44 parallel-computing-numerical-methods-"Prof"-"Eindhoven-University-of-Technology-(TU" positions at Nature Careers in Spain
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overseas youth scholars are specially invited to convene in Beijing, engaging in academic exchanges and field visits through both offline and online methods, fostering in-depth understanding and interaction
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The joint Center for Life Sciences (CLS) at Peking universities invites application for its International Fellow program. As the most vibrant, interdisciplinary and prestigious life science center
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computing frameworks (e.g., MPI, NCCL) and model parallelism techniques. Proficiency in C++/CUDA programming for GPU acceleration. Experience in optimizing deep learning models for inference (e.g., using
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negotiated individually. Application Method: Interested candidates should submit their CV and a cover letter explaining their motivations for applying to the position to Prof. Alexey Semyanov at semyanov
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, sports, food safety, and environmental monitoring. By integrating electrochemical techniques and imaging technologies, the unit delivers cutting-edge solutions with real-world impact. Led by Prof. María
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, and energy solutions. By integrating electrochemistry with advanced materials and engineering, the unit delivers pioneering solutions with real-world impact. Led by Prof. María Cuartero (ERC Fellow) and
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dedicated to digital transformation in healthcare, sports, food, and environmental monitoring through advanced (bio)chemical sensing, combining electrochemistry and imaging technologies. Led by Prof. María
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of carbon materials, low-dimensional materials and others Multi-scale computation method development Data-driven experiments AI for materials science Multi-scale modeling for materials manufacturing mechanism
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Faculty Positions in Biomedical Sciences/Biomedical Informatics Zhejiang University-University of Edinburgh Institute Haining, China About ZJE Zhejiang University-University of Edinburgh Institute
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-Based Generative Models: How can we fundamentally redesign generation processes for superior efficiency, controllability, and quality? We are exploring diffusion models, flow-matching, and other parallel