AutoRank: MCDA Based Rank Personalization for LoRA-Enabled Distributed Learning
Shuaijun Chen, Omid Tavallaie, Niousha Nazemi, Xin Chen, Albert Y., Zomaya

TL;DR
AutoRank introduces an adaptive, data-driven method for setting local ranks in LoRA-enabled distributed learning, improving efficiency and personalization in heterogeneous, non-IID data environments.
Contribution
It proposes AutoRank, an MCDA-based algorithm that automatically determines optimal local ranks, reducing manual tuning and enhancing distributed learning performance.
Findings
AutoRank reduces computational overhead significantly.
It improves model accuracy in heterogeneous data settings.
AutoRank accelerates convergence in federated learning environments.
Abstract
As data volumes expand rapidly, distributed machine learning has become essential for addressing the growing computational demands of modern AI systems. However, training models in distributed environments is challenging with participants hold skew, Non-Independent-Identically distributed (Non-IID) data. Low-Rank Adaptation (LoRA) offers a promising solution to this problem by personalizing low-rank updates rather than optimizing the entire model, LoRA-enabled distributed learning minimizes computational and maximize personalization for each participant. Enabling more robust and efficient training in distributed learning settings, especially in large-scale, heterogeneous systems. Despite the strengths of current state-of-the-art methods, they often require manual configuration of the initial rank, which is increasingly impractical as the number of participants grows. This manual tuning…
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Taxonomy
TopicsRobotics and Automated Systems · Context-Aware Activity Recognition Systems
