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motivated Postdoctoral Associate to lead, develop and support innovative research at the intersection of microbial biotechnology, space biology, and sustainable solutions for plastic and electronic waste
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the reduction of urinary and fecal N and P excretion (Van Amburgh et al., 2019). We are seeking a highly motivated Postdoctoral Associate to lead a multidisciplinary project focused on two primary tasks
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advanced systems methods into operational tools used by cities, MPOs, and state DOTs. Position Overview The Postdoctoral Associate will lead and support research in: Transportation systems modeling and
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This position requires an experienced Postdoctoral Associate to lead independent research on fungal pathogens of field crops, with emphasis on corn and soybean. The overall purpose of the position is to generate
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; developing and implementing quantitative models to estimate the impacts of soil health practices on soil health outcomes, productivity, risk and farmland values. The Postdoctoral Associate will lead the
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of Biological and Environmental Engineering at Cornell University is seeking a highly motivated Postdoctoral Associate to lead, develop and support innovative research at the intersection of microbial
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Postdoctoral Associate to lead a multidisciplinary project focused on two primary tasks: Developing a simplified version of the Cornell Net Carbohydrate and Protein System that can use feed ingredients
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integration, large-scale mobility modeling, and translating advanced systems methods into operational tools used by cities, MPOs, and state DOTs. Position Overview The Postdoctoral Associate will lead and
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water pressure observations. This postdoc will work with Dr. Grace Barcheck and lead the passive seismic part of the project, including field deployment of sensors, detecting and locating icequakes
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catchment hydrology, remote sensing, or climate impact assessments. Candidates with interdisciplinary backgrounds are welcome, but strong data-analytics skills and solid knowledge of process-based numerical