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in data integration, model design, and large-scale training by combining multi-modal scientific data, knowledge graphs, physics-aware machine learning, and GPU/HPC computing to develop transparent and
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are poorly equipped to address these multidimensional transformations. By focusing on individual actions or impacts, isolated design choices, or fixed value lists, they often fail to capture how SDTs reshape
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Is the Job related to staff position within a Research Infrastructure? No Offer Description We are looking for a PostDoc who will do research on the intersection of machine learning (ML) and statistics
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Research (NWO), a consortium of Dutch institutions from the domains of the humanities and the social sciences will build the Macroscope – the world’s first population-level research infrastructure designed
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at the intersection of digital innovation, governance, and sustainability, while contributing to top-tier academic publications and collaborative research activities. Information and application Are you interested in
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deployment; designing equivariant data augmentation strategies within the digital twin to generate diverse, physically valid demonstrations for imitation learning, enabling robots to learn robust manipulation
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data analysis, and to establish and manage a service infrastructure within the BioMS group, enabling fee-for-service access for external collaborators. You will independently design, plan and perform
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, the fusion community has started to develop fast surrogate models based on Machine Learning / AI models to speed up significantly the employed tools. Such tools have demonstrated to be generally applicable and
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to interdisciplinary work packages connecting technological innovation with environmental policy, regulation, and sustainability transitions and participate in consortium meetings, workshops, and stakeholder events, and
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models that provide evidence-based reasoning for mission-critical decisions. Explainable AI for mission-critical decision support: design interpretable machine learning architectures capable of offering