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environment. The selected PhD candidate will be joining a dynamic and interdisciplinary lab that do ambitious science, based in SciLifeLab in Stockholm, a vibrant hub for scientific research. Admission
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focuses on the development of novel fluorinated amino acids as a 19F-NMR probe to study protein dynamics and protein-ligand interaction to facilitate drug discovery. It is financed by SciLifeLab, and hence
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development projects, and drive science forward. This position is one of several industrial PhD roles funded by the DDLS program, which supports training in four strategic areas: cell and molecular biology
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epidemiology and biology of infection. The expected starting date is September 2025, or as otherwise agreed. Project description This PhD project is part of the Data-Driven Life Science (DDLS) research school
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Prize in Chemistry, was made here. At Umeå University, everything is close. Our cohesive campuses make it easy to meet, work together and exchange knowledge, which promotes a dynamic and open culture
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/data-driven/ddls-research-school/ The future of life science is data-driven. Will you be part of that change? Then join us in this unique Program! The research group The PhD student will be based
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stratification, discovery of biomarkers for disease risks, diagnosis, drug response and monitoring of health. The precision medicine research is expected to make use of existing strong assets in Sweden and abroad
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implementation is advantageous (especially if in the context of protein structure) Experience with structural biology and/or molecular dynamics is advantageous Publicly available code is advantageous Experience
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at Uppsala University. Rules governing PhD students are set out in the Higher Education Ordinance chapter 5, §§ 1-7 and in Uppsala University’s rules and guidelines. About the employment The employment is a
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study plan. For a doctoral degree, the equivalent of four years of full-time doctoral education is required. The research group Our lab is advancing precision medicine through deep learning models