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Field
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-Performance-computing systems is a requirement. Experience with programming and scripting languages such as Fortran, C++, and Bash is an advantage. Experience in field instrumentation or other demonstration
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inequalities arise, and develop and evaluate effective interventions that promote wellbeing. We ensure that our postdoctoral fellows can develop high-quality research competence across disciplines, in
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candidate will be admitted to the PhD program in Science and Technology. The education includes relevant courses amounting to about six months of study, a dissertation based on independent research
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characterization, and electrochemical performance evaluation of Zn–I₂ batteries. The main duties of the Postdoctoral Fellow will include Carrying out high-quality and independent research within the AMAZIEN
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. Our social mission is to provide research-based education of high quality, perform artistic development and carry out research of the highest international quality standards in the entire range from
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statistical physics, solid mechanics, or fluid mechanics Experience with data-driven modeling, parameter estimation, or model calibration Familiarity with high-performance computing or large-scale simulations
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characterization and kinetic studies will be performed to test computational predictions and microkinetic models, and to refine machine learning models. The successful candidate will collaborate with other groups in
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collaboration. The successful candidate will be exposed to and trained in both low-level instrumental modeling, high-level component separation and cosmological parameter estimation, and high-performance
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frameworks). Experience working with large HPC-produced datasets and/or high-performance computing environments. Experience in compiled languages and performance-oriented environments (e.g., Fortran/C/C++ and