Mengaldo\'s Laboratory is looking for a self-motivated, proactive and highly creative Postdoctoral Fellow in dynamical system theory and machine learning for extreme weather forecasting applications.
The ideal candidate should be skilled in coding, and software development, and be highly proficient in Python, large-scale spatio-temporal data analysis (ideally the ERA5 and other reanalysis datasets), dynamical system theory, reduced order modelling (including POD, SPOD and Autoencoders), natural language processing and neural networks.
The project is in collaboration with ECMWF, Argonne National Laboratory (USA), CNRS (France), and University of Cambridge (United Kingdom), the latter starting from 2023. The primary objective of the project is to provide a fast computational framework for extended-range extreme weather forecasts, as well as quantify damage and develop mitigation strategies for extreme weather events.
Qualifications
Times Higher Education
MNCJobz.com will not be responsible for any payment made to a third-party. All Terms of Use are applicable.