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projects and technical leadership. Basic Qualifications: Master's degree or PhD in Computer Science, Artificial Intelligence, Machine Learning, Statistics, or a related technical field. Proven experience in
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: · Education: PhD in Materials Science or similar. Knowledge in tech transfer will be highly valuable. · Knowledge: Advanced materials development Polymeric materials development, functionalization
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, computer science, biomedical engineering 11 Shaanxi Key Laboratory of Big Data Knowledge Engineering Artificial intelligence, medical image analysis 12 Digital Oral Information Modeling & Applications Team Digital
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: · Education: PhD in Materials Science or similar. Knowledge in tech transfer will be highly valuable. · Knowledge: Advanced materials development Polymeric materials development, functionalization
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, Computer Science, or a related field is required, along with image analysis skills (biological or medical image analysis preferred), including denoising, segmentation, and detection of specific patterns. The ideal
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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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of science academies around the world. The University is recruiting scholars focus on artificial intelligence and robotics, data science and big data technology, computer science, statistics, operations
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areas of nanoscience and nanotechnology. Job Title: Research Support Technician in Active learning Research area or group: Theoretical and Computational Nanoscience Description of Group/Project: In
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has experienced a significant expansion in recent years, reflecting a growing interest in life sciences research at the nano and micro scales. The facility plays a key role in enabling interdisciplinary
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, evolutionary theory, quantitative genetics, data science, toxicology, and law. Within this project, our group at the CRG focuses on the analysis of bulk and single cell RNA-seq from five different model species