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: 278964401 Position: 2025 Postdoctoral Research Associate - AI/machine learning for analytical and forensic chemistry Description: The Skinnider Lab at Princeton University aims to recruit a postdoctoral
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Science * Design * Humanitarian Engineering. Optional undergraduate research provides even more learning opportunities. Electrical and Computer Engineering, please visit https://ece.osu.edu/ . Materials Science
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learning software provided by Meta AI and OpenAI, deployed on state-of-the-art Nvidia AI workstations. The work will involve: Creating geometry generation and flow analysis models, as well as performing
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algorithms, complexity theory, coding theory, cryptography, learning theory, logic, optimization, and quantum computing. We foster close interactions across the theory ecosystem, as well as with machine
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-based processing. This project will investigate event-driven learning approaches in the context of RL in an event-triggered fashion. Data efficiency will be improved by using meta-learning and pre
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are seeking a motivated PhD student to join our team working on realizing learning in novel physical materials, as part of a joint theoretical/experimental research project between AMOLF and the University
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. Qualifications: PhD in machine learning, with experience in applications in computer vision or medical image analysis. Strong publication record in top venues (e.g., CVPR, MIDL, MICCAI, IPMI, PAMI, TMI, MIA
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Metagenomics, meta-transcriptomics and metabolomics data analysis and familiarity with gut microbiome research. Machine learning for genomics (representation learning, generative models, causal inference). Multi
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sequencing, big data analysis, machine learning, and AI How to Apply To apply click on ‘Apply Online’ and fill out the application form and upload your CV and Cover Letter. Further information about the
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healthy and tumor-bearing animals using machine learning and AI approaches; and (3) integration of PBPK and QSAR models with AI methods to develop AI-assisted computational approaches to support decision