98 parallel-programming-"Washington-University-in-St" uni jobs at University of Vienna
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Scientific Computing focuses on research in programming paradigms, languages, compilers, and software and hardware infrastructures for scientific computing to support users in the process of solving
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, Geography and Astronomy. It is the largest and oldest Geography department in Austria. The department offers scientific degrees in the bachelor program, three master programs, a teacher education program
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Astronomy. It is the largest and oldest Geography department in Austria. The department offers scientific degrees in the bachelor program, in two master programs, in the teacher education program (Bachelor
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at the department This is part of your personality: Completed Master's degree or Diploma, programme in natural sciences or equivalent aptitude. Didactic competences / experience with e-learning Excellent command
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structured doctoral programme that supports early-career research in the areas of Computer Science and Business Informatics. The programme includes world-leading researchers in Computer Science as supervisors
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English Extensive computer skills in any case in MS Office and in particular the audio programme Audacity Also desirable are: In-depth study of criminal law and criminology as part of the elective course
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organise scientific events. You prepare and complete a publication-ready habilitation. You hold courses independently in the Bachelor programme „Languages and Cultures of South Asia and Tibet” and the Master
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Job ID: 4566 The University of Vienna, Faculty of Chemistry, is home of the Vienna Doctoral School in Chemistry (DoSChem). DoSChem is the largest doctoral training program in Austria focusing on
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from you: Applicants should have completed their Master/Diploma degrees (or be very near completion) by the time of their application. We are looking for graduates from: Renowned management programs: e.g
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to the department Ph.D. program and will work on the development and analysis of statistical methods for machine learning, particularly in the context of high-dimensional models and with a particular focus on methods