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2 Sep 2025 Job Information Organisation/Company École Normale Supéireure Department Département d'Informatique Research Field Computer science » Other Mathematics » Applied mathematics Physics
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scienceYears of Research ExperienceNone Research FieldMathematicsYears of Research ExperienceNone Additional Information Eligibility criteria The recruited person will hold a PhD in mathematics or applied
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FieldMathematicsYears of Research ExperienceNone Additional Information Eligibility criteria Academic: PhD in applied mathematics, computer science, or medical physics. Scientific interests: applied mathematics
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Eligibility criteria PhD in Mathematics. Candidates with expertise in one of the following research areas are encouraged to apply: - Complex foliations; - Birational geometry; - Qualitative theory of real
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LanguagesFRENCHLevelBasic Research FieldPhysicsYears of Research Experience1 - 4 Additional Information Eligibility criteria Required qualifications: • PhD in experimental physics with a background in accelerator or plasma
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FieldMathematicsYears of Research Experience1 - 4 Research FieldHistory » History of scienceYears of Research Experience1 - 4 Additional Information Eligibility criteria - PhD in computer science or applied mathematics
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Additional Information Eligibility criteria Knowledge PhD in biochemistry and/or chemistry; knowledge of lipids is a plus; basic knowledge of mathematics, physics, and data analysis. Use of mass
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with a solid theoretical understanding of reinforcement learning, accompanied by a strong foundation in mathematics. You must also have proven experience in programming reinforcement learning agents
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for these formalisms. Some possibilities are to develop solutions based on dynamic programming over finite horizon, or using mathematical solvers, or adapting reinforcement learning algorithms to the desired context
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resonance spectroscopy, imaging (MRI), Applied Mathematics or Machine learning. We are looking for talented, highly-motivated experimentally skilled young scientists with Master degrees or equivalent or PhD