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Your Job: Investigate current challenges and bottlenecks in power flow analysis for large scale electrical distribution grids Apply machine learning/AI or surrogate modeling (e.g., neural networks
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. A particular focus of the project will be on: 1) Graph Neural Networks for cosmology, neutrino and/or collider physics, 2) Domain adaptation methods / model robustness, 3) Uncertainty quantification
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State University of New York University at Albany | Albany, New York | United States | about 5 hours ago
to the university, college, and department. Key areas of interest within this focus on computing and artificial intelligence include, but are not limited to, neural networks, error correction, and system architecture
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, R Shiny, and frameworks for Large Language Models (LLMs) or Graph Neural Networks (GNNs). We are an equal opportunity employer, and all qualified applicants will receive consideration for employment
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Reconstruction Algorithms,” ICASSP 2015. (4) D.M. Pelt and J.A. Sethian, “A mixed-scale dense convolutional neural network for image analysis,” PNAS, January 8, 2019. If interested then, please, contact: Peter
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-Nicholson Brain Institute (SNBI ) , the FAU Institute for Human Health and Disease Intervention (I-Health ) and the Institute for Sensing and Embedded Network Systems Engineering (I-SENSE ) is pleased
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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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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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convolutional neural networks (CNNs), recurrent neural networks, large language models (LLMs), or large reasoning models (LRMs), are designed to respond at inference phase to user-provided inputs with meaningful
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dynamic differential calorimeter (DSC) using a neural network to be developed for predicting a pseudo-DSC signal from microscope images Transfer of the evaluation routine to a multi-sample test rig