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scattering (SAXS) tensor tomography Develop correlative multi-scale analysis pipelines integrating SAXS tensor tomography and high-resolution X-ray tomography, and complementary electron microscopy data (in
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to mueller7@stanford.edu . Please write "Project Unleaded Lab Postdoc Application" in the subject line of the email. Does this position pay above the required minimum?: No. The expected base pay for
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in transcriptome sequencing and analysis will be preferred. Prior experience in electron microscopy or mass spectrometry is advantageous but not required. Strong writing skills with a proven track
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: initially one year, renewable Appointment Start Date: Sept-Oct 2025 Group or Departmental Website: http://cegelskilab.stanford.edu (link is external) How to Submit Application Materials: Please email the PI
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properties. Surface characterization will be carried out using techniques such as optical microscopy, scanning electron microscopy (SEM), X-ray photoelectron spectroscopy (XPS), and X-ray diffraction (XRD
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, 02115 Contact Email sysbio@hms.harvard.edu Salary Range $72,000 – $77,500 Information regarding postdoctoral fellow salary, which is determined by the number of years post PhD, can be found at https
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on the advanced characterization of nanostructure materials by transmission electron microscopy (TEM). Your profile: Ph.D. in Chemistry, Materials Science, Mechanical Engineering, or a related discipline Solid
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numerical results with observations from scanning and transmission electron microscopy provided by the partners of the ANR project IMP3D (https://anr.fr/Projet-ANR-24-CE08-3737 . - Select a discrete
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distribution of defects within the specimen. At a finer scale, the microstructure will be analysed using: optical microscopy, scanning electron microscopy (SEM) for phase identification. These analyses will
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, engineering, physics, biophysics, applied mathematics, computational biology or a related quantitative field Strong background in deep learning for image analysis / computer vision, ideally on microscopy time