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Summary The position is intended for Computer Science, Computational Biology, or life science graduates transitioning to a data science and bioinformatics career. The successful candidate will
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candidates will be recent PhD graduates with high levels of energy and curiosity, and who are interested in making fundamental discoveries in understanding the molecular biology of brain tumours, and in
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candidates will be recent PhD graduates with high levels of energy and curiosity, and who are interested in making fundamental discoveries in understanding the molecular biology of brain tumours, and in
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insights in dynamics-based drug discovery. We have an opening for a postdoctoral associate with a focus on experimental work related to the structural biology of G Protein Coupled Receptor (GPCR) signaling
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leveraging the resulting insights in dynamics-based drug discovery. We have an opening for a postdoctoral associate with a focus on experimental work related to the structural biology of G Protein Coupled
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, immunostaining, western blotting, RT- PCR, single cell RNA sequencing, and single cell ATAC sequencing) Performs molecular and cell biology experiments. Presents findings at national and international meetings and
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, transposon elements, circulating tumor cells, and breast cancer metastasis. Candidates with experience in RNA biology or mouse models are strongly preferred. We employ a wide range of cutting-edge techniques
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NIH Guidelines FLSA Status: Exempt Requisition ID: 18519 Summary The position is intended for Computer Science, Computational Biology, or life science graduates transitioning to a data science and
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well as molecular biology, specifically in mammalian cells. Prior experience in the structure biology will be highly beneficial. Candidates must have at least one first-author publication (or article in press) in a
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a related field. No experience required. Preferred Qualifications A Ph.D. in Genetics, Bioinformatics, Computational Biology, or a related field. Strong background in population genetics, statistical