DCAILGPFMay 6, 2025

Prism: Unleashing GPU Sharing for Cost-Efficient Multi-LLM Serving

arXiv:2505.04021v226 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses cost efficiency for providers hosting many LLMs, though it is incremental as it builds on existing GPU sharing systems.

The paper tackles the high cost of serving multiple large language models (LLMs) by introducing Prism, a system that enables GPU sharing with dynamic memory coordination, achieving over 2x cost savings and 3.3x SLO attainment compared to state-of-the-art systems.

Serving large language models (LLMs) is expensive, especially for providers hosting many models, making cost reduction essential. The unique workload patterns of serving multiple LLMs (i.e., multi-LLM serving) create new opportunities and challenges for this task. The long-tail popularity of models and their long idle periods present opportunities to improve utilization through GPU sharing. However, existing GPU sharing systems lack the ability to adjust their resource allocation and sharing policies at runtime, making them ineffective at meeting latency service-level objectives (SLOs) under rapidly fluctuating workloads. This paper presents Prism, a multi-LLM serving system that unleashes the full potential of GPU sharing to achieve both cost efficiency and SLO attainment. At its core, Prism tackles a key limitation of existing systems$\unicode{x2014}$the lack of $\textit{cross-model memory coordination}$, which is essential for flexibly sharing GPU memory across models under dynamic workloads. Prism achieves this with two key designs. First, it supports on-demand memory allocation by dynamically mapping physical to virtual memory pages, allowing flexible memory redistribution among models that space- and time-share a GPU. Second, it improves memory efficiency through a two-level scheduling policy that dynamically adjusts sharing strategies based on models' runtime demands. Evaluations on real-world traces show that Prism achieves more than $2\times$ cost savings and $3.3\times$ SLO attainment compared to state-of-the-art systems.

Foundations

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