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multitasking skills. Demonstrated ability to harmoniously and professionally manage and work with co-workers and supervisors. Ability to operate computer equipment and food and beverage computer systems. Ability
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at unprecedented scales. Our goal is to create highly scalable experimental approaches that enable machine learning methods to predict the structure and properties of RNA-protein complexes. We employ sophisticated
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from varied sources, and machine learning methodologies Required Application Materials: 1. A cover letter describing: a. Your interest in this position b. Your relevant training and experience c. Your
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of experiments and outcomes. General computer skills and ability to quickly learn and master computer programs, databases, and scientific applications. Ability to work under deadlines with general guidance
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and aggression, using optogenetics, in vivo imaging, electrophysiology, and sophisticated machine learning/artificial intelligence analyses of mouse behavior. All projects have translational components
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the past, influence the present, and shape the future. Together, faculty and students in H&S engage in inspirational teaching, learning, and research every day. Department/Program Description: The Stanford
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(Required): High school diploma and four years of administrative experience, or combination of education and relevant experience. Knowledge, Skills, & Abilities (Required): Advanced computer skills and
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The Division of Primary Care and Population Health (PCPH) seeks to serve our community through caring, learning, and innovation for the whole person through all stages of life. While engaged in practice and
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of computer software and hardware. Help to evaluate user interfaces and neurally-controlled assistive devices for persons with paralysis. Provide vigilant skin care of neurosurgically placed devices. Teach
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, biologics, and cannabis. Apply statistical and machine learning approaches (e.g., sequence analysis, latent class analysis, clustering) to examine medication use trajectories and patient subgroups