Sort by
Refine Your Search
-
Listed
-
Country
-
Employer
- University of Stavanger
- OsloMet
- INESC ID
- UiT The Arctic University of Norway
- Instituto Superior Técnico
- INESC TEC
- Universidade Católica Portuguesa - Porto
- Associação do Instituto Superior Técnico para a Investigação e Desenvolvimento _IST-ID
- Universidade de Coimbra
- University of Oslo
- Aston University
- Ghent University
- Gulbenkian Institute for Molecular Medicine
- Instituto de Telecomunicações
- OsloMet – Oslo Metropolitan University
- The QAS Aboriginal and Torres Strait Islander Scholarship Program
- The University of Edinburgh;
- UCL
- UCL Institute of Neurology
- University of Adelaide
- University of Bath
- University of Bath;
- 12 more »
- « less
-
Field
-
, and analysis of spatial data, using Geographic Information Systems and Artificial Intelligence (AI), and integrating multiple technologies and methods (for example: geographic and statistical databases
-
. When we have different backgrounds and experiences, we can approach challenges from multiple perspectives and find better solutions. At UiS, we are committed to showing respect for each other's
-
resource in the working and learning environment at UiS. When we have different backgrounds and experiences, we can approach challenges from multiple perspectives and find better solutions. At UiS, we
-
have different backgrounds and experiences, we can approach challenges from multiple perspectives and find better solutions. At UiS, we are committed to showing respect for each other's differences and
-
, we can approach challenges from multiple perspectives and find better solutions. At UiS, we are committed to showing respect for each other's differences and accommodating employees with disabilities
-
have different backgrounds and experiences, we can approach challenges from multiple perspectives and find better solutions. At UiS, we are committed to showing respect for each other's differences and
-
. When we have different backgrounds and experiences, we can approach challenges from multiple perspectives and find better solutions. At UiS, we are committed to showing respect for each other's
-
both human and machine consumption scenarios. The work is closely aligned with ongoing international standardization efforts, namely within the JPEG XE activity. The scholarship holder will be integrated
-
while protecting data privacy. Unlike traditional centralized machine learning, where data must be collected and stored in a central server, FL allows multiple parties to collaboratively build a global
-
data pipelines and ml/nlp components. code quality and reproducibility indicators (portfolio, github, reports, project deliverables). Project fit and motivation (20%): alignment of interests with kag