167 parallel-and-distributed-computing Fellowship positions at Nanyang Technological University
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) who is highly skilled in and deeply passionate about computational electromagnetism and mathematical physics/engineering. The SRF should have strong background in computational methods for solving
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Responsibilities: Conduct advanced R&D in the theoretical and practical evaluation of quantum key distribution technologies and quantum cryptography implementations. Develop co-simulation pipelines and digital twin
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Research Analyst/Senior Analyst/Associate Research Fellow (China Programme) The S. Rajaratnam School of International Studies (RSIS), a Graduate School of Nanyang Technological University, Singapore
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College of Computing & Data Science International Postdoctoral Fellow Young and research-intensive, Nanyang Technological University, Singapore (NTU Singapore) is ranked among the world’s top
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(full-time) focusing on quantum hacking and quantum key distribution (QKD) security evaluation. You will work in an interdisciplinary and international team of quantum security experts, QKD system
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secure and reliable research on microchips used in quantum key distribution (QKD) systems. The researcher will focus on investigating and identifying potential hardware-level security vulnerabilities and
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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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supervise graduate students. Job Requirements: Ph.D. in Electrical Engineering, Computer Science, Statistics, or other related fields. Familiarity with machine learning and computer vision frameworks. Good
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next-generation luminescent materials. The successful candidate will work at the interface of computational chemistry and photophysics, applying advanced modeling tools to elucidate and predict
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. Assist PI in proposal writing and help supervise graduate students. Job Requirements: Ph.D. in Electrical Engineering, Computer Science, Statistics, or other related fields. Familiarity with machine