18 big-data-and-machine-learning-phd uni jobs at Chalmers University of Technology in Sweden
Sort by
Refine Your Search
-
of surface sites makes theoretical understanding difficult. This project will develop and benchmark machine learning models to predict local electronic density of states (DOS) at alloy catalytic sites
-
Join us for your PhD journey – help us explore the future of advanced Human-Centred Production in Industry version 5.0. The Industry of Tomorrow relies on constantly upskilled people in a future
-
. Project summary The doctoral student will carry out a large part of the research project "Rethinking urban planning and transformation in co-creation: Towards a framework for calculation of habitat value
-
and written. Solid skills in computer programming (Python / Matlab). Experience with CAD and CAE tools. Knowledge of computational fluid dynamics (CFD). Knowledge of finite element method (FEM
-
of fluid/structure dynamics and acoustics. Very good knowledge of English, both spoken and written. Solid skills in computer programming (Python / Matlab). Experience with CAD and CAE tools. Knowledge
-
about working at Chalmers and our benefits for employees. The position is limited to four years, with the possibility to teach up to 20%, which extends the position to five years. Doctoral studies
-
Information about the division and the project The Building Technology division aims at contributing to a more resource efficient society and to a better environment. You will join the Sustainable
-
undergraduate and master's levels as well as supervising master's and/or PhD students to a certain extent. Another important aspect involves collaboration within academia and with society at large. The position
-
aimed at building a high-performance quantum computer based on superconducting circuits. Our team includes a dynamic mix of PhD students, postdocs, and senior researchers working collaboratively
-
for computational design and analytical methods towards a more sustainable built environment. Information about the division/the project The Research Area Sustainable Built Environments has extensive experience in