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engineering models for large-scale quantum computers. The aim is for this thesis to develop fundamental expertise in quantum physics and computing, and then share it with other teams in the Q-loop project, so
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with experimental groups that will study a physical realization of the qubit will be part of the project. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR5798-FABPIS-015/Candidater.aspx
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on optomechanics, quantum physics and spatial modulation techniques. [1] Aspelmeyer et al., Rev Mod Phys, 2014 [2] Riedinger et al., Nature, 2018 [3] Kimble, Nature, 2008 [4] Lai et al., Phys Rev Letters, 2022 Where
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5 Feb 2026 Job Information Organisation/Company École Normale Supérieure Department Physics Research Field Physics » Condensed matter properties Physics » Quantum mechanics Researcher Profile First
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] Subject Areas: Condensed Matter Physics / Condensed Matter Theory Quantum Condensed Matter Theory Appl Deadline: 2026/03/15 03:59 AM UnitedKingdomTime (posted 2026/02/05 05:00 AM UnitedKingdomTime, listed
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Physics » Quantum mechanics Physics » Other Technology » Nanotechnology Researcher Profile First Stage Researcher (R1) Country France Application Deadline 31 May 2026 - 21:00 (UTC) Type of Contract
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Multiple PhD positions in magnetism and spintronics are available within the Quantum Grenoble Doctoral Programme (3 different funding schemes). The call is open from 26 January till 16 March 2026
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27 Feb 2026 Job Information Organisation/Company Université Gustave Eiffel Research Field Physics » Acoustics Physics » Electromagnetism Engineering » Civil engineering Mathematics » Applied
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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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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