962 molecular-modeling-or-molecular-dynamic-simulation positions at The Ohio State University
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. Conducts research to characterize immunologic basis of human cancer using vitro and murine models; develops, adopts and implements new laboratory methods to achieve characterization of immunologic
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Biology Department: Medicine | School Biomedicine Science Physiology and Cell Biology Research Technician to assist and support scientific investigation to study “Inflammation-associated molecular
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manufacturing, materials and forming processes, damage and failure analysis, process simulation, dynamic behavior of materials, and mathematical modeling of manufacturing processes. Deep understanding in process
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undergraduate and graduate programs. The ideal candidate is a self-motivated, organized, detail-oriented person enthusiastic about basic science to join a team-based laboratory studying the molecular biology of
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University (OSU) is seeking a candidate to research in the field of polymer science. Responsibilities will include: 1. Measuring polymer molecular weights with our new Size Exclusion Chromatography (SEC
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that appropriate experiments are being conducted, following approved protocols. Participate in planning and design of research projects following PI Guidance. Execute and manage research projects using murine models
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be able to conduct research at the forefront of craniofacial and cell sciences. This educational mission is achieved through instruction in integrated courses in molecular biology, biochemistry
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, immunology, and molecular biology assays. Assist in animal experiments involving pigs, cattle, poultry, and other species. Generate, organize, and analyze research data using computer-based tools. Test and
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chemistry, chemical biology, biochemistry and computer-aided molecular design. Current research in the division includes: The identification of natural products with anticancer, anti-infective, and other
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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