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the Arrhenius Laboratories for Natural Sciences, which are situated in the northern part of the University Campus at Frescati. Some 300 people of which about 70 are PhD students work at the Department, engaged in
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therapy. The PhD project may, to some degree, be adjusted depending on the applicant’s area of expertise and interests. We seek a self-motivated candidate who is fluent in English. The PhD candidate will
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professional research environment characterized by its well-established international profile. The institute has 30 research groups with a research staff of 180, of which 65 are PhD students. Read more about MBW
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. The qualification requirements must be met by the deadline for applications. Selection The selection among the eligible candidates will be based on their capacity to benefit from the PhD programme. The following
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Science, with around 80 employees, out of which about 25 are PhD students. The main research areas are Galaxies, Supernovae, Computational astrophysics, Solar Physics and Planet and star formation. Project
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), an ambitious nationwide program of seminars, courses, research visits, and other activities to promote a strong multi-disciplinary and international network between PhD students, postdocs, researchers and
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multi-disciplinary and international network between PhD students, postdocs, researchers and industry. The objectives of the PhD project are to establish automation strategies and develop high-throughput
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evolution, ecotoxicology, marine biology, plant physiology, systematics, and environmental and climate science. Presently around 100 people, including 35 PhD students and 10 postdocs, in 25 research groups
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evolution, ecotoxicology, marine biology, plant physiology, systematics, and environmental and climate science. Presently around 100 people, including 35 PhD students and 10 postdocs, in 25 research groups
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been directly mapped. This PhD position at Stockholm University focuses on leveraging machine learning (ML) to identify errors in large bathymetric datasets and applying ML techniques like "super