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EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description We are looking for a Postdoc who is eager to contribute to a prospective breast cancer screening
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We are looking for a Postdoc who is eager to contribute to a prospective breast cancer screening trial focused on optimizing mammography interpretation with AI assistance. In this project, we will
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models for optimized selection of treatment before, and follow-up after EVAR. You will implement and advance multimodal deep learning models combining CT imaging and clinical data, trained on the unique
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in Kenya. The insights gained from your research will contribute directly to optimizing the deployment of spatial repellents to reduce malaria transmission. You will be part of a diverse and
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Vacancies Postdoc position on AI-based treatment selection in aneurysm patients Key takeaways Are you excited about applying AI to solve real clinical challenges? As a postdoctoral researcher in the
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Vacancies Postdoc Position: Design and Manufacturing of Adaptive Winglets using Shape Memory Alloys Key takeaways Project overview This project aims to revolutionize aircraft winglet design by
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-up. In the ZonMW-funded AI for EVAR project, we develop multi-modal models for optimized selection of treatment before, and follow-up after EVAR. You will implement and advance multimodal deep learning
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light/heating modules, and selection and sorting routines. Guided by machine learning, we will perform directed evolution experiments where we optimize the synthetic genome that encodes for a biological
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Discrete Element Method (DEM) models to simulate the charging and formation of multi-component, poly-disperse burden mixtures in the blast furnace. The goal is to optimize burden structure and permeability
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, rental platforms, and production systems—where decision-making must balance conflicting objectives, leverage real-time data, and ultimately support sustainable profitability. Examples include optimizing