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or two PhD students in Statistics who can perform high quality statistical research. Apply May 11, 2025 at the latest. We are seeking one or two PhD students that will work within the department’s research
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AI / ML. The unique inter-disciplinary combination will enable: (i) a-priori biological knowledge infusion for GRN modeling and developing GenAI methods for generating GRNs; (ii) generating simulated
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, and will apply deep learning to integrate the analysis flows. The PhD student will develop the method and apply to numerous in-house samples of environmental sequences, pushing the boundaries of RNA
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your Master thesis (if not finished at the time of application, please send a current draft or an executive summary of it) and, where applicable, other publications Course transcripts and grades from
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doctoral studies at each faculty is available at Doctoral studies at Linköping University . The employment has a duration of four years’ full-time equivalent. You will initially be employed for a period of
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duration of four years’ full-time equivalent. You will initially be employed for a period of one year. The employment will subsequently be renewed for periods of maximum duration two years, depending on your
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initially be employed for a period of one year. The employment will subsequently be renewed for periods of maximum duration two years, depending on your progress through the study plan. The employment may be
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for Bachelor and Master degree programs, as well as offering Ph.D. education in applied economics, business administration, and economics. The Department is located at two campuses: Uppsala and Umeå. Among many
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of data-driven precision tools, seeking to improve on current paradigms for clinical risk predictions and individualized diagnostic paradigms. Improving atherosclerotic risk prediction has been a primary
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of retrospectively collected tumor material, the current focus is on validating and implementing key findings in clinical settings through prospective clinical studies. The research group is currently based in