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competitive funding if interested. Maintain meticulous research records and support operational/reporting responsibilities associated with clinical research. Required Qualifications: A PhD in computational
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postdoctoral fellowships to start summer/fall 2026 for a one- or two-year appointment. The King Center’s Postdoctoral Fellows Program is intended for promising new PhD recipients—coming from fields such as
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Biomedical Data Science Postdoc Appointment Term: 2 years (can be exended) Appointment Start Date: December 1, 2025 (Flexible) Group or Departmental Website: http://med.stanford.edu/summerhanlab.html (link is
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evaluation Appointment Start Date: October - December 2025 Group or Departmental Website: https://med.stanford.edu/pedcriticalcare.html (link is external) How to Submit Application Materials: Please submit
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: Candidate must have a strong quantitative background, with a PhD in computational biology, bioinformatics or related field including bioengineering, computer science, statistics, or mathematics. Strong
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the possibility of renewal. Appointment Start Date: The start date is flexible. We will review applications on a rolling basis. Group or Departmental Website: https://med.stanford.edu/pathology.html (link is
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or Departmental Website: https://earlychildhood.stanford.edu/ (link is external) How to Submit Application Materials: Please fill out the application form and submit materials at: https
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year Appointment Start Date: ASAP Group or Departmental Website: https://ferraralab.stanford.edu/ (link is external) How to Submit Application Materials: Please submit to Kathryn Andrews
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Engineering Group or Departmental Website: https://web.stanford.edu/group/magiclab/home.html (link is external) Does this position pay above the required minimum?: No. The expected base pay for this position is
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. Required Qualifications: PhD in Computer Science, AI/ML, Computational Biology, or a related quantitative field. Proven expertise in deep generative modeling and large-scale multimodal learning. Experience