Low-Rank Adaptation Redux for Large Models
Bingcong Li, Yilang Zhang, Georgios B. Giannakis

TL;DR
This paper revisits Low-Rank Adaptation (LoRA) for large models, connecting it with signal processing principles to guide architectural choices, optimization, and applications.
Contribution
It provides a signal processing perspective on LoRA, categorizing advances into design, optimization, and application axes, and outlines future research directions.
Findings
SP principles inform LoRA design choices.
Categorization of LoRA advances into three axes.
Open research directions linking SP and deep learning.
Abstract
Low-rank adaptation (LoRA) has emerged as the de facto standard for parameter-efficient fine-tuning (PEFT) of foundation models, enabling the adaptation of billion-parameter networks with minimal computational and memory overhead. Despite its empirical success and rapid proliferation of variants, it remains elusive which architectural choices, optimization techniques, and deployment constraints should guide practical method selection. This overview revisits LoRA through the lens of signal processing (SP), bridging modern adapter designs with classical low-rank modeling tools and inverse problems, as well as highlighting how SP principles can inform principled advances of fine-tuning approaches. Rather than providing a comprehensive enumeration and empirical comparisons of LoRA variants, emphasis is placed on the technical mechanisms underpinning these approaches to justify their…
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