网络与聊天技术:意图自主管理、控制和操作

Jingyu Wang;Lei Zhang;Yiran Yang;Zirui Zhuang;Qi Qi;Haifeng Sun;Lu Lu;Junlan Feng;Jianxin Liao
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引用次数: 1

摘要

由于互联网技术、移动设备、有竞争力的定价和不断变化的客户偏好的不断进步,电信业经历了重大变革。具体而言,OpenAI的大型语言模型聊天生成预训练转换器(ChatGPT)的最新迭代有可能推动电信行业的创新和提高运营绩效。目前,对网络资源管理、控制和运营的探索还处于初级阶段。在本文中,我们提出了一种新的网络人工智能架构,称为网络流量语言模型(NetLM),这是一种基于转换器的大型语言模型,旨在理解网络分组数据中的序列结构并捕捉其潜在的动态。知识空间和人工智能技术的不断融合构成了智能网络管理和控制的核心。多模态表示学习用于将网络指标数据、交通数据和文本数据的多模态信息统一到同一特征空间中。此外,提出了一种基于NetLM的控制策略生成框架,以通过不同的抽象级别来逐步细化意图。最后,给出了NetLM可以为电信行业带来利益的一些潜在案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Meets ChatGPT: Intent Autonomous Management, Control and Operation
Telecommunication has undergone significant transformations due to the continuous advancements in internet technology, mobile devices, competitive pricing, and changing customer preferences. Specifically, the most recent iteration of OpenAI's large language model chat generative pre-trained transformer (ChatGPT) has the potential to propel innovation and bolster operational performance in the telecommunications sector. Nowadays, the exploration of network resource management, control, and operation is still in the initial stage. In this paper, we propose a novel network artificial intelligence architecture named language model for network traffic (NetLM), a large language model based on a transformer designed to understand sequence structures in the network packet data and capture their underlying dynamics. The continual convergence of knowledge space and artificial intelligence (AI) technologies constitutes the core of intelligent network management and control. Multi-modal representation learning is used to unify the multi-modal information of network indicator data, traffic data, and text data into the same feature space. Furthermore, a NetLM-based control policy generation framework is proposed to refine intent incrementally through different abstraction levels. Finally, some potential cases are provided that NetLM can benefit the telecom industry.
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