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executed, ideally involving 3D image analysis, inverse problems, or physics-informed modeling. Cryo-EM/ET and computational structural biology projects are especially relevant. Discuss results, limitations
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interested in gaining hands-on research experience. For more information about the lab, please visit: https://www.med.upenn.edu/sehgallab/ About the Role The Research Technician I will support ongoing research
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they continue to investigate. Approaches include genetics, spatial genomics, single-molecule biophysics, super-resolution imaging, computational modeling, and structural studies including X-ray
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(e.g., imaging fluorescent proteins in C. elegans ) Data analysis (image processing, quantification, statistics, etc .) C. elegans husbandry (animal maintenance, etc .) Assist with general laboratory
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mouse models, including colonizing mice with defined microbiota, performing cell transfers into mice, harvesting and processing of mouse tissues for flow cytometry, genomics, and imaging studies Culture
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biology. Please include a cover letter with your application detailing your qualifications and experience for this position. Describe a deep learning project you have executed. Projects in computer vision
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infrastructure. You'll build a large-scale foundational microscopy image dataset and develop scalable data processing pipelines. This includes collaborating with internal and external partners on data sharing and
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electrophysiology, imaging, and behavioral methods, with rodents as the model system. A major challenge that makes learning difficult is that the world is complex and high dimensional: there are often multiple
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willingness to learn to perform new techniques. Preferred Experience with mammalian tissue processing (dissections, cryopreservation, sectioning, imaging, etc.). Experience with 2D mammalian cell culture and/or
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the body during development and how defects in these processes can lead to birth defects and cancer. We use cell biological, genetic, biophysical, computational, and live-imaging approaches to visualize cell