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Environmental Science (CAES) is a component of the Science & Technology pole of Mohammed VI Polytechnic University (UM6P). It constitutes a structure of higher education and practical-based research with a vision
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applied to the phosphate industry. Key Responsibilities 1. Analysis and Monitoring of Radionuclides and Heavy Metals: o Develop and implement nuclear analysis methods to characterize phosphate ores
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Geology specializing Base and Precious-Metal Deposits, with an expected start as soon as possible. The appointment will be at the Professor level depending on the curriculum vitae and past experience
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enrichment mechanisms of strategically important trace elements (e.g., rare earth elements, uranium) within phosphatic rocks and their interbedded layers. The outcomes of this research would provide essential
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candidate with strong expertise and interest in developing MOFs and their composites for sensing. Metal-organic frameworks (MOFs) have gained significant attention in sensing due to their high surface area
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separation and magnetic phenomena, as well as expertise in experimental methods to study the interactions between magnetic fields and solid and liquid materials. Additionally, knowledge of the physical and
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, and C, N, P, and other elements biogeochemical cycling within the critical zone. The successful candidate must understand the roles of water and atmospheric physics and chemistry in forming soils and
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Li-ion cathode materials using solid-state synthesis, sol-gel, co-precipitation, and hydrothermal methods. Structural and Chemical Characterization using: X-ray Powder Diffraction (XRD) and Rietveld
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Na-ion cathode materials using solid-state synthesis, sol-gel, co-precipitation, and hydrothermal methods. Structural and Chemical Characterization using: X-ray Powder Diffraction (XRD) and Rietveld
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Challenges Addressed in the Position: Heterogeneity and high dimensionality of multi-omics data requiring advanced AI/ML methods for robust analysis and integration. Data sparsity, batch effects, and missing