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Post-doctoral Position in AI Causal models for Synchrotron Anomaly Detection H/F This post-doctoral position is part of a collaboration between LIAD (Laboratory of Artificial Intelligence and Data
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the energy systems modeling team at I-Tese. The position is based in Saclay, but as the team is spread over two sites (mainly Saclay, and also Grenoble), you may be required to travel occasionally to Grenoble
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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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postdoc to pioneer next-generation thermal transport experiments on the micro-nano scale at École Polytechnique, France. Why This Position Is Exciting High-temperature superconductivity and quantum spin
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to the lithographic process such as overlay; - Interact and work with a PhD student focusing on the data modeling to understand the acquired data and explore the limitation of the Low Energy SAXS technique; - Define
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, for a given attacker model, of a system embedding hardware/software countermeasures against fault injections. Gobally, these tools implement a methodology that have shown to be successful to find
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, this position is open to everyone. The CEA offers accommodations and/or organizational arrangements for the inclusion of workers with disabilities.
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partnerships. The job position will be based at Saclay (20 km South of Paris). Skills and expertise PhD in Economics (already defended or expected end 2025). Experience carrying out and analysing lab or online
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29 Aug 2025 Job Information Organisation/Company CEA Department IRAMIS Research Field Chemistry » Analytical chemistry Researcher Profile First Stage Researcher (R1) Positions Postdoc Positions
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properties and electrical characterization will be carried out. The results will be compared with ab initio calculations and will provide input for physical models based on real devices to predict key metrics