面向混合专家模型的功耗感知大语言模型服务系统 / PALS: Power-Aware LLM Serving for Mixture-of-Experts Models
1️⃣ 一句话总结
本文提出了一种名为PALS的功耗感知运行时系统,通过将GPU功率上限作为可调参数,与批次大小等软件配置联合优化,在保证服务吞吐量的前提下将大语言模型推理的能效最高提升26.3%,并显著降低了功耗约束下的服务质量违约率。
Large language model (LLM) inference has become a dominant workload in modern data centers, driving significant GPU utilization and energy consumption. While prior systems optimize throughput and latency by batching, scheduling, and parallelism, they largely treat GPU power as a static constraint rather than a controllable resource. In this paper, we present a power-aware runtime for LLM serving, PALS, that treats GPU power caps as a first-class control knob and jointly optimizes them with software parameters such as batch size. The system combines lightweight offline power-performance models with a feedback-driven controller to select configurations that satisfy throughput targets while maximizing energy efficiency. We implement PALS within an existing LLM serving framework, vLLM, demonstrating that it requires no model retraining or API changes. Across multi-GPU systems and both dense and mixture-of-experts (MoE) models, PALS improves energy efficiency by up to 26.3%, reduces QoS violations by 4x to 7x under power constraints, and tracks dynamic power budgets. These results highlight the potential of integrating power control directly into LLM inference runtimes, enabling energy-proportional and grid-interactive AI systems.
面向混合专家模型的功耗感知大语言模型服务系统 / PALS: Power-Aware LLM Serving for Mixture-of-Experts Models
本文提出了一种名为PALS的功耗感知运行时系统,通过将GPU功率上限作为可调参数,与批次大小等软件配置联合优化,在保证服务吞吐量的前提下将大语言模型推理的能效最高提升26.3%,并显著降低了功耗约束下的服务质量违约率。
源自 arXiv: 2605.21427