80 master-"https:"-"https:"-"https:"-"https:"-"IFM" Fellowship positions in Singapore
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of PhD/Masters/FYP students. Job Requirements: Preferably PhD in Computer Science, Electrical & Electronic Engineering, or equivalent. Background knowledge in signal representation/processing, esp
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learning difficulties in kindergarten and early primary level students. The successful candidate will play a key role in a multidisciplinary research project aimed at the early identification of mathematical
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The Research Fellow / Associate will be responsible to, and work closely with, the Principal Investigator, study team members, and external collaborators to ensure the successful completion of clinical studies
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Singapore. The candidate will work closely with the Principal Investigator to conduct qualitative and quantitative research related to the role of large language models in fostering critical thinking among
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to complete and we would advise that you have the following information ready to facilitate your application: Original PhD and Master's degree (if any), transcript and certificate in soft copies Test of English
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assigned by Principal Investigator Application Applicants (external and internal) will apply via Workday. We regret that only shortlisted candidates will be notified. Closing Date Closing date for
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is available immediately. Main Duties and Responsibilities The Postdoctoral Research Fellow will be involved in an innovative research project investigating novel artificial intelligence-driven
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more year. The position is available immediately. Main Duties and Responsibilities The Postdoctoral Research Fellow will be involved in an innovative research project investigating novel artificial
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story completion method that determines how nurses respond to changing state policies, employer incentives, and recruitment strategies. This project is original because it examines what scholars have
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Science of Learning research team in developing brain-based machine-learning predictive models for early identification of mathematical learning difficulties in kindergarten and early primary level students