Key points are not available for this paper at this time.
Efficient adaption of large language models (LLMs) on edge devices is essential for applications requiring continuous and privacy-preserving adaptation and inference. However, existing tuning techniques fall short because of the high computation and memory overhead. To this end, we introduce a computation- and memory-efficient LLM tuning framework, called Edge-LLM, to facilitate affordable and effective LLM adaptation on edge devices. Specifically, Edge-LLM features three core components: (1) a layer-wise unified compression (LUC) technique to reduce the computation overhead by generating layer-wise pruning sparsity and quantization bit-width policies, (2) an adaptive layer tuning and voting scheme to reduce the memory overhead by reducing the backpropagation depth, and (3) a complementary hardware scheduling strategy to handle the irregular computation patterns introduced by LUC and adaptive layer tuning, thereby achieving improved real hardware efficiency. Extensive experiments demonstrate that Edge-LLM achieves on-device adaptation with comparable task accuracy as vanilla tuning methods with a 2.92× speed up and a 4× reduction in memory overhead. Our code is available at https://github.com/GATECH-EIC/Edge-LLM
Yu et al. (Sun,) studied this question.