利用能量收集对边缘网络进行分散式 LLM 推断

Aria Khoshsirat, Giovanni Perin, Michele Rossi
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引用次数: 0

摘要

大型语言模型在自然语言任务中的卓越表现极大地改变了多个领域,但在边缘网络等资源受限的环境中部署这些模型仍是一项挑战。分散式推理技术已经出现,它将模型块分配给多个设备,以提高灵活性和成本效益。然而,能源限制仍然是边缘设备面临的一个重大问题。我们提出了一种可持续模型,用于在互联的、由电池供电的边缘设备上通过能量收集进行协作推理。考虑到处理参数和平均绿色能源到达量,我们开发了一个马尔可夫模型来描述设备的状态。这为调度算法的设计提供了依据,调度算法的目标是最大限度地减少设备掉电时间,最大限度地提高网络吞吐量。通过经验评估和模拟运行,我们验证了我们方法的有效性,为在边缘网络上实现高能效分散推理铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized LLM Inference over Edge Networks with Energy Harvesting
Large language models have significantly transformed multiple fields with their exceptional performance in natural language tasks, but their deployment in resource-constrained environments like edge networks presents an ongoing challenge. Decentralized techniques for inference have emerged, distributing the model blocks among multiple devices to improve flexibility and cost effectiveness. However, energy limitations remain a significant concern for edge devices. We propose a sustainable model for collaborative inference on interconnected, battery-powered edge devices with energy harvesting. A semi-Markov model is developed to describe the states of the devices, considering processing parameters and average green energy arrivals. This informs the design of scheduling algorithms that aim to minimize device downtimes and maximize network throughput. Through empirical evaluations and simulated runs, we validate the effectiveness of our approach, paving the way for energy-efficient decentralized inference over edge networks.
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