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simulations to determine key material properties, and analyzing and classifying experimental and theoretical data. The successful candidate will prepare technical and scientific reports, contribute to project
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at the Humboldt-Universität zu Berlin, where DFT calculations will be performed. running simulations and compare them to experimental results in close cooperation with the experimental group at IKZ. applying
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No Desired Start Date 11/10/2025 Job Summary Candidate will work on DFT and atomistic simulation study and experimental development of battery cathode materials in close collaboration between BEACONS and
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-to-olefins, syngas-to-olefins) involve the production of hydrocarbons from renewable raw materials. In addition to periodic density functional theory (DFT), ab initio methods and molecular dynamics (MD
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physics scale with the component-level scale to simulate the thermomechanical response of the full first wall/blanket structures during fusion reactor operation. Villanova is a Catholic university sponsored
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Number: 30648 Posting Number: S06699P Job Description: Candidate will work on DFT and atomistic simulation study and experimental development of battery cathode materials in close collaboration between
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based on salt melts. The methods are primarily molecular dynamics simulations and small DFT calculations, but the software COSMO-RS may also be used. The postdoctoral fellow will be part of Prof. Patrik
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the next generation of PV technologies for beyond 2030. The new postdoctoral research position will use materials modelling techniques (DFT, molecular dynamics, machine learning potentials) to investigate
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advanced characterization methods of inorganic materials and their assemblies, ideally with a focus on battery materials. Demonstrated proficiency in Density Functional Theory (DFT) and/or Molecular Dynamics
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, using a combination of simulation and physical experimentation on embedded platforms, to evaluate the robustness of AI modules and the effectiveness of the proposed hardening techniques. 4. Cross-layer