17 machine-learning research jobs at NEW YORK UNIVERSITY ABU DHABI in United Arab Emirates
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, seeks a Post-Doctoral Associate or a Research Associate to join a lab focused on applied machine learning. The successful applicant will participate in research involving human computation, knowledge
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Dhabi, seeks a research assistant to join a new lab focused on human-machine learning. The successful applicant will participate in research involving human computation, knowledge discovery, machine
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of this project is to add support for automatic code optimization in Tiramisu. In particular, we want to use machine learning/deep learning to achieve this. Currently, a basic automatic optimization module
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Dhabi, seeks a research assistant to join a new lab focused on human-machine learning. The successful applicant will participate in research involving human computation, knowledge discovery, machine
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, Blender, Maya and motion tracking. Critical thinking and problem-solving skills. Team player with good communication skills. Basic knowledge of machine learning. Proficiency in English. For consideration
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expertise in these topics are highly encouraged: Quantum Machine Learning, Machine Learning on Quantum Computers, Quantum Circuits for Machine Learning, Quantum Circuits for Topological Data Analysis, Design
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and his team to research on deep reinforcement learning, with the goal of making fundamental contributions in new algorithms and publishing in top machine learning venues. The team aims to make progress
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University Abu Dhabi (NYUAD), seeks to recruit a motivated Post-Doctoral Associate to work on cutting-edge machine learning / artificial intelligence applications that utilize human signals (e.g. text, audio
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-edge technology on society, using machine-learning in optimizing networks components such as congestion control, and/or innovative usage of generative AI (e.g., stableDiffusion) in Web. The successful
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to predict traffic flow patterns in urban networks when parts of the network are cut due to inundation resulting from sea level rise (SLR), by using machine learning methods. Using these models, optimal