Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- KU LEUVEN
- University of Antwerp
- Ghent University
- Vrije Universiteit Brussel
- VIB
- Nature Careers
- BIO BASE EUROPE PILOT PLANT VZW
- Flanders Institute for Biotechnology
- Ghent University;
- Hasselt University
- IMEC
- KU Leuven
- Katholieke Universiteit Leuven
- University of Liège
- Université Catholique de Louvain (UCL)
- Université Libre de Bruxelles (ULB)
- Université catholique de Louvain
- Université catholique de Louvain (UCL)
- Vrije Universiteit Brussel (VUB)
- 9 more »
- « less
-
Field
-
-house database of experimental real-world data enabling large-scale validation of developed algorithms. Wind turbine drivetrains are critical components, and their failures can lead to significant
-
intelligence. In these research areas we focus on 1) foundations, 2) system design, and 3) applications. IDLab collaborates with many universities and research centres worldwide and jointly develops advanced
-
of Antwerp. See also: https://remotesensing.vito.be/news/sspirit-tackling-plastic-pollution The main task of the KU Leuven PhD project will be the further development and validation of a two versatile
-
for Biomarker Discovery: Develop and fine-tune machine learning algorithms for biomarker discovery, cancer classification, and exploring omics features. Collaborative Research: Work in a multidisciplinary setting
-
and Saeys teams. In this research project you will develop and apply algorithms to link clinical phenotypes of metastasis to molecular phenotypes in mouse models. It is known that metastases exhibit
-
to neurodegenerative disorders. Your PhD project specifically will focus on developing and applying a versatile high-throughput fluorescence imaging platform. In this function you will: optically design a microscope
-
Learning Agreement is completely filled in and signed, dated and stamped where necessary! Language skills Your knowledge of Dutch and English. Please consult the language requirements in order to prepare the
-
Using insights from spatial and technical studies, you will contribute to new design principles for adaptive, energy-efficient, and citizen-driven networks. This involves: developing measurement-informed
-
. the light curves and spectra) of these stars analytically and through numerical methods, based on binary stellar evolution models. You will also investigate potential observable signatures of binary evolution
-
inverse problems. The team aims at developing Bayesian computational methods for such (ill-posed) inverse problems and aims both at increasing their validity and at reducing their computational cost. In