English

ITERA-LLM: Boosting Sub-8-Bit Large Language Model Inference via Iterative Tensor Decomposition

Hardware Architecture 2025-05-15 v1

Abstract

Recent advancements in Large Language Models (LLMs) have demonstrated impressive capabilities as their scale expands to billions of parameters. Deploying these large-scale models on resource-constrained platforms presents significant challenges, with post-training fixed-point quantization often used as a model compression technique. However, quantization-only methods typically lead to significant accuracy degradation in LLMs when precision falls below 8 bits. This paper addresses this challenge through a software-hardware co-design framework, ITERA-LLM, which integrates sub-8-bit quantization with SVD-based iterative low-rank tensor decomposition for error compensation, leading to higher compression ratios and reduced computational complexity. The proposed approach is complemented by a hardware-aware Design Space Exploration (DSE) process that optimizes accuracy, latency, and resource utilization, tailoring the configuration to the specific requirements of the targeted LLM. Our results show that ITERA-LLM achieves linear layer latency reduction of up to 41.1%, compared to quantization-only baseline approach while maintaining similar model accuracy.

Keywords

Cite

@article{arxiv.2505.08981,
  title  = {ITERA-LLM: Boosting Sub-8-Bit Large Language Model Inference via Iterative Tensor Decomposition},
  author = {Keran Zheng and Yinting Huang and Zhewen Yu and Christos-Savvas Bouganis},
  journal= {arXiv preprint arXiv:2505.08981},
  year   = {2025}
}
R2 v1 2026-06-28T23:32:17.364Z