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Do you have a completed PhD or Master’s degree in Architecture? Are you interested in an academic position based in China full-time, teaching in English? Have you got a passion for teaching
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with expertise in Landscape Architecture, and we will consider applicants from entry level to senior academics, to join the exciting, new Wellington Institute of Zhengzhou University joint educational
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University of Nottingham Ningbo China Department of Architecture and Built Environment Salary Salary will be within the range of RMB 450,190 to RMB 592,815 per annum, depending on qualifications and
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contribute to the direction of research programmes in the Department of Architecture and Built Environment. They will be responsible for generating new intellectual understanding/knowledge through
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benchmarking atomic qubit architectures. · Collaboration: Work closely with experimentalists to design and optimize protocols for qubit manipulation, gate operations, and system scalability. 2. Atomic
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universities or large enterprises, especially in the following areas: artificial intelligence, software engineering, computer security, programming and computer architecture. Candidates must have an MSc in
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computer architecture. Candidates must have an MSc in computer science or other relevant subjects. Strong applications in all areas of computer science will be considered. Teaching and tutorial experience in
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architectures (CNNs, RNNs). Experience with explainable AI (e.g., SHAP, LIME) is preferred. Quantitative Analysis: Demonstrated ability to handle multimodal datasets, conduct statistical analysis, and apply
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. Machine Learning Expertise: Familiarity with causal machine learning, ensemble methods, and deep learning architectures (CNNs, RNNs). Experience with explainable AI (e.g., SHAP, LIME) is preferred
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explore the principles of quantum mechanics and statistical physics to design next-generation AI architectures, driving innovation in autonomous scientific discovery. • Science of AI: We investigate