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Main Authors: Zhou, Hao, Hu, Chengming, Yuan, Ye, Cui, Yufei, Jin, Yili, Chen, Can, Wu, Haolun, Yuan, Dun, Jiang, Li, Wu, Di, Liu, Xue, Zhang, Charlie, Wang, Xianbin, Liu, Jiangchuan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.10825
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author Zhou, Hao
Hu, Chengming
Yuan, Ye
Cui, Yufei
Jin, Yili
Chen, Can
Wu, Haolun
Yuan, Dun
Jiang, Li
Wu, Di
Liu, Xue
Zhang, Charlie
Wang, Xianbin
Liu, Jiangchuan
author_facet Zhou, Hao
Hu, Chengming
Yuan, Ye
Cui, Yufei
Jin, Yili
Chen, Can
Wu, Haolun
Yuan, Dun
Jiang, Li
Wu, Di
Liu, Xue
Zhang, Charlie
Wang, Xianbin
Liu, Jiangchuan
contents Large language models (LLMs) have received considerable attention recently due to their outstanding comprehension and reasoning capabilities, leading to great progress in many fields. The advancement of LLM techniques also offers promising opportunities to automate many tasks in the telecommunication (telecom) field. After pre-training and fine-tuning, LLMs can perform diverse downstream tasks based on human instructions, paving the way to artificial general intelligence (AGI)-enabled 6G. Given the great potential of LLM technologies, this work aims to provide a comprehensive overview of LLM-enabled telecom networks. In particular, we first present LLM fundamentals, including model architecture, pre-training, fine-tuning, inference and utilization, model evaluation, and telecom deployment. Then, we introduce LLM-enabled key techniques and telecom applications in terms of generation, classification, optimization, and prediction problems. Specifically, the LLM-enabled generation applications include telecom domain knowledge, code, and network configuration generation. After that, the LLM-based classification applications involve network security, text, image, and traffic classification problems. Moreover, multiple LLM-enabled optimization techniques are introduced, such as automated reward function design for reinforcement learning and verbal reinforcement learning. Furthermore, for LLM-aided prediction problems, we discussed time-series prediction models and multi-modality prediction problems for telecom. Finally, we highlight the challenges and identify the future directions of LLM-enabled telecom networks.
format Preprint
id arxiv_https___arxiv_org_abs_2405_10825
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Large Language Model (LLM) for Telecommunications: A Comprehensive Survey on Principles, Key Techniques, and Opportunities
Zhou, Hao
Hu, Chengming
Yuan, Ye
Cui, Yufei
Jin, Yili
Chen, Can
Wu, Haolun
Yuan, Dun
Jiang, Li
Wu, Di
Liu, Xue
Zhang, Charlie
Wang, Xianbin
Liu, Jiangchuan
Systems and Control
Machine Learning
Large language models (LLMs) have received considerable attention recently due to their outstanding comprehension and reasoning capabilities, leading to great progress in many fields. The advancement of LLM techniques also offers promising opportunities to automate many tasks in the telecommunication (telecom) field. After pre-training and fine-tuning, LLMs can perform diverse downstream tasks based on human instructions, paving the way to artificial general intelligence (AGI)-enabled 6G. Given the great potential of LLM technologies, this work aims to provide a comprehensive overview of LLM-enabled telecom networks. In particular, we first present LLM fundamentals, including model architecture, pre-training, fine-tuning, inference and utilization, model evaluation, and telecom deployment. Then, we introduce LLM-enabled key techniques and telecom applications in terms of generation, classification, optimization, and prediction problems. Specifically, the LLM-enabled generation applications include telecom domain knowledge, code, and network configuration generation. After that, the LLM-based classification applications involve network security, text, image, and traffic classification problems. Moreover, multiple LLM-enabled optimization techniques are introduced, such as automated reward function design for reinforcement learning and verbal reinforcement learning. Furthermore, for LLM-aided prediction problems, we discussed time-series prediction models and multi-modality prediction problems for telecom. Finally, we highlight the challenges and identify the future directions of LLM-enabled telecom networks.
title Large Language Model (LLM) for Telecommunications: A Comprehensive Survey on Principles, Key Techniques, and Opportunities
topic Systems and Control
Machine Learning
url https://arxiv.org/abs/2405.10825