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applications, including fine chemistry, catalysis, agriculture, and life science. For instance, phosphorus-based chemicals are essential in hydrometallurgy, ceramics, and serve as building blocks for RNA and DNA
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reference letters. Our Offer Very competitive salary and benefits package. A unique set of research partners and collaborators. Access to a pool of highly motivated and rigorously selected Master and PhD
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applications of quantum dots. Write technical reports, research papers, and grant proposals. Present research findings at internal meetings, national and international conferences. Education PhD in Materials
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. Required Qualifications : Doctorate: A PhD in Industrial Engineering, Environmental Engineering, Waste Management, Data Science, or a related field. Modeling Expertise: Proven experience in designing
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. Additionally, knowledge of gas-phase reaction product analysis using micro-GC and FTIR is essential. A solid understanding of general material synthesis is also mandatory. Candidate Profile: Hold a PhD in
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PhD students and several national and international partners, MSN is emerging as a strong actor in the Moroccan materials research scene. The department coordinates several initial and executive Master
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, Polymers and Composites, and Sustainable Materials. With some 100 researchers and PhD students and several national and international partners, MSN is emerging as a strong actor in the Moroccan materials
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PhD or equivalent in a relevant discipline from a recognized university. Applicants must demonstrate that their doctoral work and previous experience are related to one or more aspects of magnetic
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master students and PhDs Education, qualifications, and experience Applicants must have an earned doctorate in Agronomy, Soils Sciences with hands-on the dynamic of Organic Matter in the soils, or Soil
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. Contribute to the supervision of master and PhD students. Qualifications: Ph.D. in Earth Sciences, Remote Sensing, Physics, Applied mathematics, or related field. Strong background in land surface modeling