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leading research in the development of cryo-EM methods to solve problems in an important class of challenging materials. This Level A Research Fellow position will contribute to the ARC Discovery Project
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qualitative research and familiarity with analytical software (e.g., SPSS, Qualtrics,NVivo, RevMan) Experience working with participants with neurological conditions will be highly regarded. About Monash
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software such as NVivo Well-developed written and verbal communication skills A strong commitment to confidentiality, research integrity and quality Ability to work collegially within multidisciplinary
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of Physics and Astronomy. This position offers an exceptional opportunity to conduct high quality research in the development and application of new transmission electron microscopy methods (STEM and/or TEM
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. This position offers an exceptional opportunity to conduct high quality research in the development of new transmission electron microscopy methods (STEM and/or TEM) and their application to solve important
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or qualitative and mixed-methods research related to the project. We are seeking someone with a doctoral qualification in a relevant discipline or equivalent experience in multidisciplinary research
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continuum, from postgraduate research students through to senior researchers. The Pro Vice-Chancellor (Researcher Development) (PVC) is the academic leader for Research Masters and PhD programs, providing
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postgraduate qualification in Data Science / Computer Science (PhD preferred) Strong expertise in Python and/or R, SQL, data engineering and machine learning Experience with EMR systems (Cerner highly desirable
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, and the ability to work effectively both independently and collaboratively, with proficiency in relevant software and a readiness to adopt new technologies. About Monash University At Monash , work
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technologies will affect them. It is our anticipation that the work will commence with, in parallel, the survey for collecting the data and a comparison of machine learning methods on artificial pseudo-randomly