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to apply. Techniques are not essential but experiences in the following topics are preferred: nonequilibrium processes of many-body systems; metastable states; nonequilibrium steady states; periodically
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uniquely combines modern urban amenities with rich cultural traditions, providing an ideal setting for both professional and personal growth. Application Process: - Interested candidates are requested
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uniquely combines modern urban amenities with rich cultural traditions, providing an ideal setting for both professional and personal growth. Application Process: - Interested candidates are requested
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, Shanghai 201210, China [map ] Subject Areas: Physics / many-body quantum geometry; altermagnetism; cavity quantum science; quantum non-equilibrium processes; Casimir physics , Condensed Matter Theory Appl
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. Application Process Key contacts and information about the Faculty, Schools, Departments and Institutes can be found on our website (https://www.chem.pku.edu.cn/en/ ). Application should include a CV (max. 2
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postdoctoral fellows, who will be interested in one of the following topics: 1) Theoretical condensed-matter physics 2) Quantum information processing 3) Strong light-matter interactions Requirements: PhD in
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experiment. The group is particularly interested in the detection of solar neutrinos, solar axions, and light dark matter. About the Position: The successful candidate will play a key role in the operation and
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unified framework that can understand and generate human-like text while simultaneously processing and analyzing medical images. The model will be trained on a diverse dataset of medical images and
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, separation, and catalysis, with a focus on carbon capture and conversion technologies. Artificial Intelligence: Leveraging AI and machine learning to optimize material design and catalysis processes. Carbon