54 advance-soil-structure-modelling Postdoctoral positions at University of Minnesota
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analysis of data including measures of pupil dilation, microsaccades, and behavioral measures of speech perception. Experience with data collection and statistical modeling of time-series data are essential
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, and interpersonal communication skills, especially with respect to academic writing Ability to advance science independently, and as part of collaborative teams Interest in fostering an inclusive
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pharmaceuticals to identify which chemical structures are mineralized to fluoride and which lead to formation of persistent fluorinated byproducts. The key tasks will be to run biodegradation experiments with
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neuroinflammation and CNS pathology in mouse models of neurodegeneration, demyelination, and brain tumors. Make use of multidisciplinary approaches combining advanced flow cytometry, molecular biology, behavioral
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modern deep learning models such as generative models, diffusion models, vision transformers etc. About the Department: About the Department The Institute for Health Informatics (IHI) educates students and
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(Including histone modification and DNA methylation) and 3D genome organization studies on the interplay between EBV infection and host interactions. Using in vitro B cell transformation model and 3D organoid
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, and publication of major results from the experiment. They will also lead the development of predictive distribution models that incorporate data from the experiment. The project is funded by the USGS C
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-activated immunogenicity, scaled-up vector production, and assessment of AAV efficacy in pre-clinical animal models. The goal of our research is to ensure advancement of gene therapy treatment for patients
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(e.g., Neuropixels recordings) in awake, behaving rodents. • Computational modeling and advanced data analysis. At least one role will be embedded within the newly launched Simons Collaboration
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. The role offers exceptional opportunities for professional development, including learning the latest advancements in large language models, translating these innovations to genomic applications, and leading