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, workshops and meetings. Communicate to the research projects team the development, progress and results of research activities. Develop collaborative links with the core scientific staff in related program
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leveraging up-to-date science and technology. The AgroBioSciences (AgBS) program leverages up-to-date technologies to address African agriculture challenges. It is a multidisciplinary research center that aims
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letter): PhD. in Genomics, Bioinformatics/Computational Biology or equivalent. Proficiency in molecular biology laboratory techniques. Experience supported by scientific records related to development new
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the program, ensuring their professional growth while collectively meeting program milestones on schedule. Contribute to scientific knowledge dissemination by publishing in peer-reviewed journals, and actively
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. Integrate and interpret multi-omics datasets to understand microbial community dynamics and interactions. Collaborate with bioinformaticians and apply computational tools for data processing, assembly, and
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Title: ASARI - Postdoctoral Position in Plant Breeding Entity: Agriculture in Marginal Environment Program, ASARI About UM6P: Mohammed VI Polytechnic University (UM6P) is an internationally oriented
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Entity: ASARI-UM6P Laâyoune, Biorefinery and Bioenergy research program About UM6P: Mohammed VI Polytechnic University (UM6P) is an internationally oriented institution of higher learning, that is
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Modeling and Crop Yield Prediction in Africa Area of specialization: Agronomy, Modeling, biostatistics, Job/Project description: The AgroBioSciences Program (AgBS) at the Mohammed VI Polytechnic University
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of internships, projects and practical work related to the above-mentioned scientific fields. He/she will play an active role in the life of the program, organizing seminars, workshops and conferences related
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, Data Science, Climate Science, Geoinformatics, Applied and Computational Mathematics, or related fields. Proven experience in developing deep learning models (e.g., CNNs, RNNs, LSTMs) for large-scale