105 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "U.S" positions at Aalborg University in Denmark
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
dynamic, crowded environments. As a PhD candidate, you will develop methods that combine data-driven autonomy with formal safety guarantees and validate them in real time through simulation and experimental
-
design and laboratory experimentation, you will first explore a broad range of sodium-oxide glass compositions using advanced computer models to predict how well ions can move through them. Based
-
, but also in other study programmes at the University. You may obtain further professional information from Associate Professor Iva Ridjan Skov, +45 9940 2950, iva@plan.aau.dk You can read more on TECH
-
charging strategies for lithium-ion batteries. The goal is to integrate model-based (digital twin) and data-driven (AI) methods to design and experimentally validate optimized pulse charging protocols. A
-
data storage in Iceland. Drawing on science and technology studies and, specifically, infrastructure studies (Edwards et al 2009; Star 1999), the project aims to follow moments of instability and re
-
Department of Sustainability and Planning here You may obtain further professional information from Andrés Felipe Valderrama Pineda, afvp@plan.aau.dk. Qualification requirements Appointment as a research
-
, you are welcome to contact Professor Amjad Anvari-Moghaddam, aam@energy.aau.dk, phone +45 93 56 20 62. Further information Read more about our recruitment process here The appointment process at Aalborg
-
the movements and behavior of red deer in Vejlerne using advanced drone technology and AI-based data analysis. The work will include mapping reed bed dynamics and deer trails, comparing current patterns with
-
electrical energy storage systems; energy management systems. Experience with data processing, statistical analysis and machine learning techniques is an advantage. Knowledge with Mathworks suite, C/C++ and
-
case studies with various types of data collection in a range of manufacturing companies. Thus, the PhD student needs to work with various types of quantitative and qualitative research methods