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substantially equivalent knowledge in some other way. Good oral and written proficiency in English is required. The candidate is expected to have good numerical programming skills and knowledge of fluid dynamics
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analyses that extend the range of memory-safe programming and new dynamic techniques for memory safety. The third project is centered around concurrency safety. Managed languages offer memory safety and null
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what it is like to work at Uppsala University. Project description Human brains can process complex, dynamic, and real-time information with remarkable efficiency after millions of years of evolution
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Biochemistry Structure and dynamics of photoreceptor proteins using novel methods in time-resolved structural biology. Department of Chemistry for Life Sciences conducts research and education in analytical
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Biochemistry Structure and dynamics of proteins using time-resolved single-particle cryo EM. Department of Chemistry for Life Sciences conducts research and education in analytical chemistry, biochemistry and
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. Project description This PhD project focuses on advancing the scientific computing foundations of quantum spin dynamics by developing efficient numerical algorithms for modeling complex, open quantum
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the organization of DNA and its relation to the dynamic 3D-structured chromosomes. The student will form a part of our new NEST initiative funded by the Wallenberg AI, Autonomous Systems and Software Program (WASP
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measurements (UV-Vis, Raman, XPS, transient absorption, photoluminescence, electrochemical analysis) to probe charge transfer dynamics. Mechanistic Studies: Investigate reaction kinetics, tunneling, and hydrogen
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cell-to-extracellular matrix (ECM) interactions establish signaling pathways that are critical for specific cell functions. Within this dynamic environment, a variety of external forces (including
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Chemistry (experimental/computational physical chemistry) -Transition metal photocatalysts studied by femtosecond X-ray science with a focus on hybrid experimental/machine-learned structural dynamic analyses