CLAIAug 20, 2025

Quantization Meets dLLMs: A Systematic Study of Post-training Quantization for Diffusion LLMs

arXiv:2508.14896v221 citationsh-index: 18Has Code
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This work addresses the resource-intensive deployment of dLLMs for edge computing, though it is incremental as it applies existing quantization techniques to a new model type.

The authors tackled the challenge of deploying diffusion large language models (dLLMs) on edge devices by conducting the first systematic study of post-training quantization for these models, identifying activation outliers as a key obstacle and evaluating quantization methods across multiple dimensions to provide practical insights.

Recent advances in diffusion large language models (dLLMs) have introduced a promising alternative to autoregressive (AR) LLMs for natural language generation tasks, leveraging full attention and denoising-based decoding strategies. However, the deployment of these models on edge devices remains challenging due to their massive parameter scale and high resource demands. While post-training quantization (PTQ) has emerged as a widely adopted technique for compressing AR LLMs, its applicability to dLLMs remains largely unexplored. In this work, we present the first systematic study on quantizing diffusion-based language models. We begin by identifying the presence of activation outliers, characterized by abnormally large activation values that dominate the dynamic range. These outliers pose a key challenge to low-bit quantization, as they make it difficult to preserve precision for the majority of values. More importantly, we implement state-of-the-art PTQ methods and conduct a comprehensive evaluation across multiple task types and model variants. Our analysis is structured along four key dimensions: bit-width, quantization method, task category, and model type. Through this multi-perspective evaluation, we offer practical insights into the quantization behavior of dLLMs under different configurations. We hope our findings provide a foundation for future research in efficient dLLM deployment. Our code is publicly available at https://github.com/FelixMessi/QDLM.

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