摘要
Special Issue on Distributed Next Generation 5G Data Networks Introduction of the special issue:The eminent growth in connected devices technologies,like the Internet of Things(IoT),5th generation(5G)and beyond communication systems,lead to innovations for human beings.The uninterrupted data communication services play diverse roles in the mobile user’s routine life.The various changing user group patterns are unpredictable due to the day-by-day up-gradation of user devices.Even though the existing telecommunication services have upgraded up to 5G with high performance distributed computing(HPDC)in the distributed data networks(DDN)for ultra-reliable and low latency communication(URLLC)services,yet the backend distributed database systems(DDS)are facing serious security and privacy issues due to lack of federated intelligence in the data networks.Recently,we have seen an increased focus and effort by users and policymakers toward enhancing security and privacy related to the collection and usage of the data in DDNs.When it comes to the intelligence using machine/deep learning(ML/DL)of the HPDC systems for security and privacy,enough dataset is required,which often includes personal user information to train ML/DL models.As data privacy and security represents a growing critical concern,given the above-mentioned new areas of legislation and policies,novel ML methodologies like federated learning(FL)have been developed in part to address these concerns.