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Autores principales: Karapantelakis, Athanasios, Thakur, Mukesh, Nikou, Alexandros, Moradi, Farnaz, Orlog, Christian, Gaim, Fitsum, Holm, Henrik, Nimara, Doumitrou Daniil, Huang, Vincent
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2404.02929
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author Karapantelakis, Athanasios
Thakur, Mukesh
Nikou, Alexandros
Moradi, Farnaz
Orlog, Christian
Gaim, Fitsum
Holm, Henrik
Nimara, Doumitrou Daniil
Huang, Vincent
author_facet Karapantelakis, Athanasios
Thakur, Mukesh
Nikou, Alexandros
Moradi, Farnaz
Orlog, Christian
Gaim, Fitsum
Holm, Henrik
Nimara, Doumitrou Daniil
Huang, Vincent
contents The Third Generation Partnership Project (3GPP) has successfully introduced standards for global mobility. However, the volume and complexity of these standards has increased over time, thus complicating access to relevant information for vendors and service providers. Use of Generative Artificial Intelligence (AI) and in particular Large Language Models (LLMs), may provide faster access to relevant information. In this paper, we evaluate the capability of state-of-art LLMs to be used as Question Answering (QA) assistants for 3GPP document reference. Our contribution is threefold. First, we provide a benchmark and measuring methods for evaluating performance of LLMs. Second, we do data preprocessing and fine-tuning for one of these LLMs and provide guidelines to increase accuracy of the responses that apply to all LLMs. Third, we provide a model of our own, TeleRoBERTa, that performs on-par with foundation LLMs but with an order of magnitude less number of parameters. Results show that LLMs can be used as a credible reference tool on telecom technical documents, and thus have potential for a number of different applications from troubleshooting and maintenance, to network operations and software product development.
format Preprint
id arxiv_https___arxiv_org_abs_2404_02929
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Using Large Language Models to Understand Telecom Standards
Karapantelakis, Athanasios
Thakur, Mukesh
Nikou, Alexandros
Moradi, Farnaz
Orlog, Christian
Gaim, Fitsum
Holm, Henrik
Nimara, Doumitrou Daniil
Huang, Vincent
Computation and Language
Artificial Intelligence
The Third Generation Partnership Project (3GPP) has successfully introduced standards for global mobility. However, the volume and complexity of these standards has increased over time, thus complicating access to relevant information for vendors and service providers. Use of Generative Artificial Intelligence (AI) and in particular Large Language Models (LLMs), may provide faster access to relevant information. In this paper, we evaluate the capability of state-of-art LLMs to be used as Question Answering (QA) assistants for 3GPP document reference. Our contribution is threefold. First, we provide a benchmark and measuring methods for evaluating performance of LLMs. Second, we do data preprocessing and fine-tuning for one of these LLMs and provide guidelines to increase accuracy of the responses that apply to all LLMs. Third, we provide a model of our own, TeleRoBERTa, that performs on-par with foundation LLMs but with an order of magnitude less number of parameters. Results show that LLMs can be used as a credible reference tool on telecom technical documents, and thus have potential for a number of different applications from troubleshooting and maintenance, to network operations and software product development.
title Using Large Language Models to Understand Telecom Standards
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2404.02929