Sort by
Refine Your Search
-
Listed
-
Employer
- University of Groningen
- Radboud University
- Leiden University
- University of Amsterdam (UvA)
- European Space Agency
- Wageningen University and Research Center
- AcademicTransfer
- Erasmus University Rotterdam
- Utrecht University
- Vrije Universiteit Amsterdam (VU)
- Amsterdam UMC
- Delft University of Technology (TU Delft)
- Maastricht University (UM)
- Royal Netherlands Academy of Arts and Sciences (KNAW)
- Wageningen University & Research
- Nature Careers
- Tilburg University
- Universiteit van Amsterdam
- University Medical Center Utrecht (UMC Utrecht)
- University of Twente
- University of Twente (UT)
- 11 more »
- « less
-
Field
-
, employing both qualitative and quantitative methods to optimize the tool and explore the effectiveness of various implementation strategies (e.g., peer reflection groups, individual coaching). What you will
-
qualitative research methods such as walk-through and focus group interviews, ethnographic observation, online diary analysis and content tracking. You will be expected to Collect empirical data on musicians
-
effective, these methods lack the ability to measure molecular composition, making it impossible to distinguish target analytes from contaminants, a serious limitation. Unlocking molecular-level information
-
has enabled the development of treatments for many medical conditions. Studying animal behaviour is a central component in this research. Recent developments in artificial intelligence allow vastly
-
to provide proof that your PhD thesis manuscript has been accepted by the manuscript committee. You have strong expertise in quantitative research methods, particularly in the analysis of survey data. You have
-
change through education and research. We use a unique approach that blends qualitative, quantitative, audiovisual, and digital methods based on ethnographic fieldwork. With our unique blend
-
(preferably python); has experience with methods and models to estimate techno-economic potential of renewable energy technologies; has knowledge and interest in the energy transition. Having detailed knowledge
-
publications appropriate to career stage; background in and experience with innovative qualitative research methods in the social sciences and humanities; a very strong and well-developed analytical and writing
-
address these issues by developing mathematical foundations for XAI, and proving performance guarantees for new explanation methods using the same standards as in other parts of machine learning theory. As
-
transition projects will focus on ALS, cystic fibrosis, osteoarthritis/rheumatic diseases, and asthma/COPD. The CPBT will implement the available and developed methods, tools, and expertise together