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candidate will explore programmable, AI-enhanced networking frameworks designed to meet the evolving demands of Industry 5.0. This includes developing novel architectures that combine Software-Defined
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. The department leverages its unique research infrastructure and lab facilities to conduct world-leading fundamental and applied research within communication, networks, control systems, AI, sound, cyber security
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focus on factory and line level, where three research topics are defined: 1) Conceptual design principles and methods for resilient manufacturing systems. This topic will build upon existing theory
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revolutionize communication systems for the quantum age. As quantum technologies rapidly advance, CLASSIQUE focuses on a critical challenge: how to evolve classical communication networks to support both
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individual processes to entire manufacturing systems. The PhD projects will all focus on factory and line level, where three research topics are defined: 1) Conceptual design principles and methods
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networks. In the Future Network Services (FNS) program, leading ICT- and semiconductor companies and research institutions will jointly research specific parts of 6G: software antennas, AI-driven network
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of components of the software systems running on distributed systems, e.g., data centers, grid architectures, sensor networks and other distributed cyber-physical infrastructures. Based on measured energy
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informing users and the network of new settings. The goal is to define an adaptive multicast framework leveraging error correction and machine learning to optimize parameters in real time [8]. 1.2. Scientific
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probabilistic and epistemic uncertainties by defining sets of probability distributions, for the quantitative verification of neural networks. This approach provides qualitative measures of how likely the outputs
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interpretable/explainable AI Software defined networking, network virtualization and network slicing for wireless networks Energy-efficient communication technologies Energy harvesting, SWIPT, backscatter