118 assistant-professor-computer-science-data-"https:"-"https:"-"https:"-"UCL" positions at Aarhus University in Denmark
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The Section for Electrical Energy Technology at the Department of Electrical and Computer Engineering (ECE), Aarhus University, is in a phase of rapid growth in both education and research
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the Technical Sciences Tenure Track Programme. Highly qualified candidates are appointed as Assistant Professors for a period of six years with the prospect of performance- based advancement to a tenured
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candidates are appointed as Assistant Professors for a period of six years with the prospect of performance- based advancement to a tenured Associate Professorship. The aim of the Technical Sciences Tenure
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negotiation. Position 1: The Department of Biology is interested in recruiting a Tenure-track Assistant or Associate Professor to expand and strengthen the department’s research and teaching expertise within
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levels. The successful applicant must complete Aarhus University’s teacher-training program me for assistant professors, which is designed for university teaching. Knowledge exchange The successful
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. The person appointed to the position of assistant professor must complete Aarhus University’s teacher-training programme for assistant professors, which is designed for university teaching. Knowledge exchange
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The Department of Ecoscience at Aarhus University invites applications for two postdoctoral positions to strengthen our research on image recognition, computer vision and deep learning applied
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candidates are appointed as Assistant Professors for a period of six years with the prospect of performance- based advancement to a tenured Associate Professorship. The aim of the Technical Sciences Tenure
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position is a full-time, fixed-term appointment as an assistant professor with a view to a permanent associate professorship (tenure), subject to a positive tenure review. Further information on the tenure
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use the algorithms in practice, when little to no assumptions can be made on the data. Required Qualifications PhD in computer science, mathematics, statistics, or related fields (by the start date