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for the day-to-day administration of the research project. You will adapt existing and develop new research methodologies, including triangulation of different data and materials. You will also contribute ideas
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, biosignals) • Statistical modeling and dimensionality reduction • Python-based scientific computing (NumPy, SciPy, PyTorch/JAX, etc.) Core Research Skills • Privacy and/or sense-of-agency ethical analysis
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on complementary aspects of the project. Collaborate with the statistical post-doc on the study who will lead advanced statistical developments. Ensure methodological rigor and scientific excellence throughout all
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processing, statistics, multimodal processing, FAIR data management, music theory, or musicology Personal skills Strong ability to work purposefully, systematically, and independently Time management and
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of Humanities, Education and Social Sciences (FHSE) and will be a part of the Luxembourg Centre for Educational Testing (LUCET), a dynamic team of researchers working on different aspects of the educational
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scalability and resource efficiency through the development of cooperative, distributed AI algorithms, optimising data, energy, and processing resources while adapting to the different computational
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environment. Our workplace consists of a diverse set of people from different nationalities, backgrounds and fields. As a postdoctoral researcher working with us, you receive the benefits of support in career
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techniques Ability to support non-bioinformaticians and deliver training in WGS data analysis. Skills in data management, visualization, and statistical analysis. Proven ability to plan and execute complex
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. This opportunity will involve working on an NIA-funded project to understand how individual differences in the structure and function of the locus coeruleus moderate perception and memory in an older adult
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learning (ML) methods along with other classical computational and statistical tools. Experience of deploying ML workflows at scale on high-performance computing clusters. Extensive biomedical and health