Dear All, Due to the numerous requests, submission deadline to the special issue on “Edge Intelligence for 6G Networks” – Elsevier Journal on Computer Communications has been extended to December 20, 2021. Moreover, note this special issue is supported by the IEEE Network Intelligence Emerging Technologies initiative (IEEE NI ETI) - http://ni.committees.comsoc.org. More details are available on: and also described below. We look forward to your submissions! Best regards, Nabeel Akhtar, Akamai Technologies Inc, USA Salvatore D’Oro, Northeastern University, USA Christian Grasso, University of Catania, Italy Giovanni Schembra, University of Catania Michael Seufert, University of Würzburg, Germany Guest Editors of the Journal on Computer Communications Special Issue on “Edge Intelligence for 6G Networks” ------------------------- CUT HERE --------------------------- Elsevier Journal on Computer Communications Special Issue on “Edge Intelligence for 6G Networks” (https://www.journals.elsevier.com/computer-communications/call-for-papers/special-issue-on-edge-intelligence-for-6g-networks) supported by IEEE Network Intelligence Emerging Technologies initiative (IEEE NI ETI) - http://ni.committees.comsoc.org In the last few years, due to the increasing evolution of the IoT, a lot of new services and applications with heterogeneous characteristics in terms of generated traffic, mobility and different Quality of Service (QoS) requirements have been conceived. This will result in a huge amount of data transmission on the next-generation communication network nodes. In this scenario, a real time adaptation to network conditions changes to providing quality user experience in ultra-dense and uncoordinated future networks plays an important role. For these reasons, the use of solutions based on data-driven machine learning and AI techniques is fundamental. Although the capabilities offered by the remote cloud satisfy the current resource and energy hungry requirements of AI due to the big data to be analyzed, with the implementation of Edge Computing paradigm, the possibility to consider the highly distributed AI solutions with small memory footprint is fundamental. The combined use of AI and Edge Computing allows the birth of Edge Intelligence, with the purpose of moving the intelligence from the central cloud to the edge resources, enabling the Intelligent Internet of Intelligent Things (IIoIT). The Edge Intelligence provides an efficient way to manage various aspects of the edge computing approach, from resource management to the organization of data produced by devices, along with the instantiation of suitable software for computational and storage facilities of the edge. This special issue will be devoted to both the theoretical and the practical evaluations related to the design, analysis and implementation of AI techniques applied at the Edge of the network. Topics of interest include, but are not limited to: · Enabling technologies for Edge Intelligence: SDN, NFV, Edge Computing, AI/ML techniques · Data-driven management of software defined networks in Edge Computing context · Deep and Reinforcement learning for networking and communications at the Edge of in 6G networks · Decision making mechanisms at the Edge · AI/ML for network management and orchestration at the Edge of future networks · Intelligent energy-aware/green resource management at the Edge · AI/ML support for ultra-low latency applications at the Edge of the network · Reliability, robustness and safety based on AI/ML techniques at the Edge · AI/ML for IoIT and IIoIT · Open-source networking optimization tools for Edge Intelligence · Modeling and performance evaluation for Intelligent Internet of Intelligence Things · AI/ML for optimization of network slicing extension toward the Edge in future networks · Novel application scenarios for Edge Intelligence · AI/ML for service placement and dynamic Service Function Chaining in the Edge Computing scenario · Self-learning and adaptive networking protocols and algorithms for 6G Edge nodes · Innovative architectures and infrastructures for Edge Intelligence
|
Archivio con motore MhonArc 2.6.16.