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Hours per Week Location: Campus Belval Internal Title: Doctoral Researcher Job Reference: UOL07468 The yearly gross salary for every PhD at the UL is EUR 41976 (full time).
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Description of the offer : The condensed matter theory group at Institut Néel (CNRS, Grenoble) invites applications for a three-year PhD position in condensed matter physics starting from October
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Grenoble Alpes (UGA) and the ESRF enabling the partners to combine their complementary expertise to deliver pioneering, high-impact research on these novel functional materials. The PhD student will benefit
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collaboration on real-world test cases with industry stakeholders. - Disseminate research findings through publications in leading conferences and top-tier journals. This PhD position offers a unique
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: Contract Type: Fixed Term Contract 36 Month Work Hours: Full Time 40.0 Hours per Week Planned start date: October 2025 Location: Campus Belval Internal Title: Doctoral Researcher Job Reference: UOL07501
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Description of the offer : This PhD project supports the exploration of Vertical Compute’s vertical magnetic device concept. Thanks to the inherent high speed of magnetics and the vertical data
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PhD grant proposal - Carcinogenesis study tools for bioTechnologies and medicine of the future H/F PhD grant proposal : HYMPACT: Modular HYdrogels mimicking the healthy and pathological PAncreatic
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Description of the offer : Spin triangles are magnetic molecules predicted to display spin chirality, magnetoelectricity and protected quantum degrees of freedom. These characteristics could allow electric spin control and long spin coherence properties. In the past we have confirmed the...
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research and soft robotics development. PhD project The PhD project will focus on the technical aspects of simulating the physics of the Drosophila larva body. The primary objectives include: Developing a
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exciting opportunities for machine learning to address outstanding biological questions. The PhD student to be recruited will be working on the development of machine learning methods for single-cell data