exit algorithm, accelerates diffusion large language model decoding with minimal performance loss across various tasks.

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Diffusion large language models (dLLMs) offer a promising alternative to autoregressive models, but their practical utility is severely hampered by slow, iterative sampling. We present SchED, a training-free, model-agnostic early-exit algorithm that aggregates full-span logit margins and halts decoding once a smooth, progress-dependent confidence threshold is met. We evaluated SchED on two dLLM families (Dream and LLaDA), in base and instruction-tuned variants across ten benchmarks spanning downstream tasks including multiple-choice question answering (MCQ), math, long-form QA/summarization, and translation. SchED delivers large, stable accelerations: on instruction-tuned models, it achieves 3.8-4.0times speedups while retaining 99.8-100% of the baseline score on average. On base models, SchED yields consistent speedup gains with 99.1-100% performance retention, with up to 2.34times under more aggressive settings. Using a conservative speed metric that heavily penalizes quality loss (QPS, γ{=}4), we show that SchED is robust and clearly outperforms prior confidence-based early-exit methods, which break down on long-form generation. An entropy analysis of the model's token predictions reveals that instruction tuning speeds up the decay of predictive entropy. By turning genuine confidence stabilization into computational savings, SchED makes dLLM decoding substantially more efficient.

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SchED introduces a training-free, early-exit decoding criterion for diffusion LLMs, halting sampling once a smooth, progress-adaptive confidence threshold is satisfied. SchED achieves up to ~4× decoding speedups on average with ≥99–100% performance retention across benchmarks.

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