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process – or none at all. Read the application details carefully and submit your application by the deadline. For more details, visit our scholarships application page.
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cannot be deferred Every scholarship may have a different application process – or none at all. Read the application details carefully and submit your application by the deadline. For more details, visit
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while inferring underlying physiological changes. Required knowledge Machine learning, dynamical systems theory, control theory, signal processing, time series analysis, neuroscience are all relevant and
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Machine learning, dynamical systems theory, control theory, signal processing, network theory, neuroscience are all relevant and a student should have strong knowledge in at least one of these and a
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Epilepsyecosystem.org as a way to bring researchers, code and data together from all over the world to help solve the problem of seizure prediction. Required knowledge Machine learning, AI, signal processing, dynamical
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"Zhao Scholarship Application" This scholarship cannot be deferred. Every scholarship may have a different application process – or none at all. Read the application details carefully and submit your
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directly to Monash. This scholarship cannot be deferred. Every scholarship may have a different application process – or none at all. Read the application details carefully and submit your application by
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a research degree at Monash, please click here . Apply for a scholarship Please follow the 3-step application process here . Application dates for the commencement of the Integrated PhD program in
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, software, human-computer interaction, ...). We also work very much interdisciplinarily with colleagues from other faculties, e.g. on bio-diversity matters, on physical aspects, on modelling aspects, and on
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development process for DL, covering requirement analysis, data collection and labeling, data cleaning, network design, training, testing, and operation. Required knowledge deep learning, natural