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programs including biosaline agriculture, native species valorisation, camel value chain, water and renewable energy. The institute consists of a multidisciplinary team of agronomists, biochemists, molecular
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on solving industrial challenges, complex chemical and biochemical reactions, scaling up, and process engineering validation. CBS projects aim to deeply understand molecular mechanisms of transformations
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-IoT system/network considering communication and data fusion requirements. Conduct a theoretical analysis of the developed designs. Develop simulations (writing code) to support the theoretical findings
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the water budget over broader regions, mainly in ungauged catchments. Being developed for specific contexts, the structure of these models, depending on the dominant regime and its dynamics, put more focus on
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. Postdoc Supervisor: Pr. Mostapha TARFAOUI (GEP/GSMI), Postdoc Co-Supervisor: Dr. Abdelmalek TOUMI (ENSTA, STIC, France), Dr. Ayoub Karine (Université Paris Cité, LIPADE, France) Project & Budget line
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behavior within the storage system to optimize design and performance. Demonstrated proficiency in Density Functional Theory (DFT) and/or Molecular Dynamics (MD) simulations, enabling the computational
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learning, imitation learning, and the integration of large language, vision–language, and vision–language–action models to improve generalization. A key objective is to design lightweight and efficient
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proficiency in Density Functional Theory (DFT) and/or Molecular Dynamics (MD) simulations, enabling the computational investigation of material properties, electronic structure, and atomic-scale behavior
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network of universities and research centers around the continent to link real field issues with up-to-date science. The institute consists of a multidisciplinary team of agronomists, biochemists, molecular
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candidate will investigate robot learning methods for control and decision-making on edge robotic platforms. Research will focus on reinforcement learning, imitation learning, and the integration of large