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of large amounts of acoustic data using LSSS. Publication in international scientific journals Good skills communicating in Danish or similar Scandinavian language will be an advantage. As formal
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on CMUTs. Proven experience in transducer design. Strong oral and written skills in English – our communication language is English. Flexibility, enthusiasm, responsibility, team spirit and excellent
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, command of Danish language is seen an advantage but not required. Likewise, previous experience in project management is an advantage. Flexibility and self-motivation are desired skills at DTU. In addition
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independently, to plan and carry out complicated tasks, and to be a part of a large, dynamic group. Independent problem-solving skills. Excellent communication and language skills in English, both written and
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knowledge of healthcare operations management Priority will be given to candidates capable of speaking/understanding the Danish language. You must have a two-year master's degree (120 ECTS points) or a
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for the successful applicant. The daily working language is English. Our research teams work in several fields, and we therefore expect you to have a background and qualifications in some of the following areas
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lead projects. Good communication skills, patience and a positive attitude to working in a team are essential requirements for the successful applicant. The daily working language is English. Our
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some of the following areas: simulation, mathematical modelling, machine learning, data analysis. Programming skills in Python and at least one object-oriented programming language (e.g. C++, Java, C
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conferences and high proficiency in written and spoken English. Proficiency in the Danish language is not essential, but a willingness to learn could be useful in the longer-term. We offer DTU is a leading
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might be stiff, requiring special numerical techniques. In order to expedite the simulation, MagTense is based on a core implemented in the Fortran programming language, and it relies on the platform CUDA