Skip to main content
abstract blue background

About ComSoc

The goal of the Network Intelligence (NI) ETI is to support and endorse research to embed Artificial Intelligence (AI) in future networks. Future networks need to have built-in (by design) embedded intelligence to allow better agility, resiliency, faster customization and security. Indeed, embedding Intelligence into the network will provide greater level of automation and adaptiveness, enabling faster deployment (from months down to minutes), dynamic provisioning adapted to the nature of network functions, and end-to-end orchestration for coherent deployment of IT and network infrastructures and service chains. It will also result in higher resiliency and better availability of future networks and services.

The aim of the Network Intelligence ETI is to bring together (cross-fertilization) competences in networks and in AI towards better, agile and dynamic smart networks that are becoming a must for the foreseen network transformation.

Chair: Imen Grida Yahia
Vice Chair: Mohamed Faten Zhani
Technical Program Chair: Noura Limam
Standards Liaison: Laurent Ciavaglia
Secretary: Weverton Cordeiro

Visit the Network Intelligence Emerging Technologies Initiative website.

Related content

Advanced Networking Technologies in the Battle Against the Outbreak of Epidemic Diseases

This special issue aims to explore recent advances and disseminate state-of-the-art research on advanced networking technologies for epidemic monitoring, virus tracking, prevention, control and treatment, and resource allocation.

Publication

Artificial Intelligence / Machine Learning Enabled Reconfigurable Wireless Networks

The Special issue will give emphasis on novel techniques for building reconfigurable wireless networks and coupling the technological advances in wireless networking with scientific innovations in AI and ML. This SI seeks contributions from experts in areas such as network programming, formal methods, control theory, distributed systems, machine learning, data science, data structures and algorithms, and optimization in the view of reconfigurable wireless networks as well as improving the performance of AI and ML solutions.

Publication

Wireless for the Internet of Things

Build the skills to create products for use with IoT applications, regardless of chosen platform.

Training