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multidisciplinary educational background, and possess a Master's degree in physics, physical chemistry, chemical engineering, materials science, nanoscience, mechanical engineering, or a closely related discipline.
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Description 3 x Academic Researcher (m/f/d) (TV-L E 13, 100%, Service Location: Clausthal-Zellerfeld) The research group Dependable and Autonomous Cyber-physical Systems (DACS) at the Institute
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of science, technology, and medicine. We welcome proposals with focus on regions around the globe and on any historical time period which can relate to and enrich the School’s research agenda. Please find all
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degree (M.Sc.) in mechanical engineering, materials science or physics, are curious, self-motivated, and eager to engage in scientific work, and would like to pursue a PhD to further qualify yourself
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research Publication and presentation of scientific results Your profile Completed university studies (Master/Diploma) in the field of Physics, Engineering Physics or related field Very good experimental
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Science, Physics, Materials Engineering, Nuclear Engineering, or a related field Solid knowledge of microstructural and mechanical characterization of materials, ideally with experience in TEM/STEM and
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Description The Institute for X-ray Physics of the University of Göttingen welcomes applications for a PhD Position (f, m, d) starting as soon as possible. The salary is based on TV-L E13 (75
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, dissertation) Your profile University degree (Master’s or Diploma) in Materials Science, Physics, Materials Engineering, Nuclear Engineering, or a related field Solid knowledge of materials characterization
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; degrees in Chemistry, Physics, Biochemistry, Chemical Engineering, or a related discipline will be accepted. At the time of the nomination (estimated January 2026), your last final exam should have taken
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demands. To break this bottleneck and cut simulation time by orders of magnitude, you will design and implement surrogate models that learn the behavior of full‑physics codes using modern machine‑learning