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Postdoctoral Fellow -NCCR Separations-

Entreprise
Paul Scherrer Institut (PSI)
Lieu
Villigen PSI
Date
03.05.2026
Référence
288220

Your Role

Engage in high-throughput simulations of materials utilizing Quantum ESPRESSO and AiiDA, grounded in density-functional theory, to aid in the training of machine learning interatomic potentials (MLIPs).

Develop active-learning workflows within AiiDA for the autonomous fine-tuning of MLIPs models, ensuring robust and efficient enhancements.

Create user-friendly workflows and interfaces that facilitate accessibility and usability of these processes through the AiiDAlab platform.

Your Qualifications

  • PhD degree in computational condensed-matter physics or a related field, such as chemistry or materials science.
  • Demonstrated experience in the development, implementation, and application of atomistic simulation methods.
  • Proficient programming skills in Python.
  • Familiarity with parallel computing on high-performance computing systems.
  • Prior experience with density functional theory.
  • Strong written and oral communication skills in English.
  • Ability to work effectively both independently and as part of a team.

What We Provide

Our institution fosters an interdisciplinary, innovative, and dynamic collaborative environment. You will benefit from systematic on-the-job training in addition to opportunities for personal development and a strong emphasis on vocational training.

We support a work-life balance with modern employment conditions and on-site infrastructure, ensuring you can align personal interests with your professional commitments.

The position is backed by the NCCR Separations initiative, with an initial contract duration of 2 years, extendable for an additional 2 years based on satisfactory performance.

Location

Situated at the Paul Scherrer Institute, Human Resources Management, Serdal Varol, 5232 Villigen PSI, Switzerland.

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