The Laboratory of Developmental Psychology and Child Education at the Department of Psychology of the Université Paris Cité, located at La Sorbonne, in Paris, is seeking to appoint a Research Assistant (Ingénieur d’Etudes) in the research team of Dr. Teresa Iuculano, on a multidisciplinary project that seeks to understand the brain bases of mathematical learning in humans. This call is supported by Université Paris Cité, la Sorbonne and the CNRS.
The ideal candidate should have a B.Sc. / M.Sc. degree in computational science, engineering, cognitive neuroscience, physics, mathematics, or related fields. Prior experience with programming languages such as MATLAB, R, or Python is required. Expertise with brain imaging data analysis and signal processing – particularly in the context of fMRI paradigms – is desirable. Good level of French and English is required.
For more information please contact: teresa.iuculano[a]u-paris.fr or tiuculano.stanford[a]gmail.com
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