Fed-HeLLo: Efficient Federated Foundation Model Fine-Tuning with Heterogeneous LoRA Allocation
Zikai Zhang, Ping Liu, Jiahao Xu, Rui Hu

TL;DR
Fed-HeLLo introduces a resource-aware federated fine-tuning framework for foundation models, employing heterogeneous LoRA layer allocation strategies that adapt to client capabilities and improve performance across diverse data distributions.
Contribution
The paper proposes a novel federated LoRA fine-tuning method with adaptive heterogeneous layer allocation strategies based on resource and layer importance, enhancing efficiency and effectiveness.
Findings
Effective across five datasets with diverse data distributions.
Improves model accuracy with resource-aware layer allocation.
Demonstrates efficiency and robustness in federated settings.
Abstract
Federated Learning has recently been utilized to collaboratively fine-tune foundation models across multiple clients. Notably, federated low-rank adaptation LoRA-based fine-tuning methods have recently gained attention, which allows clients to fine-tune FMs with a small portion of trainable parameters locally. However, most existing methods do not account for the heterogeneous resources of clients or lack an effective local training strategy to maximize global fine-tuning performance under limited resources. In this work, we propose Fed-HeLLo, a novel federated LoRA-based fine-tuning framework that enables clients to collaboratively fine-tune an FM with different local trainable LoRA layers. To ensure its effectiveness, we develop several heterogeneous LoRA allocation (HLA) strategies that adaptively allocate local trainable LoRA layers based on clients' resource capabilities and the…
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Taxonomy
Topics3D Modeling in Geospatial Applications
