86 computational-mechanics-phd Postdoctoral positions at Conservatorio di Musica "Santa Cecilia"
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University. The ideal candidate will have a strong background in engineering—biomedical, electrical, or mechanical—with expertise in optics, imaging systems, or device development. Our research focuses
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21 Aug 2025 Job Information Organisation/Company Fondazione Bruno Kessler Research Field Physics » Quantum mechanics Researcher Profile Recognised Researcher (R2) Positions Postdoc Positions Country
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, environmental fluid mechanics, or a related discipline. The qualified candidate will work with Dr. Daniel Dauhajre in the Computational Ocean Dynamics and Ecosystems group and have the opportunity to interact
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their skills in translational biomedical innovation with potential impact in both academic and industrial settings. Required Qualifications: PhD in bioengineering, biomedical engineering, mechanical engineering
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common equipment, and also have the benefit of access to research facilities at Stanford University including core computing, microscopy, library, biostores, and analytical facilities. The Spin lab has
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genomics and single-cell spatial transcriptomics, participate in T cell-targeted therapy development, hone their computational, leadership, communication, and funding acquisition skills, and join the vibrant
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the Office of Postdoctoral Affairs. The FY25 minimum is $76,383. The Mechanics and Computation Group (Department of Mechanical Engineering, Stanford University) is seeking applicants for the Stephen Timoshenko
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the field of dermatology, leveraging epidemiology, data science, and public health to advance health equity. Leandra A. Barnes, MD is an NIH-funded K scholar committed to elucidating the underlying mechanisms
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for Human and Planetary Health (HPH) (link is external) and Project Unleaded (link is external) for an exciting postdoctoral fellowship that contributes to a high-impact global program with a mission to
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community on a variety of projects such as: mechanisms for fair allocation under uncertainty, such as teacher assignment, program/facility location, and resource augmentation or reduction information