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PhD graduates who are passionate about leveraging computational methods to transform trauma and acute care surgery. Fellows will work at the intersection of clinical medicine, data engineering, and
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the resulting data from the experiments. Required Qualifications: Candidate must have a strong quantitative background, with a PhD in computational biology, bioinformatics or related field including
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: The successful applicant must have a PhD in chemistry, bioengineering or a related area. Required Application Materials: CV Cover letter Letters of reference Stanford is an equal opportunity employer and all
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environment which values kindness, honesty, curiosity and integrity. Required Qualifications: PhD in either - Biochemistry / Molecular Biology / Human Genetics / Bioengineering Further details are given in
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Competitive salary and benefits Strong mentoring and career development support Required Qualifications: PhD in Neuroscience, Bioengineering, Electric Engineering, Computer Science, Physics, or a related field
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the evolution of resistance to anti-cancer therapies. Developmental Cell. doi.org/10.1016/j.devcel.2021.07.009. Required Qualifications: A PhD in biology, genetics, development, neuroscience, or a related field
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: Pathology Biomedical Data Science Postdoc Appointment Term: 1 year (renewable) Appointment Start Date: As soon as feasible; February 2026 How to Submit Application Materials: Please email the required
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degree (PhD, MD, or equivalent) or Master’s degree in a relevant field (e.g., Computer Science, Biomedical Engineering, Public Health, Surgery) Experience in clinical research, data analysis, or machine
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Qualifications: A PhD in biology, neuroscience, development, or a related field. At least one first-author publication. Experience with iPS cells is preferred but not mandatory. Required Application Materials: CV
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, molecular biology, or bioengineering) PhD and/or MD degree conferred prior to start date Strong background in cellular and molecular immunology Additional experience in cancer models, cell / protein