WIAS Berlin, Weierstrass Institute for Applied Analysis and Stochastics

Position ID: 2306-RAP2 [#19962, 22/14]
Position Title: Research Assistant Position (f/m/d) for deep learning in partial differential equations for fluid flow simulations (Ref. 22/14)
Position Type: Postdoctoral
Position Location: Berlin, Berlin 10117, Germany [map] sort by distance
Subject Area: Deep learning in partial differential equations for fluid flow simulations
Application Deadline: 2022/05/13 11:59PMhelp popup finished (2022/04/28, finished 2022/11/19, listed until 2022/05/13)
Position Description:    

*** this position has been closed. ***

WIAS invites in the Research Group

“Nonsmooth Variational Problems and Operator Equations”

(Head: Prof. Dr. M. Hintermüller) applications for a

Research Assistant Position (f/m/d) for deep learning in partial differential equations for fluid flow simulations

(Ref. 22/14)

to be filled at the earliest possible date. The position is associated to the Leibniz Collaborative Excellence project “Machine Learning for Simulation Intelligence in Composite Process Design" a joint interdisciplinary project of the Leibniz-Institut für Verbundwerkstoffe (IVW), the German Research Center for Artificial Intelligence (DFKI), Leibniz-Institut für Polymerforschung Dresden e.V. (IPF), the Fraunhofer Institute for Industrial Mathematics (ITWM) and the Weierstrass Institute for Applied Analysis and Stochastics (WIAS).

The work tasks include: Analysis and development of deep learning based solvers (e.g. Physics-Informed Neural Networks) for fluid flow PDEs that govern the manufacturing process of fiber reinforced polymers (e.g. Darcy-Brinkman equations) Analysis and development of combined classic and deep learning PDE solvers to better treat the multiscale nature of these processes Close collaboration with the project partners in order to transfer the developed methods into industrial We are looking for: A motivated, outstanding researcher with a very good degree and excellent doctorate in mathematics as well as previous experience in the fields mentioned above. Additionally, it is highly desired that the candidate has experience in:

analysis and numerical solution of partial differential equations, in particular with regards to computational fluid dynamics working with dedicated computational fluid dynamics software packages, e.g. openFOAM optimal control and optimization and their interplay with deep learning Technical queries should be directed to Prof. Dr. Michael Hintermüller (Michael.Hintermueller@wias-berlin.de). The position is remunerated according to TVöD Bund and is initially limited to two years, while a long-term perspective is envisioned.

The Institute aims to increase the proportion of women in this field, so applications from women are particularly welcome. Among equally qualified applicants, disabled candidates will be given preference.

Please upload your complete application documents, including cover letter, curriculum vitae and certificates, via our applicant portal as soon as possible but not later than May 13, 2022 using the button "Apply online".

We are looking forward to your application! See here for more information: https://short.sg/j/17404030


We are not accepting applications for this job through MathJobs.Org right now. Please apply at https://wias-berlin.softgarden.io/applications/c486994d-4fe0-4e23-b318-d1fe5ba54f03?7&isEditMode=false&isNew=true&l=de external link.
Contact: Prof. Michael Hintermüller
Email: email address
Postal Mail:
WIAS
Heike Sill
Mohrenstrasse 39
10117 Berlin
Germany
Web Page: https://short.sg/j/17404030