LGOct 27, 2025

Block-Diagonal LoRA for Eliminating Communication Overhead in Tensor Parallel LoRA Serving

arXiv:2510.23346v1h-index: 16
Originality Incremental advance
AI Analysis

This addresses the problem of efficient multi-adapter serving in LLMs for practitioners, offering a practical improvement over existing methods like S-LoRA.

The paper tackles the communication overhead in serving multiple LoRA adapters with a base LLM by proposing block-diagonal LoRA, which eliminates additional communication and achieves significant speed-ups, such as up to 1.79x end-to-end speed-up on eight A100 GPUs for Llama-3.1-70B.

When serving a single base LLM with several different LoRA adapters simultaneously, the adapters cannot simply be merged with the base model's weights as the adapter swapping would create overhead and requests using different adapters could not be batched. Rather, the LoRA computations have to be separated from the base LLM computations, and in a multi-device setup the LoRA adapters can be sharded in a way that is well aligned with the base model's tensor parallel execution, as proposed in S-LoRA. However, the S-LoRA sharding strategy encounters some communication overhead, which may be small in theory, but can be large in practice. In this paper, we propose to constrain certain LoRA factors to be block-diagonal, which allows for an alternative way of sharding LoRA adapters that does not require any additional communication for the LoRA computations. We demonstrate in extensive experiments that our block-diagonal LoRA approach is similarly parameter efficient as standard LoRA (i.e., for a similar number of parameters it achieves similar downstream performance) and that it leads to significant end-to-end speed-up over S-LoRA. For example, when serving on eight A100 GPUs, we observe up to 1.79x (1.23x) end-to-end speed-up with 0.87x (1.74x) the number of adapter parameters for Llama-3.1-70B, and up to 1.63x (1.3x) end-to-end speed-up with 0.86x (1.73x) the number of adapter parameters for Llama-3.1-8B.

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