127 parallel-processing-bioinformatics positions at University of Southern Denmark in Denmark
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process. Incomplete applications and applications received after the deadline will neither be considered nor evaluated. Shortlisting may be used. Shortlisted applicants will be assessed by an assessment
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image files. All pdf-files must be unlocked and allow binding and may not be password protected. The assessment process Applications will be assessed by an assessment committee and the applicant will
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uploaded as ‘Resume’. All other documents should be uploaded as ‘Miscellaneous documents’. Application deadline: November 15, 2025, at 11.59 PM/23.59 (CET/CEST) Assessment and selection process Assessment
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. Application procedure Before applying the candidates are advised to read the Faculty information for prospective PhD students and the SDU information on how to apply . Assessment of the candidates is based
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Professor Mahyar Tourchi Moghaddam (email: mtmo@mmmi.sdu.dk ). If you experience technical problems with the online application process, please contact SDU’s HR support at hcm-support@sdu.dk . Conditions of
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: aovergaard@health.sdu.dk Application process The application deadline is 30 September 2025 at 23:59. We expect to conduct interviews on 10 October 2025. Employment from 1 December 2025 or as soon as possible
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Robotics Control systems Programming skills (Python, C++) and ML libraries (PyTorch, Tensorflow) Preferably, the candidates have experience with: Computer vision Experimental design and data analysis
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available scientific output (e.g., a conference poster or paper) Shortlisting may be used in the assessment process. Further information about the PhD-study can be found at the homepage of the University
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If you experience technical problems, please contact hcm-support@sdu.dk. Application procedure Applicants are advised to read the SDU information on how to apply . Assessment of the candidates is based
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that support spike-based processing and memory-efficient computation using SSMs, targeting edge-AI scenarios in wearables, robotics, or sensor networks. Research area and project description The project will co