LGApr 20

NI Sampling: Accelerating Discrete Diffusion Sampling by Token Order Optimization

arXiv:2604.1847195.9h-index: 27Has Code
Predicted impact top 4% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For practitioners of discrete diffusion language models, NI Sampling offers a practical acceleration method that significantly reduces sampling steps without sacrificing accuracy.

Discrete diffusion language models suffer from inefficient token sampling. The proposed Neural Indicator Sampling (NI Sampling) optimizes token order, achieving up to 14.3× acceleration over full-step sampling with negligible performance drop.

Discrete diffusion language models (dLLMs) have recently emerged as a promising alternative to traditional autoregressive approaches, offering the flexibility to generate tokens in arbitrary orders and the potential of parallel decoding. However, existing heuristic sampling strategies remain inefficient: they choose only a small part of tokens to sample at each step, leaving substantial room for improvement. In this work, we study the problem of token sampling order optimization and demonstrate its significant potential for acceleration. Specifically, we find that fully leveraging correct predictions at each step can reduce the number of sampling iterations by an order of magnitude without compromising accuracy. Based on this, we propose Neural Indicator Sampling (NI Sampling), a general sampling order optimization framework that utilize a neural indicator to decide which tokens should be sampled at each step. We further propose a novel trajectory-preserving objective to train the indicator. Experiments on LLaDA and Dream models across multiple benchmarks show that our method achieves up to 14.3$\times$ acceleration over full-step sampling with negligible performance drop, and consistently outperforms confidence threshold sampling in the accuracy-step trade-off. Code is available at https://github.com/imagination-research/NI-Sampling.

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