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to appoint a Postdoctoral Researcher, 100% (TV-L E13) to work on the interdisciplinary research project “NeuroTranslate: Embedded Ethics for Trustworthy, Legitimate, and Fair AI-based Neural Decoding” within
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sequential in nature, requiring adapted processing tools such as artificial neural networks. For teaching, it is therefore essential that the candidate possesses both a broad theoretical vision of artificial
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passionate about applying ML algorithms and developing AI applied research and innovation solutions using classic ML to novel transformer neural networks. We test and measure the real customer impact of each
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include the development of finite elements methods, as well as inverse design strategies based on deep-learning and Neural Networks approaches. The latter will then bring the project to the experimental
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of improving human health. Aligned with Rutgers University–New Brunswick and collaborating university wide, RBHS includes eight schools, a behavioral health network, and five centers and institutes that focus
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models. Geometric Deep Learning for Structural Synthesis: Leveraging Graph Neural Networks (GNNs) and manifold learning to optimise complex geometries in medical device design and advanced manufacturing
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. Preference will be given to candidates that are proficient with graph neural networks and other scientific machine learning tools. Additional Information: Applicants must complete the Penn State application
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learning algorithms for closed-loop optogenetic control of neural circuits (DC2). The appointed DCs will participate in an international research team as part of the EU-funded Marie Skłodowska-Curie Actions
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parametric maps and progress to neural networks with monotonicity or convexity constraints so that learned priors remain stable and defensible. Expert ranges can be encoded as hyperpriors, allowing the data
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neural networks inspired by the human brain and examine what mechanisms enable the networks to acquire human-like intelligence. For more information, please visit our lab homepage. We are currently seeking