Technische Universität Berlin offers an open position:
Part time employment may be possible
The Berlin Institute for the Foundations of Learning and Data (BIFOLD) at TU Berlin (Prof. Klaus Robert Müller) is seeking a Research Associate in Machine Learning. The project will be carried out in the research group "Machine Learning for Molecular Simulation in Quantum Chemistry” (https://www.bifold.berlin/people/dr-stefan-chmiela.html) led by Dr. Stefan Chmiela.
Dr. Chmiela’s team is engaged in the modeling of multi-body systems with applications in quantum chemistry, particularly for predicting solutions to the Schrödinger equation. The overarching goal of the team is the development of models to accelerate accurate molecular dynamics simulations for the calculation of dynamic and thermodynamic observables of physical systems.
Independent and responsible research in the field of machine learning. The goal of the advertised project is the development of scalable methods for modeling atomic interactions in quantum chemistry. The focus is on dimension reduction of partial differential equations to describe essential properties of electronic systems at the atomic level.
The associated tasks are:
Desirable.
Please send your written application, quoting the reference number, with the usual application documents (i.e. at least cover letter, CV, graduation certificates, grade overviews, etc.) to Technische Universität Berlin - Die Präsidentin - Fakultät IV, Institut für Softwaretechnik und Theoretische Informatik, FG Maschinelles Lernen, Prof. Dr. Müller, MAR 4-1, Marchstr. 23, 10587 Berlin or by e-mail (one PDF file, max. 5 MB) to: jobs@bifold.berlin.
For cost reasons, application documents sent by mail will not be returned. Please submit copies only.
By submitting your application via email you consent to having your data electronically processed and saved. Please note that we do not provide a guarantee for the protection of your personal data when submitted as unprotected file. Please find our data protection notice acc. DSGVO (General Data Protection Regulation) at the TU staff department homepage: https://www.abt2-t.tu-berlin.de/menue/themen_a_z/datenschutzerklaerung/ or quick access 214041.
To ensure equal opportunities between women and men, applications by women with the required qualifications are explicitly desired. Qualified individuals with disabilities will be favored. The TU Berlin values the diversity of its members and is committed to the goals of equal opportunities. pplications from people of all nationalities and with a migration background are very welcome.
ID: 189506