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, public health, education and innovation. As a member of the Pasteur Network, the Institut Pasteur encourages collaborations that strengthen scientific excellence worldwide. The Technology Department
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in these areas. This dynamic environment offers exceptional opportunities for academics eager to drive innovation and shape the future of health and medicine in Luxembourg and beyond. Your role
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domain-independence with the goal of incrementally moving from a specific chemistry knowledge graph dedicated prototype to a domain-independent solution. Design a generic and declarative method for tool
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between teaching and research: Teaching: The holder of the position will contribute to the Bachelor of Science in Pediatric Nursing. The candidate will contribute to establish the training plan
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which functional forms of a protein are reached from an unfolded ensemble. Knowledge of these pathways has tremendous potential for important applications, especially drug design. For example
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. • Designing algorithms that leverage problem structure (e.g., sparsity, low-dimensional embeddings) to improve scalability. • Implementing and benchmarking these methods on realistic machine learning tasks (e.g
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generative context, in particular when data may evolve along the time. A first goal of this Ph.D. will be to propose a generative DLVM model specifically designed for massive evolving heterogenous data
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-academic partners such as ministries, local governments, associations, NGOs … An exceptional research environment and skilled support staff Dynamic, innovation-friendly study programmes and excellent student