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The candidate should hold a master’s degree in Anthropology, Sociology, Science and Technology Studies, China Studies, Psychology, or related fields. Chinese language competences and experience with qualitative
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analytical skills, including modelling and verification, programming language theory or quantitative model checking. - Experience in programming, e.g., in C++, Python or Matlab. Experience with quantum
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experience with statistical tools (e.g. in R, MatLab, or Python) are expected. The team at DTU Aqua is highly international and knowing the Danish language is not needed. You must be available for boat-based
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language skills are not required at the time of employment. Please note that non-Danish speaking employees will undergo a course in basic Danish language qualifications within the first two years
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hardware description language such as Chisel, VDHL, or Verilog. Knowing Chisel is a bonus. Knowledge of real-time systems System programming in C You must have a two-year master's degree (120 ECTS points
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application must include the following documents/attachments – all in PDF format: Motivated letter of application (max. one page). CV incl. education, work/research experience, language skills and other skills
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the areas of family law and particularly comparative family law. Additional language skills are considered a bonus. The PhD will be supervised by Prof Jens Scherpe, the Director of NorFam. The successful
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soon as possible thereafter. The workplace is the SDU Campus Odense in Denmark, with some travel required within Denmark. Mastering the Danish language at a proficiency level is a requirement
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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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Economics, Business Administration, Political Science, or similar. The scholarship runs for three years. The PhD will be supervised by Associate Professor Anthony Wray. Data digitization using large language