45 internships-in-structural-engineering Postdoctoral research jobs at University of Washington
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, functional genomics, and mouse engineering approaches to understand how cancer cells communicate with their neighbors, or the stromal cells, in the metastatic cascade. Our lab also applies biostatistics
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researchers in Chemistry, Materials Science, Data Science, and Chemical Engineering. We prioritize career and professional development for postdoctoral researchers. In addition to one-on-one mentorship
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. Qualifications Required Qualifications: Completed PhD in biomedical engineering, electrical engineering, physics, or a medical imaging related field. Experience with developing advanced pulse sequences
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, functional genomics, and mouse engineering approaches to understand how cancer cells communicate with their neighbors, or the stromal cells, in the metastatic cascade. Our lab also applies biostatistics
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-granulosa cell communication regulate folliculogenesis? This project focuses on understanding the actin- and microtubule-based structures that mediate granulosa cell-oocyte communication (See Doherty and
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. Postdoctoral applicants must be graduates of APA-accredited doctoral programs in clinical or counseling psychology, have completed an APA-accredited internship, and be U.S. citizens or permanent residents. About
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for Protein Design (IPD) in Seattle. The Institute for Protein Design (IPD) is creating a new world of synthetic proteins to address 21st-century challenges in medicine, energy, and technology. The IPD is a
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research participants. With this research, we have a unique opportunity to address the large unmet need of treatment-resistant disorders of brain function. We have applied the technology to patients with
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. - Biomedical Engineering, PhD or terminal degree or combination of education and experience may substitute for minimum education. - Neuroscience, PhD or terminal degree or combination of education and experience
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progression. The models are informed by a variety of experimental data, utilize different model structures/modeling techniques, are often closed source or coded in proprietary software packages with poor