Autor: |
Corcuera Bárcena, José Luis, Daole, Mattia, Ducange, Pietro, Marcelloni, Francesco, Nardini, Giovanni, Renda, Alessandro, Stea, Giovanni |
Rok vydání: |
2023 |
Předmět: |
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Popis: |
The next generation of mobile networks is poised to rely extensively on Artificial Intelligence (AI) to deliver innovative services. However, it is crucial for AI systems to fulfill key requirements such as trustworthiness, inclusiveness, and sustainability. Starting from these requirements, we conducted research on the Federated Learning of eXplainable AI (Fed-XAI) models within the Hexa-X EU Flagship Project for 6G. This paper focuses on the implementation of a real-time testbed, serving as a proof of concept for the Fed-XAI paradigm. The testbed utilizes genuine applications and real devices that interact with a mobile network, simulated using the Simu5G simulator. Its primary objective is to provide explainable predictions regarding video-streaming quality in an automotive scenario. |
Databáze: |
OpenAIRE |
Externí odkaz: |
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