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production. Build detailed mass and energy inventories for fermentation-based systems (solid-, liquid-, and gas-state) to enable accurate and systematic sustainability assessments. Integrate assessment data
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. CLASSIQUE is organized into four research thrusts that rely upon interdisciplinary competences in: communication theory, networking, information theory, physics, mathematics, computer science, and statistics
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The research explores how phase change materials that can store “cold” energy when they change between solid and liquid states can help make cooling systems more flexible and reliable. A large-scale pilot
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forward to receiving your application. Join us and help shape the future of safe autonomous systems. Description of the project This project aims to develop novel strategies for safe and adaptive navigation
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for materials. Responsibilities and qualifications You will break new ground in AI4Materials by joining one of two tightly connected PhD projects at DTU Energy: Develop, train and deploy efficient generative
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/biomedicine to physics, chemistry and engineering. The candidates’ main workplace will be either at the University of Copenhagen (UCPH), the Technical University of Denmark (DTU) or the Danish Cancer Institute
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for this position will be: Solid modeling and design of high-performance integrated photonic devices Process development of low-loss photonic integrated circuits on different material platforms Heterogeneous
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fully funded 3-year PhD position in advanced thermal energy storage. About the Project The research explores how phase change materials that can store “cold” energy when they change between solid and
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research with real industrial practice. You will work on asset-heavy cases from sectors such as energy, manufacturing, and process industries, where maintenance is not just about fixing breakdowns but about
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: Data Mining Machine Learning Bioinformatics The successful candidate will contribute to advancing state-of-the-art in data mining and machine learning research with applications in computational biology