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) Type of Contract To be defined Job Status Full-time Hours Per Week 40 Offer Starting Date 1 Jul 2025 Is the job funded through the EU Research Framework Programme? Horizon Europe - MSCA Reference Number
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. Hyperbolic PDEs model processes such as flow in pipes, water/gas distribution networks, power grids, irrigation channels, and road traffic—essentially, systems with transport phenomena and delays. A challenge
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evaluate a methodological and software framework for molecular exploration, aimed at deciphering the subtle interactions between metabolites and gene expression. The ultimate objective is to enrich our
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)*, Lyon, France, 2020. 5. Matthias Preindl, Luiz Villa, Liwei Zhou, Matthew Jahnes, Jean Alinei, "Software-Defined Power Electronics: Theory and Study Cases," *ITEC+EATS 2022 Conference Short Course*. 6. A
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project, you will define and study the voter model in the geometric context of Riemannian manifolds. As networks we will use random graphs approximating Riemannian manifolds. The main goal is to investigate
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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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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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respect to drought and Nitrogen-deficiency. Next, the candidate will construct a predictive hybrid model by (a) retrieving estimates for performance and resilience-defining parameters from experimental time
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thematic areas: Control systems, computational intelligence and machine learning, autonomous systems, optimization and networks, embedded and real-time systems hardware and software, fault diagnosis, cyber
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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