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collaborator visits. There are no teaching obligations, though teaching opportunities can be arranged if desired. The ideal candidate should have experience with machine learning, particularly in deep learning
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interface of machine learning, genomics, and scientific computing, contributing both methodological innovation and translational impact. Close collaboration with Helical-AI will ensure that developed models
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at an internationally leading university and a renown center for research on social and educational inequalities ● Opportunity to advance your research skills in a collaborative setting, as part of the ERC LEARN team
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responsibility of developing predictive tools based on machine learning for the analysis and interpretation of Raman vibrational spectra applied to battery materials. The successful candidate will design and
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structures and corresponding images) needed for training and validating deep learning (DL) models. Work closely with members of the ICMN nanostructures group or external collaborators. Communicate research
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existing structural and functional MRI data, acquire new data in collaboration with clinical researchers, and prepare publications and conference presentations. - Study preparation - Data acquisition (MRI
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for embedded and GPU platforms. Collaborate with ARSPECTRA engineers and surgeons to create a complete AR guidance pipeline : tracking, SLAM, gaze, user interface Your profile PhD in machine learning
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and educational issues with the common goal of contributing to an inclusive, open and resourceful society. Your role The Postdoctoral researcher will be working in the Institute of Teaching and Learning
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the results in the form of manuscripts submitted to international journals and presentations at conferences Collaborate with clinicians, engineers and doctoral students involved in the projects and contribute
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collaborations. The postdoc will benefit from the environment of the ANR IMPRINT project, which will cover materials and travel expenses. The SRP team meets monthly, while the department meets annually