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Deploying Open-Source Large Language Models: A performance Analysis

Published 23 Sep 2024 in cs.PF, cs.AI, and cs.LG | (2409.14887v4)

Abstract: Since the release of ChatGPT in November 2022, LLMs have seen considerable success, including in the open-source community, with many open-weight models available. However, the requirements to deploy such a service are often unknown and difficult to evaluate in advance. To facilitate this process, we conducted numerous tests at the Centre Inria de l'Universit\'e de Bordeaux. In this article, we propose a comparison of the performance of several models of different sizes (mainly Mistral and LLaMa) depending on the available GPUs, using vLLM, a Python library designed to optimize the inference of these models. Our results provide valuable information for private and public groups wishing to deploy LLMs, allowing them to evaluate the performance of different models based on their available hardware. This study thus contributes to facilitating the adoption and use of these LLMs in various application domains.

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