148 parallel-computing-numerical-methods-"DTU" research jobs at The Ohio State University
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Cancer Care Program Department: CCC | Cancer Prevention Position Summary Clinical Research Assistant who provides daily operational support to the Total Cancer Care Program, TCCP, in the Comprehensive
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written communication skills. A collaborative mentality towards research and mentoring. Desired skills and techniques include experience in parallel computation and advanced numerical programming, using
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to submitting your application, please review and update (if necessary) the information in your candidate profile as it will transfer to your application. Job Title: Post Doctoral Scholar - Biomedical Informatics
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Research Program - Student Assistant (M) Department: Medicine | Davis Heart and Lung Institute DHLRI-JM The Ohio State JB Cardiovascular Medicine Summer Undergraduate Research Fellowship (OSU-JB-CVM-URF
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turbulent fluid simulations on supercomputers and postprocessing the data with system identification, modal decompositions, transitional and turbulent flow dynamics, and computational methods; Strong written
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care, and population health. BMI faculty and trainees develop and apply cutting-edge computational methods, artificial intelligence, and data integration strategies to transform complex biomedical data
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Program Department: Medicine | Pathology Post Doctoral Scholar position in the laboratory of Hiroki Taniguchi Ph.D. Research focus is on understanding the molecular, cellular, and circuit mechanisms
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of study in the fields of AI/ML, aerodynamics and acoustics, and computational methods. Demonstrated strong written communication skills. Required Experience: N/A Desired Experience: Doctoral degree in
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turbulent flows, and computational methods; Strong written communication skills. Preferred Experience: Expertise in the fields of system identification, modal decompositions, transitional and turbulent flow
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. The research involves the development of practical and computationally efficient methods for adapting and fitting models from survival analysis to infectious disease transmission data and other data, including