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simulation/theory of 2D materials and devices, within electronics, photonics and mass transport. Biophysics and Fluids with a focus on fluid and soft-matter dynamics on small length scales, often with life
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is amongst the international leading entities in technology entrepreneurship and helps develop an entrepreneurial culture across DTU. As part of a dynamic and evolving ecosystem, we combine practice
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of food as one of its focus areas. The group has a dynamic staff with high international visibility, many research collaborations with leading international universities and organisations and a successful
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written and spoken English. Fluent in a computer coding language (python or Matlab or C++ or etc). The Scientific environment We offer creative and stimulating working conditions in a dynamic and
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, and we give high priority to publishing our research in leading academic journals and presenting it at recognised conferences. In addition, we have a dynamic exchange of international researchers, who
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written and spoken. A collaborative mindset and enthusiasm for being a dynamic and integrated member of a multidisciplinary team. It is seen as a great advantage if the candidate has: Demonstrated
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are highly motivated and eager to engage in world-class research in theoretical quantum nano-optoelectronics. The ideal candidate will be enthusiastic about contributing to cutting-edge research in a dynamic
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, dynamics and process regulation, process and facility planning, unit operations, heat transmission, fluid mechanics and applied thermodynamics. The Department enjoys very close relations with international
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for the position. DTU Entrepreneurship is amongst the international leading entities in technology entrepreneurship and helps develop an entrepreneurial culture across DTU. As part of a dynamic and evolving
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(density functional theory and ab-initio molecular dynamics simulations) with artificial intelligence techniques to parameterize machine learning force fields and kinetic Monte Carlo methods to model