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the supervision of Dr. Merry Mani. The successful candidate will work on the development, validation, and translation of cutting-edge MRI techniques for imaging slow-flowing neurofluids and brain microstructure in
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and membrane protein complexes • Familiarity with Linux, MATLAB, Python, or other computational tools is a plus This position provides an excellent opportunity to work on high-resolution structural
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three Phase 3 clinical trials last year. During this same period of time, we discovered a novel signaling mechanism termed functional selectivity (biased signaling) and demonstrated that this mechanism
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The Center for Advanced Study of Teaching and Learning (CASTL) is seeking applications for a qualified postdoctoral research associate to work under the mentorship of Dr. Tish Jennings on Project
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part of the Lafita-Navarro lab works towards revealing the vulnerabilities of glioblastoma cells with the ultimate goal of improving the treatment options and survival of glioblastoma patients. Motivated
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cardiovascular treatments. In this role you will apply both machine learning predictive modelling and human genetic analyses of non-coding regulatory sequences to identify cell-specific targets for coronary artery
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Research Associate position, with the possibility of extension based on an annual basis dependent upon satisfactory performance and the availability of funding. This position is part of the Preventive
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injection, and cardiac/muscle lead surgery. Work autonomously to plan, conduct, and troubleshoot experiments recording various biosignals such as EEG, EKG, blood pressure, plethysmography, and breathing
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. The successful candidate will work closely with Dr. Michael Porter and collaborate with faculty, research staff, and students on projects focused on: Estimating and predicting the global competitiveness
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science of science, network science, and natural language processing. As part of a small research team, the postdoc will help lead efforts to provide a quantitative model of global competitiveness