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From 2:4 to 8:16 sparsity patterns in LLMs for Outliers and Weights with Variance Correction

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As large language models (LLMs) grow in size, efficient compression techniques like quantization and sparsification are critical. While quantization maintains performance with reduced precision, structured sparsity methods, such as N:M sparsification, often fall short due to limited flexibility, and sensitivity to outlier weights. We explore 8:16 semi-structured sparsity, demonstrating its ability to surpass the Performance Threshold-where a compressed model matches the accuracy of its uncompressed or smaller counterpart under equivalent memory constraints. Compared to 2:4 sparsity, 8:16 offers greater flexibility with minimal storage overhead (0.875 vs. 0.75 bits/element). We also apply sparse structured patterns for salient weights, showing that structured sparsity for outliers is competitive with unstructured approaches leading to equivalent or better results. Finally, we demonstrate that simple techniques such as variance correction and SmoothQuant like weight equalization improve sparse models performance.

Egor Maximov, Yulia Kuzkina, Azamat Kanametov, Alexander Prutko, Aleksei Goncharov, Maxim Zhelnin, Egor Shvetsov• 2025

Related benchmarks

TaskDatasetResultRank
Zero-shot ReasoningReasoning Suite (ARC-e, ARC-c, HellaSwag, PIQA, Winogrande) zero-shot
Average Reasoning Score6.54e+3
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Language ModelingWikiText-2
Perplexity (PPL)5.82
40
Zero-shot Language UnderstandingARC-c, ARC-e, PIQA, Winogrande, Hellaswag
Mean Accuracy6.26e+3
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