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, technology and information on soil suitability, land use and fertilizer development, which can be accessible to the various African stakeholders viz., farmers, universities, research institutions, policy
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area of Marrakech. About MSN department The Materials Science, Energy, and nano-engineering (MSN) is a department at Mohammed VI Polytechnic University that aims to makes use of innovative research and
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support the supervision of junior researchers, while actively participating in the dissemination and valorization of research outcomes. Candidate Criteria PhD in Chemistry, with a specialization in
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Qualification: A PhD degree in physics, materials chemistry, engineering physics, materials science or similar with focus on semiconductor materials or solar cells, with a focus on perovskite solar cells. Strong
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agriculture challenges leveraging up-to-date science and technology. Oriented towards Africa, ASARI acts in connection with a wide network of universities and research centers around the continent in order to
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will be published in high standard scientific journals. Criteria of the candidate: PhD in environmental science, soil science, surface geochemistry, or related fields from a recognized Moroccan or
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. Oriented towards Africa, ASARI acts in connection with a wide network of universities and research centers around the continent in order to link real field issues with up-to-date science. The institute has
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the broader research community. Experience and Qualifications PhD in Soil Science, Remote Sensing, Environmental Science or a related field. Strong experience in Soil sciences (e.g., physics, chemistry
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present your findings at scientific conferences. Experience and Qualifications: PhD in Agriculture, Environmental Science, Climate Change, or a closely related field. Strong background in agronomy, crop
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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