English

MACKO: Sparse Matrix-Vector Multiplication for Low Sparsity

Machine Learning 2025-11-18 v1 Artificial Intelligence Distributed, Parallel, and Cluster Computing Data Structures and Algorithms

Abstract

Sparse Matrix-Vector Multiplication (SpMV) is a fundamental operation in the inference of sparse Large Language Models (LLMs). Because existing SpMV methods perform poorly under the low and unstructured sparsity (30-90%) commonly observed in pruned LLMs, unstructured pruning provided only limited memory reduction and speedup. We propose MACKO-SpMV, a GPU-optimized format and kernel co-designed to reduce storage overhead while preserving compatibility with the GPU's execution model. This enables efficient SpMV for unstructured sparsity without specialized hardware units (e.g., tensor cores) or format-specific precomputation. Empirical results show that at sparsity 50%, MACKO is the first approach with significant 1.5x memory reduction and 1.2-1.5x speedup over dense representation. Speedups over other SpMV baselines: 2.8-13.0x over cuSPARSE, 1.9-2.6x over Sputnik, and 2.2-2.5x over DASP. Applied to Llama2-7B pruned with Wanda to sparsity 50%, it delivers 1.5x memory reduction and 1.5x faster inference at fp16 precision. Thanks to MACKO, unstructured pruning at 50% sparsity is now justified in real-world LLM workloads.

Keywords

Cite

@article{arxiv.2511.13061,
  title  = {MACKO: Sparse Matrix-Vector Multiplication for Low Sparsity},
  author = {Vladimír Macko and Vladimír Boža},
  journal= {arXiv preprint arXiv:2511.13061},
  year   = {2025}
}

Comments

8 pages + 7 pages appendix, 11 figures, Code available at https://github.com/vlejd/macko_spmv

R2 v1 2026-07-01T07:40:37.702Z