11 phd-studenship-in-computer-vision-and-machine-learning PhD positions at University of Lund
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-lock-ins-to-susta/ The main language of the PhD programme is English. However, non-Swedish speaking students are expected to acquire basic skills in Swedish during the period of employment
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dimensionality reduction methods), systems biology analysis (including machine learning and other AI techniques), statistical tools focusing on analysis of complex longitudinal data, and how different types
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Job Description The PhD programme comprises 240 ECTS credits (equivalent to four years of full-time study) and concludes with a public defence of the PhD thesis. You will primarily focus on your PhD
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time. The working language is primarily English, but you are expected to acquire basic knowledge of Swedish during the employment period. More information about the doctoral programme is available
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PhD position within the Infection Medicine Research Group The research group is led by Johan Malmström, whose goal is to develop methods within proteomics to promote the implementation of precision
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period. More information about the doctoral programme is available at: https://www.soclaw.lu.se/en/research/doctoral-studies/phd-handbook General Requirements The requirements for admission to third cycle
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virulence factors, and human proteins. The research group Structural Infectious Medicine (STRIME) is a small team consisting of one PhD student and MSc students, working closely with other researchers in
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doctoral programme, which includes participation in research projects as well as third cycle courses, seminars and conferences. During your doctoral studies, you will have the unique opportunity to work
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of care, well‑being, and illness for both young people and professionals. Work duties You will primarily devote yourself to your doctoral programme, which includes participation in research projects as
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and/or computer programming. Cloud physicsIt will be advantageous if the applicant is experienced with modeling of either clouds or climate. In the application, applicants should provide evidence of how