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. Work with Learning@NIE editors to produce and distribute the publication on a regular schedule. Assist in the administration and promotion of NIE Teaching and Learning Committee’s Incentivising ICT Use
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University’s goals Manage the enrollment, renewal, and distribution processes for all benefits plans Ensure compliance with regulations pertaining to benefits and stay updated on changes in legislation Handle
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. Job Requirements: PhD degree in Computer Science, Computer & Electronics Engineering or other related fields. Strong background and knowledge in at least one or preferably more of the following fields
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As part of the Learning & Talent Management team, the candidate will be responsible for the formulation and end-to-end implementation of the Management Associate Programme (MAP). The key
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, community-engaged leaders. The ideal candidate will possess a strong background in higher education or programme management, with demonstrated experience in stakeholder engagement, fundraising, and
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multimedia and computer-based instructional technologies. · Ability to coordinate large courses. · Proficient in English to communicate to students and stakeholders Application Procedure The deadline
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, or disability. The Division of Physics & Applied Physics in the School of Physical and Mathematical Sciences of NTU provides a multidisciplinary academic program that provides students with a wide-ranging and up
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Medical School. In August 2024, we welcomed our first intake of the NTU MBBS programme, that has been recently enhanced to include themes like precision medicine and Artificial Intelligence (AI) in
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, including machine learning, computer vision, adaptive data modelling, and computational imaging. The objective is to develop state-of-the-art machine learning algorithms for solving ill-posed inverse problems
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, including machine learning, computer vision, adaptive data modelling, and computational imaging. The objective is to develop state-of-the-art machine learning algorithms for solving ill-posed inverse problems