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and their roles in nutrient cycling, soil health, and environmental sustainability. Job Responsibilities Conduct independent and collaborative research projects focused on the effect seaweeds
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development of sustainable solutions to extend membrane lifespan while maintaining optimal performance. Special attention will be given to evaluating the effectiveness of cleaning agents, their chemical
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processes. This project focuses on designing and optimizing novel materials that enhance the efficiency and effectiveness of converting biomass into valuable products such as biofuels and fine chemicals. We
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an effective team player to interact constructively with the interdisciplinary team of the CBS department and other collaborators with different backgrounds. For further information, please contact
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systems, particularly their effects on soil rehabilitation, water retention, and soil aggregation. Developing methods and protocols to assess soil health and carbon sequestration in lands restored through
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: Demonstrated ability to work effectively in a team in an interdisciplinary research environment. Project Management: Experience in managing research projects, including writing funding proposals and coordinating
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solutions. Skill in translating complex data into actionable insights for research and decision-making. Proven capacity to work effectively in multidisciplinary teams, including urban planners, technologists
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petrogenesis; Integrate multidisciplinary data (petrological, geophysical, geochemical) for comprehensive geological modeling; Write technical reports and Collaborate effectively with team members, industry
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to diverse audiences. Languages: Proficiency in both English and French, in writing and speaking. Desired Skills: Teamwork: Demonstrated ability to work effectively in a team within an interdisciplinary
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advanced AI/ML methods for robust analysis and integration. Data sparsity, batch effects, and missing values across different omics layers and platforms. Cross-omics data fusion and representation learning