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KurTail : Kurtosis-based LLM Quantization

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arxiv 2503.01483 v1 pith:DH7GMUQM submitted 2025-03-03 cs.LG

KurTail : Kurtosis-based LLM Quantization

classification cs.LG
keywords quantizationkurtailoutliersactivationskurtosis-basedmethodmmluoutperforms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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One of the challenges of quantizing a large language model (LLM) is the presence of outliers. Outliers often make uniform quantization schemes less effective, particularly in extreme cases such as 4-bit quantization. We introduce KurTail, a new post-training quantization (PTQ) scheme that leverages Kurtosis-based rotation to mitigate outliers in the activations of LLMs. Our method optimizes Kurtosis as a measure of tailedness. This approach enables the quantization of weights, activations, and the KV cache in 4 bits. We utilize layer-wise optimization, ensuring memory efficiency. KurTail outperforms existing quantization methods, offering a 13.3\% boost in MMLU accuracy and a 15.5\% drop in Wiki perplexity compared to QuaRot. It also outperforms SpinQuant with a 2.6\% MMLU gain and reduces perplexity by 2.9\%, all while reducing the training cost. For comparison, learning the rotation using SpinQuant for Llama3-70B requires at least four NVIDIA H100 80GB GPUs, whereas our method requires only a single GPU, making it a more accessible solution for consumer GPU.

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Cited by 2 Pith papers

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  1. When Quantization Is Free: An int4 KV Cache That Outruns fp16 on Apple Silicon

    cs.PF 2026-05 unverdicted novelty 7.0

    A single fused int4 KV cache kernel on Apple Silicon outperforms fp16 in latency with 3x memory compression and near-zero quality loss on tested models.

  2. The Illusion of Equivalency: Statistical Characterization of Quantization Effects in LLMs

    cs.AI 2026-07 conditional novelty 5.0

    Quantized LLMs diverge from their base models at the decision level even when accuracy is preserved, with query and key attention projections showing the greatest structural distortion under low-bit compression.