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collaborations. Why join us? By joining IRAMIS, you will become part of a dynamic and innovative research environment where you will have the opportunity to learn, grow and play a key role within a recognised
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, cognition and clinical symptoms, working in close collaboration with the neurology and psychiatry departments at Grenoble Alpes University Hospital (CHUGA). Activities: Develop and maintain an analysis
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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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new insights into the phenomena observed and enrich the databases required for deep learning methods. The neural networks currently being developed at LISTIC to detect and segment areas of movement in
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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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). Deep learning has been used to perform this mapping from UAV (Batista et al., 2025; Chudasama et al., 2024; Lambert et al., 2025) or satellite imagery (Mattéo et al., 2021), at both very high resolution
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well as tumor/tumor microenvironment interactions in gliomas and pediatric embryonal brain tumors. Projects in the Cavalli lab are developed within a dynamic and collaborative environment with other researchers
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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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a machine learning model (foundational model) to propose protocols of sequential induction of transcription factors to generate desired cell subtypes. The project will be conducted in close
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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