CLAILGDec 22, 2025

Context-Aware Initialization for Reducing Generative Path Length in Diffusion Language Models

arXiv:2512.19004v1h-index: 1
Originality Incremental advance
AI Analysis

This work addresses inference inefficiency for users of diffusion language models, though it is incremental as it builds on existing acceleration methods.

The paper tackles the problem of slow inference in diffusion language models by proposing a context-aware initialization method to reduce the number of denoising iterations, achieving about 35% fewer function evaluations on GSM8K while noting challenges with accuracy degradation.

Diffusion Large Language Models (DLLMs) enable fully parallel token decoding but often remain impractical at inference time due to the many denoising iterations required to refine an information-free, fully masked initialization into coherent text. Most existing acceleration methods focus on traversing this generative trajectory more efficiently via improved solvers or sampling strategies. We advance a complementary perspective: shorten the trajectory itself by starting closer to the target distribution through context-aware initialization. We propose a training-free interface that injects prompt-conditioned priors from a lightweight auxiliary model into the diffusion initialization, and instantiate it with two mechanisms: discrete token injection and representation-level embedding interpolation. Because injected priors can be imperfect and unmask-only decoding can over-commit early, we also introduce a simple confidence-based remasking mechanism as a form of prior skepticism. Preliminary evidence on GSM8K suggests that context-aware initialization can substantially reduce denoising iterations (about 35\% fewer function evaluations in our setting), while also exposing a key open challenge: naive warm-starting can degrade final accuracy relative to strong diffusion baselines. We use these findings to motivate a research agenda around calibration, revision mechanisms, and representation alignment for reliable warm-started diffusion decoding.

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