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Towards Pareto Optimal Throughput in Small Language Model Serving

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arxiv 2404.03353 v3 pith:KOED263Z submitted 2024-04-04 cs.CL

Towards Pareto Optimal Throughput in Small Language Model Serving

classification cs.CL
keywords languageservingsmallmodelsslmsllmsmemorymodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Large language models (LLMs) have revolutionized the state-of-the-art of many different natural language processing tasks. Although serving LLMs is computationally and memory demanding, the rise of Small Language Models (SLMs) offers new opportunities for resource-constrained users, who now are able to serve small models with cutting-edge performance. In this paper, we present a set of experiments designed to benchmark SLM inference at performance and energy levels. Our analysis provides a new perspective in serving, highlighting that the small memory footprint of SLMs allows for reaching the Pareto-optimal throughput within the resource capacity of a single accelerator. In this regard, we present an initial set of findings demonstrating how model replication can effectively improve resource utilization for serving SLMs.

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