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), a consortium including AstraZeneca, TU Eindhoven, University of Gothenburg, Chalmers, and FinnAdvance. Nanoparticle drug delivery is a high-dimensional, multi-objective design problem: formulations
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://www.universiteitleiden.nl/en/staffmembers/laura-heitman#tab-1 at Leiden University! What you will do Project objectives are: Develop expression and purification methodologies for GPCRs Develop and optimize affinity selection
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-source software, and help shape emerging methodologies for scientific AI and foundation models. Applicants should indicate a primary research track, although collaboration between tracks is expected. Track
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purification, but undesirable when cultural-heritage objects fade or when pharmaceuticals or protective coatings degrade. Understanding the chemistry of light-induced degradation (LID) is essential, yet highly
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, considering algorithmic challenges such as multiple objectives, the robustness of designs and the transparency of the design recommendation process. The position is offered in the context of the Mobility
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working in High-Performance Computing (HPC) environments. Soft Skills: Proven track record of scientific publishing and the ability to mentor junior researchers (EngD/PhD students). Mindset: An analytical
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the broader research activities of the Data Science Center of Excellence of the Ministry of Defence. The central objective of this research is to investigate how data-driven and predictive models can be
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at the intersection of reinforcement learning and stochastic optimization. The objective is to contribute to the development of novel methodologies that advance both theoretical understanding and practical application
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that focus on the material and intangible remains of the past, the reciprocal relations between objects, meanings and representations, and the dynamics of memory. AHM’s research is carried out from diverse
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(e.g., mathematics, physics or computational social science), with a strong track record in network science (or complex networks / social network analysis); Excellent writing skills and proficiency