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Department BSD BMD - Rebay Lab About the Department The Rebay Lab uses Drosophila as a genetically tractable model system to study how cell fates are specified and organized into functional tissues
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outcomes, while ensuring access to reliable and affordable energy. The E&E Lab applies rigorous evaluation and modeling methods, including natural and field experiments, randomized controlled trials
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Lab. Receives a moderate level of guidance and direction. Responsibilities Works with mouse models of transplantation and pregnancy. Designs, executes, and analyzes experiments involving in vitro cell
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and in disease. Our Institute is unique in bringing together a diverse group of researchers who investigate these questions in different model organisms using state of the art techniques. The Brain
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to school and district leaders aligned with the NCS model for school transformation. Coach school and district leaders in implementing effective systems, structures, and practices that create school
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datasets and to advance research in regulatory genomics, sequence-to-function modeling, and disease genetics. Responsibilities Plan, execute, and facilitate advanced technical/scientific projects; design
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model organisms in their work and are pushing into emerging model and non-model organisms that are proving uniquely valuable in particular studies. To learn more about our department, https
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internal data systems as well as from external sources. Designs and evaluates statistical models and reproducible data processing pipelines using expertise of best practices in machine learning and
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for experiments. Cell line maintenance and archive. Cell culture and basic molecular biology techniques. Scheduled preparation of experimental tumor models in mice. Selection, monitoring and treatment of animals
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, a person in this position will be a key contributor to the design and implementation of algorithms, AI/ML models, and workflows to enable the discovery of valuable information in large volumes of data