Towards Specialized Wireless Networks Using an ML-Driven Radio Interface
Kamil Szczech, Maksymilian Wojnar, Katarzyna Kosek-Szott, Krzysztof, Rusek, Szymon Szott, Dileepa Marasinghe, Nandana Rajatheva, Richard Combes,, Francesc Wilhelmi, Anders Jonsson, Boris Bellalta

TL;DR
This paper proposes SpecNets, specialized wireless networks with AI/ML-driven radios that adapt dynamically to diverse applications and scenarios, demonstrated through use cases and a lightweight ML agent for industrial WLANs.
Contribution
Introduction of SpecNets concept, integrating MLDR interfaces for autonomous adaptation in wireless networks, with practical use cases and a novel ML agent for channel optimization.
Findings
Significant performance gains over IEEE 802.11 in industrial WLAN scenario.
ML agent achieves fast convergence and dynamic optimization.
SpecNets enable autonomous adaptability across diverse wireless scenarios.
Abstract
Future wireless networks will need to support diverse applications (such as extended reality), scenarios (such as fully automated industries), and technological advances (such as terahertz communications). Current wireless networks are designed to perform adequately across multiple scenarios so they lack the adaptability needed for specific use cases. Therefore, meeting the stringent requirements of next-generation applications incorporating technology advances and operating in novel scenarios will necessitate wireless specialized networks which we refer to as SpecNets. These networks, equipped with cognitive capabilities, dynamically adapt to the unique demands of each application, e.g., by automatically selecting and configuring network mechanisms. An enabler of SpecNets are the recent advances in artificial intelligence and machine learning (AI/ML), which allow to continuously learn…
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