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engineering, or related field. Requirement PhD in chemistry, chemical engineering, or related field from a recognized University. Strong experience in research in the field of organic and inorganic waste
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. Candidates should hold a PhD in Natural products chemistry, Phytochemistry, Cell biology, Pharmacognosy, Cosmetology, or a related field. The successful candidate will focus on developing new formulations with
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providing guidance to PhD students who are actively involved in ecohydrological modeling research. Conduct laboratory analyses and field work. Collaborate with local researcher from the college of agriculture
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prior to their implementation. The candidates must hold a PhD in Metallurgy, electrochemistry, mechanical engineering or related domain. They must exhibit hands-on experience with electrochemical
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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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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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-reviewed journals. Prepare innovative research projects and prepare grant-proposals Supervise Postdoc, PhD and Master students as well as interns Project management including budget, materials, equipment
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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