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candidate in the area of machine learning for IoT networks. The candidate must hold (or about to complete) a PhD in the related fields shown below. The candidate is expected to have hands-on experience in
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Management:Assist in managing research projects, including drafting funding proposals, coordinating with partners, and monitoring budgets. Required Qualifications : PhD: A PhD in digital public health, urban health
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partners, and other research institutions; Publish research findings in peer-reviewed scientific journals. Qualifications: PhD in geology of igneous rocks or equivalent, obtained within the past two years
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plant performance. Analyze experimental data using appropriate statistical methods and communicate findings through scientific publications. Work closely with researchers from other disciplines, such as
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recognized university. Excellent English communication, both verbal and written, is required. Criteria of the candidate: Postdoc PhD degree in the mentioned areas of research or other related fields from a
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results at international conferences, workshops and meetings. Mentor master’s and PhD students as part of research activities. Collaborate with internal and external researchers to strengthen
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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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modeling applied to urban dynamics. Publications in scientific journals. Personal and Organizational Qualifications: Ability to develop innovative methods. Ambition for research excellence. Interest in
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, and research articles, and participate in conferences. Candidate Profile PhD degree in Materials Science, Chemical Engineering, or a related field. Strong background in materials synthesis and
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of software tools for the broader research community. Responsibilities: Develop and implement transformer-based genomic language models for bacterial genome analysis. Train and evaluate models on large-scale