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perceived by both consumers and cider-makers. The post-doc will have their primary home in the Whitehead Lab (speciesinteractions.com) with extensive collaboration and co-mentorship from the Igwe Lab
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the Hunter and Dayer Labs and a growing post-doc community in the Global Change Center. The position requires travel to present results in coastal areas of the East Coast of the US and conferences in the US
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on their research and innovation campus. Required Qualifications - PhD and/or MD in Computational Biology, Bioinformatics, Genomics, Biology, Data Science, Computer science or other related fields. PhD must be
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be responsible for data management and dissemination of scientific results. The primary focus of the post-doctoral associate will be to assemble organoids using a combination of new biomaterials and
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a vibrant research environment in the quantum information groups of Prof. Steven Flammia at Virginia Tech. There will be plenty of opportunities for collaboration with other members of the larger
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work with colleagues from Virginia Tech and other collaborating universities to run, analyze, and model human evacuation experiments. Data will include motion capture and psychophysiology data to explore
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experience Review Date January 15, 2025 Additional Information An online application is required. To apply, please visit www.jobs.vt.edu, select "Apply Now" and search by posting number 531127. For full
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. Techniques we use include in vitro neural differentiation, gene expression manipulation, metabolic assays, and mouse breeding and behavior. Knowledge in basic computer skills, record keeping and experience
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of vortical flows - Experience working collaboratively with experimentalists in aeroacoustics Overtime Status Exempt: Not eligible for overtime Appointment Type Restricted Additional Information The successful
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, conducting research on key aspects of the foundations of data science. Areas of focus include sublinear, streaming, and sketching algorithms; learning-augmented algorithms; algorithmic fairness; and learning