透视通信网络中的分布式人工智能模型

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引用次数: 0

摘要

6G 技术将创建一个智能、高度可扩展、动态和可编程的无线网络,能够为各种异构无线设备提供服务。各种 6G 模块和设备将产生巨量的分布式数据,因此后 NGN(新一代网络)将需要实施大量机器学习方法,以解决极其复杂的网络问题。为了克服这些问题,可以采用分布式学习方法,让设备在不交换原始数据的情况下联合训练模型,从而降低通信成本和延迟,并提高数据隐私水平。分布式机器学习模型将在 6G 网络中发挥重要作用,因为与集中式方法相比,它们具有许多优势,但在资源受限的无线环境中实施分布式算法可能具有挑战性。必须考虑到与各种干扰因素和有限的无线(传输功率、射频频谱)和硬件资源(计算能力)相关的无线环境不确定性。因此,根据无线环境特征和学习过程的资源要求选择合适的机器学习算法非常重要。本文综述了分布式人工智能模型在新一代通信网络中的应用,以达到资源管理和数据处理的目的。文章介绍了分布式机器学习的一般算法和方法、应用、方法和模型。文章分析了分布式人工智能模型解决通信网络中各种问题的方法,包括优化资源使用和确保网络服务的高性能和可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DISTRIBUTED ARTIFICIAL INTELLIGENCE MODELS IN PERSPECTIVE COMMUNICATION NETWORKS
6G technology will create an intelligent, highly scalable, dynamic and programmable wireless network capable of serving a variety of heterogeneous wireless devices. Various 6G modules and devices will generate colossal amounts of distributed data, so post-NGN (New Generation Networks) will need to implement a number of machine learning methods that will solve significantly complicated network problems. To overcome these problems, distributed learning methods can be used, allowing devices to train models jointly, without exchanging raw data, which reduces communication costs, delays, and increases data privacy level as well. Distributed machine learning models will play an important role in 6G networks, since they have a number of advantages over centralized methods, however, the implementation of distributed algorithms in resource-constrained wireless environments can be challenging. It is important to take into account the wireless environment uncertainty associated with various disturbing factors and limited wireless (transmission power, radio frequency spectrum) and hardware resources (computing power). Consequently, it is important to choose the suitable machine learning algorithm based on the wireless environment characteristics and the resource requirements of the learning process. The article reviews the application of distributed artificial intelligence models in new generation communication networks for resource management and data processing purposes. The general algorithms and approaches of distributed machine learning, applications, methods and models are described. The article analyzes the ways in which distributed artificial intelligence models can solve various problems in communication networks, including optimizing resource use and ensuring high performance and availability of network services.
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