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maximizing battery performance and sustainability, but at a prohibitively high cost. It is thus proposed to use the optical sensing expertise developed in our group to train a machine learning (ML) model
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learning tools. 3D cell segmentation with CellPose. Conceptualization: inference of correlations between drop deformability and displacement. Office work at the Theoretical Physics Center. Requirements
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analysing the data, using deep learning approaches to optimise the experimental parameters in real time. This post will involve developing a new implementation of this technique, called ModLoc for Modulated
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. These analysis tools could mobilize deep learning approaches. After a test phase on calibration samples, these tools will be applied to the observation of biological samples in collaboration with various team
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of powder texturing through slip-casting under magnetic fields to achieve highly textured magnetocaloric materials. An essential part of this project is the integration of machine learning techniques
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simulation or machine learning. Experience with HEP simulation with generative models would be a plus. Applicants must also demonstrate teamwork skills and an ability to fit in a multidisciplinary scientific
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. - Communication and argumentation skills, ability to synthesize and critically analyze. - Self-learning abilities and capacity to develop new skills. - Adaptability and creativity Candidates must be able to work
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.). Literature review and improvement/adaptation of techniques according to research projects. Participation in training sessions to acquire essential new techniques or knowledge for the development of Team's
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of machine-learning algorithms and density functional theory models. The postdoctoral researcher will be at the interface of all these approaches and will have some opportunities to take part in several
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& Diagnostic, .Data Science, .Geometry, Learning, Information and Algorithms .Speech -cognition Gipsa-lab regroups 150 permanent staff and around 250 no-permanent staff (Phd, post-dotoral students, visiting