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Field
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adaptable networks. Recently we have developed different types of inherently flame retardant dynamic networks for fire safe fiber reinforced composites and self healing coatings. The proposed position will
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Contribute to open-source software and reproducible research artifacts Collaborate actively, fruitfully, and respectfully with the PIs, the HPC group, and partner institutions Contribute to teaching (max. one
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methods, which could include but are not limited to: Kriging surrogate, Polynomial Chaos Expansion (PCE), and Physics-Informed Neural Networks (PINNs) Contribute to the strategic direction of research
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, assumption management, and end-to-end traceability from specification fragments to generated SVAs and solver outcomes. You will also help define benchmarks and evaluation protocols (correctness, robustness
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projects in the field of analytics and maintain an extensive network with universities, research institutes, industry partners, and federal authorities – both nationally and internationally. The training
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tasks As part of the NCCR-Network, you will contribute to the project aims in the areas of shaped CO2 adsorbents and sorbent ageing. Within the framework of the NCCR project with well-defined objectives
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motivated team player who thrives in a collaborative and interdisciplinary research environment. The ideal candidate possesses a PhD degree in chemistry or chemical engineering, materials science, physics
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to evaluate emerging instrumentation and software and translate them into robust, scalable workflows. Alongside method development, the Zamboni Lab is tightly embedded in numerous collaborations with academic
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for software-based analysis and ev. R-programming is welcome. We welcome applicants who are detail-oriented, enthusiastic about innovative research, and enjoy working in a collaborative environment. Lead and
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highly motivated candidates with training in quantum matter theory and quantum information science, broadly defined. Experience in topological materials/ topological quantum computation/ quantum geometry