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programme Reference Number 304--1-13687 Is the Job related to staff position within a Research Infrastructure? No Offer Description We offer a PhD position to visualise simulation results by combining virtual
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collectively manage all aspects of safety work with ionising radiation at the MAX IV Laboratory. One of the current team members focuses on radiation safety simulations for shielding design and risk analysis
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. These positions involve advanced numerical simulations and analysis of spacecraft data. The positions are full-time, 100% funded for four years and lead to a doctoral degree in Computational Physics. The expected
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. We carry out research in the areas of electronic systems, machine learning and cyber-physical systems. The Electronics Systems group focuses on electrodynamic simulation and modeling. The research and
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Networks. The project encompasses several challenges in the gene regulatory network (GRN) field, from simulating realistic networks and data to accurate inference of GRNs from noisy gene expression data
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assessment methodologies, modelling and simulation, as well as knowledge and experience from the Swedish food system, are seen as valuable merits. Great emphasis is placed on personal qualities, such as the
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science. Applicants with one or more of the following skills/qualities will be considered with priority: experience and/or thorough understanding of theoretical/numerical methods for simulating optical
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description The project focuses on studying the evolution of evolvability using computational simulations. Evidence from evolutionary developmental biology suggests that evolvability can change rapidly in
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interdisciplinary project. The project concerns algorithm design, implementations of algorithms, and simulated and biological data analysis. The student is expected to learn a bit of relevant molecular biology to
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, biophysics Machine learning and generative AI Molecular modeling and molecular dynamics simulations LNP formulation and characterisation including e.g. small angle scattering, microscopy, single particle