You are here: AU  Students  Studies Subject portals Computer Engineering and Electrical Engineering

STUDY PORTAL FOR

COMPUTER ENGINEERING
AND ELECTRICAL ENGINEERING

News

2018.10.19 | Diplom engineer, Civil engineer

Jobfair 2018

Job fair for engineering and science students at Navitas, Aarhus on October 31th at 08.30-15:30.

2018.10.18 | Civil engineer, Diplom engineer

Climate Challenge 2018

“Climate Challenge” is arranged by Studenterhus Aarhus and Climatorium, which is developed within the EU project: Coast to Coast Climate Challenge.

2018.10.15 | Bio- og kemiteknologi, Biomedical Engineering, Computer- og elektroteknologi, Biomedicin

Visit Study Abroad Day at Katrinebjerg

Do you dream about spending a semester far away? Are you fascinated by other cultures, or is there a specific university with unique knowledge about a field of study you are particularly interested in? Visit Study Abroad Day on October 29 at Katrinebjerg and learn more about your possibilities.

2018.10.15 | Mekanik, Byggeri

Visit Study Abroad Day at Navitas

Do you dream about spending a semester far away? Are you fascinated by other cultures, or is there a specific university with unique knowledge about a field of study you are particularly interested in? Visit Study Abroad Day on October 22 at Navitas and learn more about your possibilities.

2018.10.11 | Students

University elections - Your vote counts

In the period 12–15 November, all students will once again be electing representatives to the numerous councils, boards and committees at the university. If you are interested in standing for election, now is the time to get involved. You can also make a difference by voting for the candidate who you think is best qualified to make a difference…

Showing results 1 to 5 of 118

1 2 3 4 5 6 7 8 9 10 Next

Events

Wed 31 Oct
09:30-15:00 | Richard Mortensenstuen, Frederik Nielsen Vej 2, 8000 Aarhus
Open Science Seminar: Machine Learning for Material Discovery
Machine Learning in an open science setting is a place to optimize future material development through screening and prediction of material-properties. In developing new materials, machine learning will optimize the selection process and allow for a more effective development process.
1437280 / i40