Sort by
Refine Your Search
-
Listed
-
Employer
- Chalmers University of Technology
- Lunds universitet
- University of Lund
- Uppsala universitet
- Linköping University
- Umeå University
- Nature Careers
- Luleå University of Technology
- Luleå tekniska universitet
- Umeå universitet
- Umeå universitet stipendiemodul
- Göteborg Universitet
- KTH
- Karlstad University
- Luleå tekniska universitet/Luleå University of Technology
- SLU
- Sveriges Lantbruksuniversitet
- 7 more »
- « less
-
Field
-
-level engineering relevance. We welcome applicants with a PhD in Aerospace Engineering, Mechanical Engineering, Energy Engineering, Applied Physics, or a closely related field. The candidate should have a
-
Management Lab (KDMLAB) of the Department of Computer and Information Science at Linköping University. The department is one of the largest computer science departments in northern Europe, with research
-
-files, as below. Maximum size for each file is 40 MB. Please note that the system does not support Zip files. CV A comprehensive CV, including a complete list of publications. PhD thesis thesis together
-
the supervision of PhD students, and possibly MSc students, advised by the lab PI You are expected to attend conferences and events related to the project and engage regularly with the Healthy AI lab through group
-
The applicant must: hold a PhD in a relevant field (e.g. computer science, artificial intelligence, machine learning, computer vision, animal science, biology, veterinary medicine, or a related discipline) have
-
Description of the workplace The position will be placed at the division of Computer Vision and Machine Learning at the Centre for Mathematical Sciences. The Centre for Mathematical Sciences is an
-
the following qualifications: Educational background: A PhD degree in a field relevant to the project, such as applied linguistics, educational psychology, computational linguistics, psychology/cognitive science
-
(AIMLeNS) lab is a tight-knit team of computer scientists, chemists, physicists, and mathematicians working collaboratively. Our focus is on developing practical methods that blend traditional disciplines
-
agreed research tasks. A PhD degree (or a foreign degree deemed equivalent) in Chemistry, Physics, Materials Science, or a closely related field. Documented experience in the synthesis and purification
-
and stability by linking material structure and morphology to key device metrics. Supervise master’s and/or PhD students to a certain extent Possibility to engage in teaching at undergraduate/master’s