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experience in modeling of atmospheric composition. Additional Qualifications Experience with the GEOS-Chem model and with inverse analyses, strong scientific programming skills. Experience with inverse
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Materials Science, Characterisation Materials Science, Defence Composite Materials, Functional Composite Materials, Energy, Nanomaterials, Low Dimensional Materials, Biomaterials Materials, Biological
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atmospheric chemistry, air quality, and model development. Basic Qualifications: Ph.D. in atmospheric science and substantial experience in modeling of atmospheric composition. Additional Qualifications
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Materials Science, Characterisation Materials Science, Defence Composite Materials, Functional Composite Materials, Energy, Nanomaterials, Low Dimensional Materials, Biomaterials Materials, Biological
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Biotechnology and Bioprocesses, Membrane Technology, Chemicals and Materials, Resource Recovery, and Modeling & Artificial Intelligence. By harnessing its cross-cutting, interdisciplinary, and transformative
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, multicomponent alloys can be designed to have anti-microbial properties that are optimized by selection of the alloy composition. The project will exploit the use of Composition Spread Alloy Films (CSAFs
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) composites for the repair, rehabilitation, of existing infrastructure and recycled FRP composites and/or other construction-grade waste materials. The successful candidate will be highly self-motivated and has
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addressing composite failure, damage mechanisms, and structural behaviors. Develop tools and models for virtual certification, integrating data-driven and physics-based approaches. Developing digital tools
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updates in a landscape evaluation toolkit, which include new models for listed and sensitive species. These models can inform managers during planning on how to improve forest health and reduce adverse
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properly. Please turn on JavaScript in your browser and try again. UiO/Anders Lien 4th August 2025 Languages English English English Postdoctoral Research Fellow in Ontology-Based Information Modelling and