43 optimization-nonlinear-functions Postdoctoral positions at Chalmers University of Technology
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to contribute your own research ideas and take part in supervising PhD students. About the research project The position, starting in the first half of 2026, will be based in the theory division of the Department
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quantum field theory, while collaborating with leading experts worldwide. About us The High-Energy part of the Theoretical Subatomic Physics group performs research into elementary particle physics from
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explainable AI models for personalized treatment planning in sports medicine and orthopaedics. You will work in a highly interdisciplinary environment, collaborating with leading experts in AI, mathematics
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benefiting from the ongoing digitalization of society. Our research emphasizes social, economic, and environmental sustainability. As a postdoc, you will become part of a dynamic team that offers a stimulating
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of this research with the Secura Lab. The role also offers ample opportunities to mentor PhD students, supervise MSc projects, and engage with a vibrant network of national and international collaborators. Conduct
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We are looking for a postdoctoral researcher to become part of our team at the Division of Subatomic, High-Energy and Plasma Physics at the Department of Physics. Join our innovative team and
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-14180 Is the Job related to staff position within a Research Infrastructure? No Offer Description We are looking for a postdoctoral researcher to become part of our team at the Division of Subatomic, High
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outcomes. An outline of your future goals and research focus. Use the button at the foot of the page to reach the application form. Please note: The applicant is responsible for ensuring that the application
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We are looking for a postdoc to join our team at the Division of Engineering Materials at Chalmers University of Technology . The research will focus on the use of magnetic fields to control
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design. One of our group's goals is to create efficient surrogate models that reduce the computational cost of MD simulations by several orders of magnitude. Notable examples of our work in this area