English

LinguaLinked: A Distributed Large Language Model Inference System for Mobile Devices

Machine Learning 2023-12-04 v1 Distributed, Parallel, and Cluster Computing Networking and Internet Architecture

Abstract

Deploying Large Language Models (LLMs) locally on mobile devices presents a significant challenge due to their extensive memory requirements. In this paper, we introduce LinguaLinked, a system for decentralized, distributed LLM inference on mobile devices. LinguaLinked enables collaborative execution of the inference task across multiple trusted devices. LinguaLinked ensures data privacy by processing information locally. LinguaLinked uses three key strategies. First, an optimized model assignment technique segments LLMs and uses linear optimization to align segments with each device's capabilities. Second, an optimized data transmission mechanism ensures efficient and structured data flow between model segments while also maintaining the integrity of the original model structure. Finally, LinguaLinked incorporates a runtime load balancer that actively monitors and redistributes tasks among mobile devices to prevent bottlenecks, enhancing the system's overall efficiency and responsiveness. We demonstrate that LinguaLinked facilitates efficient LLM inference while maintaining consistent throughput and minimal latency through extensive testing across various mobile devices, from high-end to low-end Android devices. In our evaluations, compared to the baseline, LinguaLinked achieves an inference performance acceleration of 1.11×1.11\times to 1.61×1.61\times in single-threaded settings, 1.73×1.73\times to 2.65×2.65\times with multi-threading. Additionally, runtime load balancing yields an overall inference acceleration of 1.29×1.29\times to 1.32×1.32\times.

Keywords

Cite

@article{arxiv.2312.00388,
  title  = {LinguaLinked: A Distributed Large Language Model Inference System for Mobile Devices},
  author = {Junchen Zhao and Yurun Song and Simeng Liu and Ian G. Harris and Sangeetha Abdu Jyothi},
  journal= {arXiv preprint arXiv:2312.00388},
  year   = {2023}
}

Comments

16 pages, 8 figures

R2 v1 2026-06-28T13:38:05.912Z