119 optimization-nonlinear-functions Postdoctoral positions at University of Washington
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protective equipment and to provide standard care to research animals. Salary Range: Base pay is commensurate with experience. The above statements are intended to describe the general nature and level of work
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the general nature and level of work performed by people assigned to this classification. They are not intended to be construed as an exhaustive list of all job duties performed by the personnel so classified
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system model simulations (e.g., isotope-enabled CESM1.2 and MPI-ESM1.2) and run new simulations, including tagged-water experiments to track changes in moisture sourcing under different climate conditions
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on recent findings on the essential target enzymes DOI: 10.1021/acs.jmedchem.5c00865. Project role includes purification of recombinant enzymes and screening inhibitors in vitro. Ideal candidates will have
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system model simulations (e.g., isotope-enabled CESM1.2 and MPI-ESM1.2) and run new simulations, including tagged-water experiments to track changes in moisture sourcing under different climate conditions
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Position Summary The Seáñez Lab is seeking a postdoc to work on a project aimed the development of spatiotemporal control of non-invasive stimulation to restore movement in spinal cord injury
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Position Summary The Seáñez Lab is seeking a postdoc to work on a project aimed at understanding changes in neural excitability induced by spinal cord stimulation and motor learning
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will require knowledge and experience with immunotherapies, peptides, chemical and biochemical analysis, and cancer models. Project work will involve peptides, formulation, analytical techniques, and use
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the molecular regulation of dendritic cell subsets, function, and differentiation using novel approaches, such as CRISPR Cas9, single-cell and tissue analyses. The work will contribute to our overall goal
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, atmospheric signals), data fusion across sensing modalities, and development of scalable machine learning pipelines. Work will be entirely computational and based in Seattle, with no field deployment