48 high-performance-quantum-computing "https:" "Simons Foundation" Postdoctoral positions in Finland
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-algebraic-approaches-to-quantum-field . Contact: Johanna Glader Email: Postal Mail: P.O. Box 11100, 00076 AALTO, FINLAND Web Page: https://math.aalto.fi/en/
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to work on the discovery of new superconducting materials with high critical temperatures, using novel methods and concepts such as machine learning and quantum geometry. The project is related to large
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, electrocatalysis, and high-performance computing. Its objective is to develop computational methodologies and to advance the fundamental understanding of alcohol electro-oxidation reactions on transition metal
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Apr 2026 - 00:00 (UTC) Country Finland Type of Contract Other Job Status Full-time Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff
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volumes of data and high-performance computing is necessary. Experience in collaborative development of research software and building annotated datasets or corpora is considered an advantage. The appointee
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Skills Familiarity with density functional theory and beyond-mean-field techniques. Knowledge of high-performance computing methods. The duties, qualification requirements, and language skills of a
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density functional theory, or effective interactions Knowledge of high-performance computing methods. Familiarity with neutron star physics and astrophysical simulations. The duties, qualification
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: Position Type: Postdoctoral Position Location: University of Helsinki, 00014, Finland [map ] Subject Areas: Astrophysics / High Energy Astrophysics High Energy Physics / Quantum chromodynamics Theoretical
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and astrophysical simulations Knowledge of high-performance computing methods. Familiarity with nuclear models. The duties, qualification requirements, and language skills of a postdoctoral researcher
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have solid skills in programming and working with libraries for training and using machine learning models. Previous experience in managing large volumes of data and high-performance computing is