121 image-processing PhD positions at Università degli Studi di Napoli "Federico II" in Belgium
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-driven approach to microstructure imaging” (ADAMI), funded by the European Union. ADAMI is a highly interdisciplinary project that combines insights from physics/engineering (imaging and image processing
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intelligence) to achieve a breakthrough in microstructure imaging with MRI. You will focus on the acquisition, processing, curation, and modeling of quantitative MRI data of healthy mice and mice models
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of Bioscience Engineering in the Faculty of Science of the University of Antwerp (Belgium) is looking for a full-time (100%) doctoral scholarship holder in advanced data and profile processing in electrochemistry
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BAP-2024-310 Is the Job related to staff position within a Research Infrastructure? No Offer Description Project 1 : Prescriptive Business Process Modelling (hosted at University of Melbourne
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of Science of the University of Antwerp (Belgium) is looking for a full-time (100%) doctoral scholarship holder in advanced data and profile processing in electrochemistry. The overall goal of this PhD is the
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for a full-time (100%) doctoral scholarship holder in advanced data and profile processing in electrochemistry. The overall goal of this PhD is the development of advanced data models to extract
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8 May 2024 Job Information Organisation/Company GIGA Institute-ULiège Department CRC Human Imaging Research Field Neurosciences » Neurophysiology Neurosciences » Neurobiology Neurosciences
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develop and apply low-dose TEM techniques such as exit wave reconstruction and integrated differential phase contrast imaging to investigate CsPbI3 thin films without electron beam damage. You will expand
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such as earth observation, satellite imagery, cloud computing, computational modelling, as well as social media, video and images sharing platforms. Simultaneously digital technologies contribute
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-generating mechanism, integrating it with recent insights from debiased machine learning and causal inference. Besides laying foundations for a novel paradigm for causal/statistical modeling, this project