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motivated candidate with a background in neuropsychology, medicine, neuroscience, molecular biology, biostatistics, pharmacology, pharmacoepidemiology, public health, statistics or a related field. The
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3-year PhD studentship: Scaling-Up Functional 3D Printing of Devices and Structures Supervisors: Professor Richard Hague1 , Professor Chris Tuck1 , Dr Geoffrey Rivers1 (1 Faculty of Engineering) PhD
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grant applications. Collaborate with computational and wet lab teams across multiple institutions. Data Management & Infrastructure Organize and back up sequencing data and analysis results using lab
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students and supervising professors); implementation of the planned research program, evaluation and interpretation of the results, elaboration and presentation of the research; participation in lectures
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of Electrical Engineering and Computer Science School of Art and Design Course language German and English Financial support No Structured research and supervision Yes Research training / discussion Yes Career
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computer literacy, good inter-personal communications skills. Desirable skills: A Master in Health Economics with experience in cost effective analyses. Funding notes The three year studentship covers UK
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effective and safe treatments Do you want to take part in a groundbreaking interdisciplinary research project at the intersection of computational science, epidemiology, and neurology? The Faculty of Medicine
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Research Researcher Job Description in Cancer Biology School: Department of Internal Medicine, The Ohio State University. Description: We are seeking highly motivated and enthusiastic Ph.D. or MD scientists
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future autonomous instrument control and self-directed experimentation will be developed, recognizing the challenge presented by the integration of multiple complex systems. Coding and user interface
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materials systems at the molecular level with machine learning. The PhD Student will work with tumour sections to develop multiple instance learning and weak supervision / spatial transcriptomics models