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to the field of research (e.g., 3D dynamic computer graphics, Machine Learning, AI, cognitive science, signal processing, computational modelling). C3 Knowledge of project-specific technical models, equipment
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Job Purpose To make a leading contribution to a project Machine Learning Accelerated TCAD Simulations working with Prof. Vihar Georgiev. The successful candidate will also be expected to contribute
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knowledge and skills in a similar or number of different roles For appointment at Grade 7: A2 A PhD or equivalent qualification/experience in statistics, machine learning or data analysis. Desirable B1
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or techniques Desirable B1 Specialist knowledge of energy efficiency of mobile communication systems and/or machine learning Skills Essential: C1 Excellent programming, algorithm development, and mathematical
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research priorities. They have expertise in analysing next generation sequencing data, metagenomics, transcriptomics, data integration, molecular evolution and phylogenetics, machine learning, software
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. We are looking for someone with expertise in one or several of the following; integral projection models, movement ecology, population ecology, machine learning, or animal-borne telemetry
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and future directions within the wider subject area or subject specialism A3 Knowledge of AI and machine learning. Skills Essential: C1 Research creativity and strong cross-discipline collaborative
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or car. As a Team UofG member, you will be part of a world changing, inclusive community that values ambition, excellence, integrity and curiosity. We strongly encourage applications from across our
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statistics, as well as substantiated knowledge of machine-learning and Artificial Intelligence (AI) methods applied to Earth Observation geospatial data (e.g., satellite imagery, sensors, street view images
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of structured light with turbulence environments, fundamentals of optical propagation in scattering environments, and application of machine learning for sensing technologies. C2 Ability to demonstrate a degree