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application! Your work assignments As a PhD student, you devote most of your time to doctoral studies and the research projects of which you are part. Your work may also include teaching or other departmental
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divided into three units; Materials theory, Thin films and nanolaminated materials, and Applied electrochemistry. You will join a diverse, inclusive, and supportive work environment that values scientific
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application! We are looking for a PhD student in theoretical physics with a focus on the theory of magnetic materials. Your work assignments Your tasks will be to carry out research using advanced theoretical
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We are hiring a postdoc to work on in situ evolvable soft electrodes for neural interface applications. The position is in the Soft Electronics group, Laboratory of Organic Electronics, Department
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together, large and small, contribute to a better world. We look forward to receiving your application! Work assignments The project for which we are now looking for new staff concerns fundamental research
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. Our innovative work focuses on the dynamic coupling of ion and electron movement. Our research topics include synthesis, material science, theory and modelling, device physics, nanotechnology
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supports forming a strong multi-disciplinary and international professional network between PhD-students, researchers and industry. Read more: https://wasp-sweden.org/graduate-school/ . Your work assignments
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application! Your work assignments You are expected to work in the research project ‘Biomedicine, Clinical Knowledge, and the Humanities in Collaboration: A Novel Epistemology for Radically Interdisciplinary
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). Work assignments The division and institute REMESO (Research on Migration, Ethnicity and Society), at the Department of Culture and Society, IKOS, conducts education and research. The education is mainly
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will work on a newly started interdisciplinary project focusing on exploring the AI based generation and use of synthetic data for improving predictions of energy performance of buildings as