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referee A brief (around 500 W) sketch for a potential PhD project (research question, a short literature review, an overview over the methods and data that you aim to use), related to the design and topics
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. To do this, knowledge or willingness to be trained in advanced statistical modelling, ideally with an interest in methods for causal inference in observational data, is strongly preferred. Using various
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expertise to study chemical biology of ion channels. We tackle questions in the field of ion channels with innovative structural, chemical methods, interconnecting chemistry, pharmacology, and medicine and
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inclusive research groups. Your role The UBIX Research Group is searching a PhD candidate to work on data-driven sustainable energy systems. The successful candidate will join the UBIX Research Group, led by
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PhD Student (gn*) Biology, Biochemistry, Biomedicine, Experimental Medicine, Medicine Job Id: 10580 Fixed-term of three years | Part-time with 65% (25 hours/week) | Salary according to TV-L E13
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Master's degree in Energy Policy, Energy Economics, Information Systems, Mathematics, Operations Research or a related field Strong knowledge of quantitative and/or computational research methods, ideally in
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Systems, Economics, Mathematics, Operations Research, Computer Science, or a related field Strong knowledge of quantitative and/or computational research methods, ideally in optimization and simulation
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Research or a related field Strong knowledge of quantitative and/or computational research methods, ideally in numerical optimization and simulation models. Proficiency in one of the major programming
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are looking for PhD candidates to join the team to contribute to our research agenda and to the excellence of the group and of SnT in general. Successful candidates are expected to participate in the following
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integrating local flexibility markets through distributed AI-based coordination, market mechanism design, and cloud-to-edge computing. It aims to develop scalable machine learning methods for coordinating grid