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/ Physics beyond the Standard Model Appl Deadline: 2026/02/28 04:59 AM UnitedKingdomTime (posted 2026/02/11 05:00 AM UnitedKingdomTime, listed until 2026/08/12 04:59 AM UnitedKingdomTime) Position
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(USMB). Its scientific activities span cosmology and astroparticle physics, particle physics, and mathematical physics. The Astroparticle and Cosmology group (https://astrocosmolapth.com ) conducts
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, spanning quantum physics, chemistry, materials science, photonics, and computer science. The CESQ provides a collaborative, innovative environment that bridges cutting-edge experimental and theoretical
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rewriting, graphical languages, process calculi) • Quantum causal models • Type systems for quantum languages • Research within the Proofs & Programs team • Participation in seminars and team discussions
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. This position is supported by the national strategy for quantum technologies through the collaborative project OQuLuS. The work will be done in the Institute of Physics of Collège de France in Paris, in
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High Magnetic Field Laboratory (LNCMI) – French National Centre for Scientific Research (CNRS), Grenoble, in experimental condensed matter physics. The research activities will focus on magneto-optical
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20 Dec 2025 Job Information Organisation/Company CNRS Department Laboratoire Temps Espace Research Field Physics Researcher Profile First Stage Researcher (R1) Country France Application Deadline 9
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work in seminars - Strong organizational and collaboration skills - Good academic proficiency in English (C1) - Expertise in quantum computing is an asset Website for additional job details https
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identification of microbial species that coevolve with the host immune system. These findings will support models of immune dynamics that can predict age related immune responses. Where to apply Website https
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AI researchers from ANITI, IMT and CERFACS, as well as with researchers/engineers in weather forecastings from the CNRM (Météo-France). Hybridization methods between neural networks and physical models