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contribute to an interdisciplinary collaboration focused on building construction to improve affordability, productivity, energy efficiency, and resilience. The candidate will be part of the UT-Oak Ridge
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Your Job: Develop methods and workflows to construct robust co-regulation networks from large single-cell and spatial transcriptomics datasets Integrate ontologies and metadata (e.g., tissue, cell
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rupture, which is one cause of a stroke and thus the prediction of plaque rupture is very relevant. The steps in the development of surrogate models are building data-driven models from medical imaging
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that can stand in for slow model simulations. These tools will be used to test how model parameters influence results and to make parameter estimation more efficient. The project will apply and evaluate
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this limitation in the use of satellite observations by make a direct use of radiance observations retrieved by satellites using machine learning without the need of radiative transfer calculations. The new model
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to neural population coding. As a starting point, we will build upon recent advances in graph neural networks (GNNs), particularly those described by which offer a promising architecture for modelling
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passion for teaching computers how to see, have done some previous research in this field (e.g., internships, research papers, etc.), and want to make an impact in a societally relevant application. In your
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., internships, research papers, etc.), and want to make an impact in a societally relevant application In your application, please include a statement of research interest, CV, copies of exams, degrees and grades
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confidential information from the documents you attach with your application. The confidential information includes the following: *Date of Birth *Social Security Number *Gender *Ethnicity/Race Please make sure
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on the accessibility of selected PWr buildings: https://przewodnik.pwr.edu.pl/pl . Information on support for employees with disabilities and special needs: https://dzd.pwr.edu.pl/en . Before establishing an employment