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and very good knowledge in quantitative and qualitative research methods Good knowledge of statistical software (e.g. SPSS or STATA or R or JASP) Strong commitment and the ability to work in a team
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the introduction of new tools for the analysis of such equations both from the theoretical and numerical point of views. This project will contribute to the development of such methods. This PhD project focuses
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of aging and lifespan development Interest in studies of ambulatory assessment Good knowledge of and interest in quantitative methods (e.g., multivariate analyses, longitudinal analyses, multilevel analyses
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parallel solution algorithm. International Journal for Numerical Methods in Engineering, vol 32, pp. 1205-1227, 1991. [5] S. Kleiss, C. Pechstein, B. Juttler, S. Tomar. IETI – Isogeometric Tearing and
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datasets using both traditional methods (e.g., factor analysis) as well as more modern approaches (e.g., deep learning). The goals are to develop new computational methods that allow the scientific inference
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in vacuum using a laser focused through a high numerical aperture objective. The laser produces an optical force equivalent to a mechanical spring, and the system can be regarded as a mass-spring
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. To do this, knowledge or willingness to be trained in advanced statistical modelling, ideally with an interest in methods for causal inference in observational data, is strongly preferred. Using various
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of ambulatory assessment and very old age Good interpersonal skills and interest of working with older adults Good knowledge of and interest in longitudinal quantitative methods (e.g., multivariate analyses
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. The project is led by Heiko Schütt and will employ one PostDoc and one PhD student. About the role... You will develop new Bayesian methods to compare deep neural network and other artificial representations
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on the Nantes campus of the Gustave Eiffel University within the GPEM laboratory. The PhD will benefit from additional supervision to combine experimental and numerical methods linking granular materials and