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strongly recommended. • High Performance Computing. • Experience with High Throughput Calculations will be valued but it is not essential. • Previous knowledge of Density Functional Theory (DFT) and
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for new catalyst compositions using DFT-calculations. Qualifications The successful candidate is well-motivated, hardworking, and willing/able to work as part of a team. The candidate should have a PhD
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computational physics, particularly ab initio calculations (including DFT). Experience with machine learning is highly preferred. Ability to work independently and as part of a team. Good written and oral
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systems and automated characterization from our partners at IREC into the AI platform. Expertise in building FAIR-by-design scientific data architectures, semantically indexing heterogeneous data (DFT/MD
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optimization methods for catalytic systems, such as highthrouput experimentation (HTE, collaboration with the HTE platform of the CEA Saclay) and DFT computations, and be trained in these techniques if he/she so
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, 7503–7507 (2015) • collaborate with theoreticians at CEMES to compare experiments with the band structure first-principles calculations based on the density functional theory (DFT). The National Intense
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molecular dynamics (MD), density functional theory (DFT), and quantum mechanics/molecular mechanics (QM/MM) approaches. Planned research activities will also rely on the application and further development
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. Quantum Mechanical Calculations: - Performing first-principles based or Density Functional Theory (DFT) calculations for molecules/materials and interphases - Utilizing Molecular Dynamics (MD) simulations
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an autonomous framework for setting up, executing, and optimizing complex electronic structure workflows, ranging from ground-state Density Functional Theory (DFT) to many-body perturbation theory methods such as
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Healthcare Monitoring We welcome applications from those with expertise in or across these disciplines: Computational materials modeling: DFT, molecular dynamics, phase-field modeling, or multiscale