106 postdoc-in-automation-and-control-"Multiple" Postdoctoral positions at MOHAMMED VI POLYTECHNIC UNIVERSITY
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engaged in the development of advanced biobased products and materials thereof using biotechnological, physical and chemical conversion strategies and engineering processes (b) understanding and controlling
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undergraduate and graduate-level courses in algal biotechnology (algal cultivation and bioprocessing), Mentor junior faculty members and supervise postdocs, PhD and MSc students, research engineers, and
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results, prepare presentations and manuscripts, and publish in high-quality peer-reviewed journals. Prepare innovative research projects and prepare grant-proposals Supervise Postdoc, PhD and Master
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Design and execute experiments to study molecular and physiological processes in plants. Utilize tools such as proteomics, and metabolomics. Analyze plant phenotypes under controlled and stress conditions
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. Scientific rigor, teamwork ability, and good communication skills (English proficiency required; French optional but appreciated). Position Details Contract: Full-time postdoc, 18-month fixed-term, renewable
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applications for a Postdoctoral Researcher to contribute to a project exploring the intersection between urban heritage and spatial justice. The postdoc will work within a multidisciplinary research team and
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on multiple components by analyzing maintenance data, performing failure analysis and giving recommendations backed by laboratory testing and emulation results. The candidate must be comfortable with operating
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Institute (GTI) at UM6P specializes in: Renewable energy systems (solar, wind, smart grids) Advanced digital technologies (Industry 4.0, IoT, automation) Green process engineering (circular-economy and low
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Technology Institute (GTI) at UM6P leads cutting-edge work in: Renewable energy systems (solar, wind, smart grids) Advanced digital technologies (Industry 4.0, IoT, automation) Green process engineering
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. The successful candidate will develop advanced machine learning (ML) models to automate and optimize retrosynthetic analysis, facilitating the discovery of efficient and sustainable synthetic routes for complex