31 network-coding-"Chung-Ang-University" Fellowship positions at Nanyang Technological University
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data analysis (TDA) techniques such as persistent homology, with application in real data sets such as biomolecular data and network data Perform data preprocessing, feature extraction, and analysis
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quality reports and documents that consolidate research findings Job Requirements: PhD degree in optics or related field Familiarity with national codes and standards Good written and oral
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in Health Research Methods, Epidemiology, Computer Science, or a related field. Expertise in evidence synthesis and clinical guideline methodology such as network meta-analysis, GRADE. Experience with
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to validate hypotheses and explore novel material behaviors. Leverage data analytics platforms, coding skills, and simulation environments to enhance process understanding and improve outcomes. Contribute
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, Materials Studio, etc.), and general coding (Matlab, Python, etc.). Good written and oral communication skills. Good communication and collaboration skills, and good adaptability for independent work, strict
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networking activities. The successful candidate should: Possess a PhD in international political economy, international relations, political science, or related disciplines; or those with relevant working
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at all levels, ability to work collaboratively in a fast-paced environment Possesses international experience, with a strong network of contacts in the region We regret to inform that only shortlisted
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degree in (applied) mathematics Relevant research experience in stochastic analysis and/or partial differential equations, python coding Enthusiasm, good communication skills, and being able to conduct
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, tsunamis, and climate change in and around Southeast Asia, towards safer and more sustainable societies. EOS maintains a regional network of geophysical observation stations in collaboration with neighboring
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, leveraging renewable energy inputs. By utilizing deep neural networks (DNN), a surrogate model for the i3C process is developed, facilitating rapid evaluation and optimization. Additionally, a data-driven