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An Empirical Study of NetOps Capability of Pre-Trained Large Language Models

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arxiv 2309.05557 v3 pith:RLQ4NY3A submitted 2023-09-11 cs.CL cs.AIcs.NI

An Empirical Study of NetOps Capability of Pre-Trained Large Language Models

classification cs.CL cs.AIcs.NI
keywords netopsllmsnetevalcapabilitiesmodelscapabilityhoweverlanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Nowadays, the versatile capabilities of Pre-trained Large Language Models (LLMs) have attracted much attention from the industry. However, some vertical domains are more interested in the in-domain capabilities of LLMs. For the Networks domain, we present NetEval, an evaluation set for measuring the comprehensive capabilities of LLMs in Network Operations (NetOps). NetEval is designed for evaluating the commonsense knowledge and inference ability in NetOps in a multi-lingual context. NetEval consists of 5,732 questions about NetOps, covering five different sub-domains of NetOps. With NetEval, we systematically evaluate the NetOps capability of 26 publicly available LLMs. The results show that only GPT-4 can achieve a performance competitive to humans. However, some open models like LLaMA 2 demonstrate significant potential.

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