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-France 75 005, France [map ] Subject Areas: Machine Learning Statistical Physics Appl Deadline: 2026/01/15 11:59PM (posted 2025/11/04, listed until 2026/05/04) Position Description: Apply Position
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TAGADA started on Oct, 1st 2025 https://www.ceremade.dauphine.fr/dokuwiki/anr-tagada:start . The goal of TAGADA is to lay the foundations of random tensor theory and foster a multidisciplinary research
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University assistant predoctoral, you will complement the research team in the area of Political Theory. The team currently consists of eight postdocs, praedocs, and administrative colleagues. Your future
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Mattelaer, Christophe Ringeval). Research activities in include SM and BSM aspects of collider physics (LHC and future colliders, simulation tools, machine learning, effective field theories, amplitude
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, and written communication skills evidenced by a publication record in the area of control theory, mathematical optimization, AI, or machine learning. Preferred Qualifications: Publication record in
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, machine learning theory and their interactions with mathematical physics. The appointment is for up to two years with a starting date in September 2026, although the latter can be flexible. Application
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matter properties Physics » Statistical physics Physics » Computational physics Researcher Profile Recognised Researcher (R2) Positions Postdoc Positions Country Germany Application Deadline 6 Feb 2026
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research findings with impact For more on the Faculty strategy, see: https://samf.ku.dk/fakultetet/strategi/ . Terms of Employment Further information on qualification requirements as postdoc can be found in
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At the Department of Culture and Learning (Culture and Communication as per January 1st.) , Aalborg University - Aalborg, a postdoctoral position is available for appointment from April 1st. 2026
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learning and statistics. A good command of Python programming is essential, as is a good command of English, both spoken and written. Skills in optimal transport theory and knowledge of generative models