346 data-"https:" "https:" "https:" "https:" "https:" "https:" "KU LEUVEN" positions at University of Nottingham
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June 2026 Assessments/interviews July 2026 Commencing 1st September 2026 Further information is available in the role profile. To apply for this vacancy please click ‘Apply Now’ to complete your details
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generating data, and ensuring the provision of necessary reagents and growth-media to enable smooth running of the projects. The post will also involve record keeping, safety management, data analysis
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, anatomy and pathology or data analysis and bioinformatics and will be delivered to students at all levels on the Biomedical Sciences degrees (BSc and MSci) and other related degrees. You will have a Ph.D
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. Further information is available in the role profile. To apply for this vacancy please click ‘Apply Now’ to complete your details. This is a full time, fixed term position until 30/04/2027. Your working
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improvements in our establishment control process. To be successful you will be able to demonstrate your high levels of attention to detail and accuracy and have experience in a data entry or administrative role
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expenses claims. Administer systems for the storage of relevant data, ensuring adherence to the relevant legal standards for data use and storage. We are looking for professional, approachable, customer
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workload planning, contract renewal and coordination, maintaining outputs through provision of admin support in specific areas such as Committees and meetings, maintain accurate data records, draft document
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. What next? Further information is available in the role profile. To apply for this vacancy please click ‘Apply Now’ to complete your details. This is a permanent role and your working hours will be 36.25
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global manufacturers. For details, visit the MTC website . For further information on this PhD position please contact Dr Sara Wang (Sara.Wang@nottingham.ac.uk ) Closing Date: 27th February 2026. Proposed
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understanding and process optimisation. The work will primarily feature the integration of high data-density reaction techniques, laboratory automation & robotics and kinetic/machine learning modelling