Machine Learning and Deep Learning Algorithms for Network Data Analytics Function in 5G Cellular Networks

Ale Pavani, A. Kathirvel
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引用次数: 1

Abstract

Machine learning and deep learning algorithms have the potential to revolutionize network data analytics in 5G cellular networks. With the increase in the number of connected devices and the explosion of data generated by these devices, traditional methods of network data analytics are becoming increasingly inadequate. However, this function faces several challenges, including managing massive amounts of data, processing data in real-time, addressing privacy concerns, integrating with other network systems, and requiring skilled professionals. Overcoming these challenges will enable the network data analytics function to achieve its objectives and improve the overall performance and reliability of 5G cellular networks. Machine learning and deep learning algorithms enable the automatic identification of patterns and insights in large volumes of data, thereby facilitating real-time decision-making and proactive network management. These algorithms can be used for a wide range of network data analytics functions, including network optimization, anomaly detection, prediction of network failures, and dynamic spectrum management. Deep learning algorithms have shown significant promise in processing unstructured network data such as network logs, video, and images. As the 5G network continues to grow and evolve, the use of machine learning and deep learning algorithms in network data analytics is likely to become increasingly essential for ensuring network efficiency, reliability, and security.
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5G蜂窝网络中网络数据分析功能的机器学习和深度学习算法
机器学习和深度学习算法有可能彻底改变5G蜂窝网络中的网络数据分析。随着连接设备数量的增加和这些设备产生的数据的爆炸式增长,传统的网络数据分析方法越来越不适用。然而,该功能面临着一些挑战,包括管理大量数据、实时处理数据、解决隐私问题、与其他网络系统集成以及需要熟练的专业人员。克服这些挑战将使网络数据分析功能能够实现其目标,并提高5G蜂窝网络的整体性能和可靠性。机器学习和深度学习算法能够自动识别大量数据中的模式和见解,从而促进实时决策和主动网络管理。这些算法可用于广泛的网络数据分析功能,包括网络优化、异常检测、网络故障预测和动态频谱管理。深度学习算法在处理非结构化网络数据(如网络日志、视频和图像)方面显示出了巨大的前景。随着5G网络的不断发展和演进,在网络数据分析中使用机器学习和深度学习算法对于确保网络效率、可靠性和安全性可能变得越来越重要。
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