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Call for proposals The NOMIS Foundation and the Institute of Science and Technology Austria (ISTA) have launched an interdisciplinary basic research program for exceptional postdoctoral scientists
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. News World University Rankings by Subject, NTU was ranked 2nd in the world for Artificial Intelligence (AI) and Computer Science. It also ranked 5th in the world and 1st in Asia for Data Science and
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computational biology and immunology are also welcome. Our laboratory focus ranges from the study of basic biological processes to very translational bench-to-clinical research with implementation of laboratory
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methodologies, and publish at a high level. The lab offers deep integration between wet-lab and computational biology, and close connections to institutional resources and collaborative networks across Duke-NUS
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into the RTG ACME's comprehensive and interdisciplinary training program with structured joint training of doctoral students in natural sciences and medicine and early-career medical and clinician scientists
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The University of Toronto is pleased to announce the third call for applications for theEric and Wendy Schmidt AI in Science Postdoctoral Fellowship , a program of Schmidt Sciences, which brings
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X: @KAUST_News LinkedIn: KAUST (King Abdullah University of Science and Technology) Fellowship info Accepting applications between: 01 July 2025 – 15 January 2026 Deadline: 15th January 2026 Location
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Temporary contract | 36 months | Belval Are you passionate about research? So are we! Come and join us The Luxembourg Institute of Science and Technology (LIST) is a Research and Technology
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Program . Job description The fellowships are aimed at early-career researchers with a basic science background or clinicians who aspire to a career in academia. We are particularly interested in candidates
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organoids will be plus. Dry lab: Highly motivated candidates with a PhD/MD degree in bioinformatics, genome science, systems biology, biomedical informatics, computational biology, machine learning, data