PhD Student in Electronic-Structure Machine Learning for Materials
- Entreprise
- Paul Scherrer Institut
- Lieu
- Villigen
- Date de publication
- 01.06.2026
- Référence
- 5249728
Description
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- Contribute to the co-development of transferable e-ML models, investigating the interplay between model design, training strategies, computational efficiency, transferability, and predictive accuracy across a broad range of materials systems
- Generate and curate high-quality electronic-structure datasets using automated and reproducible AiiDA-based workflows for model training and benchmarking
- Validate and benchmark the predictive performance of the models for advanced materials properties beyond standard band structures and charge densities, including electron-phonon coupling and operators and observables related to Berry phases and other electronic-structure quantities
- Explore the development of transferable foundation models for materials applicable across the periodic table
- Contribute to the development of robust, reusable, and efficient open-source software and workflows, integrating machine-learning frameworks with established electronic-structure codes
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div>We are looking for a highly motivated candidate with a background in computational materials science or condensed-matter physics, and a keen interest in developing and applying advanced simulation methods and implementing them in workflows. You have experience working independently but also enjoy working in an interdisciplinary and collaborative environment and are eager to combine methodological development with real scientific applications. We do not expect candidates to be experts in all techniques at the start of the PhD; training and learning will be an integral part of the project.
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- Master's degree (or close to completion) in physics, materials science, chemistry, engineering, or a closely related field
- Hands-on experience using density functional theory DFT for research or projects, and/or experience in the development of machine-learning ML models applied to materials
- Working knowledge of Python for scientific computing and data analysis
- Comfortable communicating research ideas and results in English, both in writing and in conversation
- Interest in quantum simulations, modern machine-learning models, the development of new computational methods, and/or materials modeling
You will be fully based at the Paul Scherrer Institute PSI in the Materials Software and Data group of Dr Giovanni Pizzi, and work in close collaboration with the group of Prof Dr Michele Ceriotti at EPFL. You will be enrolle j4id10227048a j4it0623a j4iy26a