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FlashSVD: Memory-Efficient Inference with Streaming for Low-Rank Models

Machine Learning 2025-08-05 v1 Artificial Intelligence Performance

Abstract

Singular Value Decomposition (SVD) has recently seen a surge of interest as a simple yet powerful tool for large language models (LLMs) compression, with a growing number of works demonstrating 20-80% parameter reductions at minimal accuracy loss. Previous SVD-based approaches have focused primarily on reducing the memory footprint of model weights, largely overlooking the additional activation memory overhead incurred during inference when applying truncated factors via standard dense CUDA kernels. Our experiments demonstrate that this activation overhead, scaling with sequence length and hidden dimension, prevents current SVD compression techniques from achieving any reduction in peak inference memory, thereby limiting their viability for real-world, on-device deployments. We introduce FlashSVD, a novel, end-to-end rank-aware streaming inference framework specifically designed for SVD-compressed large language models. FlashSVD can be seamlessly integrated with any model that employs SVD-based methods for parameter reduction. By fusing low-rank projection kernels directly into both the self-attention and feed-forward network (FFN) pipelines, FlashSVD avoid materializing full-size activation buffers. Instead, small tiles of the truncated factors are loaded into on-chip SRAM, multiplied and reduced on the fly, and immediately evicted, preserving high GPU occupancy and adding no extra latency. On standard encoder benchmarks (e.g., BERT-Base), FlashSVD cuts peak activation memory by up to 70.2% and intermediate transient memory by 75%, all while incur no accuracy loss with upstreaming compression methods, offering a practical path toward memory-constrained deployment of low-rank LLMs.

Keywords

Cite

@article{arxiv.2508.01506,
  title  = {FlashSVD: Memory-Efficient Inference with Streaming for Low-Rank Models},
  author = {Zishan Shao and Yixiao Wang and Qinsi Wang and Ting Jiang and Zhixu Du and Hancheng Ye and Danyang Zhuo and Yiran Chen and Hai Li},
  journal= {arXiv preprint arXiv:2508.01506},
  year   = {2025}
}

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Technical Report

R2 v1 2026-07-01T04:31:22.448Z