LGCLMay 20, 2025

Scaling Law for Quantization-Aware Training

ByteDance
arXiv:2505.14302v113 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses deployment challenges for large language models by providing insights to improve QAT, though it is incremental as it builds on existing QAT methods.

The paper tackles the scaling behavior of quantization-aware training (QAT) for large language models, particularly at 4-bit precision, by proposing a unified scaling law and conducting 268 experiments to show that quantization error decreases with model size but increases with more training tokens and coarser granularity, identifying activation outliers in the FC2 layer as the primary bottleneck.

Large language models (LLMs) demand substantial computational and memory resources, creating deployment challenges. Quantization-aware training (QAT) addresses these challenges by reducing model precision while maintaining performance. However, the scaling behavior of QAT, especially at 4-bit precision (W4A4), is not well understood. Existing QAT scaling laws often ignore key factors such as the number of training tokens and quantization granularity, which limits their applicability. This paper proposes a unified scaling law for QAT that models quantization error as a function of model size, training data volume, and quantization group size. Through 268 QAT experiments, we show that quantization error decreases as model size increases, but rises with more training tokens and coarser quantization granularity. To identify the sources of W4A4 quantization error, we decompose it into weight and activation components. Both components follow the overall trend of W4A4 quantization error, but with different sensitivities. Specifically, weight quantization error increases more rapidly with more training tokens. Further analysis shows that the activation quantization error in the FC2 layer, caused by outliers, is the primary bottleneck of W4A4 QAT quantization error. By applying mixed-precision quantization to address this bottleneck, we demonstrate that weight and activation quantization errors can converge to similar levels. Additionally, with more training data, weight quantization error eventually exceeds activation quantization error, suggesting that reducing weight quantization error is also important in such scenarios. These findings offer key insights for improving QAT research and development.

Code Implementations3 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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