Sort by
Refine Your Search
-
Program
-
Employer
-
Field
-
. Teach possibly 1 course of up to 6 ECTS. Assist in the guidance of 2-3 PhD candidates on a similar topic. Lead or support grant writing for additional (postdoc) funding proposals. Supervise 4-6 MSc
-
quantitative approaches towards data science, including relevant developments in the field of geospatial data processing, photogrammetry, computer vision, and big data/machine learning. You have knowledge
-
will have obtained (close to the starting date) a PhD in Machine Learning, Data Mining, Computer Science, Information Systems Engineering, Informatics, Statistics, or a related discipline with a focus on
-
of specialized neural networks designed to learn from a novel representation called the process knowledge graph. This representation offers a comprehensive view of process dynamics beyond sequential activities
-
the Life Sciences subjects taught at GUGC, Ghent University ranks even higher. Please visit the Ghent University Global Campus homepages to learn more about our organization: http://www.ugent.be/en and http
-
plus. Knowledge of scientific method and of the marine environment are a plus. Critical and creative. Scientifically integer. Open minded and taking initiative. Passionate scientist, keen to learn new
-
; Nursery near campus, discount on holiday camps; The space to form your job content and to continuously learn through our VUB learning platforms and training courses; And finally: great colleagues with a
-
, Machine Learning Eligibility criteria The successful candidate will be expected to make significant contributions to the development of robust damage assessment tools for complex industrial structures
-
biomechanics is an asset but you can also learn this within the group. You will be expected to present the work at conferences, lab meeting, and departmental meetings. You will meet monthly with Prof. Declercq
-
innovative ideas on how to improve these phases using BIM. Evidence of being able to acquire additional funding (projects/scholarships) is a strong plus. You are willing to work in an interdisciplinary team