79 parallel-and-distributed-computing-phd positions at Chalmers University of Technology
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assays, protein purification and biochemical assays MS-proteomics analyses and advanced microscopy Supervise master’s and/or PhD students to a certain extent Possibility to engage in teaching at
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spectroscopy for studying heterogeneity and radial depth distribution of modifications in intact fibers, as well as structural complexity in amorphous solid dispersions of pharmaceutical relevance. About us You
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through scientific publications and presentations Conducting independent and self-motivated research while contributing to our research team Who we are looking for PhD in inorganic solid-state chemistry
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Join us as a PhD student exploring how contractor organizations translate digitalisation strategies into practice, where strategic visions meet project realities, and research meets industry
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photonics by developing and implementing experimental methods, maintaining and improving laboratory facilities, and collaborating closely with researchers, PhD students, and external partners. As a Research
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computational costs by orders of magnitude and enabling breakthroughs in drug design and materials science. The position bridges machine learning and molecular science, with opportunities for collaboration
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journals and conferences. Supervise master’s and/or PhD students to a certain extent and possibility to engage in teaching at undergraduate/master’s level The position is meritorious for future roles in
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We invite applications for a PhD position that explores the impact of Artificial Intelligence (AI) on Higher Education, in particular within STEM (Science, technology, engineering and mathematics
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collaboration with others, and to coach PhD students. You will be expected to develop your skills, the team, and contribute with your creative ideas. We value a collaborative attitude and an interest in working
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specialise in nanoparticles formulated from lipids. We characterise the composition and distribution of lipid molecules in both synthetic and naturally occurring nanoparticles (including extracellular vesicles