LLM at Network Edge: ALayer-wise Efficient Federated Fine-tuning Approach
–Neural Information Processing Systems
Fine-tuning large language models (LLMs) poses significant computational burdens, especially in federated learning (FL) settings. We introduce Layer-wise Efficient Federated Fine-tuning (LEFF), a novel method designed to enhance the efficiency of FL fine-tuning while preserving model performance and minimizing client-side computational overhead. LEFF strategically selects layers for finetuning based on client computational capacity, thereby mitigating the straggler effect prevalent in heterogeneous environments. Furthermore, LEFF incorporates an importance-driven layer sampling mechanism, prioritizing layers with greater influence on model performance. Theoretical analysis demonstrates that LEFF achieves a convergence rate of O(1/ T). Extensive experiments on diverse datasets demonstrate that LEFF attains superior computational efficiency and model performance compared to existing federated fine-tuning methods, particularly under heterogeneous conditions.
Neural Information Processing Systems
Jun-20-2026, 03:48:23 GMT
- Genre:
- Research Report
- New Finding (1.00)
- Experimental Study (1.00)
- Promising Solution (0.66)
- Research Report
- Industry:
- Education (0.94)
- Information Technology (0.67)
- Technology: