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experimentation, isotopic measurements and modeling aspects taking advantage of a network of international collaboration and collaborations with the private sector. Importantly, this project is associated to a
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learning, transfer learning, and data fusion techniques to integrate heterogeneous omics datasets and clinical metadata. Conduct network-based analysis (gene regulatory networks, protein-protein interaction
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21 Aug 2025 Job Information Organisation/Company MOHAMMED VI POLYTECHNIC UNIVERSITY Research Field Architecture History Philosophy Religious sciences Sociology Ethics in social sciences Geography
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CBS - Postdoctoral Position, Artificial Intelligence Applied to Metabolomics for Health Applications
monitoring. Reconstruction of metabolic networks and pathway analysis to understand disease-specific metabolic reprogramming. Tackling data sparsity, batch effects, and heterogeneity in clinical metabolomics
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OCP’s Strategic Business Unit (SBU) Mining initiative to achieve net-zero Scope 1 emissions, aligning with the company’s roadmap for sustainable mining operations. Key Responsibilities Literature Review
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research network, and is dedicated to economic and human development. The university places research and innovation at the service of the African continent and is committed to providing relevant skills
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teaching, as well as applied research and innovation. UM6P boasts state-of-the-art infrastructure and an extensive academic and research network, and is dedicated to economic and human development
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experimentation, isotopic measurements and modeling aspects taking advantage of a network of international collaboration and collaborations with the private sector. Importantly, this project is associated to a
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at the service of education and development. This unique nascent university, with its state-of-the-art campus and infrastructure, has woven a sound academic and research network, and its recruitment process is
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. The successful candidate will develop advanced machine learning (ML) models to automate and optimize retrosynthetic analysis, facilitating the discovery of efficient and sustainable synthetic routes for complex