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starting the PhD). The candidate must be qualified for admission to the ph.d. program Strong background in quantitative methods (reflected in courses and/or research experience) Proficiency in R, Python
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, Python is an asset ;•Excellent communication and collaboration skills ;•Excellent verbal communication and academic writing skills in English, any other language such as French, German, or Luxembourgish is
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experience in regression analyses (SEM, multi-level, discrete choice behavior modeling…) based on statistical software (R, STATA or SAS) ;•Excellent skills in GIS, Python is an asset ;•Excellent communication
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/ material design, Experience with MATLAB/Simulink and Python, programming skills in C/C++ are an asset Language Skills: Fluent written and verbal communication skills in English are required We offer
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, Python) Very good written and spoken English skills What you can expect There is the possibility of a PhD. Cooperation with national and international partners. In our institution you will find a
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for this position. Applicants should be proficient in R, Python, or equivalent statistical software. Some background knowledge in either (computational) Bayesian methods, or statistical learning for molecular data
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experience with statistical analysis and programming (Bash, R, MATLAB, Python or similar) is required. Excellent communication and collaborative skills (team player) is required. Excellent English scientific
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programming (R, Python, or similar) is an advantage. Interest in acquiring the necessary statistical analysis and programming skills is required. Previous experience with experimental research is an advantage
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, activities, and/or theses. Programming experience in Matlab, Python or similar packages Good oral and written presentation skills in English language. -------------------------------------------- PLEASE NOTE
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techniques. User of engineering software and modelling languages, such as, Python, MATLAB Toolbox, LabVIEW, DaisyLab, C++….. Working in interdisciplinary environments, good contextual understanding