Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- LNEC, I.P.
- Nova School of Business and Economics
- FCiências.ID
- FEUP
- Faculdade de Letras da Universidade de Lisboa
- INESC ID
- Instituto Superior Técnico
- Instituto de Investigação e Inovação em Saúde da Universidade do Porto (i3S)
- Instituto de Telecomunicações
- Universidade Católica Portuguesa - CATÓLICA-LISBON
- Universidade Católica Portuguesa - Porto
- Universidade de Coimbra
- Universidade do Minho
- University of Algarve
- 4 more »
- « less
-
Field
-
, within the framework of the CIÊNCIAS Internal Call for Research Projects, 2025 Edition, under the following conditions: Scientific Area: Marine Sciences or Marine Biogeosciences or Applied Statistics in
-
hold a degree in the scientific area of Economics or related fields. SPECIFIC ADMISSION REQUIREMENTS The candidate should have: Strong skills in applied economics. Ability to work with statistical
-
controlled trials (RCTs) in developing countries. Candidates should have strong quantitative skills, including proficiency in statistical software (e.g. Stata, R, or Python). Experience coordinating field
-
the Foundation for Science and Technology (FCT), under the following conditions: Scientific Area: Mathematics, Statistics and Probability Recipient category: Master’s degree holders enrolled in degree-conferring
-
, 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
-
-based studies, including proficiency in statistical software. c) Proficiency in Portuguese, both spoken and written. Candidates who are not native Portuguese speakers must demonstrate that they hold an
-
of statistical methods for result analysis (e.g., correlation analysis between hydraulic and water quality parameters); Production of scientific articles, papers, and reports, in close collaboration with
-
and will actively participate in research activities related to intelligent urban mobility studies, in particular mobility data analysis and modeling. Statistical modeling software and other tools
-
in institutional research and educational statistics into evidence to inform higher education policy and system-level governance. The objective of the fellow’s work is to collaborate on the processing
-
English. Applicants must have experience in field work and data collection. Applicants must have basic statistical analysis knowledge and good command of Excel. Applicants must permanently and habitually