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us The High-Energy part of the Theoretical Subatomic Physics group performs research into elementary particle physics from model building and Dark Matter to formal Quantum Field Theory
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13 Sep 2025 Job Information Organisation/Company Chalmers University of Technology Research Field Computer science » Computer systems Computer science » Other Researcher Profile Recognised
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how urbanization impacts humid heat stress across Mediterranean coastal cities over two decades. Optional Research Opportunity: Utilize social media data and natural language models to analyze
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opportunity to work on computational research related to one (or more) of the following areas: coastal dynamics (surf-zone to shelf), submesoscale processes, kelp-current interactions, or marine carbon dioxide
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different mixing and reactive properties compared to conventional fuels. In this project, turbulent mixing and combustion of hydrogen in air will be studied through optical experiments and numerical modelling
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include AI/ML techniques and biophysical modeling. This work aims to address critical challenges faced by federal, state, and local water resource agencies, with applications extending to coastal ecological
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research in the field of machine learning, more specifically, deep learning and representation learning architectures. Application areas of ML include, but are not limited to, computer vision, natural
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processes. The analytical work needed spans core biophysical modeling of how landscape/seascape changes affect the flows of ecosystem benefits to people, including improving explicit linkages between
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physiology (respirometry and ETS analyses), and hydrological/behavioral simulation modeling components, all in a collaborative research effort involving Auburn University personnel and colleagues from State